Department of Psychiatry and Behavioral Sciences, University of California, Los Angeles, Los Angeles, CA.
Department of Psychiatry and Behavioral Sciences, University of California, Los Angeles, Los Angeles, CA.
Psychosomatics. 2019 Nov-Dec;60(6):563-573. doi: 10.1016/j.psym.2019.05.002. Epub 2019 May 28.
Individuals with co-existing serious mental illness and non-psychiatric medical illness are at high risk of acute care utilization. Mining of electronic health record data can help identify and categorize predictors of psychiatric hospital readmission in this population.
This study aimed to identify modifiable predictors of psychiatric readmission among individuals with comorbid bipolar disorder and medical illness. This goal was accomplished by applying objective variable selection via machine learning techniques.
This was a retrospective analysis of electronic health record data derived from 77,296 episodes of care from 2006 to 2016 within the University of California Health Care System. Data included 1,250 episodes of care involving patients with bipolar disorder and serious comorbid medical illnesses (defined by transfer between medicine and psychiatry services or concomitant primary medical and psychiatric admission diagnoses). Machine learning (classification trees) was used to identify potential predictors of 30-day psychiatric readmission across hospital encounters. Predictors included demographics, medical and psychiatric diagnoses, medication regimen, and disposition. The algorithm was internally validated using 10-fold cross-validation.
The model predicted 30-day readmission with high accuracy (98% unbalanced model, 88% balanced model). Modifiable predictors of readmission were length of stay, transfers between medical and psychiatric services, discharge disposition to home, and all-cause acute health service utilization in the year before the index hospitalization.
Among bipolar disorder patients with comorbid medical conditions, characteristics of the index hospitalization (e.g., duration, transfer, and disposition) emerged as more predictive than static properties of the patient (e.g., sociodemographic factors and psychiatric comorbidity burden). Findings identified phenotypes of patients at high risk for rehospitalization and suggest potential ways of modifying the risk of early readmission.
同时患有严重精神疾病和非精神科医学疾病的个体有很高的急性护理利用风险。挖掘电子健康记录数据可以帮助识别和分类预测精神科住院再入院的因素。
本研究旨在确定合并双相情感障碍和医学疾病个体的精神科再入院的可修改预测因素。通过应用机器学习技术进行客观变量选择来实现这一目标。
这是对 2006 年至 2016 年期间加利福尼亚大学医疗保健系统内 77296 个护理疗程的电子健康记录数据进行的回顾性分析。数据包括涉及患有双相情感障碍和严重合并医学疾病的患者的 1250 个护理疗程(通过医学和精神病服务之间的转移或同时进行的主要医学和精神病入院诊断来定义)。机器学习(分类树)用于识别整个住院过程中 30 天精神科再入院的潜在预测因素。预测因素包括人口统计学、医学和精神科诊断、药物治疗方案和处置。该算法使用 10 折交叉验证进行内部验证。
该模型对 30 天再入院的预测准确性很高(不平衡模型为 98%,平衡模型为 88%)。再入院的可修改预测因素是住院时间、医学和精神病服务之间的转移、出院至家庭的处置,以及索引住院前一年的全因急性医疗服务利用情况。
在患有合并症的双相情感障碍患者中,索引住院期间的特征(例如,持续时间、转移和处置)比患者的静态特征(例如,社会人口统计学因素和精神科共病负担)更具预测性。研究结果确定了再入院风险高的患者表型,并提出了可能的方法来降低早期再入院的风险。