Klöppel Stefan, Stonnington Cynthia M, Chu Carlton, Draganski Bogdan, Scahill Rachael I, Rohrer Jonathan D, Fox Nick C, Jack Clifford R, Ashburner John, Frackowiak Richard S J
Wellcome Trust Centre for Neuroimaging, Institute of Neurology, University College London, London, UK.
Brain. 2008 Mar;131(Pt 3):681-9. doi: 10.1093/brain/awm319. Epub 2008 Jan 17.
To be diagnostically useful, structural MRI must reliably distinguish Alzheimer's disease (AD) from normal aging in individual scans. Recent advances in statistical learning theory have led to the application of support vector machines to MRI for detection of a variety of disease states. The aims of this study were to assess how successfully support vector machines assigned individual diagnoses and to determine whether data-sets combined from multiple scanners and different centres could be used to obtain effective classification of scans. We used linear support vector machines to classify the grey matter segment of T1-weighted MR scans from pathologically proven AD patients and cognitively normal elderly individuals obtained from two centres with different scanning equipment. Because the clinical diagnosis of mild AD is difficult we also tested the ability of support vector machines to differentiate control scans from patients without post-mortem confirmation. Finally we sought to use these methods to differentiate scans between patients suffering from AD from those with frontotemporal lobar degeneration. Up to 96% of pathologically verified AD patients were correctly classified using whole brain images. Data from different centres were successfully combined achieving comparable results from the separate analyses. Importantly, data from one centre could be used to train a support vector machine to accurately differentiate AD and normal ageing scans obtained from another centre with different subjects and different scanner equipment. Patients with mild, clinically probable AD and age/sex matched controls were correctly separated in 89% of cases which is compatible with published diagnosis rates in the best clinical centres. This method correctly assigned 89% of patients with post-mortem confirmed diagnosis of either AD or frontotemporal lobar degeneration to their respective group. Our study leads to three conclusions: Firstly, support vector machines successfully separate patients with AD from healthy aging subjects. Secondly, they perform well in the differential diagnosis of two different forms of dementia. Thirdly, the method is robust and can be generalized across different centres. This suggests an important role for computer based diagnostic image analysis for clinical practice.
为了在诊断上具有实用性,结构磁共振成像(MRI)必须在个体扫描中可靠地将阿尔茨海默病(AD)与正常衰老区分开来。统计学习理论的最新进展已促使支持向量机应用于MRI,以检测多种疾病状态。本研究的目的是评估支持向量机在进行个体诊断时的成功程度,并确定来自多个扫描仪和不同中心的数据集是否可用于获得有效的扫描分类。我们使用线性支持向量机对来自两个配备不同扫描设备的中心的经病理证实的AD患者和认知正常的老年人的T1加权磁共振扫描的灰质部分进行分类。由于轻度AD的临床诊断困难,我们还测试了支持向量机区分对照扫描与未经尸检确认的患者扫描的能力。最后,我们试图使用这些方法区分AD患者与额颞叶变性患者的扫描。使用全脑图像,高达96%的经病理证实的AD患者被正确分类。来自不同中心的数据成功合并,取得了与单独分析相当的结果。重要的是,来自一个中心的数据可用于训练支持向量机,以准确区分从另一个中心获得的具有不同受试者和不同扫描设备的AD和正常衰老扫描。轻度、临床可能的AD患者和年龄/性别匹配的对照在89%的病例中被正确区分,这与最佳临床中心公布的诊断率相符。该方法将89%的经尸检确诊为AD或额颞叶变性的患者正确地分到了各自的组中。我们的研究得出三个结论:第一,支持向量机成功地将AD患者与健康衰老受试者区分开来。第二,它们在两种不同形式痴呆的鉴别诊断中表现良好。第三,该方法具有稳健性,可推广到不同中心。这表明基于计算机的诊断图像分析在临床实践中具有重要作用。