ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2204.09573
25
39

Fetal Brain Tissue Annotation and Segmentation Challenge Results

20 April 2022
K. Payette
Hongwei Bran Li
Priscille de Dumast
Roxane Licandro
H. Ji
M. R. Siddiquee
Daguang Xu
Andriy Myronenko
Hao Liu
Yuchen Pei
Lisheng Wang
Ying-ji Peng
Juanying Xie
Huiquan Zhang
Guiming Dong
Hao Fu
Guotai Wang
ZunHyan Rieu
Donghyeon Kim
Hyun Gi Kim
Davood Karimi
Ali Gholipour
Helena R. Torres
Bruno Oliveira
Joao L. Vilacca
Yang Lin
Netanell Avisdris
Ori Ben-Zvi
D. Ben Bashat
Lucas Fidon
Michael Aertsen
Tom Kamiel Magda Vercauteren
Daniel Sobotka
Georg Langs
Mireia Alenyá
María Villanueva
Oscar Camara
Bella Specktor-Fadida
Leo Joskowicz
Liao Weibin
L. Yi
Liao Xuesong
Moona Mazher
Abdul Qayyum
Domenec Puig
Hamza Kebiri
Zelin Zhang
Xinyi Xu
Dan Wu
Kuan-Ya Liao
YiXuan Wu
JinTai Chen
Yunzhi Xu
Li Zhao
L. Vasung
Bjoern H. Menze
Meritxell Bach Cuadra
Andras Jakab
ArXivPDFHTML
Abstract

In-utero fetal MRI is emerging as an important tool in the diagnosis and analysis of the developing human brain. Automatic segmentation of the developing fetal brain is a vital step in the quantitative analysis of prenatal neurodevelopment both in the research and clinical context. However, manual segmentation of cerebral structures is time-consuming and prone to error and inter-observer variability. Therefore, we organized the Fetal Tissue Annotation (FeTA) Challenge in 2021 in order to encourage the development of automatic segmentation algorithms on an international level. The challenge utilized FeTA Dataset, an open dataset of fetal brain MRI reconstructions segmented into seven different tissues (external cerebrospinal fluid, grey matter, white matter, ventricles, cerebellum, brainstem, deep grey matter). 20 international teams participated in this challenge, submitting a total of 21 algorithms for evaluation. In this paper, we provide a detailed analysis of the results from both a technical and clinical perspective. All participants relied on deep learning methods, mainly U-Nets, with some variability present in the network architecture, optimization, and image pre- and post-processing. The majority of teams used existing medical imaging deep learning frameworks. The main differences between the submissions were the fine tuning done during training, and the specific pre- and post-processing steps performed. The challenge results showed that almost all submissions performed similarly. Four of the top five teams used ensemble learning methods. However, one team's algorithm performed significantly superior to the other submissions, and consisted of an asymmetrical U-Net network architecture. This paper provides a first of its kind benchmark for future automatic multi-tissue segmentation algorithms for the developing human brain in utero.

View on arXiv
Comments on this paper