Bajaj, Retesh; Eggermont, Jeroen; Grainger, Stephanie J; Räber, Lorenz; Parasa, Ramya; Khan, Ameer Hamid A; Costa, Christos; Erdogan, Emrah; Hendricks, Michael J; Chandrasekharan, Karthik H; Andiapen, Mervyn; Serruys, Patrick W; Torii, Ryo; Mathur, Anthony; Baumbach, Andreas; Dijkstra, Jouke; Bourantas, Christos V (2022). Machine learning for atherosclerotic tissue component classification in combined near-infrared spectroscopy intravascular ultrasound imaging: Validation against histology. Atherosclerosis, 345, pp. 15-25. Elsevier 10.1016/j.atherosclerosis.2022.01.021
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BACKGROUND AND AIMS
Accurate classification of plaque composition is essential for treatment planning. Intravascular ultrasound (IVUS) has limited efficacy in assessing tissue types, while near-infrared spectroscopy (NIRS) provides complementary information to IVUS but lacks depth information. The aim of this study is to train and assess the efficacy of a machine learning classifier for plaque component classification that relies on IVUS echogenicity and NIRS-signal, using histology as reference standard.
METHODS
Matched NIRS-IVUS and histology images from 15 cadaveric human coronary arteries were analyzed (10 vessels were used for training and 5 for testing). Fibrous/pathological intimal thickening (F-PIT), early necrotic core (ENC), late necrotic core (LNC), and calcific tissue regions-of-interest were detected on histology and superimposed onto IVUS frames. The pixel intensities of these tissue types from the training set were used to train a J48 classifier for plaque characterization (ECHO-classification). To aid differentiation of F-PIT from necrotic cores, the NIRS-signal was used to classify non-calcific pixels outside yellow-spot regions as F-PIT (ECHO-NIRS classification). The performance of ECHO and ECHO-NIRS classifications were validated against histology.
RESULTS
262 matched frames were included in the analysis (162 constituted the training set and 100 the test set). The pixel intensities of F-PIT and ENC were similar and thus these two tissues could not be differentiated by echogenicity. With ENC and LNC as a single class, ECHO-classification showed good agreement with histology for detecting calcific and F-PIT tissues but had poor efficacy for necrotic cores (recall 0.59 and precision 0.29). Similar results were found when F-PIT and ENC were treated as a single class (recall and precision for LNC 0.78 and 0.33, respectively). ECHO-NIRS classification improved necrotic core and LNC detection, resulting in an increase of the overall accuracy of both models, from 81.4% to 91.8%, and from 87.9% to 94.7%, respectively. Comparable performance of the two models was seen in the test set where the overall accuracy of ECHO-NIRS classification was 95.0% and 95.5%, respectively.
CONCLUSIONS
The combination of echogenicity with NIRS-signal appears capable of overcoming limitations of echogenicity, enabling more accurate characterization of plaque components.
Item Type: |
Journal Article (Original Article) |
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Division/Institute: |
04 Faculty of Medicine > Department of Cardiovascular Disorders (DHGE) > Clinic of Cardiology |
UniBE Contributor: |
Räber, Lorenz |
Subjects: |
600 Technology > 610 Medicine & health |
ISSN: |
0021-9150 |
Publisher: |
Elsevier |
Language: |
English |
Submitter: |
Pubmed Import |
Date Deposited: |
24 Feb 2022 10:46 |
Last Modified: |
05 Dec 2022 16:10 |
Publisher DOI: |
10.1016/j.atherosclerosis.2022.01.021 |
PubMed ID: |
35196627 |
Uncontrolled Keywords: |
Intravascular ultrasound Machine learning Near-infrared spectroscopy Plaque characterization |
BORIS DOI: |
10.48350/165974 |
URI: |
https://boris.unibe.ch/id/eprint/165974 |