David Bourhis1,2, Laura Wagner3, Julien Rioult3, Philippe Robin3,4, Romain Le Pennec3,4, Cécile Tromeur4,5, Pierre Yves Salaün3,4, Pierre Yves Le Roux3,4. 1. Service de Médecine Nucléaire, Centre Hospitalier Régional Universitaire de Brest, Brest, France. david.bourhis@chu-brest.fr. 2. EA3878 GETBO, Université de Bretagne Occidentale, Brest, France. david.bourhis@chu-brest.fr. 3. Service de Médecine Nucléaire, Centre Hospitalier Régional Universitaire de Brest, Brest, France. 4. EA3878 GETBO, Université de Bretagne Occidentale, Brest, France. 5. Service de Pneumologie, Centre Hospitalier Régional Universitaire de Brest, Brest, France.
Abstract
BACKGROUND: In patients with pulmonary embolism (PE), there is a growing interest in quantifying the pulmonary vascular obtruction index (PVOI), which may be an independent risk factor for PE recurrence. Perfusion SPECT/CT is a very attractive tool to provide an accurate quantification of the PVOI. However, there is currently no reliable method to automatically delineate and quantify it. The aim of this phantom study was to assess and compare 3 segmentation methods for PVOI quantification with perfusion SPECT/CT imaging. METHODS: Three hundred ninety-six SPECT/CT scans, with various PE scenarios (n = 44), anterior to posterior perfusion gradients (n = 3), and lung volumes (n = 3) were simulated using Simind software. Three segmentation methods were assesssed: (1) using an intensity threshold expressed as a percentage of the maximal voxel value (MaxTh), (2) using a Z-score threshold (ZTh) after building a Z-score parametric lung map, and (3) using a relative difference threshold (RelDiffTh) after building a relative difference parametric map. Ninety randomly selected simulations were used to define the optimal threshold, and 306 simulations were used for the complete analysis. Spacial correlation between PE volumes from the phantom data and the delineated PE volumes was assessed by computing DICEPE indices. Bland-Altman statistics were used to calculate agreement for PVOI between the phantom data and the segmentation methods. RESULTS: Mean DICEPE index was higher with the RelDiffTh method (0.85 ± 0.08), as compared with the MaxTh method (0.78 ± 0.16) and the ZTh method (0.67 ± 0.15). Using the RelDiffTh method, mean DICEPE index remained high (> 0.81) regardless of the perfusion gradient and the lung volumes. Using the RelDiffTh method, mean relative difference in PVOI was - 12%, and the limits of agreement were - 40% to 16%. Values were 3% (- 75% to 81%) for MaxTh method and 0% (- 120% to 120%) for ZTh method. Graphycal analysis of the Bland-Altman graph for the RelDiffTh method showed very close estimation of the PVOI for small and medium PE, and a trend toward an underestimation of large PE. CONCLUSION: In this phantom study, a delineation method based on a relative difference parametric map provided a good estimation of the PVOI, regardless of the extent of PE, the intensity of the anterior to posterior gradient, and the whole lung volumes.
BACKGROUND: In patients with pulmonary embolism (PE), there is a growing interest in quantifying the pulmonary vascular obtruction index (PVOI), which may be an independent risk factor for PE recurrence. Perfusion SPECT/CT is a very attractive tool to provide an accurate quantification of the PVOI. However, there is currently no reliable method to automatically delineate and quantify it. The aim of this phantom study was to assess and compare 3 segmentation methods for PVOI quantification with perfusion SPECT/CT imaging. METHODS: Three hundred ninety-six SPECT/CT scans, with various PE scenarios (n = 44), anterior to posterior perfusion gradients (n = 3), and lung volumes (n = 3) were simulated using Simind software. Three segmentation methods were assesssed: (1) using an intensity threshold expressed as a percentage of the maximal voxel value (MaxTh), (2) using a Z-score threshold (ZTh) after building a Z-score parametric lung map, and (3) using a relative difference threshold (RelDiffTh) after building a relative difference parametric map. Ninety randomly selected simulations were used to define the optimal threshold, and 306 simulations were used for the complete analysis. Spacial correlation between PE volumes from the phantom data and the delineated PE volumes was assessed by computing DICEPE indices. Bland-Altman statistics were used to calculate agreement for PVOI between the phantom data and the segmentation methods. RESULTS: Mean DICEPE index was higher with the RelDiffTh method (0.85 ± 0.08), as compared with the MaxTh method (0.78 ± 0.16) and the ZTh method (0.67 ± 0.15). Using the RelDiffTh method, mean DICEPE index remained high (> 0.81) regardless of the perfusion gradient and the lung volumes. Using the RelDiffTh method, mean relative difference in PVOI was - 12%, and the limits of agreement were - 40% to 16%. Values were 3% (- 75% to 81%) for MaxTh method and 0% (- 120% to 120%) for ZTh method. Graphycal analysis of the Bland-Altman graph for the RelDiffTh method showed very close estimation of the PVOI for small and medium PE, and a trend toward an underestimation of large PE. CONCLUSION: In this phantom study, a delineation method based on a relative difference parametric map provided a good estimation of the PVOI, regardless of the extent of PE, the intensity of the anterior to posterior gradient, and the whole lung volumes.
Authors: Pierre-Yves Salaun; Francis Couturaud; Alexandra Le Duc-Pennec; Karine Lacut; Pierre-Yves Le Roux; Philippe Guillo; Pierre-Yves Pennec; Jean-Christophe Cornily; Christophe Leroyer; Grégoire Le Gal Journal: Chest Date: 2010-08-19 Impact factor: 9.410
Authors: P S Wells; J S Ginsberg; D R Anderson; C Kearon; M Gent; A G Turpie; J Bormanis; J Weitz; M Chamberlain; D Bowie; D Barnes; J Hirsh Journal: Ann Intern Med Date: 1998-12-15 Impact factor: 25.391
Authors: Pierre-Yves Le Roux; Matthieu Pelletier-Galarneau; Romain De Laroche; Michael S Hofman; Lionel S Zuckier; Paul Roach; Jean-Philippe Vuillez; Rodney J Hicks; Grégoire Le Gal; Pierre-Yves Salaun Journal: J Nucl Med Date: 2015-07-01 Impact factor: 10.057
Authors: David R Anderson; Susan R Kahn; Marc A Rodger; Michael J Kovacs; Tim Morris; Andrew Hirsch; Eddy Lang; Ian Stiell; George Kovacs; Jon Dreyer; Carol Dennie; Yannick Cartier; David Barnes; Erica Burton; Susan Pleasance; Chris Skedgel; Keith O'Rouke; Philip S Wells Journal: JAMA Date: 2007-12-19 Impact factor: 56.272