IC2Bert: masked gene expression pretraining and supervised fine tuning for robust immune checkpoint blockade (ICB) response prediction

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Title
IC2Bert: masked gene expression pretraining and supervised fine tuning for robust immune checkpoint blockade (ICB) response prediction
Author(s)
S Park; Seon-Kyu Kim; P Jiang
Bibliographic Citation
Scientific Reports, vol. 15, pp. 28044-28044
Publication Year
2025
Abstract
Bulk RNA-seq-based prediction of immune checkpoint blockade (ICB) responses has been extensively studied to distinguish responders from non-responders. However, cohort heterogeneity remains a major challenge, hindering the robustness and generalizability of predictive models across diverse RNA-seq datasets. In this study, we present IC2Bert, a novel model that employs masked gene expression pretraining combined with domain-specific supervised fine-tuning to enhance predictive robustness across heterogeneous ICB response cohorts. To ensure an objective evaluation, we assessed the model’s performance using a Leave-One-Dataset-Out Cross-Validation (LODOCV) approach. IC2Bert demonstrated significantly improved predictive accuracy and robustness compared to existing methods, effectively addressing the challenges posed by cohort heterogeneity. The IC2Bert model and its source code are publicly available on GitHub: https://github.com/data2intelligence/ic2bert.
Keyword
Immune checkpoint blockadeBulk RNAseqSelf-supervised pretrainingSupervised fine-tuningLeave-one-dataset-out cross-validation (LODOCV)
ISSN
2045-2322
Publisher
Springer-Nature Pub Group
Full Text Link
http://dx.doi.org/10.1038/s41598-025-14166-x
Type
Article
Appears in Collections:
Division of A.I. & Biomedical Research > Genomic Medicine Research Center > 1. Journal Articles
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