The analysis of the psoas muscle in morphological and functional imaging has proved to be an accurate approach to assess sarcopenia, i.e. a systemic loss of skeletal muscle mass and function that may be correlated to multifactorial etiological aspects. The inclusion of sarcopenia assessment into a radiological workflow would need the implementation of computational pipelines for image processing that guarantee segmentation reliability and a significant degree of automation. The present study utilizes three-dimensional numerical schemes for psoas segmentation in low-dose X-ray computed tomography images. Specifically, here we focused on the level set methodology and compared the performances of two standard approaches, a classical evolution model and a three-dimension geodesic model, with the performances of an original first-order modification of this latter one. The results of this analysis show that these gradient-based schemes guarantee reliability with respect to manual segmentation and that the first-order scheme requires a computational burden that is significantly smaller than the one needed by the second-order approach.

Paolucci, G., Cama, I., Campi, C., Piana, M. (2024). Three-dimensional numerical schemes for the segmentation of the psoas muscle in X-ray computed tomography images. BMC MEDICAL IMAGING, 24(1), 1-14 [10.1186/s12880-024-01423-0].

Three-dimensional numerical schemes for the segmentation of the psoas muscle in X-ray computed tomography images

Paolucci, Giulio;
2024

Abstract

The analysis of the psoas muscle in morphological and functional imaging has proved to be an accurate approach to assess sarcopenia, i.e. a systemic loss of skeletal muscle mass and function that may be correlated to multifactorial etiological aspects. The inclusion of sarcopenia assessment into a radiological workflow would need the implementation of computational pipelines for image processing that guarantee segmentation reliability and a significant degree of automation. The present study utilizes three-dimensional numerical schemes for psoas segmentation in low-dose X-ray computed tomography images. Specifically, here we focused on the level set methodology and compared the performances of two standard approaches, a classical evolution model and a three-dimension geodesic model, with the performances of an original first-order modification of this latter one. The results of this analysis show that these gradient-based schemes guarantee reliability with respect to manual segmentation and that the first-order scheme requires a computational burden that is significantly smaller than the one needed by the second-order approach.
2024
Paolucci, G., Cama, I., Campi, C., Piana, M. (2024). Three-dimensional numerical schemes for the segmentation of the psoas muscle in X-ray computed tomography images. BMC MEDICAL IMAGING, 24(1), 1-14 [10.1186/s12880-024-01423-0].
Paolucci, Giulio; Cama, Isabella; Campi, Cristina; Piana, Michele
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1026108
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