Abstract

We evaluated apparent diffusion coefficient (ADC) histogram parameters for predicting the outcomes of patients with salivary gland carcinoma. Diffusion-weighted MR imaging was performed in 20 patients with salivary gland carcinoma, and ADCs were determined using b-values of 500 and 1000 s/mm2. ADC histogram parameters (mean, median, percentage tumor area with distinctive ADC values [pADC], skewness, and kurtosis) were analyzed. The patients were followed for 5–136 months after primary surgery. The ADC histogram parameters and T (pT), N(pN), and M categories of the primary tumors were assessed for the prognostic importance using Cox proportional hazards models, logistic regression analysis, and receiver operating characteristic (ROC) analysis. Cohen’s d was determined for evaluating the importance of differences in the parameters between two patient groups with different outcomes. Six patients died of cancer (DOC) within 3 years after the primary surgery. Cox proportional hazards models indicated that ADC mean (95% CI = 0.494–0.977, p = 0.034), ADC median (95% CI = 0.511–0.997, p = 0.048), pADC with extremely low (<0.6 mm2/s) ADC (95% CI = 1.013–1.082, p = 0.007), kurtosis (95% CI = 1.166–7.420, p = 0.023), and pN classification (95% CI = 1.196–4.836, p = 0.012) were important factors of cancer death risk. ROC analyses indicated that the pADC <0.6 ×10−3 mm2/s was the best prognostic predictor (p <0.001; AUC = 0.929) among the ADC and TNM classification parameters that were significant in a univariate logistic regression analysis. Cohen’s d values between the DOC and survived patients for the ADC mean, ADC median, pADC with extremely low ADC, and kurtosis were 1.06, 1.04, 2.12, and 1.13, respectively. These results suggest that ADC histogram analysis may be helpful for predicting the outcomes of patients with salivary gland carcinoma.

Highlights

  • Salivary gland carcinomas show a striking range of histological diversity between different carcinoma types and within individual tumors [1]

  • We found significant differences in apparent diffusion coefficient (ADC) means (p = 0.049) and percentage tumor area with distinctive ADC values (pADC)

  • We have shown that the ADC histogram analysis can effectively predict the outcomes of patients with salivary gland carcinoma

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Summary

Introduction

Salivary gland carcinomas show a striking range of histological diversity between different carcinoma types and within individual tumors [1]. The morphological variability of salivary gland carcinomas makes the diagnosis difficult. Histological grades and carcinoma types have been shown to be independent predictors of patient prognosis [3, 4]. The preoperative imaging diagnosis of histological types and grades is daunting. In addition to non-diagnostic results of FNAC, variability of immunohistological features of salivary gland carcinomas makes the classification of histological types and grades difficult [5, 6]. Preoperative prediction of the outcomes of patients with salivary gland carcinoma is daunting

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