Modeling and Simualtion: challenges for the clinical programmer and for the group leader Vincent Buchheit PHUSE 2010.

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Modeling and Simualtion: challenges for the clinical programmer and for the group leader Vincent Buchheit PHUSE 2010

AGENDA  M&S – what is that? – What do we do?  Modeling dataset  Challenges for the group leader  Challenges for the clinical programmer | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only2

M&S – What is that?  Modeling and Simulation is a key component to speed up drug development and reduce failures | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only3

M&S – What do we do  We don‘t support all clinical programs.  We support projects where we think we can impact the drug development: Chose the best dose, set of dose, dose regimen Impact study design Stop the drug development  We support projects when there is an unexpected problem: Phase 3 failed – What happened Challenges from FDA on study design, dose, dose regimen Safety issue, efficacy issue.... | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only4

M&S – What we do  We use “non“ traditional pharmaceutical statistical methodology  Why do we need programmer?  Modeling need data  Often large dataset, several studies (sometimes millions observations and >60 variables)  Pool trials within a project, across projects within the same indication  Not all modelers have skills to efficiently pool data across many studies | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only5

M&S – What we do  Often complex file  Need to integrate a lot of information in 1 single file  Need to deliver harmonized, clean and ready to use modeling dataset  Need to include complete dose history (including dose change, dose interruption...), Pharmacokinetic, Pharmacodynamic, comedication (what, when, dose...), covariates... | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only6

Nonmem file structure – Time event dataset Need to harmonized and clean Covariates time dependant: Calcium Magnesium Potassium Sodium Absolute Platelet count Dose amount and dose regimen Flag for estimated dose clock time Flag for comedication | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only7 For all dose events: Patient ID, calendar date, clock time, dose amount For all PK samples: Patient ID, calendar date, clock time, PK concentration For all ECG events: Patient ID, calendar date, clock time, QT interval fridericia For all lab events: Patient ID, calendar date, clock time, DPLCNT  Covariates : Study ID Patient ID Age Gender Race Height Weight BMI BSA Creatine Clearance Dosage formulation Flags for comedications Nonmem variables: Time since first dose Elapse time Days since first observations Days since first dose Sort by calendar date, clock time

Nonmem file structure – Time event dataset | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only8

Modeling dataset  The modeling input dataset is like a book, it‘s the patient history  Example:  Patient 1, 60 years old with type 2 diabetes is enrolled in the study ABC123. On February 1st, he took 20 mg of the medication A at 08:00 AM. 5 minutes prior to the dose administration, we measured his PK concentration, the value was 0 ug/mL. 1 hour later, his PK concentration was 30 ug/mL. | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only9

Modeling dataset  The book has to make sense. Now imagine the following story for the same patient  Patient 1, 60 years old with type 2 diabetes is enrolled in the study ABC123. On February 1st, he took 20 mg of the medication A at 08:00 AM. 5 minutes prior to the dose administration, we measured his PK concentration, the value was 10 ug/mL. 1 hour later, his PK concentration was 30 ug/mL.  It does not make sense | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only10

Modeling dataset  We have to fix it  We have to try to understand where the issue is coming from. Problem in the program? data issues? Can we get an updated clinical database? Ultimately, we‘ll flag this observation  The story has to make sense, otherwise the modeling results can be impacted  The quality of the modeling inputs depends on the data quality | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only11

What are the challenges for the group leader? | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only12  Planning is difficult – don‘t have the workload overview for the next months  Planning resources is difficult – you need to manage all activities with the available resources  Hiring pharmaceutical programmers with experienced in M&S is difficult, because it‘s rare  Coach M&S programmer is a challenge. Why? Because we have to work differently

Challenges for the programmer – „politic“  Undersdand the business. What is M&S. How it can impacts drug development. Why do we have to work differently compare to a „standard“ biostatistic group  M&S is a CRO within a pharmaceutical company,i.e. A service provider  M&S is not a „mandatory“ department in a pharmaceutical company. Therefore we have to always show value to the company: Benefits > cost  Otherwise.... FTE moved somewhere else | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only13

Challenges for the programmer – „politic“  Some partners pay for modeling : SLA agreement  25% of our resources are funded by SLA agreement  They need to have good quality sciences for what they pay for  Otherwise the risk is to see some of the SLA not renewed | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only14

Challenges for the programmer – „new skils“  Understand the basics of Pharmacokinetic, pharmacodynamic. What is SS? What is a dose response analysis. What is the half life of a drug?  Understand the specific softwares for modeling and their restriction, data formats, file structure....  Know how to convert the „book“ into a modeling input dataset | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only15

Challenges for the clinical programmer  Modeling need data and data specification  Data specification is based on: Software used What is the clinical question(s) we‘re trying to adress Data issue Modeling results  Data specification is an interactive process, a living document  We don‘t get/write detailed data specifications in advance  The data specifications are finalized at the same time as the modeling dataset | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only16

Challenges for the clinical programmer  Because M&S is new, not all clinical team fully understand and trust what we do  If we do a combined analysis with our biostatistics colleagues, and if N is not the same, they‘ll not like it. M&S will have to update his analysis => changes in data specification at the last minute otherwise the M&S inputs may be lost  Some of the M&S analysis will be send to Heatlh Authorities – We know them in advance  Others are not planned, but because the clinical team consider the M&S report can be a crucial document, we have to validate it (double programming) asap | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only17

Conclusions  Most of the M&S Programmers come from a „standard“ biostatistic department  They often need several months to be used to this new work environment. The difficulties are: Why data specifications are not well defined and finalised a while ago Why do we need to validate this file asap? Why this was not planned earlier...  It‘s still SAS programming – but the work environment is different | PHUSE 2010 | Vincent Buchheit | October 2010 | MA05 | Business Use Only18