HYDRA

Revealing heterogeneity of imaging and genetic patterns through a multiple max-margin discriminative analysis framework

Erdem Varol, Aristeidis Sotiras, Christos Davatzikos

Research output: Contribution to journalArticle

Abstract

Multivariate pattern analysis techniques have been increasingly used over the past decade to derive highly sensitive and specific biomarkers of diseases on an individual basis. The driving assumption behind the vast majority of the existing methodologies is that a single imaging pattern can distinguish between healthy and diseased populations, or between two subgroups of patients (e.g., progressors vs. non-progressors). This assumption effectively ignores the ample evidence for the heterogeneous nature of brain diseases. Neurodegenerative, neuropsychiatric and neurodevelopmental disorders are largely characterized by high clinical heterogeneity, which likely stems in part from underlying neuroanatomical heterogeneity of various pathologies. Detecting and characterizing heterogeneity may deepen our understanding of disease mechanisms and lead to patient-specific treatments. However, few approaches tackle disease subtype discovery in a principled machine learning framework. To address this challenge, we present a novel non-linear learning algorithm for simultaneous binary classification and subtype identification, termed HYDRA (Heterogeneity through Discriminative Analysis). Neuroanatomical subtypes are effectively captured by multiple linear hyperplanes, which form a convex polytope that separates two groups (e.g., healthy controls from pathologic samples); each face of this polytope effectively defines a disease subtype. We validated HYDRA on simulated and clinical data. In the latter case, we applied the proposed method independently to the imaging and genetic datasets of the Alzheimer's Disease Neuroimaging Initiative (ADNI 1) study. The imaging dataset consisted of T1-weighted volumetric magnetic resonance images of 123 AD patients and 177 controls. The genetic dataset consisted of single nucleotide polymorphism information of 103 AD patients and 139 controls. We identified 3 reproducible subtypes of atrophy in AD relative to controls: (1) diffuse and extensive atrophy, (2) precuneus and extensive temporal lobe atrophy, as well some prefrontal atrophy, (3) atrophy pattern very much confined to the hippocampus and the medial temporal lobe. The genetics dataset yielded two subtypes of AD characterized mainly by the presence/absence of the apolipoprotein E (APOE) ε4 genotype, but also involving differential presence of risk alleles of CD2AP, SPON1 and LOC39095 SNPs that were associated with differences in the respective patterns of brain atrophy, especially in the precuneus. The results demonstrate the potential of the proposed approach to map disease heterogeneity in neuroimaging and genetic studies.

Original languageEnglish (US)
JournalNeuroImage
DOIs
StateAccepted/In press - 2016
Externally publishedYes

Fingerprint

Genetic Heterogeneity
Atrophy
Parietal Lobe
Temporal Lobe
Neuroimaging
Single Nucleotide Polymorphism
Apolipoprotein E4
Brain Diseases
Neurodegenerative Diseases
Hippocampus
Alzheimer Disease
Magnetic Resonance Spectroscopy
Multivariate Analysis
Biomarkers
Alleles
Genotype
Learning
Pathology
Datasets
Brain

Keywords

  • ADNI
  • Aging
  • Alzheimer's disease
  • Clustering
  • Convex polytope
  • Genetics
  • Heterogeneity
  • Max-margin classification
  • MRI
  • Multivariate
  • Neuroimaging
  • Semi-supervised pattern analysis
  • SVM

ASJC Scopus subject areas

  • Cognitive Neuroscience
  • Neurology

Cite this

HYDRA : Revealing heterogeneity of imaging and genetic patterns through a multiple max-margin discriminative analysis framework. / Varol, Erdem; Sotiras, Aristeidis; Davatzikos, Christos.

In: NeuroImage, 2016.

Research output: Contribution to journalArticle

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