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Cancer Stem Cells: Some statistical issues  What you would like to do: Identify ways to design studies with increased statistical “power” in clinical.

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Presentation on theme: "Cancer Stem Cells: Some statistical issues  What you would like to do: Identify ways to design studies with increased statistical “power” in clinical."— Presentation transcript:

1 Cancer Stem Cells: Some statistical issues  What you would like to do: Identify ways to design studies with increased statistical “power” in clinical trials of targeted therapies Develop statistically meaningful biologic response criteria  First things first: Current in vivo assays/measures have limitations How well is the biology understood?

2 Measuring Response  Relapse-free survival, Overall survival Pros: these are the “gold-standards” Problems: takes too long, too costly  Biomarkers (“correlative” outcomes) Pros: feasible in the short-term Cons:  can be costly  might have many to measure  might not know all the relevant markers  might not know how they all “fit together”  If Biomarkers are used as “surrogates” for response, then they need to be TRUE surrogates.  “Correlative” outcome is not good enough

3 “True” Surrogate Marker  Defining Characteristic: a marker must predict clinical outcome, in addition to predicting the effect of treatment on clinical outcome  Operational Definition establish an association between marker & clinical outcome establish an association between marker, treatment & clinical outcome, in which marker mediates relationship between clinical outcome and treatment

4 Surrogate Markers marker Clinical outcome treatment Clinical outcome 1) establish an association between marker & clinical outcome. 2) establish an association between marker, treatment & clinical outcome, in which marker completely mediates relationship between clinical outcome and treatment. marker

5 NOT Surrogate Markers marker treatment Clinical outcome treatment marker Clinical outcome

6 Alternative Approach: Bayesian Networks  Bayesian networks are complex diagrams that organize data They map out cause-and-effect relationships among key variables They encode them with numbers that represent the extent to which one variable is likely to affect another.  Use “network inference algorithms” to predict causal models of molecular networks from correlational data.  These systems can automatically generate optimal predictions or decisions even when key pieces of information are missing.  How to do this? HYPOTHESIZE BIOLOGICAL MODEL Collect data on hypothesized markers in the pathway/biologic model. Collect data serially, over a time course that fits with biologic model.

7 Example of Bayesian Network Yu, J., Smith, V., Wang, P., Hartemink, A., & Jarvis, E. (2002) “Using Bayesian Network“Using Bayesian Network Inference Algorithms to Recover Molecular Genetic Regulatory Networks.” Inference Algorithms to Recover Molecular Genetic Regulatory Networks.” International Conference on Systems Biology 2002 (ICSB02), December 2002.

8 Ongoing Optimization of Assays  Ideally, assays are “perfect” before clinical trial opens  In reality, many of our assays are still pretty rough  Can incorporate assay “sub-studies” within clinical trial  RELIABILITY How reproducible are the results?  Two samples taken from the same patient on the same day  One sample analyzed twice using the same method? Subjectivity? Inter-rater and Intra-rater agreement In what ways can ‘error’ come into the procedure? Provides understanding of measurement error in practice Benefit: Quantification of the ‘believability’ of the results Drawback: what will reviewers think?


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