[利用临床决策支持系统,考虑手术学习曲线,解读保留肾脏手术早期结果的预后]。

Q4 Medicine
Urologiia Pub Date : 2024-05-01
S Sirota E, A Kuznetsov I, V Glybochko P, V Butnaru D, G Alyaev Yu, N Fiev D, V Proskura A, R Adzhiev A, A Zholdubaev A
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引用次数: 0

摘要

目的:评估机器学习模型预测腹腔镜肾脏肿瘤保肾手术(NSS)早期结果的可能性,同时考虑手术学习曲线:分析了4名外科医生为局部肾肿瘤患者连续实施的320例腹腔镜保肾手术的结果。在极端梯度提升法(eXtreme Gradient Boosting)的基础上,建立了考虑手术学习曲线的机器学习模型。为了识别重要因素并解释模型的预后能力,采用了计算 Shapley 值的 SHapley Additive exPlanations 方法。选择了三组因素作为输入数据阵列。第一组包括患者的人口学和临床特征,如年龄、性别、夏尔森合并症指数、体重指数、术前肾小球滤过率(GFR)。第二组是肾肿瘤的形态学指标,包括 RENAL.肾功能评分、PADUA(用于解剖的术前方面和尺寸)、C-index(中心性指数评分)、肿瘤绝对体积、肿瘤相对于肾表面的定位。此外,还分析了与手术学习曲线相关的因素,如病例数和最近 10 次手术的围手术期结果。目标变量是手术持续时间、温热缺血时间和术后 24 小时后的 GFR:SHAP方法可以直观地解释基于极端梯度提升的机器学习算法,用于预测肾脏肿瘤患者腹腔镜NSS早期围手术期结果。对于使用 SHAP 方法计算出的 "复杂度"、"斜率角 "等新特征,证实了其在构建目标变量预测模型中的高度重要性,并解释了在构建的机器学习模型中特定特征对目标变量的影响:结论:SHAP 方法显示出良好的实际效果,与专家的观察结果不谋而合。结论:SHAP 方法显示出良好的实际效果,与专家的观察结果不谋而合。使用这种解决方案,将来就可以引入机器学习模型,形成临床决策支持系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Interpretation of the prognosis of early results of nephron-sparing surgery with consideration of surgical learning curve using clinical decision support systems].

Aim: To assess the possibility of interpreting machine learning models to predict the early results of laparoscopic nephron-sparing surgery (NSS) in kidney tumors with consideration of surgical learning curve.

Materials and methods: The results of 320 consecutive laparoscopic NSS in patients with localized kidney tumors, performed by 4 surgeons, were analyzed. The construction of a machine learning model taking into account surgical learning curve was carried out based on the extreme gradient boosting (eXtreme Gradient Boosting). To identify significant factors and interpret the prognostic ability of the model, the SHapley Additive exPlanations method was used with a calculation of the Shapley value. Three groups of factors were chosen as an array of input data. The first group included demographic and clinical characteristics of patients, such as age, gender, Charlson comorbidity index, body mass index, preoperative glomerular filtration rate (GFR). In the second group, there were morphometric indicators of the kidney tumor, including RENAL. Nephrometry Score, PADUA (Preoperative Aspects and Dimensions Used for an Anatomical), C-index (Centrality index score), absolute tumor volume, localization of the tumor in relation to the kidney surface. In addition, factors associated with surgical learning curve, such as case number and perioperative results last 10 procedures, were analyzed. The target variables were duration of the procedure, warm ischemia time, and postoperative GFR after 24 hours.

Results: The SHAP method allows a visual interpretation of a machine learning algorithm based on the extreme gradient boosting for individual prediction of early perioperative outcomes of laparoscopic NSS in patients with renal tumors. For the calculated new features "complexity", "slope angle" and others using the SHAP method, the high significance in building predictive models for target variables was confirmed, and an interpretation of the influence of specific features on the target variable in the constructed machine learning models was also given.

Conclusion: The SHAP method showed good practical results that coincide with the observations of specialists. The use of such solutions will allow in the future to introduce machine learning models to form clinical decision support systems.

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来源期刊
Urologiia
Urologiia Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
160
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