
Miraomics, Pythia Biosciences and LatchBio Release a 30 Million Cell Atlas and an Agentric AI Framework for Molecular Data Curation
Progress in engineering biology increasingly depends on data-hungry statistical models to reason about emergent properties of living systems that exceed capabilities of unaided human cognition.
Millions of single cell transcriptomes are scattered across the Internet but remain unused because of the expensive human labor required to structure and annotate this data for downstream use. At this time, these public datasets in aggregate constitute the largest bank of scRNA-seq in existence and the most diverse source of diseases, tissues and patients.
Progress in engineering biology increasingly depends on data-hungry statistical models to reason about emergent properties of living systems that exceed capabilities of unaided human cognition. While purpose-built industrial data generation efforts, like perturbation atlases, offer a path forward, they do not yet sample from enough broad observational data to generalize to many practical translational contexts, especially those addressing indications with small patient populations.
Solution providers, like Pythia and Miraomics, use deep knowledge of molecular data curation to structure publicly available studies for large scale bioinformatics and machine learning. Using Latch's white-labeled data infrastructure and data portal, they clean and distribute millions of cells through Latch to their biopharma and biotech customers.
'By collaborating with forward-thinking partners like LatchBio and Miraomics, we can bring our high-quality, expertly curated scientific content to a broader segment of the research community and help accelerate life-saving breakthroughs. This marks the first of many releases where portions of the Pythiomics multi-omics database, known for its depth, precision, and scientific rigor, will be conveniently accessible via the Latch platform,' said Tristan Gill, Co-Founder and CEO at Pythia.
'We are excited to announce this major release of high quality curated data, representing thousands of hours of curation effort, enabling new opportunities for development of novel AI tools and novel insights in basic science, disease progression and drug discovery,' said Eugene Bolotin, Co-Founder and CEO at Miraomics.
LatchBio also releases a suite of agentric molecular curation tools that improve per-dataset curation times by around 40x and increase annotation quality and consistency by incorporating information from entire papers and unstructured supplements. This framework can completely automate curation in some cases. A whitepaper detailing its design and function can be found here: http://latch.bio/latch-curate.
'By partnering with leading solution providers, our ambition is to organize the world's public molecular data for immediate access on a usage basis, for small biotechs, large pharma and frontier AI labs alike,' said Kenny Workman, Co-Founder and CTO at LatchBio.

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Play Video Pause Skip Backward Skip Forward Next playlist item Unmute Current Time 0:13 / Duration 15:40 Loaded : 6.33% 00:13 Stream Type LIVE Seek to live, currently behind live LIVE Remaining Time - 15:27 Share Fullscreen This is a modal window. Beginning of dialog window. Escape will cancel and close the window. Text Color White Black Red Green Blue Yellow Magenta Cyan Opacity Opaque Semi-Transparent Text Background Color Black White Red Green Blue Yellow Magenta Cyan Opacity Opaque Semi-Transparent Transparent Caption Area Background Color Black White Red Green Blue Yellow Magenta Cyan Opacity Transparent Semi-Transparent Opaque Font Size 50% 75% 100% 125% 150% 175% 200% 300% 400% Text Edge Style None Raised Depressed Uniform Drop shadow Font Family Proportional Sans-Serif Monospace Sans-Serif Proportional Serif Monospace Serif Casual Script Small Caps Reset Done Close Modal Dialog End of dialog window. Close Modal Dialog This is a modal window. 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