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Using Hybrid Similarity-Based Collaborative Filtering Method for Compound Activity Prediction

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Intelligent Computing Theories and Application (ICIC 2018)

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Abstract

It is important for researchers to predict compound activity to the targets quickly and effectively in the field of drug design. In the paper, the problem of compound activity prediction is converted to the recommendations in the field of e-commerce, compounds are viewed as users, and protein targets are viewed as items. A rating matrix is extracted by IC50 of each compound to targets, there are four filtering recommendation algorithms could be used for predicting compound activity. In order to improve the accuracy of prediction, the hybrid similarity-based Collaborative Filtering (HybridSimCF) Method is proposed, the method will combine the similarity of the compound structure and the similarity based on the rating matrix to predict the activity. Through compared with other three collaborative filtering methods, HybridSimCF has better results. It not only improves the values of RMSE and MAE, but also effectively solves the cold start problem. The method can quickly and effectively solve the prediction of compound activity.

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Acknowledgement

This work was supported by the Fundamental Research Funds for the National Natural Science Foundation of China (Grant No. 21503101, No. 61702240), the Natural Science Foundation of Gansu Province, China (Grant No. 1506RJZA223), the Project Sponsored by the Scientific Research Foundation for the Returned Overseas Chinese Scholars, State Education Ministry (Grant No. External department of Education [2015] 311) and the Fundamental Research Funds for the Central Universities (Grant No. lzujbky-2017-191).

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Correspondence to Jun Ma .

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Ma, J., Zhang, R., Yuan, Y., Zhao, Z. (2018). Using Hybrid Similarity-Based Collaborative Filtering Method for Compound Activity Prediction. In: Huang, DS., Jo, KH., Zhang, XL. (eds) Intelligent Computing Theories and Application. ICIC 2018. Lecture Notes in Computer Science(), vol 10955. Springer, Cham. https://doi.org/10.1007/978-3-319-95933-7_67

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  • DOI: https://doi.org/10.1007/978-3-319-95933-7_67

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  • Publisher Name: Springer, Cham

  • Print ISBN: 978-3-319-95932-0

  • Online ISBN: 978-3-319-95933-7

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