Automated craniofacial biometry with 3D T2w fetal MRI.

PLOS digital health Pub Date : 2024-12-30 eCollection Date: 2024-12-01 DOI:10.1371/journal.pdig.0000663
Jacqueline Matthew, Alena Uus, Alexia Egloff Collado, Aysha Luis, Sophie Arulkumaran, Abi Fukami-Gartner, Vanessa Kyriakopoulou, Daniel Cromb, Robert Wright, Kathleen Colford, Maria Deprez, Jana Hutter, Jonathan O'Muircheartaigh, Christina Malamateniou, Reza Razavi, Lisa Story, Joseph V Hajnal, Mary A Rutherford
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Abstract

Objectives: Evaluating craniofacial phenotype-genotype correlations prenatally is increasingly important; however, it is subjective and challenging with 3D ultrasound. We developed an automated label propagation pipeline using 3D motion- corrected, slice-to-volume reconstructed (SVR) fetal MRI for craniofacial measurements.

Methods: A literature review and expert consensus identified 31 craniofacial biometrics for fetal MRI. An MRI atlas with defined anatomical landmarks served as a template for subject registration, auto-labelling, and biometric calculation. We assessed 108 healthy controls and 24 fetuses with Down syndrome (T21) in the third trimester (29-36 weeks gestational age, GA) to identify meaningful biometrics in T21. Reliability and reproducibility were evaluated in 10 random datasets by four observers.

Results: Automated labels were produced for all 132 subjects with a 0.3% placement error rate. Seven measurements, including anterior base of skull length and maxillary length, showed significant differences with large effect sizes between T21 and control groups (ANOVA, p<0.001). Manual measurements took 25-35 minutes per case, while automated extraction took approximately 5 minutes. Bland-Altman plots showed agreement within manual observer ranges except for mandibular width, which had higher variability. Extended GA growth charts (19-39 weeks), based on 280 control fetuses, were produced for future research.

Conclusion: This is the first automated atlas-based protocol using 3D SVR MRI for fetal craniofacial biometrics, accurately revealing morphological craniofacial differences in a T21 cohort. Future work should focus on improving measurement reliability, larger clinical cohorts, and technical advancements, to enhance prenatal care and phenotypic characterisation.

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自动颅面生物测量与3D T2w胎儿MRI。
目的:产前评估颅面表型与基因型的相关性越来越重要;然而,它是主观的和具有挑战性的3D超声。我们开发了一种自动标签传播管道,使用3D运动校正,切片-体积重建(SVR)胎儿MRI进行颅面测量。方法:通过文献回顾和专家共识,确定31个颅面生物特征用于胎儿MRI。具有明确解剖标志的MRI图谱作为受试者注册、自动标记和生物识别计算的模板。我们评估了108名健康对照和24名妊娠晚期(29-36周胎龄,GA)的唐氏综合征胎儿(T21),以确定T21中有意义的生物特征。由4名观察员在10个随机数据集中评估可靠性和可重复性。结果:所有132名受试者均生成了自动标签,放置错误率为0.3%。包括前颅底长度和上颌长度在内的7项测量结果显示,T21组与对照组之间存在显著差异,且具有较大的效应量(ANOVA, p)。结论:这是首个使用3D SVR MRI进行胎儿颅面生物识别的基于自动图谱的方案,准确地揭示了T21队列中颅面形态差异。未来的工作应侧重于提高测量的可靠性,更大的临床队列和技术进步,以加强产前护理和表型特征。
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