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Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound.

Publication ,  Journal Article
Sloan, M; Li, H; Lescay, HA; Judge, C; Lan, L; Hajiyev, P; Giger, ML; Gundeti, MS
Published in: Investig Clin Urol
November 2023

PURPOSE: Hydronephrosis is a common pediatric urological condition, characterized by dilation of the renal collecting system. Accurate identification of the severity of hydronephrosis is crucial in clinical management, as high-grade hydronephrosis can cause significant damage to the kidney. In this pilot study, we demonstrate the feasibility of machine learning in differentiating between high and low-grade hydronephrosis in pediatric patients. MATERIALS AND METHODS: We retrospectively reviewed 592 images from 90 unique patients ages 0-8 years diagnosed with hydronephrosis at the University of Chicago's Pediatric Urology Clinic. The study included 74 high-grade hydronephrosis (145 images) and 227 low-grade hydronephrosis (447 images). Patients were excluded if they had less than 2 studies prior to surgical intervention or had structural abnormalities. We developed a radiomic-based artificial intelligence algorithm incorporating computerized texture analysis and machine learning (support-vector machine) to yield a predictor of hydronephrosis grade. RESULTS: Receiver operating characteristic analysis of the classifier output yielded an area under the curve value of 0.86 (95% CI 0.81-0.92) in the task of distinguishing between low and high-grade hydronephrosis using a five-fold cross-validation by kidney. In addition, a Mann-Kendall trend test between computer output and clinical hydronephrosis grade yielded a statistically significant upward trend (p<0.001). CONCLUSIONS: Our findings demonstrate the potential of machine learning in the differentiation between low and high-grade hydronephrosis. Further studies are warranted to validate our findings and their generalizability for use in clinical practice as a means to predict clinical outcomes and the resolution of hydronephrosis.

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Published In

Investig Clin Urol

DOI

EISSN

2466-054X

Publication Date

November 2023

Volume

64

Issue

6

Start / End Page

588 / 596

Location

Korea (South)

Related Subject Headings

  • Retrospective Studies
  • Pilot Projects
  • Machine Learning
  • Hydronephrosis
  • Humans
  • Child
  • Artificial Intelligence
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Sloan, M., Li, H., Lescay, H. A., Judge, C., Lan, L., Hajiyev, P., … Gundeti, M. S. (2023). Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound. Investig Clin Urol, 64(6), 588–596. https://doi.org/10.4111/icu.20230170
Sloan, Matthew, Hui Li, Hernan A. Lescay, Clark Judge, Li Lan, Parviz Hajiyev, Maryellen L. Giger, and Mohan S. Gundeti. “Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound.Investig Clin Urol 64, no. 6 (November 2023): 588–96. https://doi.org/10.4111/icu.20230170.
Sloan M, Li H, Lescay HA, Judge C, Lan L, Hajiyev P, et al. Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound. Investig Clin Urol. 2023 Nov;64(6):588–96.
Sloan, Matthew, et al. “Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound.Investig Clin Urol, vol. 64, no. 6, Nov. 2023, pp. 588–96. Pubmed, doi:10.4111/icu.20230170.
Sloan M, Li H, Lescay HA, Judge C, Lan L, Hajiyev P, Giger ML, Gundeti MS. Pilot study of machine learning in the task of distinguishing high and low-grade pediatric hydronephrosis on ultrasound. Investig Clin Urol. 2023 Nov;64(6):588–596.

Published In

Investig Clin Urol

DOI

EISSN

2466-054X

Publication Date

November 2023

Volume

64

Issue

6

Start / End Page

588 / 596

Location

Korea (South)

Related Subject Headings

  • Retrospective Studies
  • Pilot Projects
  • Machine Learning
  • Hydronephrosis
  • Humans
  • Child
  • Artificial Intelligence