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Elucidating key targets and mechanisms of diethyl phthalate-induced colorectal cancer through network toxicology and molecular docking

  • Zijing Wang ,

    Contributed equally to this work with: Zijing Wang, Liyuan Ma, Zhanyuan Sun

    Roles Conceptualization, Data curation, Methodology, Project administration, Supervision, Validation, Writing – original draft, Writing – review & editing

    Affiliation First Clinical Medical College, General Hospital of Ningxia Medical University, Yinchuan, China,

  • Liyuan Ma ,

    Contributed equally to this work with: Zijing Wang, Liyuan Ma, Zhanyuan Sun

    Roles Formal analysis, Funding acquisition, Writing – original draft

    Affiliation Department of Ultrasonography, General Hospital of Ningxia Medical University, Yinchuan, China

  • Zhanyuan Sun ,

    Contributed equally to this work with: Zijing Wang, Liyuan Ma, Zhanyuan Sun

    Roles Resources, Software, Validation, Writing – review & editing

    Affiliation First Clinical Medical College, General Hospital of Ningxia Medical University, Yinchuan, China,

  • Hengyi Lv,

    Roles Project administration, Supervision, Writing – review & editing

    Affiliation First Clinical Medical College, General Hospital of Ningxia Medical University, Yinchuan, China,

  • Ruxue Ma,

    Roles Investigation, Methodology, Writing – review & editing

    Affiliation First Clinical Medical College, General Hospital of Ningxia Medical University, Yinchuan, China,

  • Mengqi Ding,

    Roles Software, Writing – review & editing

    Affiliation Department of Nursing, School of Medical Teaching, Gansu University of Chinese Medicine, Lanzhou, Gansu, China

  • Hai Li,

    Roles Data curation, Supervision, Writing – original draft

    Affiliation Department of Anal-Colorectal Surgery, General Hospital of Ningxia Medical University, Yinchuan, China

  • Tao Jiang

    Roles Funding acquisition, Project administration, Supervision, Writing – original draft, Writing – review & editing

    jtyy1209@163.com

    Affiliation Department of Anal-Colorectal Surgery, General Hospital of Ningxia Medical University, Yinchuan, China

Abstract

Background

Diethyl phthalate (DEP), a widely used plasticizer with endocrine-disrupting properties, has raised concerns regarding its potential carcinogenic effects. However, its precise role in colorectal cancer (CRC) development remains poorly understood.

Methods

The chemical structure of DEP was obtained from the PubChem database. Potential targets of DEP were identified through ChEMBL and STITCH databases and intersected with known CRC-related genes to screen for candidate biomarkers. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were performed to explore the biological functions and signaling pathways involved. Molecular docking was conducted to predict the binding affinities between DEP and core targets. Finally, 200-ns molecular dynamics (MD) simulations using GROMACS were employed to evaluate the binding stability and dynamic behavior of the DEP–target complexes.

Results

A total of 62 overlapping genes were identified between DEP targets and CRC-associated genes. GO and KEGG enrichment analyses indicated enrichment in epigenetic regulation, chromatin remodeling, and cancer-related signaling pathways, including Notch, TGF-β, and FoxO. Protein–protein interaction analysis identified EP300, EZH2, HDAC1, HDAC2, and KDM1A as key epigenetic regulators. Molecular docking predicted moderate binding affinities between DEP and these targets (−6.6 to −5.7 kcal·mol ⁻ ¹). Subsequent 200-ns MD simulations suggested that DEP formed stable complexes with HDAC1, KDM1A, and EZH2, moderate stability with EP300, and partial dissociation with HDAC2, consistent with hydrophobic and hydrogen-bonding interactions at the binding interfaces.

Conclusion

This study provides a theoretical framework for exploring the molecular mechanisms through which DEP may contribute to CRC development, emphasizing the value of network toxicology in cancer research. These findings may inform future investigations into the risks of DEP exposure and support public health policy and the development of targeted therapeutic strategies.

1. Introduction

Diethyl phthalate (DEP) is a widely used plasticizer primarily employed to enhance the flexibility and ductility of plastic products, and it is also frequently present in cosmetics and personal care items [1,2]. Owing to its chemical stability and low volatility, DEP persists in the environment and bioaccumulates in living organisms, raising growing concern among both the public and the scientific community [3,4]. As an environmental endocrine disruptor, DEP can mimic or interfere with endogenous hormonal signaling, thereby disturbing endocrine homeostasis. Such dysregulation may lead to reproductive abnormalities, metabolic disorders, and imbalances in cell proliferation and differentiation, which may ultimately contribute to increased cancer risk [5]. Beyond its endocrine-disrupting effects, accumulating toxicological evidence suggests that DEP and structurally related phthalates can induce oxidative stress, DNA damage, and inflammatory responses in intestinal and hepatic cells [6,7]. These toxic effects are frequently mediated through the activation of MAPK, NF-κB, and Wnt/β-catenin signaling pathways, which are well recognized for their pivotal roles in colorectal carcinogenesis [8,9]. Furthermore, DEP exposure has been shown to alter tight junction protein expression and compromise epithelial barrier integrity, potentially facilitating epithelial–mesenchymal transition (EMT) and malignant transformation [10,11]. Recent studies have also demonstrated that DEP can upregulate cyclin D1 expression via activation of the PI3K/AKT signaling pathway [12]. Cyclin D1, a key regulator of the G1-to-S phase transition, is closely associated with the pathogenesis of various malignancies. Collectively, these findings indicate that DEP may exert carcinogenic potential through multiple molecular pathways, affecting not only endocrine regulation but also critical processes governing tumor initiation and progression.

Colorectal cancer (CRC) remains one of the leading causes of cancer-related morbidity and mortality worldwide [13]. Its development involves a complex interplay of genetic susceptibility, lifestyle factors, and environmental exposures [14]. Among these, environmental pollutants such as polycyclic aromatic hydrocarbons (PAHs) are known to activate the aryl hydrocarbon receptor (AhR), driving epithelial proliferation and differentiation that favor tumorigenesis [15,16]. The lipophilic nature of PAHs enables their bioaccumulation, and long-term exposure has been linked to elevated CRC risk [17]. Given that DEP exhibits similar lipophilic properties and environmental persistence, and that other phthalates such as di(2-ethylhexyl) phthalate (DEHP) and its metabolite mono(2-ethylhexyl) phthalate (MEHP) have been reported to enhance proliferation, migration, EMT, and chemoresistance in colon cancer cells, DEP may contribute to CRC development.

Nevertheless, despite these mechanistic indications, no direct in vivo or epidemiological evidence currently links DEP exposure to CRC. This knowledge gap highlights the necessity of a systematic investigation into DEP’s potential role in colorectal carcinogenesis. Network toxicology offers a powerful framework to elucidate the complex interactions between environmental chemicals and biological systems through integrative molecular network analysis [18]. By combining bioinformatics, cheminformatics, and computational modeling, this approach enables prediction of chemical–target interactions and associated toxicological pathways [19]. In the present study, we employed network toxicology, molecular docking, and molecular dynamics simulations to identify potential key targets and signaling pathways underlying DEP-induced carcinogenicity. Our findings aim to provide mechanistic insights into how DEP may contribute to CRC development and to guide future experimental validation.

2. Method

2.1 Compound structure acquisition and toxicity analysis

The chemical structure and SMILES string of the target compound, DEP, were retrieved from the PubChem database (https://pubchem.ncbi.nlm.nih.gov/). Toxicity predictions were then performed using ProTox (https://tox.charite.de/), which employs a support vector machine (SVM)-based method to evaluate LD50 values, classify toxicity categories, and identify potential toxicological targets [20]. Additionally, comprehensive ADME (Absorption, Distribution, Metabolism, and Excretion) characteristics and toxicity analysis were conducted using ADMETlab (https://admetmesh.scbdd.com/), which covers assessments of hepatotoxicity, carcinogenicity, and reproductive toxicity [21].

2.2 Identification of compound target genes

Potential DEP target genes were retrieved from three databases: ChEMBL (https://www.ebi.ac.uk/chembl/), STITCH (http://stitch.embl.de/), and SwissTargetPrediction (http://www.swisstargetprediction.ch/). ChEMBL provides curated chemical–target interaction data, STITCH integrates known and predicted chemical–protein associations, and SwissTargetPrediction infers targets based on chemical structure similarity [22]. For STITCH, interactions with a confidence score >0.4 (medium confidence) were retained, consistent with thresholds commonly applied in prior studies [23]. For SwissTargetPrediction, targets with probability ≥0.1 were selected, following established practice to balance sensitivity and specificity [24]. The union of gene sets from the three databases was constructed, duplicates were removed, and Venn diagrams were generated using the R package ggvenn to illustrate target distribution.

2.3 Identification of CRC target genes

To identify CRC-associated target genes, we used GeneCards (https://www.genecards.org), OMIM (https://www.omim.org), and the Therapeutic Target Database (TTD, http://db.idrblab.net/ttd/). GeneCards provides comprehensive annotations for human genes, including gene function, expression, and disease associations. Genes were retrieved from GeneCards using the keyword “colorectal cancer” (restricted to Homo sapiens), and only those with a Relevance score ≥10 were retained, consistent with thresholds used in previous studies [25]. OMIM provides curated information on gene–disease associations [26], while TTD includes therapeutic target data such as drug–target interactions [27]. The union of gene sets from the three databases was constructed, duplicates were removed, and Venn diagrams were generated using the R package ggvenn to illustrate gene distribution.

2.4 Construction of compound regulatory networks

To identify potential biomarkers shared between DEP and CRC, we performed an intersection analysis and used the R package “ggvenn” to generate Venn diagrams displaying the overlap of genes between DEP and CRC. We then constructed a regulatory network of these genes using Cytoscape software [28], which visualized the interactions between these genes and proteins. Network analysis was performed to identify key biomolecules and biological pathways within the network.

2.5 Enrichment analysis

To explore the biological functions and pathways associated with the core gene set, Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were performed using the R package clusterProfiler [29,30]. Both the nominal p-value cutoff (p < 0.05) and the adjusted p-value cutoff (FDR < 0.05, Benjamini–Hochberg correction) were applied to identify significantly enriched terms. Enrichment categories included biological processes (BP), cellular components (CC), molecular functions (MF), and KEGG pathways [31]. Enrichment results were visualized using the ggplot2 package to highlight the functional characteristics of the core gene set.

2.6 Constructing the PPI network

The 62 overlapping genes between DEP- and CRC-related targets were imported into the STRING database to construct a protein–protein interaction (PPI) network. The analysis was restricted to Homo sapiens, with the minimum required interaction score set to >0.7 (high confidence). All available evidence channels in STRING were activated, including textmining, experimental data, curated databases, co-expression, neighborhood, gene fusion, and co-occurrence. No additional interactors were added. Interactions were defined by the combined score, which integrates both experimentally validated and predicted edges. The resulting network was exported from STRING and visualized in Cytoscape. The complete PPI edge list is provided in S1 Table. Network topology was analyzed in Cytoscape to evaluate the importance of nodes. Four centrality measures were computed: degree centrality, betweenness centrality, closeness centrality, and clustering coefficient. Among these, degree centrality was considered the primary determinant of node importance, as it directly reflects the hub characteristics of genes within the network [32]. Betweenness, closeness, and clustering coefficient were used as supportive parameters to confirm the robustness of the network structure. Based on these analyses, five molecules with high degree values and consistent centrality characteristics were identified as core nodes and selected for subsequent analysis. Detailed centrality values and rankings for all nodes are reported in S2 Table.

2.7 Molecular docking of DEP with core genes

To explore the potential interactions between DEP and CRC–associated target proteins, molecular docking analyses were conducted using the CB-Dock2 platform (http://cadd.labshare.cn/cb-dock2/). This platform integrates the CurPocket cavity-detection algorithm with the AutoDock Vina 1.2.0 scoring engine, enabling automatic identification of potential binding pockets on protein surfaces and subsequent docking simulations [33]. The three-dimensional (3D) structures of the target proteins were obtained from the RCSB Protein Data Bank (PDB), and their corresponding PDB IDs, chain identifiers, and resolutions are summarized in S3 Table. Upon uploading the receptor, the platform automatically performed structural preprocessing, including the removal of water molecules, cofactors, and nonessential metal ions, followed by hydrogen addition and energy optimization to ensure conformational stability [34]. The 3D structure of DEP (in mol2 format) was retrieved from the PubChem database and employed in docking simulations. The default parameters were set to exhaustiveness = 8 and num_modes = 20, and the binding affinity was evaluated using the Vina score (kcal·mol ⁻ ¹). For each target protein, multiple potential binding pockets were identified automatically, and the conformation with the lowest binding energy was selected as the optimal binding mode. The resulting optimal binding conformations were analyzed and visualized in three dimensions using PyMOL v2.6 to identify key binding interactions, including hydrogen bonds, hydrophobic interactions, π–π stacking, and π–alkyl interactions.

2.8 Molecular dynamics (MD) simulations

MD simulations were conducted using GROMACS 2022.2 [35]. The Amber14SB force field was applied to the protein [36], and the TIP3P model was used to describe water molecules [37]. The small molecule parameters were generated using Antechamber, with AM1-BCC charges and GAFF2 atom types assigned accordingly. The resulting topologies were converted into GROMACS format using ACPYPE [38]. Ion parameters were derived from the Joung–Cheatham set, which is compatible with the TIP3P water model. The protein–ligand complex was embedded in a truncated dodecahedral box, maintaining a minimum distance of 1.2 nm between the protein surface and the box boundaries. The system was solvated with TIP3P water molecules, and Na⁺ and Cl⁻ ions were added to neutralize the system and achieve an ionic strength of 0.15 M. Energy minimization was performed using the Steepest Descent algorithm until the maximum force (Fmax) dropped below 1000 kJ·mol ⁻ ¹·nm ⁻ ¹. Subsequently, the system underwent 200 ps of equilibration under both NVT and NPT ensembles to stabilize temperature and pressure. The production phase was performed for 200 ns in the NPT ensemble using a 2 fs integration time step. Long-range electrostatic interactions were computed using the Particle Mesh Ewald (PME) method [35], while both van der Waals and Coulombic interactions were truncated at 1.2 nm. All bonds involving hydrogen atoms were constrained with the LINCS algorithm. The temperature and pressure were maintained at T = 298 K and P = 1 bar using the Nose–Hoover thermostat and Parrinello–Rahman barostat, respectively. Simulation trajectories were saved every 10 ps. Trajectory analyses, including structural stability and intermolecular interaction assessment, were performed using GROMACS built-in tools, VMD, and PyMOL, while the binding free energy was calculated via the gmx_MMPBSA package when applicable.

2.9 Statistical analysis

All bioinformatics and statistical analyses were conducted using R software (version 4.3.2). A p value of < 0.05 was considered statistically significant. All database sources, software, and R package details (including versions, release dates, and URLs) are provided in S4 Table to ensure full transparency and reproducibility.

3. Result

3.1 Toxicity analysis of DEP

We conducted a comprehensive toxicity analysis of DEP using the ProTox and ADMETlab databases. The results indicate that DEP exhibits moderate toxicity to the kidneys and may interfere with drug metabolism by inhibiting multiple cytochrome P450 enzymes. Although DEP’s genotoxicity is low, its potential as an environmental endocrine disruptor and its impact on drug metabolic pathways suggest a possible mechanism through which DEP could indirectly influence the pathogenesis of CRC. These findings provide valuable insights into how environmental exposure can affect cancer progression through hormonal disruption and drug metabolism. Detailed toxicity prediction results from ADMETlab and ProTox are provided in S1 and S2 Files.

3.2 Identification of target genes common to CRC and DEP

ChEMBL, STITCH, and SwissTargetPrediction yielded 255, 7, and 25 DEP-related target genes, respectively, with no overlap among the three sources (Fig 1A). The merged dataset comprised 287 unique DEP-associated genes (S5 Table). For CRC, 2,651 genes were obtained from GeneCards, 31 from OMIM, and 42 from TTD, with 31 shared between GeneCards and OMIM, 57 between GeneCards and TTD, and 4 common to all three databases (Fig 1B). After union and de-duplication, the CRC gene set consisted of 2,785 genes (S6 Table). Comparative analysis revealed 62 overlapping genes between DEP and CRC (Fig 1C), with 225 specific to DEP and 2,723 specific to CRC. The 62 overlapping genes are listed in S7 Table. These shared targets may contribute to DEP-induced CRC-related pathways, providing insights into potential carcinogenic mechanisms.

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Fig 1. Screening potential targets of DEP in CRC.

(A) The Venn diagram shows the cross-validation results of three different databases (ChEMBL, STITCH and SwissTargetPrediction) in DEP potential target screening. (B) The Venn diagram shows targets related to CRC in three databases: GeneCards, OMIM and TTD. (C) The Venn diagram directly linked DEP and potential targets for CRC, of which 62 targets (accounting for 2.1%) were associated with both DEP action and CRC, and these targets may be key mediators of DEP-induced CRC.

https://doi.org/10.1371/journal.pone.0343038.g001

3.3 Regulatory network analysis of DEP and CRC shared target genes

By constructing a regulatory network, we identified potential shared target genes between DEP and CRC. This network revealed direct relationships between DEP and several key CRC-associated genes, including HDAC4, MGMT, PPARG, KMT2C, and BRD4, which play significant roles in tumorigenesis, cell cycle regulation, and epigenetic modifications (Fig 2). The diversity of these target genes suggests that DEP may influence CRC development and progression through multiple molecular pathways, underscoring DEP’s potential role in cancer-related signaling pathways.

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Fig 2. Network diagram of DEP and potential targets of CRC.

Each green box in the figure represents a specific gene or protein. Starting from the central “DEP”, lines are connected to each target, indicating that these targets are associated with DEP action and may play a role in the pathological process of CRC.

https://doi.org/10.1371/journal.pone.0343038.g002

3.4 GO and KEGG enrichment analysis results of DEP target genes in CRC

This study identified enriched biological pathways and functions of potential DEP target genes in CRC through GO and KEGG enrichment analyses. In the BP category, DEP target genes were enriched in terms such as epigenetic regulation of gene expression, negative regulation of gene expression, and histone modification, indicating potential epigenetic involvement of DEP in CRC. In the CC category, enrichment was observed in histone deacetylase complex, methyltransferase complex, and transcription repressor complex, all associated with chromatin modification, suggesting that DEP may influence gene expression by modulating chromatin structure. In the MF category, DEP target genes were enriched in histone modification activity, transcription factor binding activity, and nuclear receptor binding activity, providing hypothesis-generating evidence that DEP might modulate transcriptional regulation in CRC (Fig 3).

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Fig 3. GO enrichment analysis results.

(A) The bar chart shows the number of genes in the three categories of BP, CC, and MF in the GO analysis results, and different colors distinguish different categories. (B-C) Histograms and bubble plots show the significance of each functional category, and the shades of color indicate the significance level of the p-value. (D) The donut chart displays the significance and number of genes in the three main categories of GO in detail. From the inner circle to the outer circle, the number of genes, p-value and significance level are displayed in sequence.

https://doi.org/10.1371/journal.pone.0343038.g003

KEGG enrichment analysis identified multiple enriched cancer-related signaling pathways, including transcriptional dysregulation in cancer, thyroid hormone signaling pathway, viral carcinogenesis, microRNAs in cancer, lysine degradation, and polycomb repressive complex. Enrichment in the Notch, TGF-β, and FoxO signaling pathways provided hypothesis-generating insights into potential mechanisms by which DEP exposure may affect cell proliferation, differentiation, apoptosis, and immune regulation (Fig 4). Detailed GO and KEGG enrichment results are summarized in S8 Table.

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Fig 4. KEGG enrichment analysis results.

(A-B) Bar charts and bubble charts show the degree of gene enrichment and adjusted p-value significance in different biological pathways, where the size of the points represents the number of genes in the pathway, and the depth of the color represents statistical significance. (C) This figure shows the results of different biological classification pathway enrichment based on the KEGG database. Each bar represents a specific biological pathway and is color-coded according to the biological category to which it belongs. The number next to each bar indicates the number of genes involved in the pathway.

https://doi.org/10.1371/journal.pone.0343038.g004

3.5 Role of key proteins in DEP-induced CRC

Using the PPI network constructed from the STRING database, we uncovered potential mechanisms by which DEP may induce CRC through specific protein interactions. Several hub-like nodes emerged from the network, including HDAC1, EP300, and EZH2, which are central regulators of gene expression, cell proliferation, and apoptosis (Fig 5A). Further analysis highlighted five core proteins—EP300, EZH2, HDAC1, HDAC2, and KDM1A—that exhibited high degree values and consistent centrality characteristics, marking them as key regulatory factors within the network (Fig 5B). Notably, EP300 and EZH2, both crucial in epigenetic regulation, stood out as particularly relevant to CRC. These findings suggest that DEP may contribute to CRC development by perturbing the functions of these core proteins and their interaction networks.

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Fig 5. Protein interaction network and regulation center.

(A) The PPI network diagram shows the complex interaction network between proteins, depicting how multiple different proteins are connected through direct interactions. Each colored node represents a unique protein, and the colorful lines indicate the type and strength of the interaction between proteins. (B) This figure shows the core components in the PPI network, with special emphasis on several key regulatory proteins such as EZH2, HDAC1, EP300, etc. Different colored nodes are used in the figure to distinguish the function or importance of proteins, among which the red nodes highlight the highly critical regulatory proteins that are the center of the network.

https://doi.org/10.1371/journal.pone.0343038.g005

3.6 Molecular docking reveals interactions between DEP and epigenetic regulators

To investigate the interactions between DEP and key CRC–associated target proteins, molecular docking analyses were performed on five core proteins: HDAC1, KDM1A, EP300, EZH2, and HDAC2. The calculated binding energies of DEP with these targets were −6.6, −6.6, −6.3, −5.7, and −5.8 kcal/mol, respectively, indicating that HDAC1 and KDM1A displayed the strongest binding affinities and thus the most stable interactions with DEP. Analysis of the binding interaction patterns revealed that DEP formed hydrogen bonds with key residues, including His39 in HDAC1, Ala331 and Val811 in KDM1A, Gln117 and Lys291 in EP300, Gln1455 and Ser1400 in EZH2, and Arg131 in HDAC2. In addition, DEP was stably accommodated within the active-site pockets of these proteins through multiple hydrophobic and aromatic interactions, such as π–sigma, π–alkyl, amide–π stacked, and π–π T-shaped interactions (Figs 6A6E, S1 and S9 Table). Taken together, these findings suggest that DEP may interact with multiple epigenetic regulators involved in CRC, potentially influencing chromatin remodeling and gene transcription.

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Fig 6. Molecular docking analysis of DEP with key epigenetic targets associated with CRC.

The binding interactions of DEP with (A) HDAC1, (B) KDM1A, (C) EZH2, (D) EP300, and (E) HDAC2 are illustrated. Each panel displays the overall protein–ligand complex (left), the docking conformation within the active site (middle), and the detailed two-dimensional interaction map (right). DEP forms multiple hydrogen bonds, hydrophobic interactions, and π–π stacking with critical amino acid residues within the active sites of these enzymes.

https://doi.org/10.1371/journal.pone.0343038.g006

3.7 Stable interactions between DEP and epigenetic targets revealed by MD simulations

To assess the binding stability between DEP and key epigenetic regulatory proteins, 200-ns MD simulations were performed for five protein–ligand complexes: EZH2, KDM1A, EP300, HDAC1, and HDAC2. The analyses included key parameters such as root mean square deviation (RMSD), radius of gyration (Rg), root mean square fluctuation (RMSF), ligand–protein distance, solvent-accessible surface area (SASA), hydrogen bonds, and MM-PBSA binding energy. All five complexes reached equilibrium during the simulations but exhibited distinct stability profiles. The HDAC1, EZH2, and KDM1A complexes were the most stable, with RMSD values converging to 0.20–0.30 nm after 30 ns and compact Rg values. RMSF analysis indicated limited fluctuations within the binding pocket, whereas larger fluctuations were mainly restricted to terminal or loop regions distant from the active site, suggesting that the local environments around DEP remained relatively rigid in these three complexes. The distance and SASA profiles changed smoothly, and the number of hydrogen bonds remained between one and two, reflecting stable ligand retention within the active site. The EP300 complex was stable during the early stages but exhibited slight fluctuations later, with RMSD increasing to approximately 0.35 nm and a binding energy of about −88.75 kJ·mol ⁻ ¹, indicating weaker binding affinity. The HDAC2 complex displayed the lowest stability, as shown by sharp increases in RMSD and SASA after 100 ns and the disappearance of hydrogen bonds, suggesting partial ligand dissociation. Its binding energy was only −40 kJ·mol ⁻ ¹. According to MM-PBSA calculations, the binding energy ranked as follows: HDAC1 (−105.49 kJ·mol ⁻ ¹)> KDM1A (−103.87 kJ·mol ⁻ ¹) ≈ EZH2 (−100.6 kJ·mol ⁻ ¹)> EP300 (−88.75 kJ·mol ⁻ ¹) ≫ HDAC2 (−40.92 kJ·mol ⁻ ¹). This trend indicates that DEP binding to HDAC1, KDM1A, and EZH2 is energetically more favorable, moderate to EP300, and clearly weakest to HDAC2. Van der Waals interactions were identified as the predominant driving force. Residue energy decomposition indicated that hydrophobic residues—mainly Leu, Val, Phe, and Tyr—were key contributors to complex stability (Figs 7A7I and S2S5). Among these complexes, the HDAC1–DEP complex combined the lowest RMSD, low RMSF in the binding pocket, and the most favorable MM-PBSA energy, indicating that DEP can be tightly accommodated in the hydrophobic pocket of HDAC1 and maintain persistent noncovalent interactions during the 200-ns simulation. In summary, DEP formed stable complexes with multiple epigenetic proteins, among which the HDAC1–DEP complex showed the strongest binding affinity, followed by EZH2 and KDM1A, while EP300 exhibited moderate stability and HDAC2 was unstable. These results suggest that DEP may selectively interact with specific epigenetic regulators implicated in CRC, with differences in binding stability and affinity that reflect its potential to differentially modulate epigenetic processes.

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Fig 7. MD simulation analysis of the HDAC1–DEP complex.

(A) RMSD of the complex, protein, and ligand; (B) Rg of the complex; (C) RMSF of protein residues; (D) distance between the binding site and ligand; (E) buried SASA; (F) superimposed conformations during simulation; (G) binding energy components (VDW and ELE); (H) per-residue binding energy contribution; and (I) variation in the number of hydrogen bonds during simulation.

https://doi.org/10.1371/journal.pone.0343038.g007

4. Discussion

DEP, a widely used plasticizer found in plastics, cosmetics, and personal care products, is classified as an environmental endocrine disruptor [39]. DEP can mimic or interfere with hormonal functions in the body, potentially impacting human health [40]. Long-term or high-dose exposure to DEP has been linked to reproductive toxicity, endocrine disruption, and an increased risk of cancer [41]. Recent studies indicate that, although DEP does not directly bind to estrogen receptor α (ERα), it can promote the proliferation of breast cancer cells via an ERα-mediated non-classical signaling pathway. Additionally, DEP may induce overexpression of cyclin D1, a key regulator of the G1 to S phase transition in the cell cycle [1]. Cyclin D1 overexpression is associated with rapid tumor growth, increased aggressiveness, and poor prognosis in breast cancer [42]. Research by Kononova and colleagues found that the concentration of DEP in the exhaled breath of CRC patients is significantly elevated, suggesting a close relationship between DEP and cancer metabolic processes [43]. However, the specific mechanisms by which DEP influences CRC remain unclear. This knowledge gap underscores the importance of our study, which seeks to elucidate how DEP contributes to CRC through network toxicology and molecular docking techniques. These approaches provide new insights for cancer prevention and treatment.

Using biological databases such as ChEMBL, OMIM, and TTD, we identified 225 target genes for DEP and 2,723 genes associated with CRC. By analyzing the intersection of these datasets, we identified 62 core genes as potential targets in DEP-induced CRC. Further analysis using the STRING database and Cytoscape software led to the construction of an interaction network, revealing five central targets: EP300, EZH2, HDAC1, HDAC2, and KDM1A. These genes are recognized as key targets in the DEP-induced CRC process.

EP300, a critical transcriptional coactivator, regulates chromatin accessibility through histone acetylation, enhancing the transcriptional activity of specific genes [44]. Recent studies have shown that EP300 promotes the expression of CSNK2A1 and accelerates CRC progression by activating the PI3K-AKT-mTOR axis [45]. Additionally, Zhou et al. demonstrated that EP300 acetylates MTA2 through its histone acetyltransferase activity, enhancing MTA2’s function and stability within cells. This modification promotes the growth and invasiveness of CRC cells [46]. Our GO and KEGG analyses further support EP300’s involvement in CRC, showing significant enrichment in the “Transcriptional Misregulation in Cancer” and “ATP-dependent Chromatin Remodeling” pathways. The enrichment of these pathways highlights EP300’s central role in regulating CRC, suggesting that DEP may facilitate CRC progression by upregulating EP300’s acetylation activity, altering chromatin structure, and abnormally activating oncogenes.

EZH2 is a core component of the Polycomb Repressive Complex 2 (PRC2), which primarily silences gene expression through the trimethylation of histone H3, leading to heterochromatin formation [47]. High expression of EZH2 is closely associated with poor prognosis in various cancers [48,49]. Studies have shown that the synergistic action of PRMT5 and EZH2 in CRC increases methylation at the promoter region of the CDKN2B gene. This epigenetic silencing leads to the downregulation of the tumor suppressor gene CDKN2B, thereby promoting cancer cell proliferation and invasiveness [50]. Additionally, Pappas et al. found that in breast cancer cells, the combined action of NOTCH and EZH2 suppresses the expression of the PTEN gene by enhancing H3K27me3 modification at its promoter region. This mechanism may contribute to the progression and aggressiveness of breast cancer [51]. In this study, GO enrichment analysis indicates significant involvement of EZH2 in epigenetic gene silencing, while KEGG analysis further suggests that EZH2 plays a crucial role in the “Polycomb Repressive Complex” and “Transcriptional Misregulation in Cancer” pathways. These findings imply that DEP may enhance EZH2 activity, leading to the suppression of tumor suppressor genes and increasing CRC cell invasiveness and survival capabilities.

HDAC1 and HDAC2 are key members of the histone deacetylase family, primarily inhibiting gene transcription by removing acetyl groups from histones, resulting in chromatin condensation [52]. These enzymes play a crucial role in CRC development and progression, with studies showing that high expression of HDAC2 is associated with increased proliferation and invasiveness in CRC. By suppressing the expression of the tumor suppressor gene TP53, HDAC2 enhances cancer cell drug resistance, promotes proliferation, and increases the potential for invasion and metastasis, thereby making the cancer more aggressive and harder to treat [53]. Furthermore, Chen et al. demonstrated that HDAC1 suppresses tumor suppressor gene expression in CRC through deacetylation, which enhances the stability and activity of HIF1α. This in turn activates the HIF1α/VEGFA signaling pathway, promoting tumor angiogenesis and cancer progression [54]. The findings in this study are consistent with existing literature regarding the roles of HDAC1 and HDAC2 in CRC. GO enrichment analysis reveals that both HDAC1 and HDAC2 are involved in the negative regulation of gene expression, inhibiting transcription at the epigenetic level through histone deacetylation, primarily as part of the histone deacetylase complex. In terms of molecular function, their deacetylase activity suppresses gene transcription, thus promoting cancer cell proliferation. KEGG analysis further highlights the critical role of HDAC1 and HDAC2 in the “Transcriptional Misregulation in Cancer” and “ATP-dependent Chromatin Remodeling” pathways. Their central role in chromatin structure regulation suggests that DEP may influence gene expression in CRC cells, particularly the expression of tumor suppressor genes, by upregulating or activating HDAC1 and HDAC2. This mechanism may reduce the expression of cell cycle inhibitors, allowing cancer cells to evade growth control.

KDM1A is a histone demethylase that regulates chromatin configuration and gene expression by removing methyl groups from histones, playing a crucial role in transcriptional regulation [55]. In CRC, high expression of KDM1A is closely associated with enhanced proliferation and invasiveness of cancer cells [56]. Studies have shown that the methylation level of the KDM1A promoter in CRC tissues is significantly lower than in normal tissues, and this hypomethylated state can increase the transcriptional activity of the KDM1A gene, potentially promoting tumor initiation and progression [57]. Additionally, Ding et al. found that high expression of KDM1A in CRC is strongly correlated with higher TNM stages and distant metastasis. Through epigenetic mechanisms, KDM1A downregulates the expression of the CDH1 gene, thereby promoting CRC proliferation and metastasis [58]. Our GO enrichment analysis indicates that KDM1A plays an essential role in regulating gene expression and chromatin configuration. As part of various transcriptional regulatory complexes, its histone demethylase activity is critical for the precise regulation of gene expression. KDM1A controls gene activity by modulating chromatin openness, a function that is particularly critical for the proliferation and metastasis of cancer cells. KEGG analysis further reveals that KDM1A is closely linked to the “chromatin remodeling” and “gene transcription regulation” pathways. The findings of this study not only support the significant role of KDM1A in chromatin structure and gene expression regulation but also emphasize its central role in CRC progression. These results suggest that DEP may alter gene expression by modulating KDM1A activity, thereby promoting the malignant characteristics of CRC.

Molecular docking is an advanced computational technique that simulates interactions between small molecules and larger biomolecules such as proteins and nucleic acids, predicting their binding modes and stability [59]. Similar to the study by He et al., which used network toxicology and molecular docking techniques to explore the interactions of common plasticizers such as DEP, Dimethyl phthalate (DMP), and Dioctyl phthalate (DOP) with breast cancer-related proteins, their findings showed that these chemicals could specifically bind to key proteins such as MAPK1, AKT1, SRC, ESR1, and ALB, potentially affecting the signaling pathways of breast cancer. Building on this approach, our study reveals that DEP binds with high affinity to key epigenetic regulatory proteins related to CRC, such as EP300, EZH2, HDAC1, HDAC2, and KDM1A [60]. This binding may not only directly affect the enzymatic activity and functional regulation of these proteins but also influence CRC development by regulating the expression of cancer-related genes.

This study suggests that DEP, a widely used plasticizer, may potentially influence CRC progression through interactions with key epigenetic regulators, including EP300, EZH2, HDAC1/2, and KDM1A, as predicted by network toxicology, molecular docking, and MD analyses. These computational results generate hypotheses that DEP exposure could modulate chromatin remodeling and transcriptional regulation, which are processes closely associated with CRC pathogenesis. However, the present study is entirely based on in-silico analyses, without experimental validation or positive-control benchmarking. The docking affinities observed (−6.6 to −5.7 kcal·mol ⁻ ¹) represent moderate binding strengths typical of small environmental molecules, and no direct biochemical or cellular evidence currently supports these predicted interactions. Future research should focus on validating these computational predictions through in vitro and in vivo experiments, as well as incorporating benchmarking approaches similar to those described by ULLah et al. [61] to contextualize binding affinities and refine mechanistic interpretation. Despite these limitations, this work provides a hypothesis-generating framework for understanding the potential molecular basis of DEP-associated carcinogenicity, offering valuable guidance for future studies on environmental exposure risk assessment, public health policy, and therapeutic development.

Supporting information

S1 Fig. Docking binding energy heat map of DEP with five core target proteins (EP300, EZH2, HDAC1, HDAC2, KDM1A).

https://doi.org/10.1371/journal.pone.0343038.s001

(JPG)

S2 Fig. MD simulation results of the KDM1A–DEP complex.

(A) RMSD of the complex, protein, and ligand; (B) Rg of the complex; (C) RMSF of protein residues; (D) distance between the binding site and ligand; (E) buried SASA; (F) superimposed conformations during simulation; (G) binding energy components (VDW and ELE); (H) per-residue binding energy contribution; and (I) variation in the number of hydrogen bonds during simulation.

https://doi.org/10.1371/journal.pone.0343038.s002

(TIF)

S3 Fig. MD simulation analysis of the EZH2–DEP complex.

(A) RMSD of the complex, protein, and ligand; (B) Rg of the complex; (C) RMSF of protein residues; (D) distance between the binding site and ligand; (E) buried SASA; (F) superimposed conformations during simulation; (G) binding energy components (VDW and ELE); (H) per-residue binding energy contribution; and (I) variation in the number of hydrogen bonds during simulation.

https://doi.org/10.1371/journal.pone.0343038.s003

(TIF)

S4 Fig. MD simulation analysis of the EP300–DEP complex.

(A) RMSD of the complex, protein, and ligand; (B) Rg of the complex; (C) RMSF of protein residues; (D) distance between the binding site and ligand; (E) buried SASA; (F) superimposed conformations during simulation; (G) binding energy components (VDW and ELE); (H) per-residue binding energy contribution; and (I) variation in the number of hydrogen bonds during simulation.

https://doi.org/10.1371/journal.pone.0343038.s004

(TIF)

S5 Fig. MD simulation analysis of the HDAC2–DEP complex.

(A) RMSD of the complex, protein, and ligand; (B) Rg of the complex; (C) RMSF of protein residues; (D) distance between the binding site and ligand; (E) buried SASA; (F) superimposed conformations during simulation; (G) binding energy components (VDW and ELE); (H) per-residue binding energy contribution; and (I) variation in the number of hydrogen bonds during simulation.

https://doi.org/10.1371/journal.pone.0343038.s005

(TIF)

S1 Table. PPI network between DEP- and CRC-related target genes obtained from the STRING database, showing interacting protein pairs and combined scores.

https://doi.org/10.1371/journal.pone.0343038.s006

(XLSX)

S2 Table. Topological parameters of shared DEP–CRC target genes in the PPI network, including degree, betweenness, closeness, and clustering coefficients used to identify core hub genes.

https://doi.org/10.1371/journal.pone.0343038.s007

(XLSX)

S3 Table. Structural information of DEP target proteins used for molecular docking, including PDB identifiers, chain IDs, resolutions, experimental methods, and source organisms obtained from the RCSB PDB database.

https://doi.org/10.1371/journal.pone.0343038.s008

(XLSX)

S4 Table. Summary of all databases and software used in this study, including names, versions, access dates, and source URLs to ensure methodological transparency and reproducibility.

https://doi.org/10.1371/journal.pone.0343038.s009

(XLSX)

S5 Table. Predicted DEP-associated target genes obtained from ChEMBL, STITCH, and SwissTargetPrediction databases.

https://doi.org/10.1371/journal.pone.0343038.s010

(XLSX)

S6 Table. CRC–associated genes collected from GeneCards, OMIM, and the TTD.

https://doi.org/10.1371/journal.pone.0343038.s011

(XLSX)

S7 Table. List of 62 overlapping genes identified between DEP-associated targets and CRC–related genes.

https://doi.org/10.1371/journal.pone.0343038.s012

(XLSX)

S8 Table. GO and KEGG enrichment analyses for the 62 overlapping genes between DEP-associated and CRC-related targets.

https://doi.org/10.1371/journal.pone.0343038.s013

(XLSX)

S9 Table. Summary of molecular docking results between DEP and five key epigenetic regulators (HDAC1, KDM1A, EZH2, EP300, and HDAC2).

https://doi.org/10.1371/journal.pone.0343038.s014

(XLSX)

S1 File. Detailed ADMET prediction results generated by ADMETlab, including physicochemical properties, absorption, distribution, metabolism, excretion, and general toxicity parameters.

https://doi.org/10.1371/journal.pone.0343038.s015

(PDF)

S2 File. ProTox-based toxicity prediction results, including predicted LD50 values, toxicity classes, and endpoint-specific toxicological risks.

https://doi.org/10.1371/journal.pone.0343038.s016

(PDF)

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