Genome Biology (Aug 2024)

MAMS: matrix and analysis metadata standards to facilitate harmonization and reproducibility of single-cell data

  • Irzam Sarfraz,
  • Yichen Wang,
  • Amulya Shastry,
  • Wei Kheng Teh,
  • Artem Sokolov,
  • Brian R. Herb,
  • Heather H. Creasy,
  • Isaac Virshup,
  • Ruben Dries,
  • Kylee Degatano,
  • Anup Mahurkar,
  • Daniel J. Schnell,
  • Pedro Madrigal,
  • Jason Hilton,
  • Nils Gehlenborg,
  • Timothy Tickle,
  • Joshua D. Campbell

DOI
https://doi.org/10.1186/s13059-024-03349-w
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 15

Abstract

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Abstract Many datasets are being produced by consortia that seek to characterize healthy and disease tissues at single-cell resolution. While biospecimen and experimental information is often captured, detailed metadata standards related to data matrices and analysis workflows are currently lacking. To address this, we develop the matrix and analysis metadata standards (MAMS) to serve as a resource for data centers, repositories, and tool developers. We define metadata fields for matrices and parameters commonly utilized in analytical workflows and developed the rmams package to extract MAMS from single-cell objects. Overall, MAMS promotes the harmonization, integration, and reproducibility of single-cell data across platforms.