Online Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 493 - Section on Risk Analysis CPapers 1
Type: Contributed
Date/Time: Thursday, August 6, 2020 : 10:00 AM to 2:00 PM
Sponsor: Section on Risk Analysis
Abstract #312557
Title: Extending Models via Gradient Boosting: An Application to Mendelian Models
Author(s): Theodore Huang* and Gregory Idos and Christine Hong and Stephen Gruber and Giovanni Parmigiani and Danielle Braun
Companies: Harvard T.H. Chan School of Public Health and City of Hope and City of Hope and City of Hope and Harvard T.H. Chan School of Public Health and Harvard T.H. Chan School of Public Health
Keywords: gradient boosting; risk model; Mendelian model
Abstract:

Improving existing widely-adopted prediction models is often a more efficient and robust way towards progress than training new models from scratch. Existing models may (a) incorporate complex mechanistic knowledge, (b) leverage proprietary information and, (c) have surmounted barriers to adoption. Compared to model training, model improvement and modification receive little attention. In this work we propose a general approach to model improvement: we combine gradient boosting with any previously developed model to improve model performance while retaining important existing characteristics. To exemplify, we consider the context of Mendelian models, which estimate the probability of carrying genetic mutations that confer susceptibility to disease by using family pedigrees and health histories of family members. Via simulations we show that integration of gradient boosting with an existing Mendelian model can produce an improved model that outperforms both that model and the model built using gradient boosting alone. We illustrate the approach on genetic testing data from the USC-Stanford Cancer Genetics Hereditary Cancer Panel Testing study.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2020 program