Literature DB >> 32011542

Quantifying the Severity of Metopic Craniosynostosis: A Pilot Study Application of Machine Learning in Craniofacial Surgery.

Riddhish Bhalodia1, Lucas A Dvoracek2, Ali M Ayyash2, Ladislav Kavan1, Ross Whitaker1, Jesse A Goldstein2.   

Abstract

The standard for diagnosing metopic craniosynostosis (CS) utilizes computed tomography (CT) imaging and physical exam, but there is no standardized method for determining disease severity. Previous studies using interfrontal angles have evaluated differences in specific skull landmarks; however, these measurements are difficult to readily ascertain in clinical practice and fail to assess the complete skull contour. This pilot project employs machine learning algorithms to combine statistical shape information with expert ratings to generate a novel objective method of measuring the severity of metopic CS.Expert ratings of normal and metopic skull CT images were collected. Skull-shape analysis was conducted using ShapeWorks software. Machine-learning was used to combine the expert ratings with our shape analysis model to predict the severity of metopic CS using CT images. Our model was then compared to the gold standard using interfrontal angles.Seventeen metopic skull CT images of patients 5 to 15 months old were assigned a severity by 18 craniofacial surgeons, and 65 nonaffected controls were included with a 0 severity. Our model accurately correlated the level of skull deformity with severity (P < 0.10) and predicted the severity of metopic CS more often than models using interfrontal angles (χ = 5.46, P = 0.019).This is the first study that combines shape information with expert ratings to generate an objective measure of severity for metopic CS. This method may help clinicians easily quantify the severity and perform robust longitudinal assessments of the condition.

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Year:  2020        PMID: 32011542      PMCID: PMC7202995          DOI: 10.1097/SCS.0000000000006215

Source DB:  PubMed          Journal:  J Craniofac Surg        ISSN: 1049-2275            Impact factor:   1.172


  20 in total

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6.  The effectiveness of papilledema as an indicator of raised intracranial pressure in children with craniosynostosis.

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9.  New severity indices for quantifying single-suture metopic craniosynostosis.

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10.  Objective Assessment of the Interfrontal Angle for Severity Grading and Operative Decision-Making in Metopic Synostosis.

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  9 in total

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3.  "Validation of Artificial Intelligence Severity Assessment in Metopic Craniosynostosis".

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7.  Combining deep learning with 3D stereophotogrammetry for craniosynostosis diagnosis.

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Review 8.  Current and emerging artificial intelligence applications for pediatric musculoskeletal radiology.

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