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Data-driven voxel-based analysis of brain PET images: Application of PCA and LASSO methods to visualize and quantify patterns of neurodegeneration

机译:基于数据的基于体素的大脑PET图像分析:PCA和LASSO方法在可视化和量化神经变性模式中的应用

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摘要

Spatial patterns of radiotracer binding in positron emission tomography (PET) images may convey information related to the disease topology. However, this information is not captured by the standard PET image analysis that quantifies the mean radiotracer uptake within a region of interest (ROI). On the other hand, spatial analyses that use more advanced radiomic features may be difficult to interpret. Here we propose an alternative data-driven, voxel-based approach to spatial pattern analysis in brain PET, which can be easily interpreted. We apply principal component analysis (PCA) to identify voxel covariance patterns, and optimally combine several patterns using the least absolute shrinkage and selection operator (LASSO). The resulting models predict clinical disease metrics from raw voxel values, allowing for inclusion of clinical covariates. The analysis is performed on high-resolution PET images from healthy controls and subjects affected by Parkinson’s disease (PD), acquired with a pre-synaptic and a post-synaptic dopaminergic PET tracer. We demonstrate that PCA identifies robust and tracer-specific binding patterns in sub-cortical brain structures; the patterns evolve as a function of disease progression. Principal component LASSO (PC-LASSO) models of clinical disease metrics achieve higher predictive accuracy compared to the mean tracer binding ratio (BR) alone: the cross-validated test mean squared error of adjusted disease duration (motor impairment score) was 16.3 ± 0.17 years2 (9.7 ± 0.15) with mean BR, versus 14.4 ± 0.18 years2 (8.9 ± 0.16) with PC-LASSO. We interpret the best-performing PC-LASSO models in the spatial sense and discuss them with reference to the PD pathology and somatotopic organization of the striatum. PC-LASSO is thus shown to be a useful method to analyze clinically-relevant tracer binding patterns, and to construct interpretable, imaging-based predictive models of clinical metrics.
机译:正电子发射断层扫描(PET)图像中放射性示踪剂结合的空间模式可能传达与疾病拓扑有关的信息。但是,该信息无法通过标准PET图像分析来捕获,该标准PET图像分析可以量化感兴趣区域(ROI)内的平均放射性示踪剂摄取。另一方面,使用更先进的放射学特征的空间分析可能难以解释。在这里,我们提出了一种可替代的数据驱动,基于体素的方法来进行大脑PET中的空间模式分析,该方法很容易解释。我们应用主成分分析(PCA)来识别体素协方差模式,并使用最小绝对收缩和选择算子(LASSO)来最佳组合几种模式。生成的模型根据原始体素值预测临床疾病指标,从而可以纳入临床协变量。该分析是通过健康对照和受帕金森氏病(PD)影响的受试者的高分辨率PET图像进行的,这些图像是通过突触前和突触后多巴胺能PET示踪剂采集的。我们证明了PCA可以识别皮质下大脑结构中的稳固和示踪剂特异性结合模式;这些模式随疾病进展而变化。与单独的平均示踪剂结合率(BR)相比,临床疾病指标的主要成分LASSO(PC-LASSO)模型可实现更高的预测准确性:调整后的疾病持续时间(运动障碍评分)的交叉验证测试均方误差为16.3±0.17平均BR的年 2 (9.7±0.15),而PC-LASSO则为14.4±0.18年的 2 (8.9±0.16)。我们在空间意义上解释性能最佳的PC-LASSO模型,并参考PD病理学和纹状体的体位组织对其进行讨论。因此,PC-LASSO被证明是分析临床相关示踪剂结合模式,并构建可解释的基于影像的临床指标预测模型的有用方法。

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