乳腺癌分类的多模态深度学习融合策略综合研究

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence Review Pub Date : 2024-10-12 DOI:10.1007/s10462-024-10984-z
Fatima-Zahrae Nakach, Ali Idri, Evgin Goceri
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引用次数: 0

摘要

在乳腺癌研究中,需要使用多种数据类型和格式,如放射图像、临床记录、组织学数据和表达分析。由于自然现象错综复杂,仅靠单一模式的特征很少能进行全面分析。因此,将几种模式结合起来,才有可能保证医学相关性并改善临床效果。本研究对2018年至2023年期间发表的6个知名数字图书馆中的47篇主要文章进行了仔细的映射和回顾,以研究基于多模态深度学习融合(MDLF)技术的乳腺癌分类。这篇系统性文献综述涵盖了各个方面,包括结合的医疗模式、这些研究中使用的数据集、MDLF 中使用的技术、模型和架构,它还讨论了每种方法的优势和局限性。对所选论文的分析揭示了一个引人注目的趋势:在乳腺癌分类方面出现了以前从未探索过的新模式和新组合。这种探索不仅扩大了预测模型的范围,还为解决从筛查到诊断和预后等不同目标引入了新的视角。MDLF 的实际优势体现在它能够增强机器学习模型的预测能力,从而提高各种应用的准确性。深度学习模型的盛行凸显了它们在自主辨别复杂模式方面的成功,与传统的机器学习方法大相径庭。此外,论文还探讨了这一领域的挑战和未来方向,包括对更大数据集的需求、集合学习方法的使用以及多模态模型的解释。
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A comprehensive investigation of multimodal deep learning fusion strategies for breast cancer classification

In breast cancer research, diverse data types and formats, such as radiological images, clinical records, histological data, and expression analysis, are employed. Given the intricate nature of natural phenomena, relying on the features of a single modality is seldom sufficient for comprehensive analysis. Therefore, it is possible to guarantee medical relevance and achieve improved clinical outcomes by combining several modalities. The presen study carefully maps and reviews 47 primary articles from six well-known digital libraries that were published between 2018 and 2023 for breast cancer classification based on multimodal deep learning fusion (MDLF) techniques. This systematic literature review encompasses various aspects, including the medical modalities combined, the datasets utilized in these studies, the techniques, models, and architectures used in MDLF and it also discusses the advantages and limitations of each approach. The analysis of selected papers has revealed a compelling trend: the emergence of new modalities and combinations that were previously unexplored in the context of breast cancer classification. This exploration has not only expanded the scope of predictive models but also introduced fresh perspectives for addressing diverse targets, ranging from screening to diagnosis and prognosis. The practical advantages of MDLF are evident in its ability to enhance the predictive capabilities of machine learning models, resulting in improved accuracy across diverse applications. The prevalence of deep learning models underscores their success in autonomously discerning complex patterns, offering a substantial departure from traditional machine learning approaches. Furthermore, the paper explores the challenges and future directions in this field, including the need for larger datasets, the use of ensemble learning methods, and the interpretation of multimodal models.

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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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