arXiv Open Access 2024

Predictive Model Development to Identify Failed Healing in Patients after Non-Union Fracture Surgery

Cedric Donié Marie K. Reumann Tony Hartung Benedikt J. Braun Tina Histing +2 lainnya
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Abstrak

Bone non-union is among the most severe complications associated with trauma surgery, occurring in 10-30% of cases after long bone fractures. Treating non-unions requires a high level of surgical expertise and often involves multiple revision surgeries, sometimes even leading to amputation. Thus, more accurate prognosis is crucial for patient well-being. Recent advances in machine learning (ML) hold promise for developing models to predict non-union healing, even when working with smaller datasets, a commonly encountered challenge in clinical domains. To demonstrate the effectiveness of ML in identifying candidates at risk of failed non-union healing, we applied three ML models (logistic regression, support vector machine, and XGBoost) to the clinical dataset TRUFFLE, which includes 797 patients with long bone non-union. The models provided prediction results with 70% sensitivity, and the specificities of 66% (XGBoost), 49% (support vector machine), and 43% (logistic regression). These findings offer valuable clinical insights because they enable early identification of patients at risk of failed non-union healing after the initial surgical revision treatment protocol.

Topik & Kata Kunci

Penulis (7)

C

Cedric Donié

M

Marie K. Reumann

T

Tony Hartung

B

Benedikt J. Braun

T

Tina Histing

S

Satoshi Endo

S

Sandra Hirche

Format Sitasi

Donié, C., Reumann, M.K., Hartung, T., Braun, B.J., Histing, T., Endo, S. et al. (2024). Predictive Model Development to Identify Failed Healing in Patients after Non-Union Fracture Surgery. https://arxiv.org/abs/2404.11760

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Tahun Terbit
2024
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en
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arXiv
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Open Access ✓