Network toxicology analysis of hair dye components and their association with breast and bladder cancers
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He, L., Michailidou, F., Gahlon, H and Zeng,W. (2022) Hair Dye Ingredients and Potential Health Risks from Exposure to Hair Dyeing. Chemical Research in Toxicology 35, 901-915
Kim, K.-H., Kabir, E., and Jahan, S. A. (2016) The use of personal hair dye and its implications for human health. Environment International 89-90, 222-227
Lim, J.-e., Huang, J., Weinstein, S. J., Parisi, D., Mӓnnistö, S., and Albanes, D. (2023) Serum metabolomic profile of hair dye use. Scientific Reports 13, 3776
Cui, H., Xie, W., Hua, Z., Cao, L., Xiong, Z., Tang, Y., and Yuan, Z. (2022) Recent Advancements in Natural Plant Colorants Used for Hair Dye Applications: A Review. Molecules 27, 8062
Ali, A., Moinuddin, Allarakha, S., Fatima, S., Ali, S. A., and Habib, S. (2022) Risk of Carcinogenicity Associated with Synthetic Hair Dyeing Formulations: A Biochemical View on Action Mechanisms, Genetic Variation and Prevention. Indian Journal of Clinical Biochemistry 37, 399-409
Llanos, A. A. M., McDonald, J. A., Teteh, D. K., and Bethea, T. N. (2022) Chemical Relaxers and Hair-Straightening Products: Potential Targets for Hormone-Related Cancer Prevention and Control. JNCI: Journal of the National Cancer Institute 114, 1567-1569
Ahmadi, M., Saeedi, M., Hedayatizadeh-Orman, A., Eslami, M., Janbabai, G., and Alizadeh-Navaei, R. (2022) Association between hair dye use and cancer in women: a systematic review and meta-analysis of case-control studies. Afr Health Sci 22, 323-333
Zhang, G. H., Liu, H., Liu, M. H., Liu, Y. C., Wang, J. Q., Wang, Y., Wang, X., Xiang, Z., and Liu, W. (2024) Network Toxicology Prediction and Molecular Docking-based Strategy to Explore the Potential Toxicity Mechanism of Metformin Chlorination Byproducts in Drinking Water. Comb Chem High Throughput Screen 27, 101-117
Huang, S. (2023) Efficient analysis of toxicity and mechanisms of environmental pollutants with network toxicology and molecular docking strategy: Acetyl tributyl citrate as an example. Science of The Total Environment 905, 167904
Jiao, X., Jin, X., Ma, Y., Yang, Y., Li, J., Liang, L., Liu, R., and Li, Z. (2021) A comprehensive application: Molecular docking and network pharmacology for the prediction of bioactive constituents and elucidation of mechanisms of action in component-based Chinese medicine. Computational Biology and Chemistry 90, 107402
Agu, P. C., Afiukwa, C. A., Orji, O. U., Ezeh, E. M., Ofoke, I. H., Ogbu, C. O., Ugwuja, E. I., and Aja, P. M. (2023) Molecular docking as a tool for the discovery of molecular targets of nutraceuticals in diseases management. Scientific Reports 13
Che, D., Gao, J., Du, X., Zheng, Y., Hou, Y., Peng, B., Jia, T., Geng, S., and He, L. (2022) p-Phenylenediamine induces immediate contact allergy and non-histaminergic itch via MRGPRX2. Chemico-Biological Interactions 351, 109751
Ngamchuea, K., Tharat, B., Hirunsit, P., and Suthirakun, S. (2020) Electrochemical oxidation of resorcinol: mechanistic insights from experimental and computational studies. RSC Advances 10, 28454-28463
Ramesh, M., and Muthuraman, A. (2018) Flavoring and Coloring Agents: Health Risks and Potential Problems. pp. 1-28, Elsevier
Shen, Y., Liu, J., Wang, Y., Qi, W., Su, R., and He, Z. (2021) Colorful Pigments for Hair Dyeing Based on Enzymatic Oxidation of Tyrosine Derivatives. ACS Applied Materials & Interfaces 13, 34851-34864
Lellis, B., Fávaro-Polonio, C. Z., Pamphile, J. A., and Polonio, J. C. (2019) Effects of textile dyes on health and the environment and bioremediation potential of living organisms. Biotechnology Research and Innovation 3, 275-290
Mishra, V., Sharma, U., Rawat, D., Benson, D., Singh, M., and Sharma, R. S. (2020) Fast-changing life-styles and ecotoxicity of hair dyes drive the emergence of hidden toxicants threatening environmental sustainability in Asia. Environmental Research 184, 109253
Kim, S. (2016) Getting the most out of PubChem for virtual screening. Expert Opin Drug Discov 11, 843-855
Nowotka, M. M., Gaulton, A., Mendez, D., Bento, A. P., Hersey, A., and Leach, A. (2017) Using ChEMBL web services for building applications and data processing workflows relevant to drug discovery. Expert Opin Drug Discov 12, 757-767
Szklarczyk, D., Santos, A., von Mering, C., Jensen, L. J., Bork, P., and Kuhn, M. (2016) STITCH 5: augmenting protein-chemical interaction networks with tissue and affinity data. Nucleic acids research 44, D380-384
Wang, X., Shen, Y., Wang, S., Li, S., Zhang, W., Liu, X., Lai, L., Pei, J., and Li, H. (2017) PharmMapper 2017 update: a web server for potential drug target identification with a comprehensive target pharmacophore database. Nucleic acids research 45, W356-w360
Pundir, S., Martin, M. J., and O'Donovan, C. (2017) UniProt Protein Knowledgebase. Methods Mol Biol 1558, 41-55
Davis AP, Grondin CJ, Johnson RJ, Sciaky D, Wiegers J, Wiegers TC, Mattingly CJ. Comparative Toxicogenomics Database (CTD): update 2021. Nucleic Acids Res. 2021 Jan 8;49(D1):D1138-D1143. doi: 10.1093/nar/gkaa891. PMID: 33068428; PMCID: PMC7779006.
Stelzer, G., Rosen, N., Plaschkes, I., Zimmerman, S., Twik, M., Fishilevich, S., Stein, T. I., Nudel, R., Lieder, I., Mazor, Y., Kaplan, S., Dahary, D., Warshawsky, D., Guan-Golan, Y., Kohn, A., Rappaport, N., Safran, M., and Lancet, D. (2016) The GeneCards Suite: From Gene Data Mining to Disease Genome Sequence Analyses. Current protocols in bioinformatics 54, 1.30.31-31.30.33
Amberger, J. S., and Hamosh, A. (2017) Searching Online Mendelian Inheritance in Man (OMIM): A Knowledgebase of Human Genes and Genetic Phenotypes. Current protocols in bioinformatics 58, 1.2.1-1.2.12
Szklarczyk, D., Gable, A. L., Lyon, D., Junge, A., Wyder, S., Huerta-Cepas, J., Simonovic, M., Doncheva, N. T., Morris, J. H., Bork, P., Jensen, L. J., and Mering, C. V. (2019) STRING v11: protein-protein association networks with increased coverage, supporting functional discovery in genome-wide experimental datasets. Nucleic acids research 47, D607-d613
Shannon, P., Markiel, A., Ozier, O., Baliga, N. S., Wang, J. T., Ramage, D., Amin, N., Schwikowski, B., and Ideker, T. (2003) Cytoscape: a software environment for integrated models of biomolecular interaction networks. Genome research 13, 2498-2504
Bindea, G., Mlecnik, B., Hackl, H., Charoentong, P., Tosolini, M., Kirilovsky, A., Fridman, W. H., Pagès, F., Trajanoski, Z., and Galon, J. (2009) ClueGO: a Cytoscape plug-in to decipher functionally grouped gene ontology and pathway annotation networks. Bioinformatics (Oxford, England) 25, 1091-1093
Chin, C.-H., Chen, S.-H., Wu, H.-H., Ho, C.-W., Ko, M.-T., and Lin, C.-Y. (2014) cytoHubba: identifying hub objects and sub-networks from complex interactome. BMC Systems Biology 8, S11
Bandettini, W. P., Kellman, P., Mancini, C., Booker, O. J., Vasu, S., Leung, S. W., Wilson, J. R., Shanbhag, S. M., Chen, M. Y., and Arai, A. E. (2012) MultiContrast Delayed Enhancement (MCODE) improves detection of subendocardial myocardial infarction by late gadolinium enhancement cardiovascular magnetic resonance: a clinical validation study. Journal of cardiovascular magnetic resonance : official journal of the Society for Cardiovascular Magnetic Resonance 14, 83
Eberhardt, J., Santos-Martins, D., Tillack, A. F., and Forli, S. (2021) AutoDock Vina 1.2.0: New Docking Methods, Expanded Force Field, and Python Bindings. Journal of chemical information and modeling 61, 3891-3898
Trott, O., and Olson, A. J. (2010) AutoDock Vina: improving the speed and accuracy of docking with a new scoring function, efficient optimization, and multithreading. J Comput Chem 31, 455-461
Seeliger, D., and de Groot, B. L. (2010) Ligand docking and binding site analysis with PyMOL and Autodock/Vina. J Comput Aided Mol Des 24, 417-422
Burley, S. K., Berman, H. M., Kleywegt, G. J., Markley, J. L., Nakamura, H., and Velankar, S. (2017) Protein Data Bank (PDB): The Single Global Macromolecular Structure Archive. Methods Mol Biol 1607, 627-641
Esteves, F., Rueff, J., and Kranendonk, M. (2021) The Central Role of Cytochrome P450 in Xenobiotic Metabolism-A Brief Review on a Fascinating Enzyme Family. J Xenobiot 11, 94-114
Allocati, N., Masulli, M., Di Ilio, C., and Federici, L. (2018) Glutathione transferases: substrates, inihibitors and pro-drugs in cancer and neurodegenerative diseases. Oncogenesis 7, 8
Nebert, D. W., and Vasiliou, V. (2004) Analysis of the glutathione S-transferase (GST) gene family. Hum Genomics 1, 460-464
Vaish, S., Gupta, D., Mehrotra, R., Mehrotra, S., and Basantani, M. K. (2020) Glutathione S-transferase: a versatile protein family. 3 Biotech 10, 321
Robinson, P. K. (2015) Enzymes: principles and biotechnological applications. Essays Biochem 59, 1-41
Sweetlove, L. J., and Fernie, A. R. (2018) The role of dynamic enzyme assemblies and substrate channelling in metabolic regulation. Nature Communications 9, 2136
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