Abstract

Background: The early detection of carotid wall plaque is recommended in the prevention of cardiovascular disease (CVD) in moderate-risk patients. Previous techniques for B-mode carotid atherosclerotic wall plaque segmentation used artificial intelligence (AI) methods on monoethnic databases, where training and testing are from the “same” ethnic group (“Seen AI”). Therefore, the versatility of the system is questionable. This is the first study of its kind that uses the “Unseen AI” paradigm where training and testing are from “different” ethnic groups. We hypothesized that deep learning (DL) models should perform in 10% proximity between “Unseen AI” and “Seen AI”. Methodology: Two cohorts from multi-ethnic groups (330 Japanese and 300 Hong Kong (HK)) were used for the validation of our hypothesis. We used a four-layered UNet architecture for the segmentation of the atherosclerotic wall with low plaque. “Unseen AI” (training: Japanese, testing: HK or vice versa) and “Seen AI” experiments (single ethnicity or mixed ethnicity) were performed. Evaluation was conducted by measuring the wall plaque area. Statistical tests were conducted for its stability and reliability. Results: When using the UNet DL architecture, the “Unseen AI” pair one (Training: 330 Japanese and Testing: 300 HK), the mean accuracy, dice-similarity, and correlation-coefficient were 98.55, 78.38, and 0.80 (p < 0.0001), respectively, while for “Unseen AI” pair two (Training: 300 HK and Testing: 330 Japanese), these were 98.67, 82.49, and 0.87 (p < 0.0001), respectively. Using “Seen AI”, the same parameters were 99.01, 86.89 and 0.92 (p < 0.0001), respectively. Conclusion: We demonstrated that “Unseen AI” was in close proximity (<10%) to “Seen AI”, validating our DL model for low atherosclerotic wall plaque segmentation. The online system runs < 1 s.

Highlights

  • IntroductionThe primary cause of stroke is the formation of atherosclerosis disease in carotid arteries [2], where the plaque is formed in the lumen–intima and media layers [3]

  • We took special care in the architecture design and the multi-ethnic datasets, which were vital for the “Unseen artificial intelligence (AI)” analysis and bench-and the multi-ethnic which were vital for theThus, “Unseen analysis and benchmarking marking againstdatasets, “Seen AI”

  • We presented the Unseen AI-based deep learning system for the segmentaWe presented the Unseen AI-based deep learning system for the segmentation tion of carotid B-mode plaque images

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Summary

Introduction

The primary cause of stroke is the formation of atherosclerosis disease in carotid arteries [2], where the plaque is formed in the lumen–intima and media layers [3]. The LDL penetration in the arterial walls accelerate the plaque formation, such as fibrosis, fibrin, and macrophages due to a sedentary lifestyle [3]. This plaque ruptures over time, causing embolism in the brain leading to stroke [2,4]. Previous techniques for B-mode carotid atherosclerotic wall plaque segmentation used artificial intelligence (AI) methods on monoethnic databases, where training and testing are from the “same” ethnic group (“Seen AI”). Methodology: Two cohorts from multi-ethnic groups (330 Japanese and 300 Hong Kong (HK))

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