Adiga U, Vasishta S, Tunuguntla A, Govardhan T, Farzia K. Functional Analysis of RHOU and PADI6 Genes in Basal Cell Carcinoma: Insights from Genome-Wide Association Studies. Biomed Pharmacol J 2025;18(3).
Manuscript received on :15-04-2025
Manuscript accepted on :14-08-2025
Published online on: 25-08-2025
Plagiarism Check: Yes
Reviewed by: Dr. Amritlal Mandal
Second Review by: Dr. Mohamad R. Abdullah
Final Approval by: Dr. Eman Refaat Youness

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Usha Adiga1*, Sampara Vasishta2, Amulya Tunuguntla1, Tulasi Govardhan3and Kasala Farzia1

1Department of Biochemistry, Apollo Institute of Medical Sciences and Research Chittoor, Andhra Pradesh.

2ICMR, Department of Biochemistry, Apollo Institute of Medical Sciences and Research Chittoor, Andhra Pradesh.

3Department of Pathology, Apollo Institute of Medical Sciences and Research Chittoor, Andhra Pradesh.

Corresponding Author E-mail: ushachidu@yahoo.com

DOI : https://dx.doi.org/10.13005/bpj/3234

Abstract

Basal cell carcinoma (BCC) represents the most common human malignancy, with significant genetic underpinnings that remain incompletely understood. This study aimed to analyze genes identified through genome-wide association studies (GWAS) to elucidate functional pathways involved in BCC pathogenesis. We performed extensive bioinformatic analyses of GWAS-derived genes associated with BCC susceptibility, focusing on RHOU and PADI6. Functional enrichment analysis included Gene Ontology (GO) biological processes, cellular components, molecular functions, metabolite associations, microRNA interactions, protein-protein interactions, and pathway analyses using Reactome database. Our analysis revealed significant enrichment of RHOU in GTPase-mediated signaling pathways (p=0.0011), cytoskeleton organization (p=0.0165), and endocytosis (p=0.0280). PADI6 showed strong associations with cortical granules (p=0.0007) and maternal-to-zygotic transition (p=0.0162). Both genes displayed interactions with specific microRNAs, with RHOU notably targeted by miR-199a-5p (p=0.0047) and miR-126-3p (p=0.0086). Protein-protein interaction analysis demonstrated RHOU's connection with focal adhesion kinase PTK2 (p=0.0242) and PAK1 (p=0.0261), suggesting cellular adhesion and migration involvement. Reactome pathway analysis further confirmed RHOU's role in GTPase cycle (p=0.0059) and PADI6 in maternal mRNA degradation (p=0.0068). Our findings suggest that RHOU contributes to BCC pathogenesis by disrupting Rho GTPase signaling, affecting cytoskeletal dynamics and cell migration, while PADI6 may influence epigenetic regulation. These molecular mechanisms provide potential therapeutic targets and biomarkers for BCC management. Further experimental validation is warranted to confirm these computational findings.

Keywords

Basal cell carcinoma; GTPase signaling; Gene ontology analysis; Genome wide association studies; PADI6; RHOU

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Adiga U, Vasishta S, Tunuguntla A, Govardhan T, Farzia K. Functional Analysis of RHOU and PADI6 Genes in Basal Cell Carcinoma: Insights from Genome-Wide Association Studies. Biomed Pharmacol J 2025;18(3).

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Adiga U, Vasishta S, Tunuguntla A, Govardhan T, Farzia K. Functional Analysis of RHOU and PADI6 Genes in Basal Cell Carcinoma: Insights from Genome-Wide Association Studies. Biomed Pharmacol J 2025;18(3). Available from: https://bit.ly/41ZFTHX

Introduction

Basal cell carcinoma (BCC) remains the most prevalent form of skin cancer worldwide, accounting for approximately 80% of all non-melanoma skin cancers.1 The incidence of BCC continues to rise globally, creating a substantial burden on healthcare systems.2 While environmental factors, particularly ultraviolet radiation exposure, represent the primary risk factor for BCC development, growing evidence suggests a significant genetic component in disease susceptibility and progression.3 Recent genome-wide association studies (GWAS) have identified several genetic loci associated with BCC, yet the functional implications of these genetic variations remain incompletely understood.4

RHOU is an atypical Rho GTPase involved in regulating cytoskeletal dynamics, cell polarity, adhesion, and migration. RHOU influences keratinocyte proliferation and differentiation, processes critical to maintaining epidermal homeostasis. In BCC, where aberrant epithelial proliferation and local tissue invasion are hallmark features, dysregulation of RHOU may promote tumor growth, invasiveness, and changes in tumor architecture. Evidence from other cancers suggests RHOU plays roles in activating signaling pathways that could similarly drive basal cell carcinoma progression.

PADI6 belongs to a family of enzymes that convert arginine residues into citrulline, a process known as citrullination. While PADI6 is primarily known for its role in early embryogenesis and oocyte development, emerging data suggest that PADI enzymes contribute to epigenetic regulation and inflammatory responses, both of which are relevant to skin carcinogenesis. In BCC, altered PADI6 expression could influence chromatin structure, gene expression, or immune evasion, potentially contributing to tumor initiation or progression. Its association through genome-wide studies (GWAS) points to a possible, yet unexplored, functional role in BCC susceptibility.

The pathogenesis of BCC involves complex molecular mechanisms, including dysregulation of the Hedgehog signaling pathway through mutations in PTCH1 and SMO genes.5 However, the contributions of other signaling networks and cellular processes to BCC development are still being elucidated. Emerging evidence suggests that alterations in GTPase signaling, cytoskeletal organization, and epigenetic regulation may play crucial roles in BCC pathogenesis.6,7 Understanding these molecular mechanisms is essential for developing targeted therapies and improving clinical outcomes for BCC patients.

Recent GWAS studies have identified novel genetic associations with BCC susceptibility, including variations in RHOU and PADI6 genes.8 RHOU, a member of the Rho family of GTPases, functions as a molecular switch that regulates various cellular processes, including cytoskeletal dynamics, cell migration, and vesicle trafficking.9 The Rho GTPase family has been implicated in cancer development and progression through their effects on cell morphology, polarity, and invasion.10 PADI6, encoding protein-arginine deiminase type-6, has been primarily studied in the context of early embryonic development and epigenetic regulation.11 Its potential role in cancer pathogenesis, particularly in BCC, remains largely unexplored.

Interpreting GWAS findings in diseases like basal cell carcinoma (BCC) is challenging due to many variants being in non-coding regions with unclear functions.12 To address this, the study uses integrated computational approaches—such as pathway enrichment, protein-protein interaction (PPI) networks, gene ontology, and miRNA target prediction—to uncover biological insights from GWAS data.13,14

Prior studies show that BCC-associated genes are involved in pigmentation, immune response, and DNA repair.15,16 However, the functions of newly identified genes like RHOU and PADI6 remain unexplored. The current study focuses on these genes, using comprehensive bioinformatics analyses to understand their roles in BCC development, molecular regulation, and therapeutic potential.17,18,19

Key aspects examined include:

Functional pathways and gene ontology relevance. 20

Regulatory roles of miRNAs

Protein interaction networks highlighting key hubs in BCC pathogenesis. 21,22

The study ultimately identifies novel pathogenic mechanisms, potential biomarkers, and therapeutic targets in BCC, contributing to a deeper understanding and future clinical applications. 23 Our findings provide novel insights into the pathogenesis of BCC and identify potential therapeutic targets and biomarkers for future investigation.

Objectives

To explore the functional roles of GWAS-identified genes RHOU and PADI6 in basal cell carcinoma using in-depth bioinformatic approaches.

To uncover key biological pathways, molecular functions, and cellular components linked to RHOU and PADI6 that may drive BCC pathogenesis.

To analyze the regulatory networks associated with RHOU and PADI6, including microRNA interactions and protein-protein interactions, to reveal novel insights into BCC development.

Materials and Methods

Data Acquisition and Preprocessing

This study utilized gene lists derived from previous genome-wide association studies (GWAS) on basal cell carcinoma.24 The primary focus was on two genes identified through these studies: RHOU and PADI6. We extracted comprehensive functional annotations for these genes using multiple bioinformatic databases and analysis platforms. The data collection process involved systematic querying of publicly available genomic and proteomic databases.

Gene Ontology Enrichment Analysis

To understand the biological roles of RHOU and PADI6, we performed Gene Ontology (GO) enrichment analysis using the 2023 GO database. The analysis encompassed three main categories: biological processes, cellular components, and molecular functions. Statistical significance was assessed using Fisher’s exact test with a p-value threshold of 0.05. For each significant GO term, we calculated the overlap (number of genes in our set associated with the term), p-value, adjusted p-value (controlling for multiple testing using the Benjamini-Hochberg procedure), odds ratio, and combined score. The combined score was computed as log(p) × odds ratio, providing a composite measure of statistical significance and effect size.

Metabolite Association Analysis

To identify potential metabolic pathways involving RHOU and PADI6, we queried the Human Metabolome Database (HMDB).25 This analysis aimed to reveal associations between our genes of interest and specific metabolites, potentially indicating metabolic processes relevant to BCC pathogenesis. Statistical significance was determined using the same methodology as the GO enrichment analysis, with significance thresholds set at p < 0.05.

MicroRNA Target Analysis

We investigated the regulatory relationships between microRNAs and our target genes using two complementary databases: miRTarBase 2017 26 and TargetScan microRNA 2017.27 miRTarBase contains experimentally validated microRNA-target interactions, while TargetScan provides computational predictions of microRNA binding sites. This dual approach allowed us to identify both established and potential novel regulatory relationships. Statistical significance was assessed using Fisher’s exact test with appropriate multiple testing corrections.

Protein-Protein Interaction Analysis

To map the interactome of RHOU and PADI6, we utilized protein-protein interaction (PPI) databases. This analysis identified hub proteins that interact with our genes of interest, potentially revealing functional complexes and signaling networks relevant to BCC pathogenesis. Significance was determined based on the probability of observing the given number of interactions by chance, with p < 0.05 considered statistically significant.

Pathway Enrichment Analysis

Reactome Pathways 2024 database 28 was queried to identify biological pathways significantly associated with RHOU and PADI6. This analysis provided insights into the higher-order biological processes and signaling cascades potentially dysregulated in BCC. Significance was assessed using Fisher’s exact test with Benjamini-Hochberg correction for multiple testing.

Gene Expression Analysis

To investigate the expression patterns of RHOU and PADI6 in different physiological and pathological contexts, we analyzed RNA sequencing data from the Gene Expression Omnibus (GEO) database. Specifically, we examined automatic GEO signatures for human up-regulated and down-regulated genes in various experimental conditions and disease states. This analysis helped contextualize the potential roles of our target genes beyond the specific context of BCC.

Statistical Analysis

All statistical analyses were performed using standard bioinformatic methodologies. For enrichment analyses, Fisher’s exact test was employed to determine the significance of associations, with p-values adjusted for multiple testing using the Benjamini-Hochberg procedure. The significance threshold was set at adjusted p < 0.05 for all analyses. Odds ratios were calculated to quantify the strength of associations, and combined scores (incorporating both statistical significance and effect size) were computed to prioritize findings.

Visualization and Interpretation

Results from the various analyses were compiled into structured tables, categorized by analysis type. For each significant association, we recorded the relevant term, statistical metrics (overlap, p-value, adjusted p-value, odds ratio, combined score), and the specific genes involved. These comprehensive tables facilitated the interpretation of results and the identification of convergent themes across different analyses. The findings were then synthesized into a cohesive narrative describing the potential functional roles of RHOU and PADI6 in BCC pathogenesis, highlighting the most significant and biologically plausible mechanisms.

Results

GO Biological Process 2023

Analysis of Gene Ontology biological processes (Table 1) revealed significant enrichment of RHOU in several GTPase-related signaling pathways. Most notably, RHOU showed strong association with Cdc42 protein signal transduction (p=0.0011, adjusted p=0.0143) with an odds ratio of 1427.85. RHOU was also significantly enriched in positive regulation of protein targeting to mitochondrion (p=0.0044, adjusted p=0.0175) and establishment of protein localization to mitochondrion (p=0.0049, adjusted p=0.0175). Other significant associations included Rho protein signal transduction (p=0.0077, adjusted p=0.0186), cytoskeleton organization (p=0.0165, adjusted p=0.0281), and endocytosis (p=0.0280, adjusted p=0.0374).

Table 1: GO Biological Process 2023

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
Cdc42 Protein Signal Transduction (GO:0032488) 1/8 0.0011995
541091196
0.0143946
493094355
0 0 1427.8571
42857143
9603.4892
3469958
RHOU
Positive Regulation Of Protein Targeting To Mitochondrion (GO:1903955) 1/30 0.0044934
147342301
0.017516451
1383681
0 0 344.275862
0689655
1860.8600
40913568
RHOU
Positive Regulation Of Establishment Of Protein Localization To Mitochondrion (GO:1903749) 1/33 0.0049420
167963792
0.01751645
11383681
0 0 311.953125 1656.465407
6932638
RHOU
Regulation Of Protein Targeting To Mitochondrion (GO:1903214) 1/39 0.0058388
170461227
0.017516
511383681
0 0 262.61842
10526316
1350.70617
04673467
RHOU
Rho Protein Signal Transduction (GO:0007266) 1/52 0.0077800
371147531
0.018672089
0754074
0 0 195.54901
960784315
949.62400
9021504
RHOU
Cytoskeleton Organization (GO:0007010) 1/111 0.01655845
06223493
0.02817295
13766027
0 0 90.395454
54545454
370.698985
83844775
RHOU
Regulation Of Small GTPase Mediated Signal Transduction (GO:0051056) 1/118 0.01759650
93316656
0.0281729
513766027
0 0 84.95726
495726495
343.23200
01415874
RHOU
Positive Regulation Of Intracellular Protein Transport (GO:0090316) 1/126 0.018781967
5844018
0.02817295
13766027
0 0 79.488 315.95351
5922278
RHOU
Endocytosis (GO:0006897) 1/189 0.02808414
8529689
0.03744553
13729188
0 0 52.683510
63829788
188.214474
40701544
RHOU
Regulation Of Intracellular Signal Transduction (GO:1902531) 1/297 0.04389364
89206369
0.05267237
87047643
0 0 33.278716
21621622
104.028789
03876676
RHOU

GO Cellular Component 2023

Table 2 shows that PADI6 was significantly associated with cortical granule (p=0.0007, adjusted p=0.0029) with a remarkably high odds ratio of 2499.12. RHOU showed associations with endosome membrane (p=0.0531, adjusted p=0.0763), cytoplasmic vesicle membrane (p=0.0572, adjusted p=0.0763), and bounding membrane of organelle (p=0.1178), though with less statistical significance than the PADI6 association.

Table 2: GO Cellular Component 2023

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
Cortical Granule (GO:0060473) 1/5 0.000749831
4718703743
0.0029993
258874814
0 0 2499.125 17982.8589
97820545
PADI6
Endosome Membrane (GO:0010008) 1/361 0.05318084
46011125
0.0763000
118067423
0 0 27.2736111
11111112
80.0223299
0571518
RHOU
Cytoplasmic Vesicle Membrane (GO:0030659) 1/389 0.0572250
088550567
0.076300011
8067423
0 0 25.269329
896907216
72.289595
80285303
RHOU
Bounding Membrane Of Organelle (GO:0098588) 1/819 0.11789328
72819009
0.11789328
72819009
0 0 11.723105
134474327
25.063710
49171824
RHOU

GO Molecular Function 2023

As shown in Table 3, PADI6 was significantly associated with hydrolase activity acting on carbon-nitrogen bonds in linear amidines (p=0.0013, adjusted p=0.0107) with an odds ratio of 1249.31. RHOU showed associations with GTP binding (p=0.0298, adjusted p=0.0532), guanyl-nucleotide exchange factor activity (p=0.0301, adjusted p=0.0532), and GTPase activity (p=0.0392, adjusted p=0.0532), consistent with its role in GTPase signaling.

Table 3: GO Molecular Function 2023

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
Hydrolase Activity, Acting On Carbon-Nitrogen (But Not Peptide) Bonds, In Linear Amidines (GO:0016813) 1/9 0.001349
4318923464
0.01079545
51387712
0 0 1249.3125 8255.546
4452602
PADI6
GTP Binding (GO:0005525) 1/201 0.02984930
08283308
0.053276
626651987
0 0 49.4925 173.797559
22762263
RHOU
Guanyl-Nucleotide Exchange Factor Activity (GO:0005085) 1/203 0.03014328
49570313
0.053276
626651987
0 0 48.997524
5247525
171.579194
1822581
RHOU
Guanyl Ribonucleotide Binding (GO:0032561) 1/226 0.03351983
52152786
0.0532766
26651987
0 0 43.937777
777777775
149.19590
55604995
RHOU
GTPase Activity (GO:0003924) 1/265 0.03922736
45668329
0.05327662
6651987
0 0 37.3731060
6060606
121.028345
36731562
RHOU
Ribonucleoside Triphosphate Phosphatase Activity (GO:0017111) 1/270 0.0399574
699889902
0.0532766
26651987
0 0 36.669144
98141264
118.07243
35197098
RHOU
GTPase Regulator Activity (GO:0030695) 1/424 0.06226399
92823089
0.06971729
61048257
0 0 23.13711
58392435
64.237237
2008254
RHOU
Purine Ribonucleoside Triphosphate Binding (GO:0035639) 1/476 0.06971729
61048257
0.06971729
61048257
0 0 20.5494736
84210525
54.72955
384796592
RHOU

HMDB Metabolites

Table 4 indicates associations between RHOU and two metabolites: guanosine triphosphate (p=0.0674, adjusted p=0.0678) and magnesium (p=0.0678, adjusted p=0.0678), both with odds ratios above 21, reflecting the gene’s involvement in GTP-dependent processes.

Table 4: HMDB Metabolites

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
Guanosine triphosphate (HMDB01273) 1/460 0.0674281
96372244
0.06785768
82736759
0 0 21.283224
40087146
57.394301
07698986
RHOU
Magnesium (HMDB00547) 1/463 0.0678576
882736759
0.06785768
82736759
0 0 21.1417748
9177489
56.878617
34168601
RHOU

miRTarBase 2017

MicroRNA interaction analysis (Table 5) identified several microRNAs targeting RHOU. The most significant associations were with mmu-miR-199a-5p (p=0.0047, adjusted p=0.0336, odds ratio=322.03), hsa-miR-126-3p (p=0.0086, adjusted p=0.0336, odds ratio=174.91), and hsa-miR-452-5p (p=0.0112, adjusted p=0.0336, odds ratio=134.61).

Table 5: miRTarBase 2017

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
mmu-miR-199a-5p 1/32 0.00479249
77347936
0.0336249
419150495
0 0 322.032258
06451616
1719.8788
256956173
RHOU
hsa-miR-126-3p 1/58 0.0086751
325027492
0.03362494
19150495
0 0 174.91228
070175438
830.3601
39497581
RHOU
hsa-miR-452-5p 1/75 0.01120831
39716831
0.033624941
9150495
0 0 134.61486
486486487
604.56874
65206931
RHOU
hsa-miR-374b-5p 1/234 0.03469244
80209845
0.0642745
574039018
0 0 42.412017
167381975
142.556682
38733136
RHOU
mmu-miR-466l-5p 1/391 0.05751343
62651423
0.06427455
74039018
0 0 25.1371794
87179488
71.785165
60137199
RHOU
mmu-miR-466d-5p 1/395 0.05809011459502 0.06427455
74039018
0 0 24.8769035
5329949
70.793691
44023838
RHOU
mmu-miR-466i-5p 1/395 0.0580901
1459502
0.06427455
74039018
0 0 24.876903
55329949
70.793691
44023838
RHOU
mmu-miR-466k 1/395 0.058090
11459502
0.0642745
574039018
0 0 24.876903
55329949
70.793691
44023838
RHOU
mmu-miR-7b-5p 1/438 0.0642745
574039018
0.06427455
74039018
0 0 22.379862
700228838
61.42357896
4976976
RHOU

PPI Hub Proteins

Protein-protein interaction analysis (Table 6) revealed significant interactions between RHOU and several hub proteins, including PTK2 (p=0.0242, adjusted p=0.0542, odds ratio=61.21), PAK1 (p=0.0261, adjusted p=0.0542, odds ratio=56.63), NCK1 (p=0.0361, adjusted p=0.0542, odds ratio=40.64), and PLCG1 (p=0.0361, adjusted p=0.0542, odds ratio=40.64).

Table 6: PPI Hub Proteins

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
PTK2 1/163 0.0242523
103555676
0.054235319
7780439
0 0 61.219135
80246913
227.688866
40394177
RHOU
PAK1 1/176 0.02616948
57476556
0.0542353
197780439
0 0 56.634285
71428572
206.3278
3304510207
RHOU
NCK1 1/244 0.03615687
98520293
0.05423531
97780439
0 0 40.6460905
3497942
134.940469
61461834
RHOU
PLCG1 1/244 0.03615687
98520293
0.05423531
97780439
0 0 40.6460905
3497942
134.9404696
1461834
RHOU
SRC 1/513 0.074996485
8813518
0.08999578
30576222
0 0 19.0283
203125
49.289324
9102792
RHOU
GRB2 1/767 0.11069923
7301363
0.1106992
37301363
0 0 12.55287206
2663186
27.6280972
6264245
RHOU

Reactome Pathways 2024

Pathway analysis using Reactome database (Table 7) showed significant enrichment of RHOU in the RHOU GTPase Cycle (p=0.0059, adjusted p=0.0481, odds ratio=255.87) and Interleukin-4 and Interleukin-13 Signaling (p=0.0167, adjusted p=0.0584, odds ratio=89.57). PADI6 was significantly associated with M-decay Degradation of Maternal mRNAs by Maternally Stored Factors (p=0.0068, adjusted p=0.0481, odds ratio=221.68), Maternal to Zygotic Transition (p=0.0162, adjusted p=0.0584, odds ratio=92.07), and Chromatin Modifying Enzymes/Organization (p=0.0352, adjusted p=0.0823, odds ratio=41.68).

Table 7: Reactome Pathways 2024

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
RHOU GTPase Cycle 1/40 0.00598823
14019791
0.04819082
41377977
0 0 255.87179
48717949
1309.54139
8623503
RHOU
M-decay Degradation of Maternal mRNAs by Maternally Stored Factors 1/46 0.0068844
034482568
0.04819082
41377977
0 0 221.68888
88888889
1103.67742
29731402
PADI6
Maternal to Zygotic Transition (MZT) 1/109 0.0162617
282000212
0.05847376
31112347
0 0 92.0787037
0370372
379.266738
25723503
PADI6
Interleukin-4 and Interleukin-13 Signaling 1/112 0.01670678
94603527
0.05847376
31112347
0 0 89.576576
57657657
366.54198
4609772
RHOU
Chromatin Modifying Enzymes 1/238 0.03527839
86095116
0.0823162
634221937
0 0 41.6877637
13080166
139.42407
70668133
PADI6
Chromatin Organization 1/238 0.0352783
986095116
0.082316263
4221937
0 0 41.6877637
13080166
139.42407
70668133
PADI6
RHO GTPase Cycle 1/450 0.0659956
039535799
0.11599391
95015217
0 0 21.768374
16481069
59.170079
47527356
RHOU
Signaling by Interleukins 1/452 0.0662822
397151552
0.11599391
95015217
0 0 21.669623
05986696
58.8077445
55934576
RHOU
Signaling by Rho GTPases 1/672 0.09745545
68631971
0.1395731
862121099
0 0 14.4008941
87779434
33.5304639
4688685
RHOU
Signaling by Rho GTPases, Miro GTPases and RHOBTB3 1/688 0.0996951
330086499
0.13957318
62121099
0 0 14.0538573
50800582
32.4031134
51140854
RHOU

Target Scan microRNA 2017

Table 8 indicates potential microRNA targeting of RHOU by hsa-miR-126 (p=0.0227, odds ratio=65.27), supporting the findings from miRTarBase. Both PADI6 and RHOU were targeted by hsa-miR-4684-3p (p=0.0267, odds ratio=18.49).

Table 8: Target Scan microRNA 2017

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
hsa-miR-126 1/153 0.02277584
92784422
0.2706471
536354705
0 0 65.279605
26315789
246.891027
8850476
RHOU
hsa-miR-4684-3p 2/1953 0.02673345
66800765
0.27064715
36354705
0 0 18.499231
163505893
67.001245
01584236
PADI6;RHOU
mmu-miR-450a 1/241 0.035717705
9161049
0.27064715
36354705
0 0 41.160416
66666667
137.1509844
9199263
RHOU
hsa-miR-487b 1/262 0.03878912
36974251
0.27064715
36354705
0 0 37.8084291
1877394
122.86285
30879148
RHOU
mmu-miR-652 1/315 0.0465117
822885065
0.2706471
536354705
0 0 31.342356
68789809
96.15990
539884224
RHOU
hsa-miR-4479 1/337 0.04970522
71622002
0.27064715
36354705
0 0 29.2574404
76190474
87.820455
10023957
RHOU
hsa-miR-4665-3p 1/356 0.052457457
6559142
0.27064715
36354705
0 0 27.6647887
32394367
81.548957
56877927
RHOU
hsa-miR-4304 1/487 0.07128887
73429607
0.27064715
36354705
0 0 20.073045
26748971
53.01321
28788392
RHOU
hsa-miR-3917 1/514 0.07513888
88058125
0.27064715
36354705
0 0 18.99025341
1306043
49.154695
28186957
RHOU
mmu-miR-1963 1/525 0.076704356
5059508
0.27064715
36354705
0 0 18.581106
70229007
47.712506
25877883
RHOU

RNAseq Automatic GEO Signatures Human Down/Up

Tables 9 and 10 show differential expression of RHOU across various experimental conditions and disease states in GEO datasets, with consistent p-values of 0.0370 and odds ratios of 39.65 across multiple signatures, indicating the potential involvement of RHOU in diverse biological contexts beyond BCC.

Table 9: RNA seq Automatic GEO Signatures Human Down

Term Overlap P-value Adjusted
P-value
Old P-value Old Adjusted P-value Odds Ratio Combined
Score
Genes
Deep Gsk-126 Her2 Tumours GSE136300 1 1/250 0.03703482
76752191
0.0370348
276752191
0 0 39.654618
47389558
130.697519
05195764
RHOU
Circrna Gallbladder Compared Matched GSE100363 1 1/250 0.0370348
276752191
0.0370348
276752191
0 0 39.654618
47389558
130.697519
05195764
RHOU
Cyclooxygenase-2 Cox-2 Er? 5?-Reductase GSE80979 1 1/250 0.0370348
276752191
0.03703482
76752191
0 0 39.6546184
7389558
130.6975190
5195764
RHOU
Follicular Helper Effector Lymphocytes GSE58596 1 1/250 0.037034
8276752191
0.037034
8276752191
0 0 39.654618
47389558
130.69751
905195764
RHOU
Ppar? Prevents Infectivity Boosting GSE128121 1 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
Protein Casp8Ap2 Improvement G0 GSE143808 1 1/250 0.0370348
276752191
0.0370348
276752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
Moderate Dysplasia Mucosa Conversion GSE72627 1 1/250 0.037034
8276752191
0.0370348
276752191
0 0 39.654618
47389558
130.697519
05195764
RHOU
Arginine Integrating E2F Set GSE111960 3 1/250 0.037034
8276752191
0.03703482
76752191
0 0 39.654618
47389558
130.6975190
5195764
RHOU
Gtf2I Williams Behavioural Rescuable GSE128840 1 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.6546184
7389558
130.69751
905195764
RHOU
Cdk9 Degrader Multi-Targeted Cdk GSE89385 3 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.654618
47389558
130.69751
905195764
RHOU

Table 10: RNA seq Automatic GEO Signatures Human Up

Term Overlap P-value Adjusted P-value Old P-value Old Adjusted P-value Odds Ratio Combined Score Genes
Transcriptional Cell-Derived Polarized Hepatocytes GSE123462 1 1/250 0.037034827
6752191
0.037034827
6752191
0 0 39.65461847
389558
130.697519
05195764
RHOU
Age-Induced Methylmalonic Acid Accumulation GSE127001 1 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
Metallo-Endopeptidase Neprilysin White Preadipocytes GSE117270 1 1/250 0.0370348
276752191
0.0370348
276752191
0 0 39.6546184
7389558
130.6975190
5195764
RHOU
Ehmt1 Ehmt2 Fetal Hemoglobin GSE71421 1 1/250 0.0370348
276752191
0.03703482
76752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
Polybrominated Diphenyl Ethers Pbdes GSE111203 4 1/250 0.0370348
276752191
0.03703482
76752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
Directed Embryonic Corneal Cell-Like GSE81474 1 1/250 0.0370348
276752191
0.0370348
276752191
0 0 39.654618
47389558
130.6975190
5195764
RHOU
Leader Recruitment Upstream Reading GSE81802 1 1/250 0.0370348
276752191
0.03703482
76752191
0 0 39.654618
47389558
130.697519
05195764
RHOU
Maintaining Iron Lysosomal Acidity GSE141507 1 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.6546184
7389558
130.697519
05195764
RHOU
U87Mg A3 Adenosine Mrs1220 GSE100146 1 1/250 0.03703482
76752191
0.03703482
76752191
0 0 39.6546184
7389558
130.69751
905195764
RHOU
Strand-Oriented Culture 24H Presence GSE102305 1 1/250 0.0370348
276752191
0.03703482
76752191
0 0 39.654618
47389558
130.697519
05195764
RHOU

Discussion

Our comprehensive bioinformatic analysis of GWAS-identified genes associated with basal cell carcinoma has revealed significant functional implications for RHOU and PADI6 in disease pathogenesis.

RHOU is not yet an established clinical biomarker for any cancer, including BCC. However, several studies have reported RHOU overexpression in malignancies such as breast and colorectal cancers, with correlations to aggressive tumor behavior. Its expression could potentially serve as a prognostic indicator or part of a molecular signature when combined with other markers, especially if further validated in BCC-specific studies. With GWAS implicating RHOU in BCC susceptibility, future studies may explore its expression levels in patient samples as a non-invasive diagnostic or risk stratification tool.

The results highlight several molecular mechanisms through which these genes may influence BCC development and progression, providing novel insights into the underlying biology of this common skin malignancy.

RHOU, a Rho GTPase family member, is strongly linked to GTPase signaling, cytoskeletal organization, and endocytosis, aligning with its known role in cell migration and morphology. 29,30 Its association with Cdc42 signaling—a pathway involved in cancer invasion—suggests a role in BCC malignancy. RHOU also appears to influence mitochondrial function and energy metabolism, as indicated by its involvement in protein localization to mitochondria and interactions with energy-related metabolites (GTP, magnesium). Protein-protein interaction (PPI) analysis shows RHOU connects with key signaling molecules like PTK2 (FAK), PAK1, NCK1, and PLCG1, implicating it in focal adhesion, cytoskeleton remodeling, and cell invasion pathways. 31,32 Collectively, these findings position RHOU as a potential driver of BCC pathogenesis through its effects on cell signaling, metabolism, and motility. Our microRNA interaction analysis identified several microRNAs targeting RHOU, with particularly strong associations with miR-199a-5p, miR-126-3p, and miR-452-5p. 33

These microRNAs have been previously implicated in cancer biology, with miR-199a-5p shown to regulate cell migration and invasion in various malignancies,34 miR-126-3p known to modulate angiogenesis and metastasis,35 and miR-452-5p involved in epithelial-mesenchymal transition.36 The identification of these regulatory relationships provides insight into the post-transcriptional control of RHOU expression and suggests potential mechanisms through which dysregulation of these microRNAs could contribute to BCC pathogenesis.

The Reactome pathway analysis further confirmed the involvement of RHOU in GTPase cycle regulation and revealed an unexpected association with interleukin-4 and interleukin-13 signaling. These cytokines play roles in immune regulation and have been implicated in the tumor microenvironment of various cancers.37 This finding suggests a potential link between RHOU and immune-related processes in BCC, which warrants further investigation given the emerging importance of immunotherapy in skin cancer treatment.

PADI6, while less extensively characterized in the context of cancer, showed significant associations with cellular components related to cortical granules and molecular functions involving hydrolase activity. The most striking findings for PADI6 came from the Reactome pathway analysis, which revealed strong associations with maternal mRNA degradation, maternal-to-zygotic transition, and chromatin organization. PADI6 has been primarily studied in the context of early embryonic development, where it participates in epigenetic regulation and cytoplasmic lattice formation.38 The significant enrichment in chromatin modifying enzymes suggests that PADI6 may influence BCC pathogenesis through epigenetic mechanisms, potentially affecting gene expression patterns critical for cell identity and differentiation.

The association of both RHOU and PADI6 with hsa-miR-4684-3p in the Target Scan analysis suggests a potential co-regulation of these genes, which could be relevant to their roles in BCC. While the functional significance of this microRNA in cancer remains to be elucidated, this finding points to a possible regulatory network involving both genes of interest.

RHOU shows variable expression across disease states, indicating it may impact multiple biological processes relevant to cancer. 39 Its involvement in GTPase signaling and cytoskeletal regulation suggests it could be a promising therapeutic target in BCC, especially as Rho GTPase inhibitors are being explored in other cancers. Additionally, microRNAs regulating RHOU may serve as useful biomarkers. 40 Meanwhile, PADI6 is linked to chromatin modification and epigenetic dysregulation, highlighting its potential role in BCC and the relevance of epigenetic therapies like HDAC and DNA methyltransferase inhibitors in treating such cases.

Limitations of our study

The analyses are based on computational approaches and statistical associations, which require experimental validation. The functional implications we have identified represent testable hypotheses rather than definitive mechanisms. Additionally, the analyses are constrained by the current state of knowledge represented in the databases used, which may contain biases or gaps.

Conclusion

Our comprehensive functional analysis of GWAS-identified genes offers important insights into the molecular underpinnings of basal cell carcinoma (BCC) and lays the groundwork for numerous future research directions. By elucidating the potential involvement of RHOU in GTPase signaling, cytoskeletal remodeling, and mitochondrial function, as well as the role of PADI6 in epigenetic regulation, this study enhances our understanding of BCC pathogenesis. These findings may ultimately contribute to the identification of novel therapeutic targets and support the development of more precise treatment strategies for this prevalent skin malignancy.

Acknowledgement

Authors thank Central Research Laboratory for Molecular Genetics, Bioinformatics and Machine Learning at Apollo Institute of Medical Sciences and Research Chittoor Murukamabttu – 571727, Andhra Pradesh, India for the infrastructure.

Funding Sources

The author(s) received no financial support for the research, authorship, and/or publication of this article.

Conflict of Interest

The author(s) do not have any conflict of interest.

Data Availability Statement

This statement does not apply to this article.

Ethics Statement

This research did not involve human participants, animal subjects, or any material that requires ethical approval.

Informed Consent Statement

This study did not involve human participants, and therefore, informed consent was not required.

Clinical Trial Registration

This research does not involve any clinical trials.

Permission to reproduce material from other sources 

Not Applicable

Author contributions:

  • Usha Adiga: Conceptualization, Methodology, Writing – Original Draft.
  • Sampara Vasishta: Data Collection, Analysis, Writing – Review & Editing.
  • Amulya Tunuguntla, Tulasi Govardhan: Visualization, Project Administration.
  • Kasala Farzia: Funding Acquisition, Resources, Supervision 

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