Shape-aware Segmentation of the Placenta in BOLD Fetal MRI Time Series.

S Mazdak Abulnaga, Neel Dey, Sean I Young, Eileen Pan, Katherine I Hobgood, Clinton J Wang, P Ellen Grant, Esra Abaci Turk, Polina Golland
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Abstract

Blood oxygen level dependent (BOLD) MRI time series with maternal hyperoxia can assess placental oxygenation and function. Measuring precise BOLD changes in the placenta requires accurate temporal placental segmentation and is confounded by fetal and maternal motion, contractions, and hyperoxia-induced intensity changes. Current BOLD placenta segmentation methods warp a manually annotated subject-specific template to the entire time series. However, as the placenta is a thin, elongated, and highly non-rigid organ subject to large deformations and obfuscated edges, existing work cannot accurately segment the placental shape, especially near boundaries. In this work, we propose a machine learning segmentation framework for placental BOLD MRI and apply it to segmenting each volume in a time series. We use a placental-boundary weighted loss formulation and perform a comprehensive evaluation across several popular segmentation objectives. Our model is trained and tested on a cohort of 91 subjects containing healthy fetuses, fetuses with fetal growth restriction, and mothers with high BMI. Biomedically, our model performs reliably in segmenting volumes in both normoxic and hyperoxic points in the BOLD time series. We further find that boundary-weighting increases placental segmentation performance by 8.3% and 6.0% Dice coefficient for the cross-entropy and signed distance transform objectives, respectively.

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在 BOLD 胎儿 MRI 时间序列中对胎盘进行形状感知分割
母体高氧时的血氧水平依赖性(BOLD)磁共振成像时间序列可评估胎盘氧合和功能。要精确测量胎盘的 BOLD 变化,需要对胎盘进行精确的时间分割,并且会受到胎儿和母体运动、宫缩和高氧引起的强度变化的影响。目前的 BOLD 胎盘分割方法是将人工标注的特定受试者模板扭曲为整个时间序列。然而,由于胎盘是一个薄、细长、高度非刚性的器官,会产生较大的变形和模糊的边缘,现有的工作无法准确分割胎盘的形状,尤其是在边界附近。在这项工作中,我们为胎盘 BOLD MRI 提出了一个机器学习分割框架,并将其应用于分割时间序列中的每个容积。我们使用了胎盘边界加权损失公式,并对几种常用的分割目标进行了综合评估。我们的模型在包含健康胎儿、胎儿生长受限和高体重指数母亲在内的 91 名受试者中进行了训练和测试。从生物医学角度来看,我们的模型在分割 BOLD 时间序列中常氧点和高氧点的体积方面表现可靠。我们进一步发现,边界加权可使交叉熵目标和符号距离变换目标的胎盘分割性能分别提高 8.3% 和 6.0% Dice 系数。
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Leveraging SO(3)-steerable convolutions for pose-robust semantic segmentation in 3D medical data. Shape-aware Segmentation of the Placenta in BOLD Fetal MRI Time Series. Multi-task learning for joint weakly-supervised segmentation and aortic arch anomaly classification in fetal cardiac MRI Towards Early Prediction of Human iPSC Reprogramming Success Morphologically-Aware Consensus Computation via Heuristics-based IterATive Optimization (MACCHIatO)
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