Abstract

PurposeThe psoas major muscle (PMM) volume serves as an opportunistic imaging marker in cross-sectional imaging datasets for various clinical applications. Since manual segmentation is time consuming, two different automated segmentation methods, a generative adversarial network architecture (GAN) and a multi-atlas segmentation (MAS), as well as a combined approach of both, were investigated in terms of accuracy of automated volumetrics in given CT datasets.Materials and methodsThe bilateral PMM was manually segmented by a radiologist in 34 abdominal CT scans, resulting in 68 single 3D muscle segmentations as training data. Three different methods were tested for their ability to generate automated image segmentations: a GAN- and MAS-based approach and a combined approach of both methods (COM). Bilateral PMM volume (PMMV) was calculated in cm3 by each algorithm for every CT. Results were compared to the corresponding ground truth using the Dice similarity coefficient (DSC), Spearman’s correlation coefficient and Wilcoxon signed-rank test.ResultsMean PMMV was 239 ± 7.0 cm3 and 308 ± 9.6 cm3, 306 ± 9.5 cm3 and 243 ± 7.3 cm3 for the CNN, MAS and COM, respectively. Compared to the ground truth the CNN and MAS overestimated the PMMV significantly (+ 28.9% and + 28.0%, p < 0.001), while results of the COM were quite accurate (+ 0.7%, p = 0.33). Spearman’s correlation coefficients were 0.38, 0.62 and 0.73, and the DSCs were 0.75 [95%CI: 0.56–0.88], 0.73 [95%CI: 0.54–0.85] and 0.82 [95%CI: 0.65–0.90] for the CNN, MAS and COM, respectively.ConclusionThe combined approach was able to efficiently exploit the advantages of both methods (GAN and MAS), resulting in a significantly higher accuracy in PMMV predictions compared to the isolated implementations of both methods. Even with the relatively small set of training data, the segmentation accuracy of this hybrid approach was relatively close to that of the radiologist.

Highlights

  • Felix Duong and Michael Gadermayr these authors have contributed to the manuscript.Radiological examinations are performed for specific clinical purposes; especially cross-sectional imaging depicts a variety of body regions, that are not of primary diagnostic interest

  • The volume of the major psoas muscle (PMM) has been identified to reflect the overall body muscle mass to a certain degree and is fully recognizable on abdominal CT scans [2, 3]; it is an ideal muscle for three-dimensional segmentations. This becomes of interest in the assessment of sarcopenia, the age-related, progressive and generalized reduction of skeletal muscle mass, which is International Journal of Computer Assisted Radiology and Surgery a condition that has been linked as a major risk factor for morbidity or mortality in multiple clinical conditions and complex surgical procedures [4,5,6,7,8]

  • Mean PMM volume (PMMV) over all patients was 239 ± 70 cm3 based on the radiologist’s segmentation, 308 ± 96 cm3 for the generative adversarial network architecture (GAN) (+ 28.9%, p < 0.001), 306 ± 95 cm3 for the multi-atlas segmentation (MAS) (+ 28.0% p < 0.001) and 243 ± 73 cm3 for the combined approach of both methods (COM) (+ 0.7%, p 0.33)

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Summary

Introduction

Felix Duong and Michael Gadermayr these authors have contributed to the manuscript.Radiological examinations are performed for specific clinical purposes; especially cross-sectional imaging depicts a variety of body regions, that are not of primary diagnostic interest. The volume of the major psoas muscle (PMM) has been identified to reflect the overall body muscle mass to a certain degree and is fully recognizable on abdominal CT scans [2, 3]; it is an ideal muscle for three-dimensional segmentations This becomes of interest in the assessment of sarcopenia, the age-related, progressive and generalized reduction of skeletal muscle mass, which is International Journal of Computer Assisted Radiology and Surgery a condition that has been linked as a major risk factor for morbidity or mortality in multiple clinical conditions and complex surgical procedures [4,5,6,7,8]. In cases of high interpatient variability, this technique often leads to inaccurate segmentation of small details [10]

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