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我院医师对超说明书用药认知情况的调查分析

Strait Pharmaceutical Journal(2020)

Cited 6|Views28
Abstract
目的 了解医师对超说明书用药的认知情况,促进对超说明书用药的管理.方法 通过纸质问卷调查的形式,对全院范围内的临床医师和实习医师进行超说明书用药认知情况调查,并用SPSS 19.0软件对调查结果进行统计分析.结果 总共回收到有效问卷204份.受访医师中认为超说明书用药具有一定合理性的占73.53%,超说明书用药的原因为药品说明书修订滞后于药品研究的占86.76%,认为缺乏科学依据是说明书用药存在问题的占65.20%,认为具有充分文献报告支撑方可实施超说明书用药的占89.71%,认为患者对超说明书用药有必要知道的占92.71%,认为厂家应该对说明书及时修订规范超说明书用药管理的占81.37%,认为超说明书有效的占48.04%,知道申请院内超说明书用药具体流程的仅占10.29%,为患者实施超说明书用药时考虑到患者用药效果的占94.12%.结论 超说明书用药情况与医师对其认知有着直接的关系.应加强对医师的合理用药教育和对超说明书用药管理,促进超说明书用药走向科学、合理和规范的方向发展.
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