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Activity Number: 208 - Personalized and Precision Medicine
Type: Contributed
Date/Time: Tuesday, August 10, 2021 : 1:30 PM to 3:20 PM
Sponsor: Biometrics Section
Abstract #317829
Title: Synergistic Self-Learning Approach to Establishing Personal Nutrition Intervention Schemes from Multiple Benefit Outcomes in a Calcium Supplementation Trial
Author(s): Yiwang Zhou* and Peter X.K. Song
Companies: Department of Biostatistics, University of Michigan and University of Michigan
Keywords: Dietary supplement; DOHaD hypothesis; O-learning; Precision nutrition; Support vector machine
Abstract:

Precision nutrition is an emerging research field in nutritional sciences. Deriving a personal nutrition intervention scheme (PNIS) based on effects of treatment on health is a difficult problem in precision nutrition, where multiple benefit outcomes are often available. Two major challenges arise in the development of PNIS with multiple clinical outcomes, including heterogeneous multidimensional outcomes and complex missing data patterns. This paper is motivated by a clinical trial that aims to assess the effect of calcium supplementation for pregnant women on reducing infant's in utero exposure to lead. We propose to integrate different types of blood lead concentration measurements of varying clinical relevance and sample sizes in the training of PNIS. We develop an extended support vector machine (SVM), named Synergistic Self-learning (SS-learning), that allows us to synergize heterogeneous training data sources in a weighted self-learning paradigm. We establish the algorithmic convergence of the proposed SS-learning and illustrate the performance of this methodology through both simulation studies and real data analysis of the motivating calcium supplementation clinical trial.


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

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