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Diagnosis-Guided Multi-modal Feature Selection for Prognosis Prediction of Lung Squamous Cell Carcinoma

机译:肺鳞状细胞癌预后预测的诊断引导的多模态特征选择

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The existing studies have demonstrated that the integrative analysis of histopathological images and genomic data can hold great promise for survival analysis of cancers. However, direct combination of multi-modal data may bring irrelevant or redundant features that will harm the prognosis performance. Therefore, it has become a challenge to select informative features from the derived heterogeneous data for survival analysis. Most existing feature selection methods only utilized the collected multi-modal data and survival information to identify a subset of relevant features, which neglect to use the diagnosis information to guide the feature selection process. In fact, the diagnosis information (e.g., TNM stage) indicates the extent of the disease severity that are highly correlated with the patients' survival. Accordingly, we propose a diagnosis-guided multi-modal feature selection method (DGM2FS) for prognosis prediction. Specifically, we make use of the task relationship learning framework to automatically discover the relations between the diagnosis and prognosis tasks, through which we can identify important survival-associated image and eigengenes features with the help of diagnosis information. In addition, we also consider the association between the multi-modal data and use a regularization term to capture the correlation between the image and eigengene data. Experimental results on a lung squamous cell carcinoma dataset imply that incorporating diagnosis information can help identify meaningful survival-associated features, by which we can achieve better prognosis prediction performance than the conventional methods.
机译:现有研究表明,组织病理学图像和基因组数据的综合分析可以对癌症的存活分析具有很大的希望。然而,多模态数据的直接组合可能会带来无关或冗余的功能,这将损害预后性能。因此,从衍生的异构数据中选择衍生异质数据进行生存分析,它已成为挑战。大多数现有特征选择方法仅利用所收集的多模态数据和生存信息来识别相关特征的子集,忽略了使用诊断信息来指导特征选择过程。实际上,诊断信息(例如,TNM阶段)表明疾病严重程度与患者存活率高度相关。因此,我们提出了一种用于预后预测的诊断引导的多模态特征选择方法(DGM2FS)。具体而言,我们利用工作关系学习框架的自动发现诊断和预后的任务,通过它,我们可以找出重要的生存相关的图像和特征基因与诊断信息,帮助特征之间的关系。此外,我们还考虑多模态数据之间的关联,并使用正则化术语来捕获图像与egengene数据之间的相关性。肺鳞状细胞癌数据集的实验结果意味着结合诊断信息可以帮助识别有意义的生存相关特征,我们可以实现比传统方法更好的预后预测性能。

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