McCoy Thomas H, Castro Victor M, Cagan Andrew, Roberson Ashlee M, Kohane Isaac S, Perlis Roy H
Center for Experimental Drugs and Diagnostics, Department of Psychiatry and Center for Human Genetic Research, Massachusetts General Hospital, 185 Cambridge St, 6th Floor, Boston, MA 02114, United States of America.
Center for Experimental Drugs and Diagnostics, Department of Psychiatry and Center for Human Genetic Research, Massachusetts General Hospital, 185 Cambridge St, 6th Floor, Boston, MA 02114, United States of America; Partners Research Computing, Partners HealthCare System, One Constitution Center, Boston, MA 02129, United States of America.
PLoS One. 2015 Aug 24;10(8):e0136341. doi: 10.1371/journal.pone.0136341. eCollection 2015.
Natural language processing tools allow the characterization of sentiment--that is, terms expressing positive and negative emotion--in text. Applying such tools to electronic health records may provide insight into meaningful patient or clinician features not captured in coded data alone. We performed sentiment analysis on 2,484 hospital discharge notes for 2,010 individuals from a psychiatric inpatient unit, as well as 20,859 hospital discharges for 15,011 individuals from general medical units, in a large New England health system between January 2011 and 2014. The primary measures of sentiment captured intensity of subjective positive or negative sentiment expressed in the discharge notes. Mean scores were contrasted between sociodemographic and clinical groups in mixed effects regression models. Discharge note sentiment was then examined for association with risk for readmission in Cox regression models. Discharge notes for individuals with greater medical comorbidity were modestly but significantly lower in positive sentiment among both psychiatric and general medical cohorts (p<0.001 in each). Greater positive sentiment at discharge was associated with significantly decreased risk of hospital readmission in each cohort (~12% decrease per standard deviation above the mean). Automated characterization of discharge notes in terms of sentiment identifies differences between sociodemographic groups, as well as in clinical outcomes, and is not explained by differences in diagnosis. Clinician sentiment merits investigation to understand why and how it reflects or impacts outcomes.
自然语言处理工具能够对文本中的情感进行特征描述,即表达积极和消极情绪的词汇。将此类工具应用于电子健康记录,可能有助于洞察仅靠编码数据无法捕捉到的有意义的患者或临床医生特征。在2011年1月至2014年期间,我们对新英格兰地区一个大型医疗系统中来自精神科住院部的2010名患者的2484份出院小结,以及来自普通内科的15011名患者的20859份出院小结进行了情感分析。情感的主要衡量指标是出院小结中表达的主观积极或消极情感的强度。在混合效应回归模型中,比较了社会人口统计学和临床组之间的平均得分。然后在Cox回归模型中检验出院小结情感与再入院风险的关联。在精神科和普通内科队列中,患有更多合并症的个体的出院小结在积极情感方面均略有但显著降低(每组p<0.001)。出院时更高 的积极情感与每个队列中显著降低的医院再入院风险相关(平均每高于标准差一个单位,风险降低约12%)。根据情感对出院小结进行自动特征描述,可识别社会人口统计学组之间以及临床结果方面的差异,且这种差异无法用诊断差异来解释。临床医生的情感值得研究,以了解其为何以及如何反映或影响治疗结果。