Predictive Big Data Analytics using the UK Biobank Data

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作者
Yiwang Zhou
Lu Zhao
Nina Zhou
Yi Zhao
Simeone Marino
Tuo Wang
Hanbo Sun
Arthur W Toga
Ivo D Dinov
机构
[1] University of Michigan,Statistics Online Computational Resource (SOCR), Department of Health Behavior and Biological Sciences
[2] University of Southern California,Laboratory of Neuro Imaging, USC Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of USC
[3] University of Michigan,Department of Computational Medicine and Bioinformatics
[4] University of Michigan,Michigan Institute for Data Science
[5] University of Michigan,Department of Biostatistics
[6] University of Michigan,Department of Statistics
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The UK Biobank is a rich national health resource that provides enormous opportunities for international researchers to examine, model, and analyze census-like multisource healthcare data. The archive presents several challenges related to aggregation and harmonization of complex data elements, feature heterogeneity and salience, and health analytics. Using 7,614 imaging, clinical, and phenotypic features of 9,914 subjects we performed deep computed phenotyping using unsupervised clustering and derived two distinct sub-cohorts. Using parametric and nonparametric tests, we determined the top 20 most salient features contributing to the cluster separation. Our approach generated decision rules to predict the presence and progression of depression or other mental illnesses by jointly representing and modeling the significant clinical and demographic variables along with the derived salient neuroimaging features. We reported consistency and reliability measures of the derived computed phenotypes and the top salient imaging biomarkers that contributed to the unsupervised clustering. This clinical decision support system identified and utilized holistically the most critical biomarkers for predicting mental health, e.g., depression. External validation of this technique on different populations may lead to reducing healthcare expenses and improving the processes of diagnosis, forecasting, and tracking of normal and pathological aging.
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