The Use of Deep Convolutional Neural Networks in Biomedical Imaging: A Review

Q3 Dentistry Journal of Orofacial Sciences Pub Date : 2019-01-01 DOI:10.4103/jofs.jofs_55_19
Yu-Cheng Chen, Derek J Hong, Chia-Wei Wu, M Mupparapu
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引用次数: 15

Abstract

Introduction: This review sought to present fundamental principles of deep convolutional neural networks (DCNNs) and provides an overview of its applications in medicine and dentistry. Materials and Methods: Scientific databases including PubMed, Science Direct, Web of Science, JSTOR, and Google Scholar were used to search for relevant literature on DCNN and its applications in the medical and dental fields from 2010 to September 2018. Two independent reviewers rated the articles based on the exclusion and inclusion criteria, and the remaining articles were reviewed. Results: The comprehensive literature search yielded 110,750 citations. After applying the exclusion and inclusion criteria, 340 articles remained that pertained to the use of DCNN in medicine and dentistry. Further exclusion based on nonbiomedical applications yielded a total of 26 articles for review. Conclusion: Advances in the development of neural network systems have permeated into the medical and dental fields, particularly in imaging and diagnostic testing. Researchers are attempting to use deep learning as an aid to assess medical images in clinical applications and its optimization will provide powerful tools to the next generation. However, the authors caution that these tools serve as supplements to improve diagnosis and not replace the medical professional.
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深度卷积神经网络在生物医学成像中的应用综述
本综述旨在介绍深度卷积神经网络(DCNNs)的基本原理,并概述其在医学和牙科领域的应用。材料与方法:利用PubMed、Science Direct、Web of Science、JSTOR、谷歌Scholar等科学数据库检索2010年至2018年9月DCNN及其在医学和牙科领域应用的相关文献。两名独立审稿人根据排除和纳入标准对文章进行评分,并对其余文章进行审查。结果:综合文献检索共收录引文110,750次。在应用排除和纳入标准后,仍有340篇文章涉及DCNN在医学和牙科中的使用。基于非生物医学应用的进一步排除共产生26篇文章供审查。结论:神经网络系统的发展已经渗透到医学和牙科领域,特别是在成像和诊断测试方面。研究人员正在尝试使用深度学习作为临床应用中评估医学图像的辅助手段,其优化将为下一代提供强大的工具。然而,作者警告说,这些工具作为补充,以提高诊断,而不是取代医疗专业人员。
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来源期刊
Journal of Orofacial Sciences
Journal of Orofacial Sciences Dentistry-Orthodontics
CiteScore
0.60
自引率
0.00%
发文量
13
审稿时长
31 weeks
期刊介绍: Journal of Orofacial Sciences is dedicated to noblest profession of Dentistry, and to the young & blossoming intellects of dentistry, with whom the future of dentistry will be cherished better. The prime aim of this journal is to advance the science and art of dentistry. This journal is an educational tool to encourage and share the acquired knowledge with our peers. It also to improves the standards and quality of therauptic methods. This journal assures you to gain knowledge in recent advances and research activities. The journal publishes original scientific papers with special emphasis on research, unusual case reports, editorial, review articles, book reviews & other relevant information in context of high professional standards.
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