从电子健康记录中提取以患者为中心的结果:前列腺癌根治术后尿失禁的评估

D. Gori, I. Banerjee, B. Chung, M. Ferrari, P. Rucci, D. Blayney, J. Brooks, T. Hernandez-Boussard
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引用次数: 9

摘要

目的:使用电子健康记录(EHRs)中的非结构化临床记录来评估前列腺切除术患者尿失禁(UI)的记录。方法:我们开发了一种弱监督的自然语言处理工具,在多个临床医生的单一学术实践中,提取根治性前列腺切除术前后UI的评估,如非结构化文本注释中所记录的。使用在手术前后完成EPIC-26调查的患者子集进行验证。使用重复测量ANOVA比较EHR和EPIC-26评估的UI患病率。使用Cohen的Kappa系数评估EHR和EPIC-26之间报告的UI的一致性。结果:共纳入4870名患者和716项调查。术前UI发生率为12.7%。术后3个月的患病率为71.8%,6个月为50.2%,12个月和24个月分别为34.4和41.8。EHR中的医生也记录了类似的发病率,尤其是早期随访。在所有时间点,EPIC-26和EHR之间的一致性是中等的(均p<0.001),从基线时的86.7%一致性(Kappa=0.48)到术后24个月时的76.4%一致性(Kapa=0.047)。结论:我们已经开发了一种使用EHR临床记录来评估前列腺切除术后UI的工具。我们的研究结果表明,这种工具可以使用真实单词数据来促进重要PCO的无偏测量,这些数据通常记录在EHR非结构化临床医生笔记中。将多囊卵巢综合征信息整合到临床决策支持中,有助于指导共享治疗决策,促进患者重视护理。
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Extracting Patient-Centered Outcomes from Clinical Notes in Electronic Health Records: Assessment of Urinary Incontinence After Radical Prostatectomy
Objective: To assess documentation of urinary incontinence (UI) in prostatectomy patients using unstructured clinical notes from Electronic Health Records (EHRs). Methods: We developed a weakly-supervised natural language processing tool to extract assessments, as recorded in unstructured text notes, of UI before and after radical prostatectomy in a single academic practice across multiple clinicians. Validation was carried out using a subset of patients who completed EPIC-26 surveys before and after surgery. The prevalence of UI as assessed by EHR and EPIC-26 was compared using repeated-measures ANOVA. The agreement of reported UI between EHR and EPIC-26 was evaluated using Cohen’s Kappa coefficient. Results: A total of 4870 patients and 716 surveys were included. Preoperative prevalence of UI was 12.7 percent. Postoperative prevalence was 71.8 percent at 3 months, 50.2 percent at 6 months and 34.4 and 41.8 at 12 and 24 months, respectively. Similar rates were recorded by physicians in the EHR, particularly for early follow-up. For all time points, the agreement between EPIC-26 and the EHR was moderate (all p < 0.001) and ranged from 86.7 percent agreement at baseline (Kappa = 0.48) to 76.4 percent agreement at 24 months postoperative (Kappa = 0.047). Conclusions: We have developed a tool to assess documentation of UI after prostatectomy using EHR clinical notes. Our results suggest such a tool can facilitate unbiased measurement of important PCOs using real-word data, which are routinely recorded in EHR unstructured clinician notes. Integrating PCO information into clinical decision support can help guide shared treatment decisions and promote patient-valued care.
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