Machine learning (ML) has seen enormous consideration during the most recent decade. This success started in 2012 when an ML model accomplished a remarkable triumph in the ImageNet Classification, the world's most famous competition for computer vision. This model was a kind of convolutional neural system (CNN) called deep learning (DL). Since then, researchers have started to participate efficiently in DL's fastest developing area of research. These days, DL systems are cutting-edge ML systems spanning a broad range of disciplines, from human language processing to video analysis, and commonly used in the scholarly world and enterprise sector. Recent advances can bring tremendous improvement to the medical field. Improved and innovative methods for data processing, image analysis and can significantly improve the diagnostic technologies and medicinal services gradually. A quick review of current developments with relevant problems in the field of DL used for medical imaging has been provided. The primary purposes of the review are four: (i) provide a brief prolog to DL by discussing different DL models, (ii) review of the DL usage for medical image analysis (classification, detection, segmentation, and registration), (iii) review seven main application fields of DL in medical imaging, (iv) give an initial stage to those keen on adding to the research area about DL in clinical imaging by providing links of some useful informative assets, such as freely available DL codes, public datasets Table 7, and medical imaging competition sources Table 8 and end our survey by outlining distinct continuous difficulties, lessons learned and future of DL in the field of medical science.
翻译:在最近十年里,机器学习(ML)经历了巨大的考量。这一成功始于2012年,当时ML模式在图像网分类这一世界上最著名的计算机视觉竞赛中取得了显著的胜利。该模式是一种被称为深级学习(DL)的进化神经系统(CNN),自此以来,研究人员开始有效地参与DL发展最快的研究领域。这些天,DL系统是一个尖端的ML系统,涵盖广泛的学科,从人文处理到视频分析,并普遍用于学术界和企业部门。最近的进展可以极大地改善医疗领域。改进和创新性的数据处理、图像分析方法,并能够逐步大大改进诊断技术和医疗服务。从那时以来,研究人员开始有效地参与DL领域最先进的研究领域。这些研究的主要目的有四个:(一) 通过讨论不同的DL模式,为DL提供简短的医学应用,(二)审查DL用于医学图像分析(分类、检测、分解和注册)领域的应用情况。 (三)通过在D类初步数据化数据领域,通过提供D级数据库的7个主要领域的应用领域,通过提供D级数据库的原始数据,在D级数据库中的早期应用。