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Metrics and textural features of MRI diffusion to improve classification of pediatric posterior fossa tumors

机译:MRI扩散的度量和纹理特征可改善小儿后颅窝肿瘤的分类

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摘要

BACKGROUND AND PURPOSE: Qualitative radiologic MR imaging review affords limited differentiation among types of pediatric posterior fossa brain tumors and cannot detect histologic or molecular subtypes, which could help to stratify treatment. This study aimed to improve current posterior fossa discrimination of histologic tumor type by using support vector machine classifiers on quantitative MR imaging features.\udMATERIALS AND METHODS: This retrospective study included preoperative MRI in 40 children with posterior fossa tumors (17 medulloblastomas, 16 pilocytic astrocytomas, and 7 ependymomas). Shape, histogram, and textural features were computed from contrast-enhanced T2WI and T1WI and diffusivity (ADC) maps. Combinations of features were used to train tumor-type-specific classifiers for medulloblastoma, pilocytic astrocytoma, and ependymoma types in separation and as a joint posterior fossa classifier. A tumor-subtype classifier was also produced for classic medulloblastoma. The performance of different classifiers was assessed and compared by using randomly selected subsets of training and test data.\udRESULTS: ADC histogram features (25th and 75th percentiles and skewness) yielded the best classification of tumor type (on average >95.8% of medulloblastomas, >96.9% of pilocytic astrocytomas, and >94.3% of ependymomas by using 8 training samples). The resulting joint posterior fossa classifier correctly assigned >91.4% of the posterior fossa tumors. For subtype classification, 89.4% of classic medulloblastomas were correctly classified on the basis of ADC texture features extracted from the Gray-Level Co-Occurence Matrix.\udCONCLUSIONS: Support vector machine–based classifiers using ADC histogram features yielded very good discrimination among pediatric posterior fossa tumor types, and ADC textural features show promise for further subtype discrimination. These findings suggest an added diagnostic value of quantitative feature analysis of diffusion MR imaging in pediatric neuro-oncology.
机译:背景与目的:放射成像的定性影像学检查在小儿后颅窝脑肿瘤的类型之间提供了有限的区分,并且无法检测组织学或分子亚型,这可能有助于对治疗进行分层。这项研究旨在通过使用支持向量机分类器对定量MR影像学特征进行改进,以改善当前组织病理学类型的后颅窝鉴别。 ,以及7个室管膜瘤)。形状,直方图和纹理特征是通过对比增强的T2WI和T1WI以及扩散率(ADC)映射来计算的。特征的组合被用来训练针对髓母细胞瘤,毛细胞星形细胞瘤和室管膜瘤类型的肿瘤类型特异性分类器,并作为联合后颅窝分类器。还为经典的髓母细胞瘤生产了肿瘤亚型分类器。通过使用随机选择的训练和测试数据子集来评估和比较不同分类器的性能。\ udRESULTS:ADC直方图特征(第25和第75个百分位数和偏度)产生了最佳的肿瘤类型分类(平均> 95.8%的髓母细胞瘤,通过使用8个训练样本,> 96.9%的毛细胞星形细胞瘤和> 94.3%的室间隔瘤。所产生的关节后颅窝分类器正确分配了> 91.4%的后颅窝肿瘤。对于亚型分类,基于从灰度共生矩阵中提取的ADC纹理特征,正确分类了89.4%的经典髓母细胞瘤。\ ud结论:基于支持向量机的分类器使用ADC直方图特征可很好地区分小儿后牙窝肿瘤类型和ADC纹理特征显示出进一步亚型鉴别的希望。这些发现表明,在儿科神经肿瘤学中,弥散MR成像定量特征分析的附加诊断价值。

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