Use of Temporally Validated Machine Learning Models To Predict Outcomes of Percutaneous Nephrolithotomy Using Data from the British Association of Urological Surgeons Percutaneous Nephrolithotomy Audit

被引:9
作者
Geraghty, Robert M. [1 ,2 ]
Thakur, Anshul [3 ]
Howles, Sarah [4 ]
Finch, William [5 ]
Fowler, Sarah [6 ]
Rogers, Alistair [1 ]
Sriprasad, Seshadri [7 ]
Smith, Daron [8 ]
Dickinson, Andrew [9 ]
Gall, Zara [10 ]
Somani, Bhaskar K. [11 ]
机构
[1] Freeman Rd Hosp, Dept Urol, Freeman Rd, Newcastle Upon Tyne NE7 7DN, Northumberland, England
[2] Newcastle Univ, Inst Genet Med, Int Ctr Life, Newcastle Upon Tyne, Northumberland, England
[3] Univ Oxford, Inst Biomed Engn, Oxford, England
[4] Univ Oxford, Nuffield Dept Surg Sci, Oxford, England
[5] Norfolk & Norwich Univ Hosp, Dept Urol, Norwich, Norfolk, England
[6] Royal Coll Surgeons England, Comparat Audit Serv, London, England
[7] Dartford & Gravesham NHS Trust, Dept Urol, Dartford, England
[8] Univ Coll Hosp London, Inst Urol, London, England
[9] Univ Hosp Plymouth NHS Trust, Dept Urol, Plymouth, Devon, England
[10] Stockport NHS Fdn Trust, Dept Urol, Stockport, England
[11] Univ Hosp Southampton NHS Fdn Trust, Dept Urol, Southampton, England
基金
英国惠康基金;
关键词
Percutaneous nephrolithotomy; Machine learning; Outcomes; Prediction; Endourology; GUYS STONE SCORE; KIDNEY; CLASSIFICATION; SYSTEM; COHORT;
D O I
10.1016/j.euf.2024.01.011
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
Background and objective: Machine learning (ML) is a subset of artificial intelligence that uses data to build algorithms to predict specific outcomes. Few ML studies have examined percutaneous nephrolithotomy (PCNL) outcomes. Our objective was to build, streamline, temporally validate, and use ML models for prediction of PCNL outcomes (intensive care admission, postoperative infection, transfusion, adjuvant treatment, postoperative complications, visceral injury, and stone-free status at follow-up) using a comprehensive national database (British Association of Urological Surgeons PCNL). Methods: This was an ML study using data from a prospective national database. Extreme gradient boosting (XGB), deep neural network (DNN), and logistic regression (LR) models were built for each outcome of interest using complete cases only, imputed, and oversampled and imputed/oversampled data sets. All validation was performed with complete cases only. Temporal validation was performed with 2019 data only. A second round used a composite of the most important 11 variables in each model to build the final model for inclusion in the shiny application. We report statistics for prognostic accuracy. Key findings and limitations: The database contains 12 810 patients. The final variables included were age, Charlson comorbidity index, preoperative haemoglobin, Guy's stone score, stone location, size of outer sheath, preoperative midstream urine result, primary puncture site, preoperative dimercapto-succinic acid scan, stone size, and image guidance (https://endourology.shinyapps.io/PCNL_Demographics/). The areas under the receiver operating characteristic curve was >0.6 in all cases. Conclusions and clinical implications: This is the largest ML study on PCNL outcomes to date. The models are temporally valid and therefore can be implemented in clinical practice for patient-specific risk profiling. Further work will be conducted to externally validate the models. Patient summary: We applied artificial intelligence to data for patients who underwent a keyhole surgery to remove kidney stones and developed a model to predict outcomes for this procedure. Doctors could use this tool to advise patients about their risk of complications and the outcomes they can expect after this surgery. (c) 2024 The Authors. Published by Elsevier B.V. on behalf of European Association of Urology. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页码:290 / 297
页数:8
相关论文
共 40 条
[1]  
Aminsharifi A, 2020, J ENDOUROL, V34, P692, DOI 10.1089/end.2019.0475
[2]   Artificial Neural Network System to Predict the Postoperative Outcome of Percutaneous Nephrolithotomy [J].
Aminsharifi, Alireza ;
Irani, Dariush ;
Pooyesh, Shima ;
Parvin, Hamid ;
Dehghani, Sakineh ;
Yousofi, Khalilolah ;
Fazel, Ebrahim ;
Zibaie, Fatemeh .
JOURNAL OF ENDOUROLOGY, 2017, 31 (05) :461-467
[3]  
[Anonymous], R: A Language and Environment for Statistical Computing
[4]   Percutaneous Nephrolithotomy in the United Kingdom: Results of a Prospective Data Registry [J].
Armitage, James N. ;
Irving, Stuart O. ;
Burgess, Neil A. .
EUROPEAN UROLOGY, 2012, 61 (06) :1188-1193
[5]  
Arnold TB, 2017, J OPEN SOURCE SOFTW, V2, P296, DOI [10.21105/joss.00296, DOI 10.21105/JOSS.00296, 10.21105/joss.00296]
[6]   Comparison of STONE score, Guy's stone score and Clinical Research Office of the Endourological Society (CROES) score as predictive tools for percutaneous nephrolithotomy outcome: a prospective study [J].
Biswas, Krishnendu ;
Gupta, Shailendra Kumar ;
Tak, Gopal R. ;
Ganpule, Arvind P. ;
Sabnis, Ravindra B. ;
Desai, Mahesh R. .
BJU INTERNATIONAL, 2020, 126 (04) :494-501
[7]   Natural History of Post-Treatment Kidney Stone Fragments: A Systematic Review and Meta-Analysis [J].
不详 .
JOURNAL OF UROLOGY, 2021, 206 (03) :526-526
[8]   An overview of kidney stone imaging techniques [J].
Brisbane, Wayne ;
Bailey, Michael R. ;
Sorensen, Mathew D. .
NATURE REVIEWS UROLOGY, 2016, 13 (11) :654-662
[9]  
Chang Winston, 2024, CRAN
[10]   A NEW METHOD OF CLASSIFYING PROGNOSTIC CO-MORBIDITY IN LONGITUDINAL-STUDIES - DEVELOPMENT AND VALIDATION [J].
CHARLSON, ME ;
POMPEI, P ;
ALES, KL ;
MACKENZIE, CR .
JOURNAL OF CHRONIC DISEASES, 1987, 40 (05) :373-383