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减少化疗错误:一种创建模板化医嘱集的多学科方法。

Chemotherapy error reduction: a multidisciplinary approach to create templated order sets.

作者信息

Dinning Connie, Branowicki Patricia, O'Neill Jill Brace, Marino Barbara L, Billett Amy

机构信息

Children's Hospital, 300 Longwood Avenue, Boston, MA 02115, USA.

出版信息

J Pediatr Oncol Nurs. 2005 Jan-Feb;22(1):20-30. doi: 10.1177/1043454204272530.

Abstract

More than 48,000 newly diagnosed cancer patients can expect to have some adverse events related to their care each year. Historically, 20% of these adverse events have been medication related, and two thirds have been thought to be preventable. Since the majority of these errors occurred during the order writing process, the prioritized changes made at the joint pediatric program for Children's Hospital, Boston, and Dana-Farber Cancer Institute have been the initiation of templated orders and the development of a computerized order entry system. The goal of this initiative was to decrease errors related to chemotherapy administration by creating legible, complete, clearly defined order sets, and at the same time, to make order writing and reviewing more efficient. Chemotherapy templates were created using a consistent format and a rigorous multidisciplinary review process. Each order set includes the following: identification of the patient and cycle of chemotherapy to be given, criteria necessary to receive chemotherapy, chemotherapy orders with modifications if appropriate, and supportive care orders. Templated order sets have reduced the duplication of work efforts by significantly reducing the number of changes made during the order verification process; orders are more complete, and standardization has occurred.

摘要

每年超过48000名新确诊的癌症患者可能会出现一些与治疗相关的不良事件。从历史上看,这些不良事件中有20%与用药有关,并且其中三分之二被认为是可以预防的。由于这些错误大多发生在医嘱开具过程中,波士顿儿童医院和达纳-法伯癌症研究所联合儿科项目所做的优先改进措施是启用模板化医嘱并开发计算机化医嘱录入系统。该举措的目标是通过创建清晰、完整、定义明确的医嘱集来减少与化疗给药相关的错误,同时提高医嘱开具和审核的效率。化疗模板采用一致的格式并经过严格的多学科审核流程创建。每个医嘱集包括以下内容:患者识别信息及即将进行的化疗周期、接受化疗所需的标准、适当情况下有修改的化疗医嘱以及支持性护理医嘱。模板化医嘱集通过显著减少医嘱核对过程中的更改次数,减少了重复劳动;医嘱更完整,并且实现了标准化。

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