Background: Recognition of acute stroke in the emergency setting remains a major diagnostic challenge. Up to one quarter of patients admitted with suspected stroke are ultimately diagnosed with a stroke mimic (SM). Failure to distinguish SM from cerebrovascular events may result in inappropriate thrombolysis, delayed initiation of targeted therapy, and inefficient use of healthcare resources. Objective: To identify independent predictive factors, including clinical history, examination findings, and radiological multimodal CT parameters, that support differentiation of SM from AIS and TIA. Methods: We conducted a prospective multicenter observational study with patients admitted with suspected acute stroke to centers between June 2023 and May 2024. SM were established by stroke experts based on clinical course and follow-up neuroimaging. Collected variables included demographics, medical history (epilepsy, migraine, psychiatric illness, cognitive disorder, hypertension, diabetes mellitus - DM, atrial fibrilation - AF) and admission clinical parameters (BP, INR, blood glucose, NIHSS). Neuroimaging assessment comprised NCCT, CTA, and CTP (Brainomix e-Stroke v10.1). Exploratory analysis used multiple logistic regression. Two models were developed: Model 1 included demographic, anamnestic, and clinical variables as covariates; Model 2 additionally incorporated early neuroimaging. Results: A total of 1071 patients were enrolled; 699 had complete datasets (median age 75 years; 45% women). Final diagnoses: 457 AIS (65.4%) , 65 TIA (9.3%) , and 177 SM (25.3%), most often seizures (31.6% of all SM) . In Model 1 identified higher INR (OR 4.55, 95%CI 2.04–10.40, p<0.001), history of epilepsy (OR 5.86, 95%CI 2.76–12.95, p<0.001), and absence of AF (OR 0.51, 95%CI 0.30–0.83, p=0.008) as significant predictors of SM. In Model 2 additional predictors included younger age (OR 0.97, 95% CI: 0.95–0.99, p=0.006), higher NIHSS (OR 1.09, 95% CI: 1.05–1.14, p<0.001), neg CTA (OR 8.81, 95% CI: 4.08–21.19, p<0.001), and neg CTP (OR 18.42, 95% CI: 7.90–48.79, p<0.001) as significant factors associated with SM. Conclusion: Our exploratory analysis identified clinical factors (history of epilepsy, elevated INR, absence of AF) and radiological findings (neg CTA and CTP) as independent predictors of SM. As this project is ongoing, the next step is to validate a robust predictive model in independent cohorts before implementation.
Bar et al. (Thu,) studied this question.