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Deep learning image recognition enables efficient genome editing in zebrafish by automated injections

Authors: 
Cordero-Maldonado ML, Perathoner S, van der Kolk K-J, Boland R, Heins-Marroquin U, Spaink HP, Meijer AH, Crawford AD, de Sonneville J
Citation: 
PLoS One. 2019 Jan 7;14(1):e0202377. doi: 10.1371/journal.pone.0202377. eCollection 2019.
Abstract: 
One of the most popular techniques in zebrafish research is microinjection. This is a rapid and efficient way to genetically manipulate early developing embryos, and to introduce microbes, chemical compounds, nanoparticles or tracers at larval stages. Here we demonstrate the development of a machine learning software that allows for microinjection at a trained target site in zebrafish eggs at unprecedented speed. The software is based on the open-source deep-learning library Inception v3. In a first step, the software distinguishes wells containing embryos at one-cell stage from wells to be skipped with an accuracy of 93%. A second step was developed to pinpoint the injection site. Deep learning allows to predict this location on average within 42 μm to manually annotated sites. Using a Graphics Processing Unit (GPU), both steps together take less than 100 milliseconds. We first tested our system by injecting a morpholino into the middle of the yolk and found that the automated injection efficiency is as efficient as manual injection (~ 80%). Next, we tested both CRISPR/Cas9 and DNA construct injections into the zygote and obtained a comparable efficiency to that of an experienced experimentalist. Combined with a higher throughput, this results in a higher yield. Hence, the automated injection of CRISPR/Cas9 will allow high-throughput applications to knock out and knock in relevant genes to study their mechanisms or pathways of interest in diverse areas of biomedical research.
Epub: 
Not Epub
Organism or Cell Type: 
zebrafish
Delivery Method: 
microinjection