Abstract

Osteoporosis is a common health problem that affects one-third of women over the age of 50 and it may not be detected until bone fractures occur. Osteoporosis is low bone mass and microarchitectural deterioration of bone tissue, which affects bone fragility and raises fracture risks. Early mandible bone osteoporosis detection could help reduce the risk of jaw fracture and dental implant failure. To solve this problem, a diagnostic algorithm for automatic detection of osteoporosis in Cone-Beam Computed Tomography (CBCT) images is presented and 120 mandible CBCT images of 50-85 year-old women have been utilized. These images are classified into two classes: normal and osteoporotic. Their classification is based on the T-score which derives from the Dual-Energy X-ray Absorptiometry (DEXA). The proposed algorithm consists of image processing, feature extraction, and Artificial Neural Network (ANN) classification. Images are segmented and edges are detected. Then, texture features are extracted from the segmented regions. Finally, a feed-forward back-propagation ANN classifier is employed. Seven parameters were involved in the experiment data preparation as input: coarseness, contrast, direction, number of edges, length of edges, mean length of edges, and the number of edge pixels. The results demonstrate the effectiveness of the proposed method. With the help of the proposed method, dentists will be able to predict osteoporosis accurately and efficiently without the need for further examination since CBCT has been widely accepted in dentistry and the dentist is the most common health care professional that elderly visit regularly.

Highlights

  • Osteoporosis is the decreased bone mass and microarchitectural deterioration of the bone scaffold, leading to bone fragility and enhanced susceptibility to fractures [1, 2].The golden standard measurement of Bone Mass Density (BMD), or aspects related to bone structure is Dual-Energy X-ray Absorptiometry (DEXA) [3]

  • As ConeBeam Computed Tomography (CBCT) images are inevitably used by dentists to evaluate the bone adequacy for dental implants, the proposed algorithm is designed to utilize the mandible trabecular bone properties found in these images for the early detection of osteoporosis

  • The performance of the suggested feed forward Back Propagation ANN (BPANN) classifier was measured by precision, recall, and accuracy which were 0.96, 1, and 97.917%, respectively

Read more

Summary

Introduction

Osteoporosis is the decreased bone mass and microarchitectural deterioration of the bone scaffold, leading to bone fragility and enhanced susceptibility to fractures [1, 2]. The golden standard measurement of Bone Mass Density (BMD), or aspects related to bone structure is DEXA [3]. Early detection is important as patients with osteoporosis may suffer from high risk of jaw fracture. ConeBeam Computed Tomography (CBCT) has been widely accepted in dentistry since its introduction in 1998 [4]. Current CBCT devices do not produce grey-scale values not a calibrated Housefield Unit (HU) values. The values differ for different devices as well as on the object placement in the imaged Field of View (FOV) [5]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call