Clinical Implications Of The "Brush Sign" In Susceptibility-Weighted Imaging For Moyamoya Disease

CEREBROVASCULAR DISEASES(2021)

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摘要
Objective: Infarction is one of the most common postoperative complications after surgical revascularization for moyamoya disease (MMD). Increased conspicuity of deep medullary veins (DMVs) on susceptibility-weighted imaging (SWI), known as "brush sign," could predict the severity of MMD. This study aimed to reveal the features of the "brush sign" in preoperative SWI and to verify its relationship to postoperative infarction. Methods: Consecutive patients with MMD who had undergone cerebral revascularization surgery were included. Routine preoperative SWI was performed. The "brush sign" was defined according to the number of the conspicuous DMVs > 5 detected on SWI. Postoperative infarctions were defined as the high-intensity signal on postoperative DWI images, with or without neurologic deficits. The modified Rankin scale (mRS) was applied to evaluate the prognosis of patients. Results: In the enrolled 100 hemispheres, 35 were presented with the "brush sign." Patients with ischemic onset manifestation and previous infarction history tended to present with the "brush sign." Multivariate analysis showed that the "brush sign" (OR 13.669; 95% CI, 1.747-106.967, p = 0.013) and decreased rCBF (OR 6.050; 95% CI, 1.052-34.799, p = 0.044) were independent risk factors of postoperative infarction. Besides, the "brush sign" showed a significant correlation with a higher mRS score at discharge (p = 0.047). Conclusion: The findings strongly suggest that the presence of the "brush sign" preoperatively can be a predictor of infarction after surgical revascularization for ischemic MMD. It may contribute to an improved surgical result through focused perioperative management based on appropriate surgical risk stratification.
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关键词
Moyamoya disease, Revascularization surgery, Susceptibility-weighted imaging, Infarction, Ischemic stroke
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