近似熵和密集连接神经网络在恰加斯病早期诊断中的应用

María Fernanda Rodríguez, A. Ravelo-García, E. Alvarez, Luz Alexandra Díaz, D. Cornejo, Victor Cabrera-Caso, Dante Condori-Merma, Miguel Vizcardo Cornejo
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引用次数: 1

摘要

据估计,全世界有600万至800万人感染了恰加斯病,主要是在21个拉丁美洲国家的流行地区,近年来,它正在逐渐成为更多城市地区和国家的一个健康问题。从这个意义上说,开发诊断方法是最基本的。这就是为什么这项工作使用深度神经网络对292名受试者(志愿者和患者)进行分类,其中83名健康志愿者(对照组);无症状chagasic患者102例(CH1组)和血清阳性chagasic合并早期心脏病患者107例(CH2组)。从每5分钟(288帧)24小时的昼夜节律曲线的行车图中计算出近似熵ApEn,并利用部分数据对网络进行训练。通过ROC曲线验证,深度神经网络完成的分类工作准确率为98%,精密度为98%,ROC曲线的AUC值近似为每组的单位。考虑到良好的性能,我们可以将该深度神经网络和近似熵作为对恰加斯病及其心脏损害进行早期诊断的有用工具。
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Approximate Entropy and Densely Connected Neural Network in the Early Diagnostic of Patients with Chagas Disease
It is estimated that in the world there are between 6 and 8 million people infected with Chagas disease, mainly in endemic areas of 21 Latin American countries, and in recent years it is slowly becoming a health problem in more urban areas and countries. In that sense, developing diagnosis methods is primordial. That is why this work used a deep neural network to classify 292 subjects (volunteers and patients) composed of 83 health volunteers (Control group); 102 asymptomatic chagasic patients (CH1 group) and 107 seropositive chagasic patients with incipient heart disease (CH2 group). Approximate Entropy ApEn was calculated from the tachograms of the circadian profiles of 24 hours every 5 minutes (288 frames) of each subject, and part of this data were used to train the network. The classification work done by the deep neural network had 98% of accuracy and 98% of precision, validated with the ROC curve, whose AUC values were approximately the unit for each group. Taking into account the good performance, we can consider this deep neural network and approximate entropy as useful tools to have a good early diagnosis about Chagas disease and its cardiac compromise.
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