Association of Multiorgan Computed Tomographic Phenomap With Adverse Cardiovascular Health Outcomes
Article 2017 en
Authors
RS
Ravi V. Shah
AY
Ashish Yeri
VM
Venkatesh L. Murthy
Abstract
1 min read
This proof-of-concept analysis demonstrates that unsupervised machine learning, in an asymptomatic community cohort, identifies an unfavorable multiorgan phenotype associated with adverse health outcomes, especially in elderly American adults. Future investigations in larger populations are required not only to validate the present results, but also to harness clinical, biochemical, imaging, and genetic markers to increase our understanding of healthy cardiovascular aging.
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