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利用多模态 MRI 对泪腺肿瘤进行鉴别诊断:基于分类回归树(CART)的分析。

Differentiation of lacrimal gland tumors using the multi-model MRI: classification and regression tree (CART)-based analysis.

机构信息

Department of Ophthalmology, Eye and ENT Hospital of Fudan University, Shanghai, PR China.

NHC Key Laboratory of Myopia, Fudan University, Shanghai, PR China.

出版信息

Acta Radiol. 2022 Jul;63(7):923-932. doi: 10.1177/02841851211021039. Epub 2021 May 31.

Abstract

BACKGROUND

Little is known about the value of dynamic contrast-enhanced (DCE) in combination with diffusion-weighted imaging (DWI) for the differentiation of lacrimal gland tumors.

PURPOSE

To evaluate the ability of DCE and DWI in differentiating lacrimal gland tumors.

MATERIAL AND METHODS

DCE and DWI were performed in 72 patients with lacrimal gland tumors. Time-intensity curve (TIC) patterns were categorized as type A, type B, type C, and type D. Apparent diffusion coefficient (ADC) was measured on DWI. Then, the diagnostic effectiveness of TIC in conjunction with ADC was assessed using classification and regression tree (CART) analysis.

RESULTS

Type A tumors were all epithelial; they could be further separated into pleomorphic adenoma sand carcinomas. Type B tumors were all non-epithelial tumors, which could be further separated into benign inflammatory infiltrates (BIIs) and lymphomas. Type C tumors contained both carcinomas and non-epithelial tumors, which could be diagnosed into carcinomas, BIIs and lymphomas. Type D tumors were all PAs. The mean ADC of epithelial tumors was significantly higher than that of non-epithelial tumors, and the mean ADC values were significantly different between PAs and carcinomas. Besides, the mean ADC value of BIIs was higher than that of lymphomas. Therefore, the CART decision tree made by ADC and TIC had a predictive accuracy of 86.1%, differentiating lacrimal gland tumors effectively.

CONCLUSION

Combined DCE and DWI-MRI can efficiently differentiate lacrimal gland tumors which can be of help to ophthalmologists in the diagnosis and treatment of these tumors.

摘要

背景

关于动态对比增强(DCE)与弥散加权成像(DWI)联合用于泪腺肿瘤鉴别诊断的价值知之甚少。

目的

评估 DCE 和 DWI 区分泪腺肿瘤的能力。

材料与方法

对 72 例泪腺肿瘤患者进行 DCE 和 DWI 检查。将时间-强度曲线(TIC)模式分为 A、B、C 和 D 型。在 DWI 上测量表观弥散系数(ADC)。然后,使用分类回归树(CART)分析评估 TIC 与 ADC 联合的诊断效果。

结果

A型肿瘤均为上皮性,可进一步分为多形性腺瘤和癌;B 型肿瘤均为非上皮性肿瘤,可进一步分为良性炎症浸润(BII)和淋巴瘤;C 型肿瘤包含癌和非上皮性肿瘤,可诊断为癌、BII 和淋巴瘤;D 型肿瘤均为多形性腺瘤。上皮性肿瘤的平均 ADC 值明显高于非上皮性肿瘤,多形性腺瘤和癌的平均 ADC 值差异有统计学意义。此外,BII 的平均 ADC 值高于淋巴瘤。因此,ADC 和 TIC 构建的 CART 决策树具有 86.1%的预测准确率,可有效区分泪腺肿瘤。

结论

联合 DCE 和 DWI-MRI 可有效区分泪腺肿瘤,有助于眼科医生对这些肿瘤进行诊断和治疗。

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