Contrastive Representation Learning for Single Cell Phenotyping in Whole Slide Imaging of Enrichment-free Liquid Biopsy.

Amin Naghdloo, Dean Tessone, Rajiv M Nagaraju, Brian Zhang, Jeffrey Kang, Shouyi Li, Assad Oberai, James B Hicks, Peter Kuhn
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Abstract

Tumor-associated cells derived from a liquid biopsy are promising biomarkers for cancer detection, diagnosis, prognosis, and monitoring. However, their rarity, heterogeneity and plasticity make precise identification and biological characterization challenging for clinical utility. Enrichment-free approaches using whole slide imaging of all circulating cells offer a comprehensive and unbiased strategy for capturing the full spectrum of tumor-associated cell phenotypes. However, current analysis methods often depend on engineered features and manual expert review, making them sensitive to technical variations and subjective biases. These limitations highlight the need for a better feature representation to improve performance and reproducibility of applications in large-scale patient cohort analyses. In this study, we present a deep contrastive learning framework for learning features of all circulating cells, enabling robust identification and stratification of single cells in whole slide immunofluorescence microscopy images. We demonstrate performance of learned features in classification of diverse cell phenotypes in the liquid biopsy, achieving an accuracy of 92.64%. We further demonstrate that learned features improve performance in downstream applications such as outlier detection and clustering. Lastly, our feature representation enables automated identification and enumeration of distinct rare cell phenotypes, achieving average F1-score of 0.93 across cell lines mimicking circulating tumor cells and endothelial cells in contrived samples and average F1-score of 0.858 across CTC phenotypes in clinical samples. This workflow has significant implications for scalable analysis of tumor-associated cellular biomarkers in clinical prognosis and personalized treatment strategies.

无富集液体活检全切片成像中单细胞表型的对比表征学习。
从液体活检中提取的肿瘤相关细胞是癌症检测、诊断、预后和监测的有前途的生物标志物。然而,它们的稀有性、异质性和可塑性使其精确识别和生物学表征对临床应用具有挑战性。使用所有循环细胞的全切片成像的无富集方法为捕获肿瘤相关细胞表型的全谱提供了全面和公正的策略。然而,目前的分析方法往往依赖于工程特征和人工专家评审,这使得它们对技术变化和主观偏见很敏感。这些限制突出了需要一个更好的特征表示,以提高大规模患者队列分析应用程序的性能和可重复性。在这项研究中,我们提出了一个深度对比学习框架,用于学习所有循环细胞的特征,从而能够在整个载玻片免疫荧光显微镜图像中对单个细胞进行稳健的识别和分层。我们展示了在液体活检中对不同细胞表型进行分类的学习特征的性能,达到了92.64%的准确率。我们进一步证明,学习的特征提高了下游应用的性能,如离群点检测和聚类。最后,我们的特征表示能够自动识别和枚举不同的罕见细胞表型,在人造样本中模拟循环肿瘤细胞和内皮细胞的细胞系的平均f1得分为0.93,在临床样本中CTC表型的平均f1得分为0.858。该工作流程对肿瘤相关细胞生物标志物的临床预后和个性化治疗策略的可扩展分析具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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