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Lense: Optimizing data preprocessing in single-cell omics using LLMs.

Jingyun Liu1, Zhicheng Ji1

  • 1Department of Biostatistics and Bioinformatics, Duke University School of Medicine, Durham, NC, USA.

Biorxiv : the Preprint Server for Biology
|May 25, 2026
PubMed
Summary
This summary is machine-generated.

Lense, a novel language-model-guided method, optimizes data preprocessing for single-cell omics. It automatically selects the best preprocessing pipeline, enhancing analysis robustness for diverse datasets like spatial transcriptomics.

Keywords:
Data preprocessingLarge language modelSingle-cell genomicsSpatial genomics

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Area of Science:

  • Computational Biology
  • Bioinformatics
  • Artificial Intelligence in Genomics

Background:

  • Data preprocessing is essential for single-cell omics studies.
  • Existing preprocessing pipelines struggle with diverse datasets, particularly from new technologies like spatial transcriptomics.
  • Optimal preprocessing is often dataset-specific and requires manual tuning.

Purpose of the Study:

  • To introduce Lense, an automated method for selecting optimal data preprocessing pipelines in single-cell omics.
  • To improve the robustness and efficiency of preprocessing for diverse omics datasets.
  • To reduce the need for manual intervention in data preprocessing.

Main Methods:

  • Lense utilizes a language-model-guided approach to evaluate preprocessing pipeline variants.
  • It compares low-dimensional representations visualized through plots to identify optimal preprocessing steps.
  • The method is integrated with the Seurat analysis package for seamless workflow implementation.

Main Results:

  • Lense automatically selects optimal preprocessing strategies, outperforming default pipelines on diverse datasets.
  • The method demonstrates improved preprocessing robustness, especially for emerging platforms like spatial transcriptomics.
  • Integration with Seurat streamlines the analysis workflow without manual parameter tuning.

Conclusions:

  • Lense offers an automated and robust solution for data preprocessing in single-cell omics.
  • The language-model-guided approach enhances the reliability of omics data analysis.
  • Lense is a valuable tool for researchers working with diverse and complex omics datasets, including spatial transcriptomics.