Fine-scale cellular deconvolution via generalized maximum entropy on canonical correlation features

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Abstract

We propose a method for estimating probability distributions over single cells, which we apply to fine-scale cellular deconvolution, which quantifies the composition of external bulk RNAseq samples at high resolution (i.e. at the single-cell or neighborhood level). Our method is based on a computationally-efficient convex optimization problem, which is also generalization of the Maximum Entropy method. Our method has a much higher resolution than traditional approaches that require computing gene expression profiles at the cell-type level, and also compares favorably to recent high-resolution cellular deconvolution methods, with orders-of-magnitude speedup in computational efficiency. We implement this method in a Python package quipcell, available at https://github.com/genentech/quipcell .

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last seen: 2026-05-20T01:45:00.602351+00:00