Pérez-Núñez Jhelly-Reynaluz, Rodríguez Ciro, Vásquez-Serpa Luis-Javier, Navarro Carlos
Facultad de Ingeniería de Sistemas e Informática, Universidad Nacional Mayor de San Marcos (UNMSM), Lima 15081, Peru.
Diagnostics (Basel). 2024 Dec 23;14(24):2896. doi: 10.3390/diagnostics14242896.
This review aims to evaluate several convolutional neural network (CNN) models applied to breast cancer detection, to identify and categorize CNN variants in recent studies, and to analyze their specific strengths, limitations, and challenges.
Using PRISMA methodology, this review examines studies that focus on deep learning techniques, specifically CNN, for breast cancer detection. Inclusion criteria encompassed studies from the past five years, with duplicates and those unrelated to breast cancer excluded. A total of 62 articles from the IEEE, SCOPUS, and PubMed databases were analyzed, exploring CNN architectures and their applicability in detecting this pathology.
The review found that CNN models with advanced architecture and greater depth exhibit high accuracy and sensitivity in image processing and feature extraction for breast cancer detection. CNN variants that integrate transfer learning proved particularly effective, allowing the use of pre-trained models with less training data required. However, challenges include the need for large, labeled datasets and significant computational resources.
CNNs represent a promising tool in breast cancer detection, although future research should aim to create models that are more resource-efficient and maintain accuracy while reducing data requirements, thus improving clinical applicability.
本综述旨在评估几种应用于乳腺癌检测的卷积神经网络(CNN)模型,识别并分类近期研究中的CNN变体,并分析其具体优势、局限性和挑战。
本综述采用PRISMA方法,研究聚焦于深度学习技术(特别是CNN)用于乳腺癌检测的研究。纳入标准包括过去五年的研究,排除重复研究及与乳腺癌无关的研究。对来自IEEE、SCOPUS和PubMed数据库的62篇文章进行了分析,探讨了CNN架构及其在检测这种病理情况中的适用性。
该综述发现,具有先进架构和更大深度的CNN模型在乳腺癌检测的图像处理和特征提取方面表现出高准确性和敏感性。整合迁移学习的CNN变体被证明特别有效,允许使用预训练模型,所需的训练数据较少。然而,挑战包括需要大型的、有标签的数据集和大量的计算资源。
CNNs在乳腺癌检测中是一种有前景的工具,尽管未来的研究应致力于创建更具资源效率的模型,并在减少数据需求的同时保持准确性,从而提高临床适用性。