Faculty of Medicine, Department of Urology, Selcuk University, Tıp Fakültesi Alaeddin Keykubat Yerleşkesi Selçuklu, Konya, 42131, Turkey.
Faculty of Medicine, Selcuk University, Konya, Turkey.
World J Urol. 2024 May 15;42(1):324. doi: 10.1007/s00345-024-05017-x.
To predict the post transurethral prostate resection(TURP) urethral stricture probability by applying different machine learning algorithms using the data obtained from preoperative blood parameters.
A retrospective analysis of data from patients who underwent bipolar-TURP encompassing patient characteristics, preoperative routine blood test outcomes, and post-surgery uroflowmetry were used to develop and educate machine learning models. Various metrics, such as F1 score, model accuracy, negative predictive value, positive predictive value, sensitivity, specificity, Youden Index, ROC AUC value, and confidence interval for each model, were used to assess the predictive performance of machine learning models for urethral stricture development.
A total of 109 patients' data (55 patients without urethral stricture and 54 patients with urethral stricture) were included in the study after implementing strict inclusion and exclusion criteria. The preoperative Platelet Distribution Width, Mean Platelet Volume, Plateletcrit, Activated Partial Thromboplastin Time, and Prothrombin Time values were statistically meaningful between the two cohorts. After applying the data to the machine learning systems, the accuracy prediction scores for the diverse algorithms were as follows: decision trees (0.82), logistic regression (0.82), random forests (0.91), support vector machines (0.86), K-nearest neighbors (0.82), and naïve Bayes (0.77).
Our machine learning models' accuracy in predicting the post-TURP urethral stricture probability has demonstrated significant success. Exploring prospective studies that integrate supplementary variables has the potential to enhance the precision and accuracy of machine learning models, consequently progressing their ability to predict post-TURP urethral stricture risk.
通过应用不同的机器学习算法,利用术前血液参数获得的数据,预测经尿道前列腺切除术(TURP)后尿道狭窄的概率。
对接受双极 TURP 手术的患者的数据进行回顾性分析,包括患者特征、术前常规血液检查结果和术后尿流率,用于开发和教育机器学习模型。使用多种指标,如 F1 评分、模型准确性、阴性预测值、阳性预测值、敏感度、特异性、约登指数、ROC AUC 值和每个模型的置信区间,评估机器学习模型对尿道狭窄发展的预测性能。
在实施严格的纳入和排除标准后,共有 109 名患者的数据(55 名无尿道狭窄患者和 54 名有尿道狭窄患者)纳入研究。术前血小板分布宽度、平均血小板体积、血小板比容、活化部分凝血活酶时间和凝血酶原时间在两组间有统计学意义。将数据应用于机器学习系统后,各种算法的准确性预测评分如下:决策树(0.82)、逻辑回归(0.82)、随机森林(0.91)、支持向量机(0.86)、K-最近邻(0.82)和朴素贝叶斯(0.77)。
我们的机器学习模型预测 TURP 后尿道狭窄概率的准确性取得了显著成功。探索整合补充变量的前瞻性研究有可能提高机器学习模型的精度和准确性,从而提高其预测 TURP 后尿道狭窄风险的能力。