Title
Smart Transfection: In-flow electroporation with self-learning capabilities using integrated impedance
cytometry modalities (Research)
Abstract
Genetic cell engineering has become of increasing interest due to its successful implementation in
clinical applications, particularly cell therapies. A crucial step is the transfection of exogenous cargo
into living cells. Viral vectors are one of the most widely adopted methods for transfection. However,
the associated safety risks, high cost, and limited scalability of the manufacturing process has
researchers exploring alternatives. A common method is electroporation (EP); by exposing cells to an
electric field, nanometer sized pores are formed in the cell membrane through which exogenous
cargo flows into the cell. Poration tolerance depends on the cell type, individual cell characteristics
and environmental conditions, and is determined through laborious experimentation. This is
especially problematic for time-sensitive applications and when cell availability is limited, both of
which hold true for cell therapies. In this project we aim to develop an in-flow EP technology with
self-learning capabilities for the optimal transfection of cells. We will achieve this by integrating
impedance cytometry modalities at different stages of the EP process. Data obtained from these
modalities will enable us to develop data processing algorithms to finely control EP and immediately
assess EP performance on the cellular level. The project greatly benefits the pharmaceutical industry
and beyond, enabling faster development and manufacturing of new therapeutics.
Period of project
01 November 2023 - 31 October 2027