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Using Clinical Trial Data to Construct Policies for Guiding Clinical Decision Making

Using Clinical Trial Data to Construct Policies for Guiding Clinical Decision Making. S. Murphy & J. Pineau American Control Conference Special Session June, 2009. Outline. Long Term Goal: Improving Clinical Decision Making Using Data. Sequential Clinical Decision Making Clinical Trials

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Using Clinical Trial Data to Construct Policies for Guiding Clinical Decision Making

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  1. Using Clinical Trial Data to Construct Policies for Guiding Clinical Decision Making S. Murphy & J. Pineau American Control Conference Special Session June, 2009

  2. Outline Long Term Goal: Improving Clinical Decision Making Using Data • Sequential Clinical Decision Making • Clinical Trials • Challenges • Incomplete, primitive, mechanistic models • Measures of Confidence • Illustration

  3. Critical Decisions • Which treatments should be offered first? • How long should we wait for these treatments to work? • How long should we wait before offering a transition to a maintenance stage? • Which treatments should be offered next? • All of these questions relate to the formulation of a policy.

  4. Examples of Clinical Trials • Sequenced RBT: Goal is to improve neonatal outcomes • STAR*D: Goal is to achieve depression remission.

  5. Jones’ Study for Drug-Addicted Pregnant Women rRBT 2 wks Response Randomassignment: tRBT tRBT tRBT Randomassignment: Nonresponse eRBT Randomassignment: aRBT 2 wks Response Randomassignment: rRBT rRBT Randomassignment: tRBT Nonresponse rRBT

  6. STAR*D

  7. Challenges • Incomplete Mechanistic Models • non-causal “associations” in data occur due to the unknown causes of the observations • Small, Expensive, Data Sets with High Noise to Signal Ratio • Measures of confidence are essential

  8. Conceptual Structure in the Behavioral Sciences (clinical trial data)

  9. Unknown, Unobserved Causes(Incomplete Mechanistic Models)

  10. Unknown, Unobserved Causes(Incomplete Mechanistic Models) • The problem: Even when treatments are randomized, non-causal associations occur in the data. • Solutions: • Recognize that parts of the transition probabilities (“system dynamics”) can not be informed by domain expertise as these parts reflect non-causal associations • Or use methods for constructing policies that “average” over the non-causal associations between action and cost or reward.

  11. Measures of Confidence • We would like measures of confidence for the following: • To assess if there is sufficient evidence that a particular observation (e.g. output of a biological test) should be part of the policy. • To assess if there is sufficient evidence that a subset of the actions lead to lower cost than the remaining actions. (reward=-cost)

  12. Measures of Confidence • Traditional methods for constructing measures of confidence require differentiability (if frequentist properties are desired). • Optimal policies are constructed via non-differentiable operations (e.g. minimization/maximization).

  13. STAR*D

  14. STAR*D • Stage 1 Observation: • QIDS: low score is desirable • Preference for type of Stage 1 treatment: Switch or Augment • Stage 1Treatment Action: If Stage 1 preference is Switch then randomize switch to either Ser, Bup or Ven; if Stage 1 preference is Augment then randomize to augment with Bup or Bus. • Stage 2 Observation: • QIDS: low score is desirable • Preference for type of Stage 2 treatment: Switch or Augment • Stage 2 Treatment Action: If Stage 2 preference is Switch then randomize switch to either Mirt or Ntp: if Stage 2 preference is Augment then randomize to augment with Li or Thy • Patients exit to follow-up if remission is achieved (QIDS ≤ 5).

  15. Construct the policy to minimize cost (or maximize reward) • Cost: minimum of time to remission and 30 weeks. • Construct policy so as to minimize average cost

  16. Algorithm • Fitted Q-iteration with linear function approximation. One estimates the “state-action cost” function at stages 1,2 via a linear model. • Use voting across bootstrap samples (approximate double bootstrap) to assess confidence that a particular action is best. • (cost=-value=-benefit-to-go)

  17. Conclusion for Stage 1(level 2) • If QIDS is >13 then both Ven and Bup are best treatment actions • If QIDS is <9 then Ser is best treatment action. • If QIDS is around 10-13 then no real winner(s).

  18. Discussion • If modern control methods are to be used with clinical trial data then these methods • must accommodate the existence of unknown, unobserved variables influencing observations at multiple stages, • should provide measures of confidence and • must be combined with modern missing data methods.

  19. This seminar can be found at: http://www.stat.lsa.umich.edu/~samurphy/ seminars/ACC06.09.ppt Email me with questions or if you would like a copy! samurphy@umich.edu

  20. The Problem • Many patients dropout of the study.

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