APPLICATION OF DEEP BOLTZMANN MACHINE IN DIAGNOSIS PROCESSES OF HEPATITIS TYPES B & C

Hadis Oftadeh, M. Manthouri
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Abstract

Correct diagnosis of diseases is the main problem in medicine. Artificial intelligence and learning methods have been developed to solve problems in many fields, such as biology and medical sciences. Correct diagnosis before treatment is the most challenging and the first step in achieving proper cures. The primary objective of this paper is to introduce an intelligent system that develops beyond the deep neural network. It can diagnose and distinguish between Hepatitis types B and C by using a set of general tests for liver health. The deep network used in this research is the Deep Boltzmann Machine (DBM). Learning components within Restricted Boltzmann Machine (RBM) lead to intended results. The RBMs extract features to be used in an efficient classification process. An RBM is robust computing and well-suited to extract high-level features and diagnose hepatitis B and C. The method was tested on general items in laboratory tests that check the liver’s health. The DBM could predict hepatitis type B and C with an accuracy between 90.1% and 92.04%. Predictive accuracy was obtained with10-fold cross-validation. Compared with other methods, simulation results on DBM architecture reveal the proposed method’s efficiency in diagnosing Hepatitis B and C. What made this approach successful was a deep learning network in addition to discovering communication and extracting knowledge from the data.
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深玻尔兹曼机在乙型和丙型肝炎诊断中的应用
正确诊断疾病是医学上的主要问题。人工智能和学习方法已经发展到解决许多领域的问题,如生物学和医学科学。治疗前的正确诊断是最具挑战性的,也是实现适当治疗的第一步。本文的主要目的是介绍一种超越深度神经网络的智能系统。它可以通过一套肝脏健康的一般测试来诊断和区分乙型肝炎和丙型肝炎。本研究中使用的深度网络是深度玻尔兹曼机(DBM)。受限玻尔兹曼机(RBM)中的学习组件会导致预期的结果。rbm提取用于有效分类过程的特征。RBM具有强大的计算能力,非常适合提取高级特征和诊断乙型肝炎和丙型肝炎。该方法在检查肝脏健康的实验室测试中的一般项目上进行了测试。DBM预测乙型和丙型肝炎的准确率在90.1% ~ 92.04%之间。通过10倍交叉验证获得预测准确性。与其他方法相比,在DBM架构上的仿真结果表明,该方法在诊断乙型肝炎和丙型肝炎方面具有较高的效率。该方法的成功之处是除了发现通信和从数据中提取知识外,还采用了深度学习网络。
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