9 results on '"Sales GM"'
Search Results
2. SÃO AS RELAÇÕES PLAQUETAS/LINFÓCITOS E NEUTRÓFILOS/LINFÓCITOS PREDITORAS DE DESFECHO DESFAVORÁVEL NA COVID-19?
- Author
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Neto, JBA, primary, Arce, IL, additional, Tavares, AL, additional, Géssica, GA, additional, Sales, GM, additional, Paes, JDP, additional, Hakel, MMR, additional, Paiva, VF, additional, Queiroz, VC, additional, Vicari, P, additional, and Figueiredo, VLP, additional
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- 2021
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3. Comparing plasma and skin imprint metabolic profiles in COVID-19 diagnosis and severity assessment.
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Delafiori J, Siciliano RF, de Oliveira AN, Nicolau JC, Sales GM, Dalçóquio TF, Busanello ENB, Eguti A, de Oliveira DN, Bertolin AJ, Dos Santos LA, Salsoso R, Marcondes-Braga FG, Durán N, Júnior MWP, Sabino EC, Reis LO, Fávaro WJ, and Catharino RR
- Subjects
- Humans, SARS-CoV-2, COVID-19 Testing, Cross-Sectional Studies, Brazil, Metabolome, Metabolomics methods, Biomarkers, Amides, Ions, COVID-19 diagnosis, Metabolic Diseases
- Abstract
As SARS-CoV-2 continues to produce new variants, the demand for diagnostics and a better understanding of COVID-19 remain key topics in healthcare. Skin manifestations have been widely reported in cases of COVID-19, but the mechanisms and markers of these symptoms are poorly described. In this cross-sectional study, 101 patients (64 COVID-19 positive patients and 37 controls) were enrolled between April and June 2020, during the first wave of COVID-19, in São Paulo, Brazil. Enrolled patients had skin imprints sampled non-invasively using silica plates; plasma samples were also collected. Samples were used for untargeted lipidomics/metabolomics through high-resolution mass spectrometry. We identified 558 molecular ions, with lipids comprising most of them. We found 245 plasma ions that were significant for COVID-19 diagnosis, compared to 61 from the skin imprints. Plasma samples outperformed skin imprints in distinguishing patients with COVID-19 from controls, with F1-scores of 91.9% and 84.3%, respectively. Skin imprints were excellent for assessing disease severity, exhibiting an F1-score of 93.5% when discriminating between patient hospitalization and home care statuses. Specifically, oleamide and linoleamide were the most discriminative biomarkers for identifying hospitalized patients through skin imprinting, and palmitic amides and N-acylethanolamine 18:0 were also identified as significant biomarkers. These observations underscore the importance of primary fatty acid amides and N-acylethanolamines in immunomodulatory processes and metabolic disorders. These findings confirm the potential utility of skin imprinting as a valuable non-invasive sampling method for COVID-19 screening; a method that may also be applied in the evaluation of other medical conditions. KEY MESSAGES: Skin imprints complement plasma in disease metabolomics. The annotated markers have a role in immunomodulation and metabolic diseases. Skin imprints outperformed plasma samples at assessing disease severity. Skin imprints have potential as non-invasive sampling strategy for COVID-19., (© 2023. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.)
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- 2024
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4. Unraveling the Metabolic Alterations Induced by Zika Infection in Prostate Epithelial (PNT1a) and Adenocarcinoma (PC-3) Cell Lines.
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Delafiori J, Faria AVS, de Oliveira AN, Sales GM, Dias-Audibert FL, and Catharino RR
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- Male, Humans, Prostate, PC-3 Cells, Zika Virus Infection, Zika Virus, Adenocarcinoma
- Abstract
The outbreak of Zika virus infection in 2016 led to the identification of its presence in several types of biofluids, including semen. Later discoveries associated Zika infection with sexual transmission and persistent replication in cells of the male reproductive tract. Prostate epithelial and carcinoma cells are favorable to virus replication, with studies pointing to transcriptomics alterations of immune and inflammation genes upon persistence. However, metabolome alterations promoted by the Zika virus in prostate cells are unknown. Given its chronic effects and oncolytic potential, we aim to investigate the metabolic alterations induced by the Zika virus in prostate epithelial (PNT1a) and adenocarcinoma (PC-3) cells using an untargeted metabolomics approach and high-resolution mass spectrometry. PNT1a cells were viable up to 15 days post ZIKV infection, in contrast to its antiproliferative effect in the PC-3 cell lineage. Remarkable alterations in the PNT1a cell metabolism were observed upon infection, especially regarding glycerolipids, fatty acids, and acylcarnitines, which could be related to viral cellular resource exploitation, in addition to the over-time increase in oxidative stress metabolites associated with carcinogenesis. The upregulation of FA20:5 at 5 dpi in PC-3 cells corroborates the antiproliferative effect observed since this metabolite was previously reported to induce PC-3 cell death. Overall, Zika virus promotes extensive lipid alterations on both PNT1a and PC-3 cells, promoting different outcomes based on the cellular metabolic state.
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- 2023
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5. Tomato classification using mass spectrometry-machine learning technique: A food safety-enhancing platform.
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de Oliveira AN, Bolognini SRF, Navarro LC, Delafiori J, Sales GM, de Oliveira DN, and Catharino RR
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- Algorithms, Food Safety, Machine Learning, Spectrometry, Mass, Electrospray Ionization, Solanum lycopersicum chemistry
- Abstract
Food safety and quality assessment mechanisms are unmet needs that industries and countries have been continuously facing in recent years. Our study aimed at developing a platform using Machine Learning algorithms to analyze Mass Spectrometry data for classification of tomatoes on organic and non-organic. Tomato samples were analyzed using silica gel plates and direct-infusion electrospray-ionization mass spectrometry technique. Decision Tree algorithm was tailored for data analysis. This model achieved 92% accuracy, 94% sensitivity and 90% precision in determining to which group each fruit belonged. Potential biomarkers evidenced differences in treatment and production for each group., Competing Interests: Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2022 Elsevier Ltd. All rights reserved.)
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- 2023
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6. Metabolomic Profiling of Plasma Reveals Differential Disease Severity Markers in COVID-19 Patients.
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Oliveira LB, Mwangi VI, Sartim MA, Delafiori J, Sales GM, de Oliveira AN, Busanello ENB, Val FFAE, Xavier MS, Costa FT, Baía-da-Silva DC, Sampaio VS, de Lacerda MVG, Monteiro WM, Catharino RR, and de Melo GC
- Abstract
The severity, disabilities, and lethality caused by the coronavirus 2019 (COVID-19) disease have dumbfounded the entire world on an unprecedented scale. The multifactorial aspect of the infection has generated interest in understanding the clinical history of COVID-19, particularly the classification of severity and early prediction on prognosis. Metabolomics is a powerful tool for identifying metabolite signatures when profiling parasitic, metabolic, and microbial diseases. This study undertook a metabolomic approach to identify potential metabolic signatures to discriminate severe COVID-19 from non-severe COVID-19. The secondary aim was to determine whether the clinical and laboratory data from the severe and non-severe COVID-19 patients were compatible with the metabolomic findings. Metabolomic analysis of samples revealed that 43 metabolites from 9 classes indicated COVID-19 severity: 29 metabolites for non-severe and 14 metabolites for severe disease. The metabolites from porphyrin and purine pathways were significantly elevated in the severe disease group, suggesting that they could be potential prognostic biomarkers. Elevated levels of the cholesteryl ester CE (18:3) in non-severe patients matched the significantly different blood cholesterol components (total cholesterol and HDL, both p < 0.001) that were detected. Pathway analysis identified 8 metabolomic pathways associated with the 43 discriminating metabolites. Metabolomic pathway analysis revealed that COVID-19 affected glycerophospholipid and porphyrin metabolism but significantly affected the glycerophospholipid and linoleic acid metabolism pathways ( p = 0.025 and p = 0.035, respectively). Our results indicate that these metabolomics-based markers could have prognostic and diagnostic potential when managing and understanding the evolution of COVID-19., Competing Interests: The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest., (Copyright © 2022 Oliveira, Mwangi, Sartim, Delafiori, Sales, de Oliveira, Busanello, Val, Xavier, Costa, Baía-da-Silva, Sampaio, de Lacerda, Monteiro, Catharino and de Melo.)
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- 2022
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7. Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and Machine Learning.
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Delafiori J, Navarro LC, Siciliano RF, de Melo GC, Busanello ENB, Nicolau JC, Sales GM, de Oliveira AN, Val FFA, de Oliveira DN, Eguti A, Dos Santos LA, Dalçóquio TF, Bertolin AJ, Abreu-Netto RL, Salsoso R, Baía-da-Silva D, Marcondes-Braga FG, Sampaio VS, Judice CC, Costa FTM, Durán N, Perroud MW, Sabino EC, Lacerda MVG, Reis LO, Fávaro WJ, Monteiro WM, Rocha AR, and Catharino RR
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- Adult, Aged, Automation, Biomarkers metabolism, Brazil, COVID-19 virology, Female, Humans, Male, Middle Aged, Risk Assessment, SARS-CoV-2 isolation & purification, COVID-19 diagnosis, Machine Learning, Metabolomics
- Abstract
COVID-19 is still placing a heavy health and financial burden worldwide. Impairment in patient screening and risk management plays a fundamental role on how governments and authorities are directing resources, planning reopening, as well as sanitary countermeasures, especially in regions where poverty is a major component in the equation. An efficient diagnostic method must be highly accurate, while having a cost-effective profile. We combined a machine learning-based algorithm with mass spectrometry to create an expeditious platform that discriminate COVID-19 in plasma samples within minutes, while also providing tools for risk assessment, to assist healthcare professionals in patient management and decision-making. A cross-sectional study enrolled 815 patients (442 COVID-19, 350 controls and 23 COVID-19 suspicious) from three Brazilian epicenters from April to July 2020. We were able to elect and identify 19 molecules related to the disease's pathophysiology and several discriminating features to patient's health-related outcomes. The method applied for COVID-19 diagnosis showed specificity >96% and sensitivity >83%, and specificity >80% and sensitivity >85% during risk assessment, both from blinded data. Our method introduced a new approach for COVID-19 screening, providing the indirect detection of infection through metabolites and contextualizing the findings with the disease's pathophysiology. The pairwise analysis of biomarkers brought robustness to the model developed using machine learning algorithms, transforming this screening approach in a tool with great potential for real-world application.
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- 2021
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8. Molecular signatures associated with prostate cancer cell line (PC-3) exposure to inactivated Zika virus.
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Delafiori J, Lima EO, Dabaja MZ, Dias-Audibert FL, de Oliveira DN, Melo CFOR, Morishita KN, Sales GM, Ruiz ALTG, da Silva GG, Lancellotti M, and Catharino RR
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- Discriminant Analysis, Humans, Least-Squares Analysis, Lipid Metabolism, Male, PC-3 Cells, Prostatic Neoplasms genetics, Prostatic Neoplasms virology, Virus Inactivation, Zika Virus physiology
- Abstract
The recent outbreak of Zika virus (ZIKV) infection associated with microcephaly cases has elicited much research on the mechanisms involved in ZIKV-host cell interactions. It has been described that Zika virus impairs cell growth, raising a hypothesis about its oncolytic potential against cancer cells. ZIKV tumor cell growth inhibition was later confirmed for glioblastoma. It was also demonstrated that an inactivated ZIKV prototype (ZVp) based on bacterial outer membrane vesicles has antiproliferative activity upon other cancer cell lines, such as PC-3 prostate cancer cell. This study aims at understanding the pathways that might be involved with the antiproliferative effect of Zika virus against prostate cancer cells. A metabolomic approach based on high-resolution mass spectrometry analysis led to the identification of 21 statistically relevant markers of PC-3 cells treated with ZVp. The markers were associated with metabolic alterations that trigger lipid remodeling, endoplasmic reticulum stress, inflammatory mediators, as well as disrupted porphyrin and folate metabolism. These findings highlight molecular signatures of ZVp-induced response that may be involved on cellular pathways triggered by its antiproliferative effect. To our knowledge, this is the first reported metabolomic assessment of ZIKV effect on prostate cancer cells, a promising topic for further research.
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- 2019
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9. Burnout syndrome and weekly workload of on-call physicians: cross-sectional study.
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Barbosa FT, Leão BA, Tavares GM, and Santos JG
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- Adult, Brazil epidemiology, Epidemiologic Methods, Female, Humans, Male, Middle Aged, Sex Distribution, Sex Factors, Socioeconomic Factors, Time Factors, After-Hours Care, Burnout, Professional epidemiology, Intensive Care Units, Medical Staff, Hospital psychology, Workload psychology
- Abstract
Context and Objectives: Burnout syndrome (BS) is characterized by three dimensions: emotional exhaustion, depersonalization and reduced personal fulfillment. The objectives of this study were to evaluate a possible association between BS and weekly workload, and to describe the prevalence of BS and the sociodemographic and occupational profile of on-call physicians in Maceió., Design and Setting: Cross-sectional study in intensive care units (ICU) at public and private hospitals in Maceió., Methods: A self-administered form was used to evaluate sociodemographic characteristics and BS through the Maslach Burnout Inventory (MBI) among 67 on-call physicians at ICUs in Maceió. Pearson's R correlation test was used to compare workload and emotional exhaustion. For other dimensions, Spearman's S test was used (P < 0.05). Other variables were represented by simple frequencies. The 95% confidence interval was calculated for each variable., Results: Among the physicians studied, 55.22% were female and the mean age was 43.9 ± 8.95 years. The mean weekly workload on call was 43.85 ± 24.49 hours. The frequency of high scores in at least one of the three dimensions of MBI was 70.14%., Conclusions: Despite the high prevalence of BS, especially among physicians who did not practice regular physical activity, our data did not indicate any significant correlation between weekly workload and any of the three dimensions of BS in this sample. The high prevalence of BS draws attention to the importance of investigating other possible causes, in order to prevent and adequately treat it.
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- 2012
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