一二三四区视频,亚洲少妇熟女色,日本久热无码视频网,欧美国产日韩大尺度,亚洲a视频,久久少妇一区二区,日韩999无码视频,刺激久久久久久久,啊啊啊啊不要啊在线

ChemicalBook >> journal list >> Interdisciplinary Sciences: Computational Life Sciences >>article
Interdisciplinary Sciences: Computational Life Sciences

Interdisciplinary Sciences: Computational Life Sciences

IF: 3.9
Download PDF

Deep Learning Based Drug Screening for Novel Coronavirus 2019-nCov

Published:1 September 2020 DOI: 10.1007/s12539-020-00376-6 PMID: 32488835
Haiping Zhang, Konda Mani Saravanan, Yang Yang, Md Tofazzal Hossain, Junxin Li, Xiaohu Ren, Yi Pan, Yanjie Wei

Abstract

A novel coronavirus, called 2019-nCoV, was recently found in Wuhan, Hubei Province of China, and now is spreading across China and other parts of the world. Although there are some drugs to treat 2019-nCoV, there is no proper scientific evidence about its activity on the virus. It is of high significance to develop a drug that can combat the virus effectively to save valuable human lives. It usually takes a much longer time to develop a drug using traditional methods. For 2019-nCoV, it is now better to rely on some alternative methods such as deep learning to develop drugs that can combat such a disease effectively since 2019-nCoV is highly homologous to SARS-CoV. In the present work, we first collected virus RNA sequences of 18 patients reported to have 2019-nCoV from the public domain database, translated the RNA into protein sequences, and performed multiple sequence alignment. After a careful literature survey and sequence analysis, 3C-like protease is considered to be a major therapeutic target and we built a protein 3D model of 3C-like protease using homology modeling. Relying on the structural model, we used a pipeline to perform large scale virtual screening by using a deep learning based method to accurately rank/identify protein-ligand interacting pairs developed recently in our group. Our model identified potential drugs for 2019-nCoV 3C-like protease by performing drug screening against four chemical compound databases (Chimdiv, Targetmol-Approved_Drug_Library, Targetmol-Natural_Compound_Library, and Targetmol-Bioactive_Compound_Library) and a database of tripeptides. Through this paper, we provided the list of possible chemical ligands (Meglumine, Vidarabine, Adenosine, D-Sorbitol, D-Mannitol, Sodium_gluconate, Ganciclovir and Chlorobutanol) and peptide drugs (combination of isoleucine, lysine and proline) from the databases to guide the experimental scientists and validate the molecules which can combat the virus in a shorter time.

Similar articles

IF:3.9

Novel choline-chloride-based deep-eutectic-solvents with renewable hydrogen bond donors: levulinic acid and sugar-based polyols

RSC Advances Zaira Maugeri and Pablo Domínguez de María,etc Published: 18 November 2011
IF:5.3

Deep Learning and Single‐Cell Sequencing Analyses Unveiling Key Molecular Features in the Progression of Carotid Atherosclerotic Plaque

JOURNAL OF CELLULAR AND MOLECULAR MEDICINE Han Zhang, Yixian Wang,etc Published: 25 November 2024
IF:2.3

Use of a molecular beacon based fluorescent method for assaying uracil DNA glycosylase (Ung) activity and inhibitor screening

Biochemistry and Biophysics Reports Avani Mehta , Prateek Raj ,etc Published: 1 July 2021
玉树县| 达日县| 阿克苏市| 乌拉特后旗| 高州市| 临潭县| 革吉县| 攀枝花市| 清新县| 龙南县| 六枝特区| 芜湖县| 雅安市| 和田市| 大洼县| 孟州市| 多伦县| 平阴县| 富源县| 耿马| 阳泉市| 罗源县| 临朐县| 京山县| 保靖县| 汝城县| 望城县| 固镇县| 塘沽区| 普兰县| 岳西县| 托克逊县| 阿克| 屏东县| 博白县| 涡阳县| 秦安县| 大洼县| 祁阳县| 康定县| 将乐县|