# Personalized gene expression prediction in the era of deep learning: a review

**Authors:** Viksar Dubey, Li Shen

PMC · DOI: 10.1093/bib/bbag022 · Briefings in Bioinformatics · 2026-01-30

## TL;DR

This paper reviews how deep learning models can predict gene expression from genomic sequences, but highlights challenges in adapting them to personal genomic data.

## Contribution

The paper provides a comparative analysis of deep learning and linear models for personalized gene expression prediction, emphasizing current limitations and novel fine-tuning strategies.

## Key findings

- Deep learning models trained on reference genomes struggle with personal genomic data.
- Linear models often outperform deep learning models in cross-individual gene expression prediction.
- Fine-tuning strategies and genomic language models are emerging solutions to improve personalization.

## Abstract

Predicting gene expression from genomic sequences is a central goal in computational genomics. Recent advances have demonstrated that deep learning models trained on large-scale epigenomic datasets hold significant promise for this task. However, their success heavily depends on how they are applied: most models are trained exclusively on a reference genome, limiting their ability to capture individual-specific genetic variation. Consequently, while these models perform well on reference genomes, they often struggle when applied to personal genomic data. This review discusses recent efforts to overcome these limitations and explores methods aimed at improving the prediction of personalized gene expression. In particular, we compare the performance of deep learning models with traditional expression quantitative trait loci-based linear approaches, examining novel fine-tuning strategies, and highlighting the emergence of genomic language models. Across multiple studies, we find that deep learning models still face significant challenges in outperforming linear models for cross-individual gene expression prediction. Despite ongoing advances in model architecture and training methodology, accurately and robustly predicting personalized gene expression remains an open challenge in the field.

## Full text

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## Figures

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## References

68 references — full list in the complete paper: https://tomesphere.com/paper/PMC12856953/full.md

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Source: https://tomesphere.com/paper/PMC12856953