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Andrea Petta

Researcher at University of Salerno

Publications -  24
Citations -  1357

Andrea Petta is an academic researcher from University of Salerno. The author has contributed to research in topics: Open data & Data visualization. The author has an hindex of 8, co-authored 23 publications receiving 895 citations. Previous affiliations of Andrea Petta include National University of Ireland & King Abdullah University of Science and Technology.

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Journal ArticleDOI

Towards the online computer-aided design of catalytic pockets

TL;DR: Topographic steric maps are introduced that provide a three-dimensional image of the catalytic pocket—the region of the catalyst where the substrate binds and reacts—enabling it to be visualized and also reshaped by changing various parameters.
Journal ArticleDOI

SambVca 2. A Web Tool for Analyzing Catalytic Pockets with Topographic Steric Maps

TL;DR: In this paper, the authors present a Web application for analyzing the catalytic pocket of metal complexes using topographic steric maps as a general and unbiased descriptor that is suitable for every class of catalysts.
Proceedings ArticleDOI

Privacy awareness about information leakage: who knows what about me?

TL;DR: This paper moves towards a comprehensive and efficient client-side tool that maximizes users' awareness of the extent of their information leakage and shows that such a customizable tool can help users to make informed decisions on controlling their privacy footprint.
Journal ArticleDOI

CONSRANK: a server for the analysis, comparison and ranking of docking models based on inter-residue contacts.

TL;DR: ConSRANK, a web tool for analyzing, comparing and ranking protein-protein and protein-nucleic acid docking models, based on the conservation of inter-residue contacts and its visualization in 2D and 3D interactive contact maps is presented.
Journal ArticleDOI

Introducing a Clustering Step in a Consensus Approach for the Scoring of Protein-Protein Docking Models

TL;DR: The modified scoring approach, Clust-CONSRANK, is applied to SCORE_SET, a set of CAPRI scoring models made recently available by CAPRI assessors, and to the subset of homodimeric targets in CAPRI Round 30 for which CONSRANK failed to include a correct solution within the ten selected models.