Journal article
PredPromoter-MF(2L): A Novel Approach of Promoter Prediction Based on Multi-source Feature Fusion and Deep Forest
M Wang, F Li, H Wu, Q Liu, S Li
Interdisciplinary Sciences Computational Life Sciences | SPRINGER HEIDELBERG | Published : 2022
Abstract
Abstract: Promoters short DNA sequences play vital roles in initiating gene transcription. However, it remains a challenge to identify promoters using conventional experiment techniques in a high-throughput manner. To this end, several computational predictors based on machine learning models have been developed, while their performance is unsatisfactory. In this study, we proposed a novel two-layer predictor, called PredPromoter-MF(2L), based on multi-source feature fusion and ensemble learning. PredPromoter-MF(2L) was developed based on various deep features learned by a pre-trained deep learning network model and sequence-derived features. Feature selection based on XGBoost was applied to..
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Awarded by National Natural Science Foundation of China
Funding Acknowledgements
This work has been supported by the National Natural Science Foundation of China (61972322) and the Natural Science Foundation of Shaanxi Province (2021JM-110).