抗抑郁药物检测的1D-Convnet模型

Gracia Rizka Pasfica, Nur Ghaniaviyanto Ramadhan, Faisal Dharma Adhinata
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引用次数: 1

摘要

药物是用于确定诊断、预防、减轻、消除、治疗人类或动物的疾病或疾病症状、身体或精神损伤或紊乱,包括美化人体或人体某些部位的物质或物质的混合物。当患者错误地服用了所使用的目标药物,而不是所患疾病的类型时,问题就开始出现了。例如,假设一个人患有心理障碍,需要服用不同类型的药物,如果事实证明所消耗的药物类型不是由疾病引起的,这是非常危险的。这个问题当然是非常危险的,因为它会导致那些食用它的人死亡。目前,许多研究人员正在使用深度学习卷积神经网络(CNN)模型来解决药物检测问题。CNN模型有更高的层次,即一维卷积神经网络(1D-Convolutional Neural Network, 1D-Convnet),目前很少用于药物检测问题。因此,本研究的目的是使用一维卷积网络(1D-Convnet)类型的深度学习模型来检测非典型抗抑郁药和SSRIs抗抑郁药的分类。使用该模型得到的结果为98.3%,其中影响最大的参数为dropout。所提出的研究模型也比朴素贝叶斯监督学习模型产生更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
1D-Convnet Model for Detection of Antidepressant Drugs
A drug is a substance or mixture of materials to be used in determining the diagnosis, preventing, reducing, eliminating, curing disease or symptoms of disease, bodily or spiritual injury or disorder in humans or animals, including to beautify the body or parts of the human body. Problems begin to arise when a patient is wrong in consuming the target drug used, which is not by the type of disease suffered. For example, suppose a person suffers from a psychological disorder that requires taking different types of drugs, if it turns out that the type of drug consumed is not by the disease, it is very dangerous. This problem is certainly very dangerous because it can cause death for those who consume it. Currently, many researchers are using the deep learning Convolutional Neural Network (CNN) model for drug detection problems. The CNN model has a higher level, namely 1D-Convolutional Neural Network (1D-Convnet) which is still rarely used for drug detection problems. So, the purpose of this study was to detect the classification of atypical antidepressants and SSRIs antidepressants using a deep learning model of the 1D-Convolutional Network (1D-Convnet) type. The results obtained using this model are 98.3% with the most influential parameter, namely dropout. The proposed research model also produces higher accuracy than the Naive Bayes supervised learning model.
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