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相关话题的讨论汇总
话题: drug话题: target话题: lpmihn话题: network话题: similarity
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f******6
发帖数: 68
1
现转让一篇英国皇家化学学会的杂志的稿子.
如果有相关的经验,又需要审稿,请把你的名字,单位,非个人的email发到我的邮箱.
Molecular BioSystems
TITLE: Prediction of drug-target interaction by label propagation with
mutual interaction information derived from heterogeneous network
ABSTRACT:
Identification of potential drug-target interaction pairs is very important,
which is not only for providing greater understanding of protein function,
but also for enhancing drug research, especially for drug function
repositioning. Recently, numerous machine learning-based algorithms (e.g.
kernel-based, matrix factorization-based and network-based inference methods
) have been developed for predicting drug-target interactions. All these
methods implicitly utilize the assumption that similar drugs tend to target
similar proteins. However, many approaches cannot be applied to drugs
without any known target information, and they just only use the chemical or
genomics information. To further improve the accuracy of prediction, a
novel method of network-based label propagation with mutual interaction
information derived from heterogeneous network, namely LPMIHN, is proposed
to infer the potential drug-target interactions. LPMIHN fuses the drug’s
chemical similarity, target protein sequence similarity with their
respective topological similarity in drug-target interaction network to
construct the drug-target heterogeneous network, and integrates drug/target
label information through bipartite graph matrix to obtain the initial
target label, then implements respectively the label propagation on drug
similarity network and target protein similarity network until convergence
to the global optimal solution. As a result, all targets are ranked by label
propagation for a query drug. Comparison with other recent state-of-the-art
methods on the four popular benchmark datasets of binary drug-target
interactions and two quantitative kinase bioactivity datasets, LPMIHN
achieves the best results in AUC and AUPR. In addition, many of the
promising drug-target pairs predicted from LPMIHN are also confirmed on the
latest publicly available drug-target databases such as ChEMBL, KEGG,
SuperTarget and Drugbank. Those results demonstrate the effectiveness of
LPMIHN and also indicate that LPMIHN has the great potential for predicting
drug-target interactions.
f******6
发帖数: 68
2
已经转让了。

important,
,

【在 f******6 的大作中提到】
: 现转让一篇英国皇家化学学会的杂志的稿子.
: 如果有相关的经验,又需要审稿,请把你的名字,单位,非个人的email发到我的邮箱.
: Molecular BioSystems
: TITLE: Prediction of drug-target interaction by label propagation with
: mutual interaction information derived from heterogeneous network
: ABSTRACT:
: Identification of potential drug-target interaction pairs is very important,
: which is not only for providing greater understanding of protein function,
: but also for enhancing drug research, especially for drug function
: repositioning. Recently, numerous machine learning-based algorithms (e.g.

1 (共1页)
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5 Paper reviews in a good IEEE conferenceReview for 7 network/communication papers in EE/CS
Reviewer neededArticle review opportunity for omic research
小心从天而降的副编或者会议主持机会求一篇文献,140被RFE 这个review很有用,我怎么都下不到
review: 生物数学(或者生物力学)方面Need reviewer for physics paper
文献求助ACS 的 review机会
审稿机会:Molecular BioSystems(影响因子3.859)审稿机会 (化学,材料, 催化)
审稿机会(Molecular Biosystems,印象因子约4)征审稿人:physical layer of communications (转载)
再请大家帮下几个全文,感谢han you战友!求一边中文文章,包子答谢
相关话题的讨论汇总
话题: drug话题: target话题: lpmihn话题: network话题: similarity