Articolo in rivista, 2021, ENG, 10.1002/asmb.2642
Barone S.; Cannella R.; Comelli A.; Pellegrino A.; Salvaggio G.; Stefano A.; Vernuccio F.
Dipartimento di Scienze Agrarie, Alimentari e Forestali, Università degli Studi di Palermo, Palermo, Italy. Dipartimento di Biomedicina, Neuroscienze e Diagnostica Avanzata, Università degli Studi di Palermo, Palermo, Italy. Fondazione Ri.MED, Palermo, Italy. Istituto di Bioimmagini e Fisiologia Molecolare, Consiglio Nazionale delle Ricerche (IBFM-CNR), Cefalù, Italy Dipartimento di Ingegneria Meccanica e Aerospaziale, Politecnico di Torino, Turin, Italy
In healthcare industry 4.0, a big role is played by radiomics. Radiomics concerns the extraction and analysis of quantitative information not visible to the naked eye, even by expert operators, from biomedical images. Radiomics involves the management of digital images as data matrices, with the aim of extracting a number of morphological and predictive variables, named features, using automatic or semi-automatic methods. Multidisciplinary methods as machine learning and deep learning are fully involved in this field. However, the large number of features requires efficient and effective core methods for their selection, in order to avoid bias or misinterpretations problems. In this work, the authors propose a novel method for feature selection in radiomics. The proposed method is based on an original combination of descriptive and inferential statistics. Its validity is illustrated through a case study on prostate cancer analysis, conducted at the university hospital of Palermo, Italy.
Applied stochastic models in business and industry (Online) 37 , pp. 961–972
Feature selection, image analysis, prostate cancer, radiomics
Comelli Albert, Stefano Alessandro
ID: 456347
Year: 2021
Type: Articolo in rivista
Creation: 2021-09-03 12:21:01.000
Last update: 2021-12-21 10:05:13.000
CNR authors
CNR institutes
External IDs
CNR OAI-PMH: oai:it.cnr:prodotti:456347
DOI: 10.1002/asmb.2642
Scopus: 2-s2.0-85113952318
ISI Web of Science (WOS): 000691377700001