A combined Machine Learning and Finite Element Modelling tool for the surgical planning of craniosynostosis correction
Itxasne Ant\'unez S\'aenz, Ane Alberdi Aramendi, David Dunaway, Juling Ong, Lara Deli\`ege, Amparo S\'aenz, Anita Ahmadi Birjandi, Noor UI Owase Jeelani, Silvia Schievano, Alessandro Borghi

TL;DR
This paper presents a real-time, non-invasive predictive tool combining machine learning and finite element modeling to improve surgical planning for craniosynostosis correction, reducing reliance on CT scans and enhancing outcome predictability.
Contribution
The study introduces a novel ML-based surrogate model trained on synthetic skulls for real-time prediction of surgical outcomes in craniosynostosis, eliminating the need for CT imaging.
Findings
Support vector regressor achieved R2 of 0.95
Model's MSE and MAE below 0.13
Potential to optimize surgical parameters for better outcomes
Abstract
Craniosynostosis is a medical condition that affects the growth of babies' heads, caused by an early fusion of cranial sutures. In recent decades, surgical treatments for craniosynostosis have significantly improved, leading to reduced invasiveness, faster recovery, and less blood loss. At Great Ormond Street Hospital (GOSH), the main surgical treatment for patients diagnosed with sagittal craniosynostosis (SC) is spring assisted cranioplasty (SAC). This procedure involves a 15x15 mm2 osteotomy, where two springs are inserted to induce distraction. Despite the numerous advantages of this surgical technique for patients, the outcome remains unpredictable due to the lack of efficient preoperative planning tools. The surgeon's experience and the baby's age are currently relied upon to determine the osteotomy location and spring selection. Previous tools for predicting the surgical outcome…
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Taxonomy
TopicsCraniofacial Disorders and Treatments · Traumatic Brain Injury and Neurovascular Disturbances · Cleft Lip and Palate Research
MethodsMasked autoencoder
