An enhanced deep learning method for the quantification of epicardial adipose tissue
Ke-Xin Tang,
Xiao-Bo Liao,
Ling-Qing Yuan
et al.
Abstract:Epicardial adipose tissue (EAT) significantly contributes to the progression of cardiovascular diseases (CVDs). However, manually quantifying EAT volume is labor-intensive and susceptible to human error. Although there have been some deep learning-based methods for automatic quantification of EAT, they are mostly uninterpretable and fail to harness the complete anatomical characteristics. In this study, we proposed an enhanced deep learning method designed for EAT quantification on coronary computed tomography… Show more
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