A Machine Learning Predictive Model for Ureteroscopy Lasertripsy Outcomes in a Pediatric Population-Results from a Large Endourology Tertiary Center

被引:1
作者
Nedbal, Carlotta [1 ,2 ]
Adithya, Sairam [3 ]
Gite, Shilpa [3 ]
Naik, Nithesh [4 ]
Griffin, Stephen [1 ]
Somani, Bhaskar K. [1 ]
机构
[1] Univ Hosp Southampton NHS Fdn Trust, Southampton, England
[2] Polytech Univ Le Marche, Ancona, Italy
[3] Symbiosis Inst Technol, Pune, India
[4] Manipal Inst Technol, Dept Mech & Ind Engn, Manipal, India
关键词
artificial intelligence; pediatric; ureteroscopy; kidney calculi; machine learning; STENT PLACEMENT;
D O I
10.1089/end.2024.0120
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
Introduction: We aimed to develop machine learning (ML) algorithms for the automated prediction of postoperative ureteroscopy outcomes for pediatric kidney stones based on preoperative characteristics. Materials and Methods: Data from pediatric patients who underwent ureteroscopy for stone treatment by a single experienced surgeon, between 2010 and 2023 in Southampton General Hospital, were retrospectively collected. Fifteen ML classification algorithms were used to investigate correlations between preoperative characteristics and postoperative outcomes: primary stone-free status (SFS, defined as stone fragments <2 mm at the end of the procedure confirmed endoscopically and no evidence of stone fragments >2 mm at Xray kidney-ureters-bladder (XR KUB) or ultrasound kidney-ureters-bladder (US KUB) at 3 months follow-up) and complications. For the task of complication and stone status, an ensemble model was made out of Bagging classifier, Extra Trees classifier, and linear discriminant analysis. Also, a multitask neural network was constructed for the simultaneous prediction of all postoperative characteristics. Finally, explainable artificial intelligence techniques were used to explain the prediction made by the best models. Results: The ensemble model produced the highest accuracy (90%) in predicting SFS, finding correlation with overall stone size (-0.205), presence of multiple stones (-0.127), and preoperative stenting (-0.102). Complications were predicted by Synthetic Minority Oversampling Technique (SMOTE) oversampled dataset (93.3% accuracy) with relation to preoperative positive urine culture (-0.060) and SFS (0.003). Training ML for the multitask model, accuracies of 83.3% and 80% were respectively reached. Conclusion: ML has a great potential of assisting health care research, with possibilities to investigate dataset at a higher level. With the aid of this intelligent tool, urologists can implement their practice and develop new strategies for outcome prediction and patient counseling and informed shared decision-making. Our model reached an excellent accuracy in predicting SFS and complications in the pediatric population, leading the way to the validation of patient-specific predictive tools.
引用
收藏
页码:1044 / 1055
页数:12
相关论文
共 26 条
[1]  
Aminsharifi A, 2020, J ENDOUROL, V34, P692, DOI 10.1089/end.2019.0475
[2]   Preoperative JJ stent placement in ureteric and renal stone treatment: results from the Clinical Research Office of Endourological Society (CROES) ureteroscopy (URS) Global Study [J].
Assimos, Dean ;
Crisci, Alfonso ;
Culkin, Daniel ;
Xue, Wei ;
Roelofs, Anita ;
Duvdevani, Mordechai ;
Desai, Mahesh ;
de la Rosette, Jean .
BJU INTERNATIONAL, 2016, 117 (04) :648-654
[3]   Machine Learning Algorithms for Predicting Surgical Outcomes after Colorectal Surgery: A Systematic Review [J].
Bektas, Mustafa ;
Tuynman, Jurriaan B. ;
Pereira, Jaime Costa ;
Burchell, George L. ;
van der Peet, Donald L. .
WORLD JOURNAL OF SURGERY, 2022, 46 (12) :3100-3110
[4]   Risk Factors for Urosepsis After Ureteroscopy for Stone Disease: A Systematic Review with Meta-Analysis [J].
Bhojani, Naeem ;
Miller, Larry E. ;
Bhattacharyya, Samir ;
Cutone, Ben ;
Chew, Ben H. .
JOURNAL OF ENDOUROLOGY, 2021, 35 (07) :991-1000
[5]   Early Detection of Ureteropelvic Junction Obstruction Using Signal Analysis and Machine Learning: A Dynamic Solution to a Dynamic Problem [J].
Blum, Emily S. ;
Porras, Antonio R. ;
Biggs, Elijah ;
Tabrizi, Pooneh R. ;
Sussman, Rachael D. ;
Sprague, Bruce M. ;
Shalaby-Rana, Eglal ;
Majd, Massoud ;
Pohl, Hans G. ;
Linguraru, Marius George .
JOURNAL OF UROLOGY, 2018, 199 (03) :847-852
[6]   Predictors of Urinary Infections and Urosepsis After Ureteroscopy for Stone Disease: a Systematic Review from EAU Section of Urolithiasis (EULIS) [J].
Chugh, Shreya ;
Pietropaolo, Amelia ;
Montanari, Emanuele ;
Sarica, Kemal ;
Somani, Bhaskar K. .
CURRENT UROLOGY REPORTS, 2020, 21 (04)
[7]   Stent Omission in Pre-stented Patients Undergoing Ureteroscopy Decreases Unplanned Health Care Utilization [J].
DiBianco, John Michael ;
Daignault-Newton, Stephanie ;
Dupati, Ajith ;
Hiller, Spencer ;
Kachroo, Naveen ;
Seifman, Brian ;
Wenzler, David ;
Dauw, Casey A. ;
Ghani, Khurshid R. .
UROLOGY PRACTICE, 2023, 10 (02) :163-169
[8]   Machine learning model for early prediction of acute kidney injury (AKI) in pediatric critical care [J].
Dong, Junzi ;
Feng, Ting ;
Thapa-Chhetry, Binod ;
Cho, Byung Gu ;
Shum, Tunu ;
Inwald, David P. ;
Newth, Christopher J. L. ;
Vaidya, Vinay U. .
CRITICAL CARE, 2021, 25 (01)
[9]   Machine Learning and Surgical Outcomes Prediction: A Systematic Review [J].
Elfanagely, Omar ;
Toyoda, Yoshilzo ;
Othman, Sammy ;
Mellia, Joseph A. ;
Basta, Marten ;
Liu, Tony ;
Kording, Konrad ;
Ungar, Lyle ;
Fischer, John P. .
JOURNAL OF SURGICAL RESEARCH, 2021, 264 :346-361
[10]   Best Practice in Interventional Management of Urolithiasis: An Update from the European Association of Urology Guidelines Panel for Urolithiasis 2022 [J].
Geraghty, Robert M. ;
Davis, Niall F. ;
Tzelves, Lazaros ;
Lombardo, Riccardo ;
Yuan, Cathy ;
Thomas, Kay ;
Petrik, Ales ;
Neisius, Andreas ;
Tuerk, Christian ;
Gambaro, Giovanni ;
Skolarikos, Andreas ;
Somani, Bhaskar K. .
EUROPEAN UROLOGY FOCUS, 2023, 9 (01) :199-208