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TAPAS: A Thresholding Approach for Probability Map Automatic Segmentation in Multiple Sclerosis

机译:TAPAS:在多发性硬化症中概率图自动分割的阈值方法

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摘要

Total brain white matter lesion (WML) volume is the most widely established magnetic resonance imaging (MRI) outcome measure in studies of multiple sclerosis (MS). To estimate WML volume, there are a number of automatic segmentation methods available, yet manual delineation remains the gold standard approach. Automatic approaches often yield a probability map to which a threshold is applied to create lesion segmentation masks. Unfortunately, few approaches systematically determine the threshold employed; many methods use a manually selected threshold, thus introducing human error and bias into the automated procedure. In this study, we propose and validate an automatic thresholding algorithm, Thresholding Approach for Probability Map Automatic Segmentation in Multiple Sclerosis (TAPAS), to obtain subject-specific threshold estimates for probability map automatic segmentation of T2-weighted (T2) hyperintense WMLs. Using multimodal MRI, the proposed method applies an automatic segmentation algorithm to obtain probability maps. We obtain the true subject-specific threshold that maximizes the Sørensen-Dice similarity coefficient (DSC). Then the subject-specific thresholds are modeled on a naive estimate of volume using a generalized additive model. Applying this model, we predict a subject-specific threshold in data not used for training. We ran a Monte Carlo-resampled split-sample cross-validation (100 validation sets) using two data sets: the first obtained from the Johns Hopkins Hospital (JHH) on a Philips 3 Tesla (3T) scanner (n = 94) and a second collected at the Brigham and Women's Hospital (BWH) using a Siemens 3T scanner (n = 40). By means of the proposed automated technique, in the JHH data we found an average reduction in subject-level absolute error of 0.1 mL per one mL increase in manual volume. Using Bland-Altman analysis, we found that volumetric bias associated with group-level thresholding was mitigated when applying TAPAS. The BWH data showed similar absolute error estimates using group-level thresholding or TAPAS likely since Bland-Altman analyses indicated no systematic biases associated with group or TAPAS volume estimates. The current study presents the first validated fully automated method for subject-specific threshold prediction to segment brain lesions.
机译:在多发性硬化症(MS)研究中,总脑白质病变(WML)量是建立最广泛的磁共振成像(MRI)结果指标。为了估计WML量,可以使用多种自动分割方法,但是手动划界仍然是金标准方法。自动方法通常会生成一个概率图,将阈值应用于该概率图以创建病变分割蒙版。不幸的是,很少有方法可以系统地确定所采用的阈值。许多方法使用手动选择的阈值,从而将人为错误和偏差引入自动化过程。在这项研究中,我们提出并验证了自动阈值化算法,即多发性硬化症概率图自动分割的阈值法(TAPAS),以获得针对特定主题的阈值估计,用于T2加权(T2)高强度WML的概率图自动分割。利用多模态MRI,该方法应用了自动分割算法来获得概率图。我们获得了使Sørensen-Dice相似系数(DSC)最大化的真正的特定受试者阈值。然后,使用通用的加性模型,在天真的体积估计值上建模特定于对象的阈值。应用此模型,我们可以在未用于训练的数据中预测特定于受试者的阈值。我们使用两个数据集进行了蒙特卡洛重采样的拆分样本交叉验证(100个验证集):第一个是在Philips 3 Tesla(3T)扫描仪(n = 94)上从约翰霍普金斯医院(JHH)获得的第二次使用西门子3T扫描仪(n = 40)在布里格姆妇女医院(BWH)采集。通过提出的自动化技术,在JHH数据中,我们发现每增加1 mL手动体积,受试者水平的绝对误差平均降低0.1 mL。使用Bland-Altman分析,我们发现在应用TAPAS时,可减轻与组水平阈值相关的体积偏差。 BWH数据显示使用组水平阈值法或TAPAS进行的绝对误差估计相似,因为Bland-Altman分析表明没有与组或TAPAS量估计相关的系统偏差。当前的研究提出了第一个经过验证的完全自动化的方法,用于对受试者的阈值进行预测以分割脑部病变。

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