Development and external validation of a machine learning-based model to classify uric acid stones in patients with kidney stones of Hounsfield units < 800

被引:0
|
作者
Chew, Ben H. [1 ]
Wong, Victor K. F. [1 ]
Halawani, Abdulghafour [2 ]
Lee, Sujin [3 ]
Baek, Sangyeop [3 ]
Kang, Hoyong [3 ]
Koo, Kyo Chul [4 ]
机构
[1] Univ British Columbia, Stone Ctr Vancouver Gen Hosp, Dept Urol Sci, Stone Ctr, Vancouver, BC, Canada
[2] King Abdulaziz Univ, Dept Urol, Jeddah, Saudi Arabia
[3] Infinyx, AI Res team, Daegu, South Korea
[4] Yonsei Univ, Coll Med, Dept Urol, 211 Eonju Ro, Seoul 06273, South Korea
关键词
Decision support techniques; Machine learning; Urolithiasis; Validation; PREDICTION; GUIDELINES;
D O I
10.1007/s00240-023-01490-y
中图分类号
R5 [内科学]; R69 [泌尿科学(泌尿生殖系疾病)];
学科分类号
1002 ; 100201 ;
摘要
The correct diagnosis of uric acid (UA) stones has important clinical implications since patients with a high risk of perioperative morbidity may be spared surgical intervention and be offered alkalization therapy. We developed and validated a machine learning (ML)-based model to identify stones on computed tomography (CT) images and simultaneously classify UA stones from non-UA stones. An international, multicenter study was performed on 202 patients who received percutaneous nephrolithotomy for kidney stones with HU < 800. Data from 156 (77.2%) patients were used for model development, while data from 46 (22.8%) patients from a multinational institution were used for external validation. A total of 21,074 kidney and stone contour-annotated CT images were trained with the ResNet-18 Mask R-convolutional neural network algorithm. Finally, this model was concatenated with demographic and clinical data as a fully connected layer for stone classification. Our model was 100% sensitive in detecting kidney stones in each patient, and the delineation of kidney and stone contours was precise within clinically acceptable ranges. The development model provided an accuracy of 99.9%, with 100.0% sensitivity and 98.9% specificity, in distinguishing UA from non-UA stones. On external validation, the model performed with an accuracy of 97.1%, with 89.4% sensitivity and 98.6% specificity. SHAP plots revealed stone density, diabetes mellitus, and urinary pH as the most important features for classification. Our ML-based model accurately identified and delineated kidney stones and classified UA stones from non-UA stones with the highest predictive accuracy reported to date. Our model can be reliably used to select candidates for an earlier-directed alkalization therapy.
引用
收藏
页数:8
相关论文
共 50 条
  • [1] Development and external validation of a machine learning-based model to classify uric acid stones in patients with kidney stones of Hounsfield units < 800
    Ben H. Chew
    Victor K. F. Wong
    Abdulghafour Halawani
    Sujin Lee
    Sangyeop Baek
    Hoyong Kang
    Kyo Chul Koo
    Urolithiasis, 51
  • [2] Machine learning-based decision support system to distinguish uric acid stones in patients with kidney stones of grey zone Hounsfield units: International multicenter development and external validation study
    Koo, K. C.
    Wong, V. Kf.
    Halawani, A. H.
    Lee, S.
    Baek, S.
    Kang, H.
    Chew, B. H.
    EUROPEAN UROLOGY, 2023, 83 : S514 - S515
  • [3] MACHINE LEARNING-BASED DECISION SUPPORT SYSTEM TO DISTINGUISH URIC ACID STONES IN PATIENTS WITH KIDNEY STONES OF 'GREY ZONE' HOUNSFIELD UNITS: INTERNATIONAL MULTICENTER DEVELOPMENT AND EXTERNAL VALIDATION STUDY
    Koo, Kyochul
    Wong, Victor K. F.
    Halawani, Abdulghafour
    Lee, Sujin
    Baek, Sangyeop
    Kang, Hoyong
    Chew, Ben H.
    JOURNAL OF UROLOGY, 2023, 209 : E204 - E204
  • [4] Predicting the risk of chronic kidney disease based on uric acid concentration in stones using biosensors integrated with a deep learning-based ANN system
    Chang, Yaw-Jen
    Lin, Chu-Hao
    Chien, You-Chiuan
    TALANTA, 2025, 283
  • [5] Metabolic Syndrome Predicts Uric Acid Stones in the Upper Urinary Tract: Development and Validation of a Nomogram Model
    Shen, Xinyu
    Pan, Qianqing
    Huang, Yuhua
    You, Jianan
    Chen, Yunyi
    Ding, Xiang
    ARCHIVOS ESPANOLES DE UROLOGIA, 2023, 76 (04): : 255 - 263
  • [6] DEVELOPMENT AND VALIDATION OF A MACHINE LEARNING-BASED VIRTUAL BIOPSY SYSTEM IN KIDNEY TRANSPLANT PATIENTS
    Yoo, Daniel
    Divard, Gillian
    Raynaud, Marc
    Naesens, Maarten
    Kamar, Nassim
    Bouquegneau, Antoine
    Oppenheimer, Federico
    De Sousa, Erika
    Kuypers, Dirk
    Durrbach, Antoine
    Micas, Daniel Seron
    Rabant, Marion
    Van Huyen, Jean-Paul Duong
    Bestard, Oriol
    Basic-Jukic, Nikolina
    Juric, Ivana
    Legendre, Christophe
    Lefaucheur, Carmen
    Aubert, Olivier
    Loupy, Alexandre
    NEPHROLOGY DIALYSIS TRANSPLANTATION, 2022, 37 : I873 - I874
  • [7] Development and validation of machine learning-based prediction model for outcome of cardiac arrest in intensive care units
    Ni, Peifeng
    Zhang, Sheng
    Zhang, Gensheng
    Zhang, Weidong
    Zhang, Hongwei
    Zhu, Ying
    Hu, Wei
    Diao, Mengyuan
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [8] Major Adverse Kidney Events in Hospitalized Older Patients With Acute Kidney Injury: Machine Learning-Based Model Development and Validation Study
    Luo, Xiao-Qin
    Zhang, Ning-Ya
    Deng, Ying-Hao
    Wang, Hong-Shen
    Kang, Yi-Xin
    Duan, Shao-Bin
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2025, 27
  • [9] Derivation and External Validation of Machine Learning-Based Model for Detection of Pancreatic Cancer
    Chen, Wansu
    Zhou, Yichen
    Xie, Fagen
    Butler, Rebecca K.
    Jeon, Christie Y.
    Luong, Tiffany Q.
    Zhou, Botao
    Lin, Yu-Chen
    Lustigova, Eva
    Pisegna, Joseph R.
    Kim, Sungjin
    Wu, Bechien U.
    AMERICAN JOURNAL OF GASTROENTEROLOGY, 2023, 118 (01): : 157 - 167
  • [10] Development and Validation of a Machine Learning-Based Prognostic Model for Atypical Meningioma
    Kim, D.
    Kim, Y.
    Sung, W.
    Kim, I. A.
    Cho, J.
    Lee, J. H.
    Grassberger, C.
    Byun, H. K.
    Chang, W. I.
    Ren, L.
    Gong, Y.
    Wee, C. W.
    Hua, L.
    Yoon, H. I.
    MEDICAL PHYSICS, 2024, 51 (10) : 7968 - 7968