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Length biases in single-cell RNA sequencing of pre-mRNA.


ABSTRACT: Single-cell RNA sequencing data can be modeled using Markov chains to yield genome-wide insights into transcriptional physics. However, quantitative inference with such data requires careful assessment of noise sources. We find that long pre-mRNA transcripts are over-represented in sequencing data. To explain this trend, we propose a length-based model of capture bias, which may produce false-positive observations. We solve this model and use it to find concordant parameter trends as well as systematic, mechanistically interpretable technical and biological differences in paired data sets.

SUBMITTER: Gorin G 

PROVIDER: S-EPMC9843228 | biostudies-literature | 2023 Mar

REPOSITORIES: biostudies-literature

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Length biases in single-cell RNA sequencing of pre-mRNA.

Gorin Gennady G   Pachter Lior L  

Biophysical reports 20221227 1


Single-cell RNA sequencing data can be modeled using Markov chains to yield genome-wide insights into transcriptional physics. However, quantitative inference with such data requires careful assessment of noise sources. We find that long pre-mRNA transcripts are over-represented in sequencing data. To explain this trend, we propose a length-based model of capture bias, which may produce false-positive observations. We solve this model and use it to find concordant parameter trends as well as sys  ...[more]

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