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首页> 外文期刊>Advances in Biological Chemistry >pLoc_Deep-mHum: Predict Subcellular Localization of Human Proteins by Deep Learning
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pLoc_Deep-mHum: Predict Subcellular Localization of Human Proteins by Deep Learning

机译:PLOC_DEEP-MHUM:通过深入学习预测人类蛋白质的亚细胞定位

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摘要

Recently, the life of human beings around the entire world has been endangering by the spreading of pneumonia-causing virus, such as Coronavirus, COVID-19, and H1N1. To develop effective drugs against Coronavirus, knowledge of protein subcellular localization is indispensable. In 2019, a predictor called "pLoc_bal-mHum" was developed for identifying the subcellular localization of human proteins. Its predicted results are significantly better than its counterparts, particularly for those proteins that may simultaneously occur or move between two or more subcellular location sites. However, more efforts are definitely needed to further improve its power since pLoc_bal-mHum was still not trained by a "deep learning", a very powerful technique developed recently. The present study was devoted to incorporate the "deep-learning" technique and develop a new predictor called "pLoc_Deep-mHum". The global absolute true rate achieved by the new predictor is over 81% and its local accuracy is over 90%. Both are overwhelmingly superior to its counterparts. Moreover, a user-friendly web-server for the new predictor has been well established at http://www.jci-bioinfo.cn/pLoc_Deep-mHum/, which will become a very useful tool for fighting pandemic coronavirus and save the mankind of this planet.
机译:最近,整个世界各地的人类的生活一直危及肺炎导致病毒,如冠状病毒,Covid-19和H1N1的蔓延。为了开发针对冠状病毒的有效药物,蛋白质亚细胞定位的知识是必不可少的。 2019年,开发了一种称为“Ploc_bal-MHUM”的预测因子,用于鉴定人蛋白的亚细胞定位。其预测结果明显优于其对应物,特别是对于在两个或多个亚细胞位置位点之间可能同时发生或移动的那些蛋白质。然而,肯定需要更多的努力来进一步提高其权力,因为Ploc_bal-Mhum仍然没有受到“深度学习”,最近开发的一个非常强大的技术。本研究致力于纳入“深度学习”技术,并开发一个名为“PLOC_DEEP-MHUM”的新预测因素。新预测仪实现的全球绝对真实率超过81%,其本地准确度超过90%。这两者都是压倒性地优于其对应物。此外,在http://www.jci-bioinfo.cn/ploc_deep-mhum/,这是一个用于新预测器的用户友好的网站服务器,它将成为战斗大流行冠状病毒并保存人类的非常有用的工具这个星球。

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