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首页> 外文期刊>Integrative Biology: quantitative biosciences from nano to macro >Improving the classification of brain tumors in mice with perturbation enhanced (PE)-MRSI
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Improving the classification of brain tumors in mice with perturbation enhanced (PE)-MRSI

机译:增强摄动增强(PE)-MRSI改善小鼠脑肿瘤的分类

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摘要

Classifiers based on statistical pattern recognition analysis of MRSI data are becoming important tools for the non-invasive diagnosis of human brain tumors. Here we investigate the potential interest of perturbation-enhanced MRSI (PE-MRSI), in this case acute hyperglycemia, for improving the discrimination between mouse brain MRS patterns of glioblastoma multiforme (GBM), oligodendroglioma (ODG), and non-tumor brain parenchyma (NT). Six GBM-bearing mice and three ODG-bearing mice were scanned at 7 Tesla by PRESS-MRSI with 12 and 136 ms echo-time, during euglycemia (Eug) and also during induced acute hyperglycemia (Hyp), generating altogether four datasets per animal (echo time + glycemic condition): 12Eug, 136Eug, 12Hyp, and 136Hyp. For classifier development all spectral vectors (spv) selected from the MRSI matrix were unit length normalized (UL2) and used either as a training set (76 GBM spv, four mice; 70 ODG spv, two mice; 54 NT spv) or as an independent testing set (61 GBM spv, two mice; 31 ODG, one mouse; 23 NT spv). All Fisher's LDA classifiers obtained were evaluated as far as their descriptive performance-correctly classified cases of the training set (bootstrapping)-and predictive accuracy-balanced error rate of independent testing set classification. MRSI-based classifiers at 12Hyp were consistently more efficient in separating GBM, ODG, and NT regions, with overall accuracies always >80% and up to 95-96%; remaining classifiers were within the 48-85% range. This was also confirmed by user-independent selection of training and testing sets, using leave-one-out (LOO). This highlights the potential interest of perturbation-enhanced MRSI protocols for improving the non-invasive characterization of preclinical brain tumors.
机译:基于MRSI数据的统计模式识别分析的分类器正成为非侵入性诊断人脑肿瘤的重要工具。在这里,我们研究了扰动增强型MRSI(PE-MRSI)(在这种情况下为急性高血糖症)对于改善多形性胶质母细胞瘤(GBM),少突胶质细胞瘤(ODG)和非肿瘤性脑实质的小鼠脑MRS模式之间的区别的潜在兴趣(NT)。在正常血糖(Eug)以及诱发急性高血糖(Hyp)期间,通过PRESS-MRSI在12和136 ms的回波时间下,对7只特斯拉的小鼠和3只ODG的小鼠进行了扫描,回波时间分别为12和136 ms,每只动物共生成四个数据集(回波时间+血糖状况):12Eug,136Eug,12Hyp和136Hyp。为了进行分类器开发,将从MRSI矩阵中选择的所有频谱向量(spv)进行单位长度归一化(UL2),并用作训练集(76 GBM spv,四只小鼠; 70 ODG spv,两只小鼠; 54 NT spv)或用作独立测试集(61 GBM spv,两只小鼠; 31 ODG,一只小鼠; 23 NT spv)。就获得的所有Fisher的LDA分类器进行评估,包括描述性性能,训练集(自举)的正确分类情况以及独立测试集分类的预测准确度-平衡错误率。在12Hyp上基于MRSI的分类器在分离GBM,ODG和NT区域方面一直效率更高,总精度始终> 80%,最高可达95-96%;其余的分类器在48-85%的范围内。使用留一法(LOO),用户独立选择培训和测试集也证实了这一点。这突显了扰动增强型MRSI协议对改善临床前脑肿瘤的非侵入性表征的潜在兴趣。

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