English

Transcripts per million ratio: applying distribution-aware normalisation over the popular TPM method

Other Quantitative Biology 2022-09-02 v2

Abstract

Current popular methods in literature of RNA sequencing normalisation do not account for gene length when compared across samples, whilst adjusting for count biases in the data. This creates a gap in the normalisation as bigger genes in RNA sequencing accumulate more reads due to shotgun sequencing methods. As a result, the proportions of these reads inter-sample are not properly accounted for in current normalisation methods. Alternatively, methods which account for gene length do not account for the pan-sample biases in the data by accounting for a central read average. Thus, in order to fill in the gap in the literature, we propose a novel method of Transcripts Per Million Ratio and its relatives in RNA-sequencing differential expression normalisation that can be used in different conditions, which takes into account the gene length as well as relative expression in normalisation.

Keywords

Cite

@article{arxiv.2205.02844,
  title  = {Transcripts per million ratio: applying distribution-aware normalisation over the popular TPM method},
  author = {Hilbert Lam Yuen In and Robbe Pincket},
  journal= {arXiv preprint arXiv:2205.02844},
  year   = {2022}
}
R2 v1 2026-06-24T11:08:37.253Z