TY - JOUR
T1 - An improved activation function for the recognition of knee osteoarthritis severity
AU - Chang, Shuaishuai
AU - Duan, Hongliang
AU - Wu, Qing E.
N1 - Publisher Copyright:
© 2026 Elsevier B.V.
PY - 2026/6
Y1 - 2026/6
N2 - Background: Existing knee osteoarthritis (KOA) severity classification methods typically rely on a combination of object detection algorithms and classification algorithms. However, this approach not only increases the computational burden and time costs but also reduces the efficiency of real-time diagnosis, which makes it difficult to meet the needs of practical applications. To address the performance limitations of KOA severity recognition models that operate without target detection algorithms, a deep transfer learning approach incorporating a novel activation function (AvRELU) was proposed. The goal was to improve classification performance, particularly for small sample datasets, while optimizing computational resources. Methods: A dataset consisting of 3300 digital X-ray images of KOA patients was utilized. During model training and evaluation, five-fold cross-validation was used to assess robustness, and the dataset was divided into training, validation, and testing sets through a stratified sampling method at an 8:1:1 ratio. A transfer learning approach utilizing a pretrained Inception-v3 backbone was proposed, where Bayesian optimization automated both the fine-tuning process and downstream classifier construction. To improve the model performance, the activation function AvRELU was introduced in the network layer of the downstream model. Moreover, Kendall's tau-b correlation analysis was employed to evaluate the statistical significance of differences in the predicted Kellgren–Lawrence grades among the different methods. Results: Using five-fold cross-validation, the proposed method achieved an average test set performance of 95% accuracy, 95% F1-score, and 93% kappa. These results demonstrated the superior performance of the method in KOA severity recognition. Conclusions: The method proposed here not only significantly improves model performance on small-sample datasets but also maintains the model's lightweight and low-resource characteristics. Moreover, it achieves better performance in KOA severity recognition than most existing methods.
AB - Background: Existing knee osteoarthritis (KOA) severity classification methods typically rely on a combination of object detection algorithms and classification algorithms. However, this approach not only increases the computational burden and time costs but also reduces the efficiency of real-time diagnosis, which makes it difficult to meet the needs of practical applications. To address the performance limitations of KOA severity recognition models that operate without target detection algorithms, a deep transfer learning approach incorporating a novel activation function (AvRELU) was proposed. The goal was to improve classification performance, particularly for small sample datasets, while optimizing computational resources. Methods: A dataset consisting of 3300 digital X-ray images of KOA patients was utilized. During model training and evaluation, five-fold cross-validation was used to assess robustness, and the dataset was divided into training, validation, and testing sets through a stratified sampling method at an 8:1:1 ratio. A transfer learning approach utilizing a pretrained Inception-v3 backbone was proposed, where Bayesian optimization automated both the fine-tuning process and downstream classifier construction. To improve the model performance, the activation function AvRELU was introduced in the network layer of the downstream model. Moreover, Kendall's tau-b correlation analysis was employed to evaluate the statistical significance of differences in the predicted Kellgren–Lawrence grades among the different methods. Results: Using five-fold cross-validation, the proposed method achieved an average test set performance of 95% accuracy, 95% F1-score, and 93% kappa. These results demonstrated the superior performance of the method in KOA severity recognition. Conclusions: The method proposed here not only significantly improves model performance on small-sample datasets but also maintains the model's lightweight and low-resource characteristics. Moreover, it achieves better performance in KOA severity recognition than most existing methods.
KW - Activation function
KW - Bayesian optimization
KW - Knee osteoarthritis
KW - Small datasets
KW - Transfer learning
UR - https://www.scopus.com/pages/publications/105029434022
U2 - 10.1016/j.knee.2026.104361
DO - 10.1016/j.knee.2026.104361
M3 - Article
C2 - 41653813
AN - SCOPUS:105029434022
SN - 0968-0160
VL - 60
JO - Knee
JF - Knee
M1 - 104361
ER -