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基于人工智能分类器在经皮肾镜取石术治疗鹿角结石的结局评估和结石清除率预测中的应用:数据交叉验证和准确性估计。

Application of Artificial Intelligence-Based Classifiers to Predict the Outcome Measures and Stone-Free Status Following Percutaneous Nephrolithotomy for Staghorn Calculi: Cross-Validation of Data and Estimation of Accuracy.

机构信息

Department of Urology, Kasturba Medical College Manipal, Manipal Academy of Higher Education, Manipal, Karnataka, India.

KMC Innovation Centre, Manipal Academy of Higher Education, Manipal, Karnataka, India.

出版信息

J Endourol. 2021 Sep;35(9):1307-1313. doi: 10.1089/end.2020.1136. Epub 2021 May 20.

DOI:10.1089/end.2020.1136
PMID:33691473
Abstract

To develop a decision support system (DSS) for the prediction of the postoperative outcome of a kidney stone treatment procedure, particularly percutaneous nephrolithotomy (PCNL) to serve as a promising tool to provide counseling before an operation. The overall procedure includes data collection and prediction model development. Pre-/postoperative variables of 100 patients with staghorn calculus, who underwent PCNL, were collected. For feature vector, variables and categories including patient history variables, kidney stone parameters, and laboratory data were considered. The prediction model was developed using machine learning techniques, which include dimensionality reduction and supervised classification. Multiple classifier scheme was used for prediction. The derived DSS was evaluated by running the leave-one-patient-out cross-validation approach on the data set. The system provided favorable accuracy (81%) in predicting the outcome of a treatment procedure. Performance in predicting the stone-free rate with the Minimum Redundancy Maximum Relevance feature (MRMR) treatment extracting top 3 features using Random Forest (RF) was 67%, with MRMR treatment extracting top 5 features using RF was 63%, and with MRMR treatment extracting top 10 features using Decision Tree was 62%. The statistical significance using standard error between the best area under the curves (AUCs) obtained from the Linear Discriminant Analysis (LDA) and MRMR. The results obtained from the LDA approach (0.81 AUC) was statistically significant ( = 0.027,  = 2.21) from the MRMR (0.64 AUC) ( = 0.05). The promising results of the developed DSS could be used in assisting urologists to provide counseling, predict a surgical outcome, and ultimately choose an appropriate surgical treatment for removing kidney stones.

摘要

为了开发一种用于预测肾结石治疗术后结果的决策支持系统(DSS),特别是经皮肾镜碎石术(PCNL),作为手术前提供咨询的有前途的工具。该过程总体包括数据收集和预测模型开发。收集了 100 例鹿角结石患者接受 PCNL 手术的术前/术后变量。对于特征向量,考虑了包括患者病史变量、肾结石参数和实验室数据在内的变量和类别。使用机器学习技术开发预测模型,包括降维和监督分类。使用多分类器方案进行预测。通过在数据集上运行留一患者交叉验证方法来评估所开发的 DSS。该系统在预测治疗结果方面具有良好的准确性(81%)。使用随机森林(RF)提取特征排名前 3 的最小冗余最大相关性(MRMR)治疗方法预测无结石率的性能为 67%,使用 RF 提取特征排名前 5 的 MRMR 治疗方法为 63%,使用决策树提取特征排名前 10 的 MRMR 治疗方法为 62%。使用标准误差比较线性判别分析(LDA)和 MRMR 得到的最佳曲线下面积(AUC)的统计显著性。LDA 方法(0.81 AUC)的结果具有统计学意义( = 0.027,  = 2.21),MRMR(0.64 AUC)的结果( = 0.05)。所开发的 DSS 的有希望的结果可用于协助泌尿科医生提供咨询、预测手术结果,并最终为去除肾结石选择适当的手术治疗。

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