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Better Diffusion Segmentation in Acute Ischemic Stroke Through Automatic Tree Learning Anomaly Segmentation

机译:通过自动树学习异常分割在急性缺血性卒中中更好的扩散分割

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摘要

Stroke is the second most common cause of death worldwide, responsible for 6.24 million deaths in 2015 (about 11% of all deaths). Three out of four stroke survivors suffer long term disability, as many cannot return to their prior employment or live independently. Eighty-seven percent of strokes are ischemic. As an increasing volume of ischemic brain tissue proceeds to permanent infarction in the hours following the onset, immediate treatment is pivotal to increase the likelihood of good clinical outcome for the patient. Triaging stroke patients for active therapy requires assessment of the volume of salvageable and irreversible damaged tissue, respectively. With Magnetic Resonance Imaging (MRI), diffusion-weighted imaging is commonly used to assess the extent of permanently damaged tissue, the core lesion. To speed up and standardize decision-making in acute stroke management we present a fully automated algorithm, ATLAS, for delineating the core lesion. We compare performance to widely used threshold based methodology, as well as a recently proposed state-of-the-art algorithm: COMBAT Stroke. ATLAS is a machine learning algorithm trained to match the lesion delineation by human experts. The algorithm utilizes decision trees along with spatial pre- and post-regularization to outline the lesion. As input data the algorithm takes images from 108 patients with acute anterior circulation stroke from the I-Know multicenter study. We divided the data into training and test data using leave-one-out cross validation to assess performance in independent patients. Performance was quantified by the Dice index. The median Dice coefficient of ATLAS algorithm was 0.6122, which was significantly higher than COMBAT Stroke, with a median Dice coefficient of 0.5636 (p < 0.0001) and the best possible performing methods based on thresholding of the diffusion weighted images (median Dice coefficient: 0.3951) or the apparent diffusion coefficient (median Dice coefficeint: 0.2839). Furthermore, the volume of the ATLAS segmentation was compared to the volume of the expert segmentation, yielding a standard deviation of the residuals of 10.25 ml compared to 17.53 ml for COMBAT Stroke. Since accurate quantification of the volume of permanently damaged tissue is essential in acute stroke patients, ATLAS may contribute to more optimal patient triaging for active or supportive therapy.
机译:中风是全球第二大常见死亡原因,2015年造成624万人死亡(约占所有死亡的11%)。四分之一的中风幸存者患有长期残疾,因为许多人无法重返以前的工作或独立生活。中风的百分之八十七是缺血性的。随着发病后数小时内缺血性脑组织体积的增加,直至永久性梗塞,立即治疗对于提高患者获得良好临床结果的可能性至关重要。对中风患者进行有效治疗的分类需要分别评估可挽救和不可逆受损组织的数量。借助磁共振成像(MRI),弥散加权成像通常用于评估永久性受损组织(核心病变)的程度。为了加快和规范急性卒中管理中的决策制定,我们提出了一种自动算法ATLAS,用于描述核心病变。我们将性能与广泛使用的基于阈值的方法以及最近提出的最新算法COMBAT Stroke进行了比较。 ATLAS是一种机器学习算法,经过培训,可以匹配人类专家对病变的轮廓。该算法利用决策树以及空间前和后正则化来概述病变。作为输入数据,该算法从I-Know多中心研究中获取了108例急性前循环卒中患者的图像。我们使用留一法交叉验证将数据分为训练和测试数据,以评估独立患者的表现。性能通过Dice指数进行量化。 ATLAS算法的中值Dice系数为0.6122,显着高于COMBAT Stroke,中值Dice系数为0.5636(p <0.0001),并且是基于扩散加权图像阈值的最佳性能方法(中值Dice系数:0.3951) )或表观扩散系数(中位数Dice coefficeint:0.2839)。此外,将ATLAS分割的体积与专家分割的体积进行了比较,与COMBAT Stroke的17.53 ml相比,残渣的标准差为10.25 ml。由于对急性中风患者至关重要的是永久性受损组织的准确定量,因此ATLAS可能有助于对患者进行积极或支持性治疗的最佳分类。

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