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A novel multiple subdivision-based algorithm for quantitative assessment of retinal vascular tortuosity.

Gengyuan WangMeng LiZhaoqiang YunZhengyu DuanKe MaZhongzhou LuoPeng XiaoJin Yuan
Published in: Experimental biology and medicine (Maywood, N.J.) (2021)
Vascular tortuosity as an indicator of retinal vascular morphological changes can be quantitatively analyzed and used as a biomarker for the early diagnosis of relevant disease such as diabetes. While various methods have been proposed to evaluate retinal vascular tortuosity, the main obstacle limiting their clinical application is the poor consistency compared with the experts' evaluation. In this research, we proposed to apply a multiple subdivision-based algorithm for the vessel segment vascular tortuosity analysis combining with a learning curve function of vessel curvature inflection point number, emphasizing the human assessment nature focusing not only global but also on local vascular features. Our algorithm achieved high correlation coefficients of 0.931 for arteries and 0.925 for veins compared with clinical grading of extracted retinal vessels. For the prognostic performance against experts' prediction in retinal fundus images from diabetic patients, the area under the receiver operating characteristic curve reached 0.968, indicating a good consistency with experts' predication in full retinal vascular network evaluation.
Keyphrases
  • optical coherence tomography
  • diabetic retinopathy
  • optic nerve
  • deep learning
  • machine learning
  • cardiovascular disease
  • skeletal muscle
  • insulin resistance
  • neural network
  • clinical evaluation