10 results on '"Marangelo, Chiara"'
Search Results
2. Functional foods acting on gut microbiota-related wellness: The multi-unit in vitro colon model to assess gut ecological and functional modulation
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Marangelo, Chiara, Marsiglia, Riccardo, Nissen, Lorenzo, Scanu, Matteo, Toto, Francesca, Siroli, Lorenzo, Gottardi, Davide, Braschi, Giacomo, Del Chierico, Federica, Bordoni, Alessandra, Gianotti, Andrea, Lanciotti, Rosalba, Patrignani, Francesca, Putignani, Lorenza, and Vernocchi, Pamela
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- 2025
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3. Williams–Beuren syndrome shapes the gut microbiota metaproteome
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Marzano, Valeria, Levi Mortera, Stefano, Vernocchi, Pamela, Del Chierico, Federica, Marangelo, Chiara, Guarrasi, Valerio, Gardini, Simone, Dentici, Maria Lisa, Capolino, Rossella, Digilio, Maria Cristina, Di Donato, Maddalena, Spasari, Iolanda, Abreu, Maria Teresa, Dallapiccola, Bruno, and Putignani, Lorenza
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- 2023
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4. Stratification of Gut Microbiota Profiling Based on Autism Neuropsychological Assessments.
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Marangelo, Chiara, Vernocchi, Pamela, Del Chierico, Federica, Scanu, Matteo, Marsiglia, Riccardo, Petrolo, Emanuela, Fucà, Elisa, Guerrera, Silvia, Valeri, Giovanni, Vicari, Stefano, and Putignani, Lorenza
- Subjects
CHILD Behavior Checklist ,AUTISM spectrum disorders ,INTERNALIZING behavior ,NEUROPSYCHOLOGICAL tests ,DEVELOPMENTAL delay - Abstract
Autism spectrum disorder (ASD) is a neurodevelopmental disorder. Investigations of gut microbiota (GM) play an important role in deciphering disease severity and symptoms. Overall, we stratified 70 ASD patients by neuropsychological assessment, based on Calibrated Severity Scores (CSSs) of the Autism Diagnostic Observation Schedule-Second edition (ADOS-2), Child Behavior Checklist (CBCL) and intelligent quotient/developmental quotient (IQ/DQ) parameters. Hence, metataxonomy and PICRUSt-based KEGG predictions of fecal GM were assessed for each clinical subset. Here, 60% of ASD patients showed mild to moderate autism, while the remaining 40% showed severe symptoms; 23% showed no clinical symptoms, 21% had a risk of behavior problems and 56% had clinical symptoms based on the CBCL, which assesses internalizing problems; further, 52% had no clinical symptoms, 21% showed risk, and 26% had clinical symptoms classified by CBCL externalizing problems. Considering the total CBCL index, 34% showed no clinical symptoms, 13% showed risk, and 52% had clinical symptoms. Here, 70% of ASD patients showed cognitive impairment/developmental delay (CI/DD). The GM of ASDs with severe autism was characterized by an increase in Veillonella, a decrease in Monoglobus pectinilyticus and a higher microbial dysbiosis index (MDI) when compared to mild-moderate ASDs. Patients at risk for behavior problems and showing clinical symptoms were characterized by a GM with an increase of Clostridium, Eggerthella, Blautia, Intestinibacter, Coprococcus, Ruminococcus, Onthenecus and Bariatricus, respectively. Peptidoglycan biosynthesis and biofilm formation KEGGs characterized patients with clinical symptoms, while potential microbiota-activated PPAR-γ-signaling was seen in CI/DD patients. This evidence derived from GM profiling may be used to further improve ASD understanding, leasing to a better comprehension of the neurological phenotype. [ABSTRACT FROM AUTHOR]
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- 2024
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5. A Novel Microbial Dysbiosis Index and Intestinal Microbiota-Associated Markers as Tools of Precision Medicine in Inflammatory Bowel Disease Paediatric Patients.
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Toto, Francesca, Marangelo, Chiara, Scanu, Matteo, De Angelis, Paola, Isoldi, Sara, Abreu, Maria Teresa, Cucchiara, Salvatore, Stronati, Laura, Del Chierico, Federica, and Putignani, Lorenza
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INFLAMMATORY bowel diseases , *INTESTINAL barrier function , *CHILD patients , *ULCERATIVE colitis , *GUT microbiome - Abstract
Recent evidence indicates that the gut microbiota (GM) has a significant impact on the inflammatory bowel disease (IBD) progression. Our aim was to investigate the GM profiles, the Microbial Dysbiosis Index (MDI) and the intestinal microbiota-associated markers in relation to IBD clinical characteristics and disease state. We performed 16S rRNA metataxonomy on both stools and ileal biopsies, metabolic dysbiosis tests on urine and intestinal permeability and mucosal immunity activation tests on the stools of 35 IBD paediatric patients. On the GM profile, we assigned the MDI to each patient. In the statistical analyses, the MDI was correlated with clinical parameters and intestinal microbial-associated markers. In IBD patients with high MDI, Gemellaceae and Enterobacteriaceae were increased in stools, and Fusobacterium, Haemophilus and Veillonella were increased in ileal biopsies. Ruminococcaceae and WAL_1855D were enriched in active disease condition; the last one was also positively correlated to MDI. Furthermore, the MDI results correlated with PUCAI and Matts scores in ulcerative colitis patients (UC). Finally, in our patients, we detected metabolic dysbiosis, intestinal permeability and mucosal immunity activation. In conclusion, the MDI showed a strong association with both severity and activity of IBD and a positive correlation with clinical scores, especially in UC. Thus, this evidence could be a useful tool for the diagnosis and prognosis of IBD. [ABSTRACT FROM AUTHOR]
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- 2024
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6. Gut Microbiota Ecological and Functional Modulation in Post-Stroke Recovery Patients: An Italian Study
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Marsiglia, Riccardo, primary, Marangelo, Chiara, additional, Vernocchi, Pamela, additional, Scanu, Matteo, additional, Pane, Stefania, additional, Russo, Alessandra, additional, Guanziroli, Eleonora, additional, Del Chierico, Federica, additional, Valeriani, Massimiliano, additional, Molteni, Franco, additional, and Putignani, Lorenza, additional
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- 2023
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7. Gut microbiota functional profiling in autism spectrum disorders: bacterial VOCs and related metabolic pathways acting as disease biomarkers and predictors
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Vernocchi, Pamela, Marangelo, Chiara, Guerrera, Silvia, Del Chierico, Federica, Guarrasi, Valerio, Gardini, Simone, Conte, Federica, Paci, Paola, Ianiro, Gianluca, Gasbarrini, Antonio, Vicari, Stefano, Putignani, Lorenza, Ianiro, Gianluca (ORCID:0000-0002-8318-0515), Gasbarrini, Antonio (ORCID:0000-0002-7278-4823), Vicari, Stefano (ORCID:0000-0002-5395-2262), Vernocchi, Pamela, Marangelo, Chiara, Guerrera, Silvia, Del Chierico, Federica, Guarrasi, Valerio, Gardini, Simone, Conte, Federica, Paci, Paola, Ianiro, Gianluca, Gasbarrini, Antonio, Vicari, Stefano, Putignani, Lorenza, Ianiro, Gianluca (ORCID:0000-0002-8318-0515), Gasbarrini, Antonio (ORCID:0000-0002-7278-4823), and Vicari, Stefano (ORCID:0000-0002-5395-2262)
- Abstract
BackgroundAutism spectrum disorder (ASD) is a multifactorial neurodevelopmental disorder. Major interplays between the gastrointestinal (GI) tract and the central nervous system (CNS) seem to be driven by gut microbiota (GM). Herein, we provide a GM functional characterization, based on GM metabolomics, mapping of bacterial biochemical pathways, and anamnestic, clinical, and nutritional patient metadata.MethodsFecal samples collected from children with ASD and neurotypical children were analyzed by gas-chromatography mass spectrometry coupled with solid phase microextraction (GC-MS/SPME) to determine volatile organic compounds (VOCs) associated with the metataxonomic approach by 16S rRNA gene sequencing. Multivariate and univariate statistical analyses assessed differential VOC profiles and relationships with ASD anamnestic and clinical features for biomarker discovery. Multiple web-based and machine learning (ML) models identified metabolic predictors of disease and network analyses correlated GM ecological and metabolic patterns.ResultsThe GM core volatilome for all ASD patients was characterized by a high concentration of 1-pentanol, 1-butanol, phenyl ethyl alcohol; benzeneacetaldehyde, octadecanal, tetradecanal; methyl isobutyl ketone, 2-hexanone, acetone; acetic, propanoic, 3-methyl-butanoic and 2-methyl-propanoic acids; indole and skatole; and o-cymene. Patients were stratified based on age, GI symptoms, and ASD severity symptoms. Disease risk prediction allowed us to associate butanoic acid with subjects older than 5 years, indole with the absence of GI symptoms and low disease severity, propanoic acid with the ASD risk group, and p-cymene with ASD symptoms, all based on the predictive CBCL-EXT scale. The HistGradientBoostingClassifier model classified ASD patients vs. CTRLs by an accuracy of 89%, based on methyl isobutyl ketone, benzeneacetaldehyde, phenyl ethyl alcohol, ethanol, butanoic acid, octadecane, acetic acid, skatole, and tetradecanal features. Log
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- 2023
8. Gut Microbiota Ecological and Functional Modulation in Post-Stroke Recovery Patients: An Italian Study.
- Author
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Marsiglia, Riccardo, Marangelo, Chiara, Vernocchi, Pamela, Scanu, Matteo, Pane, Stefania, Russo, Alessandra, Guanziroli, Eleonora, Del Chierico, Federica, Valeriani, Massimiliano, Molteni, Franco, and Putignani, Lorenza
- Subjects
GUT microbiome ,SHORT-chain fatty acids ,MULTIVARIATE analysis ,ISCHEMIC stroke ,MASS spectrometers ,INDOLE ,MICROBIAL metabolites - Abstract
Ischemic stroke (IS) can be caused by perturbations of the gut–brain axis. An imbalance in the gut microbiota (GM), or dysbiosis, may be linked to several IS risk factors and can influence the brain through the production of different metabolites, such as short-chain fatty acids (SCFAs), indole and derivatives. This study examines ecological changes in the GM and its metabolic activities after stroke. Fecal samples of 10 IS patients were compared to 21 healthy controls (CTRLs). GM ecological profiles were generated via 16S rRNA taxonomy as functional profiles using metabolomics analysis performed with a gas chromatograph coupled to a mass spectrometer (GC-MS). Additionally fecal zonulin, a marker of gut permeability, was measured using an enzyme-linked immuno assay (ELISA). Data were analyzed using univariate and multivariate statistical analyses and correlated with clinical features and biochemical variables using correlation and nonparametric tests. Metabolomic analyses, carried out on a subject subgroup, revealed a high concentration of fecal metabolites, such as SCFAs, in the GM of IS patients, which was corroborated by the enrichment of SCFA-producing bacterial genera such as Bacteroides, Christensellaceae, Alistipes and Akkermansia. Conversely, indole and 3-methyl indole (skatole) decreased compared to a subset of six CTRLs. This study illustrates how IS might affect the gut microbial milieu and may suggest potential microbial and metabolic biomarkers of IS. Expanded populations of Akkermansia and enrichment of acetic acid could be considered potential disease phenotype signatures. [ABSTRACT FROM AUTHOR]
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- 2024
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9. The metaproteome of the gut microbiota in pediatric patients affected by COVID-19.
- Author
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Marzano V, Mortera SL, Marangelo C, Piazzesi A, Rapisarda F, Pane S, Del Chierico F, Vernocchi P, Romani L, Campana A, Palma P, and Putignani L
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- Adult, Humans, Child, Adjuvants, Immunologic, Algorithms, Gastrointestinal Microbiome, COVID-19, Microbiota
- Abstract
Introduction: The gut microbiota (GM) play a significant role in the infectivity and severity of COVID-19 infection. However, the available literature primarily focuses on adult patients and it is known that the microbiota undergoes changes throughout the lifespan, with significant alterations occurring during infancy and subsequently stabilizing during adulthood. Moreover, children have exhibited milder symptoms of COVID-19 disease, which has been associated with the abundance of certain protective bacteria. Here, we examine the metaproteome of pediatric patients to uncover the biological mechanisms that underlie this protective effect of the GM., Methods: We performed nanoliquid chromatography coupled with tandem mass spectrometry on a high resolution analytical platform, resulting in label free quantification of bacterial protein groups (PGs), along with functional annotations via COG and KEGG databases by MetaLab-MAG. Additionally, taxonomic assignment was possible through the use of the lowest common ancestor algorithm provided by Unipept software., Results: A COVID-19 GM functional dissimilarity respect to healthy subjects was identified by univariate analysis. The alteration in COVID-19 GM function is primarily based on bacterial pathways that predominantly involve metabolic processes, such as those related to tryptophan, butanoate, fatty acid, and bile acid biosynthesis, as well as antibiotic resistance and virulence., Discussion: These findings highlight the mechanisms by which the pediatric GM could contribute to protection against the more severe manifestations of the disease in children. Uncovering these mechanisms can, therefore, have important implications in the discovery of novel adjuvant therapies for severe 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. The author(s) declared that they were an editorial board member of Frontiers, at the time of submission. This had no impact on the peer review process and the final decision., (Copyright © 2023 Marzano, Mortera, Marangelo, Piazzesi, Rapisarda, Pane, Del Chierico, Vernocchi, Romani, Campana, Palma, Putignani and the CACTUS Study Team.)
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- 2023
- Full Text
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10. Gut microbiota functional profiling in autism spectrum disorders: bacterial VOCs and related metabolic pathways acting as disease biomarkers and predictors.
- Author
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Vernocchi P, Marangelo C, Guerrera S, Del Chierico F, Guarrasi V, Gardini S, Conte F, Paci P, Ianiro G, Gasbarrini A, Vicari S, and Putignani L
- Abstract
Background: Autism spectrum disorder (ASD) is a multifactorial neurodevelopmental disorder. Major interplays between the gastrointestinal (GI) tract and the central nervous system (CNS) seem to be driven by gut microbiota (GM). Herein, we provide a GM functional characterization, based on GM metabolomics, mapping of bacterial biochemical pathways, and anamnestic, clinical, and nutritional patient metadata., Methods: Fecal samples collected from children with ASD and neurotypical children were analyzed by gas-chromatography mass spectrometry coupled with solid phase microextraction (GC-MS/SPME) to determine volatile organic compounds (VOCs) associated with the metataxonomic approach by 16S rRNA gene sequencing. Multivariate and univariate statistical analyses assessed differential VOC profiles and relationships with ASD anamnestic and clinical features for biomarker discovery. Multiple web-based and machine learning (ML) models identified metabolic predictors of disease and network analyses correlated GM ecological and metabolic patterns., Results: The GM core volatilome for all ASD patients was characterized by a high concentration of 1-pentanol, 1-butanol, phenyl ethyl alcohol; benzeneacetaldehyde, octadecanal, tetradecanal; methyl isobutyl ketone, 2-hexanone, acetone; acetic, propanoic, 3-methyl-butanoic and 2-methyl-propanoic acids; indole and skatole; and o-cymene. Patients were stratified based on age, GI symptoms, and ASD severity symptoms. Disease risk prediction allowed us to associate butanoic acid with subjects older than 5 years, indole with the absence of GI symptoms and low disease severity, propanoic acid with the ASD risk group, and p-cymene with ASD symptoms, all based on the predictive CBCL-EXT scale. The HistGradientBoostingClassifier model classified ASD patients vs. CTRLs by an accuracy of 89%, based on methyl isobutyl ketone, benzeneacetaldehyde, phenyl ethyl alcohol, ethanol, butanoic acid, octadecane, acetic acid, skatole, and tetradecanal features. LogisticRegression models corroborated methyl isobutyl ketone, benzeneacetaldehyde, phenyl ethyl alcohol, skatole, and acetic acid as ASD predictors., Conclusion: Our results will aid the development of advanced clinical decision support systems (CDSSs), assisted by ML models, for advanced ASD-personalized medicine, based on omics data integrated into electronic health/medical records. Furthermore, new ASD screening strategies based on GM-related predictors could be used to improve ASD risk assessment by uncovering novel ASD onset and risk predictors., 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 © 2023 Vernocchi, Marangelo, Guerrera, Del Chierico, Guarrasi, Gardini, Conte, Paci, Ianiro, Gasbarrini, Vicari and Putignani.)
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- 2023
- Full Text
- View/download PDF
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