Elsevier

Clinical Nutrition

Volume 40, Issue 8, August 2021, Pages 5038-5046
Clinical Nutrition

Original article
Deep neural network for automatic volumetric segmentation of whole-body CT images for body composition assessment

https://doi.org/10.1016/j.clnu.2021.06.025Get rights and content
Under a Creative Commons license
open access

Summary

Background & aims

Body composition analysis on CT images is a valuable tool for sarcopenia assessment. We aimed to develop and validate a deep neural network applicable to whole-body CT images of PET-CT scan for the automatic volumetric segmentation of body composition.

Methods

For model development, one hundred whole-body or torso 18F-fluorodeoxyglucose PET–CT scans of 100 patients were retrospectively included. Two radiologists semi-automatically labeled the following seven body components in every CT image slice, providing a total of 46,967 image slices from the 100 scans for training the 3D U-Net (training, 39,268 slices; tuning, 3116 slices; internal validation, 4583 slices): skin, bone, muscle, abdominal visceral fat, subcutaneous fat, internal organs with vessels, and central nervous system. The segmentation accuracy was assessed using reference masks from three external datasets: two Korean centers (4668 and 4796 image slices from 20 CT scans, each) and a French public dataset (3763 image slices from 24 CT scans). The 3D U-Net-driven values were clinically validated using bioelectrical impedance analysis (BIA) and by assessing the model's diagnostic performance for sarcopenia in a community-based elderly cohort (n = 522).

Results

The 3D U-Net achieved accurate body composition segmentation with an average dice similarity coefficient of 96.5%–98.9% for all masks and 92.3%–99.3% for muscle, abdominal visceral fat, and subcutaneous fat in the validation datasets. The 3D U-Net-derived torso volume of skeletal muscle and fat tissue and the average area of those tissues in the waist were correlated with BIA-derived appendicular lean mass (correlation coefficients: 0.71 and 0.72, each) and fat mass (correlation coefficients: 0.95 and 0.93, each). The 3D U-Net-derived average areas of skeletal muscle and fat tissue in the waist were independently associated with sarcopenia (P < .001, each) with adjustment for age and sex, providing an area under the curve of 0.858 (95% CI, 0.815 to 0.901).

Conclusions

This deep neural network model enabled the automatic volumetric segmentation of body composition on whole-body CT images, potentially expanding adjunctive sarcopenia assessment on PET-CT scan and volumetric assessment of metabolism in whole-body muscle and fat tissues.

Keywords

Sarcopenia
Computed tomography
Deep learning
Segmentation
Body composition

Abbreviations

BIA
bioelectrical impedance analysis
KURE
Korean Urban Rural Elderly
AVF
abdominal visceral fat
SF
subcutaneous fat
IO
internal organs and vessels
CNS
central nervous system
DSC
dice similarity coefficient
PPV
positive predictive value
BMI
body mass index
SMA
skeletal muscle area
BFA
body fat area
SMI
skeletal muscle index
BFI
body fat index
AUROC
area under the receiver operating characteristic curve

Cited by (0)

1

Y.S.L. and N.H. contributed equally to this work.