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A supervised framework with intensity subtraction and deformation field features for the detection of new T2-w lesions in multiple sclerosis

机译:具有强度减和变形场特征的监督框架,用于检测多发性硬化症中新的T2-w病变

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Introduction Longitudinal magnetic resonance imaging (MRI) analysis has an important role in multiple sclerosis diagnosis and follow-up. The presence of new T2-w lesions on brain MRI scans is considered a prognostic and predictive biomarker for the disease. In this study, we propose a supervised approach for detecting new T2-w lesions using features from image intensities, subtraction values, and deformation fields (DF). Methods One year apart multi-channel brain MRI scans were obtained for 60 patients, 36 of them with new T2-w lesions. Images from both temporal points were preprocessed and co-registered. Afterwards, they were registered using multi-resolution affine registration, allowing their subtraction. In particular, the DFs between both images were computed with the Demons non-rigid registration algorithm. Afterwards, a logistic regression model was trained with features from image intensities, subtraction values, and DF operators. We evaluated the performance of the model following a leave-one-out cross-validation scheme. Results In terms of detection, we obtained a mean Dice similarity coefficient of 0.77 with a true-positive rate of 74.30% and a false-positive detection rate of 11.86%. In terms of segmentation, we obtained a mean Dice similarity coefficient of 0.56. The performance of our model was significantly higher than state-of-the-art methods. Conclusions The performance of the proposed method shows the benefits of using DF operators as features to train a supervised learning model. Compared to other methods, the proposed model decreases the number of false-positives while increasing the number of true-positives, which is relevant for clinical settings. Highlights ? A new framework for detecting new T2-w lesions in multiple sclerosis is proposed. ? We train logistic regression classifier with subtraction and deformation features. ? We analyze the effect of deformation field operators on detecting new T2-w lesions. ? We show an increase in the accuracy due to the addition of deformation fields. ? The proposed model decreases false-positives while increasing true-positives.
机译:简介纵向磁共振成像(MRI)分析在多发性硬化症的诊断和随访中具有重要作用。脑部MRI扫描发现新的T2-w病变被认为是该病的预后和预测性生物标志物。在这项研究中,我们提出了一种使用图像强度,减值和变形场(DF)的特征检测新的T2-w病变的监督方法。方法对60例患者进行为期一年的多通道脑MRI扫描,其中36例患有新的T2-w病变。来自两个时间点的图像都经过了预处理和共同配准。之后,使用多分辨率仿射配准对它们进行配准,从而允许相减。特别是,两个图像之间的DF是使用Demons非刚性配准算法计算的。之后,使用图像强度,减法值和DF运算符的特征训练了逻辑回归模型。我们按照留一法交叉验证方案评估了模型的性能。结果在检测方面,我们获得的平均Dice相似系数为0.77,真实阳性率为74.30%,错误阳性检出率为11.86%。就细分而言,我们获得的平均Dice相似系数为0.56。我们模型的性能显着高于最新方法。结论所提出方法的性能显示了使用DF算子作为特征来训练监督学习模型的好处。与其他方法相比,该模型减少了假阳性的数量,同时增加了真阳性的数量,这与临床环境有关。强调 ?提出了一种检测多发性硬化中新的T2-w病变的新框架。 ?我们训练具有减法和变形特征的逻辑回归分类器。 ?我们分析了变形场算子对检测新的T2-w病变的影响。 ?由于增加了变形场,我们显示出精度的提高。 ?提出的模型减少了假阳性,同时增加了真阳性。

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