Computer-aided diagnosis of Canine Hip Dysplasia using deep learning approach in a novel X-ray image dataset

Chaouki Boufenar, Tété Elom Mike Norbert Logovi, Djemai Samir, Imad Eddine Lassakeur
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These images were meticulously evaluated using six Deep Convolutional Neural Network (CNN) models. Following an extensive analysis of the top-performing models, VGG16 emerged as the leader, achieving remarkable accuracy, recall, and precision scores of 98.32%, 98.35%, and 98.44%, respectively. Leveraging deep learning (DL) techniques, this approach excels in diagnosing CHD from hip X-rays with a high degree of accuracy.KEYWORDS: Canine Hip Dysplasia diagnosisdeep learningtransfer learningX-rayimage classification AcknowledgementSpecial thanks to Dr. Samir DJEMAI, a lecturer at the National Veterinary Institute of the University of Constantine, and the DHONDT NUNES veterinary clinic in France for providing the authors with dog hip radiographic images. This work would not have been possible without their invaluable assistance.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationNotes on contributorsChaouki BoufenarChaouki Boufenar is an Algerian scientist and researcher known for his work in the field of artificial intelligence and data science. He is currently a lecturer at the Computer Science Department of the University of Algiers. He received a Ph.D. in Computer Science from the University of Constantine 2 (Abdelhamid Mehri) in 2018. Chaouki Boufenar has been affiliated with several academic and research institutions, including the University of Paris-Saclay (Laboratoire de Recherche en Informatique), the University of Constantine, and the University of Jijel in Algeria. He has published several research papers and articles in the field of Computer Science and Artificial Intelligence. His areas of interest include data science, deep learning, and computer vision.Tété Elom Mike Norbert LogoviTete Elom Mike Norbert Logovi is currently working as a teaching assistant at Laval University. He is also currently pursuing his M.Sc. degree in Computer Science with a thesis at the same university. He received his Bachelor's degree in Computer Systems from the Department of Computer Science at Benyoucef Benkhedda Algiers 1 University. His research area includes Machine Learning, Deep Learning, and Computer Vision.Djemai SamirDjemai Samir is currently a lecturer and researcher at the Institute of Veterinary Sciences of the University of Constantine, Algeria. He received his Doctor of Veterinary Medicine (DVM) degree from the Institute of Veterinary Sciences of Constantine in 2005, his Magistere degree in Veterinary Medicine from the National Veterinary School of Algiers in 2008, and his Ph.D. in Veterinary Medicine from the Institute of Veterinary Sciences of Constantine in 2017. He also practiced veterinary medicine in a private veterinary practice from 2007 to 2014. As part of his scientific research, he is interested in many scientific areas of veterinary medicine, including veterinary parasitology, carnivore pathology, and avian pathology. He has published several papers in international scientific journals and has presented at several international conferences.Imad Eddine LassakeurImad Eddine Lassakeur is an Algerian computer science researcher currently pursuing a Master's in Computer Science at Laval University in Quebec, Canada. 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Abstract

ABSTRACTCanine Hip Dysplasia (CHD) is a congenital disease with a polygenic hereditary component, characterised by abnormal development of the coxo-femoral joint which results in poor coaptation of the femoral head in the acetabulum; the disease rapidly progresses to osteoarthritis of the hip. While dysplasia has been recognised in practically all canine breeds, it is much more common and of concern in medium and large dog breeds with rapid development. Dysplasia in predisposed breeds, particularly the German Shepherd, is the object of screening based on systematic radiological control in some countries. Our collected dataset comprises 507 X-ray images of dogs affected by hip dysplasia (HD). These images were meticulously evaluated using six Deep Convolutional Neural Network (CNN) models. Following an extensive analysis of the top-performing models, VGG16 emerged as the leader, achieving remarkable accuracy, recall, and precision scores of 98.32%, 98.35%, and 98.44%, respectively. Leveraging deep learning (DL) techniques, this approach excels in diagnosing CHD from hip X-rays with a high degree of accuracy.KEYWORDS: Canine Hip Dysplasia diagnosisdeep learningtransfer learningX-rayimage classification AcknowledgementSpecial thanks to Dr. Samir DJEMAI, a lecturer at the National Veterinary Institute of the University of Constantine, and the DHONDT NUNES veterinary clinic in France for providing the authors with dog hip radiographic images. This work would not have been possible without their invaluable assistance.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationNotes on contributorsChaouki BoufenarChaouki Boufenar is an Algerian scientist and researcher known for his work in the field of artificial intelligence and data science. He is currently a lecturer at the Computer Science Department of the University of Algiers. He received a Ph.D. in Computer Science from the University of Constantine 2 (Abdelhamid Mehri) in 2018. Chaouki Boufenar has been affiliated with several academic and research institutions, including the University of Paris-Saclay (Laboratoire de Recherche en Informatique), the University of Constantine, and the University of Jijel in Algeria. He has published several research papers and articles in the field of Computer Science and Artificial Intelligence. His areas of interest include data science, deep learning, and computer vision.Tété Elom Mike Norbert LogoviTete Elom Mike Norbert Logovi is currently working as a teaching assistant at Laval University. He is also currently pursuing his M.Sc. degree in Computer Science with a thesis at the same university. He received his Bachelor's degree in Computer Systems from the Department of Computer Science at Benyoucef Benkhedda Algiers 1 University. His research area includes Machine Learning, Deep Learning, and Computer Vision.Djemai SamirDjemai Samir is currently a lecturer and researcher at the Institute of Veterinary Sciences of the University of Constantine, Algeria. He received his Doctor of Veterinary Medicine (DVM) degree from the Institute of Veterinary Sciences of Constantine in 2005, his Magistere degree in Veterinary Medicine from the National Veterinary School of Algiers in 2008, and his Ph.D. in Veterinary Medicine from the Institute of Veterinary Sciences of Constantine in 2017. He also practiced veterinary medicine in a private veterinary practice from 2007 to 2014. As part of his scientific research, he is interested in many scientific areas of veterinary medicine, including veterinary parasitology, carnivore pathology, and avian pathology. He has published several papers in international scientific journals and has presented at several international conferences.Imad Eddine LassakeurImad Eddine Lassakeur is an Algerian computer science researcher currently pursuing a Master's in Computer Science at Laval University in Quebec, Canada. With a background in Computer Science and Intelligent Computer Systems Engineering, he has engaged in a diverse range of research projects, honing his expertise in key areas. Imad's areas of interest encompass artificial intelligence, computer vision, and Natural Language Processing (NLP). Beyond his academic and research pursuits, Imad maintains a profound curiosity for emerging technologies and their potential to transform industries. His multifaceted interests exemplify his commitment to staying at the forefront of technological advancements and his unwavering passion for the field of computer science.
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在新的x射线图像数据集中使用深度学习方法进行犬髋关节发育不良的计算机辅助诊断
犬髋关节发育不良(CHD)是一种具有多基因遗传成分的先天性疾病,其特征是髋-股关节发育异常,导致股骨头与髋臼的配合不良;这种疾病迅速发展为髋关节骨关节炎。虽然几乎所有犬种都存在发育不良,但在快速发育的中型和大型犬种中更为常见和关注。在一些国家,易感品种,特别是德国牧羊犬,是基于系统放射控制的筛查对象。我们收集的数据集包括507张受髋关节发育不良(HD)影响的狗的x射线图像。这些图像使用六个深度卷积神经网络(CNN)模型进行仔细评估。在对表现最好的模型进行广泛分析后,VGG16成为领导者,分别达到了98.32%,98.35%和98.44%的准确率,召回率和精确度。利用深度学习(DL)技术,这种方法在从髋关节x光片诊断冠心病方面表现出色,准确率很高。关键词:犬髋关节发育不良诊断深度学习迁移学习x线图像分类致谢特别感谢康斯坦丁大学国家兽医研究所讲师Samir DJEMAI博士和法国DHONDT NUNES兽医诊所为作者提供犬髋关节x线图像。如果没有他们宝贵的帮助,这项工作是不可能完成的。披露声明作者未报告潜在的利益冲突。archaouki Boufenar是一名阿尔及利亚科学家和研究人员,以其在人工智能和数据科学领域的工作而闻名。他目前是阿尔及尔大学计算机科学系的讲师。他于2018年获得君士坦丁第二大学(Abdelhamid Mehri)计算机科学博士学位。Chaouki Boufenar隶属于几个学术和研究机构,包括巴黎萨克雷大学(信息研究实验室)、康斯坦丁大学和阿尔及利亚的吉耶尔大学。他在计算机科学和人工智能领域发表了多篇研究论文和文章。他感兴趣的领域包括数据科学、深度学习和计算机视觉。Elom Mike Norbert Logovi目前在拉瓦尔大学担任助教。他目前也在同一所大学攻读计算机科学硕士学位,并发表了一篇论文。他在Benyoucef Benkhedda Algiers大学计算机科学系获得计算机系统学士学位。他的研究领域包括机器学习、深度学习和计算机视觉。Djemai SamirDjemai Samir目前是阿尔及利亚康斯坦丁大学兽医科学研究所的讲师和研究员。2005年获得君士坦丁兽医科学研究所兽医学博士学位,2008年获得阿尔及尔国家兽医学院兽医学硕士学位,2017年获得君士坦丁兽医科学研究所兽医学博士学位。2007年至2014年,他还在一家私人兽医诊所从事兽医工作。作为他科学研究的一部分,他对兽医学的许多科学领域感兴趣,包括兽医寄生虫学,食肉动物病理学和鸟类病理学。他在国际科学期刊上发表了多篇论文,并在多个国际会议上发表了演讲。Imad Eddine Lassakeur,阿尔及利亚计算机科学研究员,目前在加拿大魁北克省拉瓦尔大学攻读计算机科学硕士学位。他拥有计算机科学和智能计算机系统工程的背景,参与了各种各样的研究项目,在关键领域磨练了他的专业知识。Imad感兴趣的领域包括人工智能、计算机视觉和自然语言处理(NLP)。除了他的学术和研究追求,Imad对新兴技术及其改变行业的潜力保持着深刻的好奇心。他多方面的兴趣体现了他对技术进步的承诺和他对计算机科学领域坚定不移的热情。
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来源期刊
CiteScore
2.80
自引率
6.20%
发文量
102
期刊介绍: Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization is an international journal whose main goals are to promote solutions of excellence for both imaging and visualization of biomedical data, and establish links among researchers, clinicians, the medical technology sector and end-users. The journal provides a comprehensive forum for discussion of the current state-of-the-art in the scientific fields related to imaging and visualization, including, but not limited to: Applications of Imaging and Visualization Computational Bio- imaging and Visualization Computer Aided Diagnosis, Surgery, Therapy and Treatment Data Processing and Analysis Devices for Imaging and Visualization Grid and High Performance Computing for Imaging and Visualization Human Perception in Imaging and Visualization Image Processing and Analysis Image-based Geometric Modelling Imaging and Visualization in Biomechanics Imaging and Visualization in Biomedical Engineering Medical Clinics Medical Imaging and Visualization Multi-modal Imaging and Visualization Multiscale Imaging and Visualization Scientific Visualization Software Development for Imaging and Visualization Telemedicine Systems and Applications Virtual Reality Visual Data Mining and Knowledge Discovery.
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