Abstract

This study proposed a fully-automated method for the segmentation of the femur and femoral neck in volumetric computed tomography (CT) images for the evaluation of osteoporotic fractures with severe abnormalities. We evaluated the proposed method on pelvis CT image of 30 patients for both the left and right sides. The proposed framework consists of three components: (1) localization of the acetabulum from the femoral head by tracing the intensity and adjacent neighbors of bone pixels, (2) segmentation and enhancement of the femur from its surrounding tissue using multi-level thresholding with filtering techniques, and (3) extraction of femoral neck contours using a directed Hough transform with oriented contour-filling techniques. The quality of the proposed femur segmentation performance was compared with the segmentation results using an edge-based active contour model (ACM), active shape model (ASM) and ground truth including average precision, recall, false-positive rate (FPR), false-negative rate (FNR), and the Dice similarity coefficient (DSC). The proposed method showed error of less than 1% for femur segmentation. A highly satisfactory similarity agreement was achieved between automated and manual methods, with a DSC greater than 94.8-exceeding those of semi-automated segmentations of the femur. Quantitative and qualitative experimental results indicated that the proposed fully-automated approach was capable of accurately segmenting the femur and femoral neck, which suggests the possibility of reducing insignificant contours of bone structures for further assessment of risk for osteoporotic fractures.

Highlights

  • Osteoporosis is characterized by deterioration of bone tissue and associated with an increased risk of morbidity and mortality [1]

  • We proposed a fully-automated framework for the segmentation of the acetabulum, femur, and femoral neck on both the left and right sides of a hip joint computed tomography (CT) with severe abnormalities using region-precise intensity

  • The differences between proposed method and manual detection were evaluated in terms of Dice similarity coefficient (DSC), which is defined as DSC = 2(S ∩ G) (S + G), where S is the segmented femur by automatic method and G is the manually-detected femoral region

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Summary

Introduction

Osteoporosis is characterized by deterioration of bone tissue and associated with an increased risk of morbidity and mortality [1]. Hip fractures have the most serious issues, needed hospitalization and major surgery. Analysis of osteoporosis is important to prevent osteoporotic fracture. Bone mineral density (BMD) assessment via dual-energy x-ray absorptiometry is a commonly available tool to measure the bone strength. Intracapsular fractures of the femoral neck significantly affect both the cortical and trabecular bone [2].

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