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"Nonlinear" Keyword-tagged Publications:
| Title: | Leveraging deep learning for nonlinear shape representation in anatomically parameterized statistical shape models | ||||
| Authors: | Gheflati B, Mirzaei M, Rottoo S, Rivaz H | ||||
| Link: | https://pubmed.ncbi.nlm.nih.gov/39953355/ | ||||
| DOI: | 10.1007/s11548-025-03330-3 | ||||
| Publication: | International journal of computer assisted radiology and surgery | ||||
| Keywords: | Anatomically parameterized models; Deep learning; Femur structure analysis; Nonlinear shape representation; Statistical shape models; | ||||
| PMID: | 39953355 | Category: | Date Added: | 2025-02-15 | |
| Dept Affiliation: |
ENCS
1 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, Canada. b_ghefla@encs.concordia.ca. 2 Think Surgical Inc., Montreal, QC, Canada. 3 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, Canada. |
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Description: |
Purpose: Statistical shape models (SSMs) are widely used for morphological assessment of anatomical structures. However, a key limitation is the need for a clear relationship between the model's shape coefficients and clinically relevant anatomical parameters. To address this limitation, this paper proposes a novel deep learning-based anatomically parameterized SSM (DL-ANATSSM) by introducing a nonlinear relationship between anatomical parameters and bone shape information. Methods: Our approach utilizes a multilayer perceptron model trained on a synthetic femoral bone population to learn the nonlinear mapping between anatomical measurements and shape parameters. The trained model is then fine-tuned on a real bone dataset. We compare the performance of DL-ANATSSM with a linear ANATSSM generated using least-squares regression for baseline evaluation. Results: When applied to a previously unseen femoral bone dataset, DL-ANATSSM demonstrated superior performance in predicting 3D bone shape based on anatomical parameters compared to the linear baseline model. The impact of fine-tuning was also investigated, with results indicating improved model performance after this process. Conclusion: The proposed DL-ANATSSM is therefore a more precise and interpretable SSM, which is directly controlled by clinically relevant parameters. The proposed method holds promise for applications in both morphometry analysis and patient-specific 3D model generation without preoperative images. |



