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2012-2013年我院157例药物不良反应报告分析

Chinese Journal of Clinical Rational Drug Use(2014)

Cited 2|Views5
Abstract
目的:通过对医院药物不良反应报告分析,探讨药物不良反应发生的因素、特点及一般规律,为临床合理用药提供参考。方法对收集到的157例药物不良反应报告表,按患者的性别、年龄、既往药物不良反应、药品类型、给药途径进行分析。结果男女病例数为1.21:1;诱发不良反应的药品类型主要为抗菌药物和心脑血管用药,其中抗菌药物占35.03%,心脑血管用药占37.58%;静脉注射引起的不良反应占91.08%。结论加强药物不良反应监测力度,做好药物不良反应宣传,为临床合理用药提供指导,减少药物不良反应发生。
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