Scientific Reports (Oct 2024)

The Hydronephrosis Severity Index guides paediatric antenatal hydronephrosis management based on artificial intelligence applied to ultrasound images alone

  • Lauren Erdman,
  • Mandy Rickard,
  • Erik Drysdale,
  • Marta Skreta,
  • Stanley Bryan Hua,
  • Kunj Sheth,
  • Daniel Alvarez,
  • Kyla N. Velaer,
  • Michael E. Chua,
  • Joana Dos Santos,
  • Daniel Keefe,
  • Norman D. Rosenblum,
  • Megan A. Bonnett,
  • John Weaver,
  • Alice Xiang,
  • Yong Fan,
  • Bernarda Viteri,
  • Christopher S. Cooper,
  • Gregory E. Tasian,
  • Armando J. Lorenzo,
  • Anna Goldenberg

DOI
https://doi.org/10.1038/s41598-024-72271-9
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 11

Abstract

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Abstract Antenatal hydronephrosis (HN) impacts up to 5% of pregnancies and requires close, frequent follow-up monitoring to determine who may benefit from surgical intervention. To create an automated HN Severity Index (HSI) that helps guide clinical decision-making directly from renal ultrasound images. We applied a deep learning model to paediatric renal ultrasound images to predict the need for surgical intervention based on the HSI. The model was developed and studied at four large quaternary free-standing paediatric hospitals in North America. We evaluated the degree to which HSI corresponded with surgical intervention at each hospital using area under the receiver-operator curve, area under the precision-recall curve, sensitivity, and specificity. HSI predicted subsequent surgical intervention with > 90% AUROC, > 90% sensitivity, and > 70% specificity in a test set of 202 patients from the same institution. At three external institutions, HSI corresponded with AUROCs ≥ 90%, sensitivities ≥ 80%, and specificities > 50%. It is possible to automatically and reliably assess HN severity directly from a single ultrasound. The HSI stratifies low- and high-risk HN patients thus helping to triage low-risk patients while maintaining very high sensitivity to surgical cases. HN severity can be predicted from a single patient ultrasound using a novel image-based artificial intelligence system.