This study aimed to evaluate the relationship between carotid artery disease, infarct characteristics, and associated risk factors in patients with CT-confirmed ischemic stroke. The study included 50 participants, primarily aged 61-70 years (42%) with a mean age of 60.7 years, and a male predominance (78%). Hypertension, diabetes mellitus, and dyslipidemia were each prevalent in 68% of the sample. Most infarcts were located in the middle cerebral artery (MCA) territory (86%), with the combined cortical and sub-cortical regions being the most frequently affected (58%). A significant association was found between the severity of carotid stenosis and infarct size, with larger infarcts (>2 cm) predominantly occurring in patients with stenosis ≥70% (p = 0.001). The analysis of stenosis by age revealed that the 61-80 age group had the highest frequency of stenosis, primarily in the 1) and the presence of plaques were significantly associated with infarcts in the MCA territory and sub-cortical areas. Calcified plaques were particularly prevalent in these regions. Strong associations were also found between carotid lesions and risk factors such as hypertension, diabetes, dyslipidemia, smoking, coronary artery disease, and history of stroke. The <50% stenosis category was more commonly associated with older age, female gender, hypertension, and diabetes, whereas the ≥70% stenosis category was more prevalent among males and linked to dyslipidemia and coronary artery disease. The findings underscore the importance of comprehensive evaluation using duplex ultrasound and the management of modifiable risk factors in ischemic stroke patients.
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Sidharth et al. (Mon,) studied this question.
synapsesocial.com/papers/68dc12d38a7d58c25ebb1130 — DOI: https://doi.org/10.3126/njn.v22i2.75183
P Neethu Sidharth
Binoj Varghese
Government Medical College
Rani Ann Joseph
Government Medical College
Nepal Journal of Neuroscience
Government Medical College
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