Multifractal-based lacunarity analysis of trabecular bone in radiography

Comput Biol Med. 2020 Jan:116:103559. doi: 10.1016/j.compbiomed.2019.103559. Epub 2019 Nov 20.

Abstract

This study presents textural characterization techniques for effective osteoporosis diagnosis using bone radiograph images. The automatic classification of osteoporosis and healthy (control) cases using bone radiograph images in this work presents a major challenge as the images show no visual differences for both cases. The proposed work utilizes multifractals to characterize the trabecular bone texture in the radiographs. Initially, Holder exponents are computed, then Hausdorff dimensions are determined, which quantify the global regularity of the pixels. Finally, lacunarity is computed from the Hausdorff dimensions. Performance metrics show that estimating lacunarity from the Hausdorff dimensions, rather than the input image, directly helps in achieving better textural characterization of bone radiographs, leading to better performance in osteoporosis classification. The proposed lacunarity-based trabecular bone textural characterization method is compared with other multifractal-based methods for trabecular bone textural characterization, such as box-counting and regularization dimensions. The proposed method is also evaluated with the textural characterization of a bone radiograph challenge dataset to demonstrate its effectiveness compared to the other methods used in the challenge.

Keywords: Hausdorff dimension; Holder exponent; Lacunarity; Multifractal; Osteoporosis; Textural characterization.

MeSH terms

  • Bone Density
  • Cancellous Bone* / diagnostic imaging
  • Fractals
  • Humans
  • Osteoporosis* / diagnostic imaging
  • Radiography