Literature DB >> 18202106

Automatic classification of MR scans in Alzheimer's disease.

Stefan Klöppel1, Cynthia M Stonnington, Carlton Chu, Bogdan Draganski, Rachael I Scahill, Jonathan D Rohrer, Nick C Fox, Clifford R Jack, John Ashburner, Richard S J Frackowiak.   

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.

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Year:  2008        PMID: 18202106      PMCID: PMC2579744          DOI: 10.1093/brain/awm319

Source DB:  PubMed          Journal:  Brain        ISSN: 0006-8950            Impact factor:   13.501


  43 in total

1.  Classification of structural images via high-dimensional image warping, robust feature extraction, and SVM.

Authors:  Yong Fan; Dinggang Shen; Christos Davatzikos
Journal:  Med Image Comput Comput Assist Interv       Date:  2005

2.  A fast diffeomorphic image registration algorithm.

Authors:  John Ashburner
Journal:  Neuroimage       Date:  2007-07-18       Impact factor: 6.556

3.  Global prevalence of dementia: a Delphi consensus study.

Authors:  Cleusa P Ferri; Martin Prince; Carol Brayne; Henry Brodaty; Laura Fratiglioni; Mary Ganguli; Kathleen Hall; Kazuo Hasegawa; Hugh Hendrie; Yueqin Huang; Anthony Jorm; Colin Mathers; Paulo R Menezes; Elizabeth Rimmer; Marcia Scazufca
Journal:  Lancet       Date:  2005-12-17       Impact factor: 79.321

Review 4.  Frontotemporal lobar degeneration: a consensus on clinical diagnostic criteria.

Authors:  D Neary; J S Snowden; L Gustafson; U Passant; D Stuss; S Black; M Freedman; A Kertesz; P H Robert; M Albert; K Boone; B L Miller; J Cummings; D F Benson
Journal:  Neurology       Date:  1998-12       Impact factor: 9.910

5.  Multivariate voxel-based morphometry successfully differentiates schizophrenia patients from healthy controls.

Authors:  Yasuhiro Kawasaki; Michio Suzuki; Ferath Kherif; Tsutomu Takahashi; Shi-Yu Zhou; Kazue Nakamura; Mie Matsui; Tomiki Sumiyoshi; Hikaru Seto; Masayoshi Kurachi
Journal:  Neuroimage       Date:  2006-10-11       Impact factor: 6.556

6.  Clinical and pathological diagnosis of frontotemporal dementia: report of the Work Group on Frontotemporal Dementia and Pick's Disease.

Authors:  G M McKhann; M S Albert; M Grossman; B Miller; D Dickson; J Q Trojanowski
Journal:  Arch Neurol       Date:  2001-11

7.  Automated cortical thickness measurements from MRI can accurately separate Alzheimer's patients from normal elderly controls.

Authors:  Jason P Lerch; Jens Pruessner; Alex P Zijdenbos; D Louis Collins; Stefan J Teipel; Harald Hampel; Alan C Evans
Journal:  Neurobiol Aging       Date:  2006-11-13       Impact factor: 4.673

8.  Neuropathologic diagnostic and nosologic criteria for frontotemporal lobar degeneration: consensus of the Consortium for Frontotemporal Lobar Degeneration.

Authors:  Nigel J Cairns; Eileen H Bigio; Ian R A Mackenzie; Manuela Neumann; Virginia M-Y Lee; Kimmo J Hatanpaa; Charles L White; Julie A Schneider; Lea Tenenholz Grinberg; Glenda Halliday; Charles Duyckaerts; James S Lowe; Ida E Holm; Markus Tolnay; Koichi Okamoto; Hideaki Yokoo; Shigeo Murayama; John Woulfe; David G Munoz; Dennis W Dickson; Paul G Ince; John Q Trojanowski; David M A Mann
Journal:  Acta Neuropathol       Date:  2007-06-20       Impact factor: 17.088

9.  Mapping scores onto stages: mini-mental state examination and clinical dementia rating.

Authors:  Robert Perneczky; Stefan Wagenpfeil; Katja Komossa; Timo Grimmer; Janine Diehl; Alexander Kurz
Journal:  Am J Geriatr Psychiatry       Date:  2006-02       Impact factor: 4.105

10.  Neural-network-based classification of cognitively normal, demented, Alzheimer disease and vascular dementia from single photon emission with computed tomography image data from brain.

Authors:  R J deFigueiredo; W R Shankle; A Maccato; M B Dick; P Mundkur; I Mena; C W Cotman
Journal:  Proc Natl Acad Sci U S A       Date:  1995-06-06       Impact factor: 11.205

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  356 in total

1.  Classification of sodium MRI data of cartilage using machine learning.

Authors:  Guillaume Madelin; Frederick Poidevin; Antonios Makrymallis; Ravinder R Regatte
Journal:  Magn Reson Med       Date:  2014-11-03       Impact factor: 4.668

2.  The association between a polygenic Alzheimer score and cortical thickness in clinically normal subjects.

Authors:  Mert R Sabuncu; Randy L Buckner; Jordan W Smoller; Phil Hyoun Lee; Bruce Fischl; Reisa A Sperling
Journal:  Cereb Cortex       Date:  2011-12-13       Impact factor: 5.357

Review 3.  Alliance for aging research AD biomarkers work group: structural MRI.

Authors:  Clifford R Jack
Journal:  Neurobiol Aging       Date:  2011-12       Impact factor: 4.673

4.  The Relevance Voxel Machine (RVoxM): a Bayesian method for image-based prediction.

Authors:  Mert R Sabuncu; Koen Van Leemput
Journal:  Med Image Comput Comput Assist Interv       Date:  2011

5.  MKL for robust multi-modality AD classification.

Authors:  Chris Hinrichs; Vikas Singh; Guofan Xu; Sterling Johnson
Journal:  Med Image Comput Comput Assist Interv       Date:  2009

6.  Neuroanatomical spatial patterns in Turner syndrome.

Authors:  Matthew J Marzelli; Fumiko Hoeft; David S Hong; Allan L Reiss
Journal:  Neuroimage       Date:  2010-12-30       Impact factor: 6.556

7.  Semi-supervised pattern classification of medical images: application to mild cognitive impairment (MCI).

Authors:  Roman Filipovych; Christos Davatzikos
Journal:  Neuroimage       Date:  2010-12-31       Impact factor: 6.556

8.  Antemortem differential diagnosis of dementia pathology using structural MRI: Differential-STAND.

Authors:  Prashanthi Vemuri; Gyorgy Simon; Kejal Kantarci; Jennifer L Whitwell; Matthew L Senjem; Scott A Przybelski; Jeffrey L Gunter; Keith A Josephs; David S Knopman; Bradley F Boeve; Tanis J Ferman; Dennis W Dickson; Joseph E Parisi; Ronald C Petersen; Clifford R Jack
Journal:  Neuroimage       Date:  2010-12-31       Impact factor: 6.556

Review 9.  Radiological images and machine learning: Trends, perspectives, and prospects.

Authors:  Zhenwei Zhang; Ervin Sejdić
Journal:  Comput Biol Med       Date:  2019-02-27       Impact factor: 4.589

10.  Brainstem abnormalities in attention deficit hyperactivity disorder support high accuracy individual diagnostic classification.

Authors:  Blair A Johnston; Benson Mwangi; Keith Matthews; David Coghill; Kerstin Konrad; J Douglas Steele
Journal:  Hum Brain Mapp       Date:  2014-05-13       Impact factor: 5.038

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