Methods: A retrospective analysis of 156 patients (146 males, 10 females; mean age 62.3±8.0 years; range 38 to 79 years) with non-small-cell lung cancer who underwent anatomical resection and mediastinal lymph node dissection between September 2009 and June 2013 was performed. The tumor volumes were calculated using histopathological data. The effect of tumor volume on prognosis and survival was investigated.
Results: Of the patients, 116 had Stage I disease and 40 patients had Stage II disease. The mean tumor volume was 38.2±54.6 (range, 356.15 to 0.01) cm3, and the mean largest diameter was 4.2±2.0 (range, 10 to 0.3) cm. In the Cox regression analysis, the tumor volume below the cut-off value (29.69 cm3) increased survival with an odds ratio (OR) of 2, and this value was statistically significant (p=0.022). The cut-off value per T factor was 4.5 cm and the OR was 1.7; however, no significant correlation with the survival was observed (p=0.058).
Conclusion: The present study found a closer correlation between the tumor volume and survival in contrast to the known correlation between the tumors largest diameter and survival. Based on our study results, it is recommended to calculate and consider the tumor volume along with the tumor diameter in the staging of lung cancer.
Current lung cancer staging evaluates the largest diameter and localization of the tumor, status of the lymph nodes, and presence of metastasis.[5] However, the T factor alone, which describes the largest diameter of the tumor, is not a parameter reflecting the complete tumor mass and volume. It is expected that the threedimensional volume of the tumor would provide better information on the tumor size, relative to the twodimensional size. In the light of this perspective, in the present study, we aimed to investigated whether the tumor volume affected the survival in patients with early-stage non-small-cell lung cancer (NSCLC).
A written informed consent was obtained from each patient. The study was conducted in accordance with the principles of the Declaration of Helsinki.
Statistical analysis
The data were analyzed using the IBM SPSS for
Windows version 22.0 (IBM Corp., Armonk, New
York, USA) and MedCalc 9 (Acacialaan 22, B-8400
Ostend, Belgium) programs. The compatibility of the
data with normal distribution was evaluated considering
the Shapiro-Wilk test and variation coefficients, while parametric methods were used to analyze the normally
distributed data and non-parametric methods were
used to analyze the non-normally distributed variables.
The two independent groups were compared using
the independent-samples t-test and Mann-Whitney
U (exact) test. The correlations of the variables with
each other were analyzed using the Spearman's rho
test, whereas the categorical data were compared using
the Pearson chi-square (exact) test. The effects of the
factors on mortality were examined using the Kaplan-
Meier (product-limit method) - log-rank (Mantel-Cox)
analysis. The Cox regression analysis was used to
measure the effects of prognostic variables on lifetime
based on the main factor. The relationship between the
actual classification and the classification of the patient
groups using the cut-off value calculated according
to the variables was examined and expressed through
sensitivity and specificity using the Receiver Operating
Characteristics (Honley & Mc Nell) analysis. The
quantitative data were expressed in mean ± standard
deviation (SD), median ± interquartile range (IQR),
and median (min-max) values. Categorical data were
expressed in number (n) and percentage (%). A p value
of <0.05 was considered statistically significant with
95% confidence interval (CI).
When histopathological diagnoses of the patients were examined, 72 patients (46.1%) had a squamous-cell carcinoma, 68 patients (43.6%) had an adenocarcinoma, 12 patients (7.7%) had a large-cell carcinoma, and four patients (2.6%) had a non-small-cell carcinoma with no identified type. The patients who survived in the study group were classified into two groups based on the mortality status, 45 patients had an adenocarcinoma, 46 patients had a squamous-cell carcinoma, nine patients had a large-cell carcinoma, and two patients had other NSCLC. In the non-survivor group, 23 patients had an adenocarcinoma, 26 patients had a squamous-cell carcinoma, three patients had a large-cell carcinoma, and two patients had other NSCLC; and there was a homogeneous distribution between the two groups (p=0.897).
Considering the T status of the overall group, the mean diameter was 4.2±2.0 cm. The mean T factor was 3.5±2.5 cm in the survivor and 4.5±3.5 cm in the non-survivor group; the difference between the two groups was statistically significant (p=0.015). When the T status was evaluated based on stages, the mean T was 3 ±1.6 cm and 7±2 cm in the Stage I and Stage II patient groups, respectively, and there was a statistically significant difference between the two groups (p<0.001). When the T s tatus w as e valuated based on the stages in the survival group, the mean T was 3.0±2 c m i n Stage I a nd 6 .5±1 c m i n Stage I I, and the difference was significant (p<0.001). In the non-survivor group, the mean value was 3.3±1.5 cm and 7.0±2 cm in Stage I and Stage II, respectively, and this difference was significant (p<0.001) (Table 1).
Table 1: Distribution of volume and T factor by stages in survivors and non-survivors
The mean tumor volume was 38.2±54.6 cm3 in the overall group. The mean tumor volume was 13.4±34.1 cm3 in the survivor group, compared to 31.4±53.6 cm3 in the non-survivor group, indicating a statistically significant difference (p=0.023). When the tumor volume was evaluated based on the stages, it was 9.0±20 cm3 in the Stage I patient group, compared to 81.4±86.7 cm3 in the Stage II patient group, a statistically significant difference between the two groups (p<0.001). When the tumor volume was evaluated based on the stages in the survival group, the mean value was 8.6±19.5 cm3 in Stage I and 73.8±54.1 cm3 in Stage II (p<0.001). In the non-survivor group, the mean value was 11.8±3 cm3 and 82.6±96.8 cm3 in Stage I and Stage II, respectively (p<0.001) (Table 1). The cut-off value for tumor volume was 29.69 cm3. The number of patients with a tumor volume ≤29.69 cm3 was 71 and the number of patients with a tumor volume >29.69 cm3 was 32 in the survivor group. In the nonsurvivors group, the number of patients with a tumor volume ≤29.69 cm was 25 and the number of patients with a tumor volume >29.69 cm3 was 28. Comparison of the two groups revealed that there was a significantly higher number of patients below the cut-off value in the survivor group (p=0.019).
When the effect of volume on survival was examined, the three-year survival rate was 88.9% below the cut-off value and 75.4% above the cut-off value (Figure 1). There was a statistically significant difference in the survival between the two groups and survival was observed to increase with the decreasing tumor size (Table 2).
Table 2: Comparison of three-year survival by volume cut-off values
In this study, the odds ratios (ORs) for the three factors having a statistical impact on survival were 2 for the tumor size 1.7 for T (the longest diameter) and 1.6 for the tumor stage. When the variables were associated with mortality in accordance with these ratios, only the volume value had a significant effect on mortality (p=0.022), and the other two factors approached to statistical significance, although the p values were higher than 0.05 (Table 3).
Table 3: Rates of survival-affecting factors to create a risk factor
Review of the literature reveals that there is a similar study conducted by Jefferson et al.,[11] investigating the effect of volume on survival. The aforementioned study also calculated the tumor volume by taking the maximum lengths of all three dimensions of the tumor in the postoperative pathological piece. The study concluded that the mean volume was 91.6±8.6 cm3 in Stage I, 92.4±13 cm3 in Stage II, and 178.8±24.2 cm3 in Stage IIIA. Two-year and five-year survival rates were 73.2%, 53.4%, and 41.8% and 60.8%, 45%, and 34%, respectively. The authors showed that there was an increase in the disease stage along with the increased volume which affected survival. This study included patients from all stages including N2s; however, the present study examined the isolated effect of tumor volume on prognosis and compared that with the tumor diameter currently in use.
Chandrachud et al.[12] calculated t he c ut-off value of tumor volume as 36 cm3 in their study. They found that the two-year survival rate was 66.7% in the patient group below the cut-off value, compared to 25% in the patient group above the cut-off value, indicating a significant difference in survival between these two groups (p=0.02). In the present study, the cut-off value of tumor size was 29.69 cm3 in the patient group. The mean life expectancy was 53.6±1.5 months in the patient group below the cut-off value, compared to 48.2±1.8 months in the group below the cut-off value. Three-year survival rates of these two groups were 88.9% and 75.4%, respectively, and there was a statistically significant difference (p=0.020). This comparative study included all stages; however, the present study considered only Stage I and II patients to obtain more objective, target-specific data. Thus, other data affecting lung cancer staging were excluded, and only the results of the size and volume effect were evaluated.
Previous multivariate analyses also showed the effect of tumor volume on survival.[11,13] Similarly, the present study demonstrated that increased tumor volume had a negative effect on survival. The patients with a tumor volume below the calculated cut-off value had a longer survival.
Currently, positron emission tomography is also one of the most commonly used imaging tools for lung cancer staging. As it is well-known, the false negativity rate is high in small-size lesions.[14,15] Therefore, several studies were conducted to investigate the association between tumor volume and metabolic activity. The study by Sridhar et al.[16] showed a statistically significant increase in the metabolic activity along with the increased tumor volume (p<0.001). A PET-CT study from Turkey, which included esophageal cancer patients, showed that a one-unit increase in volume caused a 1.1-fold increase in the risk ratio.[13]
The cut-off value was 2-3 cm in the T1N0M0 patient group and 3-7 cm in the T2N0M0 patient group in the 7th TNM staging.[17] In the present study, the cut-off value of T factor was 4.5 cm in the overall group. Tumor volume is not used in the current staging system and the present study offers a new perspective to staging. The tumor volume at the calculated cut-off values was shown to be more sensitive in estimating survival in the study population than the T factor.
In conclusion, this study suggests that tumor volume is of particular importance in prediction of prognosis. In addition, tumor volume can be suggested to guide in case that an adjuvant therapy is required. Further studies including larger patient populations would be helpful to suggest recommendations for the calculation and consideration of the tumor volume with the tumor diameter in lung cancer staging. Following such studies, it would be possible to formulate the hypothesis that additional treatment planning is required in patients with a tumor volume higher than the cut-off value.
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.
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