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Quantification of the Heterogeneity of Prognostic Cellular Biomarkers in Ewing Sarcoma Using Automated Image and Random Survival Forest Analysis

机译:使用自动图像和随机生存森林分析对尤文肉瘤中预后细胞生物标志物的异质性进行定量

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摘要

Driven by genomic somatic variation, tumour tissues are typically heterogeneous, yet unbiased quantitative methods are rarely used to analyse heterogeneity at the protein level. Motivated by this problem, we developed automated image segmentation of images of multiple biomarkers in Ewing sarcoma to generate distributions of biomarkers between and within tumour cells. We further integrate high dimensional data with patient clinical outcomes utilising random survival forest (RSF) machine learning. Using material from cohorts of genetically diagnosed Ewing sarcoma with EWSR1 chromosomal translocations, confocal images of tissue microarrays were segmented with level sets and watershed algorithms. Each cell nucleus and cytoplasm were identified in relation to DAPI and CD99, respectively, and protein biomarkers (e.g. Ki67, pS6, Foxo3a, EGR1, MAPK) localised relative to nuclear and cytoplasmic regions of each cell in order to generate image feature distributions. The image distribution features were analysed with RSF in relation to known overall patient survival from three separate cohorts (185 informative cases). Variation in pre-analytical processing resulted in elimination of a high number of non-informative images that had poor DAPI localisation or biomarker preservation (67 cases, 36%). The distribution of image features for biomarkers in the remaining high quality material (118 cases, 104 features per case) were analysed by RSF with feature selection, and performance assessed using internal cross-validation, rather than a separate validation cohort. A prognostic classifier for Ewing sarcoma with low cross-validation error rates (0.36) was comprised of multiple features, including the Ki67 proliferative marker and a sub-population of cells with low cytoplasmicuclear ratio of CD99. Through elimination of bias, the evaluation of high-dimensionality biomarker distribution within cell populations of a tumour using random forest analysis in quality controlled tumour material could be achieved. Such an automated and integrated methodology has potential application in the identification of prognostic classifiers based on tumour cell heterogeneity.
机译:受基因组体细胞变异的驱动,肿瘤组织通常是异质的,但是很少使用无偏定量方法来分析蛋白质水平的异质性。受此问题的影响,我们开发了尤因肉瘤中多种生物标记物图像的自动图像分割,以在肿瘤细胞之间和之内生成生物标记物的分布。我们使用随机生存森林(RSF)机器学习进一步将高维数据与患者的临床结果整合在一起。使用来自经遗传诊断的具有ESR1染色体易位的尤因肉瘤队列研究的材料,利用水平集和分水岭算法对组织微阵列的共聚焦图像进行分割。分别相对于DAPI和CD99鉴定每个细胞核和细胞质,并且相对于每个细胞的核和细胞质区域定位蛋白质生物标志物(例如Ki67,pS6,Foxo3a,EGR1,MAPK)以生成图像特征分布。使用RSF分析了三个独立队列(185个信息丰富的病例)中已知患者总体生存率的图像分布特征。分析前处理过程的变化导致消除了DAPI定位不良或生物标记保存不佳的大量非信息图像(67例,36%)。通过带有特征选择的RSF分析剩余高质量材料(118例,每例10 4 个特征)中生物标志物图像特征的分布,并使用内部交叉验证而不是使用单独的验证队列。交叉验证错误率低(0.36)的尤因肉瘤的预后分类器包括多个特征,包括Ki67增殖标记和具有低CD99胞质/核比的细胞亚群。通过消除偏差,可以在质量受控的肿瘤材料中使用随机森林分析来评估肿瘤细胞群内高维生物标志物的分布。这样的自动化和集成的方法在基于肿瘤细胞异质性的预后分类器的识别中具有潜在的应用。

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