Texas A&M University, Department of Biomedical Engineering, College Station, Texas, United States, United States.
University of Oklahoma, School of Electrical and Computer Engineering, Norman, Oklahoma, United States, United States.
J Biomed Opt. 2022 Oct;27(10). doi: 10.1117/1.JBO.27.10.106006.
Coronary heart disease has the highest rate of death and morbidity in the Western world. Atherosclerosis is an asymptomatic condition that is considered the primary cause of cardiovascular diseases. The accumulation of low-density lipoprotein triggers an inflammatory process in focal areas of arteries, which leads to the formation of plaques. Lipid-laden plaques containing a necrotic core may eventually rupture, causing heart attack and stroke. Lately, intravascular optical coherence tomography (IV-OCT) imaging has been used for plaque assessment. The interpretation of the IV-OCT images is performed visually, which is burdensome and requires highly trained physicians for accurate plaque identification.
Our study aims to provide high throughput lipid-laden plaque identification that can assist in vivo imaging by offering faster screening and guided decision making during percutaneous coronary interventions.
An A-line-wise classification methodology based on time-series deep learning is presented to fulfill this aim. The classifier was trained and validated with a database consisting of IV-OCT images of 98 artery sections. A trained physician with expertise in the analysis of IV-OCT imaging provided the visual evaluation of the database that was used as ground truth for training and validation.
This method showed an accuracy, sensitivity, and specificity of 89.6%, 83.6%, and 91.1%, respectively. This deep learning methodology has the potential to increase the speed of lipid-laden plaques identification to provide a high throughput of more than 100 B-scans/s.
These encouraging results suggest that this method will allow for high throughput video-rate atherosclerotic plaque assessment through automated tissue characterization for in vivo imaging by providing faster screening to assist in guided decision making during percutaneous coronary interventions.
冠心病是西方世界死亡率和发病率最高的疾病。动脉粥样硬化是一种无症状的疾病,被认为是心血管疾病的主要原因。低密度脂蛋白的积累会在动脉的局部区域引发炎症反应,导致斑块的形成。富含脂质的斑块含有坏死核心,最终可能会破裂,导致心脏病发作和中风。最近,血管内光学相干断层扫描(IV-OCT)成像已被用于斑块评估。IV-OCT 图像的解释是通过视觉进行的,这是一项繁琐的工作,需要经过高度训练的医生才能准确识别斑块。
我们的研究旨在提供高通量脂质斑块识别,通过提供更快的筛查和经皮冠状动脉介入治疗期间的指导决策,从而辅助体内成像。
提出了一种基于时间序列深度学习的 A 线分类方法来实现这一目标。该分类器使用包含 98 个动脉段 IV-OCT 图像的数据库进行训练和验证。一位具有 IV-OCT 成像分析专业知识的训练有素的医生对数据库进行了视觉评估,该评估被用作训练和验证的真实数据。
该方法的准确性、敏感性和特异性分别为 89.6%、83.6%和 91.1%。这种深度学习方法有可能将脂质斑块的识别速度提高到 100 个 B 扫描/秒以上,实现高通量。
这些令人鼓舞的结果表明,该方法将通过自动组织特征化,为体内成像提供更快的筛查,以辅助经皮冠状动脉介入治疗期间的指导决策,从而实现高通量视频帧率动脉粥样硬化斑块评估。