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iATC_Deep-mISF: A Multi-Label Classifier for Predicting the Classes of Anatomical Therapeutic Chemicals by Deep Learning

机译:IATC_DEEP-MISF:通过深入学习预测解剖治疗化学品的类别的多标签分类器

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摘要

The recent worldwide spreading of pneumonia-causing virus, such as Coronavirus, COVID-19, and H1N1, has been endangering the life of human beings all around the world. To provide useful clues for developing antiviral drugs, information of anatomical therapeutic chemicals is vitally important. In view of this, a CNN based predictor called "iATC_Deep-mISF" has been developed. The predictor is particularly useful in dealing with the multi-label systems in which some chemicals may occur in two or more different classes. To maximize the convenience for most experimental scientists, a user-friendly web-server for the new predictor has been established at http://www.jci-bioinfo.cn/iATC_Deep-mISF/, which will become a very powerful tool for developing effective drugs to fight pandemic coronavirus and save the mankind of this planet.
机译:最近的全球肺炎造成病毒的蔓延,如冠状病毒,Covid-19和H1N1,一直危及世界各地人类的生命。为了提供用于开发抗病毒药物的有用线索,解剖学治疗化学品的信息是至关重要的。鉴于此,已开发出称为“IATC_DEEP-MISF”的基于CNN的预测器。预测器特别适用于处理多标签系统,其中一些化学物质可能发生在两个或更多个不同的类中。为了最大限度地提高大多数实验科学家的便利性,已经在http://www.jci-bioinfo.cn/iatc_deep-misf/中建立了一个用于新预测器的用户友好的网络服务器,这将成为一个非常强大的开发工具有效的药物,用于对抗大流行冠状病毒并拯救这个星球的人类。

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