Department of Radiology, Seoul National University Bundang Hospital, Seoul National University College of Medicine, Institute of Radiation Medicine, Seoul National University Medical Research Center, Seoul City, South Korea.
Division of Biomedical Engineering, Hankuk University of Foreign Studies, Seoul City, South Korea.
PLoS One. 2018 Mar 29;13(3):e0194755. doi: 10.1371/journal.pone.0194755. eCollection 2018.
To retrospectively investigate whether texture features obtained from preoperative CT images of advanced gastric cancer (AGC) patients could be used for the prediction of occult peritoneal carcinomatosis (PC) detected during operation.
51 AGC patients with occult PC detected during operation from January 2009 to December 2012 were included as occult PC group. For the control group, other 51 AGC patients without evidence of distant metastasis including PC, and whose clinical T and N stage could be matched to those of the patients of the occult PC group, were selected from the period of January 2011 to July 2012. Each group was divided into test (n = 41) and validation cohort (n = 10). Demographic and clinical data of these patients were acquired from the hospital database. Texture features including average, standard deviation, kurtosis, skewness, entropy, correlation, and contrast were obtained from manually drawn region of interest (ROI) over the omentum on the axial CT image showing the omentum at its largest cross sectional area. After using Fisher's exact and Wilcoxon signed-rank test for comparison of the clinical and texture features between the two groups of the test cohort, conditional logistic regression analysis was performed to determine significant independent predictor for occult PC. Using the optimal cut-off value from receiver operating characteristic (ROC) analysis for the significant variables, diagnostic sensitivity and specificity were determined in the test cohort. The cut-off value of the significant variables obtained from the test cohort was then applied to the validation cohort. Bonferroni correction was used to adjust P value for multiple comparisons.
Between the two groups, there was no significant difference in the clinical features. Regarding the texture features, the occult PC group showed significantly higher average, entropy, standard deviation, and significantly lower correlation (P value < 0.004 for all). Conditional logistic regression analysis demonstrated that entropy was significant independent predictor for occult PC. When the cut-off value of entropy (> 7.141) was applied to the validation cohort, sensitivity and specificity for the prediction of occult PC were 80% and 90%, respectively.
For AGC patients whose PC cannot be detected with routine imaging such as CT, texture analysis may be a useful adjunct for the prediction of occult PC.
回顾性研究术前 CT 图像中获得的高级胃癌(AGC)患者纹理特征是否可用于预测术中发现的隐匿性腹膜癌(PC)。
纳入 2009 年 1 月至 2012 年 12 月期间术中发现隐匿性 PC 的 51 例 AGC 患者作为隐匿性 PC 组。对照组为同期未发现远处转移包括 PC 且临床 T、N 分期可与隐匿性 PC 组相匹配的 51 例 AGC 患者。两组均分为测试(n = 41)和验证队列(n = 10)。从医院数据库中获取这些患者的人口统计学和临床数据。从显示网膜最大横截面积的轴位 CT 图像上手动绘制的网膜 ROI 中获得纹理特征,包括平均值、标准差、峰度、偏度、熵、相关性和对比度。在对测试队列两组的临床和纹理特征进行 Fisher 确切检验和 Wilcoxon 符号秩检验比较后,采用条件逻辑回归分析确定隐匿性 PC 的显著独立预测因子。在测试队列中使用 ROC 分析的最佳截断值确定显著变量的诊断敏感性和特异性。从测试队列获得的显著变量的截断值然后应用于验证队列。使用 Bonferroni 校正法校正多重比较的 P 值。
两组间临床特征无显著差异。关于纹理特征,隐匿性 PC 组的平均值、熵、标准差显著较高,相关性显著较低(所有 P 值均<0.004)。条件逻辑回归分析表明,熵是隐匿性 PC 的显著独立预测因子。当将熵(>7.141)的截断值应用于验证队列时,预测隐匿性 PC 的敏感性和特异性分别为 80%和 90%。
对于 CT 等常规影像学检查无法检测到 PC 的 AGC 患者,纹理分析可能是预测隐匿性 PC 的有用辅助手段。