KinPred-RNA—kinase activity inference and cancer type classification using machine learning on RNA-seq data

Yuntian Zhang, Lantian Yao, Chia Ru Chung, Yixian Huang, Shangfu Li, Wenyang Zhang, Yuxuan Pang, Tzong Yi Lee*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Kinases as important enzymes can transfer phosphate groups from high-energy and phosphate-donating molecules to specific substrates and play essential roles in various cellular processes. Existing algorithms for kinase activity from phosphorylated proteomics data are often costly, requiring valuable samples. Moreover, methods to extract kinase activities from bulk RNA sequencing data remain undeveloped. In this study, we propose a computational framework KinPred-RNA to derive kinase activities from bulk RNA-sequencing data in cancer samples. KinPred-RNA framework, using the extreme gradient boosting (XGBoost) regression model, outperforms random forest regression, multiple linear regression, and support vector machine regression models in predicting kinase activities from cancer-related RNA sequencing data. Efficient gene signatures from the LINCS-L1000 dataset were used as inputs for KinPred-RNA. The results highlight its potential to be related to biological function. In conclusion, KinPred RNA constitutes a significant advance in cancer research by potentially facilitating the identification of cancer.

Original languageEnglish
Article number109333
JournaliScience
Volume27
Issue number4
DOIs
StatePublished - 19 Apr 2024

Keywords

  • Cancer
  • Machine learning

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