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Utilization of Domain-Knowledge for Simplicity and Comprehensibility in Predictive Modeling of Alzheimer's Disease

机译:域名知识用于阿尔茨海默病预测建模的简单性和可理解性

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Positron Emission Tomography scans are a promising source of information for early diagnosis of Alzheimer's disease. However, such neuroimaging procedures usually generate high-dimensional data. This complicates statistical analysis and modeling, resulting in high computational complexity and typically more complicated models. However, the utilization of domain-knowledge can reduce the complexity and promote simpler models. In this study, we investigate Gaussian processes, which may incorporate domain-knowledge, for predictive modeling of Alzheimer's disease. This study uses features extracted from PET imagery by 3D Stereotactic Surface Projection. Since the number of features can be high even after applying prior knowledge, we examine the benefits of a correlation-based feature selection method. Feature selection is desirable as it enables the detection of metabolic abnormalities that only span certain portions of the anatomical regions. Our proposed utilization of Gaussian processes is superior to the alternative (Automatic Relevance Determination), resulting in more accurate diagnosis with less computational effort.
机译:正电子排放断层扫描扫描是早期诊断阿尔茨海默病的信息。然而,这种神经影像过程通常会产生高维数据。这使统计分析和建模复杂化,导致高计算复杂性和通常更复杂的模型。然而,域名知识的利用可以降低复杂性并促进更简单的模型。在这项研究中,我们调查了可以纳入的高斯进程,该过程可以纳入地域知识,以便于阿尔茨海默病的预测建模。本研究使用3D立体定向表面投影从PET图像中提取的功能。由于即使在应用先前知识之后,功能的数量也很高,因此我们研究了基于相关的特征选择方法的好处。特征选择是可取的,因为它能够检测仅跨越解剖区域的某些部分的代谢异常。我们拟议的高斯工艺利用优于替代(自动相关性确定),导致更准确的诊断,较少的计算努力。

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