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Radiomics and artificial intelligence analysis of CT data for the identification of prognostic features in multiple myeloma

Authors :
Schenonea, Daniela
Lai, Rita
Cea, Michele
Rossi, Federica
Torri, Lorenzo
Bignotti, Bianca
Succio, Giulia
Gualco, Stefano
Conte, Alessio
Dominietto, Alida
Massone, Anna Maria
Piana, Michele
Campi, Cristina
Frassoni, Francesco
Sambuceti, Gianmario
Tagliafico, Alberto Stefano
Publication Year :
2020

Abstract

Multiple Myeloma (MM) is a blood cancer implying bone marrow involvement, renal damages and osteolytic lesions. The skeleton involvement of MM is at the core of the present paper, exploiting radiomics and artificial intelligence to identify image-based biomarkers for MM. Preliminary results show that MM is associated to an extension of the intrabone volume for the whole body and that machine learning can identify CT image features mostly correlating with the disease evolution. This computational approach allows an automatic stratification of MM patients relying of these biomarkers and the formulation of a prognostic procedure for determining the disease follow-up.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.08924
Document Type :
Working Paper