Background <p>Identifying highly variable genes (HVGs) is a critical step in single-cell RNA sequencing (scRNA-seq) and spatial transcriptomics (ST) analyses. Conventional approaches typically rely on normalization to adjust for library size differences and estimate variability under predefined distributional assumptions. However, normalization procedures can inadvertently mask true biological variability, and the assumed distributions often fail to adequately capture the sparsity and noise inherent in scRNA-seq and ST data. To address these limitations, this study aims to develop a normalization-independent and nonparametric method for robust HVG identification in scRNA-seq and ST data.</p> Results <p>We propose Earth Mover’s Distance based Highly Variable Gene identification method (EMD-HVG), a normalization-free and nonparametric framework for HVG identification. EMD-HVG models gene-specific expression patterns using a mixture distribution across cells or spatial locations, thereby preserving native biological heterogeneity without requiring library size normalization. To measure expression variability, EMD-HVG employs Earth Mover’s Distance (EMD), a robust, nonparametric metric that avoids reliance on any specific distributional form.</p> Conclusion <p>Extensive benchmarking on both real and simulated datasets demonstrates that EMD-HVG consistently outperforms existing HVG detection methods. It achieved top performance in 26 out of 30 evaluation scenarios across various accuracy metrics. Furthermore, HVGs identified by EMD-HVG significantly enhance the quality of downstream clustering, facilitating more precise cell-type delineation across diverse biological systems. Together, these results highlight the robustness and broad applicability of EMD-HVG in both single-cell and spatial transcriptomic analyses.</p>

错误:搜索内容不能为空,请输入英文关键词
错误:关键词超出字数限制,请精简
高级检索

EMD-HVG: a normalization-independent method for highly variable gene selection based on Earth mover’s distance

  • Chunfang Peng,
  • Guobin Li,
  • Jiamiao Wu,
  • Feng Tan,
  • Xiaobo Guo

摘要

Background

Identifying highly variable genes (HVGs) is a critical step in single-cell RNA sequencing (scRNA-seq) and spatial transcriptomics (ST) analyses. Conventional approaches typically rely on normalization to adjust for library size differences and estimate variability under predefined distributional assumptions. However, normalization procedures can inadvertently mask true biological variability, and the assumed distributions often fail to adequately capture the sparsity and noise inherent in scRNA-seq and ST data. To address these limitations, this study aims to develop a normalization-independent and nonparametric method for robust HVG identification in scRNA-seq and ST data.

Results

We propose Earth Mover’s Distance based Highly Variable Gene identification method (EMD-HVG), a normalization-free and nonparametric framework for HVG identification. EMD-HVG models gene-specific expression patterns using a mixture distribution across cells or spatial locations, thereby preserving native biological heterogeneity without requiring library size normalization. To measure expression variability, EMD-HVG employs Earth Mover’s Distance (EMD), a robust, nonparametric metric that avoids reliance on any specific distributional form.

Conclusion

Extensive benchmarking on both real and simulated datasets demonstrates that EMD-HVG consistently outperforms existing HVG detection methods. It achieved top performance in 26 out of 30 evaluation scenarios across various accuracy metrics. Furthermore, HVGs identified by EMD-HVG significantly enhance the quality of downstream clustering, facilitating more precise cell-type delineation across diverse biological systems. Together, these results highlight the robustness and broad applicability of EMD-HVG in both single-cell and spatial transcriptomic analyses.