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引用次数: 0
摘要
肿瘤学中的分子生物统计工作流程通常依赖于使用多模态数据的预测模型。深度学习和人工智能技术的进步使大量多模态数据的多模态融合成为可能。在这里,我们提出了一个决策级多模态数据融合框架,用于整合多组学和病理组织切片图像进行预后预测。该方法通过在空间上连接相邻核建立实例的空间图,并通过图卷积层计算输入病理组织切片图像的特征张量。应用Global Average Pooling对病理图像和multiomics数据的特征张量进行对齐和归一化,实现无缝集成。我们使用来自癌症基因组图谱的乳腺浸润性癌数据和非小细胞肺癌数据来测试我们提出的方法,该图谱包含配对的全片图像、转录组数据、基因型、表观遗传学和生存信息。在10倍交叉验证中,比较结果表明,多模态融合模式改善了单模态数据的结果预测,乳腺癌和非小细胞肺癌队列的平均c指数分别从0.61增加到0.52到0.75和0.67。所提出的决策级多模态数据融合框架有望为后续研究提供见解和技术方法。
Decision level scheme for fusing multiomics and histology slide images using deep neural network for tumor prognosis prediction.
Molecular biostatistical workflows in oncology often rely on predictive models that use multimodal data. Advances in deep learning and artificial intelligence technologies have enabled the multimodal fusion of large volumes of multimodal data. Here, we presented a decision level multimodal data fusion framework for integrating multiomics and pathological tissue slide images for prognosis prediction. Our approach established the spatial map of instances by connecting the neighboring nuclei in space and calculated the characteristic tensor via graph convolution layers for the input pathological tissue slide images. Global Average Pooling was applied to align and normalize the feature tensors from pathological images and the multiomics data, enabling seamless integration. We tested our proposed approach using Breast Invasive Carcinoma data and Non-Small Cell Lung Cancer data from the Cancer Genome Atlas, which contains paired whole-slide images, transcriptome data, genotype, epienetic, and survival information. In a 10-fold cross-validation, the comparison results demonstrated that the multimodal fusion paradigm improves outcome predictions from single modal data alone with the average C-index increasing from 0.61 to 0.52 to 0.75 and 0.67 for breast cancer and non-small cell lung cancer cohort, respectively. The proposed decision level multimodal data fusion framework is expected to provide insights and technical methodologies for the follow-up studies.
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