Nicoleta Siminea
CS - Bioinformatică
Biografie
Sunt absolventă a Facultății de Farmacie din cadrul Universității ”Carol Davila” din București, specializată în ”Inteligență artificială” în urma masterului efectuat la Universitatea din București. În prezent sunt doctorandă la Școala Doctorală de Informatică și lucrez în cercetare din 2019, pe bioinformatică. Mă interesează aflarea de noi metode de diagnostic și tratament, cât și aplicarea acestora cu scopul final de îmbunătățire a calității vieții.
Publicatii
Publication | Authors | Date | |
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article
Connecting The Dots: Computational Network Analysis For Disease Insight And Drug Repurposing |
Siminea Nicoleta; Czeizler Eugen; Popescu Victor -Bogdan; Petre Ion; Paun Andrei | Current Opinion In Structural Biology, 2024 | |
RezumatNetwork biology is a powerful framework for studying the structure, function, and dynamics of biological systems, offering insights into the balance between health and disease states. The field is seeing rapid progress in all of its aspects: data availability, network synthesis, network analytics, and impactful applications in medicine and drug development. We review the most recent and significant results in network biomedicine, with a focus on the latest data, analytics, software resources, and applications in medicine. We also discuss what in our view are the likely directions of impactful development over the next few years. |
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article
Raman-Based Machine Learning Platform Reveals Unique Metabolic Differences Between Idhmut And Idhwt Glioma. |
Lita Adrian; Sjoberg Joel; Pacioianu David; Siminea Nicoleta; Celiku Orieta; Dowdy Tyrone; Paun Andrei; Gilbert Mark R; Noushmehr Houtan; Petre Ion; Larion Mioara | Neuro-Oncology, 2024 | |
RezumatBACKGROUND: Formalin-fixed, paraffin-embedded (FFPE) tissue slides are routinely used in cancer diagnosis, clinical decision-making, and stored in biobanks, but their utilization in Raman spectroscopy-based studies has been limited due to the background coming from embedding media.METHODS: Spontaneous Raman spectroscopy was used for molecular fingerprinting of FFPE tissue from 46 patient samples with known methylation subtypes. Spectra were used to construct tumor/non-tumor, IDH1WT/IDH1mut, and methylation-subtype classifiers. Support vector machine and random forest were used to identify the most discriminatory Raman frequencies. Stimulated Raman spectroscopy was used to validate the frequencies identified. Mass spectrometry of glioma cell lines and TCGA were used to validate the biological findings.RESULTS: Here we develop APOLLO (rAman-based PathOLogy of maLignant glioma) - a computational workflow that predicts different subtypes of glioma from spontaneous Raman spectra of FFPE tissue slides. Our novel APOLLO platform distinguishes tumors from nontumor tissue and identifies novel Raman peaks corresponding to DNA and proteins that are more intense in the tumor. APOLLO differentiates isocitrate dehydrogenase 1 mutant (IDH1mut) from wildtype (IDH1WT) tumors and identifies cholesterol ester levels to be highly abundant in IDHmut glioma. Moreover, APOLLO achieves high discriminative power between finer, clinically relevant glioma methylation subtypes, distinguishing between the CpG island hypermethylated phenotype (G-CIMP)-high and G-CIMP-low molecular phenotypes within the IDH1mut types.CONCLUSIONS: Our results demonstrate the potential of label-free Raman spectroscopy to classify glioma subtypes from FFPE slides and to extract meaningful biological information thus opening the door for future applications on these archived tissues in other cancers. |
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article
Network Analytics For Drug Repurposing In Covid-19 |
Siminea Nicoleta; Popescu Victor; Martin Jose Angel Sanchez; Florea Daniela; Gavril Georgiana; Gheorghe Ana-Maria; Itcus Corina; Kanhaiya Krishna; Pacioglu Octavian; Popa Laura Lona; Trandafir Romica; Tusa Maria Iris; Sidoroff Manuela; Paun Mihaela; Czeizler Eugen; Paun Andrei; Petre Ion | Briefings In Bioinformatics, 2022 | |
RezumatTo better understand the potential of drug repurposing in COVID-19, we analyzed control strategies over essential host factors for SARS-CoV-2 infection. We constructed comprehensive directed protein-protein interaction (PPI) networks integrating the top-ranked host factors, the drug target proteins and directed PPI data. We analyzed the networks to identify drug targets and combinations thereof that offer efficient control over the host factors. We validated our findings against clinical studies data and bioinformatics studies. Our method offers a new insight into the molecular details of the disease and into potentially new therapy targets for it. Our approach for drug repurposing is significant beyond COVID-19 and may be applied also to other diseases. |
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conference
Network Controllability Analysis For Drug Repurposing In Covid-19 |
Nicoleta Siminea; Victor Popescu; Jose Angel Sanchez Martin; Ana-Maria Dobre; Daniela Florea; Geor-giana Gavril; Corina Ițcuș; Krishna Kanhaiya; Octavian Pacioglu; Laura Ioana Popa; Romica Trandafir; Maria Iris Tușa; Manuela Sidoroff; Mihaela Păun; Eugen Czeizler; Andrei Păun; Ion Petre | The 29Th Conference On Inteligent Systems For Molecular Biology, Joint With The 20Th European Conference On Computational Biology, 2021 | |
Rezumat |