A General Statistic Framework for Genome-based Disease Risk Prediction
L. Ma, N. Lin, C.I. Amos, M.M. Xiong

TL;DR
This paper introduces a functional linear model framework that effectively captures the complex, high-dimensional, and correlated nature of genome-based physiological and sequencing data, improving disease risk prediction accuracy.
Contribution
It proposes a novel functional linear model with a functional predictor and response, enhancing genetic association analysis for function-valued traits using GWAS and NGS data.
Findings
FLMF maintains correct type 1 error rates
FLMF shows higher power than existing methods
Identified 65 genes significantly associated with oxygen saturation
Abstract
Advances of modern sensing and sequencing technologies generate a deluge of high dimensional space-temporal physiological and next-generation sequencing (NGS) data. Physiological traits are observed either as continuous random functions, or on a dense grid and referred to as function-valued traits. Both physiological and NGS data are highly correlated data with their inherent order, spacing, and functional nature which are ignored by traditional summary-based univariate and multivariate regression methods designed for quantitative genetic analysis of scalar trait and common variants. To capture morphological and dynamic features of the data and utilize their dependent structure, we propose a functional linear model (FLM) in which a trait curve is modeled as a response function, the genetic variation in a genomic region or gene is modeled as a functional predictor, and the genetic…
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Taxonomy
TopicsGene expression and cancer classification · Genetic Mapping and Diversity in Plants and Animals · Genetic Associations and Epidemiology
