Automatic segmentation of CT images for ventral body composition analysis
Yabo Fu, Joseph E. Ippolito, Daniel R. Ludwig, Rehan Nizamuddin,, Harold H. Li, Deshan Yang

TL;DR
This paper presents a fully automated method using CNNs and image processing to segment and quantify major body tissue compartments from CT images, aiding in disease risk assessment.
Contribution
A novel automated segmentation pipeline combining CNN-based ventral cavity detection with thresholding for body composition analysis.
Findings
High accuracy in ventral cavity segmentation with Dice scores above 0.96.
Effective segmentation across different CT contrast conditions.
Enables automated 3D quantification of body composition.
Abstract
Purpose: Body composition is known to be associated with many diseases including diabetes, cancers and cardiovascular diseases. In this paper, we developed a fully automatic body tissue decomposition procedure to segment three major compartments that are related to body composition analysis - subcutaneous adipose tissue (SAT), visceral adipose tissue (VAT) and muscle. Three additional compartments - the ventral cavity, lung and bones were also segmented during the segmentation process to assist segmentation of the major compartments. Methods: A convolutional neural network (CNN) model with densely connected layers was developed to perform ventral cavity segmentation. An image processing workflow was developed to segment the ventral cavity in any patient's CT using the CNN model, then further segment the body tissue into multiple compartments using hysteresis thresholding followed by…
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