Misra Chandan, Fan Yong, Davatzikos Christos
Department of Radiology, Section of Biomedical Image Analysis, University of Pennsylvania, School of Medicine, Philadelphia, PA 19104, USA.
Neuroimage. 2009 Feb 15;44(4):1415-22. doi: 10.1016/j.neuroimage.2008.10.031. Epub 2008 Nov 5.
High-dimensional pattern classification was applied to baseline and multiple follow-up MRI scans of the Alzheimer's Disease Neuroimaging Initiative (ADNI) participants with mild cognitive impairment (MCI), in order to investigate the potential of predicting short-term conversion to Alzheimer's Disease (AD) on an individual basis. MCI participants that converted to AD (average follow-up 15 months) displayed significantly lower volumes in a number of grey matter (GM) regions, as well as in the white matter (WM). They also displayed more pronounced periventricular small-vessel pathology, as well as an increased rate of increase of such pathology. Individual person analysis was performed using a pattern classifier previously constructed from AD patients and cognitively normal (CN) individuals to yield an abnormality score that is positive for AD-like brains and negative otherwise. The abnormality scores measured from MCI non-converters (MCI-NC) followed a bimodal distribution, reflecting the heterogeneity of this group, whereas they were positive in almost all MCI converters (MCI-C), indicating extensive patterns of AD-like brain atrophy in almost all MCI-C. Both MCI subgroups had similar MMSE scores at baseline. A more specialized classifier constructed to differentiate converters from non-converters based on their baseline scans provided good classification accuracy reaching 81.5%, evaluated via cross-validation. These pattern classification schemes, which distill spatial patterns of atrophy to a single abnormality score, offer promise as biomarkers of AD and as predictors of subsequent clinical progression, on an individual patient basis.
高维模式分类应用于阿尔茨海默病神经影像倡议(ADNI)中患有轻度认知障碍(MCI)的参与者的基线和多次随访磁共振成像(MRI)扫描,以研究个体预测短期转化为阿尔茨海默病(AD)的潜力。转化为AD的MCI参与者(平均随访15个月)在多个灰质(GM)区域以及白质(WM)中的体积显著降低。他们还表现出更明显的脑室周围小血管病变,以及这种病变的增加率上升。使用先前从AD患者和认知正常(CN)个体构建的模式分类器进行个体分析,以产生对AD样脑呈阳性而其他情况呈阴性的异常评分。从MCI未转化者(MCI-NC)测量的异常评分呈双峰分布,反映了该组的异质性,而在几乎所有MCI转化者(MCI-C)中它们呈阳性,表明几乎所有MCI-C中存在广泛的AD样脑萎缩模式。两个MCI亚组在基线时具有相似的简易精神状态检查表(MMSE)评分。基于基线扫描构建的用于区分转化者和未转化者的更专门的分类器提供了良好的分类准确性,通过交叉验证评估达到81.5%。这些模式分类方案将萎缩的空间模式提炼为单个异常评分,有望作为AD的生物标志物以及个体患者后续临床进展的预测指标。