24
Optimization of personalized therapies for anticancer treatment Alexei Vazquez The Cancer Institute of New Jersey

Optimization of personalized therapies for anticancer treatment

Embed Size (px)

DESCRIPTION

Optimization of personalized therapies for anticancer treatment. Alexei Vazquez The Cancer Institute of New Jersey. Human cancers are heterogeneous. Meric-Bernstam, F. & Mills, G. B. ( 2012) Nat. Rev. Clin. Oncol. doi:10.1038/nrclinonc.2012.127. Human cancers are heterogeneous. - PowerPoint PPT Presentation

Citation preview

Page 1: Optimization of  personalized therapies for anticancer treatment

Optimization of personalized therapies for

anticancer treatment

Alexei Vazquez

The Cancer Institute of New Jersey

Page 2: Optimization of  personalized therapies for anticancer treatment

Human cancers are heterogeneous

Meric-Bernstam, F. & Mills, G. B. (2012) Nat. Rev. Clin. Oncol. doi:10.1038/nrclinonc.2012.127

Page 3: Optimization of  personalized therapies for anticancer treatment

Beltran H et al (2012) Cancer Res

DNA-sequencing of aggressive prostate cancers

Human cancers are heterogeneous

Page 4: Optimization of  personalized therapies for anticancer treatment

Personalized cancer therapy

Meric-Bernstam F & Mills GB (2012) Nat Rev Clin Oncol

PersonalizedTherapy

Page 5: Optimization of  personalized therapies for anticancer treatment

Targeted therapies

Aggarwal S (2010) Nat Rev Drug Discov

Page 6: Optimization of  personalized therapies for anticancer treatment

Drug combinations are needed

Number of drugs

Ove

rall

resp

onse

rat

e (%

)

Page 7: Optimization of  personalized therapies for anticancer treatment

Y1

Y2

Y3

Y4

X1

X2

X3

X4

X5

Samples/markers Drugs/markers

Personalized cancer therapy: Input information

Xi sample barcodeYi drug barcode(supported by some empirical evidence,

not necessarily optimal, e.g. Viagra)

Page 8: Optimization of  personalized therapies for anticancer treatment

Y1

Y2

Y3

Y4

X1

X2

X3

X4

X5

fj(Xi,Yj) drug-to-sample protocol

e.g., suggest if the sample and the drug have a common marker

Samples/markers Drugs/markers

Drug-to-sample protocol

fj(Xi,Yj)

Page 9: Optimization of  personalized therapies for anticancer treatment

Y1

Y2

Y3

Y4

X1

X2

X3

X4

X5

Samples/markers Drugs/markers

Sample protocol

g sample protocol

e.g., Treat with the suggested drug with highest expected response

fj(Xi,Yj)g

Page 10: Optimization of  personalized therapies for anticancer treatment

Y1

Y2

Y3

Y4

X1

X2

X3

X4

X5

Samples/markers Drugs/markers

Optimization

Find the drug marker assignments Yj, the drug-to-sample protocols fj and sample protocol g that maximize the overall response rate O.

Ove

rall

resp

onse

rat

e (O

)

fj(Xi,Yj)g

Page 11: Optimization of  personalized therapies for anticancer treatment

Drug-to-sample protocol

fj Boolean function with Kj=|Yj| inputs

Kj number of markers used to inform treatment with dug j

Page 12: Optimization of  personalized therapies for anticancer treatment

From clinical trials we can determine

q0jk the probability that a patient responds to treatment with drug j given that the cancer does not harbor the marker k

q1jk the probability that a patient responds to treatment with drug j given that the cancer harbors the marker k

Estimate the probability that a cancer i responds to a drug j as the mean of qljk over the markers assigned to drug j, taking into account the status of those markers in cancer i

Sample protocol

Page 13: Optimization of  personalized therapies for anticancer treatment

Sample protocol: one possible choice

Specify a maximum drug combination size c

For each sample, choose the c suggested drugs with the highest expected response (personalized drug combination)

More precisely, given a sample i, a list of di suggested drugs, and the expected probabilities of respose p*ij

Sort the suggested drugs in decreasing order of p*ij

Select the first Ci=max(di,c) drugs

Page 14: Optimization of  personalized therapies for anticancer treatment

Overall response ratenon-interacting drugs approximation

In the absence of drug-interactions, the probability that a sample responds to its personalized drug combination is given by the probability that the sample responds to at least one drug in the combination

Overall response rate

Page 15: Optimization of  personalized therapies for anticancer treatment

Add/remove marker

Change function(Kj,fj) (Kj,f’j)

Optimization

Page 16: Optimization of  personalized therapies for anticancer treatment

• S=714 cancer cell lines• M*=921 markers (cancer type, mutations,

deletions, amplifications). • M=181 markers present in at least 10 samples• D=138 drugs

• IC50ij, drug concentration of drug j that is needed to inhibit the growth of cell line i 50% relative to untreated controls

• Data from the Sanger Institute: Genomics of Drug Sensitivity in Cancer

Case study

Page 17: Optimization of  personalized therapies for anticancer treatment

Case study: empirical probability of response: pij

Drug concentration reaching the cancer cells

Drug concentration to achieve response(IC50ij)

Pro

bab

ility

de

nsi

tyTreatment drug concentration(fixed for each drug)

pij probability that the concentration of drug j reaching the cancer cells of type i is below the drug concentration required for response

models drug metabolismvariations in the humanpopulation

Page 18: Optimization of  personalized therapies for anticancer treatment

Case study: response-by-marker approximation

By-marker response probability:

Sample response probability, response-by-marker approx.

Page 19: Optimization of  personalized therapies for anticancer treatment

Case study: overall response rate

Response-by-marker approximation(for optimization)

Empirical(for validation)

Page 20: Optimization of  personalized therapies for anticancer treatment

• Kj=0,1,2• Metropolis-Hastings step

– Select a rule from (add marker, remove marker, change function)

– Select a drug consistent with that rule– Update its Boolean function– Accept the change with probability

• Annealing– Start with =0 0=0– Perform N Metropolis-Hastings steps N=D +, exit when =max =0.01, max=100

Case study: Optimization with simulated annealing

Page 21: Optimization of  personalized therapies for anticancer treatment

Case study: convergence

Page 22: Optimization of  personalized therapies for anticancer treatment

Case study: ORR vs combination size

Page 23: Optimization of  personalized therapies for anticancer treatment

Case study: number of drugs vs combination size

Page 24: Optimization of  personalized therapies for anticancer treatment

Outlook

• Efficient algorithm, bounds

• Drug interactions and toxicity

• Constraints– Cost– Insurance coverage

• Bayesian formulation