WORKFLOW & QUALITY MANAGEMENT
Fondazione Mondino e Università degli Studi di Pavia
8-9-10 Settembre 2021
Radiomics and artificial intelligence (AI) are currently revolutionizing the way we look at big data and our approach in the understanding of diseases, connecting imaging metrics, biological biomarkers, genetics and clinical scores.
The application of AI is further sustaining the evolution of radiomics and promises to boost its applications, progressively proving itself to be crucial in the interplay between radiology and other medical and scientific disciplines in supporting the understanding of pathological mechanisms of diseases as well as potentially predicting clinical outcomes.
The availability of a large amount of data poses several issues and highlights the need to improve our abilities in building and organizing adequate datasets, extracting features and signatures as well as optimizing their analysis and interpretation by correctly setting up a robust “pipeline”. Another critical issue in modern radiomics/AI based medical research is paving the way to translating these results into clinical practice.
The aim of this three-day School, coordinated by the University of Pavia, is to respond to these needs of a robust pipeline with quality control in order to translate research evidence into clinical practice. In this arduous attempt, the school will provide the attendants a complete “toolbox” to operate in this field. The technical steps will be explored in detail, ranging from data collection, data organization, analysis, feature extraction and data presentation, both from a technical/operational perspective as well as from a medical/interpretative one. Special attention will be paid not only to the pipeline but also to quality assurance in order to ease an adequate translation of evidence into clinical practice.
E.C.M. NAZIONALE (Ministero della Salute)
ID. EVENTO E.C.M. NAZIONALE: 752 – 315010
NR. CREDITI: 17
DESTINATARI E.C.M.: Medici Chirurghi, Fisici, Ingegneri, Statistici, Informatici, Matematici
DISCIPLINE DI RIFERIMENTO: Radiologia, Radioterapia, Medicina Nucleare, Chirurgia, Oncologia, Neuroradiologia, Fisica, Ingegneria e Matematica