Lerch Jason P, Pruessner Jens, Zijdenbos Alex P, Collins D Louis, Teipel Stefan J, Hampel Harald, Evans Alan C
McConnell Brain Imaging Centre, Montreal Neurological Institute, McGill University, 3801 University Street, Montreal, Quebec, Canada.
Neurobiol Aging. 2008 Jan;29(1):23-30. doi: 10.1016/j.neurobiolaging.2006.09.013. Epub 2006 Nov 13.
We investigated the potential of fully automated measurements of cortical thickness to reproduce the clinical diagnosis in Alzheimer's Disease (AD) using 19 patients and 17 healthy controls. Thickness maps were analyzed using three different discriminant techniques to separate patients from controls. All analyses were performed using leave-one-out cross-validation to avoid overtraining of the discriminants. The results show regionally variant patterns of discrimination ability, with over 90% accuracy obtained in the medial temporal lobes and other limbic structures. Multivariate discriminant analysis produced 100% accuracy with six different combinations, all involving the parahippocampal gyrus. We therefore propose automated measurements of cortical thickness as a tool to improve the clinical diagnosis of probable AD, as well as a research method to gain unique insight into the etiology of cortical pathology in the disease.
我们使用19名阿尔茨海默病(AD)患者和17名健康对照,研究了全自动测量皮质厚度以重现AD临床诊断的潜力。使用三种不同的判别技术分析厚度图,以区分患者和对照。所有分析均采用留一法交叉验证,以避免判别式过度训练。结果显示出区域不同的判别能力模式,在内侧颞叶和其他边缘结构中获得了超过90%的准确率。多变量判别分析在六种不同组合下产生了100%的准确率,所有组合均涉及海马旁回。因此,我们建议将皮质厚度的自动测量作为一种工具,以改善可能AD的临床诊断,以及作为一种研究方法,以深入了解该疾病皮质病理的病因。