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Deep learning on electronic medical records identifies distinct subphenotypes of diabetic kidney disease driven by genetic variations in the Rho pathway.

Authors :
Paranjpe I
Wang X
Anandakrishnan N
Haydak JC
Van Vleck T
DeFronzo S
Li Z
Mendoza A
Liu R
Fu J
Forrest I
Zhou W
Lee K
O'Hagan R
Dellepiane S
Menon KM
Gulamali F
Kamat S
Gusella GL
Charney AW
Hofer I
Cho JH
Do R
Glicksberg BS
He JC
Nadkarni GN
Azeloglu EU
Source :
MedRxiv : the preprint server for health sciences [medRxiv] 2023 Sep 07. Date of Electronic Publication: 2023 Sep 07.
Publication Year :
2023

Abstract

Kidney disease affects 50% of all diabetic patients; however, prediction of disease progression has been challenging due to inherent disease heterogeneity. We use deep learning to identify novel genetic signatures prognostically associated with outcomes. Using autoencoders and unsupervised clustering of electronic health record data on 1,372 diabetic kidney disease patients, we establish two clusters with differential prevalence of end-stage kidney disease. Exome-wide associations identify a novel variant in ARHGEF18, a Rho guanine exchange factor specifically expressed in glomeruli. Overexpression of ARHGEF18 in human podocytes leads to impairments in focal adhesion architecture, cytoskeletal dynamics, cellular motility, and RhoA/Rac1 activation. Mutant GEF18 is resistant to ubiquitin mediated degradation leading to pathologically increased protein levels. Our findings uncover the first known disease-causing genetic variant that affects protein stability of a cytoskeletal regulator through impaired degradation, a potentially novel class of expression quantitative trait loci that can be therapeutically targeted.

Details

Language :
English
Database :
MEDLINE
Journal :
MedRxiv : the preprint server for health sciences
Accession number :
37732187
Full Text :
https://doi.org/10.1101/2023.09.06.23295120