Optimizing sample size for supervised machine learning with bulk transcriptomic sequencing: A learning curve approach Journal Article


Authors: Qi, Y.; Wang, X.; Qin, L. X.
Article Title: Optimizing sample size for supervised machine learning with bulk transcriptomic sequencing: A learning curve approach
Abstract: Accurate sample classification using transcriptomics data is crucial for advancing personalized medicine. Achieving this goal necessitates determining a suitable sample size that ensures adequate classification accuracy without undue resource allocation. Current sample size calculation methods rely on assumptions and algorithms that may not align with supervised machine learning techniques for sample classification. Addressing this critical methodological gap, we present a novel computational approach that establishes the accuracy-versus-sample size relationship by employing a data augmentation strategy followed by fitting a learning curve. We comprehensively evaluated its performance for microRNA and RNA sequencing data, considering diverse data characteristics and algorithm configurations, based on a spectrum of evaluation metrics. To foster accessibility and reproducibility, the Python and R code for implementing our approach is available on GitHub. Its deployment will significantly facilitate the adoption of machine learning in transcriptomics studies and accelerate their translation into clinically useful classifiers for personalized treatment. © 2025 The Author(s).
Keywords: genetics; microrna; gene expression profiling; computational biology; algorithms; transcriptomics; algorithm; micrornas; sequence analysis, rna; bioinformatics; transcriptome; sample size; procedures; machine learning; humans; human; rna sequencing; supervised machine learning; bulk sequencing
Journal Title: Briefings in Bioinformatics
Volume: 26
Issue: 2
ISSN: 1467-5463
Publisher: Oxford University Press  
Date Published: 2025-03-01
Start Page: bbaf097
Language: English
DOI: 10.1093/bib/bbaf097
PUBMED: 40072846
PROVIDER: scopus
PMCID: PMC11899567
DOI/URL:
Notes: Article -- MSK Cancer Center Support Grant (P30 CA008748) acknowledged in PubMed and PDF (as 'CA008748') -- MSK corresponding author is Li-Xuan Qin -- Source: Scopus
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  1. Li-Xuan Qin
    191 Qin