首页> 外文期刊>Journal of Infection >An artificial neural network improves the non-invasive diagnosis of significant fibrosis in HIV/HCV coinfected patients.
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An artificial neural network improves the non-invasive diagnosis of significant fibrosis in HIV/HCV coinfected patients.

机译:人工神经网络改善了HIV / HCV合并感染患者中重大纤维化的非侵入性诊断。

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OBJECTIVE: To develop an artificial neural network to predict significant fibrosis (F>/=2) (ANN-SF) in HIV/Hepatitis C (HCV) coinfected patients using clinical data derived from peripheral blood. METHODS: Patients were randomly divided into an estimation group (217 cases) used to generate the ANN and a test group (145 cases) used to confirm its power to predict F>/=2. Liver fibrosis was estimated according to the METAVIR score. RESULTS: The values of the area under the receiver operating characteristic curve (AUC-ROC) of the ANN-SF were 0.868 in the estimation set and 0.846 in the test set. In the estimation set, with a cut-off value of <0.35 to predict the absence of F>/=2, the sensitivity (Se), specificity (Sp), and positive (PPV) and negative predictive values (NPV) were 94.1%, 41.8%, 66.3% and 85.4% respectively. Furthermore, with a cut-off value of >0.75 to predict the presence of F>/=2, the ANN-SF provided Se, Sp, PPV and NPV of 53.8%, 94.9%, 92.8% and 62.8% respectively. In the test set, with a cut-off value of <0.35 to predict the absence of F>/=2, the Se, Sp, PPV and NPV were 91.8%, 51.7%, 72.9% and 81.6% respectively. Furthermore, with a cut-off value of >0.75 to predict the presence of F>/=2, the ANN-SF provided Se, Sp, PPV and NPV of 43.5%, 96.7%, 94.9% and 54.7% respectively. CONCLUSION: The ANN-SF accurately predicted significant fibrosis and outperformed other simple non-invasive indices for HIV/HCV coinfected patients. Our data suggest that ANN may be a helpful tool for guiding therapeutic decisions in clinical practice concerning HIV/HCV coinfection.
机译:目的:开发人工神经网络,以使用外周血获得的临床数据预测HIV /丙型肝炎(HCV)合并感染患者的严重纤维化(F> / = 2)(ANN-SF)。方法:将患者随机分为用于生成ANN的评估组(217例)和用于确认其预测F> / = 2的能力的测试组(145例)。根据METAVIR评分评估肝纤维化。结果:ANN-SF的接收机工作特性曲线(AUC-ROC)下的面积在评估集中为0.868,在测试集中为0.846。在估计集中,使用<0.35的临界值来预测F> / = 2的缺失,灵敏度(Se),特异性(Sp)和阳性(PPV)和阴性预测值(NPV)为94.1 %,41.8%,66.3%和85.4%。此外,ANN-SF的截断值> 0.75以预测F> / = 2的存在,分别提供了53.8%,94.9%,92.8%和62.8%的Se,Sp,PPV和NPV。在该测试集中,Se值,Sp值,PPV和NPV值分别为91.8%,51.7%,72.9%和81.6%,其中临界值<0.35以预测F> / = 2的缺失。此外,以大于0.75的临界值来预测F> / = 2的存在,ANN-SF提供的Se,Sp,PPV和NPV分别为43.5%,96.7%,94.9%和54.7%。结论:ANN-SF可以准确预测出明显的纤维化,并且优于HIV / HCV合并感染患者的其他简单非侵入性指标。我们的数据表明,人工神经网络可能是指导有关HIV / HCV合并感染的临床实践中的治疗决策的有用工具。

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