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Data-driven causal model discovery and personalized prediction in Alzheimer's disease. | LitMetric

Data-driven causal model discovery and personalized prediction in Alzheimer's disease.

NPJ Digit Med

Department of Mathematics, Penn State University, University Park, 16802, PA, USA.

Published: September 2022

AI Article Synopsis

  • The rapid increase in biomarker data from Alzheimer's disease clinical trials has led to the creation of various mathematical models to track how these biomarkers change over time.
  • Different models range from empiric to causal, with the latter grounded in hypotheses about the complicated mechanisms of Alzheimer's.
  • This paper introduces a new data-driven method that builds and fine-tunes causal models for Alzheimer's biomarkers, allowing for personalized predictions of cognitive decline by analyzing a large dataset from the Alzheimer's Disease Neuroimaging Initiative.

Article Abstract

With the explosive growth of biomarker data in Alzheimer's disease (AD) clinical trials, numerous mathematical models have been developed to characterize disease-relevant biomarker trajectories over time. While some of these models are purely empiric, others are causal, built upon various hypotheses of AD pathophysiology, a complex and incompletely understood area of research. One of the most challenging problems in computational causal modeling is using a purely data-driven approach to derive the model's parameters and the mathematical model itself, without any prior hypothesis bias. In this paper, we develop an innovative data-driven modeling approach to build and parameterize a causal model to characterize the trajectories of AD biomarkers. This approach integrates causal model learning, population parameterization, parameter sensitivity analysis, and personalized prediction. By applying this integrated approach to a large multicenter database of AD biomarkers, the Alzheimer's Disease Neuroimaging Initiative, several causal models for different AD stages are revealed. In addition, personalized models for each subject are calibrated and provide accurate predictions of future cognitive status.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9458727PMC
http://dx.doi.org/10.1038/s41746-022-00632-7DOI Listing

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