CNN-XG: A Hybrid Framework for sgRNA On-Target Prediction

Biomolecules. 2022 Mar 7;12(3):409. doi: 10.3390/biom12030409.

Abstract

As the third generation gene editing technology, Crispr/Cas9 has a wide range of applications. The success of Crispr depends on the editing of the target gene via a functional complex of sgRNA and Cas9 proteins. Therefore, highly specific and high on-target cleavage efficiency sgRNA can make this process more accurate and efficient. Although there are already many sophisticated machine learning or deep learning models to predict the on-target cleavage efficiency of sgRNA, prediction accuracy remains to be improved. XGBoost is good at classification as the ensemble model could overcome the deficiency of a single classifier to classify, and we would like to improve the prediction efficiency for sgRNA on-target activity by introducing XGBoost into the model. We present a novel machine learning framework which combines a convolutional neural network (CNN) and XGBoost to predict sgRNA on-target knockout efficacy. Our framework, called CNN-XG, is mainly composed of two parts: a feature extractor CNN is used to automatically extract features from sequences and predictor XGBoost is applied to predict features extracted after convolution. Experiments on commonly used datasets show that CNN-XG performed significantly better than other existing frameworks in the predicted classification mode.

Keywords: Crispr/Cas9; XGBoost; deep learning; on-target; sgRNA.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • CRISPR-Associated Protein 9 / genetics
  • CRISPR-Associated Protein 9 / metabolism
  • CRISPR-Cas Systems* / genetics
  • Gene Editing
  • Neural Networks, Computer
  • RNA, Guide, CRISPR-Cas Systems* / genetics
  • RNA, Guide, CRISPR-Cas Systems* / metabolism

Substances

  • RNA, Guide, CRISPR-Cas Systems
  • CRISPR-Associated Protein 9