Puttagunta Muralikrishna, Ravi S
Department of Computer Science, School of Engineering and Technology, Pondicherry University, Pondicherry, India.
Multimed Tools Appl. 2021;80(16):24365-24398. doi: 10.1007/s11042-021-10707-4. Epub 2021 Apr 6.
Medical imaging plays a significant role in different clinical applications such as medical procedures used for early detection, monitoring, diagnosis, and treatment evaluation of various medical conditions. Basicsof the principles and implementations of artificial neural networks and deep learning are essential for understanding medical image analysis in computer vision. Deep Learning Approach (DLA) in medical image analysis emerges as a fast-growing research field. DLA has been widely used in medical imaging to detect the presence or absence of the disease. This paper presents the development of artificial neural networks, comprehensive analysis of DLA, which delivers promising medical imaging applications. Most of the DLA implementations concentrate on the X-ray images, computerized tomography, mammography images, and digital histopathology images. It provides a systematic review of the articles for classification, detection, and segmentation of medical images based on DLA. This review guides the researchers to think of appropriate changes in medical image analysis based on DLA.
医学成像在不同的临床应用中发挥着重要作用,例如用于各种医疗状况的早期检测、监测、诊断和治疗评估的医疗程序。人工神经网络和深度学习的原理及实现基础对于理解计算机视觉中的医学图像分析至关重要。医学图像分析中的深度学习方法(DLA)已成为一个快速发展的研究领域。DLA已广泛应用于医学成像,以检测疾病的存在与否。本文介绍了人工神经网络的发展,对DLA进行了全面分析,其带来了有前景的医学成像应用。大多数DLA实现都集中在X射线图像、计算机断层扫描、乳腺摄影图像和数字组织病理学图像上。它对基于DLA的医学图像分类、检测和分割的文章进行了系统综述。这篇综述指导研究人员思考基于DLA的医学图像分析的适当变化。