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Data-driven Approach to Detect and Predict Adverse Drug Reactions

机译:数据驱动的方法来检测和预测药物不良反应

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摘要

Background: Many factors that directly or indirectly cause adverse drug reaction (ADRs) varying from pharmacological, immunological and genetic factors to ethnic, age, gender, social factors as well as drug and disease related ones. On the other hand, advanced methods of statistics, machine learning and data mining allow the users to more effectively analyze the data for descriptive and predictive purposes. The fast changes in this field make it difficult to follow the research progress and context on ADR detection and prediction. Methods: A large amount of articles on ADRs in the last twenty years is collected. These articles are grouped by recent data types used to study ADRs: omics, social media and electronic medical records (EMRs), and reviewed in terms of the problem addressed, the datasets used and methods. Results: Corresponding three tables are established providing brief information on the research for ADRs detection and prediction. Conclusion: The data-driven approach has shown to be powerful in ADRs detection and prediction. The review helps researchers and pharmacists to have a quick overview on the current status of ADRs detection and prediction.
机译:背景:直接或间接导致药物不良反应(ADR)的因素很多,从药理,免疫和遗传因素到种族,年龄,性别,社会因素以及与药物和疾病相关的因素不等。另一方面,先进的统计,机器学习和数据挖掘方法使用户可以更有效地分析数据,以进行描述和预测。该领域的快速变化使得难以跟踪有关ADR检测和预测的研究进展和背景。方法:收集了近二十年来有关ADR的大量文章。这些文章按最近用于研究ADR的数据类型分组:组学,社交媒体和电子病历(EMR),并根据解决的问题,使用的数据集和方法进行了回顾。结果:建立了相应的三个表格,以提供有关ADR检测和预测研究的简要信息。结论:数据驱动方法已显示出在ADR检测和预测中的强大功能。该评论可帮助研究人员和药剂师快速概述ADR检测和预测的当前状态。

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