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Multi-Center Fetal Brain Tissue Annotation (FeTA) Challenge 2022 Results
13
Zitationen
67
Autoren
2024
Jahr
Abstract
Segmentation is a critical step in analyzing the developing human fetal brain. There have been vast improvements in automatic segmentation methods in the past several years, and the Fetal Brain Tissue Annotation (FeTA) Challenge 2021 helped to establish an excellent standard of fetal brain segmentation. However, FeTA 2021 was a single center study, limiting real-world clinical applicability and acceptance. The multi-center FeTA Challenge 2022 focused on advancing the generalizability of fetal brain segmentation algorithms for magnetic resonance imaging (MRI). In FeTA 2022, the training dataset contained images and corresponding manually annotated multi-class labels from two imaging centers, and the testing data contained images from these two centers as well as two additional unseen centers. The multi-center data included different MR scanners, imaging parameters, and fetal brain super-resolution algorithms applied. 16 teams participated and 17 algorithms were evaluated. Here, the challenge results are presented, focusing on the generalizability of the submissions. Both in- and out-of-domain, the white matter and ventricles were segmented with the highest accuracy (Top Dice scores: 0.89, 0.87 respectively), while the most challenging structure remains the grey matter (Top Dice score: 0.75) due to anatomical complexity. The top 5 average Dices scores ranged from 0.81-0.82, the top 5 average percentile Hausdorff distance values ranged from 2.3-2.5mm, and the top 5 volumetric similarity scores ranged from 0.90-0.92. The FeTA Challenge 2022 was able to successfully evaluate and advance generalizability of multi-class fetal brain tissue segmentation algorithms for MRI and it continues to benchmark new algorithms.
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Autoren
- Kelly Payette
- Céline Steger
- Roxane Licandro
- Priscille De Dumast
- Hongwei Li
- Matthew J. Barkovich
- Liu Li
- Maik Dannecker
- Chen Chen
- Cheng Ouyang
- Niccolò McConnell
- Alina Miron
- Yongmin Li
- Alena Uus
- Irina Grigorescu
- Paula Ramirez Gilliland
- Md Mahfuzur Rahman Siddiquee
- Daguang Xu
- Andriy Myronenko
- Haoyu Wang
- Ziyan Huang
- Ye Jin
- Mireia Alenyà
- Valentin Comte
- Óscar Cámara
- Jean‐Baptiste Masson
- Astrid Nilsson
- Charlotte Godard
- Moona Mazher
- Abdul Qayyum
- Yibo Gao
- Hangqi Zhou
- Shangqi Gao
- Jia Fu
- Guiming Dong
- Guotai Wang
- ZunHyan Rieu
- HyeonSik Yang
- Minwoo Lee
- Szymon Płotka
- Michal K. Grzeszczyk
- Arkadiusz Sitek
- Luisa Vargas Daza
- Santiago Usma
- Pablo Arbeláez
- Wenying Lu
- Wenhao Zhang
- Jing Liang
- Romain Valabrègue
- Anand A. Joshi
- Krishna N. Nayak
- Richard M. Leahy
- Luca Wilhelmi
- Aline Dändliker
- Hui Ji
- Antonio Giulio Gennari
- Anton Jakovčić
- Melita Klaić
- Ana Adžić
- Pavel Marković
- Gracia Grabarić
- Gregor Kasprian
- Gregor Dovjak
- Milan Radoš
- Lana Vasung
- Meritxell Bach Cuadra
- András Jakab
Institutionen
- University Children's Hospital Zurich(CH)
- Athinoula A. Martinos Center for Biomedical Imaging(US)
- University of Lausanne(CH)
- Harvard University(US)
- UCSF Benioff Children's Hospital(US)
- Imperial College London(GB)
- Technical University of Munich(DE)
- University of Oxford(GB)
- Brunel University of London(GB)
- Nvidia (United States)(US)
- Shanghai Jiao Tong University(CN)
- Shanghai Artificial Intelligence Laboratory
- Universitat Pompeu Fabra(ES)
- Institut Pasteur(FR)
- Fudan University(CN)
- University of Electronic Science and Technology of China(CN)
- The Seoul Institute(KR)
- Massachusetts General Hospital(US)
- Universidad de Los Andes(CO)
- South China University of Technology(CN)
- Inserm(FR)
- Centre National de la Recherche Scientifique(FR)
- Sorbonne Université(FR)
- University of Southern California(US)
- University of Zagreb(HR)
- Medical University of Vienna(AT)
- Boston Children's Hospital(US)