Segmentation of Shoulder Muscle MRI Using a New Region and Edge based Deep Auto-Encoder
Saddam Hussain Khan, Asifullah Khan, Yeon Soo Lee, Mehdi Hassan, and, Woong Kyo jeong

TL;DR
This paper introduces a novel deep auto-encoder model that combines region and edge information with static attention to improve automatic segmentation of shoulder muscle MRI, aiding clinical diagnosis.
Contribution
The work proposes a new Region and Edge-based Deep Auto-Encoder (RE-DAE) that integrates region homogeneity, boundary learning, and static attention for enhanced shoulder muscle MRI segmentation.
Findings
Achieved dice similarity of 85.58% for tear regions
Attained 87.07% dice similarity for muscle regions
Demonstrated high accuracy and visual quality in segmentation
Abstract
Automatic segmentation of shoulder muscle MRI is challenging due to the high variation in muscle size, shape, texture, and spatial position of tears. Manual segmentation of tear and muscle portion is hard, time-consuming, and subjective to pathological expertise. This work proposes a new Region and Edge-based Deep Auto-Encoder (RE-DAE) for shoulder muscle MRI segmentation. The proposed RE-DAE harmoniously employs average and max-pooling operation in the encoder and decoder blocks of the Convolutional Neural Network (CNN). Region-based segmentation incorporated in the Deep Auto-Encoder (DAE) encourages the network to extract smooth and homogenous regions. In contrast, edge-based segmentation tries to learn the boundary and anatomical information. These two concepts, systematically combined in a DAE, generate a discriminative and sparse hybrid feature space (exploiting both region…
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Taxonomy
TopicsShoulder Injury and Treatment · Traditional Chinese Medicine Studies · Medical Imaging and Analysis
