医学
颈动脉内膜切除术
血栓
磁共振成像
狭窄
放射科
缺血
动脉内膜切除术
冲程(发动机)
心脏病学
机械工程
工程类
作者
Alan R. Moody,Rachael E. Murphy,Paul S. Morgan,Anne L. Martel,G.S. Delay,Steve Allder,Shane T. MacSweeney,William G. Tennant,John Gladman,John B. Lowe,Beverley J. Hunt
出处
期刊:Circulation
[Ovid Technologies (Wolters Kluwer)]
日期:2003-06-10
卷期号:107 (24): 3047-3052
被引量:460
标识
DOI:10.1161/01.cir.0000074222.61572.44
摘要
Background— Thromboembolic disease secondary to complicated carotid atherosclerotic plaque is a major cause of cerebral ischemia. Clinical management relies on the detection of significant (>70%) carotid stenosis. A large proportion of patients suffer irreversible cerebral ischemia as a result of lesser degrees of stenosis. Diagnostic techniques that can identify nonstenotic high-risk plaque would therefore be beneficial. High-risk plaque is defined histologically if it contains hemorrhage/thrombus. Magnetic resonance direct thrombus imaging (MRDTI) is capable of detecting methemoglobin within intraplaque hemorrhage. We assessed this as a marker of complicated plaque and compared its accuracy with histological examination of surgical endarterectomy specimens. Methods and Results— Sixty-three patients underwent successful MRDTI and endarterectomy with histological examination. Of these, 44 were histologically defined as complicated (type VI plaque). MRDTI demonstrated 3 false-positive and 7 false-negative results, giving a sensitivity and specificity of 84%, negative predictive value of 70%, and positive predictive value of 93%. The interobserver (κ=0.75) and intraobserver (κ=0.9) agreement for reading MRDTI scans was good. Conclusions— MRDTI of the carotid vessels in patients with cerebral ischemia is an accurate means of identifying histologically confirmed complicated plaque. The high contrast generated by short T 1 species within the plaque allows for ease of interpretation, making this technique highly applicable in the research and clinical setting for the investigation of carotid atherosclerotic disease.
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