Wang Yajuan, Ng Kenney, Byrd Roy J, Hu Jianying, Ebadollahi Shahram, Daar Zahra, deFilippi Christopher, Steinhubl Steven R, Stewart Walter F
Annu Int Conf IEEE Eng Med Biol Soc. 2015;2015:2530-3. doi: 10.1109/EMBC.2015.7318907.
Heart failure (HF) prevalence is increasing and is among the most costly diseases to society. Early detection of HF would provide the means to test lifestyle and pharmacologic interventions that may slow disease progression and improve patient outcomes. This study used structured and unstructured data from electronic health records (EHR) to predict onset of HF with a particular focus on how prediction accuracy varied in relation to time before diagnosis. EHR data were extracted from a single health care system and used to identify incident HF among primary care patients who received care between 2001 and 2010. A total of 1,684 incident HF cases were identified and 13,525 controls were selected from the same primary care practices. Models were compared by varying the beginning of the prediction window from 60 to 720 days before HF diagnosis. As the prediction window decreased, the performance [AUC (95% CIs)] of the predictive HF models increased from 65% (63%-66%) to 74% (73%-75%) for the unstructured, from 73% (72%-75%) to 81% (80%-83%) for the structured, and from 76% (74%-77%) to 83% (77%-85%) for the combined data.
心力衰竭(HF)的患病率正在上升,是社会成本最高的疾病之一。早期发现HF将提供手段来测试可能减缓疾病进展并改善患者预后的生活方式和药物干预措施。本研究使用电子健康记录(EHR)中的结构化和非结构化数据来预测HF的发病,特别关注预测准确性在诊断前时间方面的变化情况。EHR数据从单一医疗系统中提取,用于识别2001年至2010年期间接受治疗的初级保健患者中的HF病例。共识别出1684例HF病例,并从相同的初级保健机构中选择了13525名对照。通过将预测窗口的起始时间从HF诊断前60天调整到720天来比较模型。随着预测窗口缩短,非结构化数据的预测HF模型的性能[AUC(95%置信区间)]从65%(63%-66%)提高到74%(73%-75%),结构化数据从73%(72%-75%)提高到81%(80%-83%),合并数据从76%(74%-77%)提高到83%(77%-85%)。