CASSIA: a multi-agent large language model for automated and interpretable cell annotation

Nature — Machine LearningSunday, December 7, 2025 at 12:00:00 AM
  • CASSIA, a multi-agent large language model, has been developed for automated and interpretable cell annotation, as detailed in a recent publication in Nature — Machine Learning. This model aims to enhance the efficiency and accuracy of cell classification in biological research, addressing a critical need in the field of bioinformatics.
  • The introduction of CASSIA represents a significant advancement in the application of artificial intelligence to biological data analysis, potentially transforming how researchers annotate and interpret cellular information, which is vital for understanding complex biological systems.
  • This development aligns with a growing trend in the integration of machine learning techniques across various biological disciplines, including genomics and clinical data analysis. The ongoing exploration of large language models in biology highlights their increasing importance in processing complex datasets and improving research methodologies.
— via World Pulse Now AI Editorial System

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