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GEMLI: Gene Expression Memory-Based Lineage Inference from Single-Cell RNA-Sequencing Datasets.

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Gene expression memory-based lineage inference (GEMLI) predicts cell lineages from single-cell RNA-sequencing data. This computational tool analyzes gene expression patterns to trace cell development without physical separation, easing lineage annotation.

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Cell familyClonalityFate decisionsGene expression memoryGene expression stabilityLineage inferenceLineage tracingMemory genesMonotonically expressed genesMulticellular structure

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Area of Science:

  • Computational Biology
  • Genomics
  • Developmental Biology

Background:

  • Traditional lineage tracing methods rely on genetic marks or physical cell separation.
  • Single-cell RNA-sequencing (scRNA-seq) offers a high-throughput approach to study cellular heterogeneity.
  • Predicting cell lineages from scRNA-seq data is crucial for understanding development and disease.

Purpose of the Study:

  • To introduce and detail the usage of the Gene expression memory-based lineage inference (GEMLI) R package.
  • To demonstrate how GEMLI predicts cell lineages using gene expression memory from scRNA-seq data.
  • To provide a protocol for analyzing lineage information, including gene expression memory and cell fate decisions.

Main Methods:

  • GEMLI utilizes the principle of gene expression memory, where gene expression levels are maintained through cell divisions.
  • The study provides a detailed protocol for using the GEMLI R package on scRNA-seq gene expression matrices.
  • Methods cover parameter adjustment, lineage information extraction, visualization, and fine-tuning.

Main Results:

  • GEMLI enables lineage prediction solely from scRNA-seq data, shifting away from experimental methods.
  • The tool facilitates the study of cell lineages in development, homeostasis, regeneration, and disease.
  • GEMLI can dissect cell type-specific gene expression memory, discriminate cell fate decisions, and reconstruct multicellular structures.

Conclusions:

  • GEMLI offers a powerful computational approach to infer cell lineages, greatly easing and expanding lineage annotation.
  • The R package is versatile, applicable to various biological contexts and scRNA-seq data types.
  • GEMLI is particularly promising for identifying small lineages in human samples where other methods are not applicable.