| Literature DB >> 35291576 |
Juhwan Lee1, Chaitanya Kolluru1, Yazan Gharaibeh1, David Prabhu1, Vladislav N Zimin2, Hiram Bezerra2, David Wilson1,3.
Abstract
We developed a fully automated method for classifying A-line coronary plaques in intravascular optical coherence tomography images using combined deep learning and textural features. The proposed method was trained on 4,292 images from 48 pullbacks giving 80 manually labeled, volumes of interest. Preprocessing steps including guidewire/shadow removal, lumen boundary detection, pixel shifting, and noise reduction were employed. We built a convolutional neural network to extract the deep learning features from the preprocessed image. Traditional textural features were also extracted and combined with deep learning features. Feature selection was performed using the minimum redundancy maximum relevance method. Combined features were utilized as inputs for a random forest classifier. After classification, conditional random field (CRF) method was used for classification noise cleaning. We determined a sub-feature set with the most predictive power. With CRF noise cleaning, sensitivities/specificities were 82.2%/90.8% and 82.4%/89.2% for fibrolipidic and fibrocalcific classes, respectively, with good Dice coefficients. The classification noise cleaning step improved performance metrics by nearly 10-15%. The predicted en face classification maps of entire pullbacks agreed favorably to the manually labeled counterparts. Both assessments suggested that our automated measurements gave clinically relevant results. The proposed method is very promising with regards to both clinical treatment planning and research applications.Entities:
Keywords: Intravascular optical coherence tomography; combined features; convolutional neural network; plaque classification; random forest; textural features
Year: 2020 PMID: 35291576 PMCID: PMC8920332 DOI: 10.1117/12.2549066
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X