Liu Jia, Dai ShuYang, Chen Gong, Sun Song, Jiang JingYing, Zheng Shan, Zheng YiJie, Dong Rui
Department of Pediatric Surgery, Children's Hospital of Fudan University, Shanghai Key Laboratory of Birth Defect, Shanghai, China.
Department of Medicine, Pulmonary Hospital Affiliated to Tongji University, Shanghai, China.
Front Pediatr. 2020 Aug 6;8:409. doi: 10.3389/fped.2020.00409. eCollection 2020.
Biliary atresia (BA) is a devastating pediatric liver disease. Early diagnosis is important for timely intervention and better prognosis. Using clinical parameters for non-invasive and efficient BA diagnosis, we aimed to establish an artificial neural network (ANN). A total of 2,384 obstructive jaundice patients from 2012 to 2017 and their 137 clinical parameters were screened for eligibility. A standard binary classification feed-forward ANN was employed. The network was trained and validated for accuracy. Gamma-glutamyl transpeptidase (GGT) level was used as an independent predictor and a comparison to assess the network effectiveness. We included 46 parameters and 1,452 patients for ANN modeling. Total bilirubin, direct bilirubin, and GGT were the most significant indicators. The network consisted of an input layer, 3 hidden layers with 12 neurons each, and an output layer. The network showed good predictive property with a high area under curve (AUC) (0.967, sensitivity 97.2% and specificity 91.0%). Five-fold cross validation showed the mean accuracy for training data of 93.2% and for validation data of 88.6%. The high accuracy and efficiency demonstrated by the ANN model is promising in the noninvasive diagnosis of BA and could be considered as in a low-cost and independent expert diagnosis system.
胆道闭锁(BA)是一种严重的儿童肝脏疾病。早期诊断对于及时干预和改善预后至关重要。我们旨在利用临床参数建立一个人工神经网络(ANN),以实现无创且高效的BA诊断。对2012年至2017年期间的2384例梗阻性黄疸患者及其137项临床参数进行了合格性筛选。采用了标准的二分类前馈ANN。对该网络进行训练并验证其准确性。使用γ-谷氨酰转肽酶(GGT)水平作为独立预测指标,并进行比较以评估网络的有效性。我们纳入了46项参数和1452例患者进行ANN建模。总胆红素、直接胆红素和GGT是最显著的指标。该网络由一个输入层、3个各有12个神经元的隐藏层和一个输出层组成。该网络具有良好的预测性能,曲线下面积(AUC)较高(0.967,敏感性97.2%,特异性91.0%)。五折交叉验证显示训练数据的平均准确率为93.2%,验证数据的平均准确率为88.6%。ANN模型所展示的高准确性和效率在BA的无创诊断中很有前景,可被视为一种低成本且独立的专家诊断系统。