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Deep Learning Approach to Automatize TMTV Calculations Regardless of Segmentation Methodology for Major FDG-Avid Lymphomas

Wendy Revailler, Anne‐Ségolène Cottereau, Cédric Rossi, Rudy Noyelle, Thomas Trouillard, Franck Morschhauser, Olivier Casasnovas, Catherine Thiéblemont, Steven Le Gouill, Marc André, Hervé Ghesquières, Romain Ricci, Michel Meignan, Salim Kanoun

2022Diagnostics23 citationsDOIOpen Access PDF

Abstract

The total metabolic tumor volume (TMTV) is a new prognostic factor in lymphomas that could benefit from automation with deep learning convolutional neural networks (CNN). Manual TMTV segmentations of 1218 baseline 18FDG-PET/CT have been used for training. A 3D V-NET model has been trained to generate segmentations with soft dice loss. Ground truth segmentation has been generated using a combination of different thresholds (TMTVprob), applied to the manual region of interest (Otsu, relative 41% and SUV 2.5 and 4 cutoffs). In total, 407 and 405 PET/CT were used for test and validation datasets, respectively. The training was completed in 93 h. In comparison with the TMTVprob, mean dice reached 0.84 in the training set, 0.84 in the validation set and 0.76 in the test set. The median dice scores for each TMTV methodology were 0.77, 0.70 and 0.90 for 41%, 2.5 and 4 cutoff, respectively. Differences in the median TMTV between manual and predicted TMTV were 32, 147 and 5 mL. Spearman's correlations between manual and predicted TMTV were 0.92, 0.95 and 0.98. This generic deep learning model to compute TMTV in lymphomas can drastically reduce computation time of TMTV.

Topics & Concepts

SegmentationConvolutional neural networkArtificial intelligenceDeep learningTest setDiceMedicineNuclear medicineComputer scienceStatisticsMathematicsMedical Imaging Techniques and ApplicationsRadiomics and Machine Learning in Medical ImagingAdvanced Radiotherapy Techniques