Literature DB >> 32111152

Comparison of pathway and gene-level models for cancer prognosis prediction.

Xingyu Zheng1, Christopher I Amos1,2, H Robert Frost3.   

Abstract

BACKGROUND: Cancer prognosis prediction is valuable for patients and clinicians because it allows them to appropriately manage care. A promising direction for improving the performance and interpretation of expression-based predictive models involves the aggregation of gene-level data into biological pathways. While many studies have used pathway-level predictors for cancer survival analysis, a comprehensive comparison of pathway-level and gene-level prognostic models has not been performed. To address this gap, we characterized the performance of penalized Cox proportional hazard models built using either pathway- or gene-level predictors for the cancers profiled in The Cancer Genome Atlas (TCGA) and pathways from the Molecular Signatures Database (MSigDB).
RESULTS: When analyzing TCGA data, we found that pathway-level models are more parsimonious, more robust, more computationally efficient and easier to interpret than gene-level models with similar predictive performance. For example, both pathway-level and gene-level models have an average Cox concordance index of ~ 0.85 for the TCGA glioma cohort, however, the gene-level model has twice as many predictors on average, the predictor composition is less stable across cross-validation folds and estimation takes 40 times as long as compared to the pathway-level model. When the complex correlation structure of the data is broken by permutation, the pathway-level model has greater predictive performance while still retaining superior interpretative power, robustness, parsimony and computational efficiency relative to the gene-level models. For example, the average concordance index of the pathway-level model increases to 0.88 while the gene-level model falls to 0.56 for the TCGA glioma cohort using survival times simulated from uncorrelated gene expression data.
CONCLUSION: The results of this study show that when the correlations among gene expression values are low, pathway-level analyses can yield better predictive performance, greater interpretative power, more robust models and less computational cost relative to a gene-level model. When correlations among genes are high, a pathway-level analysis provides equivalent predictive power compared to a gene-level analysis while retaining the advantages of interpretability, robustness and computational efficiency.

Entities:  

Keywords:  Cancer prognosis prediction; Gene expression data; Inter-gene correlation; L1 penalized regression model; Pathway analysis

Year:  2020        PMID: 32111152     DOI: 10.1186/s12859-020-3423-z

Source DB:  PubMed          Journal:  BMC Bioinformatics        ISSN: 1471-2105            Impact factor:   3.169


  9 in total

1.  Construction and Evaluation of Robust Interpretation Models for Breast Cancer Metastasis Prediction.

Authors:  Nahim Adnan; Maryam Zand; Tim H M Huang; Jianhua Ruan
Journal:  IEEE/ACM Trans Comput Biol Bioinform       Date:  2022-06-03       Impact factor: 3.702

2.  cSurvival: a web resource for biomarker interactions in cancer outcomes and in cell lines.

Authors:  Xuanjin Cheng; Yongxing Liu; Jiahe Wang; Yujie Chen; Andrew Gordon Robertson; Xuekui Zhang; Steven J M Jones; Stefan Taubert
Journal:  Brief Bioinform       Date:  2022-05-13       Impact factor: 13.994

3.  Cancer prognosis prediction using somatic point mutation and copy number variation data: a comparison of gene-level and pathway-based models.

Authors:  Xingyu Zheng; Christopher I Amos; H Robert Frost
Journal:  BMC Bioinformatics       Date:  2020-10-20       Impact factor: 3.169

4.  Exploring Pathway-Based Group Lasso for Cancer Survival Analysis: A Special Case of Multi-Task Learning.

Authors:  Gabriela Malenová; Daniel Rowson; Valentina Boeva
Journal:  Front Genet       Date:  2021-11-29       Impact factor: 4.599

5.  Pan-cancer analysis of pathway-based gene expression pattern at the individual level reveals biomarkers of clinical prognosis.

Authors:  Kenong Su; Qi Yu; Ronglai Shen; Shi-Yong Sun; Carlos S Moreno; Xiaoxian Li; Zhaohui S Qin
Journal:  Cell Rep Methods       Date:  2021-07-23

6.  Pan-cancer evaluation of gene expression and somatic alteration data for cancer prognosis prediction.

Authors:  Xingyu Zheng; Christopher I Amos; H Robert Frost
Journal:  BMC Cancer       Date:  2021-09-25       Impact factor: 4.430

7.  SWAN pathway-network identification of common aneuploidy-based oncogenic drivers.

Authors:  Robert R Bowers; Christian M Jones; Edwin A Paz; John K Barrows; Kent E Armeson; David T Long; Joe R Delaney
Journal:  Nucleic Acids Res       Date:  2022-04-22       Impact factor: 19.160

8.  Survival-related genes are diversified across cancers but generally enriched in cancer hallmark pathways.

Authors:  Po-Wen Wang; Yi-Hsun Su; Po-Hao Chou; Ming-Yueh Huang; Ting-Wen Chen
Journal:  BMC Genomics       Date:  2022-05-04       Impact factor: 4.547

9.  Latent Variables Capture Pathway-Level Points of Departure in High-Throughput Toxicogenomic Data.

Authors:  Danilo Basili; Joe Reynolds; Jade Houghton; Sophie Malcomber; Bryant Chambers; Mark Liddell; Iris Muller; Andrew White; Imran Shah; Logan J Everett; Alistair Middleton; Andreas Bender
Journal:  Chem Res Toxicol       Date:  2022-03-25       Impact factor: 3.973

  9 in total

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