Machine Learning-Assisted Classification of Hip Conditions in Pediatric Cerebral Palsy Patients Using Migration Percentage Measurements

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2025Author
Birsel, Sema ErtanDemirci, Ekrem
Şeker, Ali
Ayanoğlu, Kadriye Yasemin Usta
Öncü, Emir
Çiftçi, Fatih
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BİRSEL, Sema Ertan, Ekrem DEMİRCİ, Ali ŞEKER, Kadriye Yasemin Usta AYANOĞLU, Emir ÖNCÜ & Fatih ÇİFTÇİ. "Machine Learning-Assisted Classification of Hip Conditions in Pediatric Cerebral Palsy Patients Using Migration Percentage Measurements". Bone Reports, 25 (2025): 1-10.Abstract
Hip displacement is a significant concern in children with cerebral palsy (CP), necessitating accurate and timely
assessment to prevent long-term complications. This study developed a support vector machine (SVM) model to
classify hip conditions using migration percentage (MP) measurements obtained from 176 hips across 88 anteroposterior
pelvic radiographs. MP values were categorized into three groups: normal (MP ≤ 30 %), risky (30 %
< MP ≤ 60 %), and dislocated (MP > 60 %). The SVM model was evaluated using stratified k-fold crossvalidation,
with accuracy, precision, recall, and F1-scores as key metrics. Its classifications were compared to
manual evaluations performed by an orthopedic resident and a pediatric orthopedic surgeon. The model achieved
an overall accuracy of 92.898 %, surpassing the consistency and reliability of manual assessments,
particularly in identifying dislocated hips. Statistical analysis showed no significant differences between the
model's MP measurements and those of the clinicians, validating its effectiveness. This study highlights the
potential of SVM models to enhance diagnostic accuracy, reduce variability in evaluations, and support clinical
decision-making. Future research should expand the dataset and incorporate advanced machine learning models
to further improve diagnostic precision.


















