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Feature selection in detection of adverse drug reactions from the Health Improvement Network (THIN) database

机译:从健康改善网络(THIN)数据库中选择药物不良反应检测中的特征

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摘要

Adverse drug reaction (ADR) is widely concerned for public health issue. ADRs are one of most common causes to withdraw some drugs from market. Prescription event monitoring (PEM) is an important approach to detect the adverse drug reactions. The main problem to deal with this method is how to automatically extract the medical events or side effects from high-throughput medical events, which are collected from day to day clinical practice. In this study we propose a novel concept of feature matrix to detect the ADRs. Feature matrix, which is extracted from high-throughput medical data from The Health Improvement Network (THIN) database, is created to characterize the medical events for the patients who take drugs. Feature matrix builds the foundation for the irregular and high-throughput medical data. Then feature selection methods are performed on feature matrix to detect the significant features. Finally the ADRs can be located based on the significant features. The experiments are carried out on three drugs: Atorvastatin, Alendronate, and Metoclopramide. Major side effects for each drug are detected and better performance is achieved compared to other computerized methods. The detected ADRs are based on computerized methods, further investigation is needed.
机译:药物不良反应(ADR)被广泛关注于公共卫生问题。 ADR是从市场上撤回某些药物的最常见原因之一。处方事件监视(PEM)是检测药物不良反应的重要方法。处理该方法的主要问题是如何从日常临床实践中收集的高通量医疗事件中自动提取医疗事件或副作用。在这项研究中,我们提出了一种新的特征矩阵概念来检测ADR。创建了特征矩阵,该特征矩阵是从“健康改善网络”(THIN)数据库的高通量医学数据中提取的,用于表征服用药物的患者的医疗事件。特征矩阵为不规则和高通量医学数据奠定了基础。然后在特征矩阵上执行特征选择方法以检测重要特征。最后,可以基于重要功能定位ADR。实验是对三种药物进行的:阿托伐他汀,阿仑膦酸酯和甲氧氯普胺。与其他计算机化方法相比,可以检测到每种药物的主要副作用,并可以实现更好的性能。检测到的ADR基于计算机化方法,需要进一步调查。

著录项

  • 作者

    Liu Yihui; Aickelin Uwe;

  • 作者单位
  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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