| Literature DB >> 35743151 |
Carlota Arias-Hidalgo1, Pablo Juanes-Velasco1, Alicia Landeira-Viñuela1, Marina L García-Vaquero1, Enrique Montalvillo1, Rafael Góngora1, Ángela-Patricia Hernández1,2, Manuel Fuentes1,3.
Abstract
In single-cell analysis, biological variability can be attributed to individual cells, their specific state, and the ability to respond to external stimuli, which are determined by protein abundance and their relative alterations. Mass spectrometry (MS)-based proteomics (e.g., SCoPE-MS and SCoPE2) can be used as a non-targeted method to detect molecules across hundreds of individual cells. To achieve high-throughput investigation, novel approaches in Single-Cell Proteomics (SCP) are needed to identify and quantify proteins as accurately as possible. Controlling sample preparation prior to LC-MS analysis is critical, as it influences sensitivity, robustness, and reproducibility. Several nanotechnological approaches have been developed for the removal of cellular debris, salts, and detergents, and to facilitate systematic sample processing at the nano- and microfluidic scale. In addition, nanotechnology has enabled high-throughput proteomics analysis, which have required the improvement of software tools, such as DART-ID or DO-MS, which are also fundamental for addressing key biological questions. Single-cell proteomics has many applications in nanomedicine and biomedical research, including advanced cancer immunotherapies or biomarker characterization, among others; and novel methods allow the quantification of more than a thousand proteins while analyzing hundreds of single cells.Entities:
Keywords: antibodies; biological variability; cancer immunotherapy; clinical research; mass-spectrometry; nanotechnology; single-cell proteomics
Mesh:
Substances:
Year: 2022 PMID: 35743151 PMCID: PMC9224324 DOI: 10.3390/ijms23126707
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 6.208
Figure 1Global overview of the single-cell proteomics workflow analyzed by mass spectrometry.
Main sample preparation methods used in single-cell proteomics.
| Sample Preparation Methods | Description | |
|---|---|---|
| Protocol | Advantages | |
| Filter-Aided Sample Preparation (FASP) | Proteins are retained in a filter membrane and are accessible for enzymatic digestion. The generated peptides are collected by centrifugation. | This technique allows the removal of SDS and other low-molecular weight contaminants. |
| in-StageTip digestion (iST) | Complete sample preparation performed in a StageTip. The final peptide is picked by solid-phase extraction. | It avoids the filter membrane. |
| Single-Pot Solid-Phase enhanced Sample Preparation (SP3) | It is carried out using functionalized paramagnetic beads to trap peptides within a magnetic field. | Efficient removal of contaminants by washing with different organic solvents. |
| Minimal ProteOmic sample Preparation (mPOP) | MS compatible digestion buffer which eliminates cleanup steps and minimizes the sample volume used. | It makes it possible to automate sample preparation with PCR thermocyclers, enabling processing many samples in parallel. |
| Automated nano-ProteOmic sample Preparation (nPOP) | It uses a piezo acoustic device to isolate individual cells using small volumes. | It is a miniaturized and massively parallel method for high throughput. |
Figure 2Droplet-based microfluidic approach for single-cell analysis and isolation.
Figure 3Single-cell proteomics identification methods. At the top of the image, antibodies bind to the epitopes of their proteins and are detected to quantify the corresponding protein; at the bottom, mass spectrometry approaches introduce a non-targeted analysis to identify all proteins based on their mass-to-charge ratio.
Summary of the main computational tools developed in single-cell proteomics.
| Software Name | Software Info |
|---|---|
| Ion current extraction Re-quantification (IceR) | High rates of data-dependent acquisition identification with low missing value rates. More reliably quantified proteins and improved discriminability between single-cell populations. |
| Peptide identification algorithms (SEQUEST) | Normalize the theoretical spectra by forcing the b-type and y-type ions to be the most intense. It calculates the correlation score (Xcorr) and the ΔCn score. |
| Data-driven Alignment of Retention Times for IDentification (DART-ID) | Leverage reproducible retention times to increase peptide identifications in LC-MS/MS proteomics. Useful for MS2-based quantification. |
| Data-driven Optimization of MS (DO-MS) | Diagnose LC-MS/MS problems and enable to rationally optimize them. Data are visualized as full distributions using vertically oriented histograms, allowing subpopulations of ions to be identified. |
Recent works in single-cell proteomics.
| Technique | Description | Research | Reference |
|---|---|---|---|
| Single-cell IsoCode chip | Highly multiplexed chip with an antibody barcode array. Simultaneous detection of secreted proteins from individual cells. | They deciphered functional heterogeneity among patients and predicts clinical response and toxicities of CAR products. | Liu, D., et al. [ |
| Chimeric Antigen Receptor (CAR) | Single-pass transmembrane receptor to target cancer cells, achieving a high rate of remission. Mainly used against hematological malignancies | CD19-CAR T cell stimulation activated CD19-CAR-specific pathways and canonical TCR signaling. | Griffith, A. A., et al. [ |
| Quantification of RNA and intracellular epitopes by sequencing (QuRIE-seq) | High-throughput droplet-based platform to quantify single-cell RNA and (phospho)protein by sequencing within thousands of single cells. | They identified cell-state changes at signaling and transcriptome level after stimulation of the B-cell receptor pathway in Burkitt’s lymphoma cells. | Rivello, F., et al. [ |
| Deep Visual Proteomics (DVP) | Image analysis of individual tumor cells based on artificial intelligence combined with single-cell/nucleus laser microdissection and ultra-high-sensitivity MS. | Changes in the proteome on melanocytes progressing to melanoma were characterized, uncovering pathways that spatially vary as the cancer progresses. | Mund, A., et al. [ |
| Single Cell ProtEomics by Mass Spectrometry (SCoPE2) | An automated and miniaturized sample preparation workflow to increase quantitative accuracy and throughput while lowering cost and time. | Exploration of monocytes differentiation into macrophage-like cells uncovered a gradient of proteome states in the absence of polarizing cytokines. | Specht, H., et al. [ |
| Single-pot Solid-phase enhanced Sample preparation (SP3) | An approach using functionalized paramagnetic beads to trap peptides within a magnetic field, optimizing the sample amount needed while maximizing analyte recovery. | Single-cell analysis of the human oocytes’ proteome identified differential protein expression and fundamental preservation of the genome integrity during maturation. | Virant-Klun, I., et al. [ |
Figure 4Advantages (green) and challenges (red) in single-cell proteomics.