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Ten Fast Transfer Learning Models for Carotid Ultrasound Plaque Tissue Characterization in Augmentation Framework Embedded with Heatmaps for Stroke Risk Stratification

Overview
Specialty Radiology
Date 2021 Nov 27
PMID 34829456
Citations 21
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Abstract

Only 1-2% of the internal carotid artery asymptomatic plaques are unstable as a result of >80% stenosis. Thus, unnecessary efforts can be saved if these plaques can be characterized and classified into symptomatic and asymptomatic using non-invasive B-mode ultrasound. Earlier plaque tissue characterization (PTC) methods were machine learning (ML)-based, which used hand-crafted features that yielded lower accuracy and unreliability. The proposed study shows the role of transfer learning (TL)-based deep learning models for PTC. As pertained weights were used in the supercomputer framework, we hypothesize that transfer learning (TL) provides improved performance compared with deep learning. We applied 11 kinds of artificial intelligence (AI) models, 10 of them were augmented and optimized using TL approaches-a class of Atheromatic™ 2.0 (AtheroPoint™, Roseville, CA, USA) that consisted of () Visual Geometric Group-16, 19 (VGG16, 19); () Inception V3 (IV3); () DenseNet121, 169; () XceptionNet; () ResNet50; () MobileNet; () AlexNet; () SqueezeNet; and one DL-based () SuriNet-derived from UNet. We benchmark 11 AI models against our earlier deep convolutional neural network (DCNN) model. The best performing TL was MobileNet, with accuracy and area-under-the-curve (AUC) pairs of 96.10 ± 3% and 0.961 ( < 0.0001), respectively. In DL, DCNN was comparable to SuriNet, with an accuracy of 95.66% and 92.7 ± 5.66%, and an AUC of 0.956 ( < 0.0001) and 0.927 ( < 0.0001), respectively. We validated the performance of the AI architectures with established biomarkers such as greyscale median (GSM), fractal dimension (FD), higher-order spectra (HOS), and visual heatmaps. We benchmarked against previously developed Atheromatic™ 1.0 and showed an improvement of %. TL is a powerful AI tool for PTC into symptomatic and asymptomatic plaques.

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References
1.
Saba L, Jain P, Suri H, Ikeda N, Araki T, Singh B . Plaque Tissue Morphology-Based Stroke Risk Stratification Using Carotid Ultrasound: A Polling-Based PCA Learning Paradigm. J Med Syst. 2017; 41(6):98. DOI: 10.1007/s10916-017-0745-0. View

2.
Cuadrado-Godia E, Dwivedi P, Sharma S, Ois Santiago A, Roquer Gonzalez J, Balcells M . Cerebral Small Vessel Disease: A Review Focusing on Pathophysiology, Biomarkers, and Machine Learning Strategies. J Stroke. 2018; 20(3):302-320. PMC: 6186915. DOI: 10.5853/jos.2017.02922. View

3.
Seabra J, Pedro L, Fernandes J, Sanches J . A 3-D ultrasound-based framework to characterize the echo morphology of carotid plaques. IEEE Trans Biomed Eng. 2009; 56(5):1442-53. DOI: 10.1109/TBME.2009.2013964. View

4.
Rajendra Acharya U, Faust O, Sree S, Alvin A, Krishnamurthi G, Seabra J . Atheromatic™: symptomatic vs. asymptomatic classification of carotid ultrasound plaque using a combination of HOS, DWT & texture. Annu Int Conf IEEE Eng Med Biol Soc. 2012; 2011:4489-92. DOI: 10.1109/IEMBS.2011.6091113. View

5.
Rajendra Acharya U, Sree S, Ribeiro R, Krishnamurthi G, Marinho R, Sanches J . Data mining framework for fatty liver disease classification in ultrasound: a hybrid feature extraction paradigm. Med Phys. 2012; 39(7):4255-64. DOI: 10.1118/1.4725759. View