论文标题
魔术:多尺度异质性分析和脑疾病聚类
MAGIC: Multi-scale Heterogeneity Analysis and Clustering for Brain Diseases
论文作者
论文摘要
越来越多的临床,解剖学和功能证据表明神经精神病学和神经退行性疾病(如精神分裂症和阿尔茨海默氏病)(AD)。阐明疾病的不同亚型可以更好地理解神经病的发生,并有可能制定有针对性的治疗计划。最近的半监督聚类技术提供了一种数据驱动的方法来理解疾病异质性。但是,现有方法没有考虑到该疾病的亚型可能以不同的空间尺度呈现出来。在这里,我们介绍了一种新颖的方法,即魔术,以利用多尺度聚类来揭示疾病异质性。我们首先提取结构协方差(PSC)的多尺度模式,然后在不同尺度的PSC上进行双循环块优化的半监督聚类。我们使用模拟的异质神经解剖学数据来验证魔术,并通过使用228个认知正常(CN)和191名患者的T1 MRI扫描来探索AD的异质性来证明其临床潜力。我们的结果表明,AD的两个主要亚型具有不同的萎缩模式,包括海马中的细尺度萎缩以及皮质区域的大规模萎缩。通过对两种亚型的临床评估,进一步证实了异质性的证据,这表明与其他亚群相对于其他亚种群,AD患者的亚群往往会更年轻并且认知表现更快地下降,这往往年龄较大,并且在认知能力方面保持了相对稳定的认知能力。
There is a growing amount of clinical, anatomical and functional evidence for the heterogeneous presentation of neuropsychiatric and neurodegenerative diseases such as schizophrenia and Alzheimers Disease (AD). Elucidating distinct subtypes of diseases allows a better understanding of neuropathogenesis and enables the possibility of developing targeted treatment programs. Recent semi-supervised clustering techniques have provided a data-driven way to understand disease heterogeneity. However, existing methods do not take into account that subtypes of the disease might present themselves at different spatial scales across the brain. Here, we introduce a novel method, MAGIC, to uncover disease heterogeneity by leveraging multi-scale clustering. We first extract multi-scale patterns of structural covariance (PSCs) followed by a semi-supervised clustering with double cyclic block-wise optimization across different scales of PSCs. We validate MAGIC using simulated heterogeneous neuroanatomical data and demonstrate its clinical potential by exploring the heterogeneity of AD using T1 MRI scans of 228 cognitively normal (CN) and 191 patients. Our results indicate two main subtypes of AD with distinct atrophy patterns that consist of both fine-scale atrophy in the hippocampus as well as large-scale atrophy in cortical regions. The evidence for the heterogeneity is further corroborated by the clinical evaluation of two subtypes, which indicates that there is a subpopulation of AD patients that tend to be younger and decline faster in cognitive performance relative to the other subpopulation, which tends to be older and maintains a relatively steady decline in cognitive abilities.