Abstract
Background: Stroke is in the top three leading causes of death worldwide. Non-invasive monitoring of stroke can be accomplished via stenosis measurements. The current conventional image-based methods for these measurements are not accurate and reliable. They do not incorporate shape and intelligent learning component in their design. Methods: In this study, we propose a deep learning (DL)-based methodology for accurate measurement of stenosis in common carotid artery (CCA) ultrasound (US) scans using a class of AtheroEdge system from AtheroPoint, USA. Three radiologists manually traced the lumen-intima (LI) for the near and the far walls, respectively, which served as a gold standard (GS) for training the DL-based model. Three DL-based systems were developed based on three types of GS. Results: IRB approved (Toho University, Japan) 407 US scans from 204 patients were collected. The risk was characterized into three classes: Low, moderate, and high-risk. The area-under-curve (AUC) corresponding to three DL systems using receiver operating characteristic (ROC) analysis computed were: 0.90, 0.94 and 0.86, respectively. Conclusions: Novel DL-based strategy showed reliable, accurate and stable stenosis severity index (SSI) measurements.
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Saba, L., Biswas, M., Suri, H. S., Viskovic, K., Laird, J. R., Cuadrado-Godia, E., … Suri, J. S. (2019). Ultrasound-based carotid stenosis measurement and risk stratification in diabetic cohort: A deep learning paradigm. Cardiovascular Diagnosis and Therapy, 9(5), 439–462. https://doi.org/10.21037/cdt.2019.09.01
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