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Dive into the research topics where Roberta Alfieri is active.

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Featured researches published by Roberta Alfieri.


BMC Systems Biology | 2010

A multilevel data integration resource for breast cancer study

Ettore Mosca; Roberta Alfieri; Ivan Merelli; Federica Viti; Andrea Calabria; Luciano Milanesi

BackgroundBreast cancer is one of the most common cancer types. Due to the complexity of this disease, it is important to face its study with an integrated and multilevel approach, from genes, transcripts and proteins to molecular networks, cell populations and tissues. According to the systems biology perspective, the biological functions arise from complex networks: in this context, concepts like molecular pathways, protein-protein interactions (PPIs), mathematical models and ontologies play an important role for dissecting such complexity.ResultsIn this work we present the Genes-to-Systems Breast Cancer (G2SBC) Database, a resource which integrates data about genes, transcripts and proteins reported in literature as altered in breast cancer cells. Beside the data integration, we provide an ontology based query system and analysis tools related to intracellular pathways, PPIs, protein structure and systems modelling, in order to facilitate the study of breast cancer using a multilevel perspective. The resource is available at the URL http://www.itb.cnr.it/breastcancer.ConclusionsThe G2SBC Database represents a systems biology oriented data integration approach devoted to breast cancer. By means of the analysis capabilities provided by the web interface, it is possible to overcome the limits of reductionist resources, enabling predictions that can lead to new experiments.


BMC Bioinformatics | 2009

Towards a systems biology approach to mammalian cell cycle: modeling the entrance into S phase of quiescent fibroblasts after serum stimulation

Roberta Alfieri; Matteo Barberis; Ferdinando Chiaradonna; Daniela Gaglio; Luciano Milanesi; Marco Vanoni; Edda Klipp; Lilia Alberghina

BackgroundThe cell cycle is a complex process that allows eukaryotic cells to replicate chromosomal DNA and partition it into two daughter cells. A relevant regulatory step is in the G0/G1 phase, a point called the restriction (R) point where intracellular and extracellular signals are monitored and integrated.Subcellular localization of cell cycle proteins is increasingly recognized as a major factor that regulates cell cycle transitions. Nevertheless, current mathematical models of the G1/S networks of mammalian cells do not consider this aspect. Hence, there is a need for a computational model that incorporates this regulatory aspect that has a relevant role in cancer, since altered localization of key cell cycle players, notably of inhibitors of cyclin-dependent kinases, has been reported to occur in neoplastic cells and to be linked to cancer aggressiveness.ResultsThe network of the model components involved in the G1 to S transition process was identified through a literature and web-based data mining and the corresponding wiring diagram of the G1 to S transition drawn with Cell Designer notation. The model has been implemented in Mathematica using Ordinary Differential Equations. Time-courses of level and of sub-cellular localization of key cell cycle players in mouse fibroblasts re-entering the cell cycle after serum starvation/re-feeding have been used to constrain network design and parameter determination. The model allows to recapitulate events from growth factor stimulation to the onset of S phase. The R point estimated by simulation is consistent with the R point experimentally determined.ConclusionThe major element of novelty of our model of the G1 to S transition is the explicit modeling of cytoplasmic/nuclear shuttling of cyclins, cyclin-dependent kinases, their inhibitor and complexes. Sensitivity analysis of the network performance newly reveals that the biological effect brought about by Cki overexpression is strictly dependent on whether the Cki is promoting nuclear translocation of cyclin/Cdk containing complexes.


Biotechnology Advances | 2012

Systems biology of the metabolic network regulated by the Akt pathway

Ettore Mosca; Matteo Barcella; Roberta Alfieri; Annamaria Bevilacqua; Gianfranco Canti; Luciano Milanesi

Cancer has been proposed as an example of systems biology disease or network disease. Accordingly, tumor cells differ from their normal counterparts more in terms of intracellular network dynamics than single markers. Here we shall focus on a recently recognized hallmark of cancer, the deregulation of cellular energetics. The constitutive activation of the phosphatidylinositol 3-kinase (PI3K)/Akt pathway has been confirmed as an essential step toward cell transformation. We will consider how the effects of Akt activation are connected with cell metabolism; more precisely, we will review existing metabolic models and discuss the current knowledge available to construct a kinetic model of the most relevant metabolic processes regulated by the PI3K/Akt pathway. The model will enable a systems biology approach to predict the metabolic targets that may inhibit cell growth under hyper activation of Akt.


BMC Systems Biology | 2007

A data integration approach for cell cycle analysis oriented to model simulation in systems biology

Roberta Alfieri; Ivan Merelli; Ettore Mosca; Luciano Milanesi

BackgroundThe cell cycle is one of the biological processes most frequently investigated in systems biology studies and it involves the knowledge of a large number of genes and networks of protein interactions. A deep knowledge of the molecular aspect of this biological process can contribute to making cancer research more accurate and innovative. In this context the mathematical modelling of the cell cycle has a relevant role to quantify the behaviour of each component of the systems. The mathematical modelling of a biological process such as the cell cycle allows a systemic description that helps to highlight some features such as emergent properties which could be hidden when the analysis is performed only from a reductionism point of view. Moreover, in modelling complex systems, a complete annotation of all the components is equally important to understand the interaction mechanism inside the network: for this reason data integration of the model components has high relevance in systems biology studies.DescriptionIn this work, we present a resource, the Cell Cycle Database, intended to support systems biology analysis on the Cell Cycle process, based on two organisms, yeast and mammalian. The database integrates information about genes and proteins involved in the cell cycle process, stores complete models of the interaction networks and allows the mathematical simulation over time of the quantitative behaviour of each component. To accomplish this task, we developed, a web interface for browsing information related to cell cycle genes, proteins and mathematical models. In this framework, we have implemented a pipeline which allows users to deal with the mathematical part of the models, in order to solve, using different variables, the ordinary differential equation systems that describe the biological process.ConclusionThis integrated system is freely available in order to support systems biology research on the cell cycle and it aims to become a useful resource for collecting all the information related to actual and future models of this network. The flexibility of the database allows the addition of mathematical data which are used for simulating the behavior of the cell cycle components in the different models. The resource deals with two relevant problems in systems biology: data integration and mathematical simulation of a crucial biological process related to cancer, such as the cell cycle. In this way the resource is useful both to retrieve information about cell cycle model components and to analyze their dynamical properties. The Cell Cycle Database can be used to find system-level properties, such as stable steady states and oscillations, by coupling structure and dynamical information about models.


Frontiers in Physiology | 2012

Computational Modeling of the Metabolic States Regulated by the Kinase Akt

Ettore Mosca; Roberta Alfieri; Carlo Maj; Annamaria Bevilacqua; Gianfranco Canti; Luciano Milanesi

Signal transduction and gene regulation determine a major reorganization of metabolic activities in order to support cell proliferation. Protein Kinase B (PKB), also known as Akt, participates in the PI3K/Akt/mTOR pathway, a master regulator of aerobic glycolysis and cellular biosynthesis, two activities shown by both normal and cancer proliferating cells. Not surprisingly considering its relevance for cellular metabolism, Akt/PKB is often found hyperactive in cancer cells. In the last decade, many efforts have been made to improve the understanding of the control of glucose metabolism and the identification of a therapeutic window between proliferating cancer cells and proliferating normal cells. In this context, we have modeled the link between the PI3K/Akt/mTOR pathway, glycolysis, lactic acid production, and nucleotide biosynthesis. We used a computational model to compare two metabolic states generated by two different levels of signaling through the PI3K/Akt/mTOR pathway: one of the two states represents the metabolism of a growing cancer cell characterized by aerobic glycolysis and cellular biosynthesis, while the other state represents the same metabolic network with a reduced glycolytic rate and a higher mitochondrial pyruvate metabolism. Biochemical reactions that link glycolysis and pentose phosphate pathway revealed their importance for controlling the dynamics of cancer glucose metabolism.


Nucleic Acids Research | 2007

The cell cycle DB: a systems biology approach to cell cycle analysis

Roberta Alfieri; Ivan Merelli; Ettore Mosca; Luciano Milanesi

The cell cycle database is a biological resource that collects the most relevant information related to genes and proteins involved in human and yeast cell cycle processes. The database, which is accessible at the web site http://www.itb.cnr.it/cellcycle, has been developed in a systems biology context, since it also stores the cell cycle mathematical models published in the recent years, with the possibility to simulate them directly. The aim of our resource is to give an exhaustive view of the cell cycle process starting from its building-blocks, genes and proteins, toward the pathway they create, represented by the models.


PLOS ONE | 2014

Diffusion of information throughout the host interactome reveals gene expression variations in network proximity to target proteins of hepatitis C virus.

Ettore Mosca; Roberta Alfieri; Luciano Milanesi

Hepatitis C virus infection is one of the most common and chronic in the world, and hepatitis associated with HCV infection is a major risk factor for the development of cirrhosis and hepatocellular carcinoma (HCC). The rapidly growing number of viral-host and host protein-protein interactions is enabling more and more reliable network-based analyses of viral infection supported by omics data. The study of molecular interaction networks helps to elucidate the mechanistic pathways linking HCV molecular activities and the host response that modulates the stepwise hepatocarcinogenic process from preneoplastic lesions (cirrhosis and dysplasia) to HCC. Simulating the impact of HCV-host molecular interactions throughout the host protein-protein interaction (PPI) network, we ranked the host proteins in relation to their network proximity to viral targets. We observed that the set of proteins in the neighborhood of HCV targets in the host interactome is enriched in key players of the host response to HCV infection. In opposition to HCV targets, subnetworks of proteins in network proximity to HCV targets are significantly enriched in proteins reported as differentially expressed in preneoplastic and neoplastic liver samples by two independent studies. Using multi-objective optimization, we extracted subnetworks that are simultaneously “guilt-by-association” with HCV proteins and enriched in proteins differentially expressed. These subnetworks contain established, recently proposed and novel candidate proteins for the regulation of the mechanisms of liver cells response to chronic HCV infection.


BioSystems | 2011

Modeling the cell cycle: From deterministic models to hybrid systems

Roberta Alfieri; Ezio Bartocci; Emanuela Merelli; Luciano Milanesi

The cell cycle is a complex biological system frequently investigated from a mathematical perspective. In fact, over the past years a huge number of deterministic mathematical models describing the dynamics and the regulation of this process have been proposed. A crucial point concerning the cell cycle modeling is the combination of continuous and discrete dynamics in order to obtain results which are coherent with the biological context. To face with this problem we propose a novel approach to the mathematical modeling of biological processes based on the use of hybrid systems. This new methodology essentially consists in a model reduction (using the modified Pronys method) which allows to define the crucial features of the dynamical system. The final aim is to implement a corresponding hybrid system which preserves the properties of the starting deterministic model. Thus, we implemented a methodology which allows to describe the cellular system by combining continuous behavior with discrete events by using the hybrid automata technology. In this way we try to overcome some drawbacks of the deterministic approach, especially regarding the possibility to introduce new variables during simulation and the associated variation of parameters in a more efficient way than the continuous method can do. We applied this innovative methodology to the reconstruction of a simplified hybrid model concerning one of the crucial mammalian cell cycle control point. In particular, we investigated the role of the transcription factors E2F in the R-point transition. The resulting hybrid model preserve the properties of the deterministic one and it allows the identification of the parameter which controls the transition from the inactive (quiescent) to the active state (R-point transition) after the mitogenic stimulation. At the best of our knowledge no hybrid model for the R-point transition are available in literature.


International Journal of Metadata, Semantics and Ontologies | 2011

Ontology-based resources for bioinformatics analysis

Federica Viti; Ivan Merelli; Andrea Calabria; Paolo Cozzi; Ettore Mosca; Roberta Alfieri; Luciano Milanesi

A number of specific web accessible databases are developed in order to shed light into biomolecular data, providing novel perspectives about particular scientific problems or presenting innovative data integration approaches. Ontologies constitute an important enhancement, since they allow a better representation of biological data, by providing a hierarchical structure to organise information, enabling more effective queries, statistical analysis and semantic web searching. Here we present our experience in exploiting ontologies to enrich biomolecular databases in diverse biomolecular contexts. The semantic layer improves data organisation, accessibility and analysis and represents an invaluable support to identify relations among biological components.


metadata and semantics research | 2009

Ontological Enrichment of the Genes-to-Systems Breast Cancer Database

Federica Viti; Ettore Mosca; Ivan Merelli; Andrea Calabria; Roberta Alfieri; Luciano Milanesi

Breast cancer research need the development of specific and suitable tools to appropriately manage biomolecular knowledge. The presented work deals with the integrative storage of breast cancer related biological data, in order to promote a system biology approach to this network disease. To increase data standardization and resource integration, annotations maintained in Genes-to-Systems Breast Cancer (G2SBC) database are associated to ontological terms, which provide a hierarchical structure to organize data enabling more effective queries, statistical analysis and semantic web searching. Exploited ontologies, which cover all levels of the molecular environment, from genes to systems, are among the most known and widely used bioinformatics resources. In G2SBC database ontology terms both provide a semantic layer to improve data storage, accessibility and analysis and represent a user friendly instrument to identify relations among biological components.

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Ettore Mosca

National Research Council

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Ivan Merelli

National Research Council

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Federica Viti

National Research Council

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Andrea Calabria

Vita-Salute San Raffaele University

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Andrea Calabria

Vita-Salute San Raffaele University

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