Lipid nanoparticles (LNPs) are the leading technology for RNA delivery, given the success of the Pfizer/BioNTech and Moderna COVID-19 mRNA (mRNA) vaccines, and small interfering RNA (siRNA) therapies (patisiran). However, optimization of LNP process parameters and compositions for larger RNA payloads such as self-amplifying RNA (saRNA), which can have complex secondary structures, have not been carried out. Furthermore, the interactions between process parameters, critical quality attributes (CQAs), and function, such as protein expression and cellular activation, are not well understood. Here, we used two iterations of design of experiments (DoE) (definitive screening design and Box−Behnken design) to optimize saRNA formulations using the leading, FDA-approved ionizable lipids (MC3, ALC-0315, and SM-102). We observed that PEG is required to preserve the CQAs and that saRNA is more challenging to encapsulate and preserve than mRNA. We identified three formulations to minimize cellular activation, maximize cellular activation, or meet a CQA profile while maximizing protein expression. The significant parameters and design of the response surface modeling and multiple response optimization may be useful for designing formulations for a range of applications, such as vaccines or protein replacement therapies, for larger RNA cargoes.
In this study, we
examine the suitability of desorption electro-flow
focusing ionization (DEFFI) for mass spectrometry imaging (MSI) of
biological tissue. We also compare the performance of desorption electrospray
ionization (DESI) with and without the flow focusing setup. The main
potential advantages of applying the flow focusing mechanism in DESI
is its rotationally symmetric electrospray jet, higher intensity,
more controllable parameters, and better portability due to the robustness
of the sprayer. The parameters for DEFFI have therefore been thoroughly
optimized, primarily for spatial resolution but also for intensity.
Once the parameters have been optimized, DEFFI produces similar images
to the existing DESI. MS images for mouse brain samples, acquired
at a nominal pixel size of 50 μm, are comparable for both DESI
setups, albeit the new sprayer design yields better sensitivity. Furthermore,
the two methods are compared with regard to spectral intensity as
well as the area of the desorbed crater on rhodamine-coated slides.
Overall, the implementation of a flow focusing mechanism in DESI is
shown to be highly suitable for imaging biological tissue and has
potential to overcome some of the shortcomings experienced with the
current geometrical design of DESI.
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