Supervised Robust Profile Clustering
Briana Stephenson, Amy Herring, Andrew Olshan

TL;DR
This paper introduces Robust Profile Clustering (RPC), a dual-level clustering method that captures both shared and subgroup-specific behaviors, linking dietary patterns to health outcomes like orofacial clefts.
Contribution
The paper presents a novel dual clustering model that accounts for subtle subgroup variations and links profiles to health outcomes, improving understanding of dietary impacts.
Findings
Mothers with higher fruit and vegetable intake have lower risk of orofacial clefts.
RPC effectively identifies dietary patterns associated with health outcomes.
The model reveals nuanced subgroup differences in dietary behaviors.
Abstract
In many studies, dimension reduction methods are used to profile participant characteristics. For example, nutrition epidemiologists often use latent class models to characterize dietary patterns. One challenge with such approaches is understanding subtle variations in patterns across subpopulations. Robust Profile Clustering (RPC) provides a dual flexible clustering model, where participants may cluster at two levels: (1) globally, where participants are clustered according to behaviors shared across an overall population, and (2) locally, where individual behaviors can deviate and cluster in subpopulations. We link clusters to a health outcome using a joint model. This model is used to derive dietary patterns in the United States and evaluate case proportion of orofacial clefts. Using dietary consumption data from the 1997-2009 National Birth Defects Prevention Study, a…
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Taxonomy
TopicsCleft Lip and Palate Research · Folate and B Vitamins Research · Data-Driven Disease Surveillance
