Department of Telecommunication and Control, School of Engineering of the University of São Paulo, Av, Prof, Luciano Gualberto, Travessa 3, 158 - sala D2-06, São Paulo, SP CEP 05508-970, Brazil.
Biomed Eng Online. 2013 Aug 9;12:78. doi: 10.1186/1475-925X-12-78.
Atherosclerosis causes millions of deaths, annually yielding billions in expenses round the world. Intravascular Optical Coherence Tomography (IVOCT) is a medical imaging modality, which displays high resolution images of coronary cross-section. Nonetheless, quantitative information can only be obtained with segmentation; consequently, more adequate diagnostics, therapies and interventions can be provided. Since it is a relatively new modality, many different segmentation methods, available in the literature for other modalities, could be successfully applied to IVOCT images, improving accuracies and uses.
An automatic lumen segmentation approach, based on Wavelet Transform and Mathematical Morphology, is presented. The methodology is divided into three main parts. First, the preprocessing stage attenuates and enhances undesirable and important information, respectively. Second, in the feature extraction block, wavelet is associated with an adapted version of Otsu threshold; hence, tissue information is discriminated and binarized. Finally, binary morphological reconstruction improves the binary information and constructs the binary lumen object.
The evaluation was carried out by segmenting 290 challenging images from human and pig coronaries, and rabbit iliac arteries; the outcomes were compared with the gold standards made by experts. The resultant accuracy was obtained: True Positive (%) = 99.29 ± 2.96, False Positive (%) = 3.69 ± 2.88, False Negative (%) = 0.71 ± 2.96, Max False Positive Distance (mm) = 0.1 ± 0.07, Max False Negative Distance (mm) = 0.06 ± 0.1.
In conclusion, by segmenting a number of IVOCT images with various features, the proposed technique showed to be robust and more accurate than published studies; in addition, the method is completely automatic, providing a new tool for IVOCT segmentation.
动脉粥样硬化导致数百万人死亡,每年在全球造成数十亿美元的支出。血管内光学相干断层扫描(IVOCT)是一种医学成像方式,可显示冠状动脉横断面的高分辨率图像。然而,只有通过分割才能获得定量信息;因此,可以提供更合适的诊断、治疗和干预措施。由于这是一种相对较新的模式,因此文献中可用于其他模式的许多不同分割方法都可以成功应用于 IVOCT 图像,从而提高准确性和用途。
提出了一种基于小波变换和数学形态学的自动管腔分割方法。该方法分为三个主要部分。首先,预处理阶段分别衰减和增强不需要和重要的信息。其次,在特征提取块中,小波与改进的 Otsu 阈值相关联;因此,区分和二值化组织信息。最后,二进制形态重建改进了二进制信息并构建了二进制管腔对象。
通过对来自人类和猪冠状动脉以及兔髂动脉的 290 张具有挑战性的图像进行分割,对该方法进行了评估;将结果与专家制作的金标准进行了比较。得到的准确性为:真阳性(%)=99.29±2.96,假阳性(%)=3.69±2.88,假阴性(%)=0.71±2.96,最大假阳性距离(mm)=0.1±0.07,最大假阴性距离(mm)=0.06±0.1。
总之,通过对具有各种特征的 IVOCT 图像进行分割,所提出的技术表现出比已发表的研究更稳健和更准确;此外,该方法完全自动化,为 IVOCT 分割提供了一种新工具。