A Novel QCT-Based Deep Transfer Learning Approach for Predicting Stiffness Tensor of Trabecular Bone Cubes - 28/03/24
Abstract |
Objectives |
This study was performed to prove the concept that transfer learning techniques, assisted with a generative model, could be used to alleviate the ‘big data’ requirement for training high-fidelity deep learning (DL) models in prediction of stiffness tensor of trabecular bone cubes.
Material and methods |
Transfer learning approaches of domain adaptation were used, in which a source domain included 1,641 digital trabecular bone cubes synthesized from a generative model, and a target domain included 868 real trabecular bone cubes from human cadaver femurs. Simulated quantitative computed tomography (QCT) images of both the synthesized and real bone cubes were used as input, whereas the stiffness tensor of these cubes determined using finite element simulations were used as output. Three transfer learning algorithms, including instance-based (TrAdaBoostR2 and WANN) and parameter-based (RNN) methods, were used. Two case studies, one with varying sizes of training dataset and the other with a gender-biased training dataset, were performed to evaluate these deep transfer learning models in comparison with a base deep learning (DL) model trained using the dataset from the target domain.
Results |
The results indicated that these deep transfer learning models were robust both to sample size and to the gender-biased training dataset, whereas the base DL model was very sensitive to such changes. Among the three transfer learning algorithms, the prediction accuracy of the RNN-based deep transfer learning model was the best (0.92-0.96%) and comparable to that of the base DL model trained using the dataset from the target domain.
Conclusion |
This study proved the proposed concept and confirmed that high fidelity QCT-based deep learning models could be obtained for prediction of stiffness tensor of trabecular bone cubes.
Le texte complet de cet article est disponible en PDF.Graphical abstract |
Highlights |
• | Deep transfer learning models for predicting stiffness tensor of trabecular bone. |
• | QCT images are used as the input for these transfer learning models. |
• | High fidelity models can be trained using transfer learning techniques. |
• | The transfer learning models are robust to samples size and gender-biases. |
• | Parameter-based algorithm (RNN) is better than instance-based methods. |
Keywords : Trabecular bone, Deep transfer learning, QCT image, Stiffness tensor, Synthesized digital bone samples, FEM
Plan
Vol 45 - N° 2
Article 100831- avril 2024 Retour au numéroBienvenue sur EM-consulte, la référence des professionnels de santé.
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