Automatic fetal fat quantification from MRI
Netanell Avisdris, Aviad Rabinowich, Daniel Fridkin, Ayala Zilberman,, Sapir Lazar, Jacky Herzlich, Zeev Hananis, Daphna Link-Sourani, Liat, Ben-Sira, Liran Hiersch, Dafna Ben Bashat, and Leo Joskowicz

TL;DR
This paper introduces a deep learning-based method for fetal fat segmentation from MRI, significantly reducing segmentation time and improving accuracy, enabling quantitative fetal adipose tissue assessment for clinical and research use.
Contribution
It presents the first deep learning approach for fetal fat segmentation from Dixon MRI, optimizing radiologist workflow and achieving high accuracy comparable to manual expert delineation.
Findings
Segmentation times reduced from 3:38 hours to less than 1 hour.
Achieved a mean Dice score of 0.863 with the best DL network.
Corrected segmentations had a Dice score of 0.961, demonstrating high accuracy.
Abstract
Normal fetal adipose tissue (AT) development is essential for perinatal well-being. AT, or simply fat, stores energy in the form of lipids. Malnourishment may result in excessive or depleted adiposity. Although previous studies showed a correlation between the amount of AT and perinatal outcome, prenatal assessment of AT is limited by lacking quantitative methods. Using magnetic resonance imaging (MRI), 3D fat- and water-only images of the entire fetus can be obtained from two point Dixon images to enable AT lipid quantification. This paper is the first to present a methodology for developing a deep learning based method for fetal fat segmentation based on Dixon MRI. It optimizes radiologists' manual fetal fat delineation time to produce annotated training dataset. It consists of two steps: 1) model-based semi-automatic fetal fat segmentations, reviewed and corrected by a radiologist;…
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Taxonomy
TopicsCardiovascular Disease and Adiposity
MethodsTest · *Communicated@Fast*How Do I Communicate to Expedia? · Convolution · Concatenated Skip Connection · Max Pooling · U-Net
