Department of Epidemiology & Preventive Medicine, Monash University, Melbourne, Victoria, Australia.
School of Public Health, Curtin University, Perth, Western Australia, Australia.
PLoS One. 2019 Dec 27;14(12):e0226868. doi: 10.1371/journal.pone.0226868. eCollection 2019.
Pharmaceuticals play an important role in clinical care. However, in community-based research, medication data are commonly collected as unstructured free-text, which is prohibitively expensive to code for large-scale studies. The ASPirin in Reducing Events in the Elderly (ASPREE) study developed a two-pronged framework to collect structured medication data for 19,114 individuals. ASPREE provides an opportunity to determine whether medication data can be cost-effectively collected and coded, en masse from the community using this framework.
The ASPREE framework of type-to-search box with automated coding and linked free text entry was compared to traditional method of free-text only collection and post hoc coding. Reported medications were classified according to their method of collection and analysed by Anatomical Therapeutic Chemical (ATC) group. Relative cost of collecting medications was determined by calculating the time required for database set up and medication coding.
Overall, 122,910 participant structured medication reports were entered using the type-to-search box and 5,983 were entered as free-text. Free-text data contributed 211 unique medications not present in the type-to-search box. Spelling errors and unnecessary provision of additional information were among the top reasons why medications were reported as free-text. The cost per medication using the ASPREE method was approximately USD $0.03 compared with USD $0.20 per medication for the traditional method.
Implementation of this two-pronged framework is a cost-effective alternative to free-text only data collection in community-based research. Higher initial set-up costs of this combined method are justified by long term cost effectiveness and the scientific potential for analysis and discovery gained through collection of detailed, structured medication data.
药品在临床护理中发挥着重要作用。然而,在基于社区的研究中,药物数据通常以非结构化的自由文本形式收集,对于大规模研究来说,这种方式进行编码的成本过高。ASPirin in Reducing Events in the Elderly(ASPREE)研究制定了一种双管齐下的框架,为 19114 个人收集结构化药物数据。ASPREE 为确定是否可以通过使用这种框架从社区中大规模、经济有效地收集和编码药物数据提供了机会。
与传统的仅收集自由文本和事后编码方法相比,ASPREE 采用了“键入-搜索框”与自动编码和链接自由文本输入相结合的框架。根据其收集方法对报告的药物进行分类,并按解剖治疗化学(ATC)分组进行分析。通过计算数据库设置和药物编码所需的时间来确定收集药物的相对成本。
总体而言,使用“键入-搜索框”输入了 122910 名参与者的结构化药物报告,而 5983 名参与者以自由文本形式输入。自由文本数据提供了 211 种不在“键入-搜索框”中的独特药物。报告为自由文本的主要原因包括拼写错误和不必要地提供了额外信息。使用 ASPREE 方法的每一种药物的成本约为 0.03 美元,而传统方法的每一种药物的成本约为 0.20 美元。
在基于社区的研究中,实施这种双管齐下的框架是一种比仅收集自由文本更具成本效益的替代方案。这种组合方法的初始设置成本较高,但通过收集详细、结构化的药物数据,可以实现长期的成本效益,并为分析和发现提供科学潜力,因此是合理的。