Generation of Musculoskeletal Ultrasound Images with Diffusion Models

Author:

Katakis Sofoklis1,Barotsis Nikolaos2,Kakotaritis Alexandros1,Tsiganos Panagiotis3ORCID,Economou George1ORCID,Panagiotopoulos Elias4,Panayiotakis George2

Affiliation:

1. Electronics Laboratory, Department of Physics, University of Patras, 26504 Patras, Greece

2. Department of Medical Physics, School of Medicine, University of Patras, 26504 Patras, Greece

3. Clinical Radiology Laboratory, School of Medicine, University of Patras, 26504 Patras, Greece

4. Orthopaedic and Rehabilitation Department, Patras University Hospital, 26504 Patras, Greece

Abstract

The recent advances in deep learning have revolutionised computer-aided diagnosis in medical imaging. However, deep learning approaches to unveil their full potential require significant amounts of data, which can be a challenging task in some scientific fields, such as musculoskeletal ultrasound imaging, in which data privacy and security reasons can lead to important limitations in the acquisition and the distribution process of patients’ data. For this reason, different generative methods have been introduced to significantly reduce the required amount of real data by generating synthetic images, almost indistinguishable from the real ones. In this study, the power of the diffusion models is incorporated for the generation of realistic data from a small set of musculoskeletal ultrasound images in four different muscles. Afterwards, the similarity of the generated and real images is assessed with different types of qualitative and quantitative metrics that correspond well with human judgement. In particular, the histograms of pixel intensities of the two sets of images have demonstrated that the two distributions are statistically similar. Additionally, the well-established LPIPS, SSIM, FID, and PSNR metrics have been used to quantify the similarity of these sets of images. The two sets of images have achieved extremely high similarity scores in all these metrics. Subsequently, high-level features are extracted from the two types of images and visualized in a two-dimensional space for inspection of their structure and to identify patterns. From this representation, the two sets of images are hard to distinguish. Finally, we perform a series of experiments to assess the impact of the generated data for training a highly efficient Attention-UNet for the important clinical application of muscle thickness measurement. Our results depict that the synthetic data play a significant role in the model’s final performance and can lead to the improvement of the deep learning systems in musculoskeletal ultrasound.

Funder

State Scholarships Foundation

Publisher

MDPI AG

Subject

Management Science and Operations Research,Mechanical Engineering,Energy Engineering and Power Technology

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