4.7 Review

A Comprehensive Review of Computational Methods For Drug-Drug Interaction Detection

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TCBB.2021.3081268

Keywords

Drugs; Data mining; Databases; Surveillance; Task analysis; Feature extraction; Safety; Drug-drug interactions; machine learning; relation extraction; link prediction; data mining; pharmacovigilance

Funding

  1. National Key Research and Development Program of China [2018YFC1604000]
  2. National Natural Science Foundation of China [62072206, 61772381]
  3. Fundamental TResearch Funds for the Central Universities [2662019QD011]
  4. Huazhong Agricultural University Scientific & Technological Self-innovation Foundation, National Innovation and Entrepreneurship Training Program for Undergraduate

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This paper provides a comprehensive review of computational methods for detecting drug-drug interactions (DDIs). It discusses three categories of methods: literature-based extraction methods, machine learning-based prediction methods, and pharmacovigilance-based data mining methods. The paper presents the research background, data sources, representative approaches, and evaluation metrics for each category. It also discusses the current challenges and potential opportunities for future directions in DDI detection.
The detection of drug-drug interactions (DDIs) is a crucial task for drug safety surveillance, which provides effective and safe co-prescriptions of multiple drugs. Since laboratory researches are often complicated, costly and time-consuming, it's urgent to develop computational approaches to detect drug-drug interactions. In this paper, we conduct a comprehensive review of state-of-the-art computational methods falling into three categories: literature-based extraction methods, machine learning-based prediction methods and pharmacovigilance-based data mining methods. Literature-based extraction methods detect DDIs from published literature using natural language processing techniques; machine learning-based prediction methods build prediction models based on the known DDIs in databases and predict novel ones; pharmacovigilance-based data mining methods usually apply statistical techniques on various electronic data to detect drug-drug interaction signals. We first present the taxonomy of drug-drug interaction detection methods and provide the outlines of three categories of methods. Afterwards, we respectively introduce research backgrounds and data sources of three categories, and illustrate their representative approaches as well as evaluation metrics. Finally, we discuss the current challenges of existing methods and highlight potential opportunities for future directions.

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