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Cesare Furlanello received his degree in Mathematics at the University of Padua, Italy, in 1986. He is at Fondazione Bruno Kessler (Centre for Scientific and Technological Research of Trento) since 1987, now a Senior Researcher. He is currently leader of the MPBA Project (previously the ITC-IRST Neural Networks for Complex Data Analysis Project, since 1995).
In general terms, he is a data scientist, with main research interests in the interdisciplinary applications of machine learning methods to biomedical and environmental data. He is active in the field of bioinformatics, developing methods and software solutions to find patterns in very high throughput molecular data (such as Next Generation Sequencing and microarrays). He also have years of experience with machine learning and data analysis for geoinformatics, aiming at creating a bridge (geo-bioinformatics) between molecular profiles and spatial data structures. He has designed and managed many collaborative studies with life science researchers, in which math and software infrastructures are integrated to discover patterns in high-throughput datasets. He was first Project manager at IRST for the National Bioelectronics Project (1991-94), and he is currently PI and project manager of research projects in which Predictive Models are applied to Biomedical and Environmental data, for a total of 58 funded projects since 1988. These studies combine statistical machine learning methods with new sw infrastructures for data collection, management and distribution of the resulting models: Predictive Health Platforms and Geoinformatics platforms are thus the final outcome. The most recent research is directed to applications in functional genomics, including the development of computational pipelines and a focus to the problems of scientific reproducibility.
Basic and applied studies have been developed at the MPBA group with colleagues in other institutions on molecular oncology, vector-borne disease mapping, wildlife epidemiology, traffic safety, landscape risk analysis. CF has actively contributed to computational aspects, supporting the development of open source geoinformatics (GIS GRASS, WebGIS) and high performance machine learning (mlpy). Since 2002, he has contributed to the development of predictive classification models and gene selection procedures for molecular diagnostics, in collaboration with national and international centres of excellence in molecular oncology. He is a bioinformatics PI collaborator of international consortia such as the SEQC/MAQC FDA initiative and the FANTOM5 project led by the RIKEN OMICS centre. He has been a PI for AIRC with the IFOM-FIRC institute. He is also a collaborator PI in several projects of the Mach Foundation (FEM) for computational biology (metagenomics) and environmental mapping (climate change and plant genomics)
Several of the systems realized in experimental studies are now data platforms in use as infrastructures by public agencies: IET, MITRIS (Trentino and Friuli-VG), UXB-TN (Trentino), FaunaTN and FaunaBL (Trentino and Belluno) are the largest. The spinoff company MPA Solutions is mantaining these systems and developing WebGIS technologies with predictive modeling functions.
CF was Scientific secretary of the GNCB-CNR school on Neural Networks for Signal Processing (Trento 1989) and organizer of other workshops on Applications of Machine Learning and Neural Networks. In September 2008, he was Local Conference Chair of the MGED11 International Workshop of the MGED Society (in its Advisory Board since 2007) and he is now in the Board of Directors of the FGED society. Lecturer on Neural Network and Statistics at Master School of Advanced Information Science of Salerno University. Chairman of Session Theory 1 at IEEE NNSP-95 Cambridge MA, 1995. Member of the Scientific Board of the Multiple Classifier Systems series of conferences. Invited participant in the Machine Learning and Neural Networks Program of the Newton Institute of Mathematical Science, Cambridge UK, 1998. Member of the Italian Neural Network Society (serving in its Scientific Board 1991-2005), of the International Association for Pattern Recognition.
Invited lectures (a selection): NATO-ASI school Learning with Ensemble models (Vietri 2002), the ECEM/EAML Conference (Bled 2004), at the Int. BCB-Workshop on Machine Learning in Bioinformatics (Oct. 2005, Berlin), Int. School "The analysis of patterns" (Nov. 2005, Erice), "Predictive modeling on spatio-temporal patterns" (April 2007, Univ. Bristol), and "Signature Stability Analysis" (Nov 2007, Silver Springs, FDA).
He has been supervisor of 30 graduate or postgraduate theses for the universities of Trento (Mathematics and Engineering), Milano, Bologna, and Torino, supervisor of Leonardo graduate placements, tutor of 8 ASI-CONAE fellows in 2003-2012. Currently a supervisor of internships for Master thesis in Mathematics, Information and Telecommunication Engineering for the University of Trento, as well as a tutor for post-doc fellowships. Courses held: 1998-2003: Lecturer on COMPUTATIONAL STATISTICS AND PREDICTIVE MODELS, Math MsC, Trento University, and 2004-06: Lecturer on "Statistical Machine Learning", a course for the International Graduate School in ICT, Trento University. He is currently a member of the PhD School in Biomolecular sciences of UniTN.
He is a founder of the WEBVALLEY project, the FBK summer course for dissemination of interdisciplinary scientific research. Since 2001, CF is responsible for the WebValley Scientific program, and a resident tutor for all the 12 editions of this event. Developing the culture of data with open source platforms (web scripting, geodatabases, webGIS, tools for data visualization, statistical analysis decision making) based on a challenging project is the theme of 3 fast-paced weeks, in which about 20 high schools students team up with senior and junior researchers. In 2012, for this activity CF has been listed as "one of the 50 persons that are changing the world" by Wired, Italian edition (at #42, as in the H Guide).
S. Paoli; G. Jurman; D. Albanese; S. Merler; C. Furlanello.,Semisupervised Profiling of Gene Expressions and Clinical Data.,Fuzzy Logic and Applications,Berlino,Springer,2006, pp. 284 -289
S. Merler; G. Jurman; C. Furlanello; C. Rizzo; A. Bella; M. Massari; M.L. Ciofi degli Atti,Strategies for containing an influenza pandemic: the case of italy,2006, (Bionetics,Trento, Italy,12/13/2006 12/17/2006)
S. Merler; G. Jurman; C. Furlanello; C. Rizzo; A. Bella; M. Massari; M.L. Ciofi degli Atti,Strategies for containing an influenza pandemic: the case of italy,2006
M. Neteler; D. Grasso; I. Michelazzi; L. Miori; S. Merler; C. Furlanello,in «INTERNATIONAL JOURNAL OF GEOINFORMATICS»,2005, pp. 51 -61
C. Furlanello; M. Serafini; S. Merler; G. Jurman,Semisupervised Learning for Molecular Profiling,in «IEEE/ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS»,2005, pp. 110 -118
P. Fateh-Moghadam; G. Dallago; S. Piffer; G. Zanon; S. Menegon; S. Fontanari; C. Furlanello.,Epidemiology of Road Traffic Accidents in the province of Trento: first results of an integrated surveillance system (MITRIS),in «EPIDEMIOLOGIA E PREVENZIONE»,vol. 29,n. 3/4,2005, pp. 172 -179
S. Merler; C. Furlanello; G. Jurman.,Machine learning on historic air photographs for mapping risk of unexploded bombs,Image Analysis and Processing – ICIAP 2005 Image Analysis and Processing – ICIAP 2005,Berlino,Springer,2005, pp. 735 -742
C. Furlanello; S. Merler; G. Jurman,Combining feature selection and DTW for time-varying functional genomics,Given temporal high-throughput data defining a two-class functional genomic process, feature selection algorithms may be applied to extract a panel of discriminating gene time series from noise. We then aim at identifying the main trends of activity along the process: a reconstruction method based on stagewise boosting is endowed with a similarity measure based on the Dynamic Time Warping algorithm, defining a ranked set of time series component most contributing to the reconstruction.
The approach is applied on synthetic and public microarray data. On the Cardiogenomics PGA mouse model of Myocardial Infarction, the approach allows the identification of a timevarying molecular profile of the ventricular remodeling process,2005
S. Merler; B. Caprile; C. Furlanello,Bias-Variance Control via Hard Points Shaving,in «INTERNATIONAL JOURNAL OF PATTERN RECOGNITION AND ARTIFICIAL INTELLIGENCE»,vol. 18,n. 5,2004, pp. 891 -903
C. Furlanello; M. Serafini; S. Merler; G. Jurman,Methods for predictive classification and molecular profiling from DNA microarray data,in «ITALIAN HEART JOURNAL»,vol. 5,n. 1,2004, pp. 199 -202