Opportunistic osteoporosis screening in multi-detector CT images via local classification of textures

Osteoporos Int. 2019 Jun;30(6):1275-1285. doi: 10.1007/s00198-019-04910-1. Epub 2019 Mar 4.

Abstract

Our study proposed an automatic pipeline for opportunistic osteoporosis screening using 3D texture features and regional vBMD using multi-detector CT images. A combination of different local and global texture features outperformed the global vBMD and showed high discriminative power to identify patients with vertebral fractures.

Introduction: Many patients at risk for osteoporosis undergo computed tomography (CT) scans, usable for opportunistic (non-dedicated) screening. We compared the performance of global volumetric bone mineral density (vBMD) with a random forest classifier based on regional vBMD and 3D texture features to separate patients with and without osteoporotic fractures.

Methods: In total, 154 patients (mean age 64 ± 8.5, male; n = 103) were included in this retrospective single-center analysis, who underwent contrast-enhanced CT for other reasons than osteoporosis screening. Patients were dichotomized regarding prevalent vertebral osteoporotic fractures (noFX, n = 101; FX, n = 53). Vertebral bodies were automatically segmented, and trabecular vBMD was calculated with a dedicated phantom. For 3D texture analysis, we extracted gray-level co-occurrence matrix Haralick features (HAR), histogram of gradients (HoG), local binary patterns (LBP), and wavelets (WL). Fractured vertebrae were excluded for texture-feature and vBMD data extraction. The performance to identify patients with prevalent osteoporotic vertebral fractures was evaluated in a fourfold cross-validation.

Results: The random forest classifier showed a high discriminatory power (AUC = 0.88). Parameters of all vertebral levels significantly contributed to this classification. Importantly, the AUC of the proposed algorithm was significantly higher than that of volumetric global BMD alone (AUC = 0.64).

Conclusion: The presented classifier combining 3D texture features and regional vBMD including the complete thoracolumbar spine showed high discriminatory power to identify patients with vertebral fractures and had a better diagnostic performance than vBMD alone.

Keywords: BMD; Machine learning; Opportunistic screening; Osteoporosis; Quantitative computed tomography; Random forest model; Texture analysis; Vertebral fractures.

MeSH terms

  • Aged
  • Algorithms
  • Bone Density / physiology
  • Feasibility Studies
  • Female
  • Humans
  • Imaging, Three-Dimensional / methods
  • Incidental Findings
  • Male
  • Mass Screening / methods
  • Middle Aged
  • Osteoporosis / diagnostic imaging*
  • Osteoporosis / physiopathology
  • Osteoporotic Fractures / diagnostic imaging*
  • Osteoporotic Fractures / physiopathology
  • Radiographic Image Interpretation, Computer-Assisted / methods
  • Retrospective Studies
  • Spinal Fractures / diagnostic imaging*
  • Spinal Fractures / physiopathology
  • Tomography, X-Ray Computed / methods