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Single Cell Datasets for Training AI Models

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"Single Cell Datasets for Training AI Models"

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Single cell RNA sequencing (scRNA-seq) provides unprecedented resolution into cellular diversity, and when paired with artificial intelligence (AI), these datasets become powerful engines for discovery. Large-scale resources such as Tahoe-100M and Parse’s PBMC 10M illustrate how millions of single cell profiles can be leveraged to train AI models that predict cell responses, uncover dysregulated pathways, and accelerate therapeutic development.

By downloading this white paper, you will learn:

  • How scRNA-seq datasets can be optimized for AI training, including strategies to address noise, batch effects, and sparsity while scaling to millions of cells.
  • How CRISPR perturbations and high-throughput drug screens generate rich data for mapping gene function, drug response, and synthetic lethalities.
  • Ways AI models trained on large single cell atlases can identify novel drug targets, predict patient outcomes, and stratify populations with precision.
  • How transfer learning enables integration of bulk and single cell data, enhancing predictive accuracy and biological insights.
  • Why scaling to billions of cells and employing multiplexing technologies will continue to expand the scope of discovery.

Together, scRNA-seq and AI are shifting biology from descriptive catalogs of cell states toward predictive, actionable models that advance precision medicine.


Offered Free by: Parse Biosciences
See All Resources from: Parse Biosciences

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