TY - JOUR
T1 - Machine learning applications for predicting fracture of the adjacent vertebra after vertebroplasty
AU - Hasanpour, Maede
AU - Einafshar, Mohammadjavad (Matin)
AU - Haghpanahi, Mohammad
AU - Massaad, Elie
AU - Kiapour, Ali
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/1
Y1 - 2025/1
N2 - Background: Vertebroplasty, a minimally invasive procedure for treating vertebral compression fractures, has shown promising clinical outcomes due to its straightforward surgical technique, low complication rate, and rapid pain relief. However, a significant concern is the 25 % rate of subsequent vertebral fractures following treatment, with 50–67 % of these occurring in adjacent vertebrae that were previously augmented. Purpose: To develop predictive models for fractures in vertebrae adjacent to those treated with vertebroplasty using machine learning techniques and a classification method based on pre-determined risk factors. Methods: A retrospective study has been conducted to discover potential factors that could influence the effectiveness of vertebroplasty. Models were developed using data from 84 patients with osteoporotic vertebral compression fractures (OVCF) who underwent vertebroplasty. K-nearest neighbors (KNN), decision tree (DT), support vector machine (SVM), and logistic regression (LR) algorithms were used to predict fractures at the adjacent level of the augmented vertebra after vertebroplasty. The accuracies of the models were also reported. Results: The DT and LR models achieved an accuracy of 0.94, while KNN and SVM models had an accuracy of 0.88. The DT identified bone mineral density (BMD), cement volume, and cement stiffness as key predictive factors. In contrast, the LR determined BMD, cement volume, and cement location to be the most essential features. Furthermore, the DT and LR models demonstrated the highest macro-average and weighted average metrics, calculated as 0.92 and 0.95, respectively. Conclusion: The high accuracies achieved by the machine learning models confirm their effectiveness in predicting subsequent adjacent vertebral fractures (SAVF) following vertebroplasty. Utilizing these predictive models in clinical practice may enable the successful identification of patients at high risk for SAVF, potentially contributing to preventing these complications through personalized treatment planning and follow-up care.
AB - Background: Vertebroplasty, a minimally invasive procedure for treating vertebral compression fractures, has shown promising clinical outcomes due to its straightforward surgical technique, low complication rate, and rapid pain relief. However, a significant concern is the 25 % rate of subsequent vertebral fractures following treatment, with 50–67 % of these occurring in adjacent vertebrae that were previously augmented. Purpose: To develop predictive models for fractures in vertebrae adjacent to those treated with vertebroplasty using machine learning techniques and a classification method based on pre-determined risk factors. Methods: A retrospective study has been conducted to discover potential factors that could influence the effectiveness of vertebroplasty. Models were developed using data from 84 patients with osteoporotic vertebral compression fractures (OVCF) who underwent vertebroplasty. K-nearest neighbors (KNN), decision tree (DT), support vector machine (SVM), and logistic regression (LR) algorithms were used to predict fractures at the adjacent level of the augmented vertebra after vertebroplasty. The accuracies of the models were also reported. Results: The DT and LR models achieved an accuracy of 0.94, while KNN and SVM models had an accuracy of 0.88. The DT identified bone mineral density (BMD), cement volume, and cement stiffness as key predictive factors. In contrast, the LR determined BMD, cement volume, and cement location to be the most essential features. Furthermore, the DT and LR models demonstrated the highest macro-average and weighted average metrics, calculated as 0.92 and 0.95, respectively. Conclusion: The high accuracies achieved by the machine learning models confirm their effectiveness in predicting subsequent adjacent vertebral fractures (SAVF) following vertebroplasty. Utilizing these predictive models in clinical practice may enable the successful identification of patients at high risk for SAVF, potentially contributing to preventing these complications through personalized treatment planning and follow-up care.
KW - Adjacent Vertebra fracture
KW - Classification method
KW - Compression fracture
KW - Machine learning
KW - Vertebroplasty
UR - http://www.scopus.com/inward/record.url?scp=85217220925&partnerID=8YFLogxK
U2 - 10.1016/j.ibmed.2025.100205
DO - 10.1016/j.ibmed.2025.100205
M3 - Journal article
AN - SCOPUS:85217220925
SN - 2666-5212
VL - 11
JO - Intelligence-Based Medicine
JF - Intelligence-Based Medicine
M1 - 100205
ER -