4.8 Article

Computing the Riemannian curvature of image patch and single-cell RNA sequencing data manifolds using extrinsic differential geometry

出版社

NATL ACAD SCIENCES
DOI: 10.1073/pnas.2100473118

关键词

differential geometry; Riemannian curvature; data manifold; Laplace-Beltrami; single-cell transcriptomics

资金

  1. Natural Sciences and Engineering Research Council of Canada (NSERC) [PGSD25171312018]
  2. NIH National Cancer Institute [U54-CA225088]
  3. NIH National Institute of General Medical Sciences (NIGMS) [T32 GM008313]
  4. NIH NIGMS [R00GM118910]
  5. Harvard University William F. Milton Fund
  6. Research Computing Group, at Harvard Medical School
  7. Harvard University

向作者/读者索取更多资源

The study examines two approaches from differential geometry to estimate the Riemannian curvature of low-dimensional manifolds, finding that the intrinsic approach fails to accurately estimate curvature while the extrinsic approach is able to handle more complex models even under practical constraints.
Most high-dimensional datasets are thought to be inherently low-dimensional-that is, data points are constrained to lie on a low-dimensional manifold embedded in a high-dimensional ambient space. Here, we study the viability of two approaches from differential geometry to estimate the Riemannian curvature of these low-dimensional manifolds. The intrinsic approach relates curvature to the Laplace-Beltrami operator using the heat-trace expansion and is agnostic to how a manifold is embedded in a high-dimensional space. The extrinsic approach relates the ambient coordinates of a manifold's embedding to its curvature using the Second Fundamental Form and the Gauss-Codazzi equation. We found that the intrinsic approach fails to accurately estimate the curvature of even a two-dimensional constant-curvature manifold, whereas the extrinsic approach was able to handle more complex toy models, even when confounded by practical constraints like small sample sizes and measurement noise. To test the applicability of the extrinsic approach to real-world data, we computed the curvature of a well-studied manifold of image patches and recapitulated its topological classification as a Klein bottle. Lastly, we applied the extrinsic approach to study single-cell transcriptomic sequencing (scRNAseq) datasets of blood, gastrulation, and brain cells to quantify the Riemannian curvature of scRNAseq manifolds.

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