Deep Learning Performance on Medical Image, Data and Signals

P. Erdoğmuş
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引用次数: 1

Abstract

In this study, the recent medical studies with deep learning between 2009-2019 have been researched for observing the performance of deep learning on medical images, data and signal. Recent studies attained from Web of Science have been evaluated and selected according to the citation numbers. Studies have been listed as a table, according to the publication year, deep network structure, database used training and testing, evaluation metric and results. The studies have also been classified into the organs and the types of important diagnosis. The results have shown that the deep learning network structures, applied on fundus images, have attained nearly %99 percent accuracy. Although most of the studies between the range, made by Radiology and Nuclear Medicine Imaging, the accuracy of the results are 80-90% range. The current studies especially focus on automatic detection or classification of the tumor as benign or malign. Studies are mostly on medical CT, ultrasound, radiography and MRI images. This results show that computer aided medical diagnosis systems will be used in a very near future with fully performance.
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医学图像、数据和信号的深度学习性能
本研究以2009-2019年深度学习医学研究为研究对象,观察深度学习在医学图像、数据和信号上的表现。根据引用数对Web of Science上获得的最新研究进行了评价和选择。已列出的研究成果按发表年份、深度网络结构、数据库使用的训练和测试、评价指标和结果分列。研究还将其分类为器官类型和重要诊断。结果表明,深度学习网络结构在眼底图像上的应用达到了近99%的准确率。虽然大多数研究的范围介于放射学和核医学成像之间,但结果的准确性都在80-90%的范围内。目前的研究主要集中在肿瘤的良性或恶性的自动检测或分类上。研究主要集中在医学CT、超声、x线摄影和MRI图像上。这一结果表明,计算机辅助医疗诊断系统将在不久的将来得到全面应用。
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