1 research outputs found
Network-Based Approach for Modeling and Analyzing Coronary Angiography
Significant intra-observer and inter-observer variability in the
interpretation of coronary angiograms are reported. This variability is in part
due to the common practices that rely on performing visual inspections by
specialists (e.g., the thickness of coronaries). Quantitative Coronary
Angiography (QCA) approaches are emerging to minimize observer's error and
furthermore perform predictions and analysis on angiography images. However,
QCA approaches suffer from the same problem as they mainly rely on performing
visual inspections by utilizing image processing techniques.
In this work, we propose an approach to model and analyze the entire
cardiovascular tree as a complex network derived from coronary angiography
images. This approach enables to analyze the graph structure of coronary
arteries. We conduct the assessments of network integration, degree
distribution, and controllability on a healthy and a diseased coronary
angiogram. Through our discussion and assessments, we propose modeling the
cardiovascular system as a complex network is an essential phase to fully
automate the interpretation of coronary angiographic images. We show how
network science can provide a new perspective to look at coronary angiograms