about
Design and analysis of a Petri net model of the Von Hippel-Lindau (VHL) tumor suppressor interaction networkAn expanded evaluation of protein function prediction methods shows an improvement in accuracyRepeatsDB: a database of tandem repeat protein structuresNeEMO: a method using residue interaction networks to improve prediction of protein stability upon mutation.BOOGIE: Predicting Blood Groups from High Throughput Sequencing Data.Align: a C++ class library and web server for rapid sequence alignment prototyping.The Victor C++ library for protein representation and advanced manipulation.INGA: protein function prediction combining interaction networks, domain assignments and sequence similarity.Protein function prediction using guilty by association from interaction networks.RAPHAEL: recognition, periodicity and insertion assignment of solenoid protein structures.Computing Discrete Fine-Grained Representations of Protein SurfacesComprehensive large-scale assessment of intrinsic protein disorderParallel Computation of Voxelized Macromolecular Surfaces by Spatial SlicingTowards Secure e-Health Interoperable Personal NetworksContext-Dependent Reputation Management for Soft Security in Multi Agent SystemsGRID DEPLOYMENT OF BIOINFORMATICS APPLICATIONS: A CASE STUDY IN PROTEIN SIMILARITY DETERMINATIONA grid-aware approach to protein structure comparisonMap focus: A way to reconcile reactivity and deliberation in multirobot systemsCooperative behaviors in multi-robot systems through implicit communicationA method for solving multiple autonomous robots collisions problem using space and time representationUnderstanding scene descriptions by integrating different sources of knowledge
P50
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P50
description
researcher ORCID id 0000-0003-3665-0446
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wetenschapper
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name
Carlo Ferrari
@ast
Carlo Ferrari
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Carlo Ferrari
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Carlo Ferrari
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type
label
Carlo Ferrari
@ast
Carlo Ferrari
@en
Carlo Ferrari
@es
Carlo Ferrari
@nl
prefLabel
Carlo Ferrari
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Carlo Ferrari
@en
Carlo Ferrari
@es
Carlo Ferrari
@nl
P106
P1153
56563564100
P21
P31
P496
0000-0003-3665-0446