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Whole-body MRI radiomics model to predict relapsed/refractory Hodgkin Lymphoma: A preliminary study

Authors :
Lorenzo Ugga
Domenico Albano
Massimo Galia
Umberto Ficola
Alessandro Costa
Renato Cuocolo
Massimo Midiri
Roberto Lagalla
Roberta Faraone
Giuseppe Micci
Silvia Albano
Vito Chianca
Vittoria Tarantino
Rosario Paratore
Caterina Patti
Albano D.
Cuocolo R.
Patti C.
Ugga L.
Chianca V.
Tarantino V.
Faraone R.
Albano S.
Micci G.
Costa A.
Paratore R.
Ficola U.
Lagalla R.
Midiri M.
Galia M.
Albano, Domenico
Cuocolo, Renato
Patti, Caterina
Ugga, Lorenzo
Chianca, Vito
Tarantino, Vittoria
Faraone, Roberta
Albano, Silvia
Micci, Giuseppe
Costa, Alessandro
Paratore, Rosario
Ficola, Umberto
Lagalla, Roberto
Midiri, Massimo
Galia, Massimo
Source :
Magnetic resonance imaging. 86
Publication Year :
2021

Abstract

Purpose A strong prognostic score that enables a stratification of newly diagnosed Hodgkin Lymphoma (HL) to identify patients at high risk of refractory/relapsed disease is still needed. Our aim was to investigate the potential value of a radiomics analysis pipeline from whole-body MRI (WB-MRI) exams for clinical outcome prediction in patients with Hodgkin Lymphoma (HL). Materials and methods Index lesions from baseline WB-MRIs of 40 patients (22 females; mean age 31.7 ± 11.4 years) with newly diagnosed HL treated by ABVD chemotherapy regimen were manually segmented on T1-weighted, STIR, and DWI images for texture analysis feature extraction. A machine learning approach based on the Extra Trees classifier and incorporating clinical variables, 18F-FDG-PET/CT-derived metabolic tumor volume, and WB-MRI radiomics features was tested using cross-validation to predict refractory/relapsed disease. Results Relapsed disease was observed in 10/40 patients (25%), two of whom died due to progression of disease and graft versus host disease, while eight reached the complete remission. In total, 1403 clinical and radiomics features were extracted, of which 11 clinical variables and 171 radiomics parameters from both original and filtered images were selected. The 3 best performing Extra Trees classifier models obtained an equivalent highest mean accuracy of 0.78 and standard deviation of 0.09, with a mean AUC of 0.82 and standard deviation of 0.08. Conclusions Our preliminary results demonstrate that a combined machine learning and texture analysis model to predict refractory/relapsed HL on WB-MRI exams is feasible and may help in the clinical outcome prediction in HL patients.

Details

ISSN :
18735894
Volume :
86
Database :
OpenAIRE
Journal :
Magnetic resonance imaging
Accession number :
edsair.doi.dedup.....0264eabe117b3c218a7cd1463b1c5b39