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YSPH Biostatistics Seminar: “Biostatistician Roles in the Pharmaceutical Industry”

October 05, 2023
  • 00:01<v ->For this time.</v>
  • 00:03So we're
  • 00:04(presenter muttering indistinctly)
  • 00:05<v ->All right, so hey, everybody, welcome.</v>
  • 00:08Today's my privilege to introduce Dr. Glen Laird.
  • 00:11Dr. Laird earned his PhD in statistics
  • 00:13from Florida State University in 2000,
  • 00:16then worked as a survey statistician
  • 00:17for RTI International before joining
  • 00:20the pharmaceutical industry
  • 00:22where he worked at Novartis,
  • 00:24Bristol Myers Squibb and Sanofi.
  • 00:27And so now, he's at Vertex Pharmaceuticals.
  • 00:31And so let's welcome Dr. Laird.
  • 00:37<v ->I hope everybody can hear me also online.</v>
  • 00:41I hope we can have a good discussion today.
  • 00:43Have a lot to talk about.
  • 00:44Feel free to interrupt me at any time with questions.
  • 00:48There's really nothing overtly technical here,
  • 00:51so I wanna be very accessible to everyone.
  • 00:54I'd like to hear your feedback go along.
  • 00:58So I'm gonna be talking today
  • 01:00about industry-sponsored clinical trials,
  • 01:02that is pharmaceutical industry sponsored trials.
  • 01:08So disclaimer, I work for Vertex,
  • 01:10but any opinions are mine, not theirs.
  • 01:14So for a clinical trial,
  • 01:18you're gonna have a clinical trial team, right?
  • 01:20At Vertex, we call it a study execution team.
  • 01:22Other companies call it something different,
  • 01:24but it's the same kinda thing.
  • 01:25It's a group of people who are responsible for running,
  • 01:28conducting, executing the trial.
  • 01:31It's gonna vary by the study,
  • 01:32but usually, this is gonna include a clinician of course,
  • 01:36who's gonna make the key clinical decisions about the study.
  • 01:39An operations person's gonna do a lot of coordinating
  • 01:42with the site, a lot of communication with the site
  • 01:46actually conducting the study.
  • 01:48Also shepherding documents through reviewing,
  • 01:50things like that.
  • 01:52Clinical pharmacology, they deal with pharmacokinetics,
  • 01:55which is how the body processes the drug,
  • 01:59metabolism, that sort of thing.
  • 02:02Safety,
  • 02:03at some point, FDA let it be known that they wanted you
  • 02:07to have a person explicitly responsible for safety
  • 02:12on your study team, so.
  • 02:14Because then, I think there was kind of a mindset
  • 02:16that if you had the same person
  • 02:17trying to look at safety and efficacy,
  • 02:21that they would probably end up spending most of their time
  • 02:23looking at efficacy.
  • 02:25Safety might not get the attention it deserves,
  • 02:27so you have to have a person explicitly for safety.
  • 02:30Clinical biomarkers,
  • 02:31we often like to look at a lot of different biomarkers.
  • 02:34Data management deals with the actual database itself,
  • 02:38setting it up
  • 02:40and the sort of execution around locking it
  • 02:43and all that sort of thing.
  • 02:44And cleaning the data.
  • 02:48The statistical programmer is responsible for a lot
  • 02:52of the actual execution of the various plans, right?
  • 02:56So, and, of course, the statistician,
  • 02:58which I'm gonna talk a little bit more about.
  • 03:01The statistician and the programmer
  • 03:02really work kinda hand in hand for a lot of things, right?
  • 03:05There's a lot of things where the statistician
  • 03:07is planning things, specifying things,
  • 03:09and the programmer is the one writing the code
  • 03:12to actually execute it.
  • 03:18FYI, so what I just talked about was a study level team.
  • 03:22There's also a project level team.
  • 03:24So by project, I mean a drug or a therapy, right?
  • 03:28So there'd be some more senior people.
  • 03:30So there would be like a project level statistician
  • 03:32and a team at the project level
  • 03:34with a lot of these same similar functions plus some others.
  • 03:38Legal, for example, comes to mind.
  • 03:39That project team kinda guides
  • 03:42the overall development of the drug.
  • 03:45But today, I'm gonna focus more on the study,
  • 03:51what the statistician and that team is doing.
  • 03:54A lot of you may know this,
  • 03:56but there's four sort of commonly recognized phases
  • 04:00in drug development.
  • 04:02Phase one is mostly about safety.
  • 04:04You're trying to find the right dose of the drug.
  • 04:07Phase two is kind of an initial assessment of efficacy,
  • 04:11whether you think the drug works.
  • 04:13Main purpose of that is to convince yourself
  • 04:16whether you want to do phase three,
  • 04:18which is the pivotal study,
  • 04:21the main bulk of your evidence that you claim to submit,
  • 04:25to say, "Here's our evidence that this drug works."
  • 04:29Right, that study is often the biggest
  • 04:33and it's generally randomized, right?
  • 04:37And then there's phase four,
  • 04:38which would be anything that's post
  • 04:40(Glen muttering indistinctly)
  • 04:41right, and those kinda studies
  • 04:43can depend on the market conditions for your drug
  • 04:46after it's gotten on the market.
  • 04:50I'm gonna focus the most on the phase two,
  • 04:52three type studies
  • 04:54'cause that is sort of the most classic
  • 04:57clinical trial experience.
  • 04:59And it's perhaps the part where the statistician
  • 05:02and the programmer are really the most key to being
  • 05:06and their involvement.
  • 05:08That is the scientific rigor of actually demonstrating
  • 05:12this drug works.
  • 05:17And as I noted the bottom there,
  • 05:20the great majority of drugs that start in phase one
  • 05:22end up dying somewhere along the way unfortunately.
  • 05:26You can look up various numbers,
  • 05:27but it's a pretty small percentage and actually end up
  • 05:30making it to the market, unfortunately,
  • 05:32from direct to start in phase one.
  • 05:36Oh, okay.
  • 05:37All right, so now we're at the survey here.
  • 05:40All right, so all right, then.
  • 05:42So then. <v ->Yep.</v>
  • 05:43<v ->This is my survey question, hope everybody.</v>
  • 05:47<v ->Oh, and then just hit present.</v>
  • 05:48<v ->And then I need to do this,</v>
  • 05:52so, okay.
  • 05:55So I'm wondering what you think.
  • 06:00So when in the life of a study do you think is the most work
  • 06:05for the statistician?
  • 06:08So if you can't see there, so option A,
  • 06:12these plots are qualitative, it's conceptual, right?
  • 06:16So the x-axis is time,
  • 06:18the y-axis is the amount of work, right?
  • 06:20So option A would be level, you know?
  • 06:23It's basically the same amount of work over the whole course
  • 06:26of the study from when you first start conceiving the study
  • 06:28until you rep the study before, right?
  • 06:31Option B is going up and up and up,
  • 06:33getting busier and busier and busier
  • 06:35the longer the study goes on.
  • 06:37C is the opposite. Start very busy, gets less and less busy.
  • 06:41D is Gaussian looking, right?
  • 06:46There's a bulge of work in the middle.
  • 06:48And E is kind of the opposite of that.
  • 06:50A lot of work at the beginning and the end,
  • 06:52maybe a bit of a lump.
  • 06:56So I know people know how to fill this out or.
  • 06:59<v ->Yep, text.</v>
  • 07:00<v ->Whatever.</v> <v ->Get our your phones,</v>
  • 07:02which you don't hear often.
  • 07:03(Glen laughing)
  • 07:05<v ->Yeah.</v>
  • 07:14People online, I hope, are voting too.
  • 07:20When do you think the most work is?
  • 07:29Most people answered D.
  • 07:35Maybe I don't know how to tell how many people,
  • 07:37I hope it's more than. <v ->Yeah. (laughs)</v>
  • 07:39<v ->I hope it's more than like six people that are voting.</v>
  • 07:43I feel good when you see some prime numbers
  • 07:45and stuff in there, it makes you feel like,
  • 07:47"Okay, 10 must be big enough
  • 07:49that you're getting something."
  • 07:50But, okay, so it looks like most people say D,
  • 07:55fair number of people say E,
  • 07:57now, it's not a lot for the other choices.
  • 08:01Like so do I just go back?
  • 08:03And how do I go back? <v ->Yeah, you just go back</v>
  • 08:04to that.
  • 08:05<v ->Do I just hit escape?</v> <v ->Escape. Yeah, you can.</v>
  • 08:12<v ->Present mode.</v>
  • 08:16<v ->It's not working?</v>
  • 08:19<v ->That's it?</v> <v ->Yeah.</v>
  • 08:20<v ->I think we're out of present mode though.</v>
  • 08:24<v ->Yeah.</v> <v ->There we go.</v>
  • 08:26<v ->So in my opinion, I think most people</v>
  • 08:28would agree with this.
  • 08:29I would say the answer is actually E,
  • 08:32the opposite of what most of you picked.
  • 08:35And the reason for that is there's a lot of stuff
  • 08:37the statistician has to do at the beginning of the study
  • 08:39in terms of planning,
  • 08:41specifying what kinda study are we gonna do,
  • 08:44how are we gonna plan all kinds of stuff.
  • 08:45I'll talk some more detail in just a minute.
  • 08:48And then there's a lot of work reporting
  • 08:49at the end of the study
  • 08:51executing everything you said you were gonna do, right?
  • 08:54And it's not uncommon that in the middle
  • 08:56maybe there's a bit of a low
  • 08:57where you're mostly kinda waiting for patients to enroll
  • 09:00and everything is maybe blinded even.
  • 09:03So you don't have it available, right?
  • 09:06So what does the life of a study look like
  • 09:10and what is the statistician doing during this study?
  • 09:15So I'm gonna give you an outline.
  • 09:17Again, it's just main steps.
  • 09:19Don't take anything here too literally,
  • 09:21this is just kind of my ballparking of things,
  • 09:24way things tend to go at most companies,
  • 09:28but companies in general are more alike than different.
  • 09:30A lot of this process is actually quite standard.
  • 09:33They just have little different flavors, you know,
  • 09:35different tweaking of the timelines and such.
  • 09:37But the general idea should be pretty consistent.
  • 09:41This isn't covering special studies, targeted study.
  • 09:45I'm talking about a sort of a classic, you know,
  • 09:47phase three type study here.
  • 09:49<v ->You wanna move that window?</v>
  • 09:52<v ->Yes.</v>
  • 09:53<v ->I'm sorry.</v>
  • 09:55<v ->Thank you 'cause I've got that.</v>
  • 09:57<v ->I know it's hard to figure out.</v>
  • 09:57<v ->Stuff I want to, yeah.</v>
  • 09:59So the first thing you notice here
  • 10:01is that there's tons of acronyms, right?
  • 10:03That's part and parcel in the industry.
  • 10:06There's a lot of things here.
  • 10:07But that right, I'll go through 'em.
  • 10:08So the first thing here starts with protocol concept, right?
  • 10:11So the protocol concept is basically a document
  • 10:14that just gives you kinda the bare bones
  • 10:15of what do you plan to do in this study?
  • 10:18What's the disease?
  • 10:19What kinda patients do you plan to enroll?
  • 10:21What are you gonna measure on those patients?
  • 10:23When are you gonna measure it?
  • 10:26A little bit about how you're gonna analyze it.
  • 10:28And, of course, the sample size, right?
  • 10:30Which the statistician has to calculate
  • 10:34how many patients you're gonna study, right?
  • 10:36That gets reviewed by various functions,
  • 10:38including, of course, biostats.
  • 10:40And also gets reviewed by a PRC,
  • 10:43which is a protocol review committee.
  • 10:47And oh, they got blocked out a bit there.
  • 10:49So FSFV is first subject, first visit.
  • 10:53If you're studying patients,
  • 10:54you often say first patient first visit.
  • 10:56So those are really the same thing,
  • 10:58just depending on whether you're actually studying patients
  • 11:01that have the disease
  • 11:02or just healthy volunteers for example.
  • 11:06And so this gets reviewed by the protocol review committee.
  • 11:10Again, that's one of those things
  • 11:12that every company's gonna have
  • 11:14one or more protocol review committees,
  • 11:16but they're all gonna be,
  • 11:17and they're gonna have a little different flavor,
  • 11:19but it's gonna be pretty similar.
  • 11:21So if it's approved by the PRC,
  • 11:23then you come back maybe two, three months later, say,
  • 11:27with a full protocol,
  • 11:29which should be very similar to the protocol concept.
  • 11:33You're just filling in more details
  • 11:34of how are you gonna measure these endpoints, for example.
  • 11:38You know, details on inclusion and exclusion criteria
  • 11:41for exactly who gets in the study, some things like that.
  • 11:44Still doesn't have all the statistical
  • 11:48details in it, right?
  • 11:49Has some high-level summaries
  • 11:51of what kind of analysis you plan to do.
  • 11:53But it's not table shells,
  • 11:55it's not the real statistical rigor details.
  • 11:59So let's say that gets approved by the PRC.
  • 12:01Now I move on to case report forms or CRFs.
  • 12:05Those are the actual forms
  • 12:07where the site enters the data, right?
  • 12:09So principle here is the sites enter the data,
  • 12:13the sites change the data, we don't touch the data, right?
  • 12:17We just talk to them
  • 12:18about how they're supposed to do that, right?
  • 12:20We don't touch it, we just query them and say,
  • 12:22"Hey, do you need to change this data?"
  • 12:25And then it's up to them to change it.
  • 12:27So it's important, this is a process
  • 12:30not driven by biostatistics, right?
  • 12:32Operations and data management, run it,
  • 12:35but it's important for the statistician to be there
  • 12:38and the programmer to review it and look, right?
  • 12:43Because if you don't have a good case report form,
  • 12:45you're not gonna get the data you need, right?
  • 12:47You're gonna be in a bind at the end of the study
  • 12:50when it turns out the form didn't collect
  • 12:52what you wanted to report.
  • 12:55Similar to that, there's edit checks.
  • 12:57So edit checks is something to respond to the site
  • 13:01whenever they enter something that is questionable, right?
  • 13:04So the site enters that the patient was 200 years old,
  • 13:07that's gotta be some kinda typo.
  • 13:08It's gonna immediately spit up something saying,
  • 13:11"Hey, double check that number, right?"
  • 13:14So edit checks are important in terms of getting good data
  • 13:17in the system in the first place, right?
  • 13:21PD specifications. So PD stands for protocol deviation.
  • 13:26In the real world,
  • 13:27things don't always go according to the protocol, right?
  • 13:30There's often missed assessments,
  • 13:33assessments that weren't done at the right time.
  • 13:36Patients that were enrolled that actually weren't supposed
  • 13:39to be enrolled according to the infusion criteria,
  • 13:42various things in the real world may go wrong.
  • 13:44And so the statistician plays a key part in specifying
  • 13:47what you're going to do about those, right?
  • 13:50So this is still at the beginning, right?
  • 13:51This is before you've enrolled anybody.
  • 13:53You're planning, okay, we can foresee that this may happen.
  • 13:58What are we gonna do about it?
  • 13:59You might have a,
  • 14:00you might say, if patients are not enrolled,
  • 14:03if patients are enrolled
  • 14:04who don't have the treatment history we intended,
  • 14:07then, for example, you might say,
  • 14:08"We're not gonna include that.
  • 14:09We're not going to include that patient
  • 14:11in this particular analysis."
  • 14:13Might be one thing you would pre-specify
  • 14:15about how are you gonna handle
  • 14:16that protocol deviation, right?
  • 14:20The randomization request.
  • 14:21Every company's gonna have a form
  • 14:23the status session fills out to say,
  • 14:24"Please do the randomization in this way."
  • 14:27We almost always do some form
  • 14:28of stratify block randomization, right?
  • 14:31So anybody who maybe doesn't know, right?
  • 14:34A block is a small sample size where you know
  • 14:38the randomization's gonna work out even, right?
  • 14:40So if your block size is four,
  • 14:42you're guaranteed that two of those four
  • 14:44are gonna be treatment,
  • 14:45two of those four are gonna be controlled, right?
  • 14:47It's just a matter of which two bits the order.
  • 14:52So that helps enforce some balance, right?
  • 14:54And then we're gonna have stratification factors.
  • 14:57Those are often a common topic for discussion
  • 15:01and exactly what are we gonna stratify
  • 15:04for the randomization, right?
  • 15:06So a statistician's very important in making sure
  • 15:10and figuring out how that randomization is gonna be done
  • 15:13and filling out the form properly, right?
  • 15:17The data monitoring plan,
  • 15:18that's more driven by data management,
  • 15:21but the statistician needs to look at it.
  • 15:24So the monitoring plan is like
  • 15:26how are we gonna look at the data in an ongoing way
  • 15:28during the study, right?
  • 15:30So if say sites are not understanding the protocol,
  • 15:34they're enrolling the wrong kind of patients,
  • 15:36you wanna catch it as soon as possible, right?
  • 15:39So you're looking at baseline data, blinded data,
  • 15:42and trying to see if there's problems that could affect
  • 15:45the scientific validity of the study.
  • 15:51Okay, then just,
  • 15:59there we go.
  • 15:59All right, so during the study,
  • 16:01I have the red box here around finalize the SAP,
  • 16:05which is the statistical analysis plan.
  • 16:09This is the single document that the statistician
  • 16:11is most responsible for.
  • 16:13And that's the document, statistician authors it,
  • 16:17facilitates the review of that document.
  • 16:20This is the document where you do put all those details,
  • 16:24all the statistical nitty gritty details
  • 16:26about how are you gonna handle missing data?
  • 16:28How exactly are you gonna define the baseline?
  • 16:31What are you gonna do?
  • 16:32What covariance are you gonna put in your model?
  • 16:34All these kind of details about exactly how you plan
  • 16:38to do the analysis, right?
  • 16:40And this also gets reviewed and approved
  • 16:43by all the usual review machinery in the company, right?
  • 16:48So notice about the timing.
  • 16:51So if you have a unblinded study,
  • 16:55you need to do this before you enroll anybody, right?
  • 16:58Before first patient, first visit.
  • 17:02If you have a blinded study,
  • 17:04it can be done somewhat later
  • 17:07after you've started enrolling patients.
  • 17:09You still need to do it in time to allow programming
  • 17:13to do the programming and validate stuff and all that.
  • 17:15You can't do it at the last minute,
  • 17:17but you don't have to do it before you enroll a patient.
  • 17:20Does anybody have any idea why that would matter?
  • 17:25Whether it's a blinded study or not on the timings?
  • 17:32Somebody who doesn't have sandwich in their mouth, perhaps.
  • 17:34(attendant chuckling)
  • 17:36<v ->You have the big rooms.</v>
  • 17:43<v ->I highlight this because this is another</v>
  • 17:46very important principle of these studies,
  • 17:48which is pre-specification, right?
  • 17:52Things that you say and do after the data are known,
  • 17:56after you know who's and what treatment group
  • 17:59are considered post hoc, right?
  • 18:02And they're going to be viewed,
  • 18:04I'm not sure if suspiciously is quite the right word,
  • 18:06but are gonna be viewed with additional skepticism, right?
  • 18:10So before that, you start enrolling patients,
  • 18:14or before the study's unblinded,
  • 18:15you can still claim that you're pre-specifying things.
  • 18:18Hey, when I said we were gonna do the analysis this way,
  • 18:21I didn't know that this patient was in treatment
  • 18:23and that patient was controlled, right?
  • 18:25So you could still claim to be even handed
  • 18:29when you do the plan.
  • 18:30Then I'd say maybe comes the lull
  • 18:33I was talking about, right?
  • 18:36Maybe in the middle, yes, you're executing the data,
  • 18:38monitoring stuff that you said you were gonna plan.
  • 18:41That's not really heavily driven by stats.
  • 18:46There's always gonna be team meetings.
  • 18:48It varies, they might be say monthly.
  • 18:50A lot of that is kind of study status things on enrollment
  • 18:54and discussions about whether we need to do an amendment
  • 18:57to the study.
  • 18:58Again, not really driven by stats, right?
  • 19:00So maybe there's a bit of a lull there.
  • 19:02Then as you're starting to get closer
  • 19:03towards clinical database lock,
  • 19:07which is what CDBL is, right?
  • 19:09Now, you want to do dry runs.
  • 19:11So by now, programming has done the programs
  • 19:15you want to execute those programs on some version
  • 19:20of the data in order to see whether there's, you know,
  • 19:24issues at the tables look fine.
  • 19:25So a lot of times when people do the blinded study
  • 19:29is you're gonna use dummy codes,
  • 19:31you just make up false treatment assignments
  • 19:35and you stick that in and then you run the table
  • 19:37and you just kinda see where they're fine.
  • 19:41Then you have to identify the protocol deviations.
  • 19:45This is the part where,
  • 19:46remember earlier you were planning
  • 19:48how you're gonna handle the deviations.
  • 19:50Now you can get close to database lock,
  • 19:52you have to execute that.
  • 19:54You have to apply it to the actual data and say,
  • 19:56"Hey, just looking at the baseline data,
  • 19:58I still don't know who's treatment, who's control."
  • 20:00I'm gonna say that patient is not in that analysis
  • 20:04because of the rule I said before
  • 20:06and I'm doing this now before I know, right?
  • 20:09So you have to do that kind of applying it
  • 20:11and you have to sign off on that saying,
  • 20:13"Here's the official call of who had what deviation."
  • 20:18Then at the database lock, there's all the reporting stuff.
  • 20:21You fill out a form to unblind the data.
  • 20:25Usually very quickly, within a week or two,
  • 20:27you have to deliver the key results.
  • 20:30Vertex would call it the key reports memo or KRM,
  • 20:33other companies call it something similar.
  • 20:35But basically, within a week or two,
  • 20:37management's gonna wanna know kinda the bottom line, right?
  • 20:40And was the p-value less than 0.05?
  • 20:43Was there some kinda major safety situation
  • 20:45we oughta be aware of?
  • 20:47That kinda thing, right?
  • 20:48After that come the full list of tables,
  • 20:52listings and figures.
  • 20:53And then you have to finalize
  • 20:54the clinical study report for CSR.
  • 20:58And for that, you would have to author, you know,
  • 21:01the statistical section of CSR.
  • 21:04So that is kind of an overview of this is what a clinical,
  • 21:08you know, study sort of looks like to a statistician
  • 21:10and how you're doing, right?
  • 21:17I'll note that it does vary some by the phase, right?
  • 21:20To me, phase one, it's more exploratory.
  • 21:24It's often unblinded.
  • 21:26There's more kinda going on during the study
  • 21:27'cause you don't really understand the drug yet, right?
  • 21:30So there's amendments maybe more common,
  • 21:33I think of it a little bit
  • 21:34more like drug babysitting, you know?
  • 21:37You're kinda like, "Okay, what's gonna happen today,
  • 21:40you know, with each new dose that's going on?"
  • 21:42So there's kinda more work to do during the study.
  • 21:46People don't worry as much about the planning
  • 21:49'cause everybody knows it's exploratory, right?
  • 21:52Phase three is kinda the opposite.
  • 21:53Everything I just said before, lots of planning, you know?
  • 21:58Lots of trying to pre-specify things.
  • 22:00Even things that are maybe somewhat unlikely,
  • 22:04you know, very rigorous, right?
  • 22:06It's 'cause it's often a very big study,
  • 22:08it's very expensive, it's very costly,
  • 22:11and a number of ways, if it fails, it's gonna be, you know,
  • 22:14it could be pretty bad for the company
  • 22:17depending on the situation, right?
  • 22:18But the point is you have to carefully consider,
  • 22:21you know, the details.
  • 22:23There's more attention, more review by both management
  • 22:26and, of course, health authorities like FDA.
  • 22:31So for phase four,
  • 22:33there's a group often called Global Medical Affairs.
  • 22:38There's another group called Health Economics
  • 22:40that often deal with these kind of studies.
  • 22:43You can often look at longer-term safety and efficacy.
  • 22:47They may address reimbursement.
  • 22:50So reimbursement is kind of a bigger deal in Europe
  • 22:53because they have single-payer systems.
  • 22:57And so just because you get a drug approved by the EMA,
  • 23:01which is kinda their version of FDA,
  • 23:03that means you can sell it,
  • 23:04but that doesn't mean
  • 23:05the governments have to pay for it, right?
  • 23:07You have to make a separate case to them to say,
  • 23:10"Hey, not only does this drug work,
  • 23:13it's actually worth what we want you to pay for, right?"
  • 23:17There's a negotiation there.
  • 23:19There gonna be a lot of publications involved in this.
  • 23:22I don't know if you've heard the term real-world evidence
  • 23:24or real-world data,
  • 23:25but this is being used more and more in phase four.
  • 23:29Once the drug is on the market in the real world,
  • 23:33there's data related to that.
  • 23:35There's insurance claims,
  • 23:38there's electronic health records,
  • 23:40things that weren't around back when I started, right?
  • 23:44That can help you understand what's going on
  • 23:47in the real world with your drug.
  • 23:48And these are often very big datasets,
  • 23:50but they can also be kind of messy in a lot of ways.
  • 23:53Sometimes, there's a specific group for real-world evidence,
  • 23:58but sometimes, that group is closely aligned biostats.
  • 24:02Vertex has a group called
  • 24:04(Glen muttering indistinctly)
  • 24:05statistics,
  • 24:06which is statisticians who are kind of particularly
  • 24:09knowledgeable about dealing with these kind of data.
  • 24:13People sometimes ask,
  • 24:14"Well, what kinda statistics do you use?"
  • 24:16Not really a good answer to that.
  • 24:18It varies a lot by the disease you're using,
  • 24:21by endpoint, I mean, variable,
  • 24:23the outcome that you're measuring there.
  • 24:26So it depends on the challenges of the setting.
  • 24:31Like maybe sample size is a big issue,
  • 24:34others may be missing data as a big problem.
  • 24:37I used to work in oncology before I worked at Vertex.
  • 24:40They use a lot of time to event endpoints,
  • 24:42like time until the disease progresses.
  • 24:44So they do a lot of survival analyses, right?
  • 24:48Vertex, we don't do oncology anymore,
  • 24:50so we have some time to event endpoints,
  • 24:53but not that much.
  • 24:54So the point is it just kinda depends
  • 24:56on what you're studying.
  • 24:58But, you know, companies understand that, you know,
  • 25:01people aren't gonna necessarily walk in the door
  • 25:03happening to be specialists in the exact kinda statistics
  • 25:07that we're using right now.
  • 25:09So, as an example of it depends on the setting.
  • 25:14Vertex does a good bit in rare diseases.
  • 25:15So I thought I'd just highlight a couple things
  • 25:17about rare diseases.
  • 25:19I'm not gonna go through all of these,
  • 25:20but just in general,
  • 25:22kind of the understanding of the disease and rare diseases
  • 25:25can be limited.
  • 25:27There haven't been a lot of studies
  • 25:29conducted on this before.
  • 25:30There's often not a lot of good prior information.
  • 25:33Identifying patients can be difficult.
  • 25:37You don't often get enough small sample sizes
  • 25:39because there's not a lot of patients out there.
  • 25:42A lot of these diseases are congenital, right?
  • 25:47They're genetic, you're born with 'em.
  • 25:49So a lot of the patients, I've read more than 1/2,
  • 25:51are actually children.
  • 25:52So, you know, that creates a whole nother aspect
  • 25:55to the study if you're trying to study this in a child.
  • 26:00A lot of use of innovative study designs, adaptive designs,
  • 26:03things like that.
  • 26:05Maybe I'll talk a little bit more about that,
  • 26:08and a lot of use with biomarkers and modeling simulation.
  • 26:13If you wanna know more about these sorts of things,
  • 26:15I'll give you a shameless plug for a book.
  • 26:19I'm actually not one of the editors of this book.
  • 26:21These people are my coworkers in our department at Vertex.
  • 26:28I contributed to some of the chapters.
  • 26:30But I think it's a nice book
  • 26:32in that parts of it are technical,
  • 26:36a lot of it isn't,
  • 26:37but it is written by quantitative people
  • 26:39kind of with a quantitative focus on,
  • 26:43or, you know, kind of through a quantitative lens
  • 26:45on what one does and are disease drug development.
  • 26:48So that's my plug.
  • 26:52Little bit of organizational notes about how companies work.
  • 26:56A lot of companies are organized by therapeutic area
  • 27:00and or phase of development.
  • 27:02Some companies have an early phase group
  • 27:05that sort of all they do is phase one studies
  • 27:08and they kinda crank out
  • 27:08these fairly standardized phase one studies.
  • 27:13Vertex is not that way actually,
  • 27:15we just go by different therapeutic areas
  • 27:17and have the same people who do the phase one study
  • 27:21do the phase two, phase three studies.
  • 27:25In general, a lot of companies
  • 27:27are more alike than different.
  • 27:29We have a similar regulatory framework, right?
  • 27:31So like I said, FDA says,
  • 27:33"We want you to do things this way."
  • 27:35So everybody does things that way, right?
  • 27:36We have a lot of the same employees.
  • 27:38So, again, there's different flavors of things, right?
  • 27:42Like the protocol review committee,
  • 27:44they're all gonna have one.
  • 27:45But some companies might have different
  • 27:46protocol review committees for different types of studies,
  • 27:50or maybe it's a little bit different
  • 27:52how they set it up or, you know,
  • 27:54but it's largely the same thing.
  • 27:57For biostats,
  • 27:59my advice would be to inquire with any sort of company
  • 28:04you're thinking about working for or with.
  • 28:07I would inquire about the methods group.
  • 28:11Why do you think I say that?
  • 28:18I'm the methods person,
  • 28:19it's not because the methods group
  • 28:21is the most important group, right?
  • 28:26Why do you think I would say
  • 28:29understand the methods group
  • 28:30at whatever company you might be?
  • 28:35It's actually related to what I just said.
  • 28:37<v ->So maybe to stay on top of the latest trends</v>
  • 28:41in the methods,
  • 28:42make sure that you guys have time devoted for that.
  • 28:46Stay on top of that.
  • 28:49<v ->A very noble answer and kind of right.</v>
  • 28:51(attendant laughing)
  • 28:53I mean kind of
  • 28:55in the sense that how you do that's gonna,
  • 28:59you want to do that, but how you do that is gonna vary.
  • 29:03I just said companies are more similar than different,
  • 29:05but your methods group is an exception to that.
  • 29:09It's actually not standard
  • 29:10and it varies a lot by the company, right?
  • 29:13So I used to work at Novartis, as we told you.
  • 29:17Novartis has pretty much kind of an internal department
  • 29:22of methods that it's almost like a mini academic institution
  • 29:25within the company
  • 29:26that they crank out academic-style papers.
  • 29:31Pretty large group, quite technical in their focus, right?
  • 29:34On the other extreme,
  • 29:35I also used to work for BMS
  • 29:38back when they had a site in Wallingford,
  • 29:40they had no methods group whatsoever.
  • 29:43You wanna do methods? It's your job.
  • 29:45Do it on nights and weekends, whatever, right?
  • 29:47So that's why I mean you're kinda right in the sense that
  • 29:49if you want to do that, you need to understand like,
  • 29:51"Well, am I gonna be working with something
  • 29:53like the Novartis group
  • 29:54or am I doing this all by myself, right?"
  • 29:56So you might ask a board about me.
  • 29:58At Vertex, I'm neither of those
  • 30:00kind of triangulated to that.
  • 30:02I don't have a group. I'm a one man group.
  • 30:07And so I view myself as kind of a facilitator
  • 30:12or a focus kind of person.
  • 30:14So if people are interested in doing methods,
  • 30:17I work with that person.
  • 30:18I'm co-authoring some papers.
  • 30:20I try to keep tabs on things that are going externally,
  • 30:23that kind of thing.
  • 30:24I try to help focus resources and utilize people
  • 30:29who have interest and availability at that time
  • 30:33maybe 'cause they're in that role, you know,
  • 30:37as possible to look at topics
  • 30:41that I can sense are of interest, right?
  • 30:44But my bigger point is it's gonna depend
  • 30:46quite a bit by the company.
  • 30:48FDA's not gonna specify how you use a methods group.
  • 30:52Really quickly, people often ask me,
  • 30:54"Well, what's kinda the difference
  • 30:56between people that are successful and not?"
  • 30:58These are pretty high level, but in general,
  • 31:00communication is important, right?
  • 31:03Being able to make a point concisely, clearly,
  • 31:07being able to communicate with non-statisticians,
  • 31:10being able to give a presentation even in front
  • 31:13of fairly large group of people
  • 31:14and understand and explain your arguments
  • 31:18for why you're doing what you are.
  • 31:21Time management, like I said,
  • 31:25there's a lot going on at a trial, you might be assigned to,
  • 31:28you know, two, three, four, five trials, right?
  • 31:30And they're all at a different point
  • 31:32in that live curve, right?
  • 31:33And so you need to be able to figure out
  • 31:36how you're gonna manage your time
  • 31:37across all those things, right?
  • 31:39So, you know, you're here in school,
  • 31:43maybe you have a job outside, you know,
  • 31:45whatever, at the library, you know?
  • 31:48People here don't care what's going at the library.
  • 31:50Library doesn't care what you're doing here, right?
  • 31:53So you might have five different studies
  • 31:55and you may have to figure out, well,
  • 31:58I need to do this on this study now,
  • 32:00not because the team's telling me they have to,
  • 32:02but because I know next month,
  • 32:03I'm gonna have to do something else in another study.
  • 32:06Right, so you have to kinda like juggle
  • 32:08those different time commitments
  • 32:09and that's something your manager would hopefully be able
  • 32:12to help you with.
  • 32:14But there's some skill in trying to figure that out.
  • 32:18And just being generally proactive and visible.
  • 32:21You want to,
  • 32:25you wanna be seen.
  • 32:26You know, you can give presentations, staff meetings,
  • 32:28there's working groups.
  • 32:29I'm involved with that kinda thing,
  • 32:30which is kind of like a team approach to research, right?
  • 32:34We see a topic that's of interest
  • 32:36and we kinda divvy people up and okay,
  • 32:38well, you can do the simulation,
  • 32:39you go look at the literature.
  • 32:41You know, something to get your name out there
  • 32:45that people can remember you.
  • 32:48But being the methods guy,
  • 32:49I thought I should comment at least a little bit
  • 32:51on some things I see going on in research right now,
  • 32:56what my thoughts on are.
  • 32:57There's a lot going on now with borrowing data
  • 33:01and using real-world data, right?
  • 33:03So people want to do a clinical trial.
  • 33:07It might only be a single-arm study
  • 33:10or it might be randomized,
  • 33:11but they wanna try to use historical data
  • 33:14or real-world data that are out there,
  • 33:15sorta combine the two in a way that borrows strength
  • 33:19and gives you a stronger conclusion.
  • 33:26There's a lot coming out with that now,
  • 33:29there's Bayesian approaches.
  • 33:30I don't know if many of you are familiar
  • 33:32with propensity score, I don't have time to go into it now,
  • 33:35but propensity score is basically an approach for trying
  • 33:38to connect historical data to your clinical trial data
  • 33:43and maybe match patients up in ways
  • 33:46that are similar as possible.
  • 33:48Right, you often know a lot of things the baselines
  • 33:51that are prognostic for the patient, right?
  • 33:54So you try to make it where you're as close
  • 33:57to an apples to apples comparison as possible.
  • 34:00There's a lot of details about exactly how you do that
  • 34:03that I think people can still figure out better
  • 34:06and learn more.
  • 34:08A lot of work with adaptive designs.
  • 34:09For example, you might combine a phase two dose selection
  • 34:13with the phase three efficacy part.
  • 34:15So there's a lot of people looking at that
  • 34:19because you can gain a lot of efficiency by not having to do
  • 34:23a separate phase two study and sort of start all over
  • 34:27with a separate phase three study, right?
  • 34:31My opinion, adaptive designs is that
  • 34:36if you sort of know what you need to do
  • 34:38that is you know your population,
  • 34:40you know what you wanna measure in those people,
  • 34:42you have a decent idea of what your treatment effect may be,
  • 34:46you know, then just do the phase three study
  • 34:47you think you oughta to do, right?
  • 34:49If you're kind of at the other extreme,
  • 34:50you really don't know the answer to much
  • 34:52of any of that stuff,
  • 34:53then you should probably do two separate studies, right?
  • 34:56Just do the phase two study that's not pivotal.
  • 34:59Learn what the heck is going on
  • 35:01and then do the phase three study.
  • 35:03If you're in the middle, which is you kinda mostly know
  • 35:06what you're doing,
  • 35:07but there's this one nagging question,
  • 35:08I don't know if I wanna do the high dose or the low dose,
  • 35:11or I don't know whether the patients need to be, you know,
  • 35:14have this biomarker or maybe a, you know,
  • 35:17I can do it on everybody, you know?
  • 35:19What population?
  • 35:20You have that one nagging question,
  • 35:21that's where an adaptive design can often be helpful, right?
  • 35:25That way, you can build a design around getting information
  • 35:30about that key piece
  • 35:32and going straight into phase three.
  • 35:36A couple things I think
  • 35:37are maybe a little bit under-researched,
  • 35:39could be looked at more.
  • 35:41I think a single-arm design that can change
  • 35:44to a randomized design, stage two,
  • 35:46is something I would like to see a better treatment of
  • 35:50because what I was talking about before
  • 35:52with the real-world data,
  • 35:53you're trying to compare it, right?
  • 35:55That works best in the extreme cases, right?
  • 35:58So if the real-world data say this is what happens
  • 36:02to an untreated patient, right?
  • 36:04You tend to see this sort of result.
  • 36:06If you do a single-arm study in your experimental therapy
  • 36:10and it looks the same, then you have a good answer.
  • 36:13The answer is your drug's not that good
  • 36:15and, you know, and you've done it efficiently, right?
  • 36:18Single-arm study is smaller, right?
  • 36:19If the results are great, much better,
  • 36:23then you've also have a good answer, right?
  • 36:25Even if there's some bias in the real-world data,
  • 36:27the results are so big,
  • 36:30it's gotta be something good with the drug
  • 36:32going on there, right?
  • 36:33It's that middle case that's kind of awkward, right?
  • 36:36Well, it's better, but it's maybe even p is less than 0.05,
  • 36:40but there might be bias in that historical data
  • 36:42and dang, I wish I'd done a randomized study
  • 36:45sometimes what you might think, right?
  • 36:47So then I think it'd be interesting,
  • 36:49you do state choose the randomized study,
  • 36:51you combine the two phases, right?
  • 36:53And then you come up with one result for the whole study.
  • 36:57And lastly, I'll mention,
  • 36:59I think there's more actually to do
  • 37:00with good old stratification.
  • 37:04We've had a couple situations where we were unsure
  • 37:07how to stratify in a study.
  • 37:09We actually had a group go back, look at the literature,
  • 37:12the literature actually a little bit more thin,
  • 37:16vague and conservative than I thought it was.
  • 37:19If you really want to understand, hey, from my study,
  • 37:22I've got 150 patients, these are the factors.
  • 37:26It not actually specific as you might think.
  • 37:29And you can get into things like whether
  • 37:31the stratification factors are correlated
  • 37:33with each other, right?
  • 37:36And continuous factors you might wanna stratify on
  • 37:39is another kinda area people could go.
  • 37:41So I think there's still more to do there.
  • 37:44I say it's important for small studies, right?
  • 37:46So if you're doing a big study,
  • 37:48the law of large numbers is gonna probably cover,
  • 37:50you could probably stratify nothing
  • 37:52and it'll be probably okay, right?
  • 37:54But studies are getting smaller and smaller,
  • 37:56people are in more and more focused groups.
  • 37:59A small study,
  • 38:01if I can say something a little bit controversial,
  • 38:04small randomized studies I think are a bit dangerous, right?
  • 38:08People love this notion that a randomized study's unbiased,
  • 38:11but that's in the long term.
  • 38:15I only get one chance to do my study.
  • 38:17There's only 30 or 40 patients in it
  • 38:20that might not be big enough to guarantee
  • 38:21that everything's gonna work out even.
  • 38:23So that could be a little bit dangerous.
  • 38:25If you're gonna do it,
  • 38:26you might wanna think about stratification carefully.
  • 38:28Probably already talked to you.
  • 38:30I wanted to leave at least eight minutes.
  • 38:31<v ->Okay, you've got plenty of time,</v>
  • 38:33you've got like 10 minutes.
  • 38:34<v ->I think I was told like or by 12:50 or whatever.</v>
  • 38:38<v ->Yeah, we have to be done by 12:50, yeah.</v>
  • 38:40By 12:50. <v ->Right, so.</v>
  • 38:42<v ->Question.</v> <v ->12:40, so we got like 10.</v>
  • 38:45<v ->Anyone in the room or on.</v>
  • 38:46<v ->Yes.</v>
  • 38:48<v ->So, okay, I feel like drug development,</v>
  • 38:49and in particular FDA, are pretty conservative
  • 38:52with how they like designed their trials,
  • 38:53especially with like phase two and phase three trials.
  • 38:55So again,
  • 38:56obviously, you've talking about like some of these
  • 38:58more interesting like, you know, ideas like adaptive trials.
  • 39:01And let's say like you're in a company that like has,
  • 39:03I'm not sure Vertex has done a kind of adaptive trial,
  • 39:07not that I'm aware of.
  • 39:08But like if let's say
  • 39:10you thought it's a good idea for a certain drug,
  • 39:11for a certain program, like how would you go about
  • 39:14like making the case that an adaptive trial is better?
  • 39:17Like obviously, like this is assuming
  • 39:19you have like a theory behind it
  • 39:20that it is, for some reason, better.
  • 39:23<v ->Yeah, that's a very good question.</v>
  • 39:27We do have an adaptive study actually,
  • 39:29the one like I had mentioned there
  • 39:30with two different doses, do a phase two,
  • 39:33and then we're gonna pick a dose and dose into phase three.
  • 39:37There's a series of meetings.
  • 39:39I didn't have time to talk about it,
  • 39:42but there's like type A, type B, type C meetings
  • 39:45you have with FDA along the way.
  • 39:47There's another type of meeting,
  • 39:48one of them is called the end of phase two meeting.
  • 39:51So you do have meetings at FDA
  • 39:52where you can propose things and say,
  • 39:54"Hey, we think we oughta do it this way."
  • 39:58As you may have briefly seen on the slide
  • 40:01about rare diseases,
  • 40:03the regulatory framework on rare diseases is less certain,
  • 40:08which is both good and bad.
  • 40:09I mean, right, it can be bad in the sense
  • 40:13that you're not really sure what you're allowed to do.
  • 40:16But it's also good in the sense
  • 40:17that it's more possible for you to argue things like,
  • 40:20"Hey, there's not that many, you know,
  • 40:24say kids with Duchenne muscular dystrophy, you know?"
  • 40:27It's not that big a population.
  • 40:28These kids have a serious disease.
  • 40:31We need some flexibility in our design
  • 40:33to show that our drug is working, you know?
  • 40:35So it's a little bit easier in rare diseases.
  • 40:39So you could either use
  • 40:40those type A, B, C meetings with them
  • 40:42and, of course, you're gonna send them
  • 40:44your protocol and stuff
  • 40:46to sort of make your case in a meeting.
  • 40:48They also have a program called
  • 40:50the Complex Innovative Design Program,
  • 40:53which is actually run by their stats people
  • 40:56where you can set up extra meetings
  • 40:59to review things like simulations, right?
  • 41:02So their biggest concern is maintaining type one error,
  • 41:07right? <v ->So I mean like,</v>
  • 41:08so I worked in drug development for the past six years
  • 41:10and like interacting with FDA and like FDA minutes and such,
  • 41:14like I've seen like them like say one thing
  • 41:17and then like the next meeting say,
  • 41:18"Actually, we change our minds."
  • 41:20Or they give like vague answers.
  • 41:22And so you like internally have to kinda figure out
  • 41:24like what you're gonna do.
  • 41:25So like in those situations,
  • 41:26like where okay, like FDA like might be okay,
  • 41:28we're not actually sure, like I guess
  • 41:30like how do you build like the,
  • 41:32and then obviously, the tendency then
  • 41:33is to like just go back into just do
  • 41:36like just what you traditionally done,
  • 41:37but like if you like are really advocating
  • 41:38for something like this.
  • 41:40<v ->Yeah, there's a balance there.</v>
  • 41:41It's not uncommon
  • 41:42to be like not completely sure what FDA does.
  • 41:45I mean if you schedule one of these meetings with 'em,
  • 41:48yeah, they will give you a response.
  • 41:50It might be in person, it might be written,
  • 41:53it might not be everything you would want to see.
  • 41:56You might still have questions after seeing it.
  • 41:58So it depends.
  • 41:59Sometimes they're pretty clear,
  • 42:01no, we don't like this or whatever.
  • 42:03Other times, you're kinda still
  • 42:04kinda scratching your head a bit.
  • 42:07A lot of times, they say something is a review issue,
  • 42:10which means, well, you know,
  • 42:12if you get the data, we'll look at it
  • 42:14and see then, you know?
  • 42:17So that's kinda the best you can do.
  • 42:19It's difficult to get certainty.
  • 42:21There's definitely a lot of planning
  • 42:23around communication with FDA.
  • 42:26What do we wanna say?
  • 42:27I think of it a little bit
  • 42:28as kinda like going to the oracle in ancient Greece, right?
  • 42:32It's sort of like, you know,
  • 42:34you have to plan and hope that, you know,
  • 42:36they're gonna tell you.
  • 42:38You can interpret what sort of prophetic thing
  • 42:41they're going to tell you.
  • 42:44Sorry, I don't have a better answer for you than that.
  • 42:47Oh, but what I was saying earlier was there is something
  • 42:49called the Complex Innovative Design Program
  • 42:52where you can set up,
  • 42:55if they accept you, you get like two extra meetings
  • 42:58where you can review things like simulations.
  • 43:00So if you wanna do something complicated, they'll often say,
  • 43:03"Well, we wanna make sure type one error is controlled."
  • 43:07And if the answer to that question is,
  • 43:09"Well, we got a bunch of simulations to show you
  • 43:12that it controls type one error,"
  • 43:14then you might wanna do something like that
  • 43:16to kinda dig through the details of,
  • 43:19well, how did you set up your simulations and all that.
  • 43:23Other questions?
  • 43:27I feel like I've been ignoring everybody over here.
  • 43:30<v ->Got a question over here.</v>
  • 43:31<v ->Oh, yes.</v>
  • 43:32<v Student>Thank you for the presentation.</v>
  • 43:35The question is,
  • 43:36is it possible to revise your SAP
  • 43:38after the trial started?
  • 43:40If the answer is yes, is there any restriction on it?
  • 43:46<v ->So again, back to the blinded versus unblinded, right?</v>
  • 43:50If it's an unblinded study, you can,
  • 43:54but it's gonna be viewed suspiciously,
  • 43:57for lack of a better word, right?
  • 43:58It's gonna be viewed as a post hoc change.
  • 44:01Why are you changing this?
  • 44:03You suspected that something,
  • 44:05if it's a blinded study, yes, you can.
  • 44:08You can amend your SAP.
  • 44:11That's not terribly uncommon.
  • 44:13For example, you might,
  • 44:14during the course of the study, still blinded,
  • 44:17you might learn new information,
  • 44:19new published data may come out.
  • 44:21You might learn something about the baseline data
  • 44:24on your study, you know, the distribution
  • 44:26or something like that.
  • 44:28So as a result, you may wanna pivot what your SAP is
  • 44:32and if it's still blinded,
  • 44:34generally speaking, you could still do that
  • 44:37and it'd be used pre-specified.
  • 44:39<v Student>Thank you.</v>
  • 44:42<v ->Yes.</v>
  • 44:44<v Learner>I'm very sure that there should be</v>
  • 44:46many variables to consider when it comes to this study.
  • 44:48And in case of these small sample size studies,
  • 44:52I'm pretty sure that a stratification
  • 44:54might really be inefficient
  • 44:57to contain all these variables at one place.
  • 45:01And I'm very curious,
  • 45:02how do you actually like manage when it comes
  • 45:05to the small sample size
  • 45:06studies? <v ->Yeah.</v>
  • 45:07Yeah, also good question.
  • 45:08Again, I think this is a good area for more research.
  • 45:11We had a group look at some simulations.
  • 45:15Here's my qualitative assessment of what we found.
  • 45:18One, I think in general, people worry a bit too much
  • 45:21about what you're saying.
  • 45:23As long as like the marginals work out pretty well,
  • 45:27then you're actually probably still okay
  • 45:30as far as stratification goes.
  • 45:34I think there's a bigger danger of bad luck imbalance.
  • 45:39I don't wanna speculate too much,
  • 45:41but there was a competitor that had a study come out,
  • 45:44rare disease, small study,
  • 45:46just by bad luck, they had some imbalance
  • 45:49in one other strata.
  • 45:50And maybe it could be the reason why the study,
  • 45:55statistically speaking, failed.
  • 45:59And so, yeah, here's my sports analogy, okay?
  • 46:04So small studies are kind of like a football game
  • 46:08where you're losing at the end of the game.
  • 46:11You wanna throw the ball 'cause you need to score, right?
  • 46:14The defense is going to be playing for that.
  • 46:17They're gonna make it harder for you to do that,
  • 46:18but you need to do it anyhow, right?
  • 46:21That's kinda like the way stratification is.
  • 46:22Yes, it's harder to do it in a small study,
  • 46:25but you need to think about it and try to do it anyhow.
  • 46:28'Cause if you just throw your hands up and say,
  • 46:29"Eh, whatever," then you might have what happened to you,
  • 46:33what happened to this competitor.
  • 46:36And so we actually wrote a program so you could simulate
  • 46:39and say, "Hey, from my study, I've got X patients,
  • 46:42these are the stratification factors.
  • 46:45What's gonna happen to my type one and type two error?"
  • 46:49But you are right that in principle,
  • 46:51you can't overdo it.
  • 46:53I just think the point where you overdo it
  • 46:54is further out than most people think.
  • 47:02<v ->Two more minutes.</v>
  • 47:04Any other questions?
  • 47:08Or online?
  • 47:11<v ->Sorry if I've ignored people online.</v>
  • 47:13<v ->We have-</v>
  • 47:14<v Student>I have a question.</v>
  • 47:15<v ->I don't know how many people we have online.</v>
  • 47:17<v ->Let me just move to see if there's the chat.</v>
  • 47:19<v ->Do I?</v>
  • 47:21<v ->To pop up.</v>
  • 47:22<v ->Oh, it would pop up? Okay.</v>
  • 47:25That's doesn't look like we have any chat.
  • 47:27<v Student>Can I ask a question?</v>
  • 47:29So you mentioned time management
  • 47:31as an important skill obviously.
  • 47:35Can you tell us about sort of what is
  • 47:39the work cycle of a biostatistician?
  • 47:42So are they working on many studies at one time?
  • 47:46Are they getting a lot of experience doing phase one
  • 47:50or what's the volume of which they're working on and how?
  • 47:56<v ->Yeah, it's, as you expect it, you know, it depends.</v>
  • 47:59I mean what sort of study someone has assigned to you
  • 48:04is a little bit random.
  • 48:05I mean what they need somebody to do.
  • 48:08It's not uncommon for people to be assigned to say
  • 48:11two to five studies depending on how big they are,
  • 48:16how short you are on people, et cetera, you know?
  • 48:20And so you have to try and manage that kind of work.
  • 48:23I was just talking about across those, you know,
  • 48:25say two to five studies.
  • 48:28You also spend, I'd say roughly 10 to 20% of your time
  • 48:34doing non-project stuff.
  • 48:37Things I mentioned like the working groups,
  • 48:40maybe some independent research,
  • 48:42maybe other kinda service to the department.
  • 48:44I mean, you know, obviously,
  • 48:45I spend time interviewing people, stuff like that.
  • 48:49So that's kind of the breakdown of what people are doing.
  • 48:53<v Student>And are they working in teams</v>
  • 48:55as statisticians or?
  • 48:56<v ->Yeah, so you would have, you know, again,</v>
  • 48:59you have a project level, right?
  • 49:01So you would have a project statistician,
  • 49:02somebody who's somewhat more senior,
  • 49:06who manages the whole project.
  • 49:08And then under that person, you might have whatever,
  • 49:11you know, two, three, four,
  • 49:12depends how big the project is,
  • 49:14statisticians who manage individual studies, right?
  • 49:17So you might have, you know, I don't know,
  • 49:1910 studies in the project, right?
  • 49:21And you might have three statisticians
  • 49:24who each have three each or something like that
  • 49:27reporting to that project statistician
  • 49:29who's kinda doing the overall work on the drug.
  • 49:36<v ->All right.</v>
  • 49:37So thanks so much.
  • 49:41In the interest of time,
  • 49:42we're going to go ahead and stop here.
  • 49:44But let's thank our speaker again.
  • 49:50<v ->Great insight into the industry</v>
  • 49:54and have a wonderful day.
  • 49:57<v ->Sign in sheet.</v>
  • 49:57<v ->Oh yeah.</v>
  • 49:58We have a sign in sheet.
  • 50:00(attendants chattering indistinctly)
  • 50:02Thank you.
  • 50:03(attendants chattering indistinctly)
  • 50:10So we got a couple of 'em up here.
  • 50:15You still need to sign in, please do.
  • 50:17<v ->The thing is that</v>
  • 50:18(student muttering indistinctly)
  • 50:19well, technically, have like four, five.
  • 50:22(students chattering indistinctly)