Computational Prediction and Interpretation of Cell-specific Replication Origin Sites from Multiple Eukaryotes by Exploiting Stacking Framework
Overview
Affiliations
Origins of replication sites (ORIs), which refers to the initiative locations of genomic DNA replication, play essential roles in DNA replication process. Detection of ORIs' distribution in genome scale is one of key steps to in-depth understanding their regulation mechanisms. In this study, we presented a novel machine learning-based approach called Stack-ORI encompassing 10 cell-specific prediction models for identifying ORIs from four different eukaryotic species (Homo sapiens, Mus musculus, Drosophila melanogaster and Arabidopsis thaliana). For each cell-specific model, we employed 12 feature encoding schemes that cover nucleic acid composition, position-specific and physicochemical properties information. The optimal feature set was identified from each encoding individually and developed their respective baseline models using the eXtreme Gradient Boosting (XGBoost) classifier. Subsequently, the predicted scores of 12 baseline models are integrated as a novel feature vector to train XGBoost and develop the final model. Extensive experimental results show that Stack-ORI achieves significantly better performance as compared with their baseline models on both training and independent datasets. Interestingly, Stack-ORI consistently outperforms existing predictor in all cell-specific models, not only on training but also on independent test. Moreover, our novel approach provides necessary interpretations that help understanding model success by leveraging the powerful SHapley Additive exPlanation algorithm, thus underlining the most important feature encoding schemes significant for predicting cell-specific ORIs.
Conotoxins: Classification, Prediction, and Future Directions in Bioinformatics.
Li R, Yu J, Ye D, Liu S, Zhang H, Lin H Toxins (Basel). 2025; 17(2).
PMID: 39998095 PMC: 11860864. DOI: 10.3390/toxins17020078.
Hu W, Yue Y, Yan R, Guan L, Li M BMC Biol. 2025; 23(1):47.
PMID: 39984880 PMC: 11846348. DOI: 10.1186/s12915-025-02148-4.
UniAMP: enhancing AMP prediction using deep neural networks with inferred information of peptides.
Chen Z, Ji C, Xu W, Gao J, Huang J, Xu H BMC Bioinformatics. 2025; 26(1):10.
PMID: 39799358 PMC: 11725221. DOI: 10.1186/s12859-025-06033-3.
Lai H, Zhu T, Xie S, Luo X, Hong F, Luo D Int J Mol Sci. 2025; 25(24.
PMID: 39769436 PMC: 11678915. DOI: 10.3390/ijms252413674.
Meng C, Hou Y, Zou Q, Shi L, Su X, Ju Y Genomics Inform. 2024; 22(1):29.
PMID: 39633440 PMC: 11616364. DOI: 10.1186/s44342-024-00026-z.