2024
DOI: 10.1101/2024.05.24.595717
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RUCova: Removal of Unwanted Covariance in mass cytometry data

Rosario Astaburuaga-García,
Thomas Sell,
Samet Mutlu
et al.

Abstract: High dimensional mass cytometry is confounded by unwanted covariance due to variations in cell size and staining efficiency, making analysis and interpretation challenging.We present RUCova, a novel method designed to address confounding factors in mass cytometry data. RUCova removes unwanted covariance using multivariate linear regression on Surrogates of Unwanted Covariance (SUCs), and Principal Component Analysis (PCA). We exemplify the use of RUCova and show that it effectively removes unwanted covariance … Show more

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