Methods: We retrospectively reviewed 78 patients (56 males; 22 females; mean age 61±11.9 years; range, 32 to 82 years) with solitary pulmonary nodules who underwent F-18 fluorodeoxyglucose positron emission tomography-computed tomography. Patients were classified as benign, malignant and metastatic lesions according to pathology results. Metabolic volume, maximum standardized uptake value, mean standardized uptake value, maximum metabolic index and mean metabolic index were measured. Mean, median and standard error values were calculated for each group. Nonparametric tests were used for the comparison of each group. Partial correlation analysis was used for the relationship between parameters. For all parameters, cut-off values were obtained with receiver operating characteristic analysis.
Results: Of 78 lesions, 10 were benign (12.8%), 38 were primary lung carcinoma (48.7%) and 30 were metastatic lung nodules (38.5%). There was a significant difference between benign lesions and primary lung cancer and between primary lung cancer and metastatic groups in all parameters (p<0.05). We determined highly significant positive correlation between maximum standardized uptake value and maximum metabolic index (r=0.73; p<0.05), and moderate positive correlation between mean standardized uptake value and mean metabolic index (r=0.56; p<0.05). In receiver operating characteristic analysis, maximum standardized uptake value and mean standardized uptake value were found to be the most sensitive and specific methods for benign/malignant discrimination. In the cut-off value=2.59, the sensitivity and specificity for maximum standardized uptake value were 98.0% and 91.7%, respectively. In the cut-off value=1.65, the sensitivity and specificity for mean standardized uptake value were 94.0% and 91.7%, respectively.
Conclusion: Maximum metabolic index value is highly correlated with maximum standardized uptake value in benign/malignant solitary pulmonary nodules discrimination by F-18 fluorodeoxyglucose positron emission tomographycomputed tomography. Maximum metabolic index can also be used for discrimination of primary/metastatic malignant lesions.
The commonly used standardized uptake value (SUV) is a semi-quantitative analysis parameter for PET images.[8] The maximum SUV ( SUVmax) is obtained for a one-pixel region of interest corresponding to the maximum pixel value in the tumor. However, SUVmax does not reflect the total tumor glycolytic activity for the whole tumor mass in FDG PET. Although SUVmean may be more suitable than SUVmax for describing total tumor glycolytic activity, the heterogeneous tumor uptake may reduce SUVmean excessively.[10] Another way of evaluation of total tumor glycolytic activity is to use volumetric PET parameters such as metabolic tumor volume (MTV) and total lesion glycolysis. Metabolic tumor volume is a volumetric measurement of tumor cells with high glycolytic activity. Volumetric parameters are usually researched for prognostic purposes or the prediction of therapeutic response.[10] However, there is limited study about the diagnostic usage of volumetric PET parameters for discrimination of malign lesions from benign lesions. As a volumetric PET parameter, the metabolic index (MI) is calculated by multiplying the MTV by the SUV (maximum or mean) and is used to evaluate the prognosis of some types of tumor.[11] In this study, we aimed to evaluate the effect of quantitative volumetric metabolic measurements in F-18 FDG PET-CT to distinguish benign and malignant SPNs.
The patients were divided into benign and malignant groups based on the pathology results. Patients in the malignant group were classified into primary lung cancer and metastatic nodule subgroups. Immunohistochemical analysis was performed to all patients in the malignant and metastatic groups during pathological evaluation.
After fasting and resting for six h, the patients received 259-407 MBq (7-11 mCi) of F-18 FDG intravenously when their fasting blood glucose level was <200 mg/dL. All patients were screened 60 min after injection. Pre-injection activity and postinjection injector activity were counted in PET-CT. The actual dose of radioactivity given to the patient was thus calculated. The patients were examined using a dedicated PET/CT scanner (Gemini TF TOF PET-CT; Philips Healthcare, Cleveland, OH, USA; 3D mode, slice thickness of 5 mm, 4×4×22 mm LYSO crystal, number of crystals 28.336, 256×256 matrix (voxel size 2.6×2.6×2.4 mm3), transverse field of view (FOV) 576 mm and axial FOV 180 mm). Emission scans were acquired from the calvaria base to the middle of the thigh for 1.5 min per position without intravenous contrast medium injection. Transmission images were obtained by low-dose CT (50-120 mAs, 90-140 kVp, 16 number of CT detectors, slice thickness of 5 mm). Attenuation correction was performed for PET images using CT findings and the ordered subsetsexpectation maximization algorithm (33 subsets, three iterations). Positron emission tomography images were reconstructed by the iterative method. Transverse, sagittal, and coronal sections (5 mm thickness) were created from PET-CT fusion images and evaluated using Philips Fusion Viewer software (version 2.1; Philips Healthcare, Best, The Netherlands).
The images were transferred to Tumor Tracking EBW NM 2.0 (Philips Healthcare, Cleveland, OH, USA) to calculate metabolic parameters. This software has three methods for calculating metabolic parameters: the bounded (limited), threshold, and interactive methods. Using the bounded method, volumetric areas of interest (VOIs) were automatically drawn around all lung nodules in PET/CT fusion axial images using a VOI limit of 42.5% (40-60%) without considering background activity (mediastinal blood pool, liver, contralateral lung, etc.). And then, the isocontours were manually adjusted so that the lesion border on PET and CT overlapped. Sagittal and coronal PET-CT fusion sections were reviewed to confirm that the lesion was included in the VOI in all three sections. Lesion size and volume were measured in millimeters and milliliters. The metabolic volume, SUVmax, and SUVmean of VOIs were automatically calculated and the maximum metabolic index (MImax; SUVmax × metabolic v olume) a nd m ean m etabolic index (MImean; SUVmean × metabolic volume) values were determined.
Statistical analysis
The PASW for Windows version 17.0 software
(SPSS Inc., Chicago, IL, USA) was used for statistical
analysis. Mean and median values were calculated.
Nonparametric tests were used to compare mean
values. The correlations of measurement methods
were assessed by partial correlation analysis. Receiver
operating characteristic (ROC) analysis was performed
to assess the ability of the parameters to differentiate
benign from malignant lesions and threshold values
were calculated. P values <0.05 were deemed to
indicate statistical significance.
Table 1: Histopathologic results of benign, malignant and metastatic solitary pulmonary nodules
There were nine small-cell lung cancers (SCLCs) (17%) and 29 non-SCLCs (83%) in 38 patients with primary lung cancer (Table 1). The lesions diagnosed as malignant by PET-CT were pathologically defined as primary lung cancer (true positive), and the 10 lesions diagnosed as benign by PET-CT were pathologically defined as benign. The remaining two lesions were defined as histopathologically (false-negative) as lung cancer (adenocancer, mixed type).
The mean and median SUVmax, SUVmean, MImax, and MImean were lowest in the benign group and highest in the primary lung cancer group. A nonparametric Kruskal-Wallis test showed significant differences among the three groups (p=0.001; p=0.027; p=0.004; p=0.017, respectively). Significant differences were found in SUVmax, MImax, SUVmean and MImean between the benign-primary lung cancer (p=0.001; p=0.010; p=0.002; p=0.045, respectively) and metastatic-primary lung cancer groups (p=0.001; p=0.018; p=0.040; p=0.010, respectively) by Mann-Whitney U test. The SUVmax and SUVmean differed significantly between the benign and metastatic lung lesion groups (p=0.010; p=0.088, respectively) (Table 2).
There was a significant correlation (r=0.73; p=0.001) between SUVmax and MImax, and a moderate correlation between SUVmean and MImean (r=0.56; p=0.001).
The ROC analysis showed that SUVmax and SUVmean were more significant than MImax and MImean (Figure 1). The cut-off values that provided the optimal sensitivity and specificity were 2.59 for SUVmax (sensitivity 98%, specificity 91.7%), 1.65 for SUVmean (sensitivity 94%, specificity 91.7%), 9.27 for MImax (sensitivity 92.6%, specificity 72.5%), and 5.40 for MImean (sensitivity 89%, specificity 91.7%) (Table 3).
The SUV provides information on metabolic activity independent of lesion size. The MTV is defined as the volume of tumor tissue showing increased FDG uptake and is regarded as a prognostic factor.[18] The SUV provides only information on metabolic activity, while MTV reflects the proportion of the lesion that shows high metabolic activity. We aimed to identify a parameter that enables effective differentiation of benign from malignant SPNs by combining the SUV and MTV; i.e., the MI. Xie et al.[11] reported that MI i s significantly related to the prognosis of nasopharyngeal carcinoma. To our knowledge, no study has reported that MI is predictive of malignancy in SPNs. In our study, the MImax values were 18.4±7.4, 46.1±24.9, and 186.4±51.1 in the benign, metastatic, and malignant groups, respectively. Significant differences were found in MImax between t he benign-primary lung cancer and between primary lung cancer-metastatic group.
In the ROC analysis, the cut-off values that provided the optimal sensitivity and specificity were 2.59 for SUVmax (sensitivity 98%, specificity 91.7%), 1.65 for SUVmean (sensitivity 94%, specificity 91.7%), 9.27 for MImax (sensitivity 92.6%, specificity 72.5%), and 5.40 for MImean (sensitivity 89%, specificity 91.7%). The areas under the curve showed that SUVmax and SUVmean were more effective t han MImax and MImean for differentiation of benign from malignant SPNs. Various optimal cut-off SUVmax values for prediction of malignancy have been reported. Demir et al.[19] reported that a SUVmax cut-off of >2.5 had a sensitivity of 94% and specificity of 75%. In a study involving 186 patients, a SUVmax cut-off of 2.5 had a sensitivity of 86.7% and specificity of 50%.[15] Several studies support a SUVmax >2.5 as the cut-off for differentiation of benign from malignant lesions by PET/CT.[8,20-22] Nguyen et al.,[23] in a retrospective study involving 143 patients, showed that a SUVmax cut-off o f >3.6 had a sensitivity and specificity of 81% and 94%, respectively. Yi et al.[24] conducted a study with 119 patients: a cut-off SUVmax of >3.5 had a sensitivity of 96% and a specificity of 88%. In the retrospective study by Lopez et al.[17] involving 55 patients, a SUVmax cut-off of >1.95 had a sensitivity of 80% and specificity of 53.3%. As the SUVmax cut-off increases, the sensitivity decreases, and the specificity increases. In contrast, as the SUVmax decreases, the specificity decreases significantly. No consensus regarding the SUVmax cut-off that provides the best diagnostic performance has been established. In this study, a SUVmax cut-off of >2.59 provided good sensitivity and specificity, in agreement with most previous reports.[19-22]
To our knowledge, no previous study has evaluated the usefulness of MI for the diagnosis of SPN. In this study, MImax and MImean c ut-offs o f > 9.27 and >5.40 provided the best diagnostic performance. In the ROC analysis, SUVmax a nd SUVmean were more significant than MImax and MImean. Some large SPN lesions had low SUV values and some small SPN lesions had high SUV values, possibly due to differences in metabolic volume.
There was a significant correlation between SUVmax and MImax (r=0.73; p=0.001), and a moderately significant correlation between SUVmean and MImean (r=0.56; p=0.001). Therefore, MImax can be used together with SUVmax for differentiation of benign from malignant lesions.
In our study, 30 of 78 SPNs were metastatic lung nodules (38.5%). Few studies have investigated the SUVs of metastatic lung nodules and benign or malignant primary lung lesions. Yilmaz and Tastekin,[14] reported mean SUVmax values of 3.5±3.0, 7.7±4.1, and 3.2±3.1 for benign, malignant, and metastatic lesions, respectively. There was a significant difference between the malignant and metastatic groups, but not between the benign and metastatic groups. In our study, the SUVmax values differed significantly among the three groups, but the MI values were not significantly different between the benign and metastatic nodule groups. Therefore, SUVmax enables differentiation of benign lung nodules, primary lung cancer, and metastatic lung nodules. Moreover, MImax can be used to differentiate benign from malignant lung lesions and malignant lung lesions from metastatic nodules.
Furthermore, 10 of 12 benign lesions by PET-CT were pathologically confirmed (true negative). The remaining two patients with a SUVmax < 2.5 were pathologically (false-negative) diagnosed with primary lung cancer (adenocancer, mixed type). In the literature, FDG uptake rate of adenocancers with a bronchoalveolar component is significantly lower than that of types without a bronchoalveolar component.[9,25]
All 38 lesions identified as malign by PET-CT were pathologically defined as primary lung cancer. Some infective-inflammatory lesions show high F-18 FDG uptake, which can lead to false-positive results.[8]
This study was limited by its retrospective design, which prevented control of imaging and patient preparation parameters. Also, a relatively small number of patients was enrolled.
In conclusion, maximum metabolic index value showed a significant correlation with maximum standardized uptake value for benign/malignant discrimination of solitary pulmonary nodules. Maximum standardized uptake value (for 2.59 cut-off value) and mean standardized uptake value (for 1.65 cut-off value) were found to be the most sensitive and specific methods for benign/malignant discrimination in solitary pulmonary nodules. All of the metabolic measurements may discriminate primary lung cancer from the metastatic group.
Declaration of conflicting interests
The authors declared no conflicts of interest with respect to
the authorship and/or publication of this article.
Funding
The authors received no financial support for the research
and/or authorship of this article.
1) Ost D, Fein AM, Feinsilver SH. Clinical practice. The
solitary pulmonary nodule. N Engl J Med 2003;348:2535-42.
2) Higgins GA, Shields TW, Keehn RJ. The solitary
pulmonary nodule. Ten-year follow-up of veterans
administration-armed forces cooperative study. Arch Surg
1975;110:570-5.
3) Fischer BM, Mortensen J, Højgaard L. Positron emission
tomography in the diagnosis and staging of lung cancer: a
systematic, quantitative review. Lancet Oncol 2001;2:659-66.
4) Warburg O. On the origin of cancer cells. Science
1956;123:309-14.
5) Kim SK, Allen-Auerbach M, Goldin J, Fueger BJ,
Dahlbom M, Brown M, et al. Accuracy of PET/CT in
characterization of solitary pulmonary lesions. J Nucl
Med 2007;48:214-20.
6) Gould MK, Maclean CC, Kuschner WG, Rydzak CE, Owens
DK. Accuracy of positron emission tomography for diagnosis
of pulmonary nodules and mass lesions: a meta-analysis.
JAMA 2001;285:914-24.
7) Patz EF Jr, Lowe VJ, Hoffman JM, Paine SS, Burrowes P,
Coleman RE, et al. Focal pulmonary abnormalities: evaluation
with F-18 fluorodeoxyglucose PET scanning. Radiology
1993;188:487-90.
8) Lowe VJ, Fletcher JW, Gobar L, Lawson M, Kirchner
P, Valk P, et al. Prospective investigation of positron
emission tomography in lung nodules. J Clin Oncol
1998;16:1075-84.
9) Aquino SL, Halpern EF, Kuester LB, Fischman AJ. FDGPET
and CT features of non-small cell lung cancer based on
tumor type. Int J Mol Med 2007;19:495-9.
10) Moon SH, Hyun SH, Choi JY. Prognostic significance of
volume-based PET parameters in cancer patients. Korean J
Radiol 2013;14:1-12.
11) Xie P, Yue JB, Zhao HX, Sun XD, Kong L, Fu Z, et al.
Prognostic value of 18F-FDG PET-CT metabolic index
for nasopharyngeal carcinoma. J Cancer Res Clin Oncol
2010;136:883-9.
12) Allal AS, Slosman DO, Kebdani T, Allaoua M, Lehmann W,
Dulguerov P. Prediction of outcome in head-and-neck cancer
patients using the standardized uptake value of 2-[18F]
fluoro-2-deoxy-D-glucose. Int J Radiat Oncol Biol Phys
2004;59:1295-300.
13) Zhao L, Tong L, Lin J, Tang K, Zheng S, Li W, et al.
Characterization of solitary pulmonary nodules with 18FFDG
PET/CT relative activity distribution analysis. Eur
Radiol 2015;25:1837-44.
14) Yilmaz F, Tastekin G. Sensitivity of (18)F-FDG PET in
evaluation of solitary pulmonary nodules. Int J Clin Exp Med
2015;8:45-51.
15) Sim YT, Goh YG, Dempsey MF, Han S, Poon FW. PET-CT
evaluation of solitary pulmonary nodules: correlation with
maximum standardized uptake value and pathology. Lung
2013;191:625-32.
16) Sim YT, Poon FW. Imaging of solitary pulmonary nodule-a
clinical review. Quant Imaging Med Surg 2013;3:316-26.
17) Lopez OG, Vicente AMG, Martinez AFH, Londono GAJ,
Caicedo CHV, Atance PL, et all. 18-FDG PET-CT in the
assessment of pulmonary solitary nodules:comparison of
different analysis methods and risk variables in the prediction
of malignancy. Transl Lung Cancer Res 2015;4:228-35.
18) Lee P, Weerasuriya DK, Lavori PW, Quon A, Hara W,
Maxim PG, et al. Metabolic tumor burden predicts for
disease progression and death in lung cancer. Int J Radiat
Oncol Biol Phys 2007;69:328-33.
19) Demir Y, Polack BD, Karaman C, Ozdoğan O, Sürücü E,
Ayhan S, et al. The diagnostic role of dual-phase (18)F-FDG
PET/CT in the characterization of solitary pulmonary
nodules. Nucl Med Commun 2014;35:260-7.
20) Al-Sugair A, Coleman RE. Applications of PET in lung
cancer. Semin Nucl Med 1998;28:303-19.
21) Hashimoto Y, Tsujikawa T, Kondo C, Maki M, Momose
M, Nagai A, et al. Accuracy of PET for diagnosis of
solid pulmonary lesions with 18F-FDG uptake below
the standardized uptake value of 2.5. J Nucl Med
2006;47:426-31.
22) Hain SF, Curran KM, Beggs AD, Fogelman I, O"Doherty
MJ, Maisey MN. FDG-PET as a "metabolic biopsy" tool in thoracic lesions with indeterminate biopsy. Eur J Nucl Med
2001;28:1336-40.
23) Nguyen NC, Kaushik A, Wolverson MK, Osman MM. Is
there a common SUV threshold in oncological FDG PET/CT,
at least for some common indications? A retrospective study.
Acta Oncol 2011;50:670-7.