Improved Abdominal Multi-Organ Segmentation via 3D Boundary-Constrained Deep Neural Networks

10/09/2022
by   Samra Irshad, et al.
0

Quantitative assessment of the abdominal region from clinically acquired CT scans requires the simultaneous segmentation of abdominal organs. Thanks to the availability of high-performance computational resources, deep learning-based methods have resulted in state-of-the-art performance for the segmentation of 3D abdominal CT scans. However, the complex characterization of organs with fuzzy boundaries prevents the deep learning methods from accurately segmenting these anatomical organs. Specifically, the voxels on the boundary of organs are more vulnerable to misprediction due to the highly-varying intensity of inter-organ boundaries. This paper investigates the possibility of improving the abdominal image segmentation performance of the existing 3D encoder-decoder networks by leveraging organ-boundary prediction as a complementary task. To address the problem of abdominal multi-organ segmentation, we train the 3D encoder-decoder network to simultaneously segment the abdominal organs and their corresponding boundaries in CT scans via multi-task learning. The network is trained end-to-end using a loss function that combines two task-specific losses, i.e., complete organ segmentation loss and boundary prediction loss. We explore two different network topologies based on the extent of weights shared between the two tasks within a unified multi-task framework. To evaluate the utilization of complementary boundary prediction task in improving the abdominal multi-organ segmentation, we use three state-of-the-art encoder-decoder networks: 3D UNet, 3D UNet++, and 3D Attention-UNet. The effectiveness of utilizing the organs' boundary information for abdominal multi-organ segmentation is evaluated on two publically available abdominal CT datasets. A maximum relative improvement of 3.5 Dice Score for Pancreas-CT and BTCV datasets, respectively.

READ FULL TEXT

page 8

page 12

page 13

research
08/29/2022

Boundary-Aware Network for Abdominal Multi-Organ Segmentation

Automated abdominal multi-organ segmentation is a crucial yet challengin...
research
02/01/2023

Continual Segment: Towards a Single, Unified and Accessible Continual Segmentation Model of 143 Whole-body Organs in CT Scans

Deep learning empowers the mainstream medical image segmentation methods...
research
04/21/2021

Multi-Class Micro-CT Image Segmentation Using Sparse Regularized Deep Networks

It is common in anthropology and paleontology to address questions about...
research
02/27/2020

Coronary Wall Segmentation in CCTA Scans via a Hybrid Net with Contours Regularization

Providing closed and well-connected boundaries of coronary artery is ess...
research
03/30/2022

Region of Interest focused MRI to Synthetic CT Translation using Regression and Classification Multi-task Network

In this work, we present a method for synthetic CT (sCT) generation from...
research
09/06/2023

Kidney abnormality segmentation in thorax-abdomen CT scans

In this study, we introduce a deep learning approach for segmenting kidn...
research
06/11/2018

DOOBNet: Deep Object Occlusion Boundary Detection from an Image

Object occlusion boundary detection is a fundamental and crucial researc...

Please sign up or login with your details

Forgot password? Click here to reset