Single-Cell Proteomics Using Mass Spectrometry
Journal:
arXiv
Published Date:
Feb 17, 2025
Abstract
Single-cell proteomics (SCP) is transforming our understanding of biological
complexity by shifting from bulk proteomics, where signals are averaged over
thousands of cells, to the proteome analysis of individual cells. This granular
perspective reveals distinct cell states, population heterogeneity, and the
underpinnings of disease pathogenesis that bulk approaches may obscure.
However, SCP demands exceptional sensitivity, precise cell handling, and robust
data processing to overcome the inherent challenges of analyzing picogram-level
protein samples without amplification. Recent innovations in sample
preparation, separations, data acquisition strategies, and specialized mass
spectrometry instrumentation have substantially improved proteome coverage and
throughput. Approaches that integrate complementary omics, streamline
multi-step sample processing, and automate workflows through microfluidics and
specialized platforms promise to further push SCP boundaries. Advances in
computational methods, especially for data normalization and imputation,
address the pervasive issue of missing values, enabling more reliable
downstream biological interpretations. Despite these strides, higher
throughput, reproducibility, and consensus best practices remain pressing needs
in the field. This mini review summarizes the latest progress in SCP technology
and software solutions, highlighting how closer integration of analytical,
computational, and experimental strategies will facilitate deeper and broader
coverage of single-cell proteomes.