News
November 6, 2025
Launching the first large-scale scientific initiative combining frontier AI with frontier biology to solve disease
To power this initiative, we are uniting our scientific teams as a single organization: Biohub.
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Chronicle of Philanthropy: How Small Grants Can Bridge a Gap — and Lead to Big Changes
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Inside Philanthropy: CZI Is Poised to Become the World’s Largest Private Biomedical Funder. What Might That Look Like?
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New Biohub Investigators Will Engineer Immune-Cell ‘Scouts’ to Detect Disease at Earliest Stages
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Inside Philanthropy: New Gene Therapy Trial Moves Forward Thanks to Chan Zuckerberg Initiative
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The Scientist: Three amino acids improve lipid nanoparticle therapy delivery to cells
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Simple ‘Cocktail’ of Amino Acids Dramatically Boosts Power of Anti-Inflammatory mRNA Therapies and CRISPR Gene Editing
Adding three common amino acids to lipid nanoparticle injections increased mRNA delivery up to 20-fold, pushed gene editing efficiency to nearly 90%, and suppressed inflammation in a model of acute liver disease.
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Forbes: Gene Editing Has Struggled To Go Commercial. This Nobel Laureate Has A $1 Billion Plan To Fix That.
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TIME: 100 Health 2026
In today's changing health landscape, these leaders are advancing care, shaping policy, and driving innovations that transform lives.
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Scott Fraser: 5 ways imaging and AI are capturing biology across billion-fold scales
Dynamic imaging technologies are allowing us to watch biology unfold in real time and with unprecedented detail, shares Biohub’s president of imaging.
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Andrea Califano: 6 strategies for using AI to reprogram the immune system
The convergence of machine learning, synthetic biology, and immunology is changing what's possible for human health.
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Shana Kelley: 5 new ways to measure inflammation
With AI-integrated platforms to watch immune cells in action, we will be able to intervene in inflammation before it becomes disease, says Biohub’s president of bioengineering.
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GEN: Tahoe, Arc Institute, and Biohub join forces on massive virtual cell dataset