Department of Computer Aided Medical Procedures (CAMP), Technical University of Munich (TUM), Munich, Germany.
Ultrasound Med Biol. 2010 Aug;36(8):1245-58. doi: 10.1016/j.ultrasmedbio.2010.05.009.
Virtual histology intravascular ultrasound (VH-IVUS) is a clinically available technique for atherosclerosis plaque characterization. It, however, suffers from a poor longitudinal resolution due to electrocardiogram (ECG)-gated acquisition. This article presents an effective algorithm for IVUS image-based histology to overcome this limitation. After plaque area extraction within an input IVUS image, a textural analysis procedure consisting of feature extraction and classification steps is proposed. The pixels of the extracted plaque area excluding the shadow region were classified into one of the three plaque components of fibro-fatty (FF), calcification (CA) or necrotic core (NC) tissues. The average classification accuracy for pixel and region based validations is 75% and 87% respectively. Sensitivities (specificities) were 79% (85%) for CA, 81% (90%) for FF and 52% (82%) for NC. The kappa (kappa) = 0.61 and p value = 0.02 indicate good agreement of the proposed method with VH images. Finally, the enhancement in the longitudinal resolution was evaluated by reconstructing the IVUS images between the two sequential IVUS-VH images.
虚拟组织学血管内超声(VH-IVUS)是一种用于动脉粥样硬化斑块特征描述的临床可用技术。然而,由于心电图(ECG)门控采集,它的纵向分辨率较差。本文提出了一种有效的基于 IVUS 图像的组织学算法来克服这一限制。在输入 IVUS 图像内提取斑块区域后,提出了一个由特征提取和分类步骤组成的纹理分析程序。将提取的斑块区域中除阴影区域外的像素分为纤维脂肪(FF)、钙化(CA)或坏死核心(NC)组织的三种斑块成分之一。像素和基于区域的验证的平均分类准确率分别为 75%和 87%。CA 的灵敏度(特异性)为 79%(85%),FF 为 81%(90%),NC 为 52%(82%)。kappa(kappa)=0.61 和 p 值=0.02 表明该方法与 VH 图像具有良好的一致性。最后,通过在两个连续 IVUS-VH 图像之间重建 IVUS 图像来评估纵向分辨率的提高。