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Use of artificial neural networks in the management of antenatally diagnosed ureteropelvic junction obstruction

机译:人工神经网络在产前诊断的输尿管盆腔连接阻塞中的应用

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Background: In this study, an artificial neural network (ANN) based system has been developed specifically to help in the management of antenatally diagnosed uretero-pelvic junction (UPJ) obstruction. Methods: A total of 53 infants with antenatally detected hydronephrosis caused by UPJ obstruction were included in this study. A neural network was developed with the help of a commercially available software package. The patients’ age and sex, renal pelvic diameter, laterality, split renal function and presence of renal scar on radionuclide scan, follow-up times, urine culture results and the presence of symptomatic infections were used as variables. These data were also entered into a statistical software package and linear regression analysis was done. Results: During the follow-up period, 36 children were observed, and the remaining 17 renal units underwent pyeloplasty. The average sensitivity of the ANN model in predicting the outcome was found to be 92% in the training group and 75% in the validation and test groups. In linear regression, none of the predictors were found to be statistically significant. Interpretation: In this study, we have demonstrated that the use of ANNs in antenatally diagnosed UPJ obstruction can help the clinician in making treatment decisions, and thus can be useful in daily clinical practice.
机译:背景:在这项研究中,专门开发了一个基于人工神经网络(ANN)的系统,以帮助管理产前诊断的输尿管-盆腔连接(UPJ)阻塞。方法:本研究共纳入53例因UPJ阻塞而在产前发现肾积水的婴儿。在市售软件包的帮助下开发了神经网络。将患者的年龄和性别,肾盂直径,侧斜度,肾功能分裂和放射性核素扫描中发现的肾疤痕,随访时间,尿培养结果和有症状的感染作为变量。这些数据也输入到统计软件包中,并进行了线性回归分析。结果:在随访期间,观察到36名儿童,其余17个肾单位接受了肾盂成形术。在训练组中,ANN模型预测结果的平均敏感性为92%,在验证组和测试组中为75%。在线性回归中,没有发现任何预测指标具有统计学意义。解释:在这项研究中,我们证明了在产前诊断的UPJ梗阻中使用ANN可以帮助临床医生做出治疗决策,因此可以在日常临床实践中使用。

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