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Texture Analysis of Corpus Callosum in Mild Traumatic Brain Injury Patients

机译:轻度颅脑损伤患者Call体的质构分析

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Texture analysis (TA) is a quantitative approach for characterizing subtle changes in magnetic resonance (MR) images of different tissues. The aim of this study was to detect changes in tissue of corpus callosum (CC) in mild traumatic brain injury (MTBI) patients by the means of TA.TA was performed in the sagittal Tl-weighted MR images of 42 MTBI patients, focusing on different segments of CC by using the tissue characterization software MaZda. Results were compared with the control group of ten healthy volunteers. The most discriminant texture features were identified with a combination of feature selection algorithms mutual information (MI), classification error probability combined with average correlation coefficients (POE+ACC) and Fisher coefficient. Linear discriminant analysis (LDA) and nonlinear discriminant analysis (NDA) were performed. Nearest-neighbor (1-NN) classification for LDA and artificial neural network (ANN) for NDA was used for tissue classification.The results revealed differences in the textures between the selected segments of CC in MTBI patients. There were also differences in the CC between healthy volunteers and MTBI patients. The best classification results between healthy volunteers and patients were achieved in the area of spleniutn of CC, with accuracy of 96% for the 1-NN classifier, and accuracy of 98 % for the ANN classifier.TA results revealed changes in the texture parameters of the segments of CC between healthy volunteers and MTBI patients and therefore may provide a novel additional tool for detecting subtle changes in CC tissue on MTBI, but evidently larger data is necessary to confirm the clinical value of TA in diagnosing MTBI.
机译:纹理分析(TA)是一种定量方法,用于表征不同组织的磁共振(MR)图像中的细微变化。这项研究的目的是通过TA技术检测轻度颅脑损伤(MTBI)患者的call体(CC)组织的变化。 通过使用组织表征软件MaZda在42例MTBI患者的矢状T1加权MR图像中进行了TA,重点是CC的不同部分。将结果与十名健康志愿者的对照组进行比较。通过特征选择算法互信息(MI),分类错误概率与平均相关系数(POE + ACC)和Fisher系数的组合来识别最有区别的纹理特征。进行线性判别分析(LDA)和非线性判别分析(NDA)。 LDA的最近邻(1-NN)分类和NDA的人工神经网络(ANN)用于组织分类。 结果显示,MTBI患者中CC的选定节段之间的质地差异。健康志愿者和MTBI患者之间的CC也有差异。健康志愿者和患者之间的最佳分类结果在CC脾脏区域获得,1-NN分类器的准确性为96%,ANN分类器的准确性为98%。 TA结果揭示了健康志愿者和MTBI患者之间CC片段的纹理参数的变化,因此可能为检测MTBI上CC组织的细微变化提供一种新颖的附加工具,但显然需要更大的数据来确认TA的临床价值诊断MTBI。

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