Research Article | Vol. 7, Issue 1 | Journal of Dental Health and Oral Research | Open Access |
Shalma Banu Abdul Malik1, Yoithapprabhunath Thuckanaickenpalayam Ragunathan2*, Kaviya Ganesan3, Ganapathy Nalliappan2, Ilayaraja Vadivel2, Dineshshankar Janardhanam2
1Senior Resident, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamil Nadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
2Professor, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamilnadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
3Junior Resident, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamilnadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
*Correspondence author: Prof. Dr. Yoithap Prabhunath TR, MDS, Ph.D., Professor, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamil Nadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India;
Email: [email protected]
Citation: Malik SBA, et al. Bio-Informatic Analysis of Protein Kinase-C in Oral Squamous Cell Carcinoma Through Network Topology: An In-Silico Study. J Dental Health Oral Res. 2026;7(1):1-22.
Copyright© 2026 by Prabhunath Y, et al. All rights reserved. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
| Received 11 December, 2025 | Accepted 04 January, 2026 | Published 11 January, 2026 |
Background: Protein Kinase C (PKC) is a family of serine/threonine kinases that regulate diverse signalling pathways involved in cancer development, including Oral Squamous Cell Carcinoma (OSCC). This study aims to investigate the molecular interaction network of PKC in OSCC, identify potential drug targets through pan-drug analysis and evaluate therapeutic candidates using molecular docking.
Materials and Methods: Gene and protein sequence data related to PKC and OSCC were obtained from publicly available databases. Overlapping targets were identified and used to construct a Protein-Protein Interaction (PPI) network using STRING and Cytoscape. Functional enrichment and network topology analyses identified key hub genes. Drug-gene interactions were analysed using PanDrugs and the top-ranked drug, CETUXIMAB, was subjected to molecular docking against PKC Alpha (PRKCA) using AutoDock Vina. Ligand-protein interactions were evaluated for binding affinity and hydrogen bonding.
Results: Out of 4945 OSCC-associated and 101 PKC-related genes, 64 common targets were identified. EGFR, ERBB2 and PIK3CA were key hubs in the PPI network. CETUXIMAB showed the highest DScore (1), targeting multiple oncogenic proteins including PRKCA. Docking analysis revealed a binding energy of -5.9 kcal/mol with three hydrogen bonds at Val A:420, Val A:353 and Asp A:481, indicating strong interaction.
Conclusion: This in-silico study highlights the role of PKC in OSCC and identifies CETUXIMAB as a promising therapeutic candidate for repurposing. The findings support further experimental and clinical validation to explore PKC-targeted interventions in oral cancer.
Keywords: Protein Kinase C; Oral Squamous Cell Carcinoma; Gene Ontology; Molecular Docking; Pan-Drug Analysis; Protein-Protein Interaction; Cetuximab
Oral Squamous Cell Carcinoma (OSCC) is among the most prevalent and aggressive malignancies affecting the head and neck region, accounting for a significant proportion of cancer-related morbidity and mortality worldwide [1]. Despite advances in diagnostic and therapeutic strategies, the prognosis of OSCC remains poor due to late-stage detection, metastasis and resistance to conventional therapies. Understanding the molecular mechanisms underlying OSCC progression is essential for the identification of novel diagnostic markers and therapeutic targets [2].
Protein Kinase C (PKC) is a family of serine/threonine kinases that play a central role in regulating diverse cellular processes, including cell proliferation, differentiation, apoptosis and immune responses. PKC isozymes are activated by various stimuli such as Diacylglycerol (DAG) and calcium ions and are implicated in several disease pathways, particularly cancer, neurodegenerative disorders and cardiovascular diseases [3]. Understanding the molecular interactions and potential therapeutic targeting of PKC is essential for the development of effective pharmacological interventions. Protein-Protein Interactions (PPIs) involving PKC are crucial for its localization, activation and function within the cell. PKC interacts with a wide range of proteins, including scaffolding proteins (e.g., RACKs – Receptors for Activated C-Kinase), cytoskeletal elements, transcription factors and other kinases. These interactions often dictate the specificity and outcome of PKC signalling pathways [4]. Bioinformatics tools and interaction databases such as STRING, BioGRID and IntAct can be used to map the interactome of PKC. Analysis of these interactions helps in identifying potential co-regulators and signalling networks in which PKC is involved. Molecular docking is a computational technique that predicts the preferred orientation of one molecule (typically a small drug-like compound) to a second (such as a protein target) to form a stable complex [5]. In the context of PKC, molecular docking allows the exploration of potential inhibitors or modulators that can selectively bind to the catalytic or regulatory domains of various PKC isoforms. Docking studies often use crystallographic structures of PKC retrieved from the Protein Data Bank (PDB). Ligands are virtually screened using tools such as AutoDock, Glide or MOE to evaluate their binding affinities and interaction profiles [6]. These in-silico experiments provide insight into the binding pockets, hydrogen bond formation, hydrophobic interactions and potential inhibitory activity of candidate compounds [7].
Pan-drug analysis refers to evaluating the interaction and susceptibility of a single protein target across a broad spectrum of pharmacological agents. For PKC, this type of analysis is particularly valuable for identifying multi-targeted kinase inhibitors or designing isoform-specific drugs to avoid undesirable off-target effects. Using platforms like DGIdb (Drug Gene Interaction Database) or PharmMapper, researchers can identify known and predicted drugs that may modulate PKC activity [8,9]. Pan-drug analysis assists in categorizing compounds into activators, inhibitors or modulators and assesses their pharmacodynamic and pharmacokinetic profiles. This process is instrumental in drug repurposing efforts, especially in complex diseases like cancer, where PKC may contribute to drug resistance mechanisms [10,11].
The Protein-Protein Interactions (PPIs) involving PKC can provide valuable insights into its functional associations and influence within the molecular network of OSCC [12]. Additionally, molecular docking approaches allow for the virtual screening of compounds that may modulate PKC activity, paving the way for the development of targeted therapies [13]. A pan-drug analysis further enables the assessment of PKC’s responsiveness to a wide range of pharmacological agents, facilitating drug repurposing and personalized treatment strategies. This in-silico study aims to explore the role of PKC in OSCC through an integrated approach involving network topology-based analysis of PPIs, molecular docking and pan-drug profiling. By leveraging bioinformatics and computational tools, this study seeks to uncover potential drug candidates and deepen our understanding of PKC’s molecular landscape in the pathogenesis of OSCC [14].
This In-silico study was conducted to explore the interaction network of Protein Kinase C (PKC) in Oral Squamous Cell Carcinoma (OSCC) and to identify potential therapeutic candidates through molecular docking and drug-target interaction analysis.
Gene and protein sequences for PKC isoforms (α, β, δ, ε) were retrieved from UniProt and NCBI databases. Additional OSCC-related genes were identified via GeneCards and The Human Protein Atlas. This dataset served as the basis for interaction and functional analyses.
PPI data for Homo sapiens were obtained from the STRING database using a confidence score cutoff of 0.7. The resulting network was visualized and analysed in Cytoscape (v3.9.1) using NetworkAnalyzer and CytoHubba to identify key hub proteins associated with OSCC and PKC.
Gene Ontology (GO) and KEGG pathway analyses were conducted using DAVID and KEGG tools to evaluate biological processes, molecular functions and pathways relevant to carcinogenesis, including signal transduction, apoptosis and EMT.
Drug-target interactions were explored using DGIdb and PharmGKB. Drug candidates were filtered for relevance to cancer and their pharmacological properties were evaluated using SwissADME. Lipinski’s criteria and ADME profiles were considered to identify promising small molecules.
Generated protein models were utilized for the process of docking. Protein three-dimensional structure was analysed for error using pymol software. Similarly, the ions molecules and standard inhibitors if present were also removed using pymol visualization tool. The Chem3D ultra 11.0 software was used to construct the three-dimensional structures of the ligands to be studied. Kollmann charges, polar hydrogen bonds were added to the protein, simultaneously all bound water and ligands were removed. Modelling of the drug compound i.e ligand molecule was carried out using java script based Marvin Sketch software.
Protein Preparation: 3D structures of PKC isoforms and selected hub proteins were sourced from RCSB PDB or generated using SWISS-MODEL. Structures were cleaned and pre-processed using latest version of Auto Dock Vina v.1.2.0. software was used for the automated docking study. The auto grid, component of auto dock, was used to compute the grid maps with the interaction energies depending upon the macromolecule target of the docking study. The grid centre was placed on the active target site region of the enzyme. Then binding free energy of the inhibitors was evaluated using automated docking studies. The best conformations search was done by adopting Genetic Algorithm with Local Search (GA-LS), method. The docking parameters were set default values with 100 independent docking runs using the software ADT (Auto-Dock Tool Kit). Root Mean Square (RMS) tolerance of 2.0 Å was performed using structures generated after completion of docking via cluster analysis. Molecular graphics and visualization were performed with the Discovery studio visualizer tool. 100 evaluations were carried for each ligand with all protein targets and the posed.
Docking results were integrated with network and pharmacological data to identify the most promising compounds.
A total of 4945 genes associated with Oral Squamous Cell Carcinoma (OSCC) and 101 genes interacting with Protein Kinase C (PKC) were identified, with 64 overlapping genes (Fig. 1, Table 1 ,2). These common targets were analysed using PPI network topology, gene ontology and pan-drug screening to evaluate their relevance in OSCC progression and therapeutic potential.

Figure 1: Schematic representation of Common genes among Gene cards and PKC string analysis.
S.No | OSCC No of Targets | Gene Targets of PKC | Common Targets with Protein Kinase C |
1 | 4945 | 101 | 64 |
Table 1: Common targets between PKC and SOCC.
S.No | Target Name | Uniprot ID | Target Genes |
1 | Actin Beta | P60709 | ACTB |
2 | B Cell Linker | Q8WV28 | BLNK |
3 | B-Raf Proto-Oncogene, Serine/Threonine Kinase | P15056 | BRAF |
4 | Caspase 3 | P42574 | CASP3 |
5 | Cbl Proto-Oncogene | P22681 | CBL |
6 | Cadherin 1 | P12830 | CDH1 |
7 | CF Trans membrane Conductance Regulator | P13569 | CFTR |
8 | Cytochrome B-245 Alpha Chain | P13498 | CYBA |
9 | Decorin | P07585 | DCN |
10 | Discs Large MAGUK Scaffold Protein 4 | P78352 | DLG4 |
11 | EGF Containing Fibulin Extracellular Matrix Protein 2 | O95967 | EGF |
12 | Epidermal Growth Factor Receptor | P00533 | EGFR |
13 | Erb-B2 Receptor Tyrosine Kinase 2 | P04626 | ERBB2 |
14 | Erb-B2 Receptor Tyrosine Kinase 3 | P21860 | ERBB3 |
15 | Epiregulin | O14944 | EREG |
16 | Ezrin | P15311 | EZR |
17 | Fos Proto-Oncogene, AP-1 Transcription Factor Subunit | P01100 | FOS |
18 | FosB Proto-Oncogene, AP-1 Transcription Factor Subunit | P53539 | FOSB |
19 | GRB2 Associated Binding Protein 1 | Q13480 | GAB1 |
20 | G Protein Subunit Alpha Q | P50148 | GNAQ |
21 | Heparin Binding EGF Like Growth Factor | Q99075 | HBEGF |
22 | HRas Proto-Oncogene, GTPase | P01112 | HRAS |
23 | Integrin Subunit Alpha 5 | P08648 | ITGA5 |
24 | Integrin Subunit Alpha V | P06756 | ITGAV |
25 | Integrin Subunit Beta 1 | P05556 | ITGB1 |
26 | Inositol 1,4,5-Trisphosphate Receptor Type 1 | Q14643 | ITPR1 |
27 | JunD Proto-Oncogene, AP-1 Transcription Factor Subunit | P17535 | JUND |
28 | KRAS Proto-Oncogene, GTPase | P01116 | KRAS |
29 | Mitogen-Activated Protein Kinase Kinase 2 | P36507 | MAP2K2 |
30 | Mitogen-Activated Protein Kinase 10 | P53779 | MAPK1 |
31 | Mitogen-Activated Protein Kinase 3 | P27361 | MAPK3 |
32 | Mechanistic Target of Rapamycin Kinase | P42345 | MTOR |
33 | NRAS Proto-Oncogene, GTPase | P01111 | NRAS |
34 | Neuregulin 1 | Q02297 | NRG1 |
35 | Platelet Derived Growth Factor Receptor Beta | P09619 | PDGFRB |
36 | 3-Phosphoinositide Dependent Protein Kinase 1 | O15530 | PDPK1 |
37 | Profilin 1 | P07737 | PFN1 |
38 | Phosphatidylinositol-4,5-Bisphosphate 3-Kinase Catalytic Subunit Alpha | P42336 | PIK3CA |
39 | Phospholipase C Beta 1 | Q9NQ66 | PLCB1 |
40 | Phospholipase C Beta 4 | Q15147 | PLCB4 |
41 | Phospholipase C Epsilon 1 | Q9P212 | PLCE1 |
42 | Phospholipase C Gamma 1 | P19174 | PLCG1 |
43 | Phospholipase D1 | Q13393 | PLD1 |
44 | Phospholipase D2 | O14939 | PLD2 |
45 | Protein Phosphatase 2 Catalytic Subunit Alpha | P67775 | PPP2CA |
46 | Protein Phosphatase 2 Regulatory Subunit B’Alpha | Q15172 | PPP2R5A |
47 | Protein Kinase C Alpha | P17252 | PRKCA |
48 | Protein Kinase C Beta | P05771 | PRKCB |
49 | Protein Kinase C Delta | Q05655 | PRKCD |
50 | Protein Kinase C Gamma | P05129 | PRKCG |
51 | Protein Tyrosine Kinase 2 | Q05397 | PTK2 |
52 | Paxillin | P49023 | PXN |
53 | Receptor For Activated C Kinase 1 | P63244 | RACK1 |
54 | RAS P21 Protein Activator 1 | P20936 | RASA1 |
55 | Ras Homolog, MTORC1 Binding | Q15382 | RHEB |
56 | Ribosomal Protein L29 | P47914 | RPL29 |
57 | Ribosomal Protein L35 | P42766 | RPL35 |
58 | Ribosomal Protein S27a | P62979 | RPS27A |
59 | Ribosomal Protein S3 | P23396 | RPS3 |
60 | Ribosomal Protein S6 Kinase B1 | P23443 | RPS6KB1 |
61 | Syndecan 4 | P31431 | SDC4 |
62 | Sphingosine Kinase 1 | Q9NYA1 | SPHK1 |
63 | Transient Receptor Potential Cation Channel Subfamily V Member 4 | Q9HBA0 | TRPV4 |
64 | Vascular Cell Adhesion Molecule 1 | P19320 | VCAM1 |
Table 2: Common genes among Gene cards and PKC string analysis.
Data Mining: Gene and Protein Targets of PKC
A total of 101 genes are identified as Gene/protein said to have ineteraction with protein kinase C. Imporatnt gene and protein targets of PKC are listed below encompass a diverse array of molecules involved in various cellular processes.
Some notable targets include:
Disease Specific Target Prediction
Squamous Oral Cell Carcinoma (SOCC) is a complex disease with multiple genetic alterations involved in its development and progression. Gene card databases was used for predicting disease specific targets. A total of 4945 genes were identified as gene and protein targets for Squamous Oral Cell Carcinoma (SOCC)
Network and Interaction Analysis
PPI analysis revealed EGFR, ERBB2, HRAS, KRAS and PIK3CA as key hubs, indicating their pivotal role in OSCC (Fig. 2, Table 3).

Figure 2: Protein-protein interaction network for common genes retrieved from string database.
Gene Name | Degree | Average Shortest Path Length | Betweenness Centrality | Closeness Centrality | Topological Coefficient |
ERBB2 | 6 | 2.70 | 0.03 | 0.37 | 0.35 |
FOS | 4 | 5.07 | 0.13 | 0.20 | 0.50 |
PRKCD | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
JUND | 2 | 6.00 | 0.00 | 0.17 | 0.75 |
PRKCB | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
EGF | 4 | 2.93 | 0.00 | 0.34 | 0.47 |
EREG | 1 | 3.03 | 0.00 | 0.33 | 0.00 |
PLCB4 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
MAPK3 | 3 | 4.27 | 0.09 | 0.23 | 0.56 |
FOSB | 2 | 6.00 | 0.00 | 0.17 | 0.75 |
DCN | 1 | 3.03 | 0.00 | 0.33 | 0.00 |
MTOR | 2 | 1.00 | 1.00 | 1.00 | 0.00 |
CDH1 | 1 | 3.03 | 0.00 | 0.33 | 0.00 |
RPS3 | 4 | 1.00 | 0.00 | 1.00 | 1.00 |
HRAS | 5 | 2.43 | 0.17 | 0.41 | 0.33 |
SDC4 | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
GNAQ | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
BLNK | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
CFTR | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
RACK1 | 4 | 1.00 | 0.00 | 1.00 | 1.00 |
ITGB1 | 4 | 3.43 | 0.19 | 0.29 | 0.25 |
RPL29 | 4 | 1.00 | 0.00 | 1.00 | 1.00 |
DLG4 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
ITGA5 | 1 | 4.40 | 0.00 | 0.23 | 0.00 |
MAPK1 | 3 | 4.27 | 0.09 | 0.23 | 0.56 |
KRAS | 4 | 2.47 | 0.11 | 0.41 | 0.40 |
PRKCG | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
RHEB | 1 | 1.50 | 0.00 | 0.67 | 0.00 |
MAP2K2 | 3 | 3.53 | 0.29 | 0.28 | 0.50 |
EGFR | 17 | 2.07 | 0.72 | 0.48 | 0.18 |
NRAS | 3 | 2.53 | 0.11 | 0.39 | 0.48 |
RPS6KB1 | 1 | 1.50 | 0.00 | 0.67 | 0.00 |
EZR | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
TRPV4 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
RPL35 | 4 | 1.00 | 0.00 | 1.00 | 1.00 |
PTK2 | 4 | 2.67 | 0.30 | 0.38 | 0.33 |
GAB1 | 1 | 3.03 | 0.00 | 0.33 | 0.00 |
BRAF | 4 | 2.90 | 0.33 | 0.34 | 0.46 |
PDPK1 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
PPP2R5A | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
PLCB1 | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
ITGAV | 1 | 4.40 | 0.00 | 0.23 | 0.00 |
PLD2 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
PRKCA | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
PIK3CA | 6 | 2.60 | 0.03 | 0.38 | 0.36 |
CYBA | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
SPHK1 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
PLCG1 | 2 | 3.00 | 0.00 | 0.33 | 0.56 |
ERBB3 | 6 | 2.87 | 0.01 | 0.35 | 0.38 |
RASA1 | 1 | 3.40 | 0.00 | 0.29 | 0.00 |
PPP2CA | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
CBL | 1 | 3.03 | 0.00 | 0.33 | 0.00 |
ACTB | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
HBEGF | 3 | 2.97 | 0.00 | 0.34 | 0.53 |
PLCE1 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
VCAM1 | 1 | 4.40 | 0.00 | 0.23 | 0.00 |
ITPR1 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
RPS27A | 4 | 1.00 | 0.00 | 1.00 | 1.00 |
NRG1 | 3 | 2.97 | 0.00 | 0.34 | 0.57 |
PLD1 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
PXN | 1 | 3.63 | 0.00 | 0.28 | 0.00 |
PDGFRB | 2 | 3.00 | 0.00 | 0.33 | 0.56 |
PFN1 | 1 | 1.00 | 0.00 | 1.00 | 0.00 |
CASP3 | 0 | 0.00 | 0.00 | 0.00 | 0.00 |
Table 3: Network Analysis (Degree, Avg path Length, Centrality, Topological Coeff).
Interpretation
ERBB2 emerges as a noteworthy player with a high degree of connectivity, signifying its involvement in multiple interactions within the network. Despite its centrality, ERBB2 does not play a crucial role in connecting different parts of the network, as indicated by its low betweenness centrality. On the other hand, EGFR stands out as a central hub with a remarkably large degree, underscoring its pivotal role in the network. Its high between centrality and closeness centrality suggest that EGFR acts as a crucial connector, efficiently bridging different regions of the network. PIK3CA, while moderately connected, demonstrates efficiency in communication and its neighbours tend to be interconnected, as indicated by the relatively high topological coefficient. In contrast, RPS6KB1 exhibits low connectivity but efficient connections, showcasing its proximity to other nodes without acting as a central hub. This detailed analysis provides nuanced insights into the network dynamics of these genes, guiding further exploration of their functional significance in the context of OSCC and PKC pathways.
Network Topology and Gene Ontology
Network topology showed EGFR had the highest degree of connectivity. Gene ontology indicated involvement in cell signalling, apoptosis regulation, metabolic pathways and tumorigenesis (Fig. 3-5,Table 4-6).

Figure 3: Topological coefficient of the common gene targets between OSCC and PKC.

Figure 4: Gene ontology analysis of the common gene targets between OSCC and PKC.

Figure 5: Biological process.
Term ID | Term Description | Gene Count |
GO:0009987 | Cellular process | 64 |
GO:0050794 | Regulation of cellular process | 61 |
GO:0050896 | Response to stimulus | 59 |
GO:0051716 | Cellular response to stimulus | 58 |
GO:0048518 | Positive regulation of biological process | 57 |
GO:0048522 | Positive regulation of cellular process | 55 |
GO:0019222 | Regulation of metabolic process | 54 |
GO:0031323 | Regulation of cellular metabolic process | 52 |
GO:0060255 | Regulation of macromolecule metabolic process | 51 |
GO:0007165 | Signal transduction | 50 |
GO:0048856 | Anatomical structure development | 50 |
GO:0051171 | Regulation of nitrogen compound metabolic process | 49 |
GO:0080090 | Regulation of primary metabolic process | 49 |
GO:0032501 | Multicellular organismal process | 49 |
GO:0048519 | Negative regulation of biological process | 48 |
GO:0048583 | Regulation of response to stimulus | 47 |
GO:0008152 | Metabolic process | 47 |
GO:0010646 | Regulation of cell communication | 45 |
GO:0023051 | Regulation of signaling | 45 |
GO:0042221 | Response to chemical | 44 |
GO:0048523 | Negative regulation of cellular process | 44 |
GO:0071704 | Organic substance metabolic process | 44 |
GO:0010604 | Positive regulation of macromolecule metabolic process | 43 |
GO:0051239 | Regulation of multicellular organismal process | 42 |
GO:0009966 | Regulation of signal transduction | 42 |
GO:0044238 | Primary metabolic process | 42 |
GO:0007275 | Multicellular organism development | 41 |
GO:0031325 | Positive regulation of cellular metabolic process | 40 |
GO:0051173 | Positive regulation of nitrogen compound metabolic process | 40 |
GO:0044237 | Cellular metabolic process | 40 |
Table 4: Biological process.
Term ID | Term Description | Gene Count |
GO:0005488 | Binding | 63 |
GO:0005515 | Protein binding | 55 |
GO:0043167 | Ion binding | 42 |
GO:0019899 | Enzyme binding | 38 |
GO:0003824 | Catalytic activity | 38 |
GO:1901363 | Heterocyclic compound binding | 38 |
GO:0097159 | Organic cyclic compound binding | 38 |
GO:0097367 | Carbohydrate derivative binding | 29 |
GO:0043168 | Anion binding | 29 |
GO:0036094 | Small molecule binding | 28 |
GO:0017076 | Purine nucleotide binding | 27 |
GO:0035639 | Purine ribonucleoside triphosphate binding | 26 |
GO:0032555 | Purine ribonucleotide binding | 26 |
GO:0098772 | Molecular function regulator activity | 24 |
GO:0005102 | Signaling receptor binding | 23 |
GO:0030554 | Adenyl nucleotide binding | 22 |
GO:0019900 | Kinase binding | 21 |
GO:0044877 | Protein-containing complex binding | 21 |
GO:0005524 | ATP binding | 21 |
GO:0140096 | Catalytic activity, acting on a protein | 21 |
GO:0019901 | Protein kinase binding | 19 |
GO:0016740 | Transferase activity | 19 |
GO:0016773 | Phosphotransferase activity, alcohol group as acceptor | 18 |
GO:0016301 | Kinase activity | 18 |
GO:0016787 | Hydrolase activity | 18 |
GO:0004672 | Protein kinase activity | 17 |
GO:0030234 | Enzyme regulator activity | 17 |
GO:0042802 | Identical protein binding | 17 |
Table 5: Molecular function.
Term ID | Term Description | Gene Count |
GO:0005622 | Intracellular anatomical structure | 63 |
GO:0005737 | Cytoplasm | 61 |
GO:0016020 | Membrane | 59 |
GO:0043229 | Intracellular organelle | 59 |
GO:0043231 | Intracellular membrane-bounded organelle | 57 |
GO:0071944 | Cell periphery | 52 |
GO:0005886 | Plasma membrane | 50 |
GO:0005829 | Cytosol | 43 |
GO:0030054 | Cell junction | 39 |
GO:0031982 | Vesicle | 38 |
GO:0005634 | Nucleus | 38 |
GO:0012505 | Endomembrane system | 37 |
GO:0032991 | Protein-containing complex | 36 |
GO:0042995 | Cell projection | 31 |
GO:0120025 | Plasma membrane bounded cell projection | 30 |
GO:0070161 | Anchoring junction | 28 |
GO:0005576 | Extracellular region | 28 |
GO:0031410 | Cytoplasmic vesicle | 27 |
GO:0031090 | Organelle membrane | 27 |
GO:0005615 | Extracellular space | 26 |
GO:0045202 | Synapse | 24 |
GO:0005783 | Endoplasmic reticulum | 23 |
GO:0098588 | Bounding membrane of organelle | 23 |
GO:0098590 | Plasma membrane region | 21 |
GO:0005925 | Focal adhesion | 20 |
GO:0005794 | Golgi apparatus | 20 |
GO:0070062 | Extracellular exosome | 20 |
Table 6: Cellular component.
The most significant biological process identified is the general “Cellular process” (GO:0009987), with 64 observed gene counts. This suggests a substantial involvement of these genes in fundamental cellular activities, indicating a potential central role in Oral Squamous Cell Carcinoma (OSCC) and Protein Kinase C (PKC) pathways. Another crucial aspect is the “Regulation of cellular process” (GO:0050794), with 61 observed gene counts. This highlights the importance of fine-tuned control over cellular activities, indicating that the identified genes play a significant role in modulating key cellular processes relevant to OSCC and PKC. A noteworthy finding is the involvement of 59 genes in the “Response to stimulus” process (GO:0050896). This underscores the sensitivity of these genes to external cues, possibly playing a crucial role in how OSCC and PKC respond to environmental signals (Fig. 6,7).

Figure 6: Molecular function.

Figure 7: Cellular component.
The most enriched molecular function is “Binding” (GO:0005488) with 63 observed gene counts. This encompasses a broad category of molecular interactions and suggests that the identified genes are involved in binding to various molecular entities, indicating their versatile roles in cellular processes. “Protein binding” (GO:0005515) is another prominent molecular function with 55 observed gene counts. This implies that a substantial number of genes in the dataset are involved in protein-protein interactions, indicating their significance in forming complexes and regulating biological pathways. Notably, there is enrichment in catalytic activities, including “Catalytic activity” (GO:0003824) and “Enzyme binding” (GO:0019899), both with 38 observed gene counts. This suggests a significant involvement of the identified genes in enzymatic processes, underscoring their potential roles as catalysts in biochemical reactions.
The most enriched category is “Intracellular anatomical structure” (GO:0005622) with 63 observed gene counts. This indicates a significant presence of genes associated with internal cellular structures, suggesting their involvement in intracellular processes crucial for Oral Squamous Cell Carcinoma (OSCC) and Protein Kinase C (PKC).”Cytoplasm” (GO:0005737) and “Intracellular organelle” (GO:0043229) with 61 and 59 observed gene counts, respectively, highlight the importance of cytoplasmic processes and intracellular organelles. This suggests that the identified genes play key roles in cellular functions within these compartments. The presence of “Membrane” (GO:0016020) and “Intracellular membrane-bounded organelle” (GO:0043231) with 59 and 57 observed gene counts, respectively, indicates a strong association with membrane-related activities. This includes processes such as signalling, transport and compartmentalization, which are crucial for OSCC and PKC pathways.
In summary, these findings provide insights into the cellular localization and functions of the genes associated with OSCC and PKC, offering potential avenues for further research and therapeutic targeting.
Interpretation
In the PAN Drug Analysis of common target genes associated with Oral Squamous Cell Carcinoma (OSCC) and Protein Kinase C (PKC), a comprehensive understanding of potential therapeutic interventions emerges. Several key genes exhibit associations with specific drugs, each with a DScore indicating the strength of the drug-gene interaction:

Figure 8: Representation of gene and drug score, drug family.
Gene Names | Drug Name | DScore |
BRAF|EGF|EGFR|ERBB2|EREG|HBEGF|HRAS| KRAS|NRAS|NRG1|PIK3CA | CETUXIMAB | 1 |
BRAF|EGFR|ERBB2|GNAQ|HRAS|KRAS|MTOR|NRAS|PIK3CA | EVEROLIMUS | 1 |
BRAF|EGF|EGFR|ERBB2|EREG|HBEGF|HRAS|KRAS|NRAS|NRG1 | PANITUMUMAB | 1 |
BRAF|EGFR|ERBB2|KRAS|MAPK1|MAPK3|NRAS |PDGFRB|PIK3CA|RPS6KB1 | SORAFENIB | 1 |
BRAF|EGFR|GNAQ|HRAS|KRAS|MAP2K2|NRAS|PIK3CA | TRAMETINIB | 0.99 |
BRAF|ERBB2|HRAS|KRAS|MTOR|NRAS|PIK3CA | ALPELISIB | 0.98 |
BRAF|CBL|CDH1|EGFR|ERBB2|ERBB3|KRAS | ERLOTINIB | 0.98 |
BRAF|CDH1|EGFR|ERBB2|ERBB3|KRAS|PIK3CA | LAPATINIB | 0.98 |
EGFR|ERBB2|ERBB3|KRAS|MAP2K2|MTOR|PDGFRB | VANDETANIB | 0.98 |
BRAF|EGFR|ERBB2|KRAS|NRAS|PIK3CA | AFATINIB | 0.97 |
BRAF|EGFR|HRAS|KRAS|NRAS|PIK3CA | DABRAFENIB | 0.97 |
BRAF|EGFR|ERBB2|ERBB3|KRAS|NRAS | GEFITINIB | 0.97 |
BRAF|EGFR|ERBB2|ERBB3|KRAS|PIK3CA | NERATINIB | 0.97 |
BRAF|EGFR|ERBB2|KRAS|MTOR|PIK3CA | TEMSIROLIMUS | 0.97 |
BRAF|EGFR|ERBB2|ERBB3|KRAS|PIK3CA | TRASTUZUMAB | 0.97 |
BRAF|EGFR|HRAS|KRAS|NRAS|PIK3CA | VEMURAFENIB | 0.97 |
BRAF|GNAQ|HRAS|KRAS|MAP2K2|NRAS | BINIMETINIB | 0.968 |
BRAF|EGFR|KRAS|NRAS|PDGFRB|PIK3CA | REGORAFENIB | 0.967 |
ERBB2|NRG1|PIK3CA|PLD1|PLD2|PRKCA | TAMOXIFEN | 0.962 |
BRAF|KRAS|MAP2K2|NRAS|PIK3CA | COBIMETINIB | 0.96 |
EGFR|ERBB2|ERBB3|PIK3CA | DACOMITINIB | 0.95 |
EGFR|ERBB2|KRAS|NRAS | MERELETINIB | 0.95 |
Table 7: PAN drug analysis of the common gene targets of OSCC and PKC.
The binding energy and bond length of each interaction has been mentioned in Table 10. Docking results were integrated with network and pharmacological data to identify the most promising compounds. These findings suggest that the CETUXIMAB has a strong binding affinity for PRKCA, as indicated by the favourable binding energy. The presence of multiple hydrogen bonds, both conventional and carbon hydrogen bonds, indicates specific and varied interactions between the ligand and PRKCA (Fig. 9-15,Table 8-11). Docking revealed three key hydrogen bonds, Conventional H-bonds with Val A:420 (3.22 Å), Val A:353 (4.98 Å) and Carbon H-bond with Asp A:481 (3.53 Å). These interactions suggest a stable and specific binding, reinforcing CETUXIMAB potential as a targeted therapy for OSCC. Therefore, it can be clearly stated that CETUXIMAB can be effectively repurposed as drug for the treatment of oral squamous cell carcinoma targeting the Active residue pockets of Protein Kinase C.

Figure 9: Two-dimensional structure of CETUXIMAB.

Figure 10: Ramachandran Plot and 3D structure of PKC.

Figure 11: Procheck summary of Protein Kinase C alpha.

Figure 12: Verify3D of Protein kinase C alpha.

Figure 13: ERRAT of Protein Kinase C alpha.

Figure 14: 2D interaction of Protein kinase C alpha with CETUXIMAB.
S.No | Uniprot ID | Target Protein Name |
1 | P17252 | Protein Kinase C |
Table 8: Uniprot ID of selected target protein.
Target | Uniprot ID | Protein Name | Ramachandran flavoured (%) | Clash score | Qmean |
PRKCA | P17252 | Protein Kinase C Alpha | 94.59 | 0.37 | 0.81 |
Table 9: Ramachandran plot and clash score.
Protein Name | ERRAT Quality Score | Procheck | Verify 3D |
PRKCA | 92.429 | Out of 8 evaluations, Errors: 0 Warning: 6 Pass: 2 | 82.39 % of the residues have average 3D-1D score of >= 0.1 |
Table 10: Qality Score of three-dimensional protein modelling of PKC.
S.No | Targets | Binding energy (Kcal/mol) | No of Hydrogen bonds | H-Bond with bond length | |
Conventional H-Bond | Carbon hydrogen bond | ||||
1 | PRKCA | -5.9 | 3 | Val A:420 (3.22Å), Val A: 353 (4.98 Å) | Asp A: 481 (3.53 Å) |
Table 11: Binding energy and bond length of metformin with target proteins.

Figure 15: 3D interaction of Protein kinase C alpha with CETUXIMAB.
The present In-silico study explored the Protein-Protein Interaction (PPI) network of Protein Kinase C (PKC) in the context of Oral Squamous Cell Carcinoma (OSCC), followed by molecular docking and pan-drug analysis to identify potential therapeutic targets. PKC has been extensively implicated in tumor initiation, progression, angiogenesis and metastasis due to its role in regulating cell proliferation, survival and invasion. Our network topology analysis highlighted PKC as a central hub, reinforcing its importance in OSCC pathobiology.
Molecular docking analysis demonstrated significant interactions of PKC with CETUXIMAB, a chimeric monoclonal antibody that targets the epidermal growth factor receptor (EGFR). CETUXIMAB binding in our in-silico model suggests that PKC-related signaling may be indirectly modulated through EGFR inhibition. This aligns with previous reports that EGFR is frequently overexpressed in OSCC and its blockade reduces tumor growth and angiogenesis. Thus, the computational findings of our study are consistent with existing evidence, while further highlighting the therapeutic relevance of CETUXIMAB in the PKC-centered network.
Pan-drug analysis further supported the robustness of CETUXIMAB as a candidate, suggesting broad-spectrum potential within OSCC therapeutic frameworks. Importantly, CETUXIMAB is already clinically approved for head and neck squamous cell carcinoma which strengthens the translational significance of our findings. The ability of our computational pipeline to identify a clinically validated agent underscores its reliability and applicability in guiding drug repurposing efforts.
The network and docking analyses provide strong preliminary insights, they cannot fully replicate the complexity of tumor microenvironments, drug metabolism and interpatient variability. Further in vitro and in vivo validation is essential to confirm the precise role of PKC-EGFR enhance the efficacy of Cetuximab in OSCC-specific contexts.
In summary, this study highlights PKC as a critical hub in OSCC and identifies CETUXIMAB as a promising therapeutic candidate through computational drug repurposing. Our findings not only support the current role of EGFR-targeted therapies in OSCC but also provide a framework for future experimental validation and the development of integrated therapeutic strategies.
A total of 4945 genes associated with Oral Squamous Cell Carcinoma (OSCC) and 101 PKC-interacting genes were identified, with 64 common targets. These were further examined through Protein-Protein Interaction (PPI) network, gene ontology and pan-drug analysis. Key central nodes in the PPI network included EGFR, ERBB2, HRAS, KRAS and PIK3CA, with EGFR showing the highest connectivity. Gene ontology analysis indicated significant roles in cellular signalling, apoptosis regulation, metabolism and tumorigenesis. Pan-drug analysis identified CETUXIMAB as the top candidate (DScore 0.872), targeting BRAF, EGFR, ERBB2, HRAS, KRAS, PIK3CA and PRKCA. Additional drugs such as CARBOPLATIN, PACLITAXEL, DOCETAXEL, DOXORUBICIN and CISPLATIN also showed high potential. Molecular docking revealed that CETUXIMAB binds PKC Alpha (PRKCA) with -5.9 kcal/mol binding energy, forming hydrogen bonds with Val A:420, Val A:353 and Asp A:481, indicating strong and specific interaction.
All authors declare that there are no conflicts of interest.
Informed consent was taken for this study.
All authors contributed equally to this paper.
This research did not receive any specific grant from funding agencies in the public, commercial or not-for-profit sectors.
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Shalma Banu Abdul Malik1, Yoithapprabhunath Thuckanaickenpalayam Ragunathan2, Kaviya Ganesan3, Ganapathy Nalliappan2, Ilayaraja Vadivel2, Dineshshankar Janardhanam2
1Senior Resident, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamil Nadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
2Professor, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamilnadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
3Junior Resident, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamilnadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India
*Correspondence author: Prof. Dr. Yoithap Prabhunath TR, MDS, Ph.D., Professor, Department of Oral and Maxillofacial Pathology and Microbiology, Vivekanandha Dental College for Women, Tamil Nadu, India, Affiliated to The TN Dr. MGR Medical University, Tamil Nadu India;
E-mail: [email protected]
Copyright© 2026 by Prabhunath Y, et al. All rights reserved. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Citation: Malik SBA, et al. Bio-Informatic Analysis of Protein Kinase-C in Oral Squamous Cell Carcinoma Through Network Topology: An In-Silico Study. J Dental Health Oral Res. 2026;7(1):1-22.
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