Compulsory Indications in Hospital Prescribing Software Tested with Antibacterial Prescriptions.

Lorna Pairman, Paul Chin, Sharon J Gardiner, Matthew Doogue
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Abstract

The aim was to assess how making the indication field compulsory in our electronic prescribing system influenced free text documentation and to visualise prescriber behaviour. The indication field was made compulsory for seven antibacterial medicines. Text recorded in the indication field was manually classified as 'indication present', 'other text', 'rubbish text', or 'blank'. The proportion of prescriptions with an indication was compared for four weeks before and after the intervention. Indication provision increased from 10.6% to 72.4% (p<0.01) post-intervention. 'Other text' increased from 7.6% to 25.1% (p<0.01), and 'rubbish text' from 0.0% to 0.6% (p<0.01). Introducing the compulsory indication field increased indication documentation substantially with only a small increase in 'rubbish text'. An interactive report was developed using a live data extract to illustrate indication provision for all medicines prescribed at our tertiary hospital. The interactive report was validated and locally published to support audit and quality improvement projects.

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用抗菌处方测试医院处方软件中的强制适应症。
目的是评估在我们的电子处方系统中强制使用适应症字段对自由文本文件的影响,并将处方者的行为可视化。七种抗菌药物的适应症字段为必填字段。在适应症字段中记录的文本被人工分为 "存在适应症"、"其他文本"、"垃圾文本 "或 "空白"。对干预前后四周有适应症的处方比例进行了比较。有适应症的处方从 10.6% 增加到 72.4%(p
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