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Classification of Active Multiple Sclerosis Lesions in MRI Without the Aid of Gadolinium-Based Contrast Using Textural and Enhanced Features from FLAIR Images

机译:MRI中活性多发性硬化病变的分类,毫无基于Gadolinium的对比度使用Flair Image的增强特征的对比度

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Multiple sclerosis (MS) is an autoimmune demyelinating disease that affects one's central nervous system. The disease has a number lesion states. One of them is known as active, or enhancing, and indicates that a lesion is under an inflammatory condition. This specific case is of interest to radiologists since it is commonly associated with the period of time a patient suffers most from the effects of MS. To identify which lesions are active, a Gadolinium-based contrast is injected in the patient prior to a magnetic resonance imaging procedure. The properties of the contrast medium allow it to enhance active lesions, making them distinguishable from nonactive ones in T1-w images. However, studies from various research groups in recent years indicate that Gadolinium-based contrasts tend to accumulate in the body after a number of injections. Since a comprehensive understanding of this accumulation is not yet available, medical agencies around the world have been restricting its usage to cases only where it is absolutely necessary. In this work we propose a supervised algorithm to distinguish active from nonactive lesions in FLAIR images, thus eliminating the need for contrast injections altogether. The classification task was performed using textural and enhanced features as input to the XGBoost classifier on a voxel level. Our database comprised 54 MS patients (33 with active lesions and 21 with nonactive ones) with a total of 22 textural and enhanced features obtained from Run Length and Gray Level Co-occurrence Matrices. The average precision, recall and Fl-score results in a 6-fold cross-validation for active and nonactive classes were 0.892, 0.968, 0.924 and 0.994, 0.987, 0.991, respectively. Moreover, from a lesion perspective, the algorithm misclassified only 3 active lesions out of 157. These results indicate our tool can be used by physicians to get information about active MS lesions in FLAIR images without using any kind of contrast, thus improving one's health and also reducing the cost of MRI procedures for MS patients.
机译:多发性硬化(MS)是一种自身免疫性脱髓鞘疾病,其影响一个人的中枢神经系统。本病有许多病变状态。其中之一是被称为活性,或增强,并且指示病变是一种炎症性的条件下。这种特定的情况下感兴趣的是,放射科医生,因为它通常与时间段的患者患有MS的影响最为相关。识别哪些病变是活动的,基于钆的对比在患者的磁共振成像过程之前喷射。造影剂的特性使其能够增强活动性病灶,使他们从非能动者区分在T1-W的图像。然而,从近年来各种研究小组的研究表明,基于钆对比往往会在体内蓄积了许多注射后。由于这堆积的一个全面的了解尚不可用,世界各地的医疗机构已经限制其使用的病例只有在绝对必要。在这项工作中,我们提出了一个监督的算法,从非活动性病变的FLAIR图像区分活动,从而消除了注射造影剂完全的需要。使用质地和增强的特性作为输入提供给在一个体素水平XGBoost分类器进行分级的任务。我们的数据库包括54名MS患者(33活动性病变和21与非活性的),共22质地的,并从运行长度和灰度共生矩阵获得的增强功能。平均精度,召回和F1-评分结果在6倍交叉验证用于活性和非活性的类是0.892,0.968,0.924分别和0.994,0.987,0.991,。此外,从病变的角度来看,算法错误分类只有3个活动性病变出157这些结果表明我们的工具可以由医师来获取有关FLAIR图像活跃MS损伤信息,而无需使用任何类型的对比度,从而提高人们的健康和也减少了MRI程序MS患者的费用。

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