Objective: ascending aortic aneurysm growth prediction is still challenging in clinics. In this study, we evaluate and compare the ability of local and global shape features to predict the ascending aortic aneurysm growth.Material and methods: 70 patients with aneurysm, for which two 3D acquisitions were available, are included. Following segmentation, three local shape features are computed: (1) the ratio between maximum diameter and length of the ascending aorta centerline, (2) the ratio between the length of external and internal lines on the ascending aorta and (3) the tortuosity of the ascending tract. By exploiting longitudinal data, the aneurysm growth rate is derived. Using radial basis function mesh morphing, iso-topological surface meshes are created. Statistical shape analysis is performed through unsupervised principal component analysis (PCA) and supervised partial least squares (PLS). Two types of global shape features are identified: three PCA-derived and three PLS-based shape modes. Three regression models are set for growth prediction: two based on gaussian support vector machine using local and PCA-derived global shape features; the third is a PLS linear regression model based on the related global shape features. The prediction results are assessed and the aortic shapes most prone to growth are identified.Results: the prediction root mean square error from leave-one-out cross-validation is: 0.112 mm/month, 0.083 mm/month and 0.066 mm/month for local, PCA-based and PLS-derived shape features, respectively. Aneurysms close to the root with a large initial diameter report faster growth.Conclusion: global shape features might provide an important contribution for predicting the aneurysm growth.

Geronzi, L., Martinez, A., Rochette, M., Yan, K., Bel-Brunon, A., Haigron, P., et al. (2023). Computer-aided shape features extraction and regression models for predicting the ascending aortic aneurysm growth rate. COMPUTERS IN BIOLOGY AND MEDICINE, 162 [10.1016/j.compbiomed.2023.107052].

Computer-aided shape features extraction and regression models for predicting the ascending aortic aneurysm growth rate

Geronzi L.;Valentini P. P.;Biancolini M. E.
2023-01-01

Abstract

Objective: ascending aortic aneurysm growth prediction is still challenging in clinics. In this study, we evaluate and compare the ability of local and global shape features to predict the ascending aortic aneurysm growth.Material and methods: 70 patients with aneurysm, for which two 3D acquisitions were available, are included. Following segmentation, three local shape features are computed: (1) the ratio between maximum diameter and length of the ascending aorta centerline, (2) the ratio between the length of external and internal lines on the ascending aorta and (3) the tortuosity of the ascending tract. By exploiting longitudinal data, the aneurysm growth rate is derived. Using radial basis function mesh morphing, iso-topological surface meshes are created. Statistical shape analysis is performed through unsupervised principal component analysis (PCA) and supervised partial least squares (PLS). Two types of global shape features are identified: three PCA-derived and three PLS-based shape modes. Three regression models are set for growth prediction: two based on gaussian support vector machine using local and PCA-derived global shape features; the third is a PLS linear regression model based on the related global shape features. The prediction results are assessed and the aortic shapes most prone to growth are identified.Results: the prediction root mean square error from leave-one-out cross-validation is: 0.112 mm/month, 0.083 mm/month and 0.066 mm/month for local, PCA-based and PLS-derived shape features, respectively. Aneurysms close to the root with a large initial diameter report faster growth.Conclusion: global shape features might provide an important contribution for predicting the aneurysm growth.
2023
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-IND/14
English
Ascending aortic aneurysm
Growth prediction
Regression
Shape features
Geronzi, L., Martinez, A., Rochette, M., Yan, K., Bel-Brunon, A., Haigron, P., et al. (2023). Computer-aided shape features extraction and regression models for predicting the ascending aortic aneurysm growth rate. COMPUTERS IN BIOLOGY AND MEDICINE, 162 [10.1016/j.compbiomed.2023.107052].
Geronzi, L; Martinez, A; Rochette, M; Yan, K; Bel-Brunon, A; Haigron, P; Escrig, P; Tomasi, J; Daniel, M; Lalande, A; Lin, S; Marin-Castrillon, Dm; Bouchot, O; Porterie, J; Valentini, Pp; Biancolini, Me
Articolo su rivista
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/341707
Citazioni
  • ???jsp.display-item.citation.pmc??? 1
  • Scopus 2
  • ???jsp.display-item.citation.isi??? 2
social impact