医学图像分析中的深度学习》文章回顾

Media Ali Ibrahim, Shavan K. Askar, Mohammad Saleem, Daban Ali, Nihad Abdullah
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引用次数: 0

摘要

与包括卷积神经网络(CNN)在内的普通深度学习策略相比,迁移学习以其简单、高效和咖啡教育价值而傲视群雄,有效地解决了有限数据集的风险问题。科学图片分析在科学研究和医学预测中的重要性怎么强调都不为过,计算机断层扫描(CT)、磁共振成像(MRI)、超声波(US)和 X 光等图像技术发挥着至关重要的作用。尽管它们在无创分析中非常有用,但与其他计算机想象和预知领域的数据集(如面部声誉)相比,分类医学影像的稀缺性构成了一个完全独特的挑战。鉴于这种匮乏,转换了解技术在医学图像处理研究人员中赢得了声誉。本完整评估汲取了来自 IEEE、Elsevier、Google Scholar、Web of Science 和 2000 年至 2023 年各种来源的 100 篇精彩论文。它涵盖了重要的内容,其中包括:(i) CNN 的形状,(ii) 交换学习的基础知识,(iii) 执行转换掌握的多种技术,(iv) 交换获取知识在医学图像分析的多个子领域中的应用,以及 (v) 在医学图像分析领域中就转换学习的未来潜力进行的对话。本评估报告不仅让初学者科学地了解迁移学习在医学图像分析中的应用,还通过总结迁移学习在科学图像领域的发展趋势,为政策制定者服务。这种洞察力还能鼓励决策者制定有利的规则,支持迁移学习知识在医学图像分析中的持续发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning in Medical Image Analysis Article Review
Transfer learning, in evaluation to common deep studying strategies which include convolutional neural networks (CNNs), stands proud due to its simplicity, efficiency, and coffee education value, efficaciously addressing the venture of restricted datasets. The importance of scientific picture analysis in both scientific research and medical prognosis can't be overstated, with image techniques like Computer Tomography (CT), Magnetic Resonance Image (MRI), Ultrasound (US), and X-Ray playing a crucial function. Despite their utility in non-invasive analysis, the scarcity of categorized medical images poses a completely unique challenge in comparison to datasets in other pc imaginative and prescient domains, like facial reputation. Given this shortage, switch getting to know has won reputation amongst researchers for medical photo processing. This complete evaluation draws on one hundred amazing papers from IEEE, Elsevier, Google Scholar, Web of Science, and diverse sources spanning 2000 to 2023 It covers vital components, which includes the (i) shape of CNNs, (ii) foundational know-how of switch learning, (iii) numerous techniques for enforcing transfer mastering, (iv) the utility of switch gaining knowledge of throughout numerous sub-fields of medical photo analysis, and (v) a dialogue at the future potentialities of transfer studying within the realm of medical image analysis. This evaluate no longer handiest equips beginners with a scientific understanding of transfer mastering applications in medical image analysis but additionally serves policymakers by means of summarizing the evolving trends in transfer learning within the scientific image domain. This insight might also encourage policymakers to formulate advantageous rules that support the continued development of Transfer learning knowledge of in medical image analysis.
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