Tsitsiflis Athanasios, Kiouvrekis Yiannis, Chasiotis Georgios, Perifanos Georgios, Gravas Stavros, Stefanidis Ioannis, Tzortzis Vassilios, Karatzas Anastasios
Department of Urology, Faculty of Medicine, School of Health Sciences, University of Thessaly, Larissa, Greece.
Department of Public and Integrated Health, University of Thessaly, Karditsa, Greece.
Asian J Urol. 2022 Apr;9(2):132-138. doi: 10.1016/j.ajur.2021.09.005. Epub 2021 Sep 30.
Artificial neural networks (ANNs) are widely applied in medicine, since they substantially increase the sensitivity and specificity of the diagnosis, classification, and the prognosis of a medical condition. In this study, we constructed an ANN to evaluate several parameters of extracorporeal shockwave lithotripsy (ESWL), such as the outcome and safety of the procedure.
Patients with urinary lithiasis suitable for ESWL treatment were enrolled. An ANN was designed using MATLAB. Medical data were collected from all patients and 12 nodes were used as inputs. Conventional statistical analysis was also performed.
Finally, 716 patients were included in our study. Univariate analysis revealed that diabetes and hydronephrosis were positively correlated with ESWL complications. Regarding efficacy, univariate analysis revealed that stone location, stone size, the number and density of shockwaves delivered, and the presence of a stent in the ureter were independent factors of the ESWL outcome. This was further confirmed when adjusted for sex and age in a multivariate analysis. The performance of the ANN at the end of the training state reached 98.72%. The four basic ratios (sensitivity, specificity, positive predictive value, and negative predictive value) were calculated for both training and evaluation data sets. The performance of the ANN at the end of the evaluation state was 81.43%.
Our ANN achieved high score in predicting the outcome and the side effects of the ESWL treatment for urinary stones.
人工神经网络(ANNs)在医学中广泛应用,因为它们能显著提高疾病诊断、分类及预后的敏感性和特异性。在本研究中,我们构建了一个人工神经网络来评估体外冲击波碎石术(ESWL)的几个参数,如该手术的疗效和安全性。
纳入适合ESWL治疗的尿路结石患者。使用MATLAB设计一个人工神经网络。收集所有患者的医学数据,并将12个节点用作输入。还进行了传统的统计分析。
最终,716例患者纳入我们的研究。单因素分析显示,糖尿病和肾积水与ESWL并发症呈正相关。关于疗效,单因素分析显示,结石位置、结石大小、冲击波发射次数和密度以及输尿管支架的存在是ESWL疗效的独立因素。在多因素分析中对性别和年龄进行校正后,这一点得到进一步证实。人工神经网络在训练状态结束时的性能达到98.72%。计算了训练和评估数据集的四个基本比率(敏感性、特异性、阳性预测值和阴性预测值)。人工神经网络在评估状态结束时的性能为81.43%。
我们的人工神经网络在预测尿路结石ESWL治疗的疗效和副作用方面取得了高分。