开发机器学习算法,预测机器人辅助根治性前列腺切除术后尿失禁的风险。

IF 2.9 2区 医学 Q1 UROLOGY & NEPHROLOGY
Journal of endourology Pub Date : 2024-08-01 Epub Date: 2024-03-21 DOI:10.1089/end.2024.0057
Daniele Amparore, Sabrina De Cillis, Eugenio Alladio, Michele Sica, Federico Piramide, Paolo Verri, Enrico Checcucci, Alberto Piana, Alberto Quarà, Edoardo Cisero, Matteo Manfredi, Michele Di Dio, Cristian Fiori, Francesco Porpiglia
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引用次数: 0

摘要

导言:事先预测术后尿失禁对于机器人辅助根治性前列腺切除术后的强化和个性化康复至关重要。虽然存在提名图,但其回顾性的局限性凸显了人工智能(AI)的潜力。本研究旨在利用机器人辅助前列腺癌根治术(RARP)数据开发一种机器学习算法,以预测术后尿失禁情况,从而推进个性化护理。材料与方法:在这项前瞻性观察研究中,对 2022 年 4 月至 2023 年 1 月间接受机器人辅助前列腺癌根治术的局部前列腺癌患者进行了评估。术前变量包括年龄、体重指数、前列腺特异性抗原(PSA)水平、数字直肠检查(DRE)结果、格里森评分、国际泌尿病理学会分级以及尿失禁和尿失禁能力问卷调查结果。术中因素、术后结果和病理变量均被记录在案。使用前列腺癌扩展指数综合问卷评估尿失禁情况,并探索机器学习模型(XGBoost、随机森林、逻辑回归)来预测尿失禁风险。所选模型的 SHAP 值阐明了影响预测的变量。结果研究考虑了 227 名接受 RARP 的患者数据集。RARP 术后并发症主要为低级并发症,导尿管拔除后 7 天、13 天和 90 天的尿失禁率分别为 74.2%、80.7% 和 91.4%。通过机器学习,XGBoost 被证明是预测术后尿失禁风险的最有效方法。该算法确定的重要变量包括神经保留方法、年龄、DRE 和总 PSA。该模型的阈值为 0.67,可将患者分为高风险和低风险两类,从而提供个性化的术后尿失禁风险预测。结论:预测术后尿失禁对于定制 RARP 术后康复至关重要。机器学习算法,尤其是 XGBoost,可以有效识别那些对术后尿失禁结果影响较大的变量,从而建立一个人工智能驱动的模型,解决目前 RARP 术后康复所面临的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Machine Learning Algorithm to Predict the Risk of Incontinence After Robot-Assisted Radical Prostatectomy.

Introduction: Predicting postoperative incontinence beforehand is crucial for intensified and personalized rehabilitation after robot-assisted radical prostatectomy. Although nomograms exist, their retrospective limitations highlight artificial intelligence (AI)'s potential. This study seeks to develop a machine learning algorithm using robot-assisted radical prostatectomy (RARP) data to predict postoperative incontinence, advancing personalized care. Materials and Methods: In this propsective observational study, patients with localized prostate cancer undergoing RARP between April 2022 and January 2023 were assessed. Preoperative variables included age, body mass index, prostate-specific antigen (PSA) levels, digital rectal examination (DRE) results, Gleason score, International Society of Urological Pathology grade, and continence and potency questionnaires responses. Intraoperative factors, postoperative outcomes, and pathological variables were recorded. Urinary continence was evaluated using the Expanded Prostate cancer Index Composite questionnaire, and machine learning models (XGBoost, Random Forest, Logistic Regression) were explored to predict incontinence risk. The chosen model's SHAP values elucidated variables impacting predictions. Results: A dataset of 227 patients undergoing RARP was considered for the study. Post-RARP complications were predominantly low grade, and urinary continence rates were 74.2%, 80.7%, and 91.4% at 7, 13, and 90 days after catheter removal, respectively. Employing machine learning, XGBoost proved the most effective in predicting postoperative incontinence risk. Significant variables identified by the algorithm included nerve-sparing approach, age, DRE, and total PSA. The model's threshold of 0.67 categorized patients into high or low risk, offering personalized predictions about the risk of incontinence after surgery. Conclusions: Predicting postoperative incontinence is crucial for tailoring rehabilitation after RARP. Machine learning algorithm, particularly XGBoost, can effectively identify those variables more heavily, impacting the outcome of postoperative continence, allowing to build an AI-driven model addressing the current challenges in post-RARP rehabilitation.

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来源期刊
Journal of endourology
Journal of endourology 医学-泌尿学与肾脏学
CiteScore
5.50
自引率
14.80%
发文量
254
审稿时长
1 months
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 Techniques in endourology with accompanying videos Reviews and epochs in endourology Endourology survey section of endourology relevant manuscripts published in other journals.
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