用于多模式癌症生存分析的队列-个体合作学习

Huajun Zhou, Fengtao Zhou, Hao Chen
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摘要

最近,通过整合病理图像和基因组图谱等多模态数据,我们在癌症生存分析领域取得了令人瞩目的成就。然而,这些模式的异质性和高维性为提取具有区分性的表征并保持良好的泛化能力带来了巨大挑战。在本文中,我们提出了一个队列个体合作学习(CCL)框架,通过知识分解和队列指导的合作来推进癌症生存分析。具体来说,首先,我们提出了多模态知识分解(MKD)模块,将多模态知识明确分解为四个不同的组成部分:两种模态的冗余性、协同性和独特性。这种全面的分解可以启发模型感知容易被忽视的重要信息,从而促进有效的多模态融合。其次,我们提出了队列引导建模(CGM)来降低过度拟合任务相关信息的风险。它可以促进对基础多模态数据更全面、更稳健的理解,同时避免过度拟合的陷阱,增强模型的泛化能力。通过将知识分解与队列引导方法相结合,我们建立了一个稳健的多模态生存分析模型,并增强了模型的判别能力和泛化能力。在五个癌症数据集上的大量实验结果证明了我们的模型在整合多模态数据进行生存分析方面的有效性。代码即将公开。
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Cohort-Individual Cooperative Learning for Multimodal Cancer Survival Analysis.

Recently, we have witnessed impressive achievements in cancer survival analysis by integrating multimodal data, e.g., pathology images and genomic profiles. However, the heterogeneity and high dimensionality of these modalities pose significant challenges for extracting discriminative representations while maintaining good generalization. In this paper, we propose a Cohortindividual Cooperative Learning (CCL) framework to advance cancer survival analysis by collaborating knowledge decomposition and cohort guidance. Specifically, first, we propose a Multimodal Knowledge Decomposition (MKD) module to explicitly decompose multimodal knowledge into four distinct components: redundancy, synergy and uniqueness of the two modalities. Such a comprehensive decomposition can enlighten the models to perceive easily overlooked yet important information, facilitating an effective multimodal fusion. Second, we propose a Cohort Guidance Modeling (CGM) to mitigate the risk of overfitting task-irrelevant information. It can promote a more comprehensive and robust understanding of the underlying multimodal data, while avoiding the pitfalls of overfitting and enhancing the generalization ability of the model. By cooperating the knowledge decomposition and cohort guidance methods, we develop a robust multimodal survival analysis model with enhanced discrimination and generalization abilities. Extensive experimental results on five cancer datasets demonstrate the effectiveness of our model in integrating multimodal data for survival analysis. The code will be publicly available soon.

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Cohort-Individual Cooperative Learning for Multimodal Cancer Survival Analysis. Self-navigated 3D diffusion MRI using an optimized CAIPI sampling and structured low-rank reconstruction estimated navigator. Low-dose CT image super-resolution with noise suppression based on prior degradation estimator and self-guidance mechanism. Table of Contents LOQUAT: Low-Rank Quaternion Reconstruction for Photon-Counting CT.
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