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A robust and interpretable machine learning approach using multimodal biological data to predict future pathological tau accumulation

Joseph Giorgio, William J. Jagust, Suzanne L. Baker, Susan Landau, Peter Tiňo, Zoe Kourtzi, Alzheimer’s Disease Neuroimaging Initiative

2022Nature Communications39 citationsDOIOpen Access PDF

Abstract

The early stages of Alzheimer's disease (AD) involve interactions between multiple pathophysiological processes. Although these processes are well studied, we still lack robust tools to predict individualised trajectories of disease progression. Here, we employ a robust and interpretable machine learning approach to combine multimodal biological data and predict future pathological tau accumulation. In particular, we use machine learning to quantify interactions between key pathological markers (β-amyloid, medial temporal lobe atrophy, tau and APOE 4) at mildly impaired and asymptomatic stages of AD. Using baseline non-tau markers we derive a prognostic index that: (a) stratifies patients based on future pathological tau accumulation, (b) predicts individualised regional future rate of tau accumulation, and (c) translates predictions from deep phenotyping patient cohorts to cognitively normal individuals. Our results propose a robust approach for fine scale stratification and prognostication with translation impact for clinical trial design targeting the earliest stages of AD.

Topics & Concepts

PathologicalArtificial intelligenceMachine learningAsymptomaticAlzheimer's Disease Neuroimaging InitiativeComputer scienceDiseaseMedicineNeuroscienceAlzheimer's diseasePsychologyPathologyDementia and Cognitive Impairment ResearchAlzheimer's disease research and treatmentsNeuroinflammation and Neurodegeneration Mechanisms
A robust and interpretable machine learning approach using multimodal biological data to predict future pathological tau accumulation | Litcius