Recursive 3D Segmentation of Shoulder Joint with Coarse-scanned MR Image
Xiaoxiao He, Chaowei Tan, Virak Tan, Kang Li

TL;DR
This paper presents a fully automated recursive learning framework for segmenting shoulder bones from low-resolution MR images, improving accuracy and reducing errors despite limited training data and coarse scans.
Contribution
It introduces a novel recursive learning approach that iteratively refines segmentation labels, enhancing accuracy on low-resolution, coarsely scanned MR images for shoulder joint analysis.
Findings
High segmentation accuracy compared to ground truth
Effective reduction of segmentation errors through recursive learning
Improved dataset quality for training neural networks
Abstract
For diagnosis of shoulder illness, it is essential to look at the morphology deviation of scapula and humerus from the medical images that are acquired from Magnetic Resonance (MR) imaging. However, taking high-resolution MR images is time-consuming and costly because the reduction of the physical distance between image slices causes prolonged scanning time. Moreover, due to the lack of training images, images from various sources must be utilized, which creates the issue of high variance across the dataset. Also, there are human errors among the images due to the fact that it is hard to take the spatial relationship into consideration when labeling the 3D image in low resolution. In order to combat all obstacles stated above, we develop a fully automated algorithm for segmenting the humerus and scapula bone from coarsely scanned and low-resolution MR images and a recursive learning…
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Taxonomy
TopicsMedical Imaging and Analysis · Shoulder Injury and Treatment · COVID-19 diagnosis using AI
