A huge thanks to my fantastic multi-disciplinary co-authors: Vladimir A. Shitov, Malte LΓΌcken, Niki Kilbertus, Stefan Bauer, Marie Piraud, Alena Buyx, and Fabian Theis.
To fighting biases in ML-based single-cell science!
@theresawillem.bsky.social
A huge thanks to my fantastic multi-disciplinary co-authors: Vladimir A. Shitov, Malte LΓΌcken, Niki Kilbertus, Stefan Bauer, Marie Piraud, Alena Buyx, and Fabian Theis.
To fighting biases in ML-based single-cell science!
Our work traces these biasesβ origins and interactions across the development pipeline. This pipeline-informed approach highlights how biases interconnect, potentially amplifying their impacts and complicating mitigation efforts.
19.02.2025 10:56 β π 0 π 0 π¬ 1 π 0Biases arise at every step of the ML-based single-cell analysis pipeline. We highlight:
π₯ Clinical Biases
π₯ Cohort biases
π§ͺ Biases introduced during single-cell sequencing
π€ Machine-learning and interpretational biases specific to weakly supervised or unsupervised ML models
A brief TL;DR:
Recent advances in ML-based single-cell data science offer groundbreaking insights into human health, enabling the stratification of tissue donors at single-cell resolution. But these insights are not immune to biases that can compromise their generalizability and fairness.
How do biases affect machine-learning models of human single-cell data? And what can we do about it? In our new Perspective article, "Biases in machine-learning models of human single-cell data," published in Nature Cell Biology, we explore these pressing questions.
ππ» www.nature.com/articles/s41...
Biases arise at every step of the ML-based single-cell analysis pipeline. We highlight:
π₯ Clinical Biases
π₯ Cohort biases
π§ͺ Biases introduced during single-cell sequencing
π€ Machine-learning and interpretational biases specific to weakly supervised or unsupervised ML models
A brief TL;DR:
Recent advances in ML-based single-cell data science offer groundbreaking insights into human health, enabling the stratification of tissue donors at single-cell resolution. But these insights are not immune to biases that can compromise their generalizability and fairness.
The Embedded Ethics and Social Science Approach: In the past years, our team at @ihemtum.bsky.social @alenabuyx.bsky.social together with colleagues at the TUM School of Social Sciences and Technology, have been developing the Embedded Ethics and Social Science approach.
01.02.2025 21:08 β π 5 π 2 π¬ 1 π 2ππ§ͺNew publication by @theresawillem.bsky.social et al. out in JMIR medical informatics: "The social construction of categorical data: A mixed-methods approach to assessing data features in publicly available machine learning datasets"
π Full paper, open access: medinform.jmir.org/2025/1/e59452