Image-Based Subtype Classification for Glioblastoma Using Deep Learning: Prognostic Significance and Biologic Relevance.

IF 3.3 Q2 ONCOLOGY JCO Clinical Cancer Informatics Pub Date : 2024-01-01 DOI:10.1200/CCI.23.00154
Min Yuan, Haolun Ding, Bangwei Guo, Miaomiao Yang, Yaning Yang, Xu Steven Xu
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Abstract

Purpose: To apply deep learning algorithms to histopathology images, construct image-based subtypes independent of known clinical and molecular classifications for glioblastoma, and produce novel insights into molecular and immune characteristics of the glioblastoma tumor microenvironment.

Materials and methods: Using whole-slide hematoxylin and eosin images from 214 patients with glioblastoma in The Cancer Genome Atlas (TCGA), a fine-tuned convolutional neural network model extracted deep learning features. Biclustering was used to identify subtypes and image feature modules. Prognostic value of image subtypes was assessed via Cox regression on survival outcomes and validated with 189 samples from the Clinical Proteomic Tumor Analysis Consortium (CPTAC) data set. Morphological, molecular, and immune characteristics of glioblastoma image subtypes were analyzed.

Results: Four distinct subtypes and modules (imClust1-4) were identified for the TCGA patients with glioblastoma on the basis of the image feature data. The glioblastoma image subtypes were significantly associated with overall survival (OS; P = .028) and progression-free survival (P = .003). Apparent association was also observed for disease-specific survival (P = .096). imClust2 had the best prognosis for all three survival end points (eg, after 25 months, imClust2 had >7% surviving patients than the other subtypes). Examination of OS in the external validation using the unseen CPTAC data set showed consistent patterns. Multivariable Cox analyses confirmed that the image subtypes carry unique prognostic information independent of known clinical and molecular predictors. Molecular and immune profiling revealed distinct immune compositions of the tumor microenvironment in different image subtypes and may provide biologic explanations for the patterns in patients' outcomes.

Conclusion: Our image-based subtype classification on the basis of deep learning models is a novel tool to refine risk stratification in cancers. The image subtypes detected for glioblastoma represent a promising prognostic biomarker with distinct molecular and immune characteristics and may facilitate developing novel, individualized immunotherapies for glioblastoma.

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利用深度学习对胶质母细胞瘤进行基于图像的亚型分类:预后意义和生物学相关性。
目的:将深度学习算法应用于组织病理学图像,构建独立于已知胶质母细胞瘤临床和分子分类的基于图像的亚型,并对胶质母细胞瘤肿瘤微环境的分子和免疫特征提出新的见解:利用《癌症基因组图谱》(TCGA)中214名胶质母细胞瘤患者的整张苏木精和伊红图像,微调卷积神经网络模型提取了深度学习特征。双聚类用于识别亚型和图像特征模块。通过对生存结果的 Cox 回归评估了图像亚型的预后价值,并用临床肿瘤蛋白质组学分析联盟(CPTAC)数据集的 189 个样本进行了验证。分析了胶质母细胞瘤图像亚型的形态、分子和免疫特征:结果:根据图像特征数据,为 TCGA 中的胶质母细胞瘤患者确定了四个不同的亚型和模块(imClust1-4)。胶质母细胞瘤图像亚型与总生存期(OS;P = .028)和无进展生存期(P = .003)显著相关。在所有三个生存终点中,imClust2 的预后最好(例如,25 个月后,imClust2 比其他亚型的存活率高出 7%)。在使用未见的 CPTAC 数据集进行的外部验证中,对 OS 的检查显示出一致的模式。多变量考克斯分析证实,图像亚型具有独立于已知临床和分子预测因素的独特预后信息。分子和免疫分析表明,不同图像亚型的肿瘤微环境具有不同的免疫组成,可为患者的预后模式提供生物学解释:我们基于深度学习模型的图像亚型分类是完善癌症风险分层的新工具。为胶质母细胞瘤检测到的图像亚型代表了一种有前景的预后生物标记物,具有独特的分子和免疫特征,可能有助于开发新型的、针对胶质母细胞瘤的个体化免疫疗法。
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CiteScore
6.20
自引率
4.80%
发文量
190
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