Deep multimodal fusion of image and non-image data in disease diagnosis and prognosis: a review.

IF 5 Q1 ENGINEERING, BIOMEDICAL Progress in biomedical engineering (Bristol, England) Pub Date : 2023-04-11 DOI:10.1088/2516-1091/acc2fe
Can Cui, Haichun Yang, Yaohong Wang, Shilin Zhao, Zuhayr Asad, Lori A Coburn, Keith T Wilson, Bennett A Landman, Yuankai Huo
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引用次数: 25

Abstract

The rapid development of diagnostic technologies in healthcare is leading to higher requirements for physicians to handle and integrate the heterogeneous, yet complementary data that are produced during routine practice. For instance, the personalized diagnosis and treatment planning for a single cancer patient relies on various images (e.g. radiology, pathology and camera images) and non-image data (e.g. clinical data and genomic data). However, such decision-making procedures can be subjective, qualitative, and have large inter-subject variabilities. With the recent advances in multimodal deep learning technologies, an increasingly large number of efforts have been devoted to a key question: how do we extract and aggregate multimodal information to ultimately provide more objective, quantitative computer-aided clinical decision making? This paper reviews the recent studies on dealing with such a question. Briefly, this review will include the (a) overview of current multimodal learning workflows, (b) summarization of multimodal fusion methods, (c) discussion of the performance, (d) applications in disease diagnosis and prognosis, and (e) challenges and future directions.

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疾病诊断和预后中图像和非图像数据的深度多模式融合:综述。
医疗保健诊断技术的快速发展对医生处理和集成日常实践中产生的异构但互补的数据提出了更高的要求。例如,单个癌症患者的个性化诊断和治疗计划依赖于各种图像(例如放射学、病理学和摄像机图像)和非图像数据(例如临床数据和基因组数据)。然而,这种决策程序可能是主观的、定性的,并且具有很大的主体间可变性。随着多模式深度学习技术的最新进展,越来越多的人致力于一个关键问题:我们如何提取和聚合多模式信息,以最终提供更客观、定量的计算机辅助临床决策?本文综述了近年来关于处理这一问题的研究。简言之,这篇综述将包括(a)当前多模式学习工作流程的概述,(b)多模式融合方法的总结,(c)性能的讨论,(d)在疾病诊断和预后中的应用,以及(e)挑战和未来方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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