| Literature DB >> 32489335 |
Andrew Macklin1, Shahbaz Khan1, Thomas Kislinger1,2.
Abstract
Cancer biomarkers have transformed current practices in the oncology clinic. Continued discovery and validation are crucial for improving early diagnosis, risk stratification, and monitoring patient response to treatment. Profiling of the tumour genome and transcriptome are now established tools for the discovery of novel biomarkers, but alterations in proteome expression are more likely to reflect changes in tumour pathophysiology. In the past, clinical diagnostics have strongly relied on antibody-based detection strategies, but these methods carry certain limitations. Mass spectrometry (MS) is a powerful method that enables increasingly comprehensive insights into changes of the proteome to advance personalized medicine. In this review, recent improvements in MS-based clinical proteomics are highlighted with a focus on oncology. We will provide a detailed overview of clinically relevant samples types, as well as, consideration for sample preparation methods, protein quantitation strategies, MS configurations, and data analysis pipelines currently available to researchers. Critical consideration of each step is necessary to address the pressing clinical questions that advance cancer patient diagnosis and prognosis. While the majority of studies focus on the discovery of clinically-relevant biomarkers, there is a growing demand for rigorous biomarker validation. These studies focus on high-throughput targeted MS assays and multi-centre studies with standardized protocols. Additionally, improvements in MS sensitivity are opening the door to new classes of tumour-specific proteoforms including post-translational modifications and variants originating from genomic aberrations. Overlaying proteomic data to complement genomic and transcriptomic datasets forges the growing field of proteogenomics, which shows great potential to improve our understanding of cancer biology. Overall, these advancements not only solidify MS-based clinical proteomics' integral position in cancer research, but also accelerate the shift towards becoming a regular component of routine analysis and clinical practice.Entities:
Keywords: Biomarker discovery; Cancer; Clinical proteomics; Mass spectrometry; Proteogenomics; Targeted assay
Year: 2020 PMID: 32489335 PMCID: PMC7247207 DOI: 10.1186/s12014-020-09283-w
Source DB: PubMed Journal: Clin Proteomics ISSN: 1542-6416 Impact factor: 3.988
Fig. 1Overview of clinical cancer proteomics strategies. a Various sample types are used for clinical proteomics. These include solid tumor tissues, patient body fluids, animal models and cell-based systems. Tumor tissues are obtained either as surgically resected samples or are biopsy based. There are a number of tissue processing approaches available, which include the analysis of “bulk” tissue or preferentially after pathological inspection, tissue macro-dissection or laser capture microdissection (LCM). Patient fluids are a popular source for the discovery of biomarkers. The most commonly used patient body fluids include blood (processed to plasma or serum) and urine. Animal models are a popular in vivo model system for clinical proteomics. The most common models include transgenic disease models and patient-derived xenografts (PDX). Cell-based systems continue to be popular model systems in cancer biology. They include immortalized cancer cell lines or more sophisticated organoid systems that are established using defined culture conditions and primary patient material. Samples obtain from these sources are homogenized and proteolytically digested prior to proteomic analyses (i.e. bottom-up proteomics). b Proteomic analyses can use several well-established workflows. These include label-free proteomics (LFQ), isobaric labelling strategies or the specific enrichment of post-translational modification such as phosphorylation, ubiquitination, glycosylation, etc. c Integration of proteomics data with publicly available resources such as the CPTAC proteomics data or transcriptional profiles from GTEx, CCLE and TCGA can be used for biomarker prioritization. d Bioinformatics analyses (clustering, enrichment, pathways, etc.) are used to extract biological content or further prioritize candidates for targeted proteomics validation, using multiple reaction monitoring (MRM) and Parallel reaction monitoring (PRM)
Summary of select tissue-centric proteomic studies highlighted in this review
| Protein quantitation | Tissue type | Sample preparation | MS Model | Clinical question | Proteins detected | Patient cohort | References |
|---|---|---|---|---|---|---|---|
| Label-free DDA | FFPE | FASP, SAX | QE | CRC, healthy tissue and adenoma | 10,000 | 32 | [ |
| QE | Malignant vs. benign prostate tissue | 9000 | 36 | [ | |||
| QE | Breast cancer heterogeneity and triple-negative subtypes | 10,819 | 131 | [ | |||
| FASP, SAX, Super-SILAC normalization | QE | ER-positive luminal breast cancer progression and metastasis | 10,000 | 88 | [ | ||
| QE | Breast cancer subtypes | 10,000 | 40 | [ | |||
| QE HF | Melanoma response to immunotherapy | 10,300 | 116 | [ | |||
| SDS | QE | Ovarian cancer chemosensivity and chemoresistance mediators | 9000 | 25 | [ | ||
| Phospho-enrichment | QE | Triple-negative breast cancer treatment outcomes | 2643 | 34 | [ | ||
| TFE | QE HF | Metabolic regulators of CAF’s in high-grade serous carcinoma | 6944 | 107 | [ | ||
| FASP, SAX, LCM | LTQ XL | Colon cancer with healthy matched | 6000 | 6 | [ | ||
| MudPIT | LTQ XL | HPV-positive and HPV negative oropharyngeal carcinomas | 2633 | 53 | [ | ||
| FF | FASP, SAX | QE | PCa bone metastasis characterization | 5067 | 22 | [ | |
| Urea, SDS, CHCl3/MeOH precipitation | QE | Ovarian carcinoma histotypes | 6360 | 20 | [ | ||
| iST | QE HF | Primary urachal carcinoma, metastases and healthy tissue | 5543 | 1 | [ | ||
| Label-free SWATH | OCT | Pressure-cycling technology, urea | 5600 TOF | Intratumoural heterogeneity of PCa | 6873 | 60 | [ |
| FF | 5600 TOF | Renal cell carcinoma and healthy controls | 4624 | 18 | [ | ||
| 5600 TOF | Hepatocellular carcinoma and healthy adjacent control | 2579 | 38 | [ | |||
| FASP | 5600 TOF | Breast cancer classification | 2842 | 96 | [ | ||
| Isobaric Labelling | FFPE | SP3, RPF, TMT | OF | High grade serous and clear cell ovarian carcinomas | 8167 | 20 | [ |
| FF | PDX, iTRAQ | OV, QE | Basal and luminal-B breast cancer subtypes | 8126 | 2 | [ | |
| FASP, RPF, iTRAQ | OV | Non-muscle invasive and muscle invasive bladder cancer | 900 | 8 | [ | ||
| RPF, glyco-enrichment, iTRAQ | OV | Ovarian high-grade serous carcinoma and benign cases | 4817 | 6 | [ | ||
| Urea, glyco- enrichment, iTRAQ | QE | Squamous cell carcinoma vs. adenocarcinoma and healthy controls | 8337 | 18 | [ | ||
| PDX, phospho-enrichment, TMT | OF Lumos | Luminal and basal breast cancer subtypes | 7700 | 4 | [ |
Summary of the clinical proteogenomic studies highlighted in this review
| Protein quantitation | Tissue type | Additional omic datasets | MS model | Sample preparation | Clinical question | Proteins detected | Patient cohort | References |
|---|---|---|---|---|---|---|---|---|
| Label-free DDA | FFPE | GEN, TRA, PHO | OF | FASP, RPF | Stratify HBV-related hepatocarcinoma into subtypes | 9252 | 110 | [ |
| FF | EPI, TRA, PHO | OF | Urea, RPF, Super-SILAC | Distinguishing between four subgroups of medulloblastomas | 3892 | 41 | [ | |
| GEN, EPI, TRA | QE | TFE | Biomarkers of curable PCa | 7054 | 76 | [ | ||
| OCT | TRA, EPI | OV | TFE | CRC characterization | 7526 | 95 | [ | |
| GEN, TRA, PHO | QE | Urea, RPF, TMT additional | Tumour, adjacent healthy tissue and blood in colon cancer patients | 8067 | 110 | [ | ||
| Label-free SWATH | OCT | TRA | 5600 TOF | Pressure cycling technology, urea | Protein degradation rates in PCa and adjacent healthy tissue | 3056 | 68 | [ |
| FF | GEN, EPI, TRA | 5600 TOF | RIPA buffer | Untreated and castration-resistant PCa compared to benign | 4601 | 38 | [ | |
| Isobaric Labelling | FFPE | GEN, TRA | QE | FASP and IEF, TMT | Recapitulating breast cancer subtypes | 9995 | 45 | [ |
| FF | GEN, TRA, PHO | QE HF | SDS, FASP, RPF, TMT | Tissue and blood samples from HBV-related hepatocarcinoma and healthy adjacent liver patients | 10,783 | 159 | [ | |
| GEN, TRA | QE | FASP and IEF, TMT | Characterizing pathogenetic impact of hyperdiploidy in acute lymphoblastic leukemia | 8480 | 89 | [ | ||
| GEN, TRA, PHOS, GLYCO | QE | SDS, RPF, iTRAQ | Characterization of gastric cancer from tumour, healthy adjacent tissue and blood samples | 9625 | 80 | [ | ||
| OCT | GEN, TRA, PHO | OF Lumos | Urea, Basic RPF, TMT | Characterization of treatment-naïve clear cell renal cell carcinoma | 11,355 | 103 | [ | |
| GEN, TRA, PHO | LTQ Velos | TFE. iTRAQ | High-grade serous ovarian carcinoma characterization | 9600 | 174 | [ | ||
| GEN, TRA, PHO | QE | Urea, basic RPF, iTRAQ | Characterization of breast cancer subtypes: basal, HER2-enriched, luminal A, luminal B | 12,405 | 77 | [ |
Summary of the urine and blood-associated clinical proteomic studies highlighted in this review
| Liquid biopsy | Protein quantitation | MS model | Sample preparation | Clinical question | Proteins detected | Patient cohort | References |
|---|---|---|---|---|---|---|---|
| Plasma | Isotopic label | LTQ Orbitrap | Immunodepletion, filtration, SCX fractionation | Pancreatic cancer, pancreatitis and healthy control plasma | 1300 | 3 | [ |
| Label-free DDA | LTQ Orbitrap & 5500 Q-trap | PDX, N-glycopeptide enrichment, SRM validation in human sera | Ovarian cancer biomarker development | 906 | 224 | [ | |
| Label-free SWATH | 5600 TOF | Immunodepletion, SCX, SAX, RPF, size-exclusion chromatography | Early diagnosis of CRC | 427 | 100 | [ | |
| 5600 TOF | N-glycopeptide enrichment, Off-gel fractionation | Five different cancer types and their matched controls | 1151 | 284 | [ | ||
| Serum | Label-free DDA | LTQ Orbitrap | PDX, N-glycopeptide enrichment, Targeted validation in human | PCa diagnosis | 775 | 8 | [ |
| QE HF | PDX, N-glycopeptide enrichment, PRM validation in human sera | High grade serious ovarian cancer biomarkers and longitudinal monitoring | 2200 | 20 | [ | ||
| iTRAQ | 5600 TOF | Immunodepletion, SWATH verification | Proteins leaving lung cancer tumours into pulmonary veins | 1000 | 50 | [ | |
| Urine | Label-free DDA | 5600 TOF | Gel fractionation, RPF, IEF | Characterization of the healthy urine proteome | 6085 | 24 | [ |
| QE | MW-filtration, SCX, PRM validation | Renal cell carcinoma prognostic biomarkers | 2589 | 115 | [ | ||
| LTQ | Gel fractionation | Identify novel therapeutic targets for Wilms tumour | 6520 | 49 | [ | ||
| QE | Gel fractionation | Profiling urine from lung cancer patients and other tumors | 7408 | 46 | [ | ||
| Post-DRE urine | iTRAQ | OV | Ultracentrifugation, RPF | Discovery of new biomarker for high Gleason PCa | 4710 | 18 | [ |
| Label-free DDA | QE | Ultracentrifugation | Characterizing EVs from EPS in urine from PCa and healthy patients | 877 | 24 | [ | |
| SRM | TSQ Vantage | MW filtration, TFE | Targeted proteomics identifies signatures for extracapsular prostate cancer | 232 | 74 | [ | |
| Qtrap5500 | FASP | Biomarker validation for early detection and stratification of PCa | 64 | 107 | [ |