» Articles » PMID: 37892066

Skeletal Fracture Detection with Deep Learning: A Comprehensive Review

Overview
Specialty Radiology
Date 2023 Oct 28
PMID 37892066
Authors
Affiliations
Soon will be listed here.
Abstract

Deep learning models have shown great promise in diagnosing skeletal fractures from X-ray images. However, challenges remain that hinder progress in this field. Firstly, a lack of clear definitions for recognition, classification, detection, and localization tasks hampers the consistent development and comparison of methodologies. The existing reviews often lack technical depth or have limited scope. Additionally, the absence of explainable facilities undermines the clinical application and expert confidence in results. To address these issues, this comprehensive review analyzes and evaluates 40 out of 337 recent papers identified in prestigious databases, including WOS, Scopus, and EI. The objectives of this review are threefold. Firstly, precise definitions are established for the bone fracture recognition, classification, detection, and localization tasks within deep learning. Secondly, each study is summarized based on key aspects such as the bones involved, research objectives, dataset sizes, methods employed, results obtained, and concluding remarks. This process distills the diverse approaches into a generalized processing framework or workflow. Moreover, this review identifies the crucial areas for future research in deep learning models for bone fracture diagnosis. These include enhancing the network interpretability, integrating multimodal clinical information, providing therapeutic schedule recommendations, and developing advanced visualization methods for clinical application. By addressing these challenges, deep learning models can be made more intelligent and specialized in this domain. In conclusion, this review fills the gap in precise task definitions within deep learning for bone fracture diagnosis and provides a comprehensive analysis of the recent research. The findings serve as a foundation for future advancements, enabling improved interpretability, multimodal integration, clinical decision support, and advanced visualization techniques.

Citing Articles

Revolutionizing diagnosis of pulmonary based on CT: a systematic review of imaging analysis through deep learning.

Zhang F, Han H, Li M, Tian T, Zhang G, Yang Z Front Microbiol. 2025; 15():1510026.

PMID: 39845042 PMC: 11750854. DOI: 10.3389/fmicb.2024.1510026.


A YOLO-Based Method for Head Detection in Complex Scenes.

Xie M, Yang X, Li B, Fan Y Sensors (Basel). 2024; 24(22).

PMID: 39599147 PMC: 11598148. DOI: 10.3390/s24227367.


Artificial Intelligence Application in Skull Bone Fracture with Segmentation Approach.

Lu C, Wang Y, Chen H, Goh Y, Chiu I, Hou Y J Imaging Inform Med. 2024; 38(1):31-46.

PMID: 38954293 PMC: 11811319. DOI: 10.1007/s10278-024-01156-0.


Proposal-Free Fully Convolutional Network: Object Detection Based on a Box Map.

Su Z, Adam A, Nasrudin M, Prabuwono A Sensors (Basel). 2024; 24(11).

PMID: 38894319 PMC: 11175249. DOI: 10.3390/s24113529.


Deep Learning Model Based on You Only Look Once Algorithm for Detection and Visualization of Fracture Areas in Three-Dimensional Skeletal Images.

Jeon Y, Kang M, Kuh S, Cha H, Kim M, You J Diagnostics (Basel). 2024; 14(1).

PMID: 38201320 PMC: 10802847. DOI: 10.3390/diagnostics14010011.

References
1.
Li Q, Wang F, Chen Y, Chen H, Wu S, Farris A . Virtual liver needle biopsy from reconstructed three-dimensional histopathological images: Quantification of sampling error. Comput Biol Med. 2022; 147:105764. DOI: 10.1016/j.compbiomed.2022.105764. View

2.
Badgeley M, Zech J, Oakden-Rayner L, Glicksberg B, Liu M, Gale W . Deep learning predicts hip fracture using confounding patient and healthcare variables. NPJ Digit Med. 2019; 2:31. PMC: 6550136. DOI: 10.1038/s41746-019-0105-1. View

3.
Fourcade A, Khonsari R . Deep learning in medical image analysis: A third eye for doctors. J Stomatol Oral Maxillofac Surg. 2019; 120(4):279-288. DOI: 10.1016/j.jormas.2019.06.002. View

4.
Cai L, Gao J, Zhao D . A review of the application of deep learning in medical image classification and segmentation. Ann Transl Med. 2020; 8(11):713. PMC: 7327346. DOI: 10.21037/atm.2020.02.44. View

5.
Wang Y, Luo F, Yang X, Wang Q, Sun Y, Tian S . The Swin-Transformer network based on focal loss is used to identify images of pathological subtypes of lung adenocarcinoma with high similarity and class imbalance. J Cancer Res Clin Oncol. 2023; 149(11):8581-8592. DOI: 10.1007/s00432-023-04795-y. View