This is a broad portfolio that includes all aspects of life sciences. Some of the representative areas are bioengineering (brain computer interface, chips to grow and monitor cellular activities, and bioprinting), vaccines and therapeutics (nanolipoprotein particles for the delivery of vaccines and drugs, carbon nanotubes for drug delivery, KRAS inhibitors, and anti-bacterial minerals), medical diagnostics (molecular diagnostics, point-of-care testing, imaging, and forensic), life science instrumentation (PCR instruments, rapid PCR, fluid partitioning, microfluidics, and biosensors), and methods for the extraction and purification of rare earth elements using lanmodulin and other natural/synthetic bacterial proteins.
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Funding from the Joint Program Executive Office for Chemical, Biological, Radiological and Nuclear Defense (JPEO-CBRND) will expand A-Alpha's partnership with Lawrence Livermore National Laboratory (LLNL) in support of the Generative Unconstrained Intelligent Drug Engineering (GUIDE) program. This announcement follows two years of successful collaboration between A-Alpha and LLNL – beginning with coronaviruses and expanding to multiple undisclosed pathogen families of concern – in which A-Alpha’s AlphaSeq data has been used to train ML models that predict antibody-antigen binding.
To learn more, see today’s press release here and coverage in Genetic Engineering & Biotechnology News.
In a groundbreaking development for addressing future viral pandemics, a multi-institutional team involving Lawrence Livermore National Laboratory (LLNL) researchers has successfully combined an artificial intelligence (AI)-backed platform with supercomputing to redesign and restore the effectiveness of antibodies whose ability to fight viruses has been compromised by viral evolution.
The team’s research is published in the journal Nature and showcases a novel antibody design platform comprising experimental data, structural biology, bioinformatic modeling and molecular simulations — driven by a machine-learning algorithm.
A Lawrence Livermore National Laboratory (LLNL) researcher and a colleague who helped him and his team commercialize their biomedical technology have garnered a national technology transfer award.
The award, from the Federal Laboratory Consortium (FLC), represents the 42nd technology transfer award that LLNL has won from the FLC since 1985.