Literature DB >> 26653846

Alzheimer Disease and Behavioral Variant Frontotemporal Dementia: Automatic Classification Based on Cortical Atrophy for Single-Subject Diagnosis.

Christiane Möller1, Yolande A L Pijnenburg1, Wiesje M van der Flier1, Adriaan Versteeg1, Betty Tijms1, Jan C de Munck1, Anne Hafkemeijer1, Serge A R B Rombouts1, Jeroen van der Grond1, John van Swieten1, Elise Dopper1, Philip Scheltens1, Frederik Barkhof1, Hugo Vrenken1, Alle Meije Wink1.   

Abstract

Purpose To investigate the diagnostic accuracy of an image-based classifier to distinguish between Alzheimer disease (AD) and behavioral variant frontotemporal dementia (bvFTD) in individual patients by using gray matter (GM) density maps computed from standard T1-weighted structural images obtained with multiple imagers and with independent training and prediction data. Materials and Methods The local institutional review board approved the study. Eighty-four patients with AD, 51 patients with bvFTD, and 94 control subjects were divided into independent training (n = 115) and prediction (n = 114) sets with identical diagnosis and imager type distributions. Training of a support vector machine (SVM) classifier used diagnostic status and GM density maps and produced voxelwise discrimination maps. Discriminant function analysis was used to estimate suitability of the extracted weights for single-subject classification in the prediction set. Receiver operating characteristic (ROC) curves and area under the ROC curve (AUC) were calculated for image-based classifiers and neuropsychological z scores. Results Training accuracy of the SVM was 85% for patients with AD versus control subjects, 72% for patients with bvFTD versus control subjects, and 79% for patients with AD versus patients with bvFTD (P ≤ .029). Single-subject diagnosis in the prediction set when using the discrimination maps yielded accuracies of 88% for patients with AD versus control subjects, 85% for patients with bvFTD versus control subjects, and 82% for patients with AD versus patients with bvFTD, with a good to excellent AUC (range, 0.81-0.95; P ≤ .001). Machine learning-based categorization of AD versus bvFTD based on GM density maps outperforms classification based on neuropsychological test results. Conclusion The SVM can be used in single-subject discrimination and can help the clinician arrive at a diagnosis. The SVM can be used to distinguish disease-specific GM patterns in patients with AD and those with bvFTD as compared with normal aging by using common T1-weighted structural MR imaging. (©) RSNA, 2015.

Entities:  

Mesh:

Year:  2015        PMID: 26653846     DOI: 10.1148/radiol.2015150220

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  31 in total

1.  Hierarchical Fully Convolutional Network for Joint Atrophy Localization and Alzheimer's Disease Diagnosis Using Structural MRI.

Authors:  Chunfeng Lian; Mingxia Liu; Jun Zhang; Dinggang Shen
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2018-12-21       Impact factor: 6.226

Review 2.  FTD spectrum: Neuroimaging across the FTD spectrum.

Authors:  Jennifer L Whitwell
Journal:  Prog Mol Biol Transl Sci       Date:  2019-06-18       Impact factor: 3.622

Review 3.  A review on neuroimaging-based classification studies and associated feature extraction methods for Alzheimer's disease and its prodromal stages.

Authors:  Saima Rathore; Mohamad Habes; Muhammad Aksam Iftikhar; Amanda Shacklett; Christos Davatzikos
Journal:  Neuroimage       Date:  2017-04-13       Impact factor: 6.556

4.  Translating state-of-the-art brain magnetic resonance imaging (MRI) techniques into clinical practice: multimodal MRI differentiates dementia subtypes in a traditional clinical setting.

Authors:  Taylor Kuhn; Sergio Becerra; John Duncan; Norman Spivak; Bianca Huan Dang; Barshen Habelhah; Kennedy D Mahdavi; Michael Mamoun; Michael Whitney; F Scott Pereles; Alexander Bystritsky; Sheldon E Jordan
Journal:  Quant Imaging Med Surg       Date:  2021-09

5.  Radiomics Model for Frontotemporal Dementia Diagnosis Using T1-Weighted MRI.

Authors:  Benedetta Tafuri; Marco Filardi; Daniele Urso; Roberto De Blasi; Giovanni Rizzo; Salvatore Nigro; Giancarlo Logroscino
Journal:  Front Neurosci       Date:  2022-06-20       Impact factor: 5.152

Review 6.  Diagnostic imaging of dementia with Lewy bodies, frontotemporal lobar degeneration, and normal pressure hydrocephalus.

Authors:  Kazunari Ishii
Journal:  Jpn J Radiol       Date:  2019-09-23       Impact factor: 2.374

7.  Cerebrospinal fluid α-synuclein contributes to the differential diagnosis of Alzheimer's disease.

Authors:  Min Shi; Lu Tang; Jon B Toledo; Carmen Ginghina; Hua Wang; Patrick Aro; Poul H Jensen; Daniel Weintraub; Alice S Chen-Plotkin; David J Irwin; Murray Grossman; Leo McCluskey; Lauren B Elman; David A Wolk; Edward B Lee; Leslie M Shaw; John Q Trojanowski; Jing Zhang
Journal:  Alzheimers Dement       Date:  2018-03-28       Impact factor: 21.566

8.  Deep learning-based classification of multi-categorical Alzheimer's disease data.

Authors:  David S Cohen; Kristy A Carpenter; Juliet T Jarrell; Xudong Huang
Journal:  Curr Neurobiol       Date:  2019-10

Review 9.  Recommendations to distinguish behavioural variant frontotemporal dementia from psychiatric disorders.

Authors:  Simon Ducharme; Annemiek Dols; Robert Laforce; Emma Devenney; Fiona Kumfor; Jan van den Stock; Caroline Dallaire-Théroux; Harro Seelaar; Flora Gossink; Everard Vijverberg; Edward Huey; Mathieu Vandenbulcke; Mario Masellis; Calvin Trieu; Chiadi Onyike; Paulo Caramelli; Leonardo Cruz de Souza; Alexander Santillo; Maria Landqvist Waldö; Ramon Landin-Romero; Olivier Piguet; Wendy Kelso; Dhamidhu Eratne; Dennis Velakoulis; Manabu Ikeda; David Perry; Peter Pressman; Bradley Boeve; Rik Vandenberghe; Mario Mendez; Carole Azuar; Richard Levy; Isabelle Le Ber; Sandra Baez; Alan Lerner; Ratnavalli Ellajosyula; Florence Pasquier; Daniela Galimberti; Elio Scarpini; John van Swieten; Michael Hornberger; Howard Rosen; John Hodges; Janine Diehl-Schmid; Yolande Pijnenburg
Journal:  Brain       Date:  2020-06-01       Impact factor: 13.501

10.  Perfusion Neuroimaging Abnormalities Alone Distinguish National Football League Players from a Healthy Population.

Authors:  Daniel G Amen; Kristen Willeumier; Bennet Omalu; Andrew Newberg; Cauligi Raghavendra; Cyrus A Raji
Journal:  J Alzheimers Dis       Date:  2016-04-25       Impact factor: 4.472

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.