利用深度学习跟踪乳腺癌检测的知识演变、热点和未来方向:文献计量学综述

Mónica-Daniela Gómez-Rios, Nestor-Raul Martillo-Martinez, Miguel A. Quiroz-Martínez, Maikel Leyva-Vázquez
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引用次数: 0

摘要

在医疗领域,有必要提供资源来检测早期疾病,包括乳腺癌。深度学习沉浸在医学图像分析的各个方面,使其成为可能占据主导地位的自主技术。在这一系统评价中,共有250个结果被定位,其中40个被选中,其中选择了具有描述性基础的定量方法。这篇文献计量学综述的目的是分析使用深度学习进行乳腺癌早期检测的图像处理模型。因此,数字乳房x线摄影是检测图像异常的最有效方法。研究表明,CNN(卷积神经网络)由于其强大的模式识别和特征分类器,是医学图像分析专家的首选。
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Tracking Knowledge Evolution, Hotspots and future directions of Breast Cancer Detection using Deep Learning: A bibliometrics Review
In the medical field, it has been necessary to provide resources to detect early-stage diseases, including breast cancer. Deep learning is immersed in all aspects of medical image analysis, catapulting it as a possible dominant autonomous technology. In this systematic review, a total of 250 results were located, of which 40 were selected, for which a quantitative methodology with a descriptive basis was chosen. The objective of this bibliometric review is to analyze models in image processing for the early detection of breast cancer using deep learning. As result, digital mammography is the most effective method for detecting abnormalities in images. The research concludes that the application of CNN (Convolutional Neural Networks) is the most preferred choice of experts for medical image analysis due to its powerful pattern recognition and feature classifier.
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