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, Shah Saundarya, 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: Tribus is available at https://github.com/farkkilab/tribus as an open-source Python package.

Supplementary information: Supplementary data are available at Bioinformatics online.

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