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370645

LONG BONES X-RAY FRACTURE CLASSIFICATION USING MACHINE LEARNING

Article

Last updated: 03 Jan 2025

Subjects

-

Tags

Electrical engineering

Abstract

Accurate long bone fracture diagnosis is essential to prevent permanent deformities resulting from misdiagnosis. This study uses machine learning to introduce a multi-class classification and detection system for long bone fractures. In this study, two image classifications are applied Binary classification and Multi-class classification, and an image detection model. Binary classification to distinguish normal and fractured bone X-ray images. Three models are used for this classification, Model A and Model B are used for grayscale images, and a ResNet50 pertained model for RGB images. Multi-class classification to identify fracture type using ResNet50 fine-tuned model And a Faster RCNN detection model to classify and detect the fracture type and its location in the X-ray images. The dataset was collected from various resources and labeled and annotated following Müller AO classification for bone fracture types. Binary classification achieved a 90.2% accuracy rate for Model A, 90.85% for Model B, and  96.5% for ResNet50, While the multi-class classification model achieved 87.7% accuracy in identifying fracture types for ResNet50 and 80% for Faster RCNN in fracture detection.
 
Special Issue of AEIC 2024 (Electrical and System & Computer Engineering  Session)

DOI

10.21608/auej.2024.259630.1577

Keywords

Image classification, Image Detection, CNN, ResNet50, Faster RCNN

Authors

First Name

Soaad

Last Name

Ali

MiddleName

Nasser Eldin

Affiliation

Systems and Computers Engineering Dept. , Faculty of Engineering , Al-Azhar University, Cairo, Egypt.

Email

zo3adnasser@gmail.com

City

-

Orcid

-

First Name

Hala

Last Name

Sherif

MiddleName

Maghraby

Affiliation

Radiology Department, Faculty of Medicine , Al-Azhar University

Email

dr_hala_maghraby@yahoo.com

City

cairo

Orcid

-

First Name

Sabry

Last Name

Hassan

MiddleName

Mohammed

Affiliation

Modern Academy of Engineering and Technology

Email

drsabryfractal2014@gmail.com

City

Cairo

Orcid

-

First Name

Ashraf

Last Name

El Marakby

MiddleName

Abd El Rahman

Affiliation

Systems and Computers Engineering Dept. , Faculty of Engineering , Al-Azhar University, Cairo, Egypt.

Email

a.marakeby@azhar.edu.eg

City

Cairo

Orcid

0000-0002-8727-6506

Volume

19

Article Issue

72

Related Issue

49551

Issue Date

2024-07-01

Receive Date

2023-12-31

Publish Date

2024-07-01

Page Start

121

Page End

133

Print ISSN

1687-8418

Online ISSN

3009-7622

Link

https://jaes.journals.ekb.eg/article_370645.html

Detail API

https://jaes.journals.ekb.eg/service?article_code=370645

Order

370,645

Type

Original Article

Type Code

706

Publication Type

Journal

Publication Title

Journal of Al-Azhar University Engineering Sector

Publication Link

https://jaes.journals.ekb.eg/

MainTitle

LONG BONES X-RAY FRACTURE CLASSIFICATION USING MACHINE LEARNING

Details

Type

Article

Created At

24 Dec 2024