Abstract
Recent technical improvements have made it possible to determine trabecular bone structure parameters of the spine using clinical multi-detector computed tomography (MDCT). Therefore, the purpose of this study was to analyze trabecular bone structure parameters obtained from clinical MDCT in relation to high resolution peripheral quantitative computed tomography (HR-pQCT) as a standard of reference and to investigate whether clinical MDCT can predict vertebral bone strength. Fourteen functional spinal segment units between T7 and L3 were harvested from 14 formalin-fixed human cadavers (11 women and 3 men; age 84 ± 10 years). All functional spinal segment units were examined using HR-pQCT (isotropic voxel size of 41 μm3) and a clinical whole-body MDCT (interpolated voxel size of 146 × 146 × 300 μm3). Trabecular bone structure analyses (histomorphometric and texture measures) were performed in the HR-pQCT as well as MDCT images. Vertebral failure load (FL) of the functional spinal segment units was determined in an uniaxial biomechanical test. The HR-pQCT and MDCT derived trabecular bone structure parameters showed correlations ranging from r = 0.60 to r = 0.90 (p < 0.05). Correlations between trabecular bone structure parameters and FL amounted up to r = 0.86 (p < 0.05) using the HR-pQCT images, and up to r = 0.79 (p < 0.05) using the MDCT images. Correlation coefficients of FL versus trabecular bone structure parameters obtained with HR-pQCT and MDCT were not significantly different (p > 0.05). In this cadaver model, the spatial resolution of clinically available whole-body MDCT scanners was suitable for trabecular bone structure analysis of the spine and to predict vertebral bone strength.
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Introduction
Osteoporosis is defined as a skeletal disorder characterized by compromised bone strength predisposing an individual to an increased risk of fracture [1]. Due to the aging population, osteoporosis is classified as a public health problem [2, 3]. Osteoporotic fractures are associated with a high morbidity and mortality, and generate immense financial cost [4–7]. Therefore, different methods have been established to identify patients at high risk of osteoporotic fractures and to initiate appropriate therapy before osteoporosis associated fractures occur. Imaging based methods include dual-energy X-ray absorptiometry (DXA) and quantitative computed tomography (QCT) of the spine and hip measuring bone mineral density (BMD) [8, 9]. The World Health Organisation (WHO) definition of osteoporosis is based on the DXA derived T score [10]. However, T scores and BMD values of patients with and without osteoporotic fractures overlap [11, 12]. Therefore, the Fracture Risk Assessment Tool (FRAX) has been introduced, which uses easily obtainable clinical risk factors to estimate 10-year fracture probability in order to provide a clinical guidance for treatment decisions [13, 14]. Furthermore, advanced imaging techniques have been developed focusing on the assessment of bone quality, which is in addition to BMD an important parameter for predicting bone strength [15–17]. Bone quality can be partly assessed by analyzing the trabecular bone architecture. It was reported previously that trabecular bone structure parameters could add significant information beyond BMD for predicting bone strength and evaluating therapy response in osteoporosis [18–24]. Since high resolution image acquisition is required for trabecular bone structure analysis, assessment of the trabecular bone architecture at the spine was limited in the past due to the spatial resolution of clinically available whole body multi-detector computed tomography (MDCT) scanners. However, the spine is one of the most important osteoporotic fracture sites. Therefore, trabecular bone structure analysis at the spine may be beneficial for fracture risk prediction and therapy monitoring.
Recent technical improvements have made it possible to determine trabecular bone structure parameters of the spine using clinical MDCT. Issever et al. [25] reported high correlations between micro-computed tomography (μCT) and MDCT derived trabecular bone structure parameters at the lumbar spine ex vivo. While this study did not perform a biomechanical testing, Bauer et al. [26] demonstrated that μCT and MDCT derived trabecular bone structure parameters of bone probes harvested from the thoracic spine showed similar correlations with biomechanically determined bone strength. However, it remains to be investigated whether these findings are valid for whole vertebra and functional spinal segment units.
Therefore, the purpose of this study was to analyze trabecular bone structure parameters obtained from clinical MDCT in relation to HR-pQCT (high resolution peripheral quantitative computed tomography) as a standard of reference in functional spinal segment units and to investigate whether clinical MDCT can predict vertebral bone strength.
Materials and methods
Specimens
Our study was designed to biomechanically test functional spinal segment units with intact ligaments, intervertebral discs, and posterior elements. Therefore, 14 spinal 3-segment units between T7 and L3 were harvested from 14 formalin-fixed human cadavers (11 women and 3 men; mean age ± SD of 84 ± 10 years). The spinal 3-segment units consisted of one T7–T9 unit, one T8–T10 unit, four T9–T11 units, two T10–T12 units, three T11–L1 units, one T12–L2 unit, and two L1–L3 units. The donors had dedicated their body for educational and research purposes to the local Institute of Anatomy prior to death, in compliance with local institutional and legislative requirements. The study protocol was reviewed and approved by the local Institutional Review Boards. Donors with a history of pathological bone changes other than osteoporosis (i.e., bone metastases, hematological, or metabolic bone disorders) were excluded at the outset. Surrounding muscle and fat tissue was completely removed from the spinal 3-segment units. Then half of the upper and lower vertebra of the spinal 3-segment units was removed with a band saw to create functional spinal segment units with intact ligaments, intervertebral discs, and posterior elements. In case of thoracic segment units, the costovertebral joints were kept intact by dissecting the costae distally of the costovertebral joints. A representative X-ray image of a functional spinal segment unit is shown in Fig. 1. For the purpose of conservation, all functional spinal segment units were stored in formalin solution during the study and degassed at least 24 h before imaging to prevent air artifacts. The functional spinal segment units were sealed in vacuum plastic bags during imaging.
Imaging
The MDCT images of the functional spinal segment units were acquired by using a whole-body 256-row CT scanner (iCT, Philips Medical Care, Best, The Netherlands). Scan parameters were a tube voltage of 120 kVp, a tube load of 585 mAs, an image matrix of 1024 × 1024 pixels, and a field of view of 150 mm. Transverse sections were reconstructed with a high-resolution bone kernel (YE). The interpolated voxel size was of 146 × 146 × 300 μm3, while the real spatial resolution, as determined at ρ50 of the modulation-transfer-function, was 250 × 250 × 600 μm3. A dedicated calibration phantom (Mindways Osteoporosis Phantom, San Francisco, CA, USA) was placed in the scanner mat beneath the functional spinal segment units.
The HR-pQCT scans of the functional spinal segment units were performed with a XtremeCT system (SCANCO Medical AG, Brüttisellen, Switzerland). A standard protocol with a tube voltage of 60 kVp and a tube load of 180 μmAs was used and transverse sections with an isotropic voxel size of 41 μm3 were reconstructed. The intensity values of HR-pQCT images were calibrated with a reference phantom to derive calcium hydroxyapatite values in (mg/cm3).
Corresponding MDCT and HR-pQCT images of a representative functional spinal segment unit are shown in Fig. 2.
Image analysis
All acquired images were transferred to a remote LINUX workstation. An in-house developed algorithm based on IDL (Interactive Data Language, Research Systems, Bolder, CO, USA) was used for image analysis. The MDCT and HR-pQCT images of each functional spinal segment unit were opened in separate image panels at the same time. The operator identified visually the slice of the middle vertebra equidistant to its endplates in the MDCT and HR-pQCT images. Subsequently, the 20 and 150 most central slices of the middle vertebra were selected in the MDCT and HR-pQCT images, respectively. Twenty oval regions of interest (ROIs) were manually placed at once in the ventral half of the middle vertebra of the functional spinal segment unit in the selected slices of the MDCT images by using a batch process. The placement of the ROIs was similarly performed in the selected 150 slices of the HR-pQCT images. The operator matched the position of ROIs in MDCT and HR-pQCT images visually in the simultaneously opened image panels. Dependent on the vertebral level of the functional spinal segment units, the size of oval ROI was adjusted accordingly with a length varying between 24 and 35 mm and a width varying between 15 and 26 mm. The length and width of the oval ROIs were identical in corresponding MDCT and HR-pQCT images of each functional spinal segment. Standard QCT-derived BMD measurements are usually performed in a 8–10 mm slice in L1–L3 covering the central third of the vertebral height [8]. Since the functional spinal segment units were in the majority harvested from the thoracic spine, we decided to reduce the height of the ROIs to about 6 mm (i.e., 20 and 150 slices of the MDCT and HR-pQCT images, respectively) to account for smaller heights of the thoracic vertebrae. In addition, ROIs were drawn in two phases of the Mindways calibration phantom in the MDCT images (Fig. 3).
Binarization of the MDCT and HR-pQCT images was required to compute morphometric parameters of the trabecular bone structure. For this purpose, we applied an optimized global threshold to all images. To determine this threshold, we evaluated the MDCT and HR-pQCT images of five randomly selected functional spinal segment units visually. The best threshold was found to be 200 mg/cm3 calcium hydroxyapatite similar to previous studies [18, 19, 26]. By using this threshold, functional spinal segment units with dense trabecular bone structure did not only consist of “bone” voxels and osteoporotic functional spinal segment units still showed trabecular structure and not only “marrow” voxels. After binarization, four morphometric parameters were calculated in the ROIs in analogy to standard histomorphometry using the mean intercept length method [27]: bone volume divided by total volume (BV/TV), trabecular number [TbN (mm−1)], trabecular separation [TbSp (mm)], and trabecular thickness [TbTh (mm)].
In addition, fractal dimension (FD) as texture measurement of the trabecular bone structure was determined in the MDCT and HR-pQCT images using a box counting algorithm as previously described [28, 29].
Lastly, mean BMD of each ROI was calculated in the MDCT images by converting the pixel attenuations in (HU; Hounsfield Units) into BMD values in (mg/cm3) by using the Mindways calibration phantom as outlined previously [30].
All steps of the image analysis were performed by one operator.
Biomechanical testing
The half-dissected upper and lower vertebrae of the functional spinal segment units were embedded in resin (Rencast Isocyanat and Polyol, Huntsman Group, Bad Säckingen, Germany) up to 2 mm above, respectively, below their vertebral endplates. The fixation was performed with parallel alignment of the upper and lower endplate of middle vertebra with the outer surface of the resin chock to guarantee strict axial loading conditions of the middle vertebra during the uniaxial biomechanical test. After embedding, the functional spinal segment units were fixed in a mechanical testing system (Wolpert Werkstoffprüfmaschinen AG, Schaffhausen, Switzerland). Similar to previous studies [31, 32], ten pre-conditioning cycles with uniaxial tension–compression up to a load between 10 and 400 N with a rate of 5 mm/min was applied. Then a monotonic, uniaxial compression was performed at the same rate. The load–displacement curve was recorded and vertebral failure load (FL) was defined as the first peak of the load–displacement curve with a subsequent drop of >10 % as outlined previously [33].
Statistical analysis
The statistical analyses were performed with SPSS (SPSS, Chicago, IL, USA). All tests were done using a two-sided 0.05 level of significance.
Mean and SD of all parameters were calculated for all functional spinal segment units. The Kolmogorov–Smirnov test showed for all parameters no significant difference from a normal distribution (p > 0.05). Therefore, differences between MDCT and HR-pQCT derived trabecular bone structure parameters were assessed with paired t tests. Correlations between two parameters were evaluated with the Pearson product-moment correlation coefficient (r). Significant differences between correlation coefficients were assessed using the Fisher Z transformation. Furthermore, correlations between MDCT as well as HR-pQCT derived parameters versus FL were adjusted for BMD using partial correlation analysis.
Reproducibility
Five functional spinal segment units were randomly selected to assess the reproducibility error of BMD and trabecular bone structure parameters. The ROIs were placed three times by one operator in the MDCT and HR-pQCT images. Corresponding BMD as well as trabecular bone structure parameters were calculated each time in the MDCT and HR-pQCT images, respectively. Reproducibility errors were computed as the root mean square error coefficient of variation according to Gluer et al. [34] and amounted to 1.2 % for BMD, 1.9 and 2.4 % for MDCT and HR-pQCT derived BV/TV, 1.2 and 1.0 % for MDCT and HR-pQCT derived TbN, 0.9 and 1.1 % for MDCT and HR-pQCT derived TbSp, 2.0 and 2.5 % for MDCT and HR-pQCT derived TbTh, and 0.5 and 0.4 % for MDCT and HR-pQCT derived FD, respectively.
Results
Mean ± SD of FL and BMD of all functional spinal segment units amounted to 3243 ± 1071 N and 57.4 ± 20.4 mg/cm3, respectively. Corresponding values of MDCT as well as HR-pQCT derived trabecular bone structure parameters of all functional spinal segment units are listed in Table 1. The BV/TV, TbSp, and TbTh were significantly greater, while TbN was significantly lower in the MDCT images compared to the corresponding HR-pQCT images (p < 0.001; Table 1). Values of FD derived from MDCT and HR-pQCT were not significantly different (p = 0.703; Table 1). Except for TbTh, MDCT and HR-pQCT derived trabecular bone structure parameters showed significant correlations with Pearson product-moment correlation coefficients ranging from r = 0.60 to r = 0.90 (Table 2).
Correlations of the trabecular bone structure parameters with FL amounted up to r = 0.86 (p < 0.05) using the HR-pQCT images, and up to r = 0.79 (p < 0.05) using the MDCT images (Table 2). The greatest correlations were observed for MDCT derived BV/TV and HR-pQCT derived TbN, while neither MDCT nor HR-pQCT derived TbTh showed significant correlations with FL (p > 0.05; Table 2). Correlation coefficients of FL versus trabecular bone structure parameters obtained with HR-pQCT and MDCT were not significantly different as assessed by the Fisher Z transformation (p > 0.05).
The BMD significantly correlated with FL (r = 0.75; p = 0.008). The correlation coefficients of FL versus the best trabecular bone structure parameters derived from both, HR-pQCT and MDCT, were not significantly different from the correlation coefficient of FL versus BMD (p > 0.05). The HR-pQCT as well as MDCT derived trabecular bone structure parameters showed high correlations with BMD (up to r = 0.82; p < 0.001 and up to r = 0.92; p < 0.001, respectively).
Correlations between MDCT as well as HR-pQCT derived trabecular bone structure parameters versus FL adjusted for BMD are displayed in Table 2. After adjustment for BMD, only HR-pQCT derived TbN and TbTh showed statistically significant correlations with FL (r = 0.70; p = 0.025 and r = 0.66; p = 0.038, respectively).
Discussion
In this study, MDCT and HR-pQCT derived trabecular bone structure parameters assessed in functional spinal segment units showed high correlations despite the different spatial resolutions of the MDCT and HR-pQCT protocols. Furthermore, HR-pQCT as well as MDCT derived trabecular bone structure parameters adequately predicted biomechanically determined vertebral bone strength.
High-resolution trabecular bone imaging yields additional information beyond BMD to predict bone strength [15–17]. While HR-pQCT is limited to peripheral skeletal sites such as the distal radius and tibia in vivo, magnetic resonance imaging (MRI) showed promising results at the proximal femur [35, 36]. However, high-resolution trabecular bone imaging at the spine as a clinically important osteoporotic fracture site is limited to MDCT in vivo. Since trabeculae have a diameter between 50 and 200 μm, the spatial resolution of the whole-body MDCT scanners is critical for trabecular bone structure analysis. Due to recent technical developments, trabeculae can be depicted by clinically available MDCT systems. Results of previous studies underlined the importance to compute trabecular bone structure parameters and finite element models (FEM) at the spine for predicting vertebral fracture risk and monitoring therapy response [37–40].
However, little is known about the required spatial resolution for adequate trabecular bone structure analysis and corresponding prediction of vertebral bone strength using MDCT. Issever et al. [41] reported that 64- and 320-slice MDCT systems both performed equally well in depicting trabecular bone architecture at the distal radius. Furthermore, they observed high correlations between μCT and MDCT derived trabecular bone structure parameters at the lumbar spine ex vivo [25]. However, they compared the calculated trabecular bone structure parameters with μFEM-derived bone properties and did not perform a biomechanical testing.
Bauer et al. [26] demonstrated that μCT and MDCT derived trabecular bone structure parameters showed similar correlations with biomechanically determined bone strength. They investigated bone probes harvested from the thoracic spine, but not whole vertebrae or functional spinal segment units, which is a limitation of their study. In our study, we harvested functional spinal segment units to design an experimental setup simulating the biomechanical in vivo conditions of the spine as close as possible.
The absolute values of the MDCT and HR-pQCT derived histomorphometric parameters were significantly different. Thus, the absolute values are affected by the different spatial resolution of MDCT and HR-pQCT. In contrast to the histomorphometric parameters, the values of FD as assessed by MDCT and HR-pQCT were not statistically significantly different. Due to its calculation using a box counting algorithm, FD seems to be more robust with respect to spatial resolution than standard histomorphometry. The MDCT derived trabecular bone structure parameters correlated well with HR-pQCT derived parameters, BMD, and biomechanically determined FL. The sole exception was ThTh; not only MDCT but also HR-pQCT derived TbTh showed no significant correlation with FL. The TbTh was apparently less suitable for predicting bone strength in our sample size consisting of 14 functional spinal segment units. However, TbTh showed promising results in previous studies at the spine, hip, and distal radius [18, 20, 25]. Furthermore, HR-pQCT derived TbTh correlated well with FL after adjusting for BMD (r = 0.66; p = 0.038). Thus, out of all histomorphometric parameters, TbTh may be most affected by BMD as well as by the spatial resolution, since the correlation of MDCT and HR-pQCT derived TbTh was also not statistically significant.
It is important to note that only HR-pQCT derived TbN and TbTh showed statistically significant correlations with FL after adjustment for BMD (r = 0.70; p = 0.025 and r = 0.66; p = 0.038, respectively). These findings underline the considerable contribution of BMD to bone strength. In this study population, HR-pQCT derived trabecular bone structure analysis predicted independent of BMD vertebral bone strength, in contrast to MDCT derived trabecular bone structure parameters. Nevertheless, our findings suggest that the spatial resolution of clinically available whole-body MDCT scanners is suitable for trabecular bone structure analysis of the spine and to predict vertebral bone strength. However, the prediction of bone strength by MDCT derived trabecular bone structure parameters was dependent on BMD as assessed by the partial correlation analysis adjusting for BMD.
The comparison of MDCT derived trabecular bone structure parameters and those obtained with HR-pQCT or μCT as standard of reference has always take into account potential error sources introduced by image analysis steps. Most critical is the optimization process of the applied global threshold for the binarization of the images. Issever et al. [25] assessed trabecular bone structure parameters in the spine using clinical MDCT and compared them with those obtained by μCT. They used a common adaptive iterative method on a specific specimen-based histogram analysis to determine the threshold for the binarization of the μCT images. Six different global thresholds were applied on the MDCT images. They identified the optimal MDCT threshold by correlating μCT and MDCT derived trabecular bone structure parameters. The MDCT threshold that yielded the highest correlation coefficients of μCT and MDCT derived trabecular bone structure parameters was finally considered as optimal threshold. We used a different approach in this study. Although the spatial resolution was different for MDCT and HR-pQCT, we selected the same optimized threshold for both imaging modalities. Thus, our threshold was not based on a statistical analysis, but on the visual image impression resulting from the applied threshold. This may be advantageous, since our approach was not result-driven with respect to achieve best possible correlation coefficients, but visually evaluated the effect of the applied threshold on the images. Furthermore, the absolute values of our HR-pQCT derived trabecular bone structure parameters were similar to those reported by Issever et al. [25] and Bauer et al. [26], who derived these parameters by using μCT imaging in comparable study populations. This indicates that our selected optimized global threshold for both, MDCT and HR-pQCT, can be considered as well chosen.
We only assessed trabecular bone structure parameters in this study. However, it is well known that the cortical compartment contributes substantially to the mechanical properties of the bone [42]. Cortical bone structure parameters such as endplate thickness were good predictors of vertebral strength [43]. Measurements of cortical thickness or surface area can be obtained at the spine in vivo by using MDCT [8, 17]. However, advanced cortical bone structure parameters including cortical porosity as assessed at the distal radius and tibia in vivo by using HR-pQCT are technically not feasible at the spine by using MDCT due to the limited spatial resolution [36].
Our MDCT protocol has to be optimized for in vivo application. Graeff et al. [39] performed high-resolution MDCT imaging of T12 or L1 to monitor teriparatide associated changes in vertebral bone structure. They used a tube voltage of 120 kV and a tube load of 360 mAs. The estimated dose equivalent amounted to 3 mSv. If we optimize our protocol for in vivo application, it would be probably close to that reported by Graeff et al. This dose equivalent may be regarded as a dose in the upper range of medically indicated radiation exposure. Therefore, trabecular bone structure analysis using high-resolution MDCT cannot be applied for osteoporosis diagnostics and therapy monitoring in clinical routine at the moment. Only patients with borderline pathological BMD values or subjects included in specific drug trials may benefit from the assessment of trabecular bone structure at the spine using MDCT. Consequently, radiation dose reduction by newly developed CT reconstruction algorithms, e.g., iterative reconstruction, are needed in the future [44]. Furthermore, technical developments may improve the achievable spatial resolution. Flat-panel CT devices have been developed recently and offer higher spatial resolutions than MDCT of up to 150 μm isotropic due to the high number of pixels [45].
Our study had some limitations. Firstly, MDCT scanning was not performed with a torso phantom to simulate a soft tissue environment as outlined previously for MDCT scans at the proximal femur [46]. Soft tissue scatter may compromise the image quality. This may impact the ability to extrapolate our results to a clinical in vivo setting and remains to be investigated in future studies. Secondly, the functional spinal segment units were harvested from formalin-fixed cadavers, which may have affected the biomechanical properties, and the HR-pQCT as well as MDCT measurements. However, a previous study reported that dual energy DXA derived BMD measurements were not significantly affected by fixation [47]. Thirdly, FD was the only advanced trabecular bone structure parameter computed in this study in addition to standard histomorphometric parameters. However, the focus of this study was on the experimental setup using functional spinal segment units and not on the calculation of various trabecular bone structure parameters. Lastly, important risk factors as enquired in the FRAX were not considered in this in vitro study, but are important to determine the fracture risk in vivo [13].
In conclusion, the spatial resolution of clinically available whole-body MDCT scanners was suitable for trabecular bone structure analysis of the spine and to predict vertebral bone strength in this cadaver study. Simulations with torso phantoms and radiation dose reduction by newly developed CT reconstruction algorithms, e.g., iterative reconstruction, are needed in the future to reliably assess trabecular bone structure parameters at the spine in vivo by using clinical MDCT.
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Acknowledgments
This work was supported by Grants of the Deutsche Forschungsgemeinschaft (DFG BA 4085/1-2).
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Baum, T., Gräbeldinger, M., Räth, C. et al. Trabecular bone structure analysis of the spine using clinical MDCT: can it predict vertebral bone strength?. J Bone Miner Metab 32, 56–64 (2014). https://doi.org/10.1007/s00774-013-0465-6
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DOI: https://doi.org/10.1007/s00774-013-0465-6