Improved prediction of smoking status via isoform-aware RNA-seq deep learning models
Zifeng Wang,
Aria Masoomi,
Zhonghui Xu,
Adel Boueiz,
Sool Lee,
Tingting Zhao,
Russell Bowler,
Michael Cho,
Edwin K Silverman,
Craig Hersh,
Jennifer Dy and
Peter J Castaldi
PLOS Computational Biology, 2021, vol. 17, issue 10, 1-19
Abstract:
Most predictive models based on gene expression data do not leverage information related to gene splicing, despite the fact that splicing is a fundamental feature of eukaryotic gene expression. Cigarette smoking is an important environmental risk factor for many diseases, and it has profound effects on gene expression. Using smoking status as a prediction target, we developed deep neural network predictive models using gene, exon, and isoform level quantifications from RNA sequencing data in 2,557 subjects in the COPDGene Study. We observed that models using exon and isoform quantifications clearly outperformed gene-level models when using data from 5 genes from a previously published prediction model. Whereas the test set performance of the previously published model was 0.82 in the original publication, our exon-based models including an exon-to-isoform mapping layer achieved a test set AUC (area under the receiver operating characteristic) of 0.88, which improved to an AUC of 0.94 using exon quantifications from a larger set of genes. Isoform variability is an important source of latent information in RNA-seq data that can be used to improve clinical prediction models.Author summary: Predictive models based on gene expression are already a part of medical decision making for selected situations such as early breast cancer treatment. Most of these models are based on measures that do not capture critical aspects of gene splicing, but with RNA sequencing it is possible to capture some of these aspects of alternative splicing and use them to improve clinical predictions. Building on previous models to predict cigarette smoking status, we show that measures of alternative splicing significantly improve the accuracy of these predictive models.
Date: 2021
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Persistent link: https://EconPapers.repec.org/RePEc:plo:pcbi00:1009433
DOI: 10.1371/journal.pcbi.1009433
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