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The CausalBench challenge: A machine learning contest for gene network inference from single-cell perturbation data

29 August 2023
Mathieu Chevalley
Jacob A. Sackett-Sanders
Yusuf Roohani
Pascal Notin
A. Bakulin
D. Brzeziński
Kaiwen Deng
Y. Guan
Justin Hong
Michael Ibrahim
W. Kotłowski
Marcin Kowiel
Panagiotis Misiakos
Achille Nazaret
Markus Püschel
Chris Wendler
Arash Mehrjou
Patrick Schwab
    CML
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Abstract

In drug discovery, mapping interactions between genes within cellular systems is a crucial early step. This helps formulate hypotheses regarding molecular mechanisms that could potentially be targeted by future medicines. The CausalBench Challenge was an initiative to invite the machine learning community to advance the state of the art in constructing gene-gene interaction networks. These networks, derived from large-scale, real-world datasets of single cells under various perturbations, are crucial for understanding the causal mechanisms underlying disease biology. Using the framework provided by the CausalBench benchmark, participants were tasked with enhancing the capacity of the state of the art methods to leverage large-scale genetic perturbation data. This report provides an analysis and summary of the methods submitted during the challenge to give a partial image of the state of the art at the time of the challenge. The winning solutions significantly improved performance compared to previous baselines, establishing a new state of the art for this critical task in biology and medicine.

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