Kavita Gupta, Anna Ricapito, Dara Lundon, Raymond Khargi, Chris Connors, Alan J Yaghoubian, Blair Gallante, William M Atallah, Mantu Gupta
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Demographic, clinical, and radiographical data were obtained and fed into machine learning (ML) platforms. SSP was defined as passage of stone without intervention. Calculators were derived from data using multivariate logistic regression. Discrimination, calibration, and clinical utility/net benefit of the developed models were assessed in the validation cohort. Receiver operating characteristic curves were constructed to measure their discriminative ability. <b><i>Results:</i></b> Fifty-one percent of 131 \"training\" patients spontaneously passed their stones. Passed stones were significantly closer to the bladder (8.6 <i>vs</i> 11.8 cm, p = 0.01) and smaller in length, width, and height. Two ML calculators were developed, one supervised machine learning (SML) and the other unsupervised machine learning (USML), and compared to an existing tool Multi-centre Cohort Study Evaluating the role of Inflammatory Markers In Patients Presenting with Acute Ureteric Colic (MIMIC). The SML calculator included maximum stone width (MSW), ureteral diameter above the stone (UDA), and distance from ureterovesical junction to bottom of stone and had an area under the curve (AUC) of 0.737 upon external validation of 58 \"test\" patients. Parameters selected by USML included MSW, UDA, and use of an anticholinergic, and it had an AUC of 0.706. The MIMIC calculator's AUC was 0.588 (0.489-0.686). <b><i>Conclusion:</i></b> We used AI to develop calculators that outperformed an existing tool and can help providers and patients make a better-informed decision for the treatment of ureteral stones.</p>","PeriodicalId":15723,"journal":{"name":"Journal of endourology","volume":" ","pages":"738-747"},"PeriodicalIF":2.8000,"publicationDate":"2025-07-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Harnessing Artificial Intelligence to Predict Spontaneous Stone Passage: Development and Testing of a Machine Learning-Based Calculator.\",\"authors\":\"Kavita Gupta, Anna Ricapito, Dara Lundon, Raymond Khargi, Chris Connors, Alan J Yaghoubian, Blair Gallante, William M Atallah, Mantu Gupta\",\"doi\":\"10.1089/end.2024.0755\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><b><i>Objective:</i></b> We sought to use artificial intelligence (AI) to develop and test calculators to predict spontaneous stone passage (SSP) using radiographical and clinical data. <b><i>Methods:</i></b> Consecutive patients with solitary ureteral stones ≤10 mm on CT were prospectively enrolled and managed according to American Urological Association guidelines. The first 70% of patients were placed in the \\\"training group\\\" and used to develop the calculators. The latter 30% were enrolled in the \\\"testing group\\\" to externally validate the calculators. Exclusion criteria included contraindication to trial of SSP, ureteral stent, and anatomical anomaly. Demographic, clinical, and radiographical data were obtained and fed into machine learning (ML) platforms. SSP was defined as passage of stone without intervention. Calculators were derived from data using multivariate logistic regression. Discrimination, calibration, and clinical utility/net benefit of the developed models were assessed in the validation cohort. Receiver operating characteristic curves were constructed to measure their discriminative ability. <b><i>Results:</i></b> Fifty-one percent of 131 \\\"training\\\" patients spontaneously passed their stones. 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引用次数: 0
摘要
目的:我们试图利用人工智能(AI)开发和测试计算器,根据x线摄影和临床数据预测自发性结石通道(SSP)。方法:前瞻性纳入连续的CT显示输尿管结石≤10 mm的患者,并按照美国泌尿外科协会指南进行治疗。前70%的患者被置于“训练组”,用于开发计算器。后30%被纳入“测试组”,对计算器进行外部验证。排除标准包括SSP试验禁忌症、输尿管支架、解剖异常。获得人口统计学、临床和放射学数据并将其输入机器学习(ML)平台。SSP定义为未经干预的结石通过。计算器是从使用多元逻辑回归的数据中得出的。在验证队列中评估了已开发模型的鉴别、校准和临床效用/净效益。构建被试工作特征曲线来衡量他们的鉴别能力。结果:131名“训练”患者中有51%自发排出结石。排出的结石明显更靠近膀胱(8.6 vs 11.8 cm, p = 0.01),且长度、宽度和高度都更小。开发了两个ML计算器,一个是监督机器学习(SML),另一个是无监督机器学习(USML),并与现有的多中心队列研究(多中心队列研究)进行比较,评估炎症标志物在急性输尿管绞痛患者中的作用(MIMIC)。SML计算器包括最大结石宽度(MSW)、结石上方输尿管直径(UDA)、输尿管膀胱连接处到结石底部的距离,经58例“试验”患者的外部验证,曲线下面积(AUC)为0.737。USML选择的参数包括MSW、UDA和抗胆碱能药物的使用,其AUC为0.706。MIMIC计算器的AUC为0.588(0.489-0.686)。结论:我们使用人工智能开发了计算器,其性能优于现有工具,可以帮助提供者和患者做出更明智的输尿管结石治疗决策。
Harnessing Artificial Intelligence to Predict Spontaneous Stone Passage: Development and Testing of a Machine Learning-Based Calculator.
Objective: We sought to use artificial intelligence (AI) to develop and test calculators to predict spontaneous stone passage (SSP) using radiographical and clinical data. Methods: Consecutive patients with solitary ureteral stones ≤10 mm on CT were prospectively enrolled and managed according to American Urological Association guidelines. The first 70% of patients were placed in the "training group" and used to develop the calculators. The latter 30% were enrolled in the "testing group" to externally validate the calculators. Exclusion criteria included contraindication to trial of SSP, ureteral stent, and anatomical anomaly. Demographic, clinical, and radiographical data were obtained and fed into machine learning (ML) platforms. SSP was defined as passage of stone without intervention. Calculators were derived from data using multivariate logistic regression. Discrimination, calibration, and clinical utility/net benefit of the developed models were assessed in the validation cohort. Receiver operating characteristic curves were constructed to measure their discriminative ability. Results: Fifty-one percent of 131 "training" patients spontaneously passed their stones. Passed stones were significantly closer to the bladder (8.6 vs 11.8 cm, p = 0.01) and smaller in length, width, and height. Two ML calculators were developed, one supervised machine learning (SML) and the other unsupervised machine learning (USML), and compared to an existing tool Multi-centre Cohort Study Evaluating the role of Inflammatory Markers In Patients Presenting with Acute Ureteric Colic (MIMIC). The SML calculator included maximum stone width (MSW), ureteral diameter above the stone (UDA), and distance from ureterovesical junction to bottom of stone and had an area under the curve (AUC) of 0.737 upon external validation of 58 "test" patients. Parameters selected by USML included MSW, UDA, and use of an anticholinergic, and it had an AUC of 0.706. The MIMIC calculator's AUC was 0.588 (0.489-0.686). Conclusion: We used AI to develop calculators that outperformed an existing tool and can help providers and patients make a better-informed decision for the treatment of ureteral stones.
期刊介绍:
Journal of Endourology, JE Case Reports, and Videourology are the leading peer-reviewed journal, case reports publication, and innovative videojournal companion covering all aspects of minimally invasive urology research, applications, and clinical outcomes.
The leading journal of minimally invasive urology for over 30 years, Journal of Endourology is the essential publication for practicing surgeons who want to keep up with the latest surgical technologies in endoscopic, laparoscopic, robotic, and image-guided procedures as they apply to benign and malignant diseases of the genitourinary tract. This flagship journal includes the companion videojournal Videourology™ with every subscription. While Journal of Endourology remains focused on publishing rigorously peer reviewed articles, Videourology accepts original videos containing material that has not been reported elsewhere, except in the form of an abstract or a conference presentation.
Journal of Endourology coverage includes:
The latest laparoscopic, robotic, endoscopic, and image-guided techniques for treating both benign and malignant conditions
Pioneering research articles
Controversial cases in endourology
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Endourology survey section of endourology relevant manuscripts published in other journals.