Capturing biomarkers associated with Alzheimer disease subtypes using data distribution characteristics

Kenneth Smith, Sharlee Climer

Research output: Contribution to journalArticlepeer-review

Abstract

Late-onset Alzheimer disease (AD) is a highly complex disease with multiple subtypes, as demonstrated by its disparate risk factors, pathological manifestations, and clinical traits. Discovery of biomarkers to diagnose specific AD subtypes is a key step towards understanding biological mechanisms underlying this enigmatic disease, generating candidate drug targets, and selecting participants for drug trials. Popular statistical methods for evaluating candidate biomarkers, fold change (FC) and area under the receiver operating characteristic curve (AUC), were designed for homogeneous data and we demonstrate the inherent weaknesses of these approaches when used to evaluate subtypes representing less than half of the diseased cases. We introduce a unique evaluation metric that is based on the distribution of the values, rather than the magnitude of the values, to identify analytes that are associated with a subset of the diseased cases, thereby revealing potential biomarkers for subtypes. Our approach, Bimodality Coefficient Difference (BCD), computes the difference between the degrees of bimodality for the cases and controls. We demonstrate the effectiveness of our approach with large-scale synthetic data trials containing nearly perfect subtypes. In order to reveal novel AD biomarkers for heterogeneous subtypes, we applied BCD to gene expression data for 8,650 genes for 176 AD cases and 187 controls. Our results confirm the utility of BCD for identifying subtypes of heterogeneous diseases.

Original languageEnglish
Article number1388504
JournalFrontiers in Computational Neuroscience
Volume18
DOIs
StatePublished - 2024
Externally publishedYes

Funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. This research was funded by the Alzheimer\u2019s Association (AARG-22-925002), National Institute on Aging (NIA) grants 1RF1AG053303-01 and 3RF1AG053303-01S2, and research grants from the University of Missouri \u2013 St. Louis.

FundersFunder number
University of Missouri
Alzheimer's AssociationAARG-22-925002
National Institute on Aging3RF1AG053303-01S2

    Keywords

    • Alzheimer disease
    • association studies
    • AUC
    • bimodality
    • biomarkers
    • fold change
    • precision medicine
    • subtypes

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