» Articles » PMID: 18202106

Automatic Classification of MR Scans in Alzheimer's Disease

Overview
Journal Brain
Specialty Neurology
Date 2008 Jan 19
PMID 18202106
Citations 399
Authors
Affiliations
Soon will be listed here.
Abstract

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.

Citing Articles

Diagnosis of Alzheimer's disease using transfer learning with multi-modal 3D Inception-v4.

Yuan Z, Qi N, Zhou Z, Ding J, Chen X, Wu J Quant Imaging Med Surg. 2025; 15(2):1455-1467.

PMID: 39995734 PMC: 11847174. DOI: 10.21037/qims-24-1577.


Harnessing the potential of human induced pluripotent stem cells, functional assays and machine learning for neurodevelopmental disorders.

Yang Z, Teaney N, Buttermore E, Sahin M, Afshar-Saber W Front Neurosci. 2025; 18:1524577.

PMID: 39844857 PMC: 11750789. DOI: 10.3389/fnins.2024.1524577.


A proficient approach for the classification of Alzheimer's disease using a hybridization of machine learning and deep learning.

Raza H, Ansari S, Javed K, Hanif M, Mian Qaisar S, Haider U Sci Rep. 2024; 14(1):30925.

PMID: 39730532 PMC: 11681032. DOI: 10.1038/s41598-024-81563-z.


Baseline multimodal imaging to predict longitudinal clinical decline in atypical Alzheimer's disease.

Coburn R, Graff-Radford J, Machulda M, Schwarz C, Lowe V, Jones D Cortex. 2024; 180:18-34.

PMID: 39305720 PMC: 11532010. DOI: 10.1016/j.cortex.2024.07.020.


MRI-informed machine learning-driven brain age models for classifying mild cognitive impairment converters.

Lu H, Li J J Cent Nerv Syst Dis. 2024; 16:11795735241266556.

PMID: 39049837 PMC: 11268046. DOI: 10.1177/11795735241266556.


References
1.
Fan Y, Shen D, Davatzikos C . Classification of structural images via high-dimensional image warping, robust feature extraction, and SVM. Med Image Comput Comput Assist Interv. 2006; 8(Pt 1):1-8. DOI: 10.1007/11566465_1. View

2.
Perneczky R, Wagenpfeil S, Komossa K, Grimmer T, Diehl J, Kurz A . Mapping scores onto stages: mini-mental state examination and clinical dementia rating. Am J Geriatr Psychiatry. 2006; 14(2):139-44. DOI: 10.1097/01.JGP.0000192478.82189.a8. View

3.
McKhann G, Albert M, Grossman M, Miller B, Dickson D, Trojanowski J . Clinical and pathological diagnosis of frontotemporal dementia: report of the Work Group on Frontotemporal Dementia and Pick's Disease. Arch Neurol. 2001; 58(11):1803-9. DOI: 10.1001/archneur.58.11.1803. View

4.
Neary D, Snowden J, Gustafson L, Passant U, Stuss D, Black S . Frontotemporal lobar degeneration: a consensus on clinical diagnostic criteria. Neurology. 1998; 51(6):1546-54. DOI: 10.1212/wnl.51.6.1546. View

5.
Lerch J, Pruessner J, Zijdenbos A, Collins D, Teipel S, Hampel H . Automated cortical thickness measurements from MRI can accurately separate Alzheimer's patients from normal elderly controls. Neurobiol Aging. 2006; 29(1):23-30. DOI: 10.1016/j.neurobiolaging.2006.09.013. View