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Wednesday, June 29 • 10:30am - 10:48am
Predicting individual treatment effects

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Treatments for complicated diseases often help some patients but not all and predicting the treatment effect of new patients is important in order to make sure every patient gets the best possible treatment. We propose model-based random forests as a method to detect similarities between patients with respect to their treatment effect and on this basis compute personalized models for new patients to obtain their individual treatment effect. The whole procedure focuses on a base model which usually contains the treatment indicator as a single covariate and takes the survival time or a health or treatment success measurement as primary outcome. This base model is used to grow the model-based trees within the forest as well as to compute the personalized models, where the similarity measurements enter as weights. We show how personalized models can be set up using the cforest() and predict.cforest() functions from the "partykit" package in combination with regression models such as glm() ("stats") or survreg() ("survival"). We apply the methods to patients suffering from Amyotrophic Lateral Sclerosis (ALS). The data are publicly available from https://nctu.partners.org/ProACT and data preprocessing can be done with the R package "TH.data". The treatment of interest is the drug Riluzole which is the only approved drug against ALS but merely shows minor benefit for patients. The personalized models suggest that some patients benefit more from the drug than others.

Moderators
avatar for Susan Holmes

Susan Holmes

Professor, Statistics, Stanford
I like teaching nonparametric multivariate analyses to biologists. | Reproducible research is really important to me and I make all my work available online, mostly as Rmd files. I still like to code, use Github and shiny as well as Bioconductor. I am trying to finish a book for biologists that includes code and a lot of fancy visualizations of `uncertainty'.

Speakers
avatar for Heidi  Seibold

Heidi Seibold

PhD student, University of Zurich


Wednesday June 29, 2016 10:30am - 10:48am
Lane & Lyons & Lodato 326 Galvez Street Stanford, CA 94305-6105

Attendees (72)