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Identification of atherosclerotic plaque components using cluster analysis of multispectral MR images: comparison with histology

机译:使用多光谱MR图像的聚类分析识别动脉粥样硬化斑块成分:与组织学比较

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Abstract: The composition of atherosclerotic lesions in the carotid arteries is believed to be an important predictor of stroke risk. Several MR contrasts may be necessary to discriminate between different plaque components, and multispectral analysis can used to integrate the information obtained from these multiple contrasts. This study presents the use of registered MR and histological images of carotid endarterectomy specimens as a tool for the quantitative assessment of maximum likelihood classification and other segmentation algorithms. Carotid endarterectomy specimens were imaged in a 1.5T GE Signa scanner. PD, T1, T2, diffusion spin echo weightings were obtained. MR images were registered with digitized images of the corresponding histology. A pathologist identified regions of collagen, calcification, cholesterol, hemorrhage on the histological images. Training and ground truth regions were selected. The accuracy of the maximum likelihood classification was assessed on a pixel by pixel basis using truth regions identified on histological images. The accuracy of multispectral analysis was calcification (73%), fibrin (68%), cholesterol (62%), fibrous plaque (53%). This technique was limited by registration inaccuracies caused by partial volume effects and histological artifacts. Despite these limitations, accuracy results were reasonable. This technique, with continued improvements, provides a framework for evaluating the accuracy of different segmentation algorithms. !16
机译:摘要:颈动脉粥样硬化病变的组成被认为是中风风险的重要预测指标。可能需要几个MR对比来区分不同的斑块成分,并且可以使用多光谱分析来整合从这些多个对比中获得的信息。这项研究介绍了使用注册的MR和颈动脉内膜切除术标本的组织学图像作为最大似然分类和其他分割算法的定量评估工具。颈动脉内膜切除术标本在1.5T GE Signa扫描仪中成像。获得PD,T1,T2,扩散自旋回波权重。 MR图像与相应组织学的数字化图像对齐。病理学家在组织学图像上确定了胶原蛋白,钙化,胆固醇,出血的区域。选择了训练和地面真相区域。使用组织学图像上识别的真相区域,逐个像素地评估了最大似然分类的准确性。多光谱分析的准确性为钙化(73%),纤维蛋白(68%),胆固醇(62%),纤维斑(53%)。该技术受到部分体积效应和组织学伪像引起的配准误差的限制。尽管有这些限制,准确性结果还是合理的。这项技术经过不断改进,为评估不同分割算法的准确性提供了一个框架。 !16

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