{"entity": "label", "iuid": "a7cc249726ae4e5fa3a798784102283e", "timestamp": "2026-04-12T03:04:20.197Z", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/label/Golnaz%20Taheri.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/label/Golnaz%20Taheri"}}, "value": "Golnaz Taheri", "created": "2025-03-21T08:48:20.639Z", "modified": "2025-03-21T08:48:20.645Z", "accounts": [{"entity": "account", "iuid": "9e2d77c551d3482998d8d62c864c4286", "timestamp": "2026-04-12T03:04:20.197Z", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/account/golnaz.taheri%40scilifelab.se.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/account/golnaz.taheri%40scilifelab.se"}}, "email": "golnaz.taheri@scilifelab.se", "name": "Golnaz Taheri", "orcid": "0000-0002-2741-0355", "role": "curator", "status": "enabled", "login": "2025-03-21T08:57:46.256Z", "created": "2025-03-21T08:56:49.777Z", "modified": "2025-03-21T09:20:59.126Z"}], "publications_count": 11, "publications": [{"entity": "publication", "iuid": "fc0b71fbdcab40c59d6f3fff158457a1", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/fc0b71fbdcab40c59d6f3fff158457a1.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/fc0b71fbdcab40c59d6f3fff158457a1"}}, "title": "DTPPI: predicting drug interactions using a weighted drug-protein network", "authors": [{"family": "Szydlik", "given": "Szymon", "initials": "S"}, {"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}], "type": "posted-content", "published": "2025-01-08", "journal": {"title": null, "issn": null, "issn-l": null, "volume": null, "issue": null, "pages": null}, "abstract": null, "doi": "10.1101/2025.01.06.631638", "pmid": null, "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [], "notes": [], "created": "2025-03-21T09:11:24.047Z", "modified": "2025-03-21T09:32:03.091Z"}, {"entity": "publication", "iuid": "5565dc781ccf4db88283613d8ae34168", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/5565dc781ccf4db88283613d8ae34168.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/5565dc781ccf4db88283613d8ae34168"}}, "title": "Unveiling Driver Modules in Lung Cancer: A Clustering-Based Gene-Gene Interaction Network Analysis", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Szalai", "given": "Marcell", "initials": "M"}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}, {"family": "Papapetrou", "given": "Panagiotis", "initials": "P"}], "type": "book-chapter", "published": "2025-00-00", "journal": {"title": null, "issn": "1865-0929", "issn-l": null, "volume": null, "issue": null, "pages": "41-58"}, "abstract": null, "doi": "10.1007/978-3-031-74640-6_4", "pmid": null, "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [], "notes": [], "created": "2025-03-21T09:08:42.934Z", "modified": "2025-03-21T10:33:09.106Z"}, {"entity": "publication", "iuid": "c7ca7531e471429bbded939e900f5892", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/c7ca7531e471429bbded939e900f5892.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/c7ca7531e471429bbded939e900f5892"}}, "title": "GenePioneer: A Comprehensive Python Package for Identification of Essential Genes and Modules in Cancer", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Haerianardakani", "given": "Amirhossein", "initials": "A"}], "type": "posted-content", "published": "2024-12-21", "journal": {"title": null, "issn": null, "issn-l": null, "volume": null, "issue": null, "pages": null}, "abstract": null, "doi": "10.1101/2024.12.16.628633", "pmid": null, "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [], "notes": [], "created": "2025-03-21T09:08:29.820Z", "modified": "2025-03-21T10:34:39.651Z"}, {"entity": "publication", "iuid": "b0dbf3f74da04f0ab7a0ef14fc9efd27", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/b0dbf3f74da04f0ab7a0ef14fc9efd27.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/b0dbf3f74da04f0ab7a0ef14fc9efd27"}}, "title": "Uncovering driver genes in breast cancer through an innovative machine learning mutational analysis method.", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}], "type": "journal article", "published": "2024-03-00", "journal": {"title": "Comput Biol Med", "issn": "1879-0534", "issn-l": null, "volume": "171", "issue": null, "pages": "108234"}, "abstract": "Breast cancer has become a severe public health concern and one of the leading causes of cancer-related death in women worldwide. Several genes and mutations in these genes linked to breast cancer have been identified using sophisticated techniques, despite the fact that the exact cause of breast cancer is still unknown. A commonly used feature for identifying driver mutations is the recurrence of a mutation in patients. Nevertheless, some mutations are more likely to occur than others for various reasons. Sequencing analysis has shown that cancer-driving genes operate across complex networks, often with mutations appearing in a modular pattern. In this work, as a retrospective study, we used TCGA data, which is gathered from breast cancer patients. We introduced a new machine-learning approach to examine gene functionality in networks derived from mutation associations, gene-gene interactions, and graph clustering for breast cancer analysis. These networks have uncovered crucial biological components in critical pathways, particularly those that exhibit low-frequency mutations. The statistical strength of the clinical study is significantly boosted by evaluating the network as a whole instead of just single gene effects. Our method successfully identified essential driver genes with diverse mutation frequencies. We then explored the functions of these potential driver genes and their related pathways. By uncovering low-frequency genes, we shed light on understudied pathways associated with breast cancer. Additionally, we present a novel Monte Carlo-based algorithm to identify driver modules in breast cancer. Our findings highlight the significance and role of these modules in critical signaling pathways in breast cancer, providing a comprehensive understanding of breast cancer development. Materials and implementations are available at: [https://github.com/MahnazHabibi/BreastCancer].", "doi": "10.1016/j.compbiomed.2024.108234", "pmid": "38430742", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pii", "key": "S0010-4825(24)00318-4"}], "notes": [], "created": "2025-03-21T09:08:27.575Z", "modified": "2025-03-21T10:35:03.230Z"}, {"entity": "publication", "iuid": "b425a447d0f7479f9b5db768890b886b", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/b425a447d0f7479f9b5db768890b886b.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/b425a447d0f7479f9b5db768890b886b"}}, "title": "Identification of essential genes associated with SARS-CoV-2 infection as potential drug target candidates with machine learning algorithms.", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}], "type": "journal article", "published": "2023-09-13", "journal": {"title": "Sci Rep", "issn": "2045-2322", "issn-l": "2045-2322", "volume": "13", "issue": "1", "pages": "15141"}, "abstract": "Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) requires the fast discovery of effective treatments to fight this worldwide concern. Several genes associated with the SARS-CoV-2, which are essential for its functionality, pathogenesis, and survival, have been identified. These genes, which play crucial roles in SARS-CoV-2 infection, are considered potential therapeutic targets. Developing drugs against these essential genes to inhibit their regular functions could be a good approach for COVID-19 treatment. Artificial intelligence and machine learning methods provide powerful infrastructures for interpreting and understanding the available data and can assist in finding fast explanations and cures. We propose a method to highlight the essential genes that play crucial roles in SARS-CoV-2 pathogenesis. For this purpose, we define eleven informative topological and biological features for the biological and PPI networks constructed on gene sets that correspond to COVID-19. Then, we use three different unsupervised learning algorithms with different approaches to rank the important genes with respect to our defined informative features. Finally, we present a set of 18 important genes related to COVID-19. Materials and implementations are available at: https://github.com/MahnazHabibi/Gene_analysis .", "doi": "10.1038/s41598-023-42127-9", "pmid": "37704748", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC10499814"}, {"db": "pii", "key": "10.1038/s41598-023-42127-9"}], "notes": [], "created": "2025-03-21T09:08:32.053Z", "modified": "2025-03-21T10:34:27.036Z"}, {"entity": "publication", "iuid": "7371edd9de8342c6980325e1b5be34d5", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/7371edd9de8342c6980325e1b5be34d5.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/7371edd9de8342c6980325e1b5be34d5"}}, "title": "A Novel Machine Learning Method for Mutational Analysis to Identifying Driver Genes in Breast Cancer", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}], "type": "posted-content", "published": "2022-11-22", "journal": {"title": null, "issn": null, "issn-l": null, "volume": null, "issue": null, "pages": null}, "abstract": null, "doi": "10.1101/2022.11.20.517205", "pmid": null, "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [], "notes": [], "created": "2025-03-21T09:08:34.048Z", "modified": "2025-03-21T10:34:08.045Z"}, {"entity": "publication", "iuid": "0c212ea4e16c4ec4a972c543606725d9", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/0c212ea4e16c4ec4a972c543606725d9.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/0c212ea4e16c4ec4a972c543606725d9"}}, "title": "Comprehensive analysis of pathways in Coronavirus 2019 (COVID-19) using an unsupervised machine learning method.", "authors": [{"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}], "type": "journal article", "published": "2022-10-00", "journal": {"title": "Appl Soft Comput", "issn": "1568-4946", "issn-l": null, "volume": "128", "issue": null, "pages": "109510"}, "abstract": "The World Health Organization (WHO) introduced \"Coronavirus disease 19\" or \"COVID-19\" as a novel coronavirus in March 2020. Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) requires the fast discovery of effective treatments to fight this worldwide crisis. Artificial intelligence and bioinformatics analysis pipelines can assist with finding biomarkers, explanations, and cures. Artificial intelligence and machine learning methods provide powerful infrastructures for interpreting and understanding the available data. On the other hand, pathway enrichment analysis, as a dominant tool, could help researchers discover potential key targets present in biological pathways of host cells that are targeted by SARS-CoV-2. In this work, we propose a two-stage machine learning approach for pathway analysis. During the first stage, four informative gene sets that can represent important COVID-19 related pathways are selected. These \"representative genes\" are associated with the COVID-19 pathology. Then, two distinctive networks were constructed for COVID-19 related signaling and disease pathways. In the second stage, the pathways of each network are ranked with respect to some unsupervised scorning method based on our defined informative features. Finally, we present a comprehensive analysis of the top important pathways in both networks. Materials and implementations are available at: https://github.com/MahnazHabibi/Pathway.", "doi": "10.1016/j.asoc.2022.109510", "pmid": "35992221", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC9384336"}, {"db": "pii", "key": "S1568-4946(22)00596-8"}], "notes": [], "created": "2025-03-21T09:08:38.399Z", "modified": "2025-03-21T10:35:41.161Z"}, {"entity": "publication", "iuid": "2924ee4928cd43a69d0bf07ec37fe41b", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/2924ee4928cd43a69d0bf07ec37fe41b.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/2924ee4928cd43a69d0bf07ec37fe41b"}}, "title": "A new machine learning method for cancer mutation analysis.", "authors": [{"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}, {"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}], "type": "journal article", "published": "2022-10-00", "journal": {"title": "PLoS Comput Biol", "issn": "1553-7358", "issn-l": "1553-734X", "volume": "18", "issue": "10", "pages": "e1010332"}, "abstract": "It is complicated to identify cancer-causing mutations. The recurrence of a mutation in patients remains one of the most reliable features of mutation driver status. However, some mutations are more likely to happen than others for various reasons. Different sequencing analysis has revealed that cancer driver genes operate across complex pathways and networks, with mutations often arising in a mutually exclusive pattern. Genes with low-frequency mutations are understudied as cancer-related genes, especially in the context of networks. Here we propose a machine learning method to study the functionality of mutually exclusive genes in the networks derived from mutation associations, gene-gene interactions, and graph clustering. These networks have indicated critical biological components in the essential pathways, especially those mutated at low frequency. Studying the network and not just the impact of a single gene significantly increases the statistical power of clinical analysis. The proposed method identified important driver genes with different frequencies. We studied the function and the associated pathways in which the candidate driver genes participate. By introducing lower-frequency genes, we recognized less studied cancer-related pathways. We also proposed a novel clustering method to specify driver modules. We evaluated each driver module with different criteria, including the terms of biological processes and the number of simultaneous mutations in each cancer. Materials and implementations are available at: https://github.com/MahnazHabibi/MutationAnalysis.", "doi": "10.1371/journal.pcbi.1010332", "pmid": "36251702", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC9612828"}, {"db": "pii", "key": "PCOMPBIOL-D-22-00959"}], "notes": [], "created": "2025-03-21T09:08:36.278Z", "modified": "2025-03-21T10:35:21.354Z"}, {"entity": "publication", "iuid": "1291a8b321634882844a3e6520ab3515", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/1291a8b321634882844a3e6520ab3515.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/1291a8b321634882844a3e6520ab3515"}}, "title": "Using informative features in machine learning based method for COVID-19 drug repurposing.", "authors": [{"family": "Aghdam", "given": "Rosa", "initials": "R", "orcid": "0000-0001-9045-9592", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/0179bdcc8b8e4bd68549403ed5b66b79.json"}}, {"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}, {"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}], "type": "journal article", "published": "2021-09-20", "journal": {"title": "J Cheminform", "issn": "1758-2946", "issn-l": "1758-2946", "volume": "13", "issue": "1", "pages": "70"}, "abstract": "Coronavirus disease 2019 (COVID-19) is caused by a novel virus named Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-CoV-2). This virus induced a large number of deaths and millions of confirmed cases worldwide, creating a serious danger to public health. However, there are no specific therapies or drugs available for COVID-19 treatment. While new drug discovery is a long process, repurposing available drugs for COVID-19 can help recognize treatments with known clinical profiles. Computational drug repurposing methods can reduce the cost, time, and risk of drug toxicity. In this work, we build a graph as a COVID-19 related biological network. This network is related to virus targets or their associated biological processes. We select essential proteins in the constructed biological network that lead to a major disruption in the network. Our method from these essential proteins chooses 93 proteins related to COVID-19 pathology. Then, we propose multiple informative features based on drug-target and protein-protein interaction information. Through these informative features, we find five appropriate clusters of drugs that contain some candidates as potential COVID-19 treatments. To evaluate our results, we provide statistical and clinical evidence for our candidate drugs. From our proposed candidate drugs, 80% of them were studied in other studies and clinical trials.", "doi": "10.1186/s13321-021-00553-9", "pmid": "34544500", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC8451172"}, {"db": "pii", "key": "10.1186/s13321-021-00553-9"}], "notes": [], "created": "2025-03-21T09:08:40.624Z", "modified": "2025-03-21T10:36:00.374Z"}, {"entity": "publication", "iuid": "d07397c1852d4069b2fb791eba9d0352", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/d07397c1852d4069b2fb791eba9d0352.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/d07397c1852d4069b2fb791eba9d0352"}}, "title": "Topological network based drug repurposing for coronavirus 2019.", "authors": [{"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}, {"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}], "type": "journal article", "published": "2021-07-29", "journal": {"title": "PLoS ONE", "issn": "1932-6203", "issn-l": "1932-6203", "volume": "16", "issue": "7", "pages": "e0255270"}, "abstract": "The COVID-19 pandemic caused by the Severe Acute Respiratory Syndrome Coronavirus 2 (SARS-CoV-2) has become the current health concern and threat to the entire world. Thus, the world needs the fast recognition of appropriate drugs to restrict the spread of this disease. The global effort started to identify the best drug compounds to treat COVID-19, but going through a series of clinical trials and our lack of information about the details of the virus's performance has slowed down the time to reach this goal. In this work, we try to select the subset of human proteins as candidate sets that can bind to approved drugs. Our method is based on the information on human-virus protein interaction and their effect on the biological processes of the host cells. We also define some informative topological and statistical features for proteins in the protein-protein interaction network. We evaluate our selected sets with two groups of drugs. The first group contains the experimental unapproved treatments for COVID-19, and we show that from 17 drugs in this group, 15 drugs are approved by our selected sets. The second group contains the external clinical trials for COVID-19, and we show that 85% of drugs in this group, target at least one protein of our selected sets. We also study COVID-19 associated protein sets and identify proteins that are essential to disease pathology. For this analysis, we use DAVID tools to show and compare disease-associated genes that are contributed between the COVID-19 comorbidities. Our results for shared genes show significant enrichment for cardiovascular-related, hypertension, diabetes type 2, kidney-related and lung-related diseases. In the last part of this work, we recommend 56 potential effective drugs for further research and investigation for COVID-19 treatment. Materials and implementations are available at: https://github.com/MahnazHabibi/Drug-repurposing.", "doi": "10.1371/journal.pone.0255270", "pmid": "34324563", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC8320924"}, {"db": "pii", "key": "PONE-D-21-13445"}], "notes": [], "created": "2025-03-21T09:11:19.825Z", "modified": "2025-03-21T10:15:44.599Z"}, {"entity": "publication", "iuid": "1339105abbee4ad4b5cdb2de9e4735a3", "links": {"self": {"href": "https://publications-affiliated.scilifelab.se/publication/1339105abbee4ad4b5cdb2de9e4735a3.json"}, "display": {"href": "https://publications-affiliated.scilifelab.se/publication/1339105abbee4ad4b5cdb2de9e4735a3"}}, "title": "A SARS-CoV-2 (COVID-19) biological network to find targets for drug repurposing.", "authors": [{"family": "Habibi", "given": "Mahnaz", "initials": "M", "orcid": "0000-0002-8969-2706", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/f04af4e059814b78bfb107c3a5782f70.json"}}, {"family": "Taheri", "given": "Golnaz", "initials": "G", "orcid": "0000-0002-2741-0355", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/014c217121d346b2b371bbc1c2fede57.json"}}, {"family": "Aghdam", "given": "Rosa", "initials": "R", "orcid": "0000-0001-9045-9592", "researcher": {"href": "https://publications-affiliated.scilifelab.se/researcher/0179bdcc8b8e4bd68549403ed5b66b79.json"}}], "type": "journal article", "published": "2021-04-30", "journal": {"title": "Sci Rep", "issn": "2045-2322", "issn-l": "2045-2322", "volume": "11", "issue": "1", "pages": "9378"}, "abstract": "The Coronavirus disease 2019 (COVID-19) caused by the SARS-CoV-2 virus needs a fast recognition of effective drugs to save lives. In the COVID-19 situation, finding targets for drug repurposing can be an effective way to present new fast treatments. We have designed a two-step solution to address this approach. In the first step, we identify essential proteins from virus targets or their associated modules in human cells as possible drug target candidates. For this purpose, we apply two different algorithms to detect some candidate sets of proteins with a minimum size that drive a significant disruption in the COVID-19 related biological networks. We evaluate the resulted candidate proteins sets with three groups of drugs namely Covid-Drug, Clinical-Drug, and All-Drug. The obtained candidate proteins sets approve 16 drugs out of 18 in the Covid-Drug, 273 drugs out of 328 in the Clinical-Drug, and a large number of drugs in the All-Drug. In the second step, we study COVID-19 associated proteins sets and recognize proteins that are essential to disease pathology. This analysis is performed using DAVID to show and compare essential proteins that are contributed between the COVID-19 comorbidities. Our results for shared proteins show significant enrichment for cardiovascular-related, hypertension, diabetes type 2, kidney-related and lung-related diseases.", "doi": "10.1038/s41598-021-88427-w", "pmid": "33931664", "labels": {"Golnaz Taheri": null, "DDLS Fellow": null}, "xrefs": [{"db": "pmc", "key": "PMC8087682"}, {"db": "pii", "key": "10.1038/s41598-021-88427-w"}], "notes": [], "created": "2025-03-21T09:11:21.991Z", "modified": "2025-03-21T09:32:33.581Z"}]}