Scientific Reports (Aug 2023)

Predicting congenital renal tract malformation genes using machine learning

  • Mitra Kabir,
  • Helen M. Stuart,
  • Filipa M. Lopes,
  • Elisavet Fotiou,
  • Bernard Keavney,
  • Andrew J. Doig,
  • Adrian S. Woolf,
  • Kathryn E. Hentges

DOI
https://doi.org/10.1038/s41598-023-38110-z
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 13

Abstract

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Abstract Congenital renal tract malformations (RTMs) are the major cause of severe kidney failure in children. Studies to date have identified defined genetic causes for only a minority of human RTMs. While some RTMs may be caused by poorly defined environmental perturbations affecting organogenesis, it is likely that numerous causative genetic variants have yet to be identified. Unfortunately, the speed of discovering further genetic causes for RTMs is limited by challenges in prioritising candidate genes harbouring sequence variants. Here, we exploited the computer-based artificial intelligence methodology of supervised machine learning to identify genes with a high probability of being involved in renal development. These genes, when mutated, are promising candidates for causing RTMs. With this methodology, the machine learning classifier determines which attributes are common to renal development genes and identifies genes possessing these attributes. Here we report the validation of an RTM gene classifier and provide predictions of the RTM association status for all protein-coding genes in the mouse genome. Overall, our predictions, whilst not definitive, can inform the prioritisation of genes when evaluating patient sequence data for genetic diagnosis. This knowledge of renal developmental genes will accelerate the processes of reaching a genetic diagnosis for patients born with RTMs.