Literature DB >> 28968655

Facilitating prediction of adverse drug reactions by using knowledge graphs and multi-label learning models.

Emir Muñoz1,2, Vít Novácek2, Pierre-Yves Vandenbussche1.   

Abstract

Timely identification of adverse drug reactions (ADRs) is highly important in the domains of public health and pharmacology. Early discovery of potential ADRs can limit their effect on patient lives and also make drug development pipelines more robust and efficient. Reliable in silico prediction of ADRs can be helpful in this context, and thus, it has been intensely studied. Recent works achieved promising results using machine learning. The presented work focuses on machine learning methods that use drug profiles for making predictions and use features from multiple data sources. We argue that despite promising results, existing works have limitations, especially regarding flexibility in experimenting with different data sets and/or predictive models. We suggest to address these limitations by generalization of the key principles used by the state of the art. Namely, we explore effects of: (1) using knowledge graphs-machine-readable interlinked representations of biomedical knowledge-as a convenient uniform representation of heterogeneous data; and (2) casting ADR prediction as a multi-label ranking problem. We present a specific way of using knowledge graphs to generate different feature sets and demonstrate favourable performance of selected off-the-shelf multi-label learning models in comparison with existing works. Our experiments suggest better suitability of certain multi-label learning methods for applications where ranking is preferred. The presented approach can be easily extended to other feature sources or machine learning methods, making it flexible for experiments tuned toward specific requirements of end users. Our work also provides a clearly defined and reproducible baseline for any future related experiments.

Entities:  

Mesh:

Year:  2019        PMID: 28968655     DOI: 10.1093/bib/bbx099

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  10 in total

Review 1.  Machine Learning in Causal Inference: Application in Pharmacovigilance.

Authors:  Yiqing Zhao; Yue Yu; Hanyin Wang; Yikuan Li; Yu Deng; Guoqian Jiang; Yuan Luo
Journal:  Drug Saf       Date:  2022-05-17       Impact factor: 5.228

2.  Analyzing adverse drug reaction using statistical and machine learning methods: A systematic review.

Authors:  Hae Reong Kim; MinDong Sung; Ji Ae Park; Kyeongseob Jeong; Ho Heon Kim; Suehyun Lee; Yu Rang Park
Journal:  Medicine (Baltimore)       Date:  2022-06-24       Impact factor: 1.817

3.  MEDICASCY: A Machine Learning Approach for Predicting Small-Molecule Drug Side Effects, Indications, Efficacy, and Modes of Action.

Authors:  Hongyi Zhou; Hongnan Cao; Lilya Matyunina; Madelyn Shelby; Lauren Cassels; John F McDonald; Jeffrey Skolnick
Journal:  Mol Pharm       Date:  2020-04-13       Impact factor: 4.939

4.  Investigating ADR mechanisms with Explainable AI: a feasibility study with knowledge graph mining.

Authors:  Emmanuel Bresso; Pierre Monnin; Cédric Bousquet; François-Elie Calvier; Ndeye-Coumba Ndiaye; Nadine Petitpain; Malika Smaïl-Tabbone; Adrien Coulet
Journal:  BMC Med Inform Decis Mak       Date:  2021-05-26       Impact factor: 2.796

5.  Prediction of Drug Side Effects with a Refined Negative Sample Selection Strategy.

Authors:  Haiyan Liang; Lei Chen; Xian Zhao; Xiaolin Zhang
Journal:  Comput Math Methods Med       Date:  2020-05-09       Impact factor: 2.238

6.  An integrative machine learning approach for prediction of toxicity-related drug safety.

Authors:  Artem Lysenko; Alok Sharma; Keith A Boroevich; Tatsuhiko Tsunoda
Journal:  Life Sci Alliance       Date:  2018-11-28

7.  Inverse similarity and reliable negative samples for drug side-effect prediction.

Authors:  Yi Zheng; Hui Peng; Shameek Ghosh; Chaowang Lan; Jinyan Li
Journal:  BMC Bioinformatics       Date:  2019-02-04       Impact factor: 3.169

8.  Prediction of adverse drug reactions based on knowledge graph embedding.

Authors:  Fei Zhang; Bo Sun; Xiaolin Diao; Wei Zhao; Ting Shu
Journal:  BMC Med Inform Decis Mak       Date:  2021-02-04       Impact factor: 2.796

9.  Combining biomedical knowledge graphs and text to improve predictions for drug-target interactions and drug-indications.

Authors:  Mona Alshahrani; Abdullah Almansour; Asma Alkhaldi; Maha A Thafar; Mahmut Uludag; Magbubah Essack; Robert Hoehndorf
Journal:  PeerJ       Date:  2022-04-04       Impact factor: 2.984

10.  Similarity-Based Method with Multiple-Feature Sampling for Predicting Drug Side Effects.

Authors:  Zixin Wu; Lei Chen
Journal:  Comput Math Methods Med       Date:  2022-04-01       Impact factor: 2.238

  10 in total

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