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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Jul 18, 2025
Date Accepted: Jan 1, 2026

The final, peer-reviewed published version of this preprint can be found here:

Screening for Clinically Significant Nephrolithiasis Based on Simple Health Checkup Clinical and Urine Parameters in General Populations: Multicenter Machine Learning Study

Chen HW, Wei PS, Chen YC, Wu JY, Lin CI, Chou YH, Juan YS, Wu WJ, Kao CY, Lee JT

Screening for Clinically Significant Nephrolithiasis Based on Simple Health Checkup Clinical and Urine Parameters in General Populations: Multicenter Machine Learning Study

JMIR Med Inform 2026;14:e80764

DOI: 10.2196/80764

PMID: 41712857

PMCID: 12919908

Screening for Clinically Significant Nephrolithiasis Based on Simple Health Checkup Clinical and Urine Parameters in General Populations: Machine Learning Models and Multi-Hospital Study

  • Hao-Wei Chen; 
  • Pei-Siou Wei; 
  • Yu-Chen Chen; 
  • Jeng-Yih Wu; 
  • Chia-I Lin; 
  • Yii-Her Chou; 
  • Yung-Shun Juan; 
  • Wen-Jeng Wu; 
  • Chung-Yao Kao; 
  • Jung-Ting Lee

ABSTRACT

Background:

Nephrolithiasis affects up to 15% of the population and often remains undetected in asymptomatic individuals. Currently, no standardized or practical screening method exists. Imaging-based diagnostic tools such as ultrasound and CT are costly, operator-dependent, or involve radiation, making them unsuitable for large-scale screening.

Objective:

This study aimed to develop a low-cost, rapid screening model for clinically significant nephrolithiasis using machine learning (ML) and simple clinical parameters.

Methods:

We conducted a multi-hospital study using data from 3 hospitals in Kaohsiung, Taiwan (2012–2021). Adults without renal colic were included. ML models were trained and tested using ten routine variables: gender, age, BMI, gout, diabetes, eGFR, urine pH, red blood cells, specific gravity, and bacteriuria.

Results:

Among 6528 participants, the best-performing model achieved an AUC of 0.968 (95% CI, 0.956–0.980), sensitivity of 0.873, and specificity of 0.947. The model was developed using only Asian population data, which may limit generalizability.

Conclusions:

This ML-based model enables efficient, non-invasive, and large-scale kidney stone screening using routine health data. It can be integrated into health check-ups or telemedicine platforms to facilitate early detection and proactive management.


 Citation

Please cite as:

Chen HW, Wei PS, Chen YC, Wu JY, Lin CI, Chou YH, Juan YS, Wu WJ, Kao CY, Lee JT

Screening for Clinically Significant Nephrolithiasis Based on Simple Health Checkup Clinical and Urine Parameters in General Populations: Multicenter Machine Learning Study

JMIR Med Inform 2026;14:e80764

DOI: 10.2196/80764

PMID: 41712857

PMCID: 12919908

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