Compared with other imaging modalities, intravascular optical coherence tomography (IVOCT) has significant advantages for guiding percutaneous coronary interventions. To aid IVOCT research studies, we developed the Optical Coherence TOmography PlaqUe and Stent (OCTOPUS) analysis software. To automate image analysis results, the software includes several important algorithmic steps: pre-processing, deep learning plaque segmentation, machine learning identification of stent struts, and registration of pullbacks. Interactive visualization and manual editing of segmentations were included in the software. Quantifications include stent deployment characteristics (e.g., stent strut malapposition), strut level analysis, calcium angle, and calcium thickness measurements. Interactive visualizations include (x,y) anatomical, en face, and longitudinal views with optional overlays. Underlying plaque segmentation algorithm yielded excellent pixel-wise results (86.2% sensitivity and 0.781 F1 score). Using OCTOPUS on 34 new pullbacks, we determined that following automated segmentation, only 13% and 23% of frames needed any manual touch up for detailed lumen and calcification labeling, respectively. Only up to 3.8% of plaque pixels were modified, leading to an average editing time of only 7.5 seconds/frame, an approximately 80% reduction compared to manual analysis. Regarding stent analysis, sensitivity and precision were both greater than 90%, and each strut was successfully classified as either covered or uncovered with high sensitivity (94%) and specificity (90%). We introduced and evaluated the clinical application of a highly automated software package, OCTOPUS, for quantitative plaque and stent analysis in IVOCT images. The software is currently used as an offline tool for research purposes; however, the software's embedded algorithms may also be useful for real-time treatment planning.
翻译:与其它成像模式相比, 血管内光学一致性透析( IVOCT) 具有指导腹腔心动干预的巨大优势。 为了帮助 IVOCT 研究研究, 我们开发了光学一致性透析平流和 Stent( OCTOPUS) 分析软件。 为了自动化图像分析结果, 该软件包含若干重要的算法步骤 : 预处理、 深学习方块分解、 机器学习辨别螺旋结构, 以及拉回注册 。 软件中包含对切开性心动的直观化和手工编辑。 软件的交互可视化( 86.2 % 敏感度) 和分解的刻度。 量化包括部署特性特征特性( 例如, 静态平流分析 ) 。 系统结构分析, 结构分析, 质量分析, 数字分析, 包括( X, y) 解剖, 面, 和 纵向分析, 数据分析, 目前只有 80% 和 直径, 直径分析, 直径分析, 直径分析, 直到 直径分析, 。