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Artificial neural network aided non-invasive grading evaluation of hepatic fibrosis by duplex ultrasonography

机译:人工神经网络辅助超声对肝纤维化的无创分级评价

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Background Artificial neural networks (ANNs) are widely studied for evaluating diseases. This paper discusses the intelligence mode of an ANN in grading the diagnosis of liver fibrosis by duplex ultrasonogaphy. Methods 239 patients who were confirmed as having liver fibrosis or cirrhosis by ultrasound guided liver biopsy were investigated in this study. We quantified ultrasonographic parameters as significant parameters using a data optimization procedure applied to an ANN. 179 patients were typed at random as the training group; 60 additional patients were consequently enrolled as the validating group. Performance of the ANN was evaluated according to accuracy, sensitivity, specificity, Youden’s index and receiver operating characteristic (ROC) analysis. Results 5 ultrasonographic parameters; i.e., the liver parenchyma, thickness of spleen, hepatic vein (HV) waveform, hepatic artery pulsatile index (HAPI) and HV damping index (HVDI), were enrolled as the input neurons in the ANN model. The sensitivity, specificity and accuracy of the ANN model for quantitative diagnosis of liver fibrosis were 95.0%, 85.0% and 88.3%, respectively. The Youden’s index (YI) was 0.80. Conclusions The established ANN model had good sensitivity and specificity in quantitative diagnosis of hepatic fibrosis or liver cirrhosis. Our study suggests that the ANN model based on duplex ultrasound may help non-invasive grading diagnosis of liver fibrosis in clinical practice.
机译:背景技术人工神经网络(ANN)被广泛研究用于评估疾病。本文探讨了一种人工神经网络的智能模式,该技术可用于通过超声检查对肝脏纤维化进行分级诊断。方法对239例经超声引导下肝活检证实为肝纤维化或肝硬化的患者进行调查。我们使用应用于神经网络的数据优化程序将超声检查参数量化为重要参数。将179例患者随机分为训练组。因此,又有60名患者入选为验证组。 ANN的性能是根据准确性,敏感性,特异性,尤登指数和接收器工作特性(ROC)分析进行评估的。结果5个超声检查参数;即,将肝实质,脾脏厚度,肝静脉(HV)波形,肝动脉搏动指数(HAPI)和HV阻尼指数(HVDI)作为ANN模型的输入神经元。 ANN模型定量诊断肝纤维化的敏感性,特异性和准确性分别为95.0%,85.0%和88.3%。尤登指数(YI)为0.80。结论建立的ANN模型在肝纤维化或肝硬化的定量诊断中具有良好的敏感性和特异性。我们的研究表明,基于双工超声的ANN模型可能有助于在临床实践中对肝纤维化进行无创分级诊断。

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