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CHIARA ROMUALDI

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Position

Professoressa Ordinaria

Address

VIA U. BASSI, 58/B - PADOVA

Telephone

0498277401

Group Web page: http://romualdi.bio.unipd.it/

Education
2001- Ph.D. degree in Statistic at the University of Padova (supervisor: Prof. Alessandra Salvan co- supervisor Prof. D.J. Balding and Prof. G. Barbujani);
2000-2001 - Visiting PhD at the Applied Statistic Department of Reading University, supervisor Prof. D.J. Balding;
1999- 2000 Visiting PhD at the Department of Biology and Evolution of Ferrara University, supervisor Prof. Guido Barbujani;
1996 BS degree with honors in Statistical Sciences at the University of Padova (Supervisor: Prof. G. Masarotto).

Current position
2014 – now: Associate Professor in Molecular Biology at the Department of Biology, University of Padova.

Previous position
2005-2014 Assistant Professor in Statistics at the Department of Biology, University of Padova.
Fellowships
2001-2004 Post-Doc at the Department of Biology of the University of Padova;
1998-2001 PhD fellowship at the Department of Statistical Science of the University of Padova; 1997-1998 Fondazione Lanza research fellowship.

Institutional responsibilities
2009-now Member of the PhD Committee of the PhD School in Bioscience of the University of Padova; 2013-now Coordinator of the Informatics Resourses Committee of the Department of Biology.

Notices

Office hours

  • at Complesso Vallisneri III piano ala sud studio 6/7
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Publications

For a complete list see:
https://scholar.google.it/citations?user=ts_OUuEAAAAJ&hl=it

Research Area

My group is interested in the development of computational frameworks for omic data integration and analysis. In particular our focus is on the reconstruction and analysis of biological networks and regulatory circuits in cancer and neurological diseases.

Thesis proposals

The research topics of the group are:

- Development of novel methods for the analysis and integration of omic data
- Pathway Analysis
- Cancer Genomics and transcriptomics
- Analysis of magnetic resonance data in multiple sclerosis diseases