Automated Craniofacial Biometry with 3D T2w Fetal MRI

Author:

Matthew JacquelineORCID,Uus Alena,Collado Alexia Egloff,Luis Aysha,Arulkumaran Sophie,Fukami-Gartner Abi,Kyriakopoulou Vanessa,Cromb Daniel,Wright Robert,Colford Kathleen,Deprez Maria,Hutter Jana,O’Muircheartaigh Jonathan,Malamateniou Christina,Razavi Reza,Story Lisa,Hajnal Jo,Rutherford Mary A.

Abstract

ABSTRACTObjectivesEvaluating craniofacial phenotype-genotype correlations prenatally is increasingly important; however, it is subjective and challenging with 3D ultrasound. We developed an automated landmark propagation pipeline using 3D motion-corrected, slice-to-volume reconstructed (SVR) fetal MRI for craniofacial measurements.MethodsA 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.ResultsAutomated labels were produced for all 132 subjects with a 0.03% 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.ConclusionThis 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.

Publisher

Cold Spring Harbor Laboratory

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