| Literature DB >> 32982989 |
Jiamin Zhou1, Pablo F Damasceno1,2,3, Ravi Chachad1, Justin R Cheung1, Alexander Ballatori4, Jeffrey C Lotz4, Ann A Lazar5,6, Thomas M Link1, Aaron J Fields4, Roland Krug1.
Abstract
Background: Bone marrow fat (BMF) fraction quantification in vertebral bodies is used as a novel imaging biomarker to assess and characterize chronic lower back pain. However, manual segmentation of vertebral bodies is time consuming and laborious. Purpose: (1) Develop a deep learning pipeline for segmentation of vertebral bodies using quantitative water-fat MRI. (2) Compare BMF measurements between manual and automatic segmentation methods to assess performance. Materials andEntities:
Keywords: biomarkers; bone marrow fat; deep learning; magnetic resonance imaging; segmentation; spine imaging
Mesh:
Year: 2020 PMID: 32982989 PMCID: PMC7492292 DOI: 10.3389/fendo.2020.00612
Source DB: PubMed Journal: Front Endocrinol (Lausanne) ISSN: 1664-2392 Impact factor: 6.055
Demographic characteristics of the dataset the deep learning model was trained on, and the two test sets used for evaluation.
| Age (years) | 47.9 ± 12.4 | 50.7 ± 9.7 | 46.4 ± 12.9 |
| Sex | |||
| Female | 16 (51.6) | 2 (18.2) | 12 (46.2) |
| Male | 15 (48.4) | 9 (81.8) | 14 (53.8) |
| Patient Status | |||
| Controls | 8 (25.8) | 1 (9.1) | 9 (34.6) |
| Cases | 23 (74.2) | 10 (90.9) | 17 (65.4) |
| Weight (kg) | 73.7 ± 15.8 | 87.4 ± 16.5 | 77.2 ± 16.8 |
| Height (cm) | 173.4 ± 8.5 | 177.0 ± 10.5 | 174 ± 11.7 |
| BMI (kg/m2) | 24.4 ± 4.4 | 28.0 ± 5.5 | 25.7 ± 5.1 |
| Clinical measures | |||
| ODI | 24.6 ± 19.7 | 32.7 ± 17.6 | 20.8 ± 19.0 |
| VAS | 4.9 ± 3.4 | 6.1 ± 2.3 | 4.2 ± 3.2 |
–Mean data are ± standard deviation; data in parentheses are percentages. Set 1 was the IDEAL image dataset used to train the U-Net. Set 2&3 consists of the 11 subjects in Set 2 and 15 additional subjects scanned after July 2017. BMI, body mass index; ODI, Oswestry Disability Index; VAS, Visual Analog Scale.
Figure 1Automatic vertebrae segmentation and fat quantification pipeline. (A) All IDEAL images (water, fat, fat fraction, and ) are fed into a U-Net (13) as multichannel inputs, resulting in the predicted segmentation map. Each ROI corresponding to lumbar vertebrae was analyzed on fat fraction maps to yield mean BMF values. (B) DICOM masks were made from the predicted segmentation map. ROIs were identified through the MaskToMir function in in-house software made in IDL (IDL, Research Systems, Broomfield, CO). These automatically identified ROIs were then overlaid on the fat fraction maps derived from the water-fat IDEAL image series. For each lumbar vertebral body ROI, the mean fat fraction value was obtained for each slice, and the final mean BMF was averaged over all slices with lumbar vertebral bodies present. The mean BMFs for each lumbar vertebral body as defined by the automatically segmented ROIs were compared with the manually segmented ROIs through Bland-Altman analysis.
Figure 2Description of datasets evaluated in this study. Both training sets consisted of the same 31 subjects. Set 1A was used to train the U-Net. Automatic segmentations from Set 1A were compared with manual segmentations done by Rater A and also used during the U-Net training process. The U-Net with finalized weights after training was then used to automatically segment images from the same image set 1 and compared with manual segmentations done by Rater B, denoted as Set 1B. Set 2A consisted of 11 subjects, with 7 slices each with identified vertebra from Rater A's manual segmentation, while Set 2B&3B consisted of 26 subjects, with 5 slices each with identified vertebra from Rater B's manual segmentation. Additional demographic information can be found in Table 1.
Metrics of agreement for manual and automatic segmentations in different datasets.
| DSC | 0.956 ± 0.076 | 0.886 ± 0.040 | 0.838 ± 0.198 | 0.849 ± 0.091 |
| IoU | 0.928 ± 0.105 | 0.798 ± 0.059 | 0.757 ± 0.216 | 0.747 ± 0.118 |
–Mean data are ± standard deviation. Datasets used are as described in .
Figure 3Bland-Altman plots of mean bone marrow fat fraction (BMF) percentages (%) as determined by manual segmentation compared to automatic segmentation for each lumbar vertebral body (L1-L5). The biases between BMFs collected by the automated (NN) and manual segmentations for both test sets were less than 10% of the mean value. (A) Comparison of mean BMF values for manual segmentations performed by annotator A and the predicted segmentation by the deep learning model on Set 2A (n = 53 vertebrae). The bias was +0.382% with limits of agreement of −1.850% and +2.614%. (B) Comparison of mean BMF values for manual segmentations performed by annotator B and the predicted segmentation by the deep learning model on Set 2B&3B (n = 124 vertebrae). The bias was−0.605% with limits of agreement of −3.275% and +2.065%.