Seckiner Ilker, Seckiner Serap, Sen Haluk, Bayrak Omer, Dogan Kazim, Erturhan Sakip
Department of Urology, Gaziantep University, Gaziantep, Turkey.
Department of Endustrial Engineering, Gaziantep University, Gaziantep, Turkey.
Int Braz J Urol. 2017 Nov-Dec;43(6):1110-1114. doi: 10.1590/S1677-5538.IBJU.2016.0630.
The prototype artificial neural network (ANN) model was developed using data from patients with renal stone, in order to predict stone-free status and to help in planning treatment with Extracorporeal Shock Wave Lithotripsy (ESWL) for kidney stones.
Data were collected from the 203 patients including gender, single or multiple nature of the stone, location of the stone, infundibulopelvic angle primary or secondary nature of the stone, status of hydronephrosis, stone size after ESWL, age, size, skin to stone distance, stone density and creatinine, for eleven variables. Regression analysis and the ANN method were applied to predict treatment success using the same series of data.
Subsequently, patients were divided into three groups by neural network software, in order to implement the ANN: training group (n=139), validation group (n=32), and the test group (n=32). ANN analysis demonstrated that the prediction accuracy of the stone-free rate was 99.25% in the training group, 85.48% in the validation group, and 88.70% in the test group.
Successful results were obtained to predict the stone-free rate, with the help of the ANN model designed by using a series of data collected from real patients in whom ESWL was implemented to help in planning treatment for kidney stones.
利用肾结石患者的数据开发人工神经网络(ANN)原型模型,以预测结石清除状态,并辅助规划肾结石的体外冲击波碎石术(ESWL)治疗方案。
收集了203例患者的资料,包括性别、结石的单发或多发性质、结石位置、肾盂漏斗角、结石的原发或继发性质、肾积水状态、ESWL术后结石大小、年龄、体型、皮肤至结石距离、结石密度和肌酐,共11个变量。应用回归分析和人工神经网络方法,使用同一组数据预测治疗成功率。
随后,通过神经网络软件将患者分为三组,以实施人工神经网络:训练组(n = 139)、验证组(n = 32)和测试组(n = 32)。人工神经网络分析表明,训练组结石清除率的预测准确率为99.25%,验证组为85.48%,测试组为88.70%。
借助利用实施ESWL的真实患者收集的一系列数据设计的人工神经网络模型,成功获得了预测结石清除率的结果,有助于规划肾结石的治疗方案。