MRI-based automated computer classification of probable AD versus normal controls

被引:120
作者
Duchesne, Simon [1 ]
Caroli, Anna [2 ]
Geroldi, C. [2 ]
Barillot, Christian [3 ]
Frisoni, Giovanni B. [2 ]
Collins, D. Louis [4 ]
机构
[1] Univ Laval Robert Giffard, Ctr Rech, Quebec City, PQ G1J 2G3, Canada
[2] IRCCS San Giovanni Dio, LENITEM, I-25125 Brescia, Italy
[3] IRISA, Unite U746, Equipe VISAGES, F-35043 Rennes, France
[4] McGill Univ, Brain Imaging Ctr, Montreal, PQ H3A 2T5, Canada
关键词
accuracy; automated computer classification; magnetic resonance imaging (MRI); neurodegenerative diseases;
D O I
10.1109/TMI.2007.908685
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Automated computer classification (ACC) techniques are needed to facilitate physician's diagnosis of complex diseases in individual patients. We provide an example of ACC using computational techniques within the context of cross-sectional analysis of magnetic resonance images (MRI) in neurodegenerative diseases, namely Alzheimer's dementia (AD). In this paper, the accuracy of our ACC methodology is assessed when presented with real life, imperfect data, i.e., cohorts of MRI with varying acquisition parameters and imaging quality. The comparative methodology uses the Jacobian determinants derived from dense deformation fields and scaled grey-level intensity from a selected volume of interest centered on the medial temporal lobe. The ACC performance is assessed in a series of leave-one-out experiments aimed at separating 75 probable AD and 75 age-matched normal controls. The resulting accuracy is 92% using a support vector machine classifier based on least squares optimization. Finally, it is shown in the Appendix that determinants and scaled grey-level intensity are appreciably more robust to varying parameters in validation studies using simulated data, when compared to raw intensities or grey/white matter volumes. The ability of cross-sectional MRI at detecting probable AD with high accuracy could have profound implications in the management of suspected AD candidates.
引用
收藏
页码:509 / 520
页数:12
相关论文
共 62 条
[1]   Conversion of mild cognitive impairment to Alzheimer disease predicted by hippocampal atrophy maps [J].
Apostolova, Liana G. ;
Dutton, Rebecca A. ;
Dinov, Ivo D. ;
Hayashi, Kiralee M. ;
Toga, Arthur W. ;
Cummings, Jeffrey L. ;
Thompson, Paul M. .
ARCHIVES OF NEUROLOGY, 2006, 63 (05) :693-699
[2]   Computer-assisted imaging to assess brain structure in healthy and diseased brains [J].
Ashburner, J ;
Csernansky, JG ;
Davatzikos, C ;
Fox, NC ;
Frisoni, GB ;
Thompson, PM .
LANCET NEUROLOGY, 2003, 2 (02) :79-88
[3]  
Bonte FJ, 2001, J NUCL MED, V42, P1131
[4]  
Braak H, 1996, ACTA NEUROL SCAND, V93, P3
[5]   Structural MRI covariance patterns associated with normal aging and neuropsychological functioning [J].
Brickman, Adam M. ;
Habeck, Christian ;
Zarahn, Eric ;
Flynn, Joseph ;
Stern, Yaakov .
NEUROBIOLOGY OF AGING, 2007, 28 (02) :284-295
[6]   A tutorial on Support Vector Machines for pattern recognition [J].
Burges, CJC .
DATA MINING AND KNOWLEDGE DISCOVERY, 1998, 2 (02) :121-167
[7]   Fast exact leave-one-out cross-validation of sparse least-squares support vector machines [J].
Cawley, GC ;
Talbot, NLC .
NEURAL NETWORKS, 2004, 17 (10) :1467-1475
[8]   Change in rates of cerebral atrophy over time in early-onset Alzheimer's disease: longitudinal MRI study [J].
Chan, D ;
Janssen, JC ;
Whitwell, JL ;
Watt, HC ;
Jenkins, R ;
Frost, C ;
Rossor, MN ;
Fox, NC .
LANCET, 2003, 362 (9390) :1121-1122
[9]   A unified statistical approach to deformation-based morphometry [J].
Chung, MK ;
Worsley, KJ ;
Paus, T ;
Cherif, C ;
Collins, DL ;
Giedd, JN ;
Rapoport, JL ;
Evanst, AC .
NEUROIMAGE, 2001, 14 (03) :595-606
[10]   A fully automatic and robust brain MRI tissue classification method [J].
Cocosco, CA ;
Zijdenbos, AP ;
Evans, AC .
MEDICAL IMAGE ANALYSIS, 2003, 7 (04) :513-527