首页> 外文会议>SPIE Medical Imaging Conference >Quantifying cell-type interactions and their spatial patterns as prognostic biomarkers in follicular lymphoma
【24h】

Quantifying cell-type interactions and their spatial patterns as prognostic biomarkers in follicular lymphoma

机译:量化细胞型相互作用及其空间模式作为卵泡淋巴瘤中的预后生物标志物

获取原文

摘要

Background: Observing the spatial pattern of tumour infiltrating lymphocytes in follicular lymphoma can lead to the development of promising novel biomarkers for survival prognosis. We have developed the "Hypothesised Interactions Distribution" (HID) analysis, to quantify the spatial heterogeneity of cell type interactions between lymphocytes in the tumour microenvironment. HID features were extracted to train a machine learning model for survival prediction and their performance was compared to other architectural biomarkers. Scalability of the method was examined by observing interactions between cell types that were identified using 6-plexed im-munofluorescent staining. Methods: Two follicular lymphoma datasets were used in this study; a microarray with tissue cores from patients, stained with CD69, CD3 and FOXP3 using multiplexed brightfield immuno-histochemistry and a second tissue microarray, stained with PD1, PDL1, CD4, FOXP3, CD68 and CDS using immunofluorescence. Spectral deconvolution. nuclei segmentation and cell type classification was carried out, followed by extraction of features based on cell type interaction probabilities. Random Forest classifiers were built to assign patients into groups of different overall survival and the performance of HID features was assessed. Results: HID features constructed over a range of interaction distances were found to significantly predict overall survival in both datasets (p = 0.0363, p = 0.0077). Interactions of specific phenotype pairs, correlated with unfavourable prognosis, could be identified, such as the interactions between CD3~+FOXP3~+ cells and CD3~+CD69~+ cells. Conclusion: Further validation of HID demonstrates its potential for development of clinical biomarkers in follicular lymphoma.
机译:背景:观察卵泡淋巴瘤中肿瘤浸润淋巴细胞的空间模式可导致对生存预后的有前途的新型生物标志物的开发。我们已经开发了“假设相互作用分布”(HID)分析,以量化肿瘤微环境中淋巴细胞之间细胞型相互作用的空间异质性。提取隐藏特征以训练用于存活预测的机器学习模型,并将其性能与其他建筑生物标志物进行比较。通过观察使用6-Plexed IM-Munoflofrescenct染色鉴定的细胞类型之间的相互作用来检查该方法的可扩展性。方法:本研究使用了两个滤泡淋巴瘤数据集;使用来自CD69,CD3和FoxP3的患者的患者组织核和使用免疫荧光染色的多路复用亮田免疫组织化学和第二组织微阵列,用CD69,CD3和FoxP3染色。使用免疫荧光,用PD1,PDL1,CD4,FoxP3,CD68和CD染色。光谱折叠卷积。进行核分割和细胞型分类,然后基于细胞型相互作用概率提取特征。随机森林分类器被建造,以将患者分配成不同的整体生存组,并评估了HID功能的性能。结果:在一系列相互作用距离上构建的HID特征是在数据集中显着预测整体存活(P = 0.0363,P = 0.0077)。可以鉴定特定表型对的相互作用,与不利预后,例如CD3〜+ Foxp3〜+细胞和CD3〜+ CD69〜+细胞之间的相互作用。结论:HID的进一步验证证明了滤泡淋巴瘤临床生物标志物的发展潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号