Automation of Wilms' tumor segmentation by artificial intelligence.
Détails
ID Serval
serval:BIB_330F53FDF41C
Type
Article: article d'un périodique ou d'un magazine.
Collection
Publications
Institution
Titre
Automation of Wilms' tumor segmentation by artificial intelligence.
Périodique
Cancer imaging
ISSN
1470-7330 (Electronic)
ISSN-L
1470-7330
Statut éditorial
Publié
Date de publication
02/07/2024
Peer-reviewed
Oui
Volume
24
Numéro
1
Pages
83
Langue
anglais
Notes
Publication types: Journal Article
Publication Status: epublish
Publication Status: epublish
Résumé
3D reconstruction of Wilms' tumor provides several advantages but are not systematically performed because manual segmentation is extremely time-consuming. The objective of our study was to develop an artificial intelligence tool to automate the segmentation of tumors and kidneys in children.
A manual segmentation was carried out by two experts on 14 CT scans. Then, the segmentation of Wilms' tumor and neoplastic kidney was automatically performed using the CNN U-Net and the same CNN U-Net trained according to the OV <sup>2</sup> ASSION method. The time saving for the expert was estimated depending on the number of sections automatically segmented.
When segmentations were performed manually by two experts, the inter-individual variability resulted in a Dice index of 0.95 for tumor and 0.87 for kidney. Fully automatic segmentation with the CNN U-Net yielded a poor Dice index of 0.69 for Wilms' tumor and 0.27 for kidney. With the OV <sup>2</sup> ASSION method, the Dice index varied depending on the number of manually segmented sections. For the segmentation of the Wilms' tumor and neoplastic kidney, it varied respectively from 0.97 to 0.94 for a gap of 1 (2 out of 3 sections performed manually) to 0.94 and 0.86 for a gap of 10 (1 section out of 6 performed manually).
Fully automated segmentation remains a challenge in the field of medical image processing. Although it is possible to use already developed neural networks, such as U-Net, we found that the results obtained were not satisfactory for segmentation of neoplastic kidneys or Wilms' tumors in children. We developed an innovative CNN U-Net training method that makes it possible to segment the kidney and its tumor with the same precision as an expert while reducing their intervention time by 80%.
A manual segmentation was carried out by two experts on 14 CT scans. Then, the segmentation of Wilms' tumor and neoplastic kidney was automatically performed using the CNN U-Net and the same CNN U-Net trained according to the OV <sup>2</sup> ASSION method. The time saving for the expert was estimated depending on the number of sections automatically segmented.
When segmentations were performed manually by two experts, the inter-individual variability resulted in a Dice index of 0.95 for tumor and 0.87 for kidney. Fully automatic segmentation with the CNN U-Net yielded a poor Dice index of 0.69 for Wilms' tumor and 0.27 for kidney. With the OV <sup>2</sup> ASSION method, the Dice index varied depending on the number of manually segmented sections. For the segmentation of the Wilms' tumor and neoplastic kidney, it varied respectively from 0.97 to 0.94 for a gap of 1 (2 out of 3 sections performed manually) to 0.94 and 0.86 for a gap of 10 (1 section out of 6 performed manually).
Fully automated segmentation remains a challenge in the field of medical image processing. Although it is possible to use already developed neural networks, such as U-Net, we found that the results obtained were not satisfactory for segmentation of neoplastic kidneys or Wilms' tumors in children. We developed an innovative CNN U-Net training method that makes it possible to segment the kidney and its tumor with the same precision as an expert while reducing their intervention time by 80%.
Mots-clé
Wilms Tumor/diagnostic imaging, Wilms Tumor/pathology, Humans, Kidney Neoplasms/diagnostic imaging, Kidney Neoplasms/pathology, Artificial Intelligence, Tomography, X-Ray Computed/methods, Child, Imaging, Three-Dimensional/methods, Child, Preschool, Neural Networks, Computer, Male, Female, Automation, 3D reconstruction, Artificial intelligence, Deep learning, Segmentation, Wilms’ tumor
Pubmed
Web of science
Open Access
Oui
Création de la notice
11/07/2024 13:36
Dernière modification de la notice
12/07/2024 6:03