论文标题
通过机器学习和深度学习的计算机辅助癌症诊断:比较评论
Computer-Aided Cancer Diagnosis via Machine Learning and Deep Learning: A comparative review
论文作者
论文摘要
过去几年的癌症病例大幅增加。但是,癌症诊断通常很复杂,取决于提供的分析图像类型。它需要高技能的从业者,但通常很耗时且容易出错。如果已经广泛使用了机器学习和深度学习算法,则缺乏对从预处理的预测步骤到最终预测的全面回顾。通过这篇综述,我们旨在全面概述为癌症预测,检测和分类构建有效,准确的机器学习算法所需的当前步骤。为此,我们在过去几年中使用AI编译了与癌症相关研究的结果。我们包括各种癌症,这些癌症包括不同类型的图像,因此包括不同的相关技术。我们表明,在早期发现癌性肿瘤和组织中已经取得了巨大改进。所使用的技术是各种各样的,通常是问题的,我们的发现得到了大量研究的研究。此外,我们研究了最适合不同类型图像的方法,例如组织学,皮肤镜,MRI等。通过这项工作,我们总结了过去几年中使用深度学习技术在癌症检测中的主要发现。我们讨论了与图像中较大差异有关的癌症研究的挑战,并在肺,乳腺癌和皮肤癌症领域提供了一些显着的结果。
The past years have seen a considerable increase in cancer cases. However, a cancer diagnosis is often complex and depends on the types of images provided for analysis. It requires highly skilled practitioners but is often time-consuming and error-prone. If Machine Learning and deep learning algorithms have been widely used, a comprehensive review of the techniques used from the pre-processing steps to the final prediction is lacking. With this review, we aim to provide a comprehensive overview of the current steps required in building efficient and accurate machine learning algorithm for cancer prediction, detection and classification. To do so, we compile the results of cancer related study using AI over the past years. We include various cancers that encompass different types of images, and therefore different related techniques. We show that tremendous improvements have been made in the early detection of cancerous tumors and tissues. The techniques used are various and often problem-tailored and our findings is confirmed through the study of a large number of research. Moreover, we investigate the approaches best suited for different types of images such as histology, dermoscopic, MRI, etc. With this work, we summarize the main finding over the past years in cancer detection using deep learning techniques. We discuss the challenges of cancer research related to the large discrepancies in the images, and we provide some notable results in the field for lung, breast, and skin cancers.