Next Article in Journal
Effect of Mutated ids Overexpression on IDS Enzyme Activity and Developmental Phenotypes in Zebrafish Embryos: A Valuable Index for Assessing Critical Point-Mutations Associated with Mucopolysaccharidosis Type II Occurrence in Humans
Previous Article in Journal
Atherosclerosis Imaging with 18F-Sodium Fluoride PET
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Improved Diagnostic Accuracy of Bone Metastasis Detection by Water-HAP Associated to Non-Contrast CT

1
Department of Radiology, Yokohama City University Hospital, 3–9 Fukuura, Kanazawa-ward, Yokohama City 2360004, Japan
2
Department of Radiology, Odawara Municipal Hospital, 46 Kuno, Odawara City 2508558, Japan
3
Department of Radiology, Yokohama City University Medical Center, 4–57 Urafune, Minami-ward, Yokohama City 2320024, Japan
*
Author to whom correspondence should be addressed.
Diagnostics 2020, 10(10), 853; https://doi.org/10.3390/diagnostics10100853
Submission received: 29 August 2020 / Revised: 17 October 2020 / Accepted: 19 October 2020 / Published: 20 October 2020
(This article belongs to the Section Medical Imaging and Theranostics)

Abstract

:
We examined whether water-hydroxyapatite (HAP) images improve the diagnostic accuracy of bone metastasis compared with non-contrast CT alone. We retrospectively evaluated dual-energy computed tomography (DECT) images of 83 cancer patients (bone metastasis, 31; without bone metastasis, 52) from May 2018 to June 2019. Initially, two evaluators examined for bone metastasis on conventional CT images. In the second session, both CT and CT images plus water-HAP images on DECT. The confidence of bone metastasis was scored from 1 (benign) to 5 (malignant). The sensitivity, specificity, positive predictive values, and negative predictive values for both modalities were calculated based on true positive and negative findings. The intra-observer area under curve (AUC) for detecting bone metastasis was compared by receiver operating characteristic analysis. Kappa coefficient calculated the inter-observer agreement. In conventional CT images, sensitivity, specificity, positive predictive value, and negative predictive value of raters 1 and 2 for the identification of bone metastases were 0.742 and 0.710, 0.981 and 0.981, 0.958 and 0.957, and 0.864 and 0.850, respectively. In water-HAP, they were 1.00 and 1.00, 0.981 and 1.00, 0.969 and 1.00, and 1.00 and 1.00, respectively. In CT, AUCs were 0.861 and 0.845 in each observer. On water-HAP images, AUCs were 0.990 and 1.00. Kappa coefficient was 0.964 for CT and 0.976 for water-HAP images. The combination of CT and water-HAP images significantly increased diagnostic accuracy for detecting bone metastasis. Water-HAP images on DECT may enable accurate initial staging, reduced radiation exposure, and cost.

1. Introduction

Accurate cancer staging is essential for treatment planning and prognosis. The bone is among the most common sites of metastases, and the identification is clinically important. Bone metastases are classified into four types: sclerotic, osteolytic, mixed, and bone marrow metastases, which is the initial stage of bone metastasis [1,2,3]. Although computed tomography (CT) is generally used to screen for the metastases in the whole body, the detection is challenging because invisible bone metastases on CT images (mainly bone marrow metastases) account for approximately 30% of all bone metastases [3,4,5]. Bone scintigraphy is the current gold standard diagnostic method for carcinomas at a high risk of bone metastasis at the expense of cost and radiation exposure [6]. However, the specificity of the bone scintigraphy is low for the differentiation of benign and malignant uptake, and it is not performed for all cancer patients with a relatively lower risk for bone metastasis, leading to a delay in the detection of bone metastasis. Even in such patients, whole-body CT is usually performed for the evaluation of the metastatic lesions. Therefore, bone metastasis detection by CT may be desirable in clinical practice.
Water-Hydroxyapatite (HAP) images, which provide information on the water density in the bone, can be acquired by dual-energy (DE) CT using two types of X-rays with different tube voltages [7,8]. On the conventional CT, bone metastasis is often difficult to identify because the metastatic lesion is masked by the bone’s high density. In contrast, magnetic resonance imaging (MRI) is considered superior in detecting bone metastases [9] by the process of visualisation of “water molecules” of the metastasis. We hypothesised that water-HAP images can extract the water-rich component in the bone metastasis like MRI and help detect bone metastases with higher sensitivity. This study was performed to test the hypothesis that adding water-HAP images would improve the diagnostic accuracy for bone metastasis of non-contrast CT.

2. Materials and Methods

2.1. Patient Population

This single-centre, non-interventional, retrospective study was approved by the institutional review board (approval ID: 2020-5; 12 May 2020), and the study was performed as per the principles of the Declaration of Helsinki. Written informed consent was waived due to the retrospective nature of this study.
In this study, we reviewed 191 consecutive patients with prostate cancer alone, as they were followed for a long time with a clear clinical course in the hospital, who underwent non-contrast CT from May 2018 to April 2019. All recruited patients had non-contrast CT for cancer staging or restaging. Inclusion criteria were that DECT was performed, bone scintigraphy should be performed within one month before or after DECT, and the progress can be tracked by electronic medical records for at least 1 year. Exclusion criteria were those who have lost raw data of DECT for image reconstruction. Clinical information was obtained from electronic medical records regarding age, gender, pathological findings of primary cancer, clinical diagnosis, and CT and bone scintigraphy date. The final diagnosis of bone metastases was performed by the subsequent clinical course or positive results of radiological studies, i.e., follow-bone scintigraphy.

2.2. Data Acquisition

DECT images were collected by 256-row multidetector CT (Revolution CT, GE Healthcare, Waukesha, USA) with one X-ray tube and one detector with fast switching between two different tube voltages (80 kVp and 140 kVp) at 0.25 ms/view/rotation (fast kVp switching). No contrast agent was used in all cases. CT imaging conditions were as follows: scan type, helical and beam; rotation time, 0.5 s; configuration, 80 mm; helical pitch, 0.992:1; current, 200–485 mA; peak voltage, 80–140 kVp at first kVp switching; kernel, standard; total scan time, 3.0–4.0 s. The mean volume CT dose index (CTDI vol) was 12.4 ± 3.2 mGy/cm. The mean volume CT dose index (CTDI vol) and the mean dose-length product were 12.4 ± 3.2 mGy and 977.5 ± 274.6 mGy/cm, respectively. A standard DECT workstation (GSI Viewer, AW Server 2.02, GE Healthcare, Buc, FRANCE) was used to split the raw data into 80 kV; 140 kV projection data sets to obtain highly accurate projection data by correcting for water and iodine beam hardening artefacts. This correction made it possible to express the pixel values of water and iodine in terms of density values and to create images of various combinations of material densities based on the two material decomposition algorithms. In this study, the combination of water and hydroxyapatite was used to obtain images in which hydroxyapatite, a basic component of bone, was suppressed, and water concentration was enhanced.
Moreover, we used virtual monochromatic spectral (VMS) images of 70 keV as conventional CT because they are equivalent to the Hounsfield unit (HU) of conventional single energy CT [10].

2.3. Data Analysis

In image interpretation, the default window level settings for the conventional CT images were in the vertebral window (width, 2000 HU; level, 200 HU). The default window width and level settings of the water-HAP images displayed in colour were 300 mg/cm3 and 1020 mg/cm3. In the first session, two independent evaluators (radiologists with 6 and 9 years of experience) had a bone metastasis reliability score using the following five-point scale: 1—normal lesion, 2—potentially malignant lesion, 3—probably malignant lesion, 4—suspicious of malignant lesion, and 5—malignant lesion for any slice of a conventional CT image alone, which were selected by a radiologist (with 24 years of experience) 1 month before the first session (Table 1). In the second session, one month after the first session, two independent raters recorded reliability scores for a conventional CT image and the water-HAP image obtained from DECT in the same position as the previous one.

2.4. Statistical Analysis

Statistical analysis was performed using software (EZR version 1.40, Jichi Medical University Saitama Medical Center) [11]. The sensitivity, specificity, positive predictive values, and negative predictive values for conventional CT images and conventional CT images plus water-HAP images were calculated based on true positive and true negative findings, as described in the same anatomical region. True bone metastases were confirmed with non-contrast CT, bone scintigraphy, and cancer progression. All patients with a score of 2 or higher were considered to have bone metastases, because the highest sensitivity and specificity were achieved using a cut-off value of 2. A score of 1 was considered to have no bone metastases. The intra-observer area under the curve (AUC) for detecting bone metastasis was compared using the receiver operating characteristic analysis. Model performance was also assessed by calculating AUC, as well as improving the predictive accuracy by calculating the integrated discriminant improvement (IDI) and net reclassification improvement (NRI). A weighted Kappa coefficient was used to calculate the inter-observer agreement. p-Values <0.05 indicated statistical significance. Post-hoc power analysis was retrospectively performed using a free software (G* power version 3.1.9.5, Heinrich Heine University, Duesseldorf, Germany; Available at: www.psychologie.hhu.de/arbeitsgruppen/allgemeine-psychologie-und-arbeitspsychologie/gpower.htm) for each rater’s confidence score in patients with true bone metastases.

3. Results

The final study population was 83 patients (mean age of 76.1 ± 8.7 years, range; from 48 to 103), comprised of 83 men with prostate cancer (Figure 1).
Table 2 summarises patient characteristics. True bone metastasis was confirmed in 31 (37.3 %) out of the 83 patients.
Table 3 shows the absolute number of suspicious bone metastasis lesions in conventional CT images (session-1) and conventional CT images plus water-HAP images (session-2). The sensitivity for the detection of bone metastases was improved.
Table 4 shows the sensitivity, specificity, and negative and positive predictive value of patients with conventional CT images (session-1) and conventional CT images plus water-HAP images (session-2). In session-1, the AUC was 0.861 for rater 1 and 0.845 for rater 2 on the conventional CT images. In session-2, the AUC was 0.990 (p-value < 0.01) for rater 1 and 1.000 (p-value < 0.01) for rater 2 on the conventional CT images plus water-HAP images.
The inter-observer weighted kappa coefficient was 0.964 for conventional CT images and 0.976 for conventional CT images plus water-HAP images. The power was calculated as 0.99 for rater 1 and 0.99 for rater 2 using post-hoc power analysis. The parameters used for the post-hoc power test are: test family, t-tests; statistical test, Means: Difference between two dependent means (matched pairs); Type of power analysis, Post-hoc: Compute achieved power; Tails, Two; Effect size d, 0.56 for rater 1, 0.57 for rater 2; α error, 0.05. Representative cases are shown in Figure 2, Figure 3 and Figure 4.

4. Discussion

Water-HAP images combined with conventional CT images yielded increased ability to detect bone metastases, since the ability to detect bone marrow metastases that do not show abnormal density on conventional CT images was significantly increased (an increase of about 10 % in patients with suspected bone metastases). The addition of water-HAP images to plain CT was suggested to improve the diagnostic accuracy of initial staging. In subjects without bone metastases, bone water density was uniformly comparable to that of subcutaneous adipose tissue, which was symmetrically lower than that of skeletal muscle. (Figure 5). There was a heterogeneous increase in water density in sclerotic and mixed-type bone metastases compared to normal bones (Figure 2). In contrast, the water density showed a relatively homogeneous increase in bone marrow metastases (Figure 3 and Figure 4).
The utility of DECT in musculoskeletal imaging has been reported [12,13,14,15,16,17,18,19,20,21,22,23]. Although there are various applications of DECT, the detection of bone marrow oedema and bone contusion has recently been reported in the context of water-HAP images [7,24]. Water-HAP image is a reconstruction technique for visualising water density, but its reports are limited. In the past, it has been reported that the water-HAP image was useful in detecting hip bone marrow oedema in non-traumatic hip pain [7]. The potential of water-HAP using a phantom simulating metastatic bone tumour and small clinical cases has also been reported [8], and these observations support our study findings. Traumatic bone lesions may show a higher degree of oedema and inflammation (water density) than metastatic bone lesions. However, our results showed that the recent DE technique, i.e., water-HAP images, can detect the increased water density in the bone lesions. The degree of increase in water density can potentially characterise the bone lesions, although further studies are warranted.
MRI clearly and accurately depicts the bone metastasis with good contrast [9], but the whole-body screening is difficult in most institutions. In recent years, there have been reports of screening for bone metastases using whole-body diffusion-weighted image (DWI), and whole-body screening is possible in a short time, but the detection sensitivity for bone marrow metastasis is said to be about 70%. However, if a T1-weighted image or short T1 inversion recovery (STIR) image is also added, the detection sensitivity is sufficient, but the imaging time becomes much longer instead, which is not suitable in clinical practice [25,26]. In MRI, one of the solutions is to improve the throughput by further reducing the imaging time using deep learning reconstruction [27]. Still, the problem of claustrophobia remains unsolved, and the DECT detection of bone metastasis may also be helpful in such patients. Nuclear medicine imaging such as 18F-FDG PET/CT and 18F-NaF PET/CT is also a useful modality to detect bone metastases [2,5,28,29,30]. However, it is generally expensive, limited access, and is time-consuming, and it is not performed in many cancer patients.
In contrast, CT may be performed in almost all cancer patients to evaluate the primary and metastatic lesions. Therefore, we believe our results of the added value of water-HAP imaging in assessing bone metastasis can help accurate cancer staging without additional cost and reduce radiation exposure. In contrast, the inter-observer agreement score did not change significantly after the addition of water-HAP images. Its addition also did not increase the inter-observer agreement in the present study.
This study had some limitations. First, it was a single-centre retrospective study. Secondly, the only tumour studied is prostate cancer; thereby, the results cannot be generalised to other malignancies. However, the sensitivity of conventional CT images is about 70%, and the specificity is about 98%, which are in line with the previous reports [31,32]. In conventional CT images plus water-HAP images, both sensitivity and specificity have very high values. Specifically, the sensitivity of both raters 1 and 2 was 1.000. Meanwhile, their specificities were 0.981 and 1.000, respectively), which might be the effect of selecting an arbitrary slice. Third, there was no pathological confirmation of bone metastases. However, clinically, the diagnosis of bone metastases from prostate cancer was clear.
We used the DECT technique to detect bone metastases by tissue characterisation. There were two advantages in this technique, i.e., no requirement of a contrast agent and no increase in radiation exposure. The DE system of this device does not change or increase the amount of radiation exposure compared to the conventional device [33], and the increase in the ability to detect bone metastases due to the addition of new technology to widely used CT greatly contributes to the increase in the accuracy of the initial staging of cancer. In this regard, the use of DECT in clinical settings can be positively recommended. Another potential approach to identifying the bone metastasis may be detecting “iodine density” in the lesion on contrast-enhanced CT, but it requires the contrast agent. Further comparison study should be necessary, and it is now underway in our laboratory.

5. Conclusions

In conclusion, water-HAP images not only enhance the ability to detect bone metastases from prostate cancer but also optimises patient management. Specifically, CT with water-HAP images reduces the need for additional radiographic imaging, potentially reducing costs and radiation exposure. Further larger population studies are needed, such as quantitative analysis, various cancer metastases, and comparison with MRI images and histopathological examination.

Author Contributions

Conceptualisation, Y.I. and Y.H.; methodology, Y.I., Y.H. and T.Y.; software, S.A. and K.H.; validation, S.K. and M.N.; formal analysis, Y.I., Y.H. and D.U.; investigation, Y.I., M.N. and Y.K.; resources, Y.H. and K.Y.; data curation, Y.H., S.A. and K.Y.; writing—original draft preparation, Y.I. and Y.H.; writing—review and editing, K.Y., T.Y. and D.U.; visualisation, Y.I.; supervision, K.Y., T.Y. and D.U.; project administration, D.U. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Acknowledgments

We would like to express our sincere appreciation to Keiji Kawano and other radiographers in the department of Radiology, Odawara municipal hospital. We also thank Takaaki Osuka (GE Healthcare Japan, Tokyo, Japan) for technical advice on DECT.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

AUCArea under the curve
CIConfidence interval
CTComputed tomography
DECTDual-energy computed tomography
HAPHydroxyapatite
MRIMagnetic resonance imaging
NPVNegative predictive value
PPVPositive predictive value
ROCReceiver operating characteristic

References

  1. Gdowski, A.S.; Ranjan, A.; Vishwanatha, J.K. Current concepts in bone metastasis, contemporary therapeutic strategies and ongoing clinical trials. J. Exp. Clin. Cancer Res. 2017, 36, 108. [Google Scholar] [CrossRef] [Green Version]
  2. Al-Muqbel, K.M. Bone Marrow Metastasis Is an Early Stage of Bone Metastasis in Breast Cancer Detected Clinically by F18-FDG-PET/CT Imaging. BioMed Res. Int. 2017, 2017, 9852632. [Google Scholar] [CrossRef] [Green Version]
  3. Yamaguchi, T.; Tamai, K.; Yamato, M.; Honma, K.; Ueda, Y.; Saotome, K. Intertrabecular pattern of tumors metastatic to bone. Cancer 1996, 78, 1388–1394. [Google Scholar] [CrossRef]
  4. Suzuki, A.; Kashiwagi, N.; Doi, H.; Ishii, K.; Doi, K.; Kitano, M.; Kozuka, T.; Hyodo, T.; Tsurusaki, M.; Yagyu, Y.; et al. Patterns of bone metastases from head and neck squamous cell carcinoma. Auris Nasus Larynx 2020, 47, 262–267. [Google Scholar] [CrossRef] [PubMed]
  5. Ahmed, F.; Muzaffar, R.; Fernandes, H.; Tu, Y.; Albalooshi, B.; Osman, M.M. Skeletal Metastasis as Detected by 18F-FDG PET with Negative CT of the PET/CT: Frequency and Impact on Cancer Staging and/or Management. Front. Oncol. 2016, 6, 208. [Google Scholar] [CrossRef] [Green Version]
  6. Palmedo, H.; Marx, C.; Ebert, A.; Kreft, B.; Ko, Y.; Türler, A.; Vorreuther, R.; Göhring, U.; Schild, H.H.; Gerhardt, T.; et al. Whole-body SPECT/CT for bone scintigraphy: Diagnostic value and effect on patient management in oncological patients. Eur. J. Nucl. Med. Mol. Imaging 2013, 41, 59–67. [Google Scholar] [CrossRef]
  7. Son, W.; Park, C.; Jeong, H.S.; Song, Y.S.; Lee, I.S. Bone marrow edema in non-traumatic hip: High accuracy of dual-energy CT with water-hydroxyapatite decomposition imaging. Eur. Radiol. 2019, 30, 2191–2198. [Google Scholar] [CrossRef]
  8. Huang, H.-C.; Srinivasan, R.; Sun, Y.; Kazakia, G.J.; Lin, P.-C.; Yeh, B.M. Detection of Lumbar Spine Osseous Metastases Using Dual-Energy CT: Phantom Results and Preliminary Clinical Validation. Am. J. Roentgenol. 2019, 212, 402–410. [Google Scholar] [CrossRef]
  9. Woo, S.; Suh, C.H.; Kim, S.Y.; Cho, J.Y.; Kim, S.H. Diagnostic Performance of Magnetic Resonance Imaging for the Detection of Bone Metastasis in Prostate Cancer: A Systematic Review and Meta-analysis. Eur. Urol. 2018, 73, 81–91. [Google Scholar] [CrossRef]
  10. Matsumoto, K.; Jinzaki, M.; Tanami, Y.; Ueno, A.; Yamada, M.; Kuribayashi, S. Virtual Monochromatic Spectral Imaging with Fast Kilovoltage Switching: Improved Image Quality as Compared with That Obtained with Conventional 120-kVp CT. Radiology 2011, 259, 257–262. [Google Scholar] [CrossRef]
  11. Kanda, Y. Investigation of the freely available easy-to-use software ‘EZR’ for medical statistics. Bone Marrow Transplant. 2012, 48, 452–458. [Google Scholar] [CrossRef] [Green Version]
  12. Glazebrook, K.N.; Guimarães, L.S.; Murthy, N.S.; Black, D.F.; Bongartz, T.; Manek, N.J.; Leng, S.; Fletcher, J.G.; McColloughb, C.H. Identification of Intraarticular and Periarticular Uric Acid Crystals with Dual-Energy CT: Initial Evaluation. Radiology 2011, 261, 516–524. [Google Scholar] [CrossRef]
  13. Glazebrook, K.N.; Brewerton, L.J.; Leng, S.; Carter, R.E.; Rhee, P.C.; Murthy, N.S.; Howe, B.M.; Ringler, M.D.; Dahm, D.L.; Stuart, M.J.; et al. Case–control study to estimate the performance of dual-energy computed tomography for anterior cruciate ligament tears in patients with history of knee trauma. Skelet. Radiol. 2013, 43, 297–305. [Google Scholar] [CrossRef]
  14. Nicolaou, S.; Liang, T.; Murphy, D.T.; Korzan, J.R.; Ouellette, H.; Munk, P. Dual-Energy CT: A Promising New Technique for Assessment of the Musculoskeletal System. Am. J. Roentgenol. 2012, 199, S78–S86. [Google Scholar] [CrossRef]
  15. Deng, K.; Zhang, C.-Q.; Li, W.; Wang, J.-J.; Wang, X.-Y.; Pang, T.; Wang, G.-L.; Liu, C. Preliminary Application of High-Definition CT Gemstone Spectral Imaging in Hand and Foot Tendons. Korean J. Radiol. 2012, 13, 743–751. [Google Scholar] [CrossRef]
  16. Coupal, T.M.; Mallinson, P.I.; McLaughlin, P.; Nicolaou, S.; Munk, P.L.; Ouellette, H. Peering through the glare: Using dual-energy CT to overcome the problem of metal artefacts in bone radiology. Skelet. Radiol. 2014, 43, 567–575. [Google Scholar] [CrossRef] [PubMed]
  17. Reddy, T.; McLaughlin, P.D.; Mallinson, P.I.; Reagan, A.C.; Munk, P.L.; Nicolaou, S.; Ouellette, H.A. Detection of occult, undisplaced hip fractures with a dual-energy CT algorithm targeted to detection of bone marrow edema. Emerg. Radiol. 2014, 22, 25–29. [Google Scholar] [CrossRef]
  18. Teixeira, P.A.G.; Gervaise, A.; Louis, M.; Lecocq, S.; Raymond, A.; Aptel, S.; Blum, A. Musculoskeletal wide detector CT: Principles, techniques and applications in clinical practice and research. Eur. J. Radiol. 2015, 84, 892–900. [Google Scholar] [CrossRef]
  19. Sun, X.; Shao, X.; Chen, H. The value of energy spectral CT in the differential diagnosis between benign and malignant soft tissue masses of the musculoskeletal system. Eur. J. Radiol. 2015, 84, 1105–1108. [Google Scholar] [CrossRef]
  20. Mallinson, P.I.; Coupal, T.M.; McLaughlin, P.D.; Nicolaou, S.; Munk, P.L.; Ouellette, H.A. Dual-Energy CT for the Musculoskeletal System. Radiology 2016, 281, 690–707. [Google Scholar] [CrossRef]
  21. Burke, C.J.; Didolkar, M.M.; Barnhart, H.X.; Vinson, E.N. The use of routine non density calibrated clinical computed tomography data as a potentially useful screening tool for identifying patients with osteoporosis. Clin. Cases Miner. Bone Metab. 2016, 13, 135–140. [Google Scholar] [CrossRef] [PubMed]
  22. Diekhoff, T.; Hermann, K.; Pumberger, M.; Hamm, B.; Putzier, M.; Fuchs, M. Dual-energy CT virtual non-calcium technique for detection of bone marrow edema in patients with vertebral fractures: A prospective feasibility study on a single- source volume CT scanner. Eur. J. Radiol. 2017, 87, 59–65. [Google Scholar] [CrossRef]
  23. Hackenbroch, C.; Riesner, H.-J.; Lang, P.; Stuby, F.; Beer, M.; Friemert, B.; Palm, H.-G.; Iii, A.B. Dual Energy Computed Tomography in Musculoskeletal Imaging, with Focus on Fragility Fractures of the Pelvis. Z. Orthop. Unf. 2017, 155, 708–715. [Google Scholar] [CrossRef] [PubMed]
  24. Akisato, K.; Nishihara, R.; Okazaki, H.; Masuda, T.; Hironobe, A.; Ishizaki, H.; Shota, K.; Yamaguchi, H.; Funama, Y. Dual-Energy CT of Material Decomposition Analysis for Detection with Bone Marrow Edema in Patients with Vertebral Compression Fractures. Acad. Radiol. 2020, 27, 227–232. [Google Scholar] [CrossRef] [PubMed]
  25. Heusner, T.; Kuemmel, S.; Koeninger, A.; Hamami, M.E.; Hahn, S.; Quinsten, A.; Bockisch, A.; Forsting, M.; Lauenstein, T.; Antoch, G.; et al. Diagnostic value of diffusion-weighted magnetic resonance imaging (DWI) compared to FDG PET/CT for whole-body breast cancer staging. Eur. J. Nucl. Med. Mol. Imaging 2010, 37, 1077–1086. [Google Scholar] [CrossRef]
  26. Grankvist, J.; Fisker, R.; Iyer, V.; Fründ, E.; Simonsen, C.; Christensen, T.; Stenbygaard, L.; Ewertz, M.; Larsson, E.-M. MRI and PET/CT of patients with bone metastases from breast carcinoma. Eur. J. Radiol. 2012, 81, e13–e18. [Google Scholar] [CrossRef]
  27. Kidoh, M.; Shinoda, K.; Kitajima, M.; Isogawa, K.; Nambu, M.; Uetani, H.; Morita, K.; Nakaura, T.; Tateishi, M.; Yamashita, Y.; et al. Deep Learning Based Noise Reduction for Brain MR Imaging: Tests on Phantoms and Healthy Volunteers. Magn. Reson. Med. Sci. 2019, 19, 195–206. [Google Scholar] [CrossRef] [Green Version]
  28. Evangelista, L.; Panunzio, A.; Polverosi, R.; Ferretti, A.; Chondrogiannis, S.; Pomerri, F.; Rubello, D.; Muzzio, P.C. Early bone marrow metastasis detection: The additional value of FDG-PET/CT vs. CT imaging. Biomed. Pharmacother. 2012, 66, 448–453. [Google Scholar] [CrossRef]
  29. Sheikhbahaei, S.; Jones, K.M.; Werner, R.A.; Salas-Fragomeni, R.A.; Marcus, C.V.; Higuchi, T.; Rowe, S.P.; Solnes, L.B.; Javadi, M.S. 18F-NaF-PET/CT for the detection of bone metastasis in prostate cancer: A meta-analysis of diagnostic accuracy studies. Ann. Nucl. Med. 2019, 33, 351–361. [Google Scholar] [CrossRef]
  30. Zacho, H.D.; Jochumsen, M.R.; Langkilde, N.C.; Mortensen, J.C.; Haarmark, C.; Hendel, H.W.; Jensen, J.B.; Petersen, L.J. No Added Value of 18F-Sodium Fluoride PET/CT for the Detection of Bone Metastases in Patients with Newly Diagnosed Prostate Cancer with Normal Bone Scintigraphy. J. Nucl. Med. 2019, 60, 1713–1716. [Google Scholar] [CrossRef]
  31. Aslan, S.; Cetin, B.; Akinci, M.; Cetin, M.; Yucekule, N.; Cetin, A. Computed tomography in detecting bone metastases of breast carcinoma. Is it better than plain X-ray? Saudi Med. J. 2006, 27, 1326–1328. [Google Scholar] [PubMed]
  32. Yang, H.; Liu, T.; Wang, X.-M.; Xu, Y.; Deng, S.-M. Diagnosis of bone metastases: A meta-analysis comparing 18FDG PET, CT, MRI and bone scintigraphy. Eur. Radiol. 2011, 21, 2604–2617. [Google Scholar] [CrossRef] [PubMed]
  33. Fang, T.; Deng, W.; Law, M.W.-M.; Luo, L.; Zheng, L.; Guo, Y.; Chen, H.; Huang, B. Comparison of image quality and radiation exposure between conventional imaging and gemstone spectral imaging in abdominal CT examination. Br. J. Radiol. 2018, 91. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Study flow chart. DECT, Dual-energy computed tomography; PC, Prostate cancer; BC, Breast cancer; HAP Hydroxyapatite.
Figure 1. Study flow chart. DECT, Dual-energy computed tomography; PC, Prostate cancer; BC, Breast cancer; HAP Hydroxyapatite.
Diagnostics 10 00853 g001
Figure 2. Clinical case 1. A man in his 80s with bone metastasis of prostate cancer. (a) The transaxial image of the conventional CT of the pelvis shows the sclerotic bone metastasis in the left superior pubic branch; (b) The transaxial water-HAP image of the pelvis shows a localised increase in water density compared to the other side (red arrow); (c) The anterior view of the bone scintigraphy shows increased uptake in the same region (red arrow). HAP; Hydroxyapatite.
Figure 2. Clinical case 1. A man in his 80s with bone metastasis of prostate cancer. (a) The transaxial image of the conventional CT of the pelvis shows the sclerotic bone metastasis in the left superior pubic branch; (b) The transaxial water-HAP image of the pelvis shows a localised increase in water density compared to the other side (red arrow); (c) The anterior view of the bone scintigraphy shows increased uptake in the same region (red arrow). HAP; Hydroxyapatite.
Diagnostics 10 00853 g002
Figure 3. Clinical case 2. A man in his 70s with prostate cancer. (a) The transaxial image of the conventional CT of the pelvis does not indicate abnormal concentrations in the iliac bone; (b) There is an increase in water density compared to the contralateral side in the transaxial water-HAP image of the pelvis (red arrow); (c) The anterior view of the bone scintigraphy shows the right iliac bone metastases (red arrow). HAP; Hydroxyapatite.
Figure 3. Clinical case 2. A man in his 70s with prostate cancer. (a) The transaxial image of the conventional CT of the pelvis does not indicate abnormal concentrations in the iliac bone; (b) There is an increase in water density compared to the contralateral side in the transaxial water-HAP image of the pelvis (red arrow); (c) The anterior view of the bone scintigraphy shows the right iliac bone metastases (red arrow). HAP; Hydroxyapatite.
Diagnostics 10 00853 g003
Figure 4. Clinical case 3. A man in his 70s with prostate cancer. (a) The transaxial image of the conventional CT image does not indicate an abnormal concentration in the fifth thoracic vertebra; (b) There is an increase in water density compared to the contralateral side in the right rib process of the 5th thoracic vertebra in the transaxial water-HAP image; (c) The posterior view of bone scintigraphy of shows metastasis to the right posterior element of the fifth thoracic vertebra. HAP; Hydroxyapatite.
Figure 4. Clinical case 3. A man in his 70s with prostate cancer. (a) The transaxial image of the conventional CT image does not indicate an abnormal concentration in the fifth thoracic vertebra; (b) There is an increase in water density compared to the contralateral side in the right rib process of the 5th thoracic vertebra in the transaxial water-HAP image; (c) The posterior view of bone scintigraphy of shows metastasis to the right posterior element of the fifth thoracic vertebra. HAP; Hydroxyapatite.
Diagnostics 10 00853 g004
Figure 5. Axial view of the pelvic bones of conventional CT image and water-HAP image in an oncologic patient without bone metastasis in his 70s. (a,b) The pelvic bone’s water density is comparable to that of subcutaneous adipose tissue and lower symmetrically than that of skeletal muscle. This finding suggests the absence of bone tumours. HAP; Hydroxyapatite.
Figure 5. Axial view of the pelvic bones of conventional CT image and water-HAP image in an oncologic patient without bone metastasis in his 70s. (a,b) The pelvic bone’s water density is comparable to that of subcutaneous adipose tissue and lower symmetrically than that of skeletal muscle. This finding suggests the absence of bone tumours. HAP; Hydroxyapatite.
Diagnostics 10 00853 g005
Table 1. Visual evaluation score for bone lesions in conventional CT images and conventional CT images plus water-HAP images.
Table 1. Visual evaluation score for bone lesions in conventional CT images and conventional CT images plus water-HAP images.
ScoreConventional CT ImagesConventional CT Images Plus Water-HAP Image
1No abnormality or findings of apparent benign bone lesions on conventional CT imagesNo abnormality on conventional CT images and water-HAP images, and apparent benign bone lesions on conventional CT images
2Do not qualify as score 1, 3, 4, or 5Do not qualify as score 1, 3, 4, or 5 on conventional CT images. Water-HAP images show a focal asymmetric density lower than skeletal muscle but higher than surrounding bone marrow, but conventional CT images do not indicate any abnormalities
3Ill-defined solitary sclerotic or lytic lesionIll-defined solitary sclerosis or lytic lesion on conventional CT images, or water-HAP images show focal asymmetrical density equal to or higher than skeletal muscle, but no abnormal density was found on conventional CT images
4Ill-defined multiple sclerotic or lytic lesionsIll-defined multiple sclerosis or lytic lesions, or water-HAP images show focal asymmetrical density equal to or higher than skeletal muscle consistent with an ill-defined bone sclerotic or lytic lesion on conventional CT images
5Apparent malignant bone lesions with bone destruction or extraosseous mass on conventional CT imagesApparent malignant lytic lesion or bone sclerosis with bone destruction or extraosseous mass on conventional CT images
HAP—hydroxyapatite.
Table 2. Patient characteristics.
Table 2. Patient characteristics.
Patients CharacteristicsValue
Mean age ± S.D. (years)76.1 ± 8.7
Men (n)83
Bone metastasis (n)
Positive31
Negative52
S.D.: standard deviation.
Table 3. Number of cases scored on conventional CT images and conventional CT images plus water-HAP.
Table 3. Number of cases scored on conventional CT images and conventional CT images plus water-HAP.
ScoreConventional CT ImagesConventional CT Image Plus Water-HAP Images
rater 1rater 2rater 1rater 2
1 (normal or benign)59 (71.1 %)60 (72.3 %)51 (61.4 %)52 (62.7 %)
2 (probably benign)6 (7.2 %)5 (6.0 %)3 (3.6 %)3 (3.6 %)
3 (unclear)3 (3.6 %)5 (6.0 %)10 (12.0 %)10 (12.0 %)
4 (probably malignant)5 (6.0 %)2 (2.4 %)9 (10.8 %)6 (7.2 %)
5 (malignant)10 (12.0 %)11 (13.3 %)10 (12.0 %)12 (14.5 %)
Total83 (100 %)83 (100 %)83 (100 %)83 (100 %)
HAP—hydroxyapatite.
Table 4. Diagnostic performance of conventional CT images and conventional CT images plus water-HAP images.
Table 4. Diagnostic performance of conventional CT images and conventional CT images plus water-HAP images.
Rater 1Rater 2
SessionParameterValue95% CIp-ValueValue95% CIp-Value
Conventional CT imagesSensitivity0.7420.643–0.768 0.7100.610–0.736
Specificity0.9810.922–0.997 0.9810.921–0.997
PPV0.9580.830–0.992 0.9570.822–0.992
NPV0.8640.812–0.878 0.8500.798–0.864
AUC0.8610.781–0.942<0.010.8450.762–0.929<0.01
Conventional CT images plus water-HAP imagesSensitivity1.0000.931–1.000 1.0000.941–1.000
Specificity0.9810.940–0.981 1.0000.965–1.000
PPV0.9690.902–0.969 1.0000.941–1.000
NPV1.0000.958–1.000 1.0000.965–1.000
AUC0.9900.972–1.000<0.011.0001.000–1.000<0.01
continuous NRI0.8670.614–1.119<0.010.8670.614–1.119<0.01
IDI0.7420.376–1.108<0.010.8060.423–1.190<0.01
HAP—hydroxyapatite, CI—confidence interval, PPV—positive predictive value, NPV—negative predictive value, AUC—area under the curve, NRI—net classification improvement, IDI—integrated discrimination improvement.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Ishiwata, Y.; Hieda, Y.; Kaki, S.; Aso, S.; Horie, K.; Kobayashi, Y.; Nakamura, M.; Yamada, K.; Yamashiro, T.; Utsunomiya, D. Improved Diagnostic Accuracy of Bone Metastasis Detection by Water-HAP Associated to Non-Contrast CT. Diagnostics 2020, 10, 853. https://doi.org/10.3390/diagnostics10100853

AMA Style

Ishiwata Y, Hieda Y, Kaki S, Aso S, Horie K, Kobayashi Y, Nakamura M, Yamada K, Yamashiro T, Utsunomiya D. Improved Diagnostic Accuracy of Bone Metastasis Detection by Water-HAP Associated to Non-Contrast CT. Diagnostics. 2020; 10(10):853. https://doi.org/10.3390/diagnostics10100853

Chicago/Turabian Style

Ishiwata, Yoshinobu, Yojiro Hieda, Soichiro Kaki, Shinjiro Aso, Keiichi Horie, Yusuke Kobayashi, Motoki Nakamura, Kazuhiko Yamada, Tsuneo Yamashiro, and Daisuke Utsunomiya. 2020. "Improved Diagnostic Accuracy of Bone Metastasis Detection by Water-HAP Associated to Non-Contrast CT" Diagnostics 10, no. 10: 853. https://doi.org/10.3390/diagnostics10100853

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop