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Spatial Nonparametric Mixed-Effects Model with Spatial-Varying Coefficients for Analysis of Populations

机译:具有空间变化系数的空间非参数混合效应模型用于人口分析

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摘要

Voxel-wise comparisons have been largely used in the analysis of populations to identify biomarkers for pathologies, disease progression, or to predict a treatment outcome. On the basis of a good interindividual spatial alignment, 3D maps are produced, allowing to localise regions where significant differences between groups exist. However, these techniques have received some criticism as they rely on conditions wich are not always met. Firstly, the results may be affected by misregistrations; secondly, the statistics behind the models assumes normally distributed data; finally, because of the size of the images, some strategies must be used to control for the rate of false detection. In this paper, we propose a spatial (3D) nonparametric mixed-effects model for population analysis. It overcomes some of the issues of classical voxel-based approaches, namely robustness to false positive rates, misregistrations and large variances between groups. Examples on numerical phantoms and real clinical data illustrate the feasiblity of the approach. An example of application within the development of voxel-wise predictive models of rectal toxicity in prostate cancer radiotherapy is presented. Results demonstrate an improved sensitivity and reliability for group analysis compared with standard voxel-wise methods and open the way for potential applications in computational anatomy.
机译:基于体素的比较已广泛用于人群分析,以确定病理,疾病进展或预测治疗结果的生物标志物。在良好的个体间空间对齐的基础上,生成3D地图,从而可以定位组之间存在明显差异的区域。但是,由于这些技术并不总是满足于依赖其所处的条件,因此受到了一些批评。首先,结果可能会受到注册错误的影响;其次,模型背后的统计数据假设数据呈正态分布;最后,由于图像的大小,必须使用一些策略来控制错误检测的速率。在本文中,我们提出了用于人口分析的空间(3D)非参数混合效应模型。它克服了传统基于体素的方法的一些问题,即对误报率的鲁棒性,套错和组之间的较大差异。有关数字体模和实际临床数据的示例说明了该方法的可行性。提出了在前列腺癌放疗中直肠毒性的体素明智预测模型开发中的应用实例。结果表明,与标准体素方法相比,组分析具有更高的灵敏度和可靠性,并为在计算解剖学中的潜在应用开辟了道路。

著录项

  • 来源
    《Machine learning in medical imaging》|2011年|p.142-150|共9页
  • 会议地点 Toronto(CA);Toronto(CA);Toronto(CA);Toronto(CA)
  • 作者单位

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France,School of Statistics, Universidad Nacional de Colombia, Campus Medellin, Colombia;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France;

    School of Statistics, Universidad Nacional de Colombia, Campus Medellin, Colombia;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France;

    INSERM, U 642, Rennes, F-35000, France,Universite de Rennes 1, LTSI, F-35000, France,Departement de Radiotherapie, Centre Eugene Marquis, Rennes, F-35000, France;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医用物理学;
  • 关键词

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