Single-cell analysis in the age of LLMs

Assistant Professor,
Dept. of Computer Science & Dept. of Int. Medicine,
Yale University

In this talk, I will argue that biology itself operates like a language, where systems like the immune response communicate through combinatorial interactions, much like words forming sentences. I will present recent work from our lab, starting with CINEMA-OT, a causal inference method applied to combinatorial cytokine stimulation, revealing nonlinear interactions between cytokines. I will then focus on Cell2Sentence, a project that transforms single-cell data into 'cell sentences' to train LLMs for generating and predicting cellular behaviors. Finally, I will briefly discuss CaLMFlow, where LLMs are adapted to model continuous systems, highlighting their versatility beyond discrete language tasks. Together, these projects illustrate how LLMs are advancing single-cell analysis and biological research.

Relevant Resources:

  • CINEMA-OT:
  • Cell2Sentence:
  • CaLMFlow:

 

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