Tribus: semi-automated discovery of cell identities and phenotypes from multiplexed imaging and proteomic data.

Ziqi Kang, Angela Szabo, Teodora Farago, Fernando Perez-Villatoro, Ada Junquera, Saundarya Shah, Inga-Maria Launonen, Ella Anttila, Julia Casado, Kevin Elias, Anni Virtanen, Ulla-Maija Haltia, Anniina Färkkilä
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Abstract

Motivation: Multiplexed imaging and single-cell analysis are increasingly applied to investigate the tissue spatial ecosystems in cancer and other complex diseases. Accurate single-cell phenotyping based on marker combinations is a critical but challenging task due to (i) low reproducibility across experiments with manual thresholding, and, (ii) labor-intensive ground-truth expert annotation required for learning-based methods.

Results: We developed Tribus, an interactive knowledge-based classifier for multiplexed images and proteomic datasets that avoids hard-set thresholds and manual labeling. We demonstrated that Tribus recovers fine-grained cell types, matching the gold standard annotations by human experts. Additionally, Tribus can target ambiguous populations and discover phenotypically distinct cell subtypes. Through benchmarking against three similar methods in four public datasets with ground truth labels, we show that Tribus outperforms other methods in accuracy and computational efficiency, reducing runtime by an order of magnitude. Finally, we demonstrate the performance of Tribus in rapid and precise cell phenotyping with two large in-house whole-slide imaging datasets.

Availability and implementation: Tribus is available at https://github.com/farkkilab/tribus as an open-source Python package.

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tribs:从多路成像和蛋白质组学数据中半自动发现细胞身份和表型。
动机:多路成像和单细胞分析越来越多地应用于研究癌症和其他复杂疾病的组织空间生态系统。基于标记组合的准确单细胞表型是一项关键但具有挑战性的任务,因为(i)手动阈值法在实验中的可重复性较低,(ii)基于学习的方法需要劳动密集型的基础事实专家注释。结果:我们开发了tribs,一个基于知识的交互式分类器,用于多路图像和蛋白质组学数据集,避免了硬设置阈值和手动标记。我们证明了tribs可以恢复细粒度的细胞类型,与人类专家的金标准注释相匹配。此外,tribs可以针对模棱两可的群体并发现表型上不同的细胞亚型。通过在四个带有真实值标签的公共数据集中对三种类似方法进行基准测试,我们表明tribs在准确性和计算效率方面优于其他方法,将运行时间缩短了一个数量级。最后,我们用两个大型内部全幻灯片成像数据集展示了tribs在快速和精确的细胞表型分析中的性能。可用性:tribs是一个开源Python包,可从https://github.com/farkkilab/tribus获得。补充信息:补充数据可在生物信息学在线获取。
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