Combining multiple anatomical MRI measures improves Alzheimer's disease classification

被引:51
|
作者
de Vos, Frank [1 ,2 ,3 ]
Schouten, Tijn M. [1 ,2 ,3 ]
Hafkemeijer, Anne [1 ,2 ,3 ]
Dopper, Elise G. P. [2 ,4 ,5 ]
van Swieten, John C. [4 ,6 ]
de Rooij, Mark [1 ,3 ]
van der Grond, Jeroen [2 ]
Rombouts, Serge A. R. B. [1 ,2 ,3 ]
机构
[1] Leiden Univ, Inst Psychol, Wassenaarseweg 52, NL-2333 AK Leiden, Netherlands
[2] Leiden Univ, Dept Radiol, Med Ctr, Leiden, Netherlands
[3] Leiden Inst Brain & Cognit, Leiden, Netherlands
[4] Erasmus MC, Dept Neurol, Rotterdam, Netherlands
[5] Vrije Univ Amsterdam Med Ctr, Dept Neurol, Amsterdam, Netherlands
[6] Vrije Univ Amsterdam Med Ctr, Dept Clin Genet, Amsterdam, Netherlands
关键词
Alzheimer's disease; anatomical MRI; cortical thickness; cortical area; cortical curvature; grey matter density; subcortical volumes; hippocampal shape; classification; MILD COGNITIVE IMPAIRMENT; VOXEL-BASED MORPHOMETRY; GRAY-MATTER LOSS; SURFACE-BASED ANALYSIS; CORTICAL THICKNESS; STRUCTURAL MRI; HIPPOCAMPAL; DIAGNOSIS; ATROPHY; SEGMENTATION;
D O I
10.1002/hbm.23147
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Several anatomical MRI markers for Alzheimer's disease (AD) have been identified. Hippocampal volume, cortical thickness, and grey matter density have been used successfully to discriminate AD patients from controls. These anatomical MRI measures have so far mainly been used separately. The full potential of anatomical MRI scans for AD diagnosis might thus not yet have been used optimally. In this study, we therefore combined multiple anatomical MRI measures to improve diagnostic classification of AD. For 21 clinically diagnosed AD patients and 21 cognitively normal controls, we calculated (i) cortical thickness, (ii) cortical area, (iii) cortical curvature, (iv) grey matter density, (v) subcortical volumes, and (vi) hippocampal shape. These six measures were used separately and combined as predictors in an elastic net logistic regression. We made receiver operating curve plots and calculated the area under the curve (AUC) to determine classification performance. AUC values for the single measures ranged from 0.67 (cortical thickness) to 0.94 (grey matter density). The combination of all six measures resulted in an AUC of 0.98. Our results demonstrate that the different anatomical MRI measures contain complementary information. A combination of these measures may therefore improve accuracy of AD diagnosis in clinical practice. Hum Brain Mapp 37:1920-1929, 2016. (c) 2016 Wiley Periodicals, Inc.
引用
收藏
页码:1920 / 1929
页数:10
相关论文
共 50 条
  • [31] Machine Learning Classification Combining Multiple Features of A Hyper-Network of fMRI Data in Alzheimer's Disease
    Guo, Hao
    Zhang, Fan
    Chen, Junjie
    Xu, Yong
    Xiang, Jie
    FRONTIERS IN NEUROSCIENCE, 2017, 11
  • [32] Using Multiple Diffusion MRI Measures to Predict Alzheimer's Disease with a TV-L1 Prior
    Villalon-Reina, Julio E.
    Nir, Talia M.
    Gutman, Boris A.
    Jahanshad, Neda
    Jack, Clifford R., Jr.
    Weiner, Michael W.
    Pasternak, Ofer
    Thompson, Paul M.
    COMPUTATIONAL DIFFUSION MRI, 2017, : 157 - 166
  • [33] Brain connectivity and novel network measures for Alzheimer's disease classification
    Prasad, Gautam
    Joshi, Shantanu H.
    Nir, Talia M.
    Toga, Arthur W.
    Thompson, Paul M.
    NEUROBIOLOGY OF AGING, 2015, 36 : S121 - S131
  • [34] Combining MRI and MRS to Distinguish Between Alzheimer's Disease and Healthy Controls
    Westman, Eric
    Wahlund, Lars-Olof
    Foy, Catherine
    Poppe, Michaella
    Cooper, Allison
    Murphy, Declan
    Spenger, Christian
    Lovestone, Simon
    Simmons, Andrew
    JOURNAL OF ALZHEIMERS DISEASE, 2010, 22 (01) : 171 - 181
  • [35] Improved multimodal prediction of progression from MCI to Alzheimer's disease combining genetics with quantitative brain MRI and cognitive measures
    Reas, Emilie T.
    Shadrin, Alexey
    Frei, Oleksandr
    Motazedi, Ehsan
    McEvoy, Linda
    Bahrami, Shahram
    van der Meer, Dennis
    Makowski, Carolina
    Loughnan, Robert
    Wang, Xin
    Broce, Iris J.
    Banks, Sarah J.
    Fominykh, Vera
    Cheng, Weiqiu
    Holland, Dominic B.
    Smeland, Olav B.
    Seibert, Tyler
    Selbaek, Geir B.
    Brewer, James B. C.
    Fan, Chun C. A.
    Andreassen, Ole A. M.
    Dale, Anders M.
    ALZHEIMERS & DEMENTIA, 2023, 19 (11) : 5151 - 5158
  • [36] Classification of Alzheimer’s disease based on brain MRI and machine learning
    Zhao Fan
    Fanyu Xu
    Xuedan Qi
    Cai Li
    Lili Yao
    Neural Computing and Applications, 2020, 32 : 1927 - 1936
  • [37] CLASSIFICATION OF PROGRESSIVE STAGES OF ALZHEIMER'S DISEASE IN MRI HIPPOCAMPAL REGION
    Thamizhvani, T. R.
    Farheen, Syed Uzma
    Hemalatha, R. J.
    Dhivya, Josephin Arockia A.
    BIOMEDICAL ENGINEERING-APPLICATIONS BASIS COMMUNICATIONS, 2020, 32 (06):
  • [38] Bootstrapped Dendritic Classifiers for Alzheimer's Disease classification on MRI features
    Chyzhyk, Darya
    ADVANCES IN KNOWLEDGE-BASED AND INTELLIGENT INFORMATION AND ENGINEERING SYSTEMS, 2012, 243 : 2251 - 2258
  • [39] Classification of Alzheimer's Disease in MRI using Visual Saliency Information
    Camilo Daza, Julian
    Rueda, Andrea
    2016 IEEE 11TH COLOMBIAN COMPUTING CONFERENCE (CCC), 2016,
  • [40] MRI Segmentation of Brain Tissue and Course Classification in Alzheimer's Disease
    Li, Meimei
    Hu, Chunhai
    Liu, Zhen
    Zhou, Ying
    ELECTRONICS, 2022, 11 (08)