Deep Convolutional Neural Networks Provide Motion Grading for High-Resolution Peripheral Quantitative Computed Tomography of the Scaphoid

Author:

Benedikt Stefan1ORCID,Zelger Philipp2ORCID,Horling Lukas1,Stock Kerstin1ORCID,Pallua Johannes1ORCID,Schirmer Michael34ORCID,Degenhart Gerald5ORCID,Ruzicka Alexander1ORCID,Arora Rohit1

Affiliation:

1. Department of Orthopedics and Traumatology, University Hospital Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria

2. Department of Otorhinolaryngology, Hearing, Speech & Voice Disorders, University Hospital Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria

3. Medical University of Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria

4. Office Dr. Schirmer, 6060 Hall, Austria

5. Department of Radiology, University Hospital Innsbruck, Anichstraße 35, 6020 Innsbruck, Austria

Abstract

In vivo high-resolution peripheral quantitative computed tomography (HR-pQCT) studies on bone characteristics are limited, partly due to the lack of standardized and objective techniques to describe motion artifacts responsible for lower-quality images. This study investigates the ability of such deep-learning techniques to assess image quality in HR-pQCT datasets of human scaphoids. In total, 1451 stacks of 482 scaphoid images from 53 patients, each with up to six follow-ups within one year, and each with one non-displaced fractured and one contralateral intact scaphoid, were independently graded by three observers using a visual grading scale for motion artifacts. A 3D-CNN was used to assess image quality. The accuracy of the 3D-CNN to assess the image quality compared to the mean results of three skilled operators was between 92% and 96%. The 3D-CNN classifier reached an ROC-AUC score of 0.94. The average assessment time for one scaphoid was 2.5 s. This study demonstrates that a deep-learning approach for rating radiological image quality provides objective assessments of motion grading for the scaphoid with a high accuracy and a short assessment time. In the future, such a 3D-CNN approach can be used as a resource-saving and cost-effective tool to classify the image quality of HR-pQCT datasets in a reliable, reproducible and objective way.

Funder

Johnson & Johnson Medical Products GmbH

Medical University Innsbruck

Publisher

MDPI AG

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