Novel magnetic resonance technique for characterizing mesoscale structure of trabecular bone.
Chantal NguyenKimberly J SchlesingerTimothy W JamesKristin M JamesRobert L SahKoichi MasudaJean M CarlsonPublished in: Royal Society open science (2018)
Osteoporosis, characterized by increased fracture risk and bone fragility, impacts millions of adults worldwide, but effective, non-invasive and easily accessible diagnostic tests of the disease remain elusive. We present a magnetic resonance (MR) technique that overcomes the motion limitations of traditional MR imaging to acquire high-resolution frequency-domain data to characterize the texture of biological tissues. This technique does not involve obtaining full two-dimensional or three-dimensional images, but can probe scales down to the order of 40 μm and in particular uncover structural information in trabecular bone. Using micro-computed tomography data of vertebral trabecular bone, we computationally validate this MR technique by simulating MR measurements of a 'ratio metric' determined from a few k-space values corresponding to trabecular thickness and spacing. We train a support vector machine classifier on ratio metric values determined from healthy and simulated osteoporotic bone data, which we use to accurately classify osteoporotic bone.
Keyphrases
- bone mineral density
- postmenopausal women
- magnetic resonance
- body composition
- contrast enhanced
- computed tomography
- high resolution
- magnetic resonance imaging
- electronic health record
- bone loss
- healthcare
- big data
- gene expression
- optical coherence tomography
- soft tissue
- social media
- pet ct
- data analysis
- single molecule