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Study on the Artificial Neural Network in the Diagnosis of Smear Negative Pulmonary Tuberculosis

机译:人工神经网络在涂片阴性肺结核诊断中的研究

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Objective: To study the artificial neural network in the diagnosis of the smear negative pulmonary tuberculosis. Methods: All original data was randomized into modeling sample and validating sample. The modeling sample was further randomized into training sample and testing sample. The training sample was used to screen out significant single parameters and to develop the diagnostic model of smear negative pulmonary tuberculosis based on artificial neural networks. The testing sample was used to determine the appropriate architecture of the model. The validating sample was used to evaluate generalization of this model. Results: The architecture of artificial neural network is (29-9-1)-BP. When the model was applied to the validating sample, the area under the receiver operating characteristic curve was 0.989plusmn0.015, with accuracy, sensitivity and specificity at 93.10%, 88.89% and 100%, respectively. Conclusions: The artificial neural network model used in diagnosing smear negative pulmonary tuberculosis can be better generalized. As such, this can be used as a tool for the diagnosis of smear negative pulmonary tuberculosis and deserves further investigation.
机译:目的:研究人工神经网络在涂片阴性肺结核诊断中的作用。方法:将所有原始数据随机分为建模样本和验证样本。建模样本被进一步随机分为训练样本和测试样本。训练样本用于筛选重要的单个参数,并基于人工神经网络建立涂片阴性肺结核的诊断模型。测试样本用于确定模型的适当架构。验证样本用于评估该模型的一般性。结果:人工神经网络的架构是(29-9-1)-BP。将模型应用于验证样本时,接收器工作特性曲线下的面积为0.989plusmn0.015,准确度,灵敏度和特异性分别为93.10%,88.89%和100%。结论:人工神经网络模型可用于涂片阴性肺结核的诊断。因此,它可用作诊断涂片阴性肺结核的工具,值得进一步研究。

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