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  • 1
    Online Resource
    Online Resource
    Elsevier BV ; 2011
    In:  Computational Biology and Chemistry Vol. 35, No. 6 ( 2011-12), p. 353-362
    In: Computational Biology and Chemistry, Elsevier BV, Vol. 35, No. 6 ( 2011-12), p. 353-362
    Type of Medium: Online Resource
    ISSN: 1476-9271
    Language: English
    Publisher: Elsevier BV
    Publication Date: 2011
    detail.hit.zdb_id: 2110171-1
    SSG: 12
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  • 2
    Online Resource
    Online Resource
    Elsevier BV ; 2014
    In:  Transactions of Nonferrous Metals Society of China Vol. 24, No. 6 ( 2014-06), p. 1800-1806
    In: Transactions of Nonferrous Metals Society of China, Elsevier BV, Vol. 24, No. 6 ( 2014-06), p. 1800-1806
    Type of Medium: Online Resource
    ISSN: 1003-6326
    Language: English
    Publisher: Elsevier BV
    Publication Date: 2014
    detail.hit.zdb_id: 2238689-0
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  • 3
    Online Resource
    Online Resource
    Oxford University Press (OUP) ; 2013
    In:  Bioinformatics Vol. 29, No. 10 ( 2013-05-15), p. 1317-1324
    In: Bioinformatics, Oxford University Press (OUP), Vol. 29, No. 10 ( 2013-05-15), p. 1317-1324
    Abstract: Motivation: Discovering drug’s Anatomical Therapeutic Chemical (ATC) classification rules at molecular level is of vital importance to understand a vast majority of drugs action. However, few studies attempt to annotate drug’s potential ATC-codes by computational approaches. Results: Here, we introduce drug-target network to computationally predict drug’s ATC-codes and propose a novel method named NetPredATC. Starting from the assumption that drugs with similar chemical structures or target proteins share common ATC-codes, our method, NetPredATC, aims to assign drug’s potential ATC-codes by integrating chemical structures and target proteins. Specifically, we first construct a gold-standard positive dataset from drugs’ ATC-code annotation databases. Then we characterize ATC-code and drug by their similarity profiles and define kernel function to correlate them. Finally, we use a kernel method, support vector machine, to automatically predict drug’s ATC-codes. Our method was validated on four drug datasets with various target proteins, including enzymes, ion channels, G-protein couple receptors and nuclear receptors. We found that both drug’s chemical structure and target protein are predictive, and target protein information has better accuracy. Further integrating these two data sources revealed more experimentally validated ATC-codes for drugs. We extensively compared our NetPredATC with SuperPred, which is a chemical similarity-only based method. Experimental results showed that our NetPredATC outperforms SuperPred not only in predictive coverage but also in accuracy. In addition, database search and functional annotation analysis support that our novel predictions are worthy of future experimental validation. Conclusion: In conclusion, our new method, NetPredATC, can predict drug’s ATC-codes more accurately by incorporating drug-target network and integrating data, which will promote drug mechanism understanding and drug repositioning and discovery. Availability: NetPredATC is available at http://doc.aporc.org/wiki/NetPredATC. Contact:  ycwang@nwipb.cas.cn or ywang@amss.ac.cn Supplementary information:  Supplementary data are available at Bioinformatics online.
    Type of Medium: Online Resource
    ISSN: 1367-4811 , 1367-4803
    Language: English
    Publisher: Oxford University Press (OUP)
    Publication Date: 2013
    detail.hit.zdb_id: 1468345-3
    SSG: 12
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  • 4
    Online Resource
    Online Resource
    Oxford University Press (OUP) ; 2016
    In:  Bioinformatics Vol. 32, No. 2 ( 2016-01-15), p. 226-234
    In: Bioinformatics, Oxford University Press (OUP), Vol. 32, No. 2 ( 2016-01-15), p. 226-234
    Abstract: Motivation: With the booming of interactome studies, a lot of interactions can be measured in a high throughput way and large scale datasets are available. It is becoming apparent that many different types of interactions can be potential drug targets. Compared with inhibition of a single protein, inhibition of protein–protein interaction (PPI) is promising to improve the specificity with fewer adverse side-effects. Also it greatly broadens the drug target search space, which makes the drug target discovery difficult. Computational methods are highly desired to efficiently provide candidates for further experiments and hold the promise to greatly accelerate the discovery of novel drug targets. Results: Here, we propose a machine learning method to predict PPI targets in a genomic-wide scale. Specifically, we develop a computational method, named as PrePPItar, to Predict PPIs as drug targets by uncovering the potential associations between drugs and PPIs. First, we survey the databases and manually construct a gold-standard positive dataset for drug and PPI interactions. This effort leads to a dataset with 227 associations among 63 PPIs and 113 FDA-approved drugs and allows us to build models to learn the association rules from the data. Second, we characterize drugs by profiling in chemical structure, drug ATC-code annotation, and side-effect space and represent PPI similarity by a symmetrical S-kernel based on protein amino acid sequence. Then the drugs and PPIs are correlated by Kronecker product kernel. Finally, a support vector machine (SVM), is trained to predict novel associations between drugs and PPIs. We validate our PrePPItar method on the well-established gold-standard dataset by cross-validation. We find that all chemical structure, drug ATC-code, and side-effect information are predictive for PPI target. Moreover, we can increase the PPI target prediction coverage by integrating multiple data sources. Follow-up database search and pathway analysis indicate that our new predictions are worthy of future experimental validation. Conclusion: In conclusion, PrePPItar can serve as a useful tool for PPI target discovery and provides a general heterogeneous data integrative framework. Availability and implementation: PrePPItar is available at http://doc.aporc.org/wiki/PrePPItar. Contact:  ycwang@nwipb.cas.cn or ywang@amss.ac.cn Supplementary information:  Supplementary data are available at Bioinformatics online.
    Type of Medium: Online Resource
    ISSN: 1367-4811 , 1367-4803
    Language: English
    Publisher: Oxford University Press (OUP)
    Publication Date: 2016
    detail.hit.zdb_id: 1468345-3
    SSG: 12
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  • 5
    Online Resource
    Online Resource
    Springer Science and Business Media LLC ; 2011
    In:  BMC Bioinformatics Vol. 12, No. 1 ( 2011-12)
    In: BMC Bioinformatics, Springer Science and Business Media LLC, Vol. 12, No. 1 ( 2011-12)
    Abstract: With the development of genome-sequencing technologies, protein sequences are readily obtained by translating the measured mRNAs. Therefore predicting protein-protein interactions from the sequences is of great demand. The reason lies in the fact that identifying protein-protein interactions is becoming a bottleneck for eventually understanding the functions of proteins, especially for those organisms barely characterized. Although a few methods have been proposed, the converse problem, if the features used extract sufficient and unbiased information from protein sequences, is almost untouched. Results In this study, we interrogate this problem theoretically by an optimization scheme. Motivated by the theoretical investigation, we find novel encoding methods for both protein sequences and protein pairs. Our new methods exploit sufficiently the information of protein sequences and reduce artificial bias and computational cost. Thus, it significantly outperforms the available methods regarding sensitivity, specificity, precision, and recall with cross-validation evaluation and reaches ~80% and ~90% accuracy in Escherichia coli and Saccharomyces cerevisiae respectively. Our findings here hold important implication for other sequence-based prediction tasks because representation of biological sequence is always the first step in computational biology. Conclusions By considering the converse problem, we propose new representation methods for both protein sequences and protein pairs. The results show that our method significantly improves the accuracy of protein-protein interaction predictions.
    Type of Medium: Online Resource
    ISSN: 1471-2105
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2011
    detail.hit.zdb_id: 2041484-5
    SSG: 12
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  • 6
    Online Resource
    Online Resource
    Bentham Science Publishers Ltd. ; 2010
    In:  Letters in Drug Design & Discovery Vol. 7, No. 5 ( 2010-06-01), p. 370-378
    In: Letters in Drug Design & Discovery, Bentham Science Publishers Ltd., Vol. 7, No. 5 ( 2010-06-01), p. 370-378
    Type of Medium: Online Resource
    ISSN: 1570-1808
    Language: English
    Publisher: Bentham Science Publishers Ltd.
    Publication Date: 2010
    SSG: 15,3
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  • 7
    Online Resource
    Online Resource
    Springer Science and Business Media LLC ; 2011
    In:  BMC Systems Biology Vol. 5, No. S1 ( 2011-12)
    In: BMC Systems Biology, Springer Science and Business Media LLC, Vol. 5, No. S1 ( 2011-12)
    Abstract: Enzymes are known as the largest class of proteins and their functions are usually annotated by the Enzyme Commission (EC), which uses a hierarchy structure, i.e., four numbers separated by periods, to classify the function of enzymes. Automatically categorizing enzyme into the EC hierarchy is crucial to understand its specific molecular mechanism. Results In this paper, we introduce two key improvements in predicting enzyme function within the machine learning framework. One is to introduce the efficient sequence encoding methods for representing given proteins. The second one is to develop a structure-based prediction method with low computational complexity. In particular, we propose to use the conjoint triad feature (CTF) to represent the given protein sequences by considering not only the composition of amino acids but also the neighbor relationships in the sequence. Then we develop a support vector machine (SVM)-based method, named as SVMHL (SVM for hierarchy labels), to output enzyme function by fully considering the hierarchical structure of EC. The experimental results show that our SVMHL with the CTF outperforms SVMHL with the amino acid composition (AAC) feature both in predictive accuracy and Matthew’s correlation coefficient (MCC). In addition, SVMHL with the CTF obtains the accuracy and MCC ranging from 81% to 98% and 0 . 82 to 0 . 98 when predicting the first three EC digits on a low-homologous enzyme dataset. We further demonstrate that our method outperforms the methods which do not take account of hierarchical relationship among enzyme categories and alternative methods which incorporate prior knowledge about inter-class relationships. Conclusions Our structure-based prediction model, SVMHL with the CTF, reduces the computational complexity and outperforms the alternative approaches in enzyme function prediction. Therefore our new method will be a useful tool for enzyme function prediction community.
    Type of Medium: Online Resource
    ISSN: 1752-0509
    Language: English
    Publisher: Springer Science and Business Media LLC
    Publication Date: 2011
    detail.hit.zdb_id: 2265490-2
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  • 8
    Online Resource
    Online Resource
    Heighten Science Publications Corporation ; 2023
    In:  Archives of Pharmacy and Pharmaceutical Sciences Vol. 7, No. 1 ( 2023-04-07), p. 008-016
    In: Archives of Pharmacy and Pharmaceutical Sciences, Heighten Science Publications Corporation, Vol. 7, No. 1 ( 2023-04-07), p. 008-016
    Abstract: mRNA drugs are synthesized using cell-free systems without complex and stringent manufacturing processes, which makes their preparation simple, efficient, and economical. Over the past few years, mRNAs encoding antibodies have been one of the research frontiers of antibody drug development. In cancer immunotherapy, mRNAs encoding immune checkpoint antibodies may be advantageous regarding antibody persistence and durability of the anti-tumor immune response of patients. In our previous study, a candidate antibody—AET2010—targeting the novel immune checkpoint TIGIT was reported. Its anti-tumor activity was also investigated using adoptive transfer of NK-92MI cells in a xenograft mouse model, but the limitations of the model did not facilitate precise evaluation. In the present study, we further investigated the therapeutic potential of AET2010 for cancer in TIGIT-humanized BALB/c mice. Next, we explored the design, synthesis, and optimization of mRNAs encoding AET2010 and ultimately obtained a candidate mRNA (mRNA-BU) with favorable in vitro and in vivo expression levels of active AET2010. Particularly, lipid-nanoparticle-encapsulated mRNA-BU delivered to mice produced AET2010 with significantly higher peak concentration and expression duration than an equivalent dose of original AET2010. This study provides a sound basis for developing novel drugs targeting TIGIT.
    Type of Medium: Online Resource
    ISSN: 2639-992X
    Language: Unknown
    Publisher: Heighten Science Publications Corporation
    Publication Date: 2023
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  • 9
    In: Journal of Integrative Agriculture, Elsevier BV, Vol. 22, No. 1 ( 2023-01), p. 108-119
    Type of Medium: Online Resource
    ISSN: 2095-3119
    Language: English
    Publisher: Elsevier BV
    Publication Date: 2023
    detail.hit.zdb_id: 2668746-X
    SSG: 21
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  • 10
    Online Resource
    Online Resource
    Elsevier BV ; 2019
    In:  Construction and Building Materials Vol. 203 ( 2019-04), p. 304-313
    In: Construction and Building Materials, Elsevier BV, Vol. 203 ( 2019-04), p. 304-313
    Type of Medium: Online Resource
    ISSN: 0950-0618
    Language: English
    Publisher: Elsevier BV
    Publication Date: 2019
    detail.hit.zdb_id: 2002804-0
    detail.hit.zdb_id: 58896-9
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