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Magnetic resonance imaging-based 3-dimensional fractal dimension and lacunarity analyses may predict the meningioma grade

机译:基于磁共振成像的三维分形尺寸和拉伸度分析可能预测脑膜瘤等级

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摘要

Objective To assess whether 3-dimensional (3D) fractal dimension (FD) and lacunarity features from MRI can predict the meningioma grade. Methods This retrospective study included 131 patients with meningiomas (98 low-grade, 33 high-grade) who underwent preoperative MRI with post-contrast T1-weighted imaging. The 3D FD and lacunarity parameters from the enhancing portion of the tumor were extracted by box-counting algorithms. Inter-rater reliability was assessed with the intraclass correlation coefficient (ICC). Additionally, conventional imaging features such as location, heterogeneous enhancement, capsular enhancement, and necrosis were assessed. Independent clinical and imaging risk factors for meningioma grade were investigated using multivariable logistic regression. The discriminative value of the prediction model with and without fractal features was evaluated. The relationship of fractal parameters with the mitosis count and Ki-67 labeling index was also assessed. Results The inter-reader reliability was excellent, with ICCs of 0.99 for FD and 0.97 for lacunarity. High-grade meningiomas had higher FD (p < 0.001) and higher lacunarity (p = 0.007) than low-grade meningiomas. In the multivariable logistic regression, the diagnostic performance of the model with clinical and conventional imaging features increased with 3D fractal features for predicting the meningioma grade, with AUCs of 0.78 and 0.84, respectively. The 3D FD showed significant correlations with both mitosis count and Ki-67 labeling index, and lacunarity showed a significant correlation with the Ki-67 labeling index (allpvalues < 0.05). Conclusion The 3D FD and lacunarity are higher in high-grade meningiomas and fractal analysis may be a useful imaging biomarker for predicting the meningioma grade.
机译:目的评估来自MRI的三维(3D)分形维数(FD)和腔隙性特征是否可以预测脑膜瘤等级。方法本回顾性研究包括131名脑膜瘤患者(98个低级,33个高档),他们接受了术前MRI,具有对比度的T1加权成像。通过盒计数算法提取来自肿瘤增强部分的3D FD和脉冲性参数。利用腹部相关系数(ICC)评估帧间间可靠性。另外,评估常规成像特征,例如位置,异构增强,胶囊增强和坏死。使用多变量逻辑回归研究了脑膜瘤等级的独立临床和成像风险因素。评估了预测模型的辨别值和没有分形特征的辨别值。还评估了分形参数与有丝分裂计数和KI-67标记指数的关系。结果读/互可靠性优异,FD为0.99的ICC和0.97,适用于花格术。高级脑膜瘤具有较高的FD(P <0.001),比低级脑膜瘤(P = 0.007)更高(P = 0.007)。在多变量的逻辑回归中,具有临床和常规成像特征的模型的诊断性能随3D分形特征而增加,用于预测脑膜瘤等级,分别为0.78和0.84。 3D FD显示出与有丝分裂计数和KI-67标记指数的显着相关性,并且术脉性与Ki-67标记指数(AllpValues <0.05)显示出显着的相关性。结论高档脑膜瘤3D和术后较高,分形分析可以是用于预测脑膜瘤等级的有用的成像生物标志物。

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