Data mining methodologies for pharmacovigilance

Mei Liu, M. Matheny, Yong Hu, Hua Xu
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引用次数: 32

Abstract

Medicines are designed to cure, treat, or prevent diseases; however, there are also risks in taking any medicine - particularly short term or long term adverse drug reactions (ADRs) can cause serious harm to patients. Adverse drug events have been estimated to cause over 700,000 emergency department visits each year in the United States. Thus, for medication safety, ADR monitoring is required for each drug throughout its life cycle, including early stages of drug design, different phases of clinical trials, and postmarketing surveillance. Pharmacovigilance (PhV) is the science that concerns with the detection, assessment, understanding and prevention of ADRs. In the pre-marketing stages of a drug, PhV primarily focuses on predicting potential ADRs using preclinical characteristics of the compounds (e.g., drug targets, chemical structure) or screening data (e.g., bioassay data). In the postmarketing stage, PhV has traditionally involved in mining spontaneous reports submitted to national surveillance systems. The research focus is currently shifting toward the use of data generated from platforms outside the conventional framework such as electronic medical records (EMRs), biomedical literature, and patient-reported data in online health forums. The emerging trend of PhV is to link preclinical data from the experimental platform with human safety information observed in the postmarketing phase. This article provides a general overview of the current computational methodologies applied for PhV at different stages of drug development and concludes with future directions and challenges.
药物警戒的数据挖掘方法
药物是用来治愈、治疗或预防疾病的;然而,服用任何药物也有风险——特别是短期或长期的药物不良反应(adr)会对患者造成严重伤害。据估计,在美国,每年有超过70万例药物不良事件导致急诊就诊。因此,为了药物安全,需要对每种药物的整个生命周期进行不良反应监测,包括药物设计的早期阶段、临床试验的不同阶段和上市后监测。药物警戒(PhV)是一门涉及检测、评估、了解和预防不良反应的科学。在药物上市前阶段,PhV主要侧重于利用化合物的临床前特征(如药物靶点、化学结构)或筛选数据(如生物测定数据)预测潜在的adr。在销售后阶段,PhV传统上涉及挖掘提交国家监测系统的自发报告。目前的研究重点正在转向使用传统框架之外的平台产生的数据,如电子病历(emr)、生物医学文献和在线健康论坛上的患者报告数据。PhV的新趋势是将来自实验平台的临床前数据与上市后阶段观察到的人体安全性信息联系起来。本文概述了目前在药物开发的不同阶段应用于PhV的计算方法,并总结了未来的方向和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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