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基于体素的多参数扩散张量图像聚类成像用于预测脑膜瘤的分级和增殖活性。

Voxel-based clustered imaging by multiparameter diffusion tensor images for predicting the grade and proliferative activity of meningioma.

作者信息

Takahashi Yuki, Oishi Naoya, Yamao Yukihiro, Kunieda Takeharu, Kikuchi Takayuki, Fukuyama Hidenao, Miyamoto Susumu, Arakawa Yoshiki

机构信息

Department of Neurosurgery, Kyoto University Graduate School of Medicine, Kyoto, Japan.

Human Brain Research Center, Kyoto University Graduate School of Medicine, Kyoto, Japan.

出版信息

Brain Behav. 2023 Oct;13(10):e3201. doi: 10.1002/brb3.3201. Epub 2023 Aug 29.

Abstract

INTRODUCTION

Meningiomas are the most common primary central nervous system tumors. Predicting the grade and proliferative activity of meningiomas would influence therapeutic strategies. We aimed to apply the multiple parameters from preoperative diffusion tensor images for predicting meningioma grade and proliferative activity.

METHODS

Nineteen patients with low-grade meningiomas and eight with high-grade meningiomas were included. For the prediction of proliferative activity, the patients were divided into two groups: Ki-67 monoclonal antibody labeling index (MIB-1 LI) < 5% (lower MIB-1 LI group; n = 18) and MIB-1 LI ≥ 5% (higher MIB-1 LI group; n = 9). Six features, diffusion-weighted imaging, fractional anisotropy, mean, axial, and radial diffusivities, and raw T2 signal with no diffusion weighting, were extracted as multiple parameters from diffusion tensor imaging. The two-level clustering approach for a self-organizing map followed by the K-means algorithm was applied to cluster a large number of input vectors with the six features. We also validated whether the diffusion tensor-based clustered image (DTcI) was helpful for predicting preoperative meningioma grade or proliferative activity.

RESULTS

The sensitivity, specificity, accuracy, and area under the curve of receiver operating characteristic curves from the 16-class DTcIs for differentiating high- and low-grade meningiomas were 0.870, 0.901, 0.891, and 0.959, and those from the 10-class DTcIs for differentiating higher and lower MIB-1 LIs were 0.508, 0.770, 0.683, and 0.694, respectively. The log-ratio values of class numbers 13, 14, 15, and 16 were significantly higher in high-grade meningiomas than in low-grade meningiomas (p < .001). With regard to MIB-1 LIs, the log-ratio values of class numbers 8, 9, and 10 were higher in meningiomas with higher MIB-1 groups (p < .05).

CONCLUSION

The multiple diffusion tensor imaging-based parameters from the voxel-based DTcIs can help differentiate between low- and high-grade meningiomas and between lower and higher proliferative activities.

摘要

引言

脑膜瘤是最常见的原发性中枢神经系统肿瘤。预测脑膜瘤的分级和增殖活性会影响治疗策略。我们旨在应用术前扩散张量图像的多个参数来预测脑膜瘤分级和增殖活性。

方法

纳入19例低级别脑膜瘤患者和8例高级别脑膜瘤患者。为预测增殖活性,将患者分为两组:Ki-67单克隆抗体标记指数(MIB-1 LI)<5%(低MIB-1 LI组;n = 18)和MIB-1 LI≥5%(高MIB-1 LI组;n = 9)。从扩散张量成像中提取六个特征,即扩散加权成像、分数各向异性、平均扩散率、轴向扩散率、径向扩散率以及无扩散加权的原始T2信号作为多个参数。采用自组织映射的两级聚类方法结合K均值算法对具有这六个特征的大量输入向量进行聚类。我们还验证了基于扩散张量的聚类图像(DTcI)是否有助于预测术前脑膜瘤分级或增殖活性。

结果

用于区分高级别和低级别脑膜瘤的16类DTcI的受试者工作特征曲线的灵敏度、特异性、准确性和曲线下面积分别为0.870、0.901、0.891和0.959,用于区分高MIB-1 LI组和低MIB-1 LI组的10类DTcI的相应值分别为0.508、0.770、0.683和0.694。高级别脑膜瘤中类别13、14、15和16的对数比值显著高于低级别脑膜瘤(p <.001)。关于MIB-1 LI,高MIB-1组的脑膜瘤中类别8、9和10的对数比值更高(p <.05)。

结论

基于体素的DTcI的多个扩散张量成像参数有助于区分低级别和高级别脑膜瘤以及较低和较高的增殖活性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8984/10570481/14e0e4bdf7a8/BRB3-13-e3201-g004.jpg

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