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Automated high-throughput genome editing platform with an AI learning in situ prediction model

Biology

Automated high-throughput genome editing platform with an AI learning in situ prediction model

S. Li, J. An, et al.

Discover the groundbreaking automated high-throughput platform for genome editing, which can edit thousands of samples in just a week! This innovative system integrates gRNA design and a machine learning model to predict base editing performance. Conducted by a collaborative team of leading researchers including Siwei Li, Jingjing An, and Meng Wang, this study accelerates the development of BE-based genetic therapies.

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~3 min • Beginner • English
Abstract
A great number of cell disease models with pathogenic single-nucleotide variants (SNVs) are needed for genome-editing therapeutics and basic research, but traditional generation of these models is manual, time-consuming, costly, and error-prone. The authors devise an automated high-throughput platform that can automatically edit thousands of samples within a week, yielding edited cells with high efficiency. Leveraging the large in situ genomic dataset generated by the platform, they introduce the Chromatin Accessibility Enabled Learning Model (CAELM), which incorporates both chromatin accessibility and sequence context to predict cytosine base editor (CBE) performance and accurately forecasts in situ base editing outcomes. This work is expected to accelerate development of base editor-based genetic therapies.
Publisher
Nature Communications
Published On
Nov 30, 2022
Authors
Siwei Li, Jingjing An, Yaqiu Li, Xiagu Zhu, Dongdong Zhao, Lixian Wang, Yonghui Sun, Yuanzhao Yang, Changhao Bi, Xueli Zhang, Meng Wang
Tags
genome editing
high-throughput platform
gRNA design
base editing
machine learning
genetic therapies
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