首页> 外文期刊>British Journal of Cancer >A deep convolutional neural network for segmentation of whole-slide pathology images identifies novel tumour cell-perivascular niche interactions that are associated with poor survival in glioblastoma
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A deep convolutional neural network for segmentation of whole-slide pathology images identifies novel tumour cell-perivascular niche interactions that are associated with poor survival in glioblastoma

机译:用于全载病理学图像分割的深度卷积神经网络鉴定了与胶质母细胞瘤的差的生存率差的新型肿瘤细胞血管内的互动

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Background Glioblastoma is the most aggressive type of brain cancer with high-levels of intra- and inter-tumour heterogeneity that contribute to its rapid growth and invasion within the brain. However, a spatial characterisation of gene signatures and the cell types expressing these in different tumour locations is still lacking. Methods We have used a deep convolutional neural network (DCNN) as a semantic segmentation model to segment seven different tumour regions including leading edge (LE), infiltrating tumour (IT), cellular tumour (CT), cellular tumour microvascular proliferation (CTmvp), cellular tumour pseudopalisading region around necrosis (CTpan), cellular tumour perinecrotic zones (CTpnz) and cellular tumour necrosis (CTne) in digitised glioblastoma histopathological slides from The Cancer Genome Atlas (TCGA). Correlation analysis between segmentation results from tumour images together with matched RNA expression data was performed to identify genetic signatures that are specific to different tumour regions. Results We found that spatially resolved gene signatures were strongly correlated with survival in patients with defined genetic mutations. Further in silico cell ontology analysis along with single-cell RNA sequencing data from resected glioblastoma tissue samples showed that these tumour regions had different gene signatures, whose expression was driven by different cell types in the regional tumour microenvironment. Our results further pointed to a key role for interactions between microglia/pericytes/monocytes and tumour cells that occur in the IT and CTmvp regions, which may contribute to poor patient survival. Conclusions This work identified key histopathological features that correlate with patient survival and detected spatially associated genetic signatures that contribute to tumour-stroma interactions and which should be investigated as new targets in glioblastoma. The source codes and datasets used are available in GitHub: https://github.com/amin20/GBM_WSSM .
机译:背景技术胶质母细胞瘤是最具侵略性的脑癌类型,具有高含量的肿瘤和肿瘤间异质性,有助于其在大脑内的快速生长和侵袭。然而,仍然缺乏基因签名的空间表征和表达这些不同肿瘤位置的细胞类型。方法使用深度卷积神经网络(DCNN)作为语义分割模型,以将七种不同的肿瘤区域分段,包括前缘(LE),渗透肿瘤(IT),细胞肿瘤(CT),细胞肿瘤微血管增殖(CTMVP),来自癌症基因组地图集(​​TCGA)的癌症组织病理学载体中的坏死(CTPAN),细胞肿瘤蜂鸣区(CTPNZ)和细胞肿瘤坏死(CTNE)周围的细胞肿瘤伪多达区域。进行肿瘤图像与匹配的RNA表达数据一起的分段结果的相关分析,以鉴定特异于不同肿瘤区域的遗传签名。结果我们发现空间分辨的基因签名与患有遗传突变患者的存活率强烈相关。此外,在二氧化硅细胞本体学分析以及来自切除的胶质细胞瘤组织样品的单细胞RNA测序数据显示,这些肿瘤区域具有不同的基因特征,其表达在区域肿瘤微环境中的不同细胞类型驱动。我们的结果进一步指出了在IT和CTMVP地区发生的微胶质细胞/周细胞和单核细胞和肿瘤细胞之间的相互作用的关键作用,这可能导致患者存活率差。结论这项工作确定了与患者存活的关键组织病理学特征,并检测到有助于肿瘤 - 基质相互作用的空间相关的遗传签名,并且应该在胶质母细胞瘤中进行新的靶标。使用的源代码和数据集可在github中获得:https://github.com/amin20/gbm_wssm。

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