Pakhomov Serguei, Bjornsen Susan, Hanson Penny, Smith Steven
Department of Pharmaceutical Care and Health Systems, University of Minnesota Rochester, Rochester, MN, USA.
Med Decis Making. 2008 Jul-Aug;28(4):462-70. doi: 10.1177/0272989X08315253. Epub 2008 May 13.
Annual foot examinations (FE) constitute a critical component of care for diabetes. Documented evidence of FE is central to quality-of-care reporting; however, manual abstraction of electronic medical records (EMR) is slow, expensive, and subject to error. The objective of this study was to test the hypothesis that text mining of the EMR results in ascertaining FE evidence with accuracy comparable to manual abstraction.
The text of inpatient and outpatient clinical reports was searched with natural-language (NL) queries for evidence of neurological, vascular, and structural components of FE. A manual medical records audit was used for validation. The reference standard consisted of 3 independent sets used for development (n=200 ), validation (n=118), and reliability (n=80).
The reliability of manual auditing was 91% (95% confidence interval [CI]= 85-97) and was determined by comparing the results of an additional audit to the original audit using the records in the reliability set. The accuracy of the NL query requiring 1 of 3 FE components was 89% (95% CI=83-95). The accuracy of the query requiring any 2 of 3 components was 88% (95% CI=82-94). The accuracy of the query requiring all 3 components was 75% (95% CI= 68- 83).
The free text of the EMR is a viable source of information necessary for quality of health care reporting on the evidence of FE for patients with diabetes. The low-cost methodology is scalable to monitoring large numbers of patients and can be used to streamline quality-of-care reporting.
年度足部检查(FE)是糖尿病护理的关键组成部分。足部检查的记录证据是护理质量报告的核心;然而,手动提取电子病历(EMR)速度慢、成本高且容易出错。本研究的目的是检验以下假设:对电子病历进行文本挖掘能够准确确定足部检查证据,其准确性与手动提取相当。
使用自然语言(NL)查询搜索住院和门诊临床报告文本,以获取足部检查的神经、血管和结构组成部分的证据。采用手动病历审核进行验证。参考标准由用于开发(n = 200)、验证(n = 118)和可靠性(n = 80)的3个独立数据集组成。
手动审核的可靠性为91%(95%置信区间[CI] = 85 - 97),通过将额外审核结果与使用可靠性数据集中的记录进行原始审核的结果进行比较来确定。需要3个足部检查组成部分中的1个的自然语言查询的准确性为89%(95% CI = 83 - 95)。需要3个组成部分中的任意2个的查询的准确性为88%(95% CI = 82 - 94)。需要所有3个组成部分的查询的准确性为75%(95% CI = 68 - 83)。
电子病历的自由文本是糖尿病患者足部检查证据的医疗保健质量报告所需信息的可行来源。这种低成本方法可扩展用于监测大量患者,并可用于简化护理质量报告。