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Autores principales: Keuth, Ron, Balks, Maren, Tschauner, Sebastian, Tüshaus, Ludger, Heinrich, Mattias
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2412.13856
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author Keuth, Ron
Balks, Maren
Tschauner, Sebastian
Tüshaus, Ludger
Heinrich, Mattias
author_facet Keuth, Ron
Balks, Maren
Tschauner, Sebastian
Tüshaus, Ludger
Heinrich, Mattias
contents Fractures, particularly in the distal forearm, are among the most common injuries in children and adolescents, with approximately 800 000 cases treated annually in Germany. The AO/OTA system provides a structured fracture type classification, which serves as the foundation for treatment decisions. Although accurately classifying fractures can be challenging, current deep learning models have demonstrated performance comparable to that of experienced radiologists. While most existing approaches rely solely on radiographs, the potential impact of incorporating other additional modalities, such as automatic bone segmentation, fracture location, and radiology reports, remains underexplored. In this work, we systematically analyse the contribution of these three additional information types, finding that combining them with radiographs increases the AUROC from 91.71 to 93.25. Our code is available on GitHub.
format Preprint
id arxiv_https___arxiv_org_abs_2412_13856
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Systematic Analysis of Input Modalities for Fracture Classification of the Paediatric Wrist
Keuth, Ron
Balks, Maren
Tschauner, Sebastian
Tüshaus, Ludger
Heinrich, Mattias
Computer Vision and Pattern Recognition
Fractures, particularly in the distal forearm, are among the most common injuries in children and adolescents, with approximately 800 000 cases treated annually in Germany. The AO/OTA system provides a structured fracture type classification, which serves as the foundation for treatment decisions. Although accurately classifying fractures can be challenging, current deep learning models have demonstrated performance comparable to that of experienced radiologists. While most existing approaches rely solely on radiographs, the potential impact of incorporating other additional modalities, such as automatic bone segmentation, fracture location, and radiology reports, remains underexplored. In this work, we systematically analyse the contribution of these three additional information types, finding that combining them with radiographs increases the AUROC from 91.71 to 93.25. Our code is available on GitHub.
title A Systematic Analysis of Input Modalities for Fracture Classification of the Paediatric Wrist
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.13856