Nguyen-Huynh Mai N, Alexander Janet, Zhu Zheng, Meighan Melissa, Escobar Gabriel
Division of Research, Kaiser Permanente, Pleasanton, CA, United States.
Department of Neurology, Kaiser Permanente Walnut Creek Medical Center, 1515 Newell Avenue, Walnut Creek, CA, 94596, United States, 1 925-765-8887.
JMIR Med Inform. 2025 May 9;13:e69102. doi: 10.2196/69102.
Patients with stroke have high rates of all-cause readmission and case fatality. Limited information is available on how to predict these outcomes.
We aimed to assess whether adding the initial National Institutes of Health Stroke Scale (NIHSS) score or modified Rankin scale (mRS) score at discharge improved predictive models of 30-day nonelective readmission or 30-day mortality poststroke.
Using a cohort of patients with ischemic stroke in a large multiethnic integrated health care system from June 15, 2018, to April 29, 2020, we tested 2 predictive models for a composite outcome (30-day nonelective readmission or death). The models were based on administrative data (Length of Stay, Acuity, Charlson Comorbidities, Emergency Department Use score; LACE) as well as a comprehensive model (Transition Support Level; TSL). The models, initial NIHSS score, and mRS scores at discharge, were tested independently and in combination with age and sex. We assessed model performance using the area under the receiver operator characteristic (c-statistic), Nagelkerke pseudo-R2, and Brier score.
The study cohort included 4843 patients with 5014 stroke hospitalizations. Average age was 71.9 (SD 14) years, 50.6% (2537/5014) were female, and 52.1% (2614/5014) were White. Median initial NIHSS score was 4 (IQR 2-8). There were 538 (10.7%) nonelective readmissions and 150 (3.9%) deaths within 30 days. The logistic models revealed that the best performing models were TSL (c-statistic=0.69) and TSL plus mRS score at discharge (c-statistic=0.69).
We found that neither the initial NIHSS score nor the mRS score at discharge significantly enhanced the predictive ability of the LACE or TSL models. Future efforts at prediction of short-term stroke outcomes will need to incorporate new data elements.
中风患者的全因再入院率和病死率很高。关于如何预测这些结果的信息有限。
我们旨在评估出院时加入初始美国国立卫生研究院卒中量表(NIHSS)评分或改良Rankin量表(mRS)评分是否能改善中风后30天非选择性再入院或30天死亡率的预测模型。
利用2018年6月15日至2020年4月29日在一个大型多民族综合医疗系统中缺血性中风患者队列,我们测试了2种针对复合结局(30天非选择性再入院或死亡)的预测模型。这些模型基于行政数据(住院时间、急性病度、Charlson合并症、急诊科使用评分;LACE)以及一个综合模型(过渡支持水平;TSL)。这些模型、初始NIHSS评分和出院时的mRS评分,分别独立测试,并与年龄和性别结合测试。我们使用受试者操作特征曲线下面积(c统计量)、Nagelkerke伪R2和Brier评分来评估模型性能。
研究队列包括4843例患者,有5014次中风住院。平均年龄为71.9(标准差14)岁,50.6%(2537/5014)为女性,52.1%(2614/5014)为白人。初始NIHSS评分中位数为4(四分位间距2 - 8)。30天内有538例(10.7%)非选择性再入院和150例(3.9%)死亡。逻辑模型显示,表现最佳的模型是TSL(c统计量 = 0.69)和TSL加出院时的mRS评分(c统计量 = 0.69)。
我们发现,初始NIHSS评分和出院时的mRS评分均未显著提高LACE或TSL模型的预测能力。未来预测短期中风结局的工作需要纳入新的数据元素。