Automatic Plaque Detection in IVOCT Pullbacks Using Convolutional Neural Networks

被引:100
作者
Gessert, Nils [1 ]
Lutz, Matthias [2 ]
Heyder, Markus [1 ]
Latus, Sarah [1 ]
Leistner, David M. [3 ]
Abdelwahed, Youssef S. [3 ]
Schlaefer, Alexander [1 ]
机构
[1] Hamburg Univ Technol, Inst Med Technol, D-21073 Hamburg, Germany
[2] Univ Klinikum Schleswig Holstein, D-24105 Kiel, Germany
[3] Charite Univ Med Berlin, D-12203 Berlin, Germany
关键词
IVOCT; deep learning; plaque detection; transfer learning; OPTICAL COHERENCE TOMOGRAPHY; FIBROUS CAP THICKNESS; ATHEROSCLEROTIC PLAQUES; CORONARY CALCIFICATION; LUMEN SEGMENTATION; QUANTIFICATION; CLASSIFICATION; IMAGES; CNN;
D O I
10.1109/TMI.2018.2865659
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Coronary heart disease is a common cause of death despite being preventable. To treat the underlying plaque deposits in the arterial walls, intravascular optical coherence tomography can be used by experts to detect and characterize the lesions. In clinical routine, hundreds of images are acquired for each patient, which require automatic plaque detection for fast and accurate decision support. So far, automatic approaches rely on classic machine learning methods and deep learning solutions have rarely been studied. Given the success of deep learning methods with other imaging modalities, a thorough understanding of deep learning-based plaque detection for future clinical decision support systems is required. We address this issue with a new data set consisting of in vivo patient images labeled by three trained experts. Using this data set, we employ the state-of-the-art deep learning models that directly learn plaque classification from the images. For improved performance, we study different transfer learning approaches. Furthermore, we investigate the use of Cartesian and polar image representations and employ data augmentation techniques tailored to each representation. We fuse both representations in a multi-path architecture for more effective feature exploitation. Last, we address the challenge of plaque differentiation in addition to detection. Overall, we find that our combined model performs best with an accuracy of 91.7%, a sensitivity of 90.9%, and a specificity of 92.4%. Our results indicate that building a deep learning-based clinical decision support system for plaque detection is feasible.
引用
收藏
页码:426 / 434
页数:9
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