Open Access

Advances in lymphoma biomarkers research based on proteomics technology (Review)

  • Authors:
    • Qibei Liu
    • Jianmin Ling
    • Zhao Li
    • Lintao Bi
  • View Affiliations

  • Published online on: July 2, 2025     https://doi.org/10.3892/or.2025.8941
  • Article Number: 108
  • Copyright: © Liu et al. This is an open access article distributed under the terms of Creative Commons Attribution License.

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Abstract

Lymphoma is a common malignancy characterized by diverse pathological types and marked heterogeneity. Distinct subtypes of lymphomas are markedly different in their clinical manifestations, treatment approaches and prognostic outcomes. With the rapid development of molecular biology techniques, antitumor research has stepped into an era of precision medicine. Biomarkers, with high sensitivity and specificity, are expected to function in early diagnosis, targeted treatment and prognostic estimation for cancer and enhance the survival rate and life quality of patients. In this regard, proteomics technology, with the capability to systematically identify and quantify the dynamic protein alterations in tissues or cells, thereby facilitating the discovery of novel tumor potential candidates, has attracted significant scientific attention. The present article aimed to review most up‑to‑date research progress of lymphoma‑related biomarkers discovered based on proteomics technology, focusing on the potential application of these markers in the diagnosis, therapy and prognosis of each lymphoma subtype, and discuss the role proteomics may serve in future development of lymphoma research and clinical practice.

Introduction

Lymphoma, a group of common malignant tumors arising from the lymphohematopoietic system, is broadly classified into Hodgkin lymphoma (HL) and non-Hodgkin lymphoma (NHL). HL accounts for ~10% of all lymphoma cases, demonstrating a low incidence of recurrence and a favorable cure rate, while NHL constitutes ~90% of lymphomas (1). According to the 2022 Global Cancer Observatory, lymphoma accounted for 635,858 new cases and 273,412 mortalities worldwide, with NHL incidence showing a consistent upward trend (2). Given the variety of lymphoma subtypes, Fig. 1 presents a schematic diagram of the lymphoma classification framework employed in the present review.

Indolent lymphoma subtypes frequently present with an insidious onset and hidden symptoms during their early stages. Thus, patients lacking palpable lymph node enlargement are prone to misdiagnosis. While immunochemotherapy-based combination therapy has increased the survival probability of patients with lymphoma, a considerable proportion of patients fail to respond to existing treatments (3). Primary resistance and cumulative toxicities remain critical barriers of antitumor treatments. Moreover, in the wake of tumor progression, the therapeutic difficulty increases and the prognosis deteriorates. In addition, heterogeneous biological characteristics of different lymphoma subtypes pose a challenge for prognostic assessment. Therefore, a pressing demand for diagnostic indicators, therapeutic targets and prognostic predictors with high sensitivity and specificity for lymphoma exists.

Advances in molecular biology have shifted cancer research toward precision medicine, where biomarkers, defined as objectively measurable indicators of normal biological processes, pathological states or therapeutic responses (4), serves a central role. Proteins, as the primary functional molecules in biological systems, offer distinct advantages over nucleic acid-based biomarkers by more comprehensively reflecting pathophysiological processes, including post-translational modifications, protein interactions and microenvironmental influences (5).

Proteomics is a science that investigates the existence and function of proteins within cells and tissues (6). This technology generates clinically actionable insights in disease research by detecting the variations of proteins under physiological or pathological conditions and decoding tumor-specific mechanisms inaccessible to genomes and transcriptomes (Fig. 2). For instance, differentially expressed proteins (DEPs) between tumor tissues and benign tissues hold significant potential as biological targets for diagnosis and therapy.

The core technology platform of proteomics is liquid chromatography-tandem mass spectrometry (LC-MS), which enables high-throughput and precise identification, quantification and characterization of proteins (7). This field primarily encompasses three key methodological components: Protein separation using two-dimensional gel electrophoresis, protein identification via MS, and final bioinformatic analysis for functional annotation and data integration. Currently, modern proteomic workflows employ diverse quantification strategies: isobaric tagging techniques including tandem mass tag and isobaric tags for relative and absolute quantitation facilitate multiplexed analysis of up to 18 samples with high sensitivity (8,9), while label-free approaches offer unlimited sample comparisons and reduced expenditure at the expense of lower stability (10). For large-scale studies, data-independent acquisition (DIA) methods can provide robust reproducibility but rely on advanced computational pipelines (11). These techniques are systematically compared in Table I.

Table I.

Common proteomic technologies for lymphoma analysis.

Table I.

Common proteomic technologies for lymphoma analysis.

TechniqueAdvantagesDisadvantagesValidation approaches
iTRAQ/TMTSuitable for multiple sampleOnly 8–18 samples can beWestern blotting ELISA
types.labeled at one time. Immunohistochemistry
Good sensitivity andHigh cost of labeling reagents.PRM/MRM
repeatability. Flow Cytometry qPCR
Functional validation
SILAC100% labelling efficiency.Limitations exist for sample
Real-time and authenticity.types other than cells.
Available for minimal proteins.Long experimental period.
Label-freeNo labelling required.Quantitative accuracy is low
Relatively low cost.and affected by mass spectro-
metry stability.
Complex data analysis and poor
reproducibility.
DIA/SWATHSuitable for large-scale studies.Data processing complexity.
Recognizing low abundanceHigher costs and equipment
proteins.requirements.
Good accuracy and repeatability.

[i] iTRAQ, isobaric tags for relative and absolute quantitation; TMT, tandem mass tag; SILAC, Stable Isotope Labeling by Amino acids in Cell culture; ELISA, Enzyme-linked immunosorbent assay; PRM, Parallel reaction monitoring; MRM, Multiple reaction monitoring; qPCR, quantitative polymerase chain reaction; DIA, data-independent acquisition; SWATH, sequential window acquisition of all theoretical mass spectra.

Proteomic advances in different types of lymphoma

HL

HL predominantly derived from germinal center B cells (3) and is classified into nodular lymphocyte-predominant HL and classic HL (CHL), with CHL constituting >90% of HL diagnoses (12,13) and pathognomonically defined by the presence of Hodgkin and Reed-Sternberg (HRS) cells in the tumor microenvironment (TME) (13). Relapse/refractory (R/R) disease develops in ~20% of patients with CHL, while the vast majority recover after first-line chemotherapy such as ABVD (Adriamycin, Bleomycin, Vinblastine and Dacarbazine) (12).

Therapeutic biomarkers

Although HL exhibits a relatively low overall incidence, CHL represents a frequent cancer in the pediatric and adolescent populations (14). Despite achieving favorable cure rates in pediatric patients with CHL, the intensive use of highly genotoxic chemotherapeutics is associated with significant treatment-related morbidity and mortality (14,15), which necessitates the development of safer therapeutic strategies. Consequently, biomarker-targeted therapy has emerged as an optimal solution to mitigate toxicity while maintaining efficacy. For instance, in clinical trials, Pembrolizumab, a PD1 inhibitor, and Brentuximab vedotin, a CD30 inhibitor, yielded an overall response rate of respectively 69 and 75% in patients with R/R CHL (16,17).

Scientists continue to pursue novel pathogenic factors in HL, such as autocrine lymphotoxin-alpha (LTA) in HRS cell, which can constitutively activates NF-κB and JAK-STAT signaling pathways (18). Also, Segges et al (19) investigated celastrol, an HSP90 inhibitor, in both KMH2 (celastrol-sensitive) and L428 (Celastrol-resistant) HL cells and observed suppression of MAPK/ERK signaling in KMH2 cells and upregulation of Hsp27 in L428 cells.

Prognostic biomarkers

Given the distinct epidemiology of HL, identifying robust prognostic biomarkers for pediatric and adolescent patients with CHL is critical for optimizing risk-adapted clinical management. To address this need, two plasma proteomic profiles comparing relapsed and non-relapsed pediatric CHL cohorts were conducted by Repetto et al (14,20), where five of the DEPs (AAT, FGA, FGB, C4BPA and CLU) were specifically validated. In a parallel study, Honoré et al (21) performed a comparative proteomic analysis between pretherapy tumor biopsies from ABVD-responsive and refractory patients with CHL, reporting that the pathological activation of the CXCR4 pathway accounted for the failure of ABVD. CXCR4 inhibitors such as Plerixafor, which is clinically used for treating NHL and multiple myeloma, may serve as a supplementary therapeutic approach for patients with ABVD-insensitive CHL.

Diagnostic biomarkers

Proteomics can also provide several diagnostic biomarkers for HL, for which researchers often consider inflammatory and immune-related proteins that interact with HRS cells as candidates.

In 2011, chemical proteomics was used to compare CHL tissues with reactive lymphoid hyperplasia (RLH) by Kischel et al (22), who reported the increased expression of certain extracellular matrix proteins in CHL tissues. Subsequently, using glycoproteomics, Powlesland et al (23) identified the glycoproteins CD98hc, ICAM-1 and DEC-205 as carriers of CD15, a characteristic marker of CHL. In 2021, Gholiha et al (24) carried out a proteomic analysis similar to Kischel et al (22), using the Proximity Ligation Assay with attention to the plasma protein despite tumor lysates, and reported increased levels of PD-L1 alongside several PD-L1-associated proteins in both tissues and plasma.

Epstein-Barr virus (EBV) was first isolated from an African patient with Burkitt lymphoma (BL) (25) and was the first oncogenic virus causally linked to human cancers. Amongst the four subtypes of CHL [mixed cellularity (MC), nodular sclerosis, lymphocyte-depleted (LD) and lymphocyte-rich] (12), it has been reported that the EBV positivity rate is 70% in MC and 95% in LD (26).

Since it has been shown that EBV infection may affect the survival of elderly patients with HL (27,28), EBV-associated proteins may offer novel targets for proteomic interrogation in HL. For instance, by proteome-wide microarray technology, Sarathkumara et al (29) constructed antibody profiles of patients with EBV-positive CHL in European and East Asian populations and found that LMP1-IgG was markedly increased in both cohorts, compared with patients with EBV-negative CHL. Liu et al (30) performed a similar experiment with samples obtained from patients in the UK and BdRF1 (VCAp40)-IgG and BZLF1 (Zta)-IgG have been identified as serological markers for EBV-positive CHL. All the details of experimental findings are presented in Table II, while Fig. 3 provides a schematic representation of the proposed functional relationships and interactions among candidate proteins identified through part of HL proteomic experiments.

Table II.

HL-related biomarkers based on proteomics technology.

Table II.

HL-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Von Hoff et al, 2019Cell linesLTATherapeutic/L1236 cell(18)
Segges et al, 2018Cell linesRAS, ERK1, ERK2, p90RSK1, Hsp70TherapeuticLabel-freeL428 cell and KMH2 cell(19)
Repetto et al, 2018PlasmaAAT, FGA, FGBPrognostic/15 relapsing HL, 14 non-relapsing HL(14)
Repetto et al, 2022PlasmaC3BPA, CLUPrognosticLabel-free14 relapsing HL, 28 non-relapsing HL(20)
Honoré et al, 2022TissueGNAI2, GNB1, RALB, PAK2, CRK, GNAQ, ARPC5PrognosticLabel-free15 treatment-refractory CHL, 21 treatment-sensitive CHL(21)
Kischel et al, 2011TissueVCAN, FBLN1, POSTN, S100A8DiagnosticChemical proteomics4 HL, 3 reactive lymphoid hyperplasia(22)
Powlesland et al, 2011Cell linesCD98hc, ICAM-1, DEC-205DiagnosticGlyproteomicsL-428, KMH-2, L-1236, L-540, HDLM-2 and U-HO1 cell lines(23)
Gholiha et al, 2021Tissue and plasmaPD-L1, IL-6, CCL17,CCL3, IL13, MMP12, TNFRS4, LAG3Diagnostic Immune-proteomics27 CHL tissues vs. 30 reactive lymph node lysates; plasma from 26 CHL patients and 27 healthy controls(24)
Sarathkumara et al, 2024PlasmaLMP1-IgG, TK-IgG, BALF2-IgG, BDLF3-IgG, BBLF1-IgGDiagnosticEBV proteome microarray35 EBV+ CHL, 92 EBV- CHL, 60 controls(29)
Liu et al, 2020SerumBdRF1-IgG, Zta-IgGDiagnosticEBV proteome microarray139 EBV+ CHL, 70 EBV- CHL, 141 controls(30)

[i] HL, Hodgkin lymphoma; CHL, classical Hodgkin lymphoma.

NHL
B cell NHL (B-NHL)

B-NHL encompasses a heterogeneous group of malignancies characterized by distinct molecular pathogenesis and clinical trajectories, representing 85–90% of NHL cases (31).

Diffuse large B cell lymphoma (DLBCL)

DLBCL is the most common B-NHL (32), constituting ~35% of NHL cases with an estimated global annual incidence of 150,000 cases (33). According to the cellular origin, DLBCL can be classified into three subtypes, namely germinal center B cell-like (GCB) DLBCL, activated B cell-like (ABC) DLBCL and unclassified DLBCL (34). Based on immunophenotype, ABC DLBCL can also be categorized as non-germinal center B-cell like (non-GCB) DLBCL (35), which demonstrates inferior treatment outcomes compared with GCB DLBCL following R-CHOP treatment (36). While R-CHOP treatment, the incorporation of anti-CD20 monoclonal antibodies rituximab with CHOP-based chemotherapy (Cyclophosphamide, Hydroxydaunorubicin, Oncovin and Prednisone), can cure 60% of patients with DLBCL, those with R/R disease exhibit a median overall survival (OS) of only 6 months (37). Currently, no novel targeted agents have demonstrated sufficient clinical efficacy against DLBCL.

Diagnostic biomarkers

In 2019, two proteomic experiments were conducted by Gao et al (38) and van der Meeren et al (39), respectively comparing the proteomic profiles of ABC DLBCL with RLH and non-GCB DLBCL with GCB DLBCL. In 2021, Reinders et al (40) performed proteomic analysis on formalin-fixed paraffin-embedded tumor tissues from the three subtypes of DLBCL and reported that CD44, PTN1 and IGHM were upregulated in ABC DLBCL, while TOM22 showed higher expression in GCB DLBCL.

Therapeutic biomarkers

Recognizing DEPs between CHOP-sensitive and CHOP-resistant DLBCL helps to seek out new therapeutic targets and biomarkers indicating a high risk of relapse for R/R DLBCL, as demonstrated by Fornecker et al (41). Furthermore, Zhou et al (42) reported that the knock down of KLHL6 can upregulate its downstream molecule NOTCH2 and lead to DLBCL resistance to R-CHOP.

McCrury et al (43) demonstrated that elevated NEK2 expression serves as a predictor of poor prognosis in DLBCL and developed a novel NEK2 inhibitor, NBI-961, which is currently in preclinical development. Bram Ednersson et al (44), using quantitative proteomics of a large group of patients with DLBCL, identified the upregulation of CD64 in non-GCB DLBCL and the increase of IRF8 in GCB DLBCL. Moreover, enrichment analyses showed that most DEPs were associated with the TME and immune system regulation, suggesting potential therapeutic strategies for non-GCB DLBCL.

CD37 is a transmembrane protein highly expressed on mature B cells. Elfrink et al (45) reported increased expression of IRF8 in nuclear extracts from CD37+ DLBCL compared with CD37- DLBCL, suggesting that IRF8 acts as a transcriptional regulator for CD37. A Phase II study has demonstrated that the anti-CD37 antibody-drug naratuximab emtansine (Debiopharm) in combination with rituximab markedly improved objective response rate (ORR;44.7%) and complete response rate (31.6%) in patients with R/R DLBCL, with a manageable safety profile (46).

Prognostic biomarkers

Recent advances in proteomic-numerous have uncovered a variety of prognostically relevant proteins to DLBCL. Gao et al (47) and Lou et al (48) both conducted large-cohort proteomic profiling of patients with DLBCL and respectively established TCL1 and TIMP1 as predictors of survival. Through interactome analysis, Jiang et al (49) demonstrated that high HGAL expression attenuates DLBCL tumor cell motility by binding to certain cytoskeletal regulators. Furthermore, a series of comparative proteomic experiments have delineated molecular differences between patients with DLBCL and healthy subjects (50), R-CHOP resistant and R-CHOP sensitive DLBCL (51,52), GCB DLBCL and non-GCB DLBCL (53), CD5+DLBCL and CD5-DLBCL (54) and DLBCL with higher survival and with lower survival (55) (Table III).

Table III.

DLBCL-related biomarkers based on proteomics technology.

Table III.

DLBCL-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Gao et al, 2019TissueHSP90AB1, GNA13, LAMB2, LAMA5, YWHAZDiagnostic, therapyiTRAQ7 ABC DLBCL, 8 control(38)
van der Meeren et al, 2019Cell linesRPL23, GLMNDiagnosticSILAC7 non-GCB, 5 GCB DLBCL(39)
Reinders et al, 2020TissueCD44, PTN1, IGHM, TOM22DiagnosticSWATH18ABC, 4 unclassified, and 20 GBC DLBCL(40)
Fornecker et al, 2019TissueHK3, IDO1, CXCL13, S100A4,-8,-9,-11, CD79BTherapeuticLabel-free8 chemorefractory and 12 chemosensitive DLBCL(41)
Zhou et al, 2023Cell linesNOTCH2, KLHL6TherapeuticUnbiased proteomic9 DLBCL cell lines(42)
McCrury et al, 2024Cell linesNEK2TherapeuticTMT and Phospho-Proteomics3 DLBCL cell lines(43)
Bram Ednersson et al, 2021TissueCD64, CD85A, IFIT2, GBP1, MLKL, MNDA, IRF8, SWAP70, WEE1TherapeuticTMT202 adult DLBCL(44)
Elfrink et al, 2022Cell linesIRF8TherapeuticUnbiased proteomicCD37+, CD37- DLBCL cell lines(45)
Gao et al, 2020TissueTCL1PrognosticiTRAQ137 DLBCL(47)
Lou et al, 2023PlasmaTIMP1PrognosticDIA147 DLBCL(48)
Jiang et al, 2021Cell linesHGALPrognosticUnbiased proteomicGCB DLBCL cell lines(49)
Zhu et al, 2020PlasmaSAA, CRPPrognosticDIA19 DLBCL, 18 healthy control(50)
Ludvigsen et al, 2023Tissue, plasmaSAA, DKK3, FCN3PrognosticLabel-free53 treatment-sensitive and 11 relapsing; 24 treatment-sensitive and 7 relapsing(51)
Feng et al, 2020SerumCA1PrognosticTMT81 chemosensitive, 31 chemoresistant(52)
Kwiecińska et al, 2018TissueHsp90, BiP/Grp 78, cyclin B2Prognostic/3 non-GCB, 3 GCB DLBCL(53)
Hiratsuka et al, 2023TissueDNAJB1, DDX3XPrognosticLabel-free5 CD5+DLBCL, 6 CD5-DLBCL(54)
Zhu et al,TissueMPOPrognosticSWATH52 DLBCL(55)

[i] DLBCL, diffuse large B cell lymphoma; GCB DLBCL, germinal center B cell-like DLBCL; ABC DLBCL, activated B cell-like DLBCL; iTRAQ, isobaric tags for relative and absolute quantitation; DIA, data-independent acquisition; TMT, tandem mass tag; SILAC, Stable Isotope Labeling by Amino acids in Cell culture; SWATH, sequential window acquisition of all theoretical mass spectra.

Mantle cell lymphoma (MCL)

MCL exhibits a clinical spectrum from indolent to highly aggressive and is responsible for ~7% of NHL cases (56). Despite substantial advances in cancer therapy such as chimeric antigen receptor-T cells (CAR-T) treatment, MCL remains largely incurable.

Research has focused on identifying new therapeutic targets related to known oncoproteins overexpressing in MCL, such as SOX11, which was shown to upregulate PDGFA thus promote angiogenesis (57) and SEA1/2, the activating enzyme in SUMO pathway (58). Notably, SEA inhibitor TAK-981 can significantly reduce the proteins involved in transcription such as MAX, MGA, ARID4A/B and PML in MCL (58).

Lokhande et al (59) investigated the TME in MCL and proposed CD47, IDO1 and CTLA-4 as potential biotargets for MCL presenting with high levels of T cell infiltration, while GITR, TIGIT, LAG 3, PD-L1 and PD-L2 may be promising targets for MCL with low levels of T cell infiltration.

BL

BL is a highly aggressive B-NHL and primarily occurs in children, which comprises three clinicopathological subtypes: Sporadic BL (sBL), immunodeficiency-associated BL and endemic BL (eBL), the latter exhibiting near-ubiquitous EBV infection.

EBV-encoded proteins can promote lymphomagenesis in BL. Recent proteomic researches have revealed that Zta binds the cellular protein NFATcs, suppressing its expression to circumvent cytotoxic and apoptosis (60). EBV can overcome replication stress in B lymphocytes through the regulation of replisome-associated proteins such as ZFP91, ZNF503 and ZC3H18 (61). Additionally, El-Mallawany et al (62) initiated the first proteomic comparative report on cell lines from EBV+/- sBL, EBV+ eBL and EB- normal B lymphocytes and observed several co-upregulated proteins (TUBB2C, UCHL1 and HSP90AB1) in both eBL and sBL as well as protein elevated specifically in eBL (C1QBP and ENO1) and sBL (PCNA and SLC3A2).

Currently, BL demonstrates sensitivity to intensive chemoimmunotherapy. However, patients with R/R BL, which accounts for 20–40% of cases, continue to face a poor prognosis (46). Emerging precision therapeutic regimens, such as histone deacetylase inhibitors, may offer promising therapeutic potential.

Chronic lymphocytin leukemia (CLL)/small lymphocytic lymphoma (SLL)

CLL/SLL are indolent B-cell neoplasms characterized by a CD19+/CD5+/CE23+ immunophenotype and account for 7–10% of NHL (63). Despite differences in anatomic distribution, SLL and CLL are considered a single disease entity. Epidemiologically, CLL predominantly affects older males, with an annual incidence in the Western world of 4.2/100,000 per year (64).

CLL is uniquely identifiable among B-NHL due to its distinctive immunophenotype of peripheral blood, rendering extensive proteomic biomarker studies less prioritized for CLL diagnosis. However, Ikhlef et al (65) highlighted the role of tumor-associated macrophage-derived extracellular vesicle (EVs) in CLL-B cells in vitro, reducing apoptosis, increasing proliferation and generating BTK inhibitor (BTKi) resistance. Furthermore, EVs transported various oncogenic proteins that mediated the upregulation of IGFBP2 in CLL-B cells.

Therapeutic biomarkers

BTK, a pivotal node in the B-cell receptor (BCR) signaling cascade, is a therapeutic target for CLL. However, clinical limitations persist, particularly in individuals with BTK mutations. Consequently, recent efforts have focused on identifying alternative biological targets within the BCR axis. Aslan et al (66) performed proteomic profiling of BTK-mutant compared with BTK-wild-type CLL at the baseline level and demonstrated PCK upregulation in both cohorts after a course of pirtobrutinib (a BTKi) treatment. Griffen et al (67) identified LYN, MEF2C and NUMB as prognostic biomarkers through comparative proteomics of CLL compared with normal B cells of BTKi-treated patients with CLL. These candidates may function as BTK-cooperative targets, with HSP90 demonstrating a synergistic potential by stabilizing ROR1, a tumor-promoting protein in CLL, as reported by Liu et al (68). Among ROR1-targeted therapies, two distinct strategies have emerged with promising but differential activity profiles: Zilovertamab vedotin, a ROR1-directed antibody-drug conjugate (ADC), was evaluated in a first-in-human Phase I dose-escalation study (69). The trial demonstrated encouraging preliminary activity in MCL (ORR=46.7%) and DLBCL (ORR=60%); however, no significant antitumor response was observed in the CLL cohort, underscoring potential disease-specific variations in therapeutic response. By contrast, the anti-ROR1 monoclonal antibody cirmtuzumab showed clinically meaningful activity in CLL patients during a Phase I trial, with 17 of 22 evaluable patients (77.3%) achieving stable disease (70). As well as suppressing ROR1 signaling, cirmtuzumab attenuated stemness-related gene expression in CLL patients, further validating ROR1 as a viable therapeutic target. Notably, Merck Sharp & Dohme is poised to initiate a Phase III trial for DLBCL in December 2025. If successful, this could position ROR1-ADC as the first approved ROR1-targeted therapy, marking a significant milestone in the field.

Beyond the hyperactivation of the BCR signaling pathway, RNA splicing dysregulation is also a hallmark of molecular aberration in CLL. Johnston et al (71) identified the independent overexpression of RNA spliceosome components and other potential therapeutic targets such as CKAP4 in CLL. Additionally, Bagacean et al (72) demonstrated the prognostic capability of RNA splice proteins in a clinical cohort study and Wu et al (73) further indicated that the dysregulation is linked to overexpression of METTL3.

Furthermore, Subramaniam et al (74) conducted a comparative quantitative proteomic profiling of neutrophils from Uropathogenic Escherichia coli (UPEC)-infected CLL mouse models compared with UPEC-challenged wild-type controls, demonstrating that CLL were more susceptible to UPEC, which could be explained by neutrophil toxic dysfunction and migratory function impairment. Therapeutic restoration of CD62L and CXCR4 may help to mitigate bacterial infection risk in CLL. In parallel, Ecker et al (75) proposed another therapeutic option to activate the DNA damage response (DDR) and apoptosis by inhibiting DUSP1/6 to relieve its suppression on the MAPK pathway.

Prognostic biomarkers

Immunoglobulin heavy chain variable region (IGHV) mutation status remains the gold standard prognostic biomarker in CLL, since CLL patients with unmutated IGHV (UM-CLL) have a markedly shorter OS compared with those with mutated IGHV (M-CLL) (64). However, the IGHV mutation status does not alter with CLL progression. Therefore, studies have tried to decipher the protein mechanisms by which IGHV mutation status drives clinical heterogeneity. In this regard, Beckmann et al (76) reported that MARCKS exhibits both high expression and hyperphosphorylation in UM-CLL cells, while and Stachelscheid et al (77) identified that proto-oncoprotein TCL1A is highly expressed and CD20 is downregulated in these cells.

Meanwhile, efforts to circumvent the expense and difficulty of genetic testing have yielded novel prognostic indicators independent from IGHV. For instance, Griffen et al (78) investigated the expression pattern of DDR in CLL and Saberi Hosnijeh et al (79) performed a proteomic analysis on baseline sera sampling from patients with CLL being treated with chemoimmunotherapy. Furthermore, Lu et al (80) proposed a novel concept of CLL cell proliferation drive (CLL-PD) as a CLL prognostic determinant and confirmed that high expression of mTOR-MYC-OXPHOS pathway-associated proteins were positively associated with the intensity of CLL-PD. Furthermore, Griffen et al (67) and van Dijk et al (81) both validated the prognostic significance of H3K27Me3 and respectively proposed several other potential prognostic markers.

Given the wait-and-watch strategy for CLL, the aforementioned prognostic markers focus on evaluating therapeutic responses. Hence, there are few markers that exist for asymptomatic CLL. To fill this gap, by comparing the proteomic profilings of CLL with time-to-first treatment thresholds ≤24 and >24 months, Hengeveld (82) concluded that THEMIS2 may be an IGHV mutation independent predictor of early progression.

A detailed account of CLL-related biomarkers identified through proteomics technology is provided in Table IV.

Table IV.

CLL-related biomarkers based on proteomics technology.

Table IV.

CLL-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Ikhlef et al, 2024BloodIGFBP2, CD40, P53, BCL2Diagnostic, therapeutic, prognostic/CLL-B-cell(65)
Aslan et al, 2024BloodFAS, CD29, CAV1, MCL-1, BBC3, JNK, UBQLN4, CDKN2A, MIF, VDAC1, BAK, CCNE1, LCK, SGK3,TAZ, OCT4, PAICS, LCN2, CD20, HLADQA1, TFR1, PCKTherapeuticReverse Phase Protein Array11 BTK-mutated CLL, 7 BTK-wide-type CLL(66)
Griffen et al, 2022Blood and bone marrowCHEK1, GAB2, IGFBP2, S100A4,WEE1, ZAP90, LYN, MEF2C, NUMBTherapeuticReverse Phase Protein Array871 CLL(67)
Liu et al, 2020Cell linesROR1TherapeuticiTRAQCLL cells(68)
Ecker et al, 2023Cell linesDUSP6, DUSP1Therapeutic PhosphoproteomeB cells from healthy donors and CLL patients(75)
Johnston et al, 2018BloodCKAP4, PIGR, TMCC3, CD75, LAX1, CLEC17A, ATP2B4, WEE1, HMOX1, HMOX2, HDAC7, INPP5FTherapeutic/B cells from healthy donors and CLL patients(71)
Wu et al, 2023BloodMETTL3TherapeuticTMTB cells from healthy donors and CLL patients(73)
Subramaniam et al, 2021BloodMPO, CP, CXCR4, CD62LTherapeutic/CLL mice(74)
Beckmann et al, 2021BloodMARCKS, AK1, COX5BPrognostic PhosphoproteomeB cells from CLL patients(76)
Stachelscheid et al, 2023BloodTCL1A, CDC20Prognostic/B cells from healthy donors and CLL patients(77)
Griffen et al, 2023Blood and bone marrowCHEK1, CHEK2. pT68, DDB1, PDCD1, RAD51, SSBP2, CHEK1 pS296, RPA32, VCPPrognosticReverse Phase Protein Array727 frozen, 68 fresh, 743 blood, 52 bone marrow samples from CLL patients, 5 controls(78)
Hosnijeh et al, 2020SerumSPINT1, LY9PrognosticProximity Extension Assay51 CLL(79)
Lu et al, 2021BloodNME1, MCM4, PAICS, VDAC1, HSPD1Prognostic/46 CLL(80)
Griffen et al, 2022Blood and bone marrowH3K27Me3, MCL1, BCL2L11, NCSTN, SGK3, HSPD1, VTCN1, TRAP1, SOD1, TAZPrognosticReverse Phase Protein Array871 CLL(67)
van Dijk et al, 2022BloodEZH2, HDAC6, H3K27Me3PrognosticSingle-cell proteomics547 CLL(81)
Hengeveld et al, 2023BloodTHEMIS2PrognosticTMT40 CLL with TTFT ≤24, 40 CLL with TTFT >24(82)

[i] CLL, chronic lymphocytin leukemia; iTRAQ, isobaric tags for relative and absolute quantitation; TMT, tandem mass tag; TTFT, time-to-first treatment.

Follicular lymphoma (FL)

FL, one of the most prevalent indolent NHL, accounts for ~35% of NHL cases and up to 70% of inert lymphomas in Western populations (83). FL typically follows a relapsing-remitting clinical course (84). To overcome the therapeutic and prognostic evaluation bottlenecks in FL, high-resolution proteomic approaches are revolutionizing therapeutic and prognostic biomarkers discovery for FL.

Prognostic biomarkers

Histological transformation (HT) to aggressive DLBCL occurs in 10–70% of FL cases, representing the primary cause of FL mortality. Notably, most patients with FL remain asymptomatic until HT development. Consequently, a large proportion of FL diagnoses are established at advanced stages with a median diagnosis age of 65 years (83). These clinical realities underscore a critical need for reliable prognostic biomarkers to enable early intervention and improve survival outcomes for FL.

In this context, comparative proteomic analyses of FL with or without subsequent HT have identified candidate protein biomarkers associated with disease progression. Specifically, Enemark et al (85) demonstrated upregulated apoptotic proteins such as CASP3 and Monrad et al (86) and Ludvigsen et al (87) reported enhanced expression of glycolytic enzymes such as ALDOA and GAPDH in FL with HT. Notably, PFK158, a novel glycolysis inhibitor has entered clinical evaluation for its antitumor efficacy in FL.

Recent proteomic advances have markedly enhanced the identification of prognostic biomarkers in FL. In 2023, Deng et al (88) performed comparative profiling of patients with FL and stratified cohorts into long-lasting remission and early progression within 2 years (POD24), revealing the increased expression of GLUT1, immunosuppressive markers and related chemokines along with the decreased expression of inflammatory cytokines in POD24 FL. In 2024, Radtke et al (89) performed single-cell proteomic analysis on lymphoid follicles from healthy individuals and patients with FL and showed that an increased proportion of DC-SIGN+ cells and the existence of IRF4+ tumor B lymphocytes were associated with early relapse and low survival in FL, respectively.

Therapeutic biomarkers

Radiotherapy and chemotherapy combined with immunotherapy such as rituximab are the mainstream treatments for FL (83). However, current therapies fail to prevent relapse in most patients with FL and early progression after initial treatment is associated with shorter survival (90). However, emerging therapies do not consistently meet current safety standards, but suggest that the selection of therapeutic targets is shifting towards protein-based biomarkers. In 2021, a large-scale proteomic comparison between FL and normal B cells was performed using the total protein approach by Duś-Szachniewicz et al (91), demonstrating that DEPs were mostly enriched in BCR signaling pathways and cellular adhesion molecules interactions. These findings, along with other key proteomics-based discoveries in FL, are summarized in Table V.

Table V.

FL-related biomarkers based on proteomics technology.

Table V.

FL-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Enemark et al, 2023TissueCASP3, MCL1, BAX, BCL-xL, BCL-RamboPrognosticLabel-free20 FL with HT, 34 FL without HT(85)
Monrad et al, 2020TissueALDOA, GAPDHPrognostic/5 FL without HT, 7 FL with HT, 6 secondary DLBCL, 9 de novo DLBCL(86)
Deng et al, 2023Cell linesGLUT1, PD-1, PD-L1, CD206, CD163, IL-10, TGFβ, CCL17, CCL22, CCL5, CXCL5, TNF-α, IFN-γ, IL-12PrognosticTMTFL cell lines(88)
Radtke et al, 2024TissueDC-SIGN, IRF4PrognosticSingle-cell proteomicsFL with early relapse, controls(89)
Duś-Szachniewicz et al, 2021Cell linesLYN, CD79B, VAV1, ICAM1, PIK3CA, ITGAVTherapeutic/15 FL, 14 controls(91)

[i] FL, follicular lymphoma; HT, histological transformation; TMT, tandem mass tag.

Marginal zone lymphoma (MZL)

Accounting for ~7% of NHL, MZL represents the second most common indolent lymphoma. MZL originates from B lymphocytes in the marginal zone and is classified into three subtypes based on anatomical involvement: extranodal MZL (EMZL), splenic MZL (SMZL) and nodal MZL (NMZL). While the tumor progresses slowly, with a median OS >10 years, the advanced-stage disease remains incurable, similar to FL (92).

EZML

EMZL accounts for 70% of MZL (92), which arises in diverse mucosal tissues, such as the stomach, lungs, ocular adnexa (OA) and skin (93), rendering highly heterogeneous (95). Therefore, current research often concentrates on tissue-specific EMZL variants.

OA-EMZL constitutes the most frequent subtype of OA lymphoma (94). Studies during 2022 and 2023 by Shi et al (9597) validated the diagnostic potential of IgM and DNAJC9 and the prognostic potential of PCNA, MCM6 and MCM4 in OA-EMZL.

Additionally, it is common for EMZL to develop from chronic inflammation, including autoimmune disorders such as primary Sjögren's syndrome (PSS) and infections such as Helicobacter pylori (HP) (98,99). Protein markers enabling the differentiation between lymphoid hyperplasia and malignant transformation will help to reduce unnecessary interventions.

PSS is an autoimmune disorder characterized by lymphocyte hyperplasia and exocrine gland dysfunction (100). PSS is associated with a 1,000-fold increased risk of parotid lymphoma compared with the general population (101); however, the underlying mechanisms remain poorly understood. Jazzar et al (101) and Cui et al (102) reported a series of diagnostic protein markers capable of distinguishing patients with PSS from healthy individuals and patients with PSS with EMZL from patients with PSS without lymphoma.

Additionally, gastric EMZL (GML) is the most common subtype of digestive MZL, presenting HP infection in most of these cases (103). There is a close association between HP eradication and a favorable remission rate in EMZL (99). By exploring the molecular mechanisms by which HP induces GML, candidate biomarkers can be detected for timely diagnosis and effective remedies:

In 2020, Zou et al (103) infected BGC823 human gastric cancer cells and GES-1 human healthy gastric epithelial cells with HP 26695 and HP isolated from GML, respectively, and conducted proteomics comparison between HP 26695-infected BGC823 and GML originated HP infected-BGC823. GML-related DEPs and GML-specific DEPs were subsequently identified, with the former referring to DEPs associated with GML-isolated HP infection and the latter referring to proteins that were only associated with GML-isolated HP infection but did not differentially express or were not expressed after HP 26695 infection. Most GML-specific DEPs served roles in cancer pathways.

SMZL

SMZL constitutes 20% of all MZL cases and ~25% of patients present asymptomatically at initial diagnosis, but the majority of patients have favorable outcomes, except for 10% of cases progress to DLBCL through HT (92).

Few proteomic studies focus on SMZL pathogenesis. Notably, in 2022, Tang et al (104) employed CITE-seq technology to delineate two specific regulatory T cell (Treg) subgroups in SMZL and deduced that patients with increased levels of CD161+ Tregs had an improved prognosis, while the opposite was true for patients with abundant CD26+ Tregs. Moreover, the activation of the IL2/STAT5 pathway contributes to the induction of CD26+ Tregs, which can be reversed by inhibiting STAT5.

NMZL

NMZL is extremely rare and no NMZL-specific protein biomarkers have been identified to date. All experimental findings about MZL are comprehensively detailed in Table VI.

Table VI.

MZL-related biomarkers based on proteomics technology.

Table VI.

MZL-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Shi et al, 2023SerumIgMDiagnosticDIA28 EMZL, 10 DLBCL, 10 IOI, 10 RLH(95)
Shi et al, 2022TissueDNAJC9DiagnosticTMT40 EMZL, 12 IOI, 6 RLH, 13 controls(96)
Zhu et al, 2023TissuePCNA, MCM6, MCM4PrognosticTMT6 EMZL with distant recurrence, 21 EMZL without distant recurrence(97)
Jazzar et al, 2018SalivaS100A8, S100A9Diagnostic/2 SS, 2 SS at risk of developing MALT, 2 controls(101)
Cui et al, 2017Saliva and tissueCFL1, ENO1, RGI2Diagnostic/6 pSS, 6 pSS/MALT, 6 controls(102)
Zou et al, 2020Cell linesMCM6, RPN2, ILF2, RPL35A, EIF3B etc.DiagnosticTMTBGC823 cell and 26695 cell(103)
Tang et al, 2022TissueCD161,CD26PrognosticSingle-cell proteomics24 SMZL, 12 controls(104)

[i] MZL, marginal zone lymphoma; DIA, data-independent acquisition; EMZL, extranodal MZL; DLBCL, diffuse large B cell lymphoma; IOI, idiopathic orbital inflammation; RLH, reactive lymphoid hyperplasia; pSS, primary Sjögren's syndrome; MALT, mucosa-associated lymphoid tissue; SMZL, splenic MZL; TMT, tandem mass tag.

T cell lymphoma

T cell lymphoma accounts for 10–15% of NHL cases and is highly aggressive and heterogeneous. Despite the research progress on aggressive B-NHLs, reports on T cell lymphomas lags behind. Although the CHOP regimen is used for treating T-cell lymphoma, the 5-year OS is only 25–35% (105).

Peripheral T cell lymphoma, non-specific (PTCL-NOS)

PTCL-NOS, the most prevalent and molecularly heterogeneous PTCL subtype, is diagnosed through the exclusion of other defined T cell lymphomas.

Despite its clinical significance, proteomic characterization of PTCL-NOS remains limited. A landmark 2018 study by Ludvigsen et al (106) conducted comprehensive proteomic profiling of pretreatment biopsies through three comparative analyses: PTCL-NOS compared with non-neoplastic lymphoid tissues, PTCL-NOS with poor OS compared with PTCL-NOS with superior OS and PTCL-NOS with chemotherapy-sensitive and survival >2 years compared with PTCL-NOS with primary refractory and survival <100 days. This study showed that a high abundance of ENO1 associated with a poor outcome in PTCL-NOS.

Anaplastic large cell lymphoma (ALCL)

ALCL, a CD30-positive subtype of T cell lymphoma, accounts for ~3% of adult NHL (107) and 10–20% of pediatric lymphomas (108). A majority of ALCL cases undergo a t(2;5)(p23;q35) translocation, which results in the expression of nucleophosmin-anaplastic lymphoma kinase (NPM-ALK), a tyrosine kinase (109).

In ALK-positive ALCL, drug addiction emerges following resistance to ALK tyrosine kinase inhibitors. This phenomenon is mechanistically driven by aberrant STAT1 activation, which triggers a tumor suppressive gene expression program upon drug withdrawal, leading to toxic hyperactivation of oncogenic signaling pathways, as noted by Rajan et al (110). Furthermore, Lovisa et al (111) demonstrated high expression levels of HSP90AA1, SPP1/OPN and TNC in plasmatic circulating small EVs from pediatric patients with ALCL compared with healthy donors. Moreover, Hu et al (112) showed that ALK upregulated PFKFB3 via its downstream transcription factor STAT3 in ALCL and ultimately resulted in the promotion of metabolic reprogramming of tumor cells. Thus PFKFB3 inhibitors can potentially overcome drug resistance in patients with TKi-resistant ALCL with an ALK mutation.

Angioimmunoblastic T cell lymphoma (AITL)

AITL, deriving from mature T follicular helper cells, is relatively uncommon with a 5-year OS rate of 32–44% (113).

Furthermore, a recent study distinguished AITL from myeloproliferative neoplasms (MPN) (114). The two diseases develop from different pathogenetic mechanisms and the combination of the disease may result in a poorer patient prognosis. Histomorphometry cannot be used to detect AITL with or without MPN and there are currently no effective diagnostic markers. Holst et al (114) demonstrated the upregulation of DNAJA2 and downregulation of IDH2 and CS in MPN-AITL.

Extranodal natural killer/T cell lymphoma (ENKTCL)

ENKTCL is a rare malignancy derived from peripheral NK/T cells, primarily affecting extranodal sites. Although the condition is relatively rare in Western populations, it exhibits a markedly higher prevalence in South America and Asia (115). EBV is the main causative agent of ENKTCL, although the precise pathogenic mechanisms remain poorly understood (116,117).

Extranodal nasal NK/T cell lymphoma (ENKTL), the most common type of ENKTCL, often presents with symptoms mimicking ENT disorders, leading to frequent misdiagnosis and delayed treatment. Consequently, there is a pressing demand for ENKTL diagnostic markers. Li et al (118) demonstrated the overexpression of HRG in the cerebrospinal fluid samples from patients with ENKTL patients compared with patients without ENKTL, highlighting its potential diagnostic utility.

Patients with ENKTCL can experience chemotherapy resistance and relapse, with a median survival of ~4 months post-relapse (119). Due to the limited availability of prognostic markers, Zhou (120) conducted serum proteomic analysis on 32 patients with advanced ENKTCL, categorizing them into responders and non-responders based on predefined criteria. The findings showed upregulation of S100A9 and ORM1 in the non-responding group, suggesting their potential role in predicting treatment outcomes. Further insights into ENKTCL pathogenesis and treatment response were provided by Gong et al (121), who investigated proteomic differences in cerebrospinal fluid from patients with NKTCL with ethmoidal sinus metastasis before and after cytarabine-based chemotherapy. The authors reported upregulation of CPE and downregulation of IGFBP2 post-treatment, indicating potential biomarkers for therapeutic monitoring. Additionally, Qiu et al (122) reported elevated levels of YWHAE in asparaginase-based chemoresistant patients with ENKTL compared with sensitive patients, further underscoring the role of proteomic alterations in chemoresistance.

Mycosis fugnoides (MF)/Sézary syndrome (SS)

MF/SS represents the most prevalent subtypes of cutaneous T-cell lymphoma (CTCL), sharing significant overlap in clinical and biological characteristics. MF accounts for ~60% of CTCL (123) and typically follows an indolent course, presenting with early manifestations of cutaneous plaques and lymph node and visceral metastases at an advanced stage. By contrast, SS, comprising ~5% of CTCL (124), is rarer and may arise de novo or evolve from MF. SS is characterized by a more aggressive clinical course and poorer prognosis. Given the atypical clinical and histological manifestations along with low tumor burden in the early phases of MF/SS, the existing means of diagnosis are relatively ineffective. However, recent proteomic studies have identified novel diagnostic markers by comparing MF tissues with benign inflammatory diseases or healthy controls (125127). In addition, Lemchak et al (128) identified DEPs in early-stage biopsies from patients with invasive compared with non-invasive MF, offering potential prognostic biomarkers for disease progression. All experimental findings specific to MF/SS are detailed in Table VII.

Table VII.

MF/SS-related biomarkers based on proteomics technology.

Table VII.

MF/SS-related biomarkers based on proteomics technology.

First author/s, yearSample natureProtein biomarkerType of biomarkerProteomic technologyNumber of sample(Refs.)
Techner et al, 2023TissueKLK6, PI3, HMOX1, CSTBDiagnosticProximity extension assay39 MF, 21 healthy control(125)
Qureshi et al, 2023Stratum corneumGSDMC, PSMD6, PDIA4, ERP29, CD44DiagnosticDIA28 MF and normal stratum(126)
Leng et al, 2022TissueDYNC1I2, CD14, COL18A1, CRABP2DiagnosticDIA4 early-stage, 10 advanced-stage MF,11 healthy control(127)
Lemchak et al, 2018TissuePARP1, HSAP1L, THSPA1A, DDX17, LAP2αPrognosticGlobal proteomic4 aggressive, 4 non-aggressive(128)

[i] MF, mycosis fugnoides; SS, Sézary syndrome; DIA, data-independent acquisition.

Conclusions and future prospective

Proteomics, a core discipline of systems biology, is undergoing a paradigm shift from traditional protein identification to single-cell resolution and multi-dimensional detection. The integration of machine learning, particularly in biomarker screening, protein-protein interaction network construction and functional prediction, has enhanced the efficiency and accuracy of proteomic data analysis. Notably, biomarker group-based diagnostic strategies have emerged as a primary focus in clinical proteomics due to their superior sensitivity and specificity compared with single biomarkers.

However, proteomics research faces several challenges: i) Sample variability caused by tissue heterogeneity, protein degradation and contamination compromises result reliability; ii) the wide dynamic range of protein abundance leads to signal masking, where high-abundance proteins obscure critical low-abundance regulatory proteins; iii) dynamic protein expression influenced by microenvironment and cellular states increases experimental standardization complexity; and iv) despite advances, current mass spectrometry technologies still lack sufficient sensitivity, resolution and throughput for comprehensive analysis, particularly in large-scale post-translational modification studies.

Meanwhile, a substantial proportion of candidate biomarkers remain confined to preclinical investigation or early-phase clinical trials. The translation from discovery to clinical application is a complex, costly and lengthy process, being hindered by: i) The need for multicenter, large-scale clinical validation to assess biomarker robustness across populations and disease stages; ii) stringent regulatory requirements, including analytical validation, clinical utility verification and clinical validity confirmation; and iii) additional constraints such as assay standardization, cost-effectiveness analysis and ethical considerations.

Nevertheless, the integration of single-cell proteomics and multi-omics technologies offers promising avenues for accelerating the discovery and validation of lymphoma-specific biomarkers. This multi-omics approach overcomes the limitations of single-omics studies through data complementarity, enhancing result reliability. Such integrated strategies will facilitate the clinical translation of proteomics research, ultimately enabling precise molecular classification, personalized treatment and prognostic assessment in lymphoma management.

Acknowledgements

Not applicable.

Funding

This work was supported by the Natural Science Foundation of Jilin [grant numbers YDZJ202201ZYTS117].

Availability of data and materials

Not applicable.

Authors' contributions

QL and JL authored or reviewed drafts of the paper, provided figures and tables, and approved the final draft. ZL provided tables and helped with proofreading of draft. LB prepared tables and approved the final draft. All authors read and approved the final version of the manuscript. Data authentication is not applicable.

Ethics approval and consent to participate

Not applicable.

Patient consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

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Liu Q, Ling J, Li Z and Bi L: Advances in lymphoma biomarkers research based on proteomics technology (Review). Oncol Rep 54: 108, 2025.
APA
Liu, Q., Ling, J., Li, Z., & Bi, L. (2025). Advances in lymphoma biomarkers research based on proteomics technology (Review). Oncology Reports, 54, 108. https://doi.org/10.3892/or.2025.8941
MLA
Liu, Q., Ling, J., Li, Z., Bi, L."Advances in lymphoma biomarkers research based on proteomics technology (Review)". Oncology Reports 54.3 (2025): 108.
Chicago
Liu, Q., Ling, J., Li, Z., Bi, L."Advances in lymphoma biomarkers research based on proteomics technology (Review)". Oncology Reports 54, no. 3 (2025): 108. https://doi.org/10.3892/or.2025.8941