肺癌生存分析多模态融合的建模不确定性

Hongzhi Wang, Vaishnavi Subramanian, T. Syeda-Mahmood
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引用次数: 10

摘要

多模态数据的融合对疾病的理解很重要。在本文中,我们提出了一种新的融合方法,利用个体情态学习者在预测中产生的不确定性。具体来说,我们通过在估计不同模式产生的预测之间的相关性时考虑模型不确定性来扩展联合标签融合方法。通过对非小细胞肺癌手术切除患者生存预测的实验研究,我们证明了该方法具有良好的效果。
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Modeling Uncertainty in Multi-Modal Fusion for Lung Cancer Survival Analysis
Fusion of multimodal data is important for disease understanding. In this paper, we propose a new method of fusion exploiting the uncertainty in prediction produced by the individual modality learners. Specifically, we extend the joint label fusion method by taking model uncertainty into account when estimating correlations among predictions produced by different modalities. Through experimental study in survival prediction for non-small cell lung cancer patients who received surgical resection, we demonstrated promising performance produced by the proposed method.
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