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Consistency Regularization Improves Placenta Segmentation in Fetal EPI MRI Time Series

Authors :
Liu, Yingcheng
Karani, Neerav
Dey, Neel
Abulnaga, S. Mazdak
Xu, Junshen
Grant, P. Ellen
Turk, Esra Abaci
Golland, Polina
Publication Year :
2023

Abstract

The placenta plays a crucial role in fetal development. Automated 3D placenta segmentation from fetal EPI MRI holds promise for advancing prenatal care. This paper proposes an effective semi-supervised learning method for improving placenta segmentation in fetal EPI MRI time series. We employ consistency regularization loss that promotes consistency under spatial transformation of the same image and temporal consistency across nearby images in a time series. The experimental results show that the method improves the overall segmentation accuracy and provides better performance for outliers and hard samples. The evaluation also indicates that our method improves the temporal coherency of the prediction, which could lead to more accurate computation of temporal placental biomarkers. This work contributes to the study of the placenta and prenatal clinical decision-making. Code is available at https://github.com/firstmover/cr-seg.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.03870
Document Type :
Working Paper