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arXiv:1702.01816 [stat.ML]AbstractReferencesReviewsResources

Prediction of Kidney Function from Biopsy Images Using Convolutional Neural Networks

David Ledbetter, Long Ho, Kevin V Lemley

Published 2017-02-06Version 1

A Convolutional Neural Network was used to predict kidney function in patients with chronic kidney disease from high-resolution digital pathology scans of their kidney biopsies. Kidney biopsies were taken from participants of the NEPTUNE study, a longitudinal cohort study whose goal is to set up infrastructure for observing the evolution of 3 forms of idiopathic nephrotic syndrome, including developing predictors for progression of kidney disease. The knowledge of future kidney function is desirable as it can identify high-risk patients and influence treatment decisions, reducing the likelihood of irreversible kidney decline.

Comments: 11 pages, 7 figures, 1 page of Appendix
Categories: stat.ML, q-bio.QM
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