👤 C.-K. Kwoh

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Also published as: Chee-Keong Kwoh
articles
S.J. Rayhan, K.M. Koeller, J.C. Wong +221 more · 2020 · Heliyon · Elsevier · added 2026-04-20
S.J. Rayhan, K.M. Koeller, J.C. Wong, R.A. Butcher, S.L. Schreiber, F.G. Kuruvilla, A.F. Shamji, S.M. Sternson, P.J. Hergenrother, D.B. Kitchen, H. Decornez, J.R. Furr, J. Bajorath, Z. Mousavian, A. Masoudi-Nejad, R.S. Olayan, H. Ashoor, V.B. Bajic, Y. Yamanishi, M. Araki, A. Gutteridge, W. Honda, M. Kanehisa, S. Khakabimamaghani, K. Kavousi, F. Rayhan, S. Ahmed, S. Shatabda, D.M. Farid, A. Dehzangi, M.S. Rahman, K. Tian, M. Shao, Y. Wang, J. Guan, S. Zhou, K.C. Chan, Z.-H. You, W. Wang, S. Yang, J. Li, X. Chen, M.-X. Liu, G.-Y. Yan, K. Bleakley, S. Alaimo, A. Pulvirenti, R. Giugno, A. Ferro, F. Cheng, C. Liu, J. Jiang, W. Lu, W. Li, G. Liu, W. Zhou, J. Huang, Y. Tang, Z. He, J. Zhang, X.-H. Shi, L.-L. Hu, X. Kong, Y.-D. Cai, K.-C. Chou, X. Xiao, J.-L. Min, P. Wang, J. Keum, H. Nam Self-blm, M. Hao, S.H. Bryant, M. Gönen, W. Ba-Alawi, O. Soufan, M. Essack, P. Kalnis, H. Chen, Z. Zhang, Y.-A. Huang, S. Daminelli, J.M. Thomas, C. Durán, C.V. Cannistraci, V.J. Haupt, M. Schroeder, Q. Yuan, J. Gao, D. Wu, S. Zhang, H. Mamitsuka, S. Zhu, L. Wang, S.-X. Xia, F. Liu, X. Yan, Y. Zhou, K.-J. Song, A. Ezzat, M. Wu, X.-L. Li, C.-K. Kwoh, C.C. Yan, X. Zhang, F. Dai, J. Yin, Y. Zhang, M. Wen, S. Niu, H. Sha, R. Yang, Y. Yun, H. Lu, Y. López, S.P. Lal, G. Taherzadeh, J. Michaelson, A. Sattar, T. Tsunoda, A. Sharma, A.W.-C. Liew, Y. Yang, Y. Freund, R.E. Schapire, I. Goodfellow, Y. Bengio, A. Courville, Y. Du, J. Wang, X. Wang, J. Chen, H. Chang, C. Szegedy, W. Liu, Y. Jia, P. Sermanet, S. Reed, D. Anguelov, D. Erhan, V. Vanhoucke, A. Rabinovich, S. Ioffe, J. Shlens, Z. Wojna, A.A. Alemi, M. Abadi, P. Barham, Z. Chen, A. Davis, J. Dean, M. Devin, S. Ghemawat, G. Irving, M. Isard, A. Mahbub, M. Jani, D.P. Kingma, J. Ba Adam, M. Lin, Q. Chen, S. Yan, D.S. Wishart, C. Knox, A.C. Guo, D. Cheng, S. Shrivastava, D. Tzur, B. Gautam, M. Hassanali, S. Goto, M. Hattori, M. Hirakawa, M. Itoh, T. Katayama, S. Kawashima, S. Okuda, T. Tokimatsu, I. Schomburg, A. Chang, C. Ebeling, M. Gremse, C. Heldt, G. Huhn, D. Schomburg, S. Günther, M. Kuhn, M. Dunkel, M. Campillos, C. Senger, E. Petsalaki, J. Ahmed, E.G. Urdiales, A. Gewiess, L.J. Jensen, D.-S. Cao, S. Liu, Q.-S. Xu, H.-M. Lu, J.-H. Huang, Q.-N. Hu, Y.-Z. Liang, J.H. Friedman, F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion, O. Grisel, M. Blondel, P. Prettenhofer, R. Weiss, V. Dubourg, S.R. Safavian, D. Landgrebe, T. Joachims, C.M. Rahman, M. Kotera, P. Mutowo, A.P. Bento, N. Dedman, A. Gaulton, A. Hersey, J. Lomax, J.P. Overington Show less
The task of drug-target interaction prediction holds significant importance in pharmacology and therapeutic drug design. In this paper, we present FRnet-DTI, an auto-encoder based feature manipulation Show more
The task of drug-target interaction prediction holds significant importance in pharmacology and therapeutic drug design. In this paper, we present FRnet-DTI, an auto-encoder based feature manipulation and a convolutional neural network based classifier for drug target interaction prediction. Two convolutional neural networks are proposed: FRnet-Encode and FRnet-Predict. Here, one model is used for feature manipulation and the other one for classification. Using the first method FRnet-Encode, we generate 4096 features for each of the instances in each of the datasets and use the second method, FRnet-Predict, to identify interaction probability employing those features. We have tested our method on four gold standard datasets extensively used by other researchers. Experimental results shows that our method significantly improves over the state-of-the-art method on three out of four drug-target interaction gold standard datasets on both area under curve for Receiver Operating Characteristic (auROC) and area under Precision Recall curve (auPR) metric. We also introduce twenty new potential drug-target pairs for interaction based on high prediction scores. The source codes and implementation details of our methods are available from https://github.com/farshidrayhanuiu/FRnet-DTI/ and also readily available to use as an web application from http://farshidrayhan.pythonanywhere.com/FRnet-DTI/ . Show less
📄 PDF DOI: 10.1016/j.heliyon.2020.e03444
Au ML
Ali Ezzat, Min Wu, Xiaoli Li +1 more · 2019 · Methods in molecular biology (Clifton, N.J.) · Springer · added 2026-04-20
Therapeutic effects of drugs are mediated via interactions between them and their intended targets. As such, prediction of drug-target interactions is of great importance. Drug-target interaction pred Show more
Therapeutic effects of drugs are mediated via interactions between them and their intended targets. As such, prediction of drug-target interactions is of great importance. Drug-target interaction prediction is especially relevant in the case of drug repositioning where attempts are made to repurpose old drugs for new indications. While experimental wet-lab techniques exist for predicting such interactions, they are tedious and time-consuming. On the other hand, computational methods also exist for predicting interactions, and they do so with reasonable accuracy. In addition, computational methods can help guide their wet-lab counterparts by recommending interactions for further validation. In this chapter, a computational method for predicting drug-target interactions is presented. Specifically, we describe a machine learning method that utilizes ensemble learning to perform predictions. We also mention details pertaining to the preparation of the data required for the prediction effort and demonstrate how to evaluate and improve prediction performance. Show less
no PDF DOI: 10.1007/978-1-4939-8955-3_14
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