深度神经网络时代的肿瘤学多模态数据整合:综述。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2024-07-25 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1408843
Asim Waqas, Aakash Tripathi, Ravi P Ramachandran, Paul A Stewart, Ghulam Rasool
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引用次数: 0

摘要

癌症研究涵盖各种规模、模式和分辨率的数据,从筛查和诊断成像到数字化组织病理学切片,再到各种类型的分子数据和临床记录。整合这些不同类型的数据用于个性化癌症护理和预测建模,有望提高癌症筛查、诊断和治疗的准确性和可靠性。传统的分析方法通常侧重于孤立或单模态信息,无法捕捉癌症数据的复杂性和异质性。深度神经网络的出现推动了复杂的多模态数据融合技术的发展,这些技术能够从不同来源中提取和综合信息。其中,图神经网络(GNN)和变换器已成为多模态学习的强大工具,并取得了显著的成功。本综述介绍了多模态学习的基本原理,包括肿瘤数据模式、多模态学习分类和融合策略。我们将深入探讨 GNN 和 Transformers 在融合肿瘤学多模态数据方面的最新进展,重点介绍关键研究及其重要发现。我们讨论了多模态学习所面临的独特挑战,如数据异质性和整合复杂性,以及它为更细致、更全面地了解癌症所带来的机遇。最后,我们将介绍一些最新的综合性多模态泛癌症数据源。通过调查肿瘤学多模态数据整合的现状,我们的目标是强调多模态 GNN 和 Transformers 的变革潜力。通过本综述中介绍的技术进步和方法创新,我们旨在为这一前景广阔的领域的未来研究指明方向。这篇综述可能是第一篇重点介绍使用 GNN 和变换器进行癌症多模态建模应用现状的文章,介绍了全面的多模态肿瘤学数据源,并为多模态演化奠定了基础,鼓励在个性化癌症治疗方面进一步探索和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal data integration for oncology in the era of deep neural networks: a review.

Cancer research encompasses data across various scales, modalities, and resolutions, from screening and diagnostic imaging to digitized histopathology slides to various types of molecular data and clinical records. The integration of these diverse data types for personalized cancer care and predictive modeling holds the promise of enhancing the accuracy and reliability of cancer screening, diagnosis, and treatment. Traditional analytical methods, which often focus on isolated or unimodal information, fall short of capturing the complex and heterogeneous nature of cancer data. The advent of deep neural networks has spurred the development of sophisticated multimodal data fusion techniques capable of extracting and synthesizing information from disparate sources. Among these, Graph Neural Networks (GNNs) and Transformers have emerged as powerful tools for multimodal learning, demonstrating significant success. This review presents the foundational principles of multimodal learning including oncology data modalities, taxonomy of multimodal learning, and fusion strategies. We delve into the recent advancements in GNNs and Transformers for the fusion of multimodal data in oncology, spotlighting key studies and their pivotal findings. We discuss the unique challenges of multimodal learning, such as data heterogeneity and integration complexities, alongside the opportunities it presents for a more nuanced and comprehensive understanding of cancer. Finally, we present some of the latest comprehensive multimodal pan-cancer data sources. By surveying the landscape of multimodal data integration in oncology, our goal is to underline the transformative potential of multimodal GNNs and Transformers. Through technological advancements and the methodological innovations presented in this review, we aim to chart a course for future research in this promising field. This review may be the first that highlights the current state of multimodal modeling applications in cancer using GNNs and transformers, presents comprehensive multimodal oncology data sources, and sets the stage for multimodal evolution, encouraging further exploration and development in personalized cancer care.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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