Quantitative Analysis and Pathological Basis of Signal Intensity on T2-Weighted MR Images in Benign and Malignant Parotid Tumors

腮腺良恶性肿瘤T2加权磁共振图像信号强度的定量分析及病理学基础

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Abstract

OBJECTIVE: To investigate the value of the signal intensity on T2-weighted magnetic resonance (MR) imaging using quantitative analysis in the differentiation of parotid tumors. MATERIALS AND METHODS: MR data of 80 pleomorphic adenomas (PAs), 68 Warthin tumors (WTs), and 34 malignant tumors (MTs) confirmed by surgery and histology were retrospectively analyzed. The signal intensities of tumor, normal parotid gland, spinal cord, and buccal subcutaneous fat were measured, and the signal intensity ratios (SIRs) between the tumor and the three references were calculated. Receiver operating characteristic curve was used to determine the optimal threshold and diagnostic efficiency of SIR for differentiating PAs, WTs, and MTs. RESULTS: The area under the curve (AUC) of tumor to parotid gland SIR (SIR(P)), tumor to spinal cord SIR (SIR(C)), and tumor to buccal subcutaneous fat SIR (SIR(F)) for differentiating PAs and WTs was 0.922, 0.918, and 0.934, respectively. The sensitivity and specificity at an optimal SIR threshold were 86.3% and 91.2%, 80.0% and 97.1%, and 85.0% and 94.1%, respectively. The AUC of SIR(P), SIR(C), and SIR(F) for distinguishing PAs from MTs was 0.793, 0.802, and 0.774, respectively. The sensitivity and specificity at an optimal SIR threshold was 86.3% and 61.8%, 80.0% and 73.5%, and 82.5% and 73.5%, respectively. The AUC of SIR(P), SIR(C), and SIR(F) for distinguishing WTs from MTs was 0.716, 0.709, and 0.759, respectively. The sensitivity and specificity at an optimal SIR threshold were 61.8% and 82.4%, 55.9% and 82.4%, and 64.7% and 86.8%, respectively. CONCLUSION: SIR(P), SIR(C), and SIR(F) on T2-weighted MR images had high diagnostic efficiency for differentiating between PAs and WTs, while SIR(P) and SIR(C) for differentiating between PAs and MTs, and SIR(F) for differentiating between WTs and MTs had relatively high diagnostic efficiency.

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