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Article Dans Une Revue Cancers Année : 2021

Object Detection Improves Tumour Segmentation in MR Images of Rare Brain Tumours

Antoine Grigis
  • Fonction : Auteur

Résumé

Tumour lesion segmentation is a key step to study and characterise cancer from MR neuroradiological images. Presently, numerous deep learning segmentation architectures have been shown to perform well on the specific tumour type they are trained on (e.g., glioblastoma in brain hemispheres). However, a high performing network heavily trained on a given tumour type may perform poorly on a rare tumour type for which no labelled cases allows training or transfer learning. Yet, because some visual similarities exist nevertheless between common and rare tumours, in the lesion and around it, one may split the problem into two steps: object detection and segmentation. For each step, trained networks on common lesions could be used on rare ones following a domain adaptation scheme without extra fine-tuning. This work proposes a resilient tumour lesion delineation strategy, based on the combination of established elementary networks that achieve detection and segmentation. Our strategy allowed us to achieve robust segmentation inference on a rare tumour located in an unseen tumour context region during training. As an example of a rare tumour, Diffuse Intrinsic Pontine Glioma (DIPG), we achieve an average dice score of 0.62 without further training or network architecture adaptation.
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Origine : Publication financée par une institution

Dates et versions

hal-04493157 , version 1 (04-04-2024)

Identifiants

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Hamza Chegraoui, Cathy Philippe, Volodia Dangouloff-Ros, Antoine Grigis, Raphael Calmon, et al.. Object Detection Improves Tumour Segmentation in MR Images of Rare Brain Tumours. Cancers, 2021, 13 (23), pp.6113. ⟨10.3390/cancers13236113⟩. ⟨hal-04493157⟩
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