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A Machine Learning Approach to Identify the Importance of Novel Features for CRISPR/Cas9 Activity Prediction.

Dhvani Sandip VoraYugesh VermaDurai Sundar
Published in: Biomolecules (2022)
The reprogrammable CRISPR/Cas9 genome editing tool's growing popularity is hindered by unwanted off-target effects. Efforts have been directed toward designing efficient guide RNAs as well as identifying potential off-target threats, yet factors that determine efficiency and off-target activity remain obscure. Based on sequence features, previous machine learning models performed poorly on new datasets, thus there is a need for the incorporation of novel features. The binding energy estimation of the gRNA-DNA hybrid as well as the Cas9-gRNA-DNA hybrid allowed generating better performing machine learning models for the prediction of Cas9 activity. The analysis of feature contribution towards the model output on a limited dataset indicated that energy features played a determining role along with the sequence features. The binding energy features proved essential for the prediction of on-target activity and off-target sites. The plateau, in the performance on unseen datasets, of current machine learning models could be overcome by incorporating novel features, such as binding energy, among others. The models are provided on GitHub (GitHub Inc., San Francisco, CA, USA).
Keyphrases
  • crispr cas
  • genome editing
  • machine learning
  • big data
  • risk assessment
  • cell free
  • transcription factor
  • binding protein
  • amino acid
  • dna binding