vector-engineering/fit4function
Systematic Multi-Trait AAV Capsid Engineering for Efficient Gene Delivery (Eid et al., Nature Communications, 2024)
Fit4Function helps gene therapy researchers systematically design and optimize AAV capsid variants for more efficient gene delivery. It takes experimental data on AAV capsid production and performance in various assays, then uses machine learning to predict how new variants will perform. The output is a set of optimized capsid designs, along with models and data to support gene therapy development.
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Use this if you are a gene therapy scientist or bioengineer looking to improve the efficiency and specificity of AAV vectors for gene delivery applications.
Not ideal if you are solely interested in basic molecular biology research without a focus on AAV capsid engineering or therapeutic application.
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Aug 26, 2024
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