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A novel disease severity prediction scheme via big pair-wise ranking and learning techniques using image-based personal clinical data

机译:通过使用基于图像的个人临床数据的大配对排名和学习技术的新型疾病严重程度预测方案

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摘要

Disease severity prediction is essential in clinical diagnosis nowadays, as correct understandings of the onset and progression of disease are priceless in treatment planning. In this study, dementia disease, one of the most severe non-communicable diseases worldwide, is focused. A novel dementia disease severity prediction scheme is proposed using new big ranking and learning techniques. To be specific, arterial spin labeling, an emerging functional-magnetic resonance imaging technique, is adopted to provide image-based clinical data. There are two steps composed of the whole scheme. First, a single-pixel based method is presented to correct the partial volume effect in arterial spin labeling images. The advantage of this method is that, problems of blurring and brain detail loss can be well tackled. Second, novel big pair-wise ranking and learning techniques is proposed to realize the dementia disease severity prediction task using arterial spin labeling images after partial volume effects correction. Extensive experiments using a big database composed of images acquired from 350 real demented patients are carried out with several conventional methods being compared. Comprehensive statistical analysis is performed and it suggests that the new scheme is promising in dementia disease severity prediction.
机译:由于对疾病的发作和进展的正确理解在治疗计划中是无价的,因此疾病严重程度的预测在当今的临床诊断中至关重要。在这项研究中,痴呆症是全世界最严重的非传染性疾病之一。提出了一种新的痴呆症疾病严重程度预测方案,该方案采用了新的大分类和学习技术。具体而言,采用动脉自旋标记(一种新兴的功能性磁共振成像技术)来提供基于图像的临床数据。整个方案分为两个步骤。首先,提出了一种基于单像素的方法来校正动脉旋转标记图像中的局部体积效应。这种方法的优点是可以很好地解决模糊和脑部细节丢失的问题。其次,提出了新颖的大两两排序和学习技术,以通过在局部容积效应校正后使用动脉自旋标记图像来实现痴呆症疾病严重程度的预测任务。使用大型数据库进行了广泛的实验,其中包括从350名真实痴呆患者那里获取的图像,并与几种常规方法进行了比较。进行了全面的统计分析,它表明新方案有望在痴呆症疾病严重程度预测中发挥作用。

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