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DeepMoDRP: A Multi-Omics-Based Deep Learning Framework for Drug Response Prediction in Brain Cancer.

Molecular informatics 2026 Vol.45(2) p. e70020

Li Y, Shi X, Wang L, Zhang L

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Considering the limited efficacy of existing pharmacotherapies for brain tumors, the development of accurate predictive models is essential for advancing neuro-oncology treatment strategies.

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BibTeX ↓ RIS ↓
APA Li Y, Shi X, et al. (2026). DeepMoDRP: A Multi-Omics-Based Deep Learning Framework for Drug Response Prediction in Brain Cancer.. Molecular informatics, 45(2), e70020. https://doi.org/10.1002/minf.70020
MLA Li Y, et al.. "DeepMoDRP: A Multi-Omics-Based Deep Learning Framework for Drug Response Prediction in Brain Cancer.." Molecular informatics, vol. 45, no. 2, 2026, pp. e70020.
PMID 41692036
DOI 10.1002/minf.70020

Abstract

Considering the limited efficacy of existing pharmacotherapies for brain tumors, the development of accurate predictive models is essential for advancing neuro-oncology treatment strategies. In this article, we introduce a drug response prediction model, DeepMoDRP, specifically designed for brain cancer. This model integrates genomic, transcriptomic, and epigenomic data from various brain tumor cell lines, including low-grade glioma, glioblastoma multiforme, and diffuse large B-cell lymphoma. To address the high-dimensional complexity inherent in gene expression and copy number variations within cell line data, we have integrated sparse autoencoders (AEs) and denoising AEs to reduce noise and redundancy. Meanwhile, one-dimensional convolutional neural networks are utilized to process the low-dimensional mutation and DNA methylation data. Additionally, a multiscale graph neural network is implemented to handle the drug-related data. Finally, fully connected networks are employed to generate predictions of drug responses. A series of experiments were conducted utilizing a brain tumor dataset that was extracted and curated from public databases. The experimental results demonstrate that the proposed DeepMoDRP outperforms the performance of state-of-the-art pan-cancer baseline models in predicting drug responses for brain tumors. The downstream analysis indicates that the DeepMoDRP holds significant promise for the treatment of brain tumors.

MeSH Terms

Humans; Deep Learning; Brain Neoplasms; Antineoplastic Agents; Genomics; Cell Line, Tumor; Neural Networks, Computer; DNA Methylation; Multiomics

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