Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Elena Fioravanzo is active.

Publication


Featured researches published by Elena Fioravanzo.


International Journal of Molecular Sciences | 2014

Molecular Modelling Study of the PPARγ Receptor in Relation to the Mode of Action/Adverse Outcome Pathway Framework for Liver Steatosis

Ivanka Tsakovska; Merilin Al Sharif; Petko Alov; Antonia Diukendjieva; Elena Fioravanzo; Mark Td Cronin; Ilza Pajeva

The comprehensive understanding of the precise mode of action and/or adverse outcome pathway (MoA/AOP) of chemicals has become a key step toward the development of a new generation of predictive toxicology tools. One of the challenges of this process is to test the feasibility of the molecular modelling approaches to explore key molecular initiating events (MIE) within the integrated strategy of MoA/AOP characterisation. The description of MoAs leading to toxicity and liver damage has been the focus of much interest. Growing evidence underlines liver PPARγ ligand-dependent activation as a key MIE in the elicitation of liver steatosis. Synthetic PPARγ full agonists are of special concern, since they may trigger a number of adverse effects not observed with partial agonists. In this study, molecular modelling was performed based on the PPARγ complexes with full agonists extracted from the Protein Data Bank. The receptor binding pocket was analysed, and the specific ligand-receptor interactions were identified for the most active ligands. A pharmacophore model was derived, and the most important pharmacophore features were outlined and characterised in relation to their specific role for PPARγ activation. The results are useful for the characterisation of the chemical space of PPARγ full agonists and could facilitate the development of preliminary filtering rules for the effective virtual ligand screening of compounds with PPARγ full agonistic activity.


Toxicology | 2017

The application of molecular modelling in the safety assessment of chemicals: A case study on ligand-dependent PPARγ dysregulation

Merilin Al Sharif; Ivanka Tsakovska; Ilza Pajeva; Petko Alov; Elena Fioravanzo; Arianna Bassan; Simona Kovarich; Chihae Yang; Aleksandra Mostrag-Szlichtyng; Vessela Vitcheva; Andrew Worth; Andrea-N. Richarz; Mark T. D. Cronin

The aim of this paper was to provide a proof of concept demonstrating that molecular modelling methodologies can be employed as a part of an integrated strategy to support toxicity prediction consistent with the mode of action/adverse outcome pathway (MoA/AOP) framework. To illustrate the role of molecular modelling in predictive toxicology, a case study was undertaken in which molecular modelling methodologies were employed to predict the activation of the peroxisome proliferator-activated nuclear receptor γ (PPARγ) as a potential molecular initiating event (MIE) for liver steatosis. A stepwise procedure combining different in silico approaches (virtual screening based on docking and pharmacophore filtering, and molecular field analysis) was developed to screen for PPARγ full agonists and to predict their transactivation activity (EC50). The performance metrics of the classification model to predict PPARγ full agonists were balanced accuracy=81%, sensitivity=85% and specificity=76%. The 3D QSAR model developed to predict EC50 of PPARγ full agonists had the following statistical parameters: q2cv=0.610, Nopt=7, SEPcv=0.505, r2pr=0.552. To support the linkage of PPARγ agonism predictions to prosteatotic potential, molecular modelling was combined with independently performed mechanistic mining of available in vivo toxicity data followed by ToxPrint chemotypes analysis. The approaches investigated demonstrated a potential to predict the MIE, to facilitate the process of MoA/AOP elaboration, to increase the scientific confidence in AOP, and to become a basis for 3D chemotype development.


Toxicology | 2017

Quantitative structure-skin permeability relationships

Ivanka Tsakovska; Ilza Pajeva; Merilin Al Sharif; Petko Alov; Elena Fioravanzo; Simona Kovarich; Andrew Worth; Andrea-Nicole Richarz; Chihae Yang; Aleksandra Mostrag-Szlichtyng; Mark T. D. Cronin

This paper reviews in silico models currently available for the prediction of skin permeability. A comprehensive discussion on the developed methods is presented, focusing on quantitative structure-permeability relationships. In addition, the mechanistic models and comparative studies that analyse different models are discussed. Limitations and strengths of the different approaches are highlighted together with the emergent issues and perspectives.


Methods of Molecular Biology | 2016

The Consultancy Activity on In Silico Models for Genotoxic Prediction of Pharmaceutical Impurities

Manuela Pavan; Simona Kovarich; Arianna Bassan; Lorenza Broccardo; Chihae Yang; Elena Fioravanzo

The toxicological assessment of DNA-reactive/mutagenic or clastogenic impurities plays an important role in the regulatory process for pharmaceuticals; in this context, in silico structure-based approaches are applied as primary tools for the evaluation of the mutagenic potential of the drug impurities. The general recommendations regarding such use of in silico methods are provided in the recent ICH M7 guideline stating that computational (in silico) toxicology assessment should be performed using two (Q)SAR prediction methodologies complementing each other: a statistical-based method and an expert rule-based method.Based on our consultant experience, we describe here a framework for in silico assessment of mutagenic potential of drug impurities. Two main applications of in silico methods are presented: (1) support and optimization of drug synthesis processes by providing early indication of potential genotoxic impurities and (2) regulatory evaluation of genotoxic potential of impurities in compliance with the ICH M7 guideline. Some critical case studies are also discussed.


Toxicology Letters | 2013

Prediction of dose-hepatotoxic response in humans based on toxicokinetic/toxicodynamic modeling with or without in vivo data : A case study with acetaminophen

Alexandre R.R. Péry; Céline Brochot; Florence Anna Zeman; Enrico Mombelli; Sophie Desmots; Manuela Pavan; Elena Fioravanzo; José-Manuel Zaldívar


EFSA Supporting Publications | 2011

Applicability of physicochemical data, QSARs and read-across in Threshold of Toxicological Concern assessment

Arianna Bassan; Elena Fioravanzo; Manuela Pavan; Matteo Stocchero


International Journal of Toxicology | 2013

Integrated in silico modeling for the prediction of chronic toxicity

Andrea-Nicole Richarz; Michael R. Berthold; Elena Fioravanzo; Daniel Neagu; Chihae Yang; José-Manuel Zaldívar-Comenges; Mark T. D. Cronin


IFSCC magazine : the global publication of the International Federation of Societies of Cosmetic Chemists | 2012

Development of Computational Models for the Risk Assessment of Cosmetic Ingredients

Soheila Anzali; Michael R. Berthold; Elena Fioravanzo; Daniel Neagu; Alexandre R.R. Péry; Andrew Worth; Chihae Yang; Mark T. D. Cronin; Andrea-Nicole Richarz


EFSA Supporting Publications | 2015

Further development and update of EFSA's Chemical Hazards Database

Beatrice Barbaro; Rossella Baldin; Simona Kovarich; Manuela Pavan; Elena Fioravanzo; Arianna Bassan


Toxicology Letters | 2013

Molecular modelling of LXR binding to evaluate the potential for liver steatosis

Elena Fioravanzo; Arianna Bassan; Mark T. D. Cronin; Simona Kovarich; C. Manelfi; Andrea-Nicole Richarz; Ivanka Tsakovska; Andrew Worth

Collaboration


Dive into the Elena Fioravanzo's collaboration.

Top Co-Authors

Avatar

Chihae Yang

Center for Food Safety and Applied Nutrition

View shared research outputs
Top Co-Authors

Avatar

Mark T. D. Cronin

Liverpool John Moores University

View shared research outputs
Top Co-Authors

Avatar

Andrew Worth

Liverpool John Moores University

View shared research outputs
Top Co-Authors

Avatar

Andrea-Nicole Richarz

Liverpool John Moores University

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Ivanka Tsakovska

Bulgarian Academy of Sciences

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Christof H. Schwab

University of Erlangen-Nuremberg

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge