Hsu Kai-Cheng, Lin Ching-Heng, Johnson Kory R, Fann Yang C, Hsu Chung Y, Tsai Chon-Haw, Chen Po-Lin, Chang Wei-Lun, Yeh Po-Yen, Wei Cheng-Yu
School of Medicine, College of Medicine, China Medical University, Taichung, Taiwan.
Artificial Intelligence Center for Medical Diagnosis, China Medical University Hospital, Taichung, Taiwan.
Vessel Plus. 2021;5. Epub 2021 Jan 15.
The ability to predict outcomes can help clinicians to better triage and treat stroke patients. We aimed to build prediction models using clinical data at admission and discharge to assess predictors highly relevant to stroke outcomes.
A total of 37,094 patients from the Taiwan Stroke Registry (TSR) were enrolled to ascertain clinical variables and predict their mRS outcomes at 90 days. The performances (i.e., the area under the curves (AUCs)) of these independent predictors identified by logistic regression (LR) based on clinical variables were compared.
Several outcome prediction models based on different patient subgroups were evaluated, and their AUCs based on all clinical variables at admission and discharge were 0.85-0.88 and 0.92-0.96, respectively. After feature selections, the input features decreased from 140 to 2-18 (including age of onset and NIHSS at admission) and from 262 to 2-8 (including NIHSS at discharge and mRS at discharge) at admission and discharge, respectively. With only a few selected key clinical features, our models can provide better performance than those previously reported in the literature.
This study proposed high performance prognostics outcome prediction models derived from a population-based nationwide stroke registry even with reduced LR-selected clinical features. These key clinical features can help physicians to better focus on stroke patients to triage for best outcome in acute settings.
预测预后的能力有助于临床医生更好地对中风患者进行分诊和治疗。我们旨在利用入院和出院时的临床数据建立预测模型,以评估与中风预后高度相关的预测因素。
共纳入37094例来自台湾中风登记处(TSR)的患者,以确定临床变量并预测他们90天时的改良Rankin量表(mRS)预后。比较基于临床变量通过逻辑回归(LR)确定的这些独立预测因素的性能(即曲线下面积(AUC))。
评估了基于不同患者亚组的几种预后预测模型,其基于入院和出院时所有临床变量的AUC分别为0.85 - 0.88和0.92 - 0.96。经过特征选择后,入院时输入特征从140个减少到2 - 18个(包括发病年龄和入院时美国国立卫生研究院卒中量表(NIHSS)),出院时从262个减少到2 - 8个(包括出院时NIHSS和出院时mRS)。仅通过少数选定的关键临床特征,我们的模型就能提供比文献中先前报道的模型更好的性能。
本研究提出了即使减少了LR选择的临床特征,仍能从基于全国人群的中风登记处得出高性能的预后预测模型。这些关键临床特征可帮助医生在急性情况下更好地关注中风患者,以便进行分诊以获得最佳预后。