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Texture analysis of hippocampus for epilepsy

机译:癫痫海马纹理分析

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This paper presents our recent study to evaluate how effectively the image texture information within the hippocampus structure can help the physicians to determine the candidates for epilepsy surgery. First we segment the hippocampus from T1-weighted images using our newly developed knowledge-based segmentation method. To extract the texture features we use multiwavelet, wavelet, and wavelet packet transforms. We calculate the energy and entropy features on each sub-band obtained by the wavelet decomposition. These texture features can be used by themselves or along with other features such as shape and average intensity to classify the hippocampi. The features are calculated on the T1-weighted and FLAIR MR images. Using these features, a clustering algorithm is applied to classify each hippocampus. To find the optimal basis, we use several different bases for wavelet and multiwavelet transforms, and compare the final classification performances, which is evaluated by correct classification rate (CCR). We use MRI of 14 epileptic patients along with their EEG results in our study. We use the pre-operative MR images of the patients who have akeady been determined as candidates for an epilepsy surgery using the gold standard (more costly and painful) methods of EEG phase II study. Experimental results show that the texture features may predict the candidacy for epilepsy surgery. If successful in large population studies, the proposed non-invasive method can replace invasive and costly EEG studies.
机译:本文介绍了我们最近的研究,以评估海马结构内的图像纹理信息有效,可以帮助医生确定癫痫手术的候选者。首先,我们使用新开发的知识的分段方法将海马从T1加权图像分段。要提取纹理功能,我们使用多小波,小波和小波包变换。我们计算通过小波分解获得的每个子带上的能量和熵特征。这些纹理特征可以自身使用或以及其他特征,例如形状和平均强度,以分类海马。该特征是在T1加权和Flair MR图像上计算的。使用这些功能,应用群集算法来分类每个海马。为了找到最佳基础,我们对小波和多灯泡变换使用几个不同的基础,并比较了通过正确分类率(CCR)评估的最终分类性能。我们使用14名癫痫患者的MRI以及我们的脑电图导致我们的研究。我们使用患者的患者的患者预先操作性患者MR图像,该患者使用eeg期II研究的金标准(更昂贵且痛苦)方法(更昂贵和痛苦)方法作为癫痫手术的候选者。实验结果表明,纹理特征可能预测癫痫手术的候选性。如果在人口大量研究中成功,所提出的非侵入性方法可以取代侵入性和昂贵的脑电图。

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