Abstract

A rotator cuff tear (RCT) is an injury in adults that causes difficulty in moving, weakness, and pain. Only limited diagnostic tools such as magnetic resonance imaging (MRI) and ultrasound Imaging (UI) systems can be utilized for an RCT diagnosis. Although UI offers comparable performance at a lower cost to other diagnostic instruments such as MRI, speckle noise can occur the degradation of the image resolution. Conventional vision-based algorithms exhibit inferior performance for the segmentation of diseased regions in UI. In order to achieve a better segmentation for diseased regions in UI, deep-learning-based diagnostic algorithms have been developed. However, it has not yet reached an acceptable level of performance for application in orthopedic surgeries. In this study, we developed a novel end-to-end fully convolutional neural network, denoted as Segmentation Model Adopting a pRe-trained Classification Architecture (SMART-CA), with a novel integrated on positive loss function (IPLF) to accurately diagnose the locations of RCT during an orthopedic examination using UI. Using the pre-trained network, SMART-CA can extract remarkably distinct features that cannot be extracted with a normal encoder. Therefore, it can improve the accuracy of segmentation. In addition, unlike other conventional loss functions, which are not suited for the optimization of deep learning models with an imbalanced dataset such as the RCT dataset, IPLF can efficiently optimize the SMART-CA. Experimental results have shown that SMART-CA offers an improved precision, recall, and dice coefficient of 0.604% (+38.4%), 0.942% (+14.0%) and 0.736% (+38.6%) respectively. The RCT segmentation from a normal ultrasound image offers the improved precision, recall, and dice coefficient of 0.337% (+22.5%), 0.860% (+15.8%) and 0.484% (+28.5%), respectively, in the RCT segmentation from an ultrasound image with severe speckle noise. The experimental results demonstrated the IPLF outperforms other conventional loss functions, and the proposed SMART-CA optimized with the IPLF showed better performance than other state-of-the-art networks for the RCT segmentation with high robustness to speckle noise.

Highlights

  • A rotator cuff tear (RCT) is a common occurrence that can lead to pain, weakness, and limited range of motion in the shoulder joint [1,2,3]

  • We developed a novel integrated-on-positive-loss function (IPLF) to mitigate the issues caused by an imbalanced dataset such as the RCT dataset in the optimization of the SMART-CA

  • Deep-learning architectures optimized using the IPLF are compared with those using other loss functions to evaluate the performance of IPLF for the segmentation of RCTs in US images

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Summary

Introduction

A rotator cuff tear (RCT) is a common occurrence that can lead to pain, weakness, and limited range of motion in the shoulder joint [1,2,3]. In severe cases of RCT that can cause a functional disability, an accurate diagnosis and treatment are necessary. Symptomatic RCTs can be treated either nonsurgically or surgically. The precise diagnosis of RCT is essential before surgical treatment [4,5,6]. Among non-invasive imaging techniques, ultrasound imaging (UI) and magnetic resonance imaging (MRI) systems have been widely used for the diagnosing locations of RCT [3,6]. An MRI system has been a favorable imaging tool for localizing an RCT but it has a few limitations [7,8]; e.g., it is not accessible owing to its high cost, acoustic noise, and time consumption, and it cannot be applied to the diagnosis of locations of RCT dynamically. UI can be an alternative to MRI for the diagnosis of locations of RCT [8,9,10]

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