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首页> 外文期刊>NeuroImage >Accurate, robust, and automated longitudinal and cross-sectional brain change analysis.
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Accurate, robust, and automated longitudinal and cross-sectional brain change analysis.

机译:准确,可靠且自动化的纵向和横断面大脑变化分析。

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摘要

Quantitative measurement of brain size, shape, and temporal change (for example, in order to estimate atrophy) is increasingly important in biomedical image analysis applications. New methods of structural analysis attempt to improve robustness, accuracy, and extent of automation. A fully automated method of longitudinal (temporal change) analysis, SIENA, was presented previously. In this paper, improvements to this method are described, and also an extension of SIENA to a new method for cross-sectional (single time point) analysis. The methods are fully automated, robust, and accurate: 0.15% brain volume change error (longitudinal): 0.5-1% brain volume accuracy for single-time point (cross-sectional). A particular advantage is the relative insensitivity to differences in scanning parameters. The methods provide easy manual review of their output by the automatic production of summary images which show the results of the brain extraction, registration, tissue segmentation, and final atrophy estimation.
机译:在生物医学图像分析应用中,定量测量大脑的大小,形状和时间变化(例如,为了估计萎缩)变得越来越重要。结构分析的新方法试图提高鲁棒性,准确性和自动化程度。先前介绍了一种纵向(时间变化)分析的全自动方法,即SIENA。在本文中,描述了对该方法的改进,并且还将SIENA扩展为一种用于横截面(单个时间点)分析的新方法。该方法是完全自动化,可靠且准确的:0.15%的大脑体积变化误差(纵向):单时间点(横截面)的0.5-1%大脑体积精度。一个特别的优点是对扫描参数差异相对不敏感。这些方法通过自动生成摘要图像来提供对其输出的轻松手动检查,摘要图像显示了大脑提取,配准,组织分割和最终萎缩估计的结果。

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