基于深度学习自动编码器的病毒疾病分子信息系统分析

A. Junejo, Xiang Li
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摘要

全世界每年有数亿人遭受病毒感染。然而,其中一些人在病毒感染期间和之后既没有疫苗也没有有效的治疗。如肺炎、严重急性呼吸系统综合症2型(SARS -2)、艾滋病毒感染和丙型肝炎病毒。这些病毒性疾病也会直接或间接导致心血管疾病。近年来,深度神经网络(Deep Neural Network, DNN)辅助分子相互作用(information)收发器(transmitter Tx, receiver Rx)的设计突破了传统的人体内外分子相互作用(information)收发器的局限。在本文中,我们使用基于深度神经网络的方法来设计和实现一种新的收发器(Tx/Rx)。我们分别研究了DNN辅助MI- Tx/Rx、多层感知DNN自编码器(MLP-AE)和卷积神经网络自编码器(CNN-AE)。我们采用MLP-AE和CNN-AE作为点对点方案同时完成调制、解调和均衡任务。
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A systematic Analysis: Molecular Information in viral Disease using Deep Learning Auto Encoder
Hundreds of millions of people around the world suffer from viral infections every year. However, some of them have neither vaccine nor effective treatment during and after viral infection. Such as pneumonia, severe acute respiratory syndrome type 2 (SARS -2), HIV infection and Hepatitis-C virus. These viral diseases also directly and indirectly cause cardiovascular disease (CVD). Recently, the Deep Neural Network (DNN)-assisted molecular interaction (information) (MI) transceiver (transmitter Tx, and receiver Rx) design was brought to the fore to break the issues of traditional molecular information (MI) inside and outside human body. In this paper, we use DNN based approach to design and implement a new transceiver (Tx/Rx). We investigate DNN-assisted MI- Tx/Rx , multilayer perception DNN auto-encoder (MLP-AE), and convolutional neural network auto-encoder (CNN-AE), respectively. We apply an MLP-AE and CNN-AE to simultaneously accomplish the task of modulation, demodulation, and equalization as a point-to-point scheme.
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