药物不良反应(adr)检测与预测模型综述

A. Pandit, S. Dubey
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引用次数: 1

摘要

在医学领域,不良反应被定义为药物的意外有害反应。与药品有关的几起不良反应报告可能导致上级医疗机构的干预。它可能导致标签更改或完全禁止进入消费者市场。这篇综述的主要目的是利用与ADR检测和预测领域相关的研究工作,详细阐述针对几个ADR数据源实施的不同技术和方法。相关研究成果收集自Pubmed和ResearchGate等知名网站。论文是根据一些研究问题选择的,这些问题是“确定用于ADR检测和预测的不同数据集?”“为什么早期发现不良反应对改善患者安全和医疗保健很重要?”以及“人工智能和机器学习领域的最新趋势如何有助于准确预测adr ?”在研究问题的基础上,共收集了172篇研究论文。经过深入分析,笔者筛选出了实际关注的研究课题87篇,其中与ADR检测主题相关的研究论文51篇,与ADR预测主题相关的研究论文36篇。此外,作者提出了一个差距分析,并在此基础上设计了一个新的深度学习框架。通过这项综述研究,作者成功地强调了这样一个事实,即早期发现和预测不良反应对更好的患者安全和医疗保健至关重要。
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A comprehensive review on Adverse Drug Reactions (ADRs) Detection and Prediction Models
In medical domain ADRs are defined as unintended harmful reactions of drugs. Several incidences of ADR reports related to a medicinal product can lead to an intervention by higher medical authorities. It can result in label change or complete ban from consumer market. The main aim of this review paper is to elaborate different techniques and methodologies implemented for several ADR datasources using research works related to ADR detection and prediction domain. The relevant research works are collected from known sites like Pubmed & ResearchGate. The papers are selected on the basis of some research questions that are ‘Identify the different datasets used for ADR detection & prediction?’ ‘Why early detection of ADRs are important for better patient safety and healthcare? ’ and ‘How recent trends in artificial intelligence and machine learning domain are useful in accurate prediction of ADRs? On the basis of the research questions a total 172 research papers are collected. After analyzing thoroughly the authors had identified 87 research studies of actual interest that can be categorized into 51 research papers related to ADR detection theme and 36 research works are related to ADR prediction theme. Furthermore the authors present a gap analysis and based on it a novel deep learning framework have been designed. Through this review study the authors have successfully highlighted the fact that early detection and prediction of ADR is crucial for better patient safety and healthcare.
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