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AJNR Awards, New Junior Editors, and more. Read the latest AJNR updates

Research ArticlePediatric Neuroimaging
Open Access

Automated 3D Fetal Brain Segmentation Using an Optimized Deep Learning Approach

L. Zhao, J.D. Asis-Cruz, X. Feng, Y. Wu, K. Kapse, A. Largent, J. Quistorff, C. Lopez, D. Wu, K. Qing, C. Meyer and C. Limperopoulos
American Journal of Neuroradiology March 2022, 43 (3) 448-454; DOI: https://doi.org/10.3174/ajnr.A7419
L. Zhao
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
bDepartment of Biomedical Engineering (L.Z., D.W.), Key Laboratory for Biomedical Engineering of Ministry of Education, College of Biomedical Engineering & Instrument Science, Zhejiang University, China
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J.D. Asis-Cruz
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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X. Feng
cDepartment of Biomedical Engineering (X.F., C.M.), University of Virginia, Charlottesville, Virginia
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Y. Wu
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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K. Kapse
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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A. Largent
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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J. Quistorff
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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C. Lopez
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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D. Wu
bDepartment of Biomedical Engineering (L.Z., D.W.), Key Laboratory for Biomedical Engineering of Ministry of Education, College of Biomedical Engineering & Instrument Science, Zhejiang University, China
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K. Qing
dDepartment of Radiation Oncology (K.Q.), City of Hope National Center, Duarte, California
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C. Meyer
cDepartment of Biomedical Engineering (X.F., C.M.), University of Virginia, Charlottesville, Virginia
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C. Limperopoulos
aFrom the Department of Diagnostic Imaging and Radiology (L.Z., J.D.A.-C., Y.W., K.K., A.L., J.Q., C. Lopez, C. Limperopoulos), Developing Brain Institute, Children’s National, Washington, DC
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Abstract

BACKGROUND AND PURPOSE: MR imaging provides critical information about fetal brain growth and development. Currently, morphologic analysis primarily relies on manual segmentation, which is time-intensive and has limited repeatability. This work aimed to develop a deep learning–based automatic fetal brain segmentation method that provides improved accuracy and robustness compared with atlas-based methods.

MATERIALS AND METHODS: A total of 106 fetal MR imaging studies were acquired prospectively from fetuses between 23 and 39 weeks of gestation. We trained a deep learning model on the MR imaging scans of 65 healthy fetuses and compared its performance with a 4D atlas-based segmentation method using the Wilcoxon signed-rank test. The trained model was also evaluated on data from 41 fetuses diagnosed with congenital heart disease.

RESULTS: The proposed method showed high consistency with the manual segmentation, with an average Dice score of 0.897. It also demonstrated significantly improved performance (P < .001) based on the Dice score and 95% Hausdorff distance in all brain regions compared with the atlas-based method. The performance of the proposed method was consistent across gestational ages. The segmentations of the brains of fetuses with high-risk congenital heart disease were also highly consistent with the manual segmentation, though the Dice score was 7% lower than that of healthy fetuses.

CONCLUSIONS: The proposed deep learning method provides an efficient and reliable approach for fetal brain segmentation, which outperformed segmentation based on a 4D atlas and has been used in clinical and research settings.

ABBREVIATIONS:

BS
brain stem
CGM
cortical GM
CNN
convolutional neural network
CHD
congenital heart disease
DGM
deep GM
GA
gestational age
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American Journal of Neuroradiology: 43 (3)
American Journal of Neuroradiology
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1 Mar 2022
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Cite this article
L. Zhao, J.D. Asis-Cruz, X. Feng, Y. Wu, K. Kapse, A. Largent, J. Quistorff, C. Lopez, D. Wu, K. Qing, C. Meyer, C. Limperopoulos
Automated 3D Fetal Brain Segmentation Using an Optimized Deep Learning Approach
American Journal of Neuroradiology Mar 2022, 43 (3) 448-454; DOI: 10.3174/ajnr.A7419

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Automated 3D Fetal Brain Segmentation Using an Optimized Deep Learning Approach
L. Zhao, J.D. Asis-Cruz, X. Feng, Y. Wu, K. Kapse, A. Largent, J. Quistorff, C. Lopez, D. Wu, K. Qing, C. Meyer, C. Limperopoulos
American Journal of Neuroradiology Mar 2022, 43 (3) 448-454; DOI: 10.3174/ajnr.A7419
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