Germinal: open-source nanobody design from Stanford/Arc Institute. 4-22% BLI success rates, best affinities 140-560 nM across 4 targets.
Solid PD-L1 epitope evidence but 12 validation gaps.
Full analysis: medium.com/@enginyapici/2b6dfac3140c
#ProteinDesign #Nanobodies #AIxBio
I analyzed BindCraft paper over the weekend:
- 65 binders across 12 targets.
- Crystal/Cryo-EM structures and functional data look good.
- In the supplementary CSV: only 20 have KD measurements.
- Most targets got 1 affinity value or none.
medium.com/@enginyapici...
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What should I analyze next?
Analyzed Absci's Origin-1 antibody platform.
5 binders (1.4-6.1 µM parent affinities, 89 nM best optimized). Two cryo-EM structures validate binding modes.
Major gaps: no epitope validation for best hits, missing controls, hit count discrepancies.
Full analysis: medium.com/@enginyapici...
RFdiffusion3: One DNA binder tested (5.89 µM affinity, no specificity controls). 35/190 enzymes active (no catalytically-dead mutants).
RFdiffusion1 had cryo-EM structures and nM binders. RFdiffusion2 had crystal structures and mutagenesis.
medium.com/@enginyapici...
#ProteinDesign #DNABinding
Latent-X2 is the first AI antibody paper with immunogenicity data. They published sequences and designed binders to multiple targets. But tested only 4 VHHs from 1 target in wrong format (Fc-fusion not naked VHH). Donor panel biased (60% B44, 40% B08 HLA).
Full analysis: medium.com/@enginyapici...
Analyzed MIT's BoltzGen: open-source binder design across proteins, peptides, nanobodies, small molecules.
66% on novel targets, 19.5% E. coli inhibitors, functional peptide neutralizers.
Missing: epitope validation, filter transparency, comparison experiments.
medium.com/@enginyapici...
Nabla Bio's JAM-2 claims 30-70% epitope coverage. But all designs tested against same full-length antigen with no binning experiments. How do we know they're binding different epitopes?
Six validation gaps analyzed: medium.com/@enginyapici...
#AntibodyDesign #DrugDiscovery #ProteinEngineering #AI
"AI designs therapeutic antibodies" 🤨
*reads 31-page Chai Discovery paper*
Okay, 88 functional mAbs with atomic accuracy is legit. But success is template-dependent and varies 4-100% by target.
Full analysis: medium.com/@enginyapici...
#AntibodyDesign #DrugDiscovery #ProteinEngineering
New plate-based HIC assay: 96-well, ~50 µg per sample, full readout in 2 hrs. Better dynamic range than AC-SINS, closer to true aHIC. Flags high-risk antibodies early without the bottleneck.
medium.com/@enginyapici...
Just published: 𝗪𝗵𝗮𝘁 𝗩𝗶𝗿𝘁𝘂𝗮𝗹 𝗖𝗲𝗹𝗹𝘀 𝗦𝘁𝗶𝗹𝗹 𝗡𝗲𝗲𝗱
medium.com/@enginyapici...
Recursion and Valence outline a big vision for modeling biology. This post adds what I think are still-missing layers: metabolite-driven regulation, protein-level function, and failure-based learning.
#Biotech #AIHealthcare
Just wrote about a platform that pulled out 𝟱 𝘀𝘂𝗯-𝗻𝗮𝗻𝗼𝗺𝗼𝗹𝗮𝗿 antibodies in 3 weeks. From plasma cells, not display libraries.
Naturally paired, functionally diverse, and validated early (blockers, agonists, bins).
medium.com/@enginyapici...
#AntibodyDiscovery #DrugDiscovery #Microfluidics #Biotech
65 designs. Single shot. 16 recovered binding to XBB.1.5.
No iterative wet-lab cycles. No massive screens.
They solve three big problems in one shot: escape recovery, developability, diversity.
I broke it down here:
medium.com/@enginyapici...
#AntibodyEngieering #Biotech #AntibodyDiscovery #AI
What if your assay failed because two proteins shared a ligand you didn’t track?
Entabolons = proteins functionally linked by the same metabolite. No interaction, no pathway step: just a shared dependency missing from most models.
medium.com/@enginyapici...
#drugdiscovery #systemsbiology
Definitely an ambitious project. But how will virtual cells handle protein-level effects that are critical in biologics, like glycosylation, secretion, or conformational changes? These aren’t in transcriptomic data. Will future models include assays that capture them?
The FDA’s draft AI guidance treats assistive tools like decision-makers. That’s a problem. Most AI helps teams triage or prioritize, not drive filings.
Here’s my take on how this could backfire for biotech teams or become an edge for first-time filers: medium.com/@enginyapici...
#biotech #fda #ai
Most AI antibody papers talk models. This one talks infrastructure.
Ginkgo’s PROPHET-Ab platform runs real assays, at scale, upstream, and cleanly. But can it handle messy, early-stage variants?
medium.com/@enginyapici...
#DrugDevelopment #AIinBiotech #Antibodies #DrugDiscovery #Biologics #AI
𝗬𝗼𝘂 𝗰𝗮𝗻 𝗻𝗼𝘄 𝘄𝗮𝘁𝗰𝗵 𝗺𝗼𝗹𝗲𝗰𝘂𝗹𝗲𝘀 𝗰𝗵𝗮𝗻𝗴𝗲 𝘀𝗵𝗮𝗽𝗲 𝗶𝗻 𝗿𝗲𝗮𝗹 𝘁𝗶𝗺𝗲.
It measures how long a single molecule stays trapped, and turns that into size, shape, and binding data. No freezing, no tethering, no guessing.
medium.com/@enginyapici...
#Biotech #DrugDiscovery #ProteinStructure #StructuralBiology
Just published a new piece: what real wet-lab validation should look like in AI-enabled antibody design.
I walk through what’s often missing: scaffold diversity, expression, off-target data, developability. And why these matter if we want the models to translate.
medium.com/@enginyapici...
Can AI agents really design complex scientific workflows?
I wrote about a new benchmark that puts autonomous systems to the test: no handholding, no domain hints.
Where they shine, where they fail, and what it means for drug discovery.
medium.com/@enginyapici...
#DrugDiscovery #AIDrugDiscovery
Just published a new piece:
Building Better Antibodies: Lessons from SynAbLib and IgHuAb
How large language models are helping design human-like antibody libraries that are actually usable for discovery.
medium.com/@enginyapici...
#AntibodyDiscovery #Biotechnology #MachineLearning #DrugDiscovery
This post explores the gap between AI tools in drug discovery and the scientists who need them. I highlight a smart low-data model and share thoughts on how better collaboration could make it truly usable.
www.linkedin.com/pulse/ai-dru...
#GenerativeAI #DrugDiscovery #AIDrugDiscovery #AI #ML
Can AI predict high-viscosity mAbs without a structure?
DeepViscosity uses antibody sequence alone to flag formulation risks, before any wet-lab work. I break down what the model does well, where it fits in real workflows, and how it compares to other tools.
medium.com/@enginyapici...
#biologics
Can generative AI design antibodies without ever stepping into a lab?
I wrote about PG-AbD, a solid framework with no wet-lab validation, and why that's not a dead end, just a missed opportunity.
medium.com/@enginyapici...
#AI #DrugDiscovery #AntibodyDiscovery #AIinBiotech #Biotech #GenerativeAI
What does “inactive” actually mean in drug discovery?
Most models are trained on actives, but real signal might lie in the compounds that quietly fail. I wrote about InertDB, a dataset of verified negatives, and what it means for model reliability.
tinyurl.com/InertDB-Medium
#DrugDiscovery #AI
CODA for the masses!
Valentina Matos-Romero, Ashley Kiemen and team have put together an ultra detailed protocol to use CODA for 3D single-cell mapping of tissues, organs, and organisms.
Use CODA by downloading this protocol here: www.biorxiv.org/content/10.1...
Our @natrevimmunol.bsky.social review with @abhishekgarglab.bsky.social, @deadoc80.bsky.social and Kellie Smith is out!
We attempt to integrate the data on CD8 T cell dysfunction into a new framework of hypofunctionality in cancer and chronic infections!
www.nature.com/articles/s41...
First post covers a microwell platform (MoSMAR-chip) that screens for antigen specificity, function, and transcriptomics, single-cell, high-throughput, no droplet systems.
medium.com/@enginyapici...
#SingleCell #AntibodyDiscovery #ScreeningTech #FunctionalAssays #Biotech
I started a Medium series on tools and technologies in drug discovery, especially antibody development, screening, and MoA assays. I’ll be breaking down papers that offer something useful (or not).
Intro: medium.com/@enginyapici...
#DrugDiscovery #AntibodyEngineering #Bioassays #MoA #Biotech
Hi, I’m Engin. I work in drug discovery, mostly antibody discovery and development, high-throughput screening, and MoA functional assays. I’m here to share what I’ve learned, what I’m still figuring out, and to learn from others thinking deeply about how we move this field forward.