Oxford Centre for Functional MRI of Brain (FMRIB), Wellcome Centre for Integrative NeuroImaging, Nuffield Department of Clinical Neurosciences, University of Oxford, UK; Oxford-Nottingham Centre for Doctoral Training in Biomedical Imaging, University of Oxford, UK; Oxford India Centre for Sustainable Development, Somerville College, University of Oxford, UK.
Oxford Centre for Functional MRI of Brain (FMRIB), Wellcome Centre for Integrative NeuroImaging, Nuffield Department of Clinical Neurosciences, University of Oxford, UK.
Neuroimage. 2019 Jan 15;185:434-445. doi: 10.1016/j.neuroimage.2018.10.042. Epub 2018 Oct 22.
White matter hyperintensities (WMH), also known as white matter lesions, are localised white matter areas that appear hyperintense on MRI scans. WMH commonly occur in the ageing population, and are often associated with several factors such as cognitive disorders, cardiovascular risk factors, cerebrovascular and neurodegenerative diseases. Despite the fact that some links between lesion location and parametric factors such as age have already been established, the relationship between voxel-wise spatial distribution of lesions and these factors is not yet well understood. Hence, it would be of clinical importance to model the distribution of lesions at the population-level and quantitatively analyse the effect of various factors on the lesion distribution model. In this work we compare various methods, including our proposed method, to generate voxel-wise distributions of WMH within a population with respect to various factors. Our proposed Bayesian spline method models the spatio-temporal distribution of WMH with respect to a parametric factor of interest, in this case age, within a population. Our probabilistic model takes as input the lesion segmentation binary maps of subjects belonging to various age groups and provides a population-level parametric lesion probability map as output. We used a spline representation to ensure a degree of smoothness in space and the dimension associated with the parameter, and formulated our model using a Bayesian framework. We tested our algorithm output on simulated data and compared our results with those obtained using various existing methods with different levels of algorithmic and computational complexity. We then compared the better performing methods on a real dataset, consisting of 1000 subjects of the UK Biobank, divided in two groups based on hypertension diagnosis. Finally, we applied our method on a clinical dataset of patients with vascular disease. On simulated dataset, the results from our algorithm showed a mean square error (MSE) value of 7.27×10, which was lower than the MSE value reported in the literature, with the advantage of being robust and computationally efficient. In the UK Biobank data, we found that the lesion probabilities are higher for the hypertension group compared to the non-hypertension group and further verified this finding using a statistical t-test. Finally, when applying our method on patients with vascular disease, we observed that the overall probability of lesions is significantly higher in later age groups, which is in line with the current literature.
脑白质高信号(WMH),也称为脑白质病变,是 MRI 扫描上显示高信号的局部脑白质区域。WMH 常见于老年人群,常与认知障碍、心血管危险因素、脑血管和神经退行性疾病等多种因素有关。尽管已经确定了病变部位与年龄等参数因素之间的一些联系,但病变的体素空间分布与这些因素之间的关系尚未得到很好的理解。因此,对人群中病变的分布进行建模,并定量分析各种因素对病变分布模型的影响,具有重要的临床意义。在这项工作中,我们比较了各种方法,包括我们提出的方法,以生成人群中与各种因素有关的 WMH 的体素分布。我们提出的贝叶斯样条方法是在人群中,针对感兴趣的参数因素(在这种情况下是年龄),对 WMH 的时空分布进行建模。我们的概率模型将属于不同年龄组的受试者的病变分割二进制图作为输入,并提供作为输出的人群参数病变概率图。我们使用样条表示来确保空间和与参数相关的维度具有一定的平滑度,并使用贝叶斯框架来构建我们的模型。我们在模拟数据上测试了我们的算法输出,并将我们的结果与具有不同算法和计算复杂度的各种现有方法的结果进行了比较。然后,我们在由 1000 名 UK Biobank 受试者组成的真实数据集上比较了表现更好的方法,该数据集根据高血压诊断分为两组。最后,我们将我们的方法应用于血管疾病患者的临床数据集。在模拟数据集上,我们的算法的结果显示均方误差(MSE)值为 7.27×10,低于文献中报道的 MSE 值,具有稳健和高效的优势。在 UK Biobank 数据中,我们发现高血压组的病变概率高于非高血压组,进一步使用统计 t 检验验证了这一发现。最后,当我们将我们的方法应用于血管疾病患者时,我们观察到病变的总概率在年龄较大的组中明显更高,这与目前的文献一致。