2024
DOI: 10.1021/acssynbio.4c00542
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Balanced Training Sets Improve Deep Learning-Based Prediction of CRISPR sgRNA Activity

Varun Trivedi,
Amirsadra Mohseni,
Stefano Lonardi
et al.

Abstract: CRISPR-Cas systems have transformed the field of synthetic biology by providing a versatile method for genome editing. The efficiency of CRISPR systems is largely dependent on the sequence of the constituent sgRNA, necessitating the development of computational methods for designing active sgRNAs. While deep learning-based models have shown promise in predicting sgRNA activity, the accuracy of prediction is primarily governed by the data set used in model training. Here, we trained a convolutional neural netwo… Show more

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