Zhen Cao1,2, Shihua Zhang1,2,3. 1. NCMIS, CEMS, RCSDS, Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing, China. 2. School of Mathematical Sciences, University of Chinese Academy of Sciences, Beijing, China. 3. Center for Excellence in Animal Evolution and Genetics, Chinese Academy of Sciences, Kunming, China.
Abstract
MOTIVATION: With the accumulation of DNA sequencing data, convolution neural network (CNN) based methods such as DeepBind and DeepSEA have achieved great success for predicting the function of primary DNA sequences. Previous studies confirm the importance of utilizing the reverse complement and flanking DNA sequences, which has a natural connection with data augmentation. However, it is not fully understood how these DNA sequences work during model training and testing. RESULTS: In this study, we proposed several CNN tricks to improve the DNA sequence related prediction tasks and took the DNA-protein binding prediction as an illustrative task for demonstration. Different from the DeepBind, we treated the reverse complement DNA sequence as another sample, which enables the CNN model to automatically learn the complex relationships between the double strand DNA sequences. This trick promotes the using of deeper CNN models, improving the prediction performance. Next, we augmented the training sets by extending the DNA sequences and cropping each one to three shorter sequences. This approach greatly improves the prediction due to more environmental information from extending step and strong regularization effect of the cropping step. Moreover, this practice fits well with wider CNN models, which also increases the prediction accuracy. On the basis of DNA sequence augmentation, we integrated the results of different effective CNN models to mine the prediction potential of primary DNA sequences. On 156 datasets of predicting DNA-protein binding, our final prediction significantly outperformed the state-of-the-art results with an average AUC increase of 0.057 (P-value = 6 × 10-62). AVAILABILITY AND IMPLEMENTATION: Source codes are available at https://github.com/zhanglabtools/DNADataAugmentation. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
MOTIVATION: With the accumulation of DNA sequencing data, convolution neural network (CNN) based methods such as DeepBind and DeepSEA have achieved great success for predicting the function of primary DNA sequences. Previous studies confirm the importance of utilizing the reverse complement and flanking DNA sequences, which has a natural connection with data augmentation. However, it is not fully understood how these DNA sequences work during model training and testing. RESULTS: In this study, we proposed several CNN tricks to improve the DNA sequence related prediction tasks and took the DNA-protein binding prediction as an illustrative task for demonstration. Different from the DeepBind, we treated the reverse complement DNA sequence as another sample, which enables the CNN model to automatically learn the complex relationships between the double strand DNA sequences. This trick promotes the using of deeper CNN models, improving the prediction performance. Next, we augmented the training sets by extending the DNA sequences and cropping each one to three shorter sequences. This approach greatly improves the prediction due to more environmental information from extending step and strong regularization effect of the cropping step. Moreover, this practice fits well with wider CNN models, which also increases the prediction accuracy. On the basis of DNA sequence augmentation, we integrated the results of different effective CNN models to mine the prediction potential of primary DNA sequences. On 156 datasets of predicting DNA-protein binding, our final prediction significantly outperformed the state-of-the-art results with an average AUC increase of 0.057 (P-value = 6 × 10-62). AVAILABILITY AND IMPLEMENTATION: Source codes are available at https://github.com/zhanglabtools/DNADataAugmentation. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
Authors: Tiago L Passafaro; Fernando B Lopes; João R R Dórea; Mark Craven; Vivian Breen; Rachel J Hawken; Guilherme J M Rosa Journal: BMC Genomics Date: 2020-11-09 Impact factor: 3.969
Authors: Ali Douaki; Denis Garoli; A K M Sarwar Inam; Martina Aurora Costa Angeli; Giuseppe Cantarella; Walter Rocchia; Jiahai Wang; Luisa Petti; Paolo Lugli Journal: Biosensors (Basel) Date: 2022-07-27