查加斯病患者分层中的深度学习和排列熵

D. Cornejo, A. Ravelo-García, E. Alvarez, María Fernanda Rodríguez, Luz Alexandra Díaz, Victor Cabrera-Caso, Dante Condori-Merma, Miguel Vizcardo Cornejo
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引用次数: 0

摘要

恰加斯病是一种危及生命的疾病,在过去几十年中,由于流行病学模式的变化,它已成为一个公共卫生问题。在慢性期可能是沉默和无症状的。因此,开发早期标记是必要的。为了实现这一点,我们提出了一个深度神经网络架构,将292名患者分为三组:对照组有83名志愿者,CH1组有102名血清学阳性且无心脏受累的患者,CH2组有107名血清学阳性且早期心力衰竭的患者。使用的数据来自24小时心电图,每个受试者的RR间隔被划分为288帧,每帧5分钟。然后使用排列熵对其进行预处理,获得每个患者的昼夜节律特征。通过应用PCA,每个患者最终由144个条目的向量表示。这反过来又用于训练所提出的神经网络架构。分类准确率为91%,平均精度为92%,通过各ROC曲线的AUC验证了分类的有效性。由于数据量有限,本研究可以通过更多的样本进行改进,使该模型成为心电图分析的工具,以便对与一般沉默的慢性期相关的心脏损害进行早期评估和诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning and Permutation Entropy in the Stratification of Patients with Chagas Disease
Chagas disease is a life threatening illness that in the last decades was becoming a public health problem because of the change in the epidemiological pattern. It may be silent and asymptomatic in the chronic phase. Hence the necessity of the development of early markers. To achieve this, we propose a deep neural network architecture in order to classify 292 patients into three groups: The Control group with 83 volunteers, the CH1 group with 102 patients with positive serology and no cardiac involvement and the CH2 group with 107 patients with positive serology and incipient heart failure. The used data comes from 24-hour ECG, the RR intervals from each subject was divided in 288 frames of 5 minutes each. Then it was preprocessed using permutation entropy obtaining the circadian profile for each patient. And by applying PCA each patient ended up represented by a vector of 144 entries. This was in turn used for the training of the proposed NN architecture. The classification performed with 91% accuracy and an average of 92% precision, consisting in a great work of classification validated by the AUC in each ROC curve. As this results were obtained with a limited quantity of data, this study can be improved provided with more samples, making this model a tool for analyzing ECG in order to try to do an early evaluation and diagnosis of a cardiac compromise related to the generally silent chronic phase.
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