Development of prediction models of spontaneous ureteral stone passage through machine learning: Comparison with conventional statistical analysis

Author:

Park Jee Soo,Kim Dong WookORCID,Lee Dongu,Lee Taeju,Koo Kyo Chul,Han Woong Kyu,Chung Byung Ha,Lee Kwang SukORCID

Abstract

Objectives To develop a prediction model of spontaneous ureteral stone passage (SSP) using machine learning and logistic regression and compare the performance of the two models. Indications for management of ureteral stones are unclear, and the clinician determines whether to wait for SSP or perform active treatment, especially in well-controlled patients, to avoid unwanted complications. Therefore, suggesting the possibility of SSP would help make a clinical decision regarding ureteral stones. Methods Patients diagnosed with unilateral ureteral stones at our emergency department between August 2014 and September 2018 were included and underwent non-contrast-enhanced computed tomography 4 weeks from the first stone episode. Predictors of SSP were applied to build and validate the prediction model using multilayer perceptron (MLP) with the Keras framework. Results Of 833 patients, SSP was observed in 606 (72.7%). SSP rates were 68.2% and 75.6% for stone sizes 5–10 mm and <5 mm, respectively. Stone opacity, location, and whether it was the first ureteral stone episode were significant predictors of SSP. Areas under the curve (AUCs) for receiver operating characteristic (ROC) curves for MLP, and logistic regression were 0.859 and 0.847, respectively, for stones <5 mm, and 0.881 and 0.817, respectively, for 5–10 mm stones. Conclusion SSP prediction models were developed in patients with well-controlled unilateral ureteral stones; the performance of the models was good, especially in identifying SSP for 5–10-mm ureteral stones without definite treatment guidelines. To further improve the performance of these models, future studies should focus on using machine learning techniques in image analysis.

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Cited by 7 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Surgical Artificial Intelligence;Urologic Clinics of North America;2024-02

2. Two novel deep-learning models to predict spontaneous ureteral calculi passage: Model development and validation;Current Urology;2024-01-11

3. Transforming urinary stone disease management by artificial intelligence-based methods: A comprehensive review;Asian Journal of Urology;2023-07

4. EDITORIAL COMMENT;Urology;2023-04

5. Machine Learning Based Prediction Models for Spontaneous Ureteral Stone Passage;2022 5th International Conference on Multimedia, Signal Processing and Communication Technologies (IMPACT);2022-11-26

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