Pharmacogenetics difficult or just impossible - PowerPoint PPT Presentation

1 / 46
About This Presentation
Title:

Pharmacogenetics difficult or just impossible

Description:

Most variability seen in clinical ... Individual Therapy: New Dawn or False Dawn. Drug Information Journal 2001; ... time increases. Only optimal for one given ... – PowerPoint PPT presentation

Number of Views:60
Avg rating:3.0/5.0
Slides: 47
Provided by: stephe326
Category:

less

Transcript and Presenter's Notes

Title: Pharmacogenetics difficult or just impossible


1
Pharmacogenetics - difficult or just impossible?
  • Stephen Senn

2
Based on chapter 25 (with some additional
material from chapter 24).
3
Statistics and the medicine of the future
Mass-market drugs have successfully treated
millions, but they have a corollary one size has
to fit all. Every patient gets the same drug
yet every patient is different and responds
differently to drugs, treatments and dosesEach
drug each dose, each treatment will be tuned not
to the average patient but to the individual. It
is the difference between an off-the-peg suit and
one made to measure. Chris Harbron, Significance,
June 2006, p67 (My italics)
4
Genes, Means and Screens
It will soon be possible for patients in clinical
trials to undergo genetic tests to identify those
individuals who will respond favourably to the
drug candidate, based on their genotype, and
therefore the underlying mechanism of their
disease. This will translate into smaller, more
effective clinical trials with corresponding cost
savings and ultimately better treatment in
general practice. In addition, clinical trials
will be capable of screening for genes involved
in the absorption, metabolism and clearance of
drugs and the genes which are likely to
predispose a patient to drug-induced
side-effects. In this way, individual patients
will be targeted with specific treatment and
personalised dosing regimens to maximise efficacy
and minimise pharmacokinetic problems and other
side-effects.
Sir Richard
Sykes, FRS
5
Claims for Pharmacogenomics
  • Clinical trials
  • Cleaner signal
  • Non-responders eliminated
  • Treatment strategies
  • Theranostics
  • Markets
  • Lower volume
  • Higher price per patient day

6
Pharmacogenetics A cutting-edge science that
will start delivering miracle cures the year
after next.
7
Implicit Assumptions
  • Most variability seen in clinical trials is
    genetic
  • Furthermore it is not revealed in obvious
    phenotypes
  • Example height and forced expiratory volume
    (FEV1) in one second
  • Height predicts FEV1 and height is partly
    genetically determined but you dont need
    pharmacogenetics to measure height
  • We are going to be able to find it
  • Small number of genes responsible
  • Low (or no) interactive effects (genes act
    singly)
  • We will know where to look
  • In fact we simply dont know if most variation in
    clinical trials is due to individual response let
    alone genetic variability

8
Moerman and Placebos
  • Paper of 1984
  • Investigated 31 placebo-controlled trials of
    cimetidine in ulcer
  • Found considerable variation in response
  • Considered placebo response rate was an important
    factor
  • Has been cited by others as proof of variation in
    treatment effect from trial to trial

9
(No Transcript)
10
Analysis of Ulcer Data of Moerman Logistic
regression model Regression analysis
Response variate Y Binomial totals
n Distribution Binomial Link function
Logit Fitted terms Constant Trial
Treat Accumulated analysis of deviance
mean deviance
approx Change d.f. deviance deviance ratio
chi pr Trial 30 116.627 3.888
3.89 lt.001 Treat 1 170.605 170.605
170.60 lt.001 Treat.Trial 30 34.622
1.154 1.15 0.257 Total 61
321.853 5.276
11
Lessons from Moerman
  • There is no evidence of variation in the
    treatment effect from trial to trial
  • We should be wary about concluding that apparent
    variation signals true variation
  • We need to be cautious and think carefully about
    analysis
  • Of courseit is always possible that there was
    exactly the same genetic mix in each trial
  • in which case gene by treatment would not
    manifest itself as trial by treatment interaction
  • We need to understand components of variation

12
What you learn in your first ANOVA course
  • Completely randomised design
  • One way ANOVA
  • Randomised blocks design
  • Two way ANOVA
  • Randomised blocks design with replication
  • Two way ANOVA with interaction
  • No replication, no interaction

13
1. Senn SJ. Individual Therapy New Dawn or False
Dawn. Drug Information Journal 200135(4)1479-149
4.
14
(No Transcript)
15
(No Transcript)
16
(No Transcript)
17
But Suppose you Only Have one Cross-over
18
Two StrategiesGene led Treatment led
  • Identify suitable loci using in vitro studies
  • Generate possible treatment hypotheses
  • Select suitable patients
  • Enrichment studies
  • Prove that the treatment works for these patients
  • Identify potential treatments
  • Find those that work in general
  • Find those where patient by treatment interaction
    is considerable
  • Search for genetic subgroups

19
Strategy 1 (Treatment led)Whole genome matching
Drug responses are not persistent affairs they
are temporary characteristics. One therefore may
ask whether twin studies are necessary to assess
the genetic element in pharmacological
responsiveness.To measure the genetic component
contributing to their variability, it seems
logical to investigate the response variation by
repeated drug administration to given
individuals, and to compare the variability of
the responses within and between individuals.
Kalow et al, Pharmacogenetics,8, 283-289, 1998.
20
Physicians like within patient studies but
statisticians get cross over them The
Sayings of Confuseus
21
Possible Strategy
  • Run multi-period cross-overs
  • Patient by treatment interaction becomes
    identifiable
  • This provides an upper bound for gene by
    treatment interaction
  • Because patients differ by more than their genes

22
Advantages and DisadvantagesPRO
CON
  • Cheap
  • Low tech
  • Insight into sources of variation gained
  • Good at identifying if there are gene by
    treatment interactions
  • Only suitable for chronic diseases
  • Demanding of patients time
  • Unglamorous
  • Bad at identifying which genes are responsible
    for treatment interactions

23
In Practice
  • We hardly ever run repeated cross-over designs
  • Hence we are incapable of telling formally which
    of the two cases applies
  • Most researchers simply assume by default that
    case 1 is the case that applies
  • They assume that variation in response is a
    permanent feature of patients
  • This is what might be called patient-by-treatment
    interaction and provides an upper bound for
    gene-by-treatment interaction
  • Strangely enough, an area in which such repeated
    cross-overs have been applied is one in which
    interaction is unlikely to be important
    bioequivalence

24
Shumaker and Metzler
A single dose (125 mg), two-formulation
four-period, bioequivalence trial of phenytoin
compared the test product with the reference
product. The study used the replicated design RT
T R TR R T where R is the reference product and
T is the test product. This design can be
considered two replications
Replicate 1 Replicate 2
RT and TR
TR RT.
Drug Information Journal, Vol. 32, pp. 10631072,
1998
25
(No Transcript)
26
(No Transcript)
27
Simple approach ignoring period Accumulated
analysis of variance Change d.f. s.s.
m.s. v.r. F pr. SUB 25
7.748 0.310 82.3 lt.001 PROD 1
0.00253 0.00253 0.67 0.416
SUB.PROD 25 0.0679 0.00272 0.72
0.811 Residual 52 0.196 0.00377 Total
103 8.014 0.0778 Estimated variance
components Random term component s.e. SUB
0.076800 0.021915 SUB.PROD -0.000524
0.000533
28
Pharmacogenomics A subject with great promise.
29
Strategy Two (Gene Led) Genetic Subgroups
  • In many indications cross-over trials are
    impossible
  • This means that we have to investigate
    interaction not by whole genome matching (each
    patient his or her own control) but by genetic
    subgroups
  • Patients provide replication of the subgroup
  • Which genes should we use?
  • How should we group genotypes?
  • Will we have the statistical power to investigate
    subgroup interactions?

30
A Dose-Response View of Genetics
31
Pairs of Orthogonal Contrasts
See also Balding DJ Nat Rev Genet
20067(10)781-91.
32
(No Transcript)
33
(No Transcript)
34
Impact on trial design
  • Suppose that you know that a dominant (with a as
    dominant allele) model applies
  • Then optimal clinical trial design implies that
    you should have half the patients on AA and the
    other half on Aa or aa
  • But if HW equilibrium applies this will only
    happen naturally if the probability of allele A
    is v2
  • Of course, since disease is a selection process
    HW equilibrium may not apply anyway but this does
    not get around the problem
  • The distribution of genotypes may be very
    unfavourable for efficient investigation

35
(No Transcript)
36
(No Transcript)
37
(No Transcript)
38
Enrichment studies?
  • Could we fix enrollment so that we have optimal
    genotype frequencies?
  • Problems
  • Recruitment time increases
  • Only optimal for one given locus
  • Requires knowledge of allele copy response
  • Dominant, recessive, linear etc
  • Requires knowledge of relevant locus
  • Interferes with other purposes of trial

39
Pharmacoeconomics and genotyping
  • Finding a subset of patients who benefit has the
    potential to make the market smaller
  • This might imply that it is not in the economic
    interests of sponsors to do so
  • In fact models can be produced that suggest
    subsetting is valuable
  • An adaptation of a model of Kwerel(1980), which
    was originally applied to another situation, will
    be considered

40
Economic Model
Crucial assumption the sponsor can change the
price
41
Pharmacogentic model
Position is shown on next slide
42
(No Transcript)
43
(No Transcript)
44
An Issue with Covariates
  • Covariate adjustment in clinical trials is
    generally beneficial and to be recommended
  • However a point to note is that the covariates in
    question should be measured prior to allocation
    of treatment
  • Otherwise problems arise with causal inference
  • Some of the treatment effect may be removed
  • However, when looking at gene-by-treatment
    interaction there is a potential problem
  • Covariates can be pre treatment allocation and
    hence unaffected by treatment but can be affected
    by genetics
  • Hence fitting the covariate could remove some of
    the gene effect
  • Will inference about gene-by-treatment
    interaction still be sound?
  • This issue requires careful thought

45
An Overlooked Source of Genetic Variability
  • Humans may be classified into two important
    genetic subtypes
  • One of these suffers from a massive chromosomal
    deficiency
  • This is expressed in
  • important phenotypic differences
  • a huge disadvantage in life expectancy
  • Many treatment strategies take no account of this
  • The names of these subtypes are...

46
Males and females
Write a Comment
User Comments (0)
About PowerShow.com