Paul Blanc-Durand1,2,3,4,5, Simon Jégou6, Salim Kanoun7,8, Alina Berriolo-Riedinger7,9, Caroline Bodet-Milin7,10,11, Françoise Kraeber-Bodéré7,10,11, Thomas Carlier7,10,11, Steven Le Gouill7,12, René-Olivier Casasnovas7,13, Michel Meignan7, Emmanuel Itti14,7,15. 1. Department of Nuclear Medicine, CHU H. Mondor, AP-HP, F-94010, Créteil, France. paul.blancdurand@aphp.fr. 2. LYmphoma Study Association (LYSA), Pierre-Bénite, France. paul.blancdurand@aphp.fr. 3. INSERM IMRB Team 8, U-PEC, F-94000, Créteil, France. paul.blancdurand@aphp.fr. 4. INRIA Epione Team, Sophia Antipolis, France. paul.blancdurand@aphp.fr. 5. Service de Médecine Nucléaire, CHU Henri Mondor, 51 ave. Du Mal de Lattre de Tassigny, 94010, Créteil, France. paul.blancdurand@aphp.fr. 6. Owkin, F-75010, Paris, France. 7. LYmphoma Study Association (LYSA), Pierre-Bénite, France. 8. Department of Nuclear Medicine, Institut C. Regaud, F-31000, Toulouse, France. 9. Department of Nuclear Medicine, Centre G.-F. Leclerc, F-21000, Dijon, France. 10. Department of Nuclear Medicine, CHU de Nantes, F-44000, Nantes, France. 11. CRCINA, INSERM, CNRS, Université d'Angers, Université de Nantes, Nantes, France. 12. Department of Hematology, CHU de Nantes, F-44000, Nantes, France. 13. Department of Hematology, CHU Le Bocage, F-21000, Dijon, France. 14. Department of Nuclear Medicine, CHU H. Mondor, AP-HP, F-94010, Créteil, France. 15. INSERM IMRB Team 8, U-PEC, F-94000, Créteil, France.
Abstract
PURPOSE: Lymphoma lesion detection and segmentation on whole-body FDG-PET/CT are a challenging task because of the diversity of involved nodes, organs or physiological uptakes. We sought to investigate the performances of a three-dimensional (3D) convolutional neural network (CNN) to automatically segment total metabolic tumour volume (TMTV) in large datasets of patients with diffuse large B cell lymphoma (DLBCL). METHODS: The dataset contained pre-therapy FDG-PET/CT from 733 DLBCL patients of 2 prospective LYmphoma Study Association (LYSA) trials. The first cohort (n = 639) was used for training using a 5-fold cross validation scheme. The second cohort (n = 94) was used for external validation of TMTV predictions. Ground truth masks were manually obtained after a 41% SUVmax adaptive thresholding of lymphoma lesions. A 3D U-net architecture with 2 input channels for PET and CT was trained on patches randomly sampled within PET/CTs with a summed cross entropy and Dice similarity coefficient (DSC) loss. Segmentation performance was assessed by the DSC and Jaccard coefficients. Finally, TMTV predictions were validated on the second independent cohort. RESULTS: Mean DSC and Jaccard coefficients (± standard deviation) in the validations set were 0.73 ± 0.20 and 0.68 ± 0.21, respectively. An underestimation of mean TMTV by - 12 mL (2.8%) ± 263 was found in the validation sets of the first cohort (P = 0.27). In the second cohort, an underestimation of mean TMTV by - 116 mL (20.8%) ± 425 was statistically significant (P = 0.01). CONCLUSION: Our CNN is a promising tool for automatic detection and segmentation of lymphoma lesions, despite slight underestimation of TMTV. The fully automatic and open-source features of this CNN will allow to increase both dissemination in routine practice and reproducibility of TMTV assessment in lymphoma patients.
PURPOSE:Lymphoma lesion detection and segmentation on whole-body FDG-PET/CT are a challenging task because of the diversity of involved nodes, organs or physiological uptakes. We sought to investigate the performances of a three-dimensional (3D) convolutional neural network (CNN) to automatically segment total metabolic tumour volume (TMTV) in large datasets of patients with diffuse large B cell lymphoma (DLBCL). METHODS: The dataset contained pre-therapy FDG-PET/CT from 733 DLBCL patients of 2 prospective LYmphoma Study Association (LYSA) trials. The first cohort (n = 639) was used for training using a 5-fold cross validation scheme. The second cohort (n = 94) was used for external validation of TMTV predictions. Ground truth masks were manually obtained after a 41% SUVmax adaptive thresholding of lymphoma lesions. A 3D U-net architecture with 2 input channels for PET and CT was trained on patches randomly sampled within PET/CTs with a summed cross entropy and Dice similarity coefficient (DSC) loss. Segmentation performance was assessed by the DSC and Jaccard coefficients. Finally, TMTV predictions were validated on the second independent cohort. RESULTS: Mean DSC and Jaccard coefficients (± standard deviation) in the validations set were 0.73 ± 0.20 and 0.68 ± 0.21, respectively. An underestimation of mean TMTV by - 12 mL (2.8%) ± 263 was found in the validation sets of the first cohort (P = 0.27). In the second cohort, an underestimation of mean TMTV by - 116 mL (20.8%) ± 425 was statistically significant (P = 0.01). CONCLUSION: Our CNN is a promising tool for automatic detection and segmentation of lymphoma lesions, despite slight underestimation of TMTV. The fully automatic and open-source features of this CNN will allow to increase both dissemination in routine practice and reproducibility of TMTV assessment in lymphomapatients.
Entities:
Keywords:
Convolutional neural network; Deep learning; Lymphoma; Positron emission tomography; Segmentation; Total metabolic tumour volume; U-net
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