Inceptionv3-LSTM-COV:基于 Inceptionv3 和长短期记忆的从化学构象识别 COVID 药物不良反应的多标签框架

IF 1.3 4区 计算机科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC ETRI Journal Pub Date : 2024-02-25 DOI:10.4218/etrij.2023-0288
Pranab Das, Dilwar Hussain Mazumder
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引用次数: 0

摘要

由于 COVID-19 在全球大流行,已经开发出治疗冠状病毒病(COVID)的不同药物。然而,预测和识别这些药物的潜在不良反应是生产有效的 COVID 药物所面临的重大挑战。准确预测 COVID 药物的不良反应对于确保患者安全和药物成功至关重要。制药生产中使用的计算模型的最新进展为检测此类不良反应提供了新的可能性。鉴于对有效 COVID 药物开发的迫切需求,本研究提出了一种用于 COVID 药物开发的多标签 Inceptionv3 和长短期记忆方法(Inceptionv3-LSTM-COV)。实验评估使用 COVID 药物的化学构象图像进行。化学构象的特征利用 RGB 颜色通道表示,并使用 Inceptionv3、GlobalAveragePooling2D 和长短期记忆(LSTM)层进行提取。结果表明,Inceptionv3-LSTM-COV 模型的效率优于之前的研究,与 MLCNN-COV、Inceptionv3、ResNet50、MobileNetv2、VGG19 和 DenseNet201 模型相比取得了更好的结果。所提出的模型在预测 COVID 药物不良反应方面的准确率最高,达到 99.19%。
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Inceptionv3-LSTM-COV: A multi-label framework for identifying adverse reactions to COVID medicine from chemical conformers based on Inceptionv3 and long short-term memory
Due to the global COVID-19 pandemic, distinct medicines have been developed for treating the coronavirus disease (COVID). However, predicting and identifying potential adverse reactions to these medicines face significant challenges in producing effective COVID medication. Accurate prediction of adverse reactions to COVID medications is crucial for ensuring patient safety and medicine success. Recent advancements in computational models used in pharmaceutical production have opened up new possibilities for detecting such adverse reactions. Due to the urgent need for effective COVID medication development, this research presents a multi-label Inceptionv3 and long short-term memory methodology for COVID (Inceptionv3-LSTM-COV) medicine development. The presented experimental evaluations were conducted using the chemical conformer image of COVID medicine. The features of the chemical conformer are denoted utilizing the RGB color channel, which is extracted using Inceptionv3, GlobalAveragePooling2D, and long short-term memory (LSTM) layers. The results demonstrate that the efficiency of the Inceptionv3-LSTM-COV model outperformed the previous study's performance and achieved better results compared to MLCNN-COV, Inceptionv3, ResNet50, MobileNetv2, VGG19, and DenseNet201 models. The proposed model reported the highest accuracy value of 99.19% in predicting adverse reactions to COVID medicine.
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来源期刊
ETRI Journal
ETRI Journal 工程技术-电信学
CiteScore
4.00
自引率
7.10%
发文量
98
审稿时长
6.9 months
期刊介绍: ETRI Journal is an international, peer-reviewed multidisciplinary journal published bimonthly in English. The main focus of the journal is to provide an open forum to exchange innovative ideas and technology in the fields of information, telecommunications, and electronics. Key topics of interest include high-performance computing, big data analytics, cloud computing, multimedia technology, communication networks and services, wireless communications and mobile computing, material and component technology, as well as security. With an international editorial committee and experts from around the world as reviewers, ETRI Journal publishes high-quality research papers on the latest and best developments from the global community.
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