Literature DB >> 33613411

Machine Learning for Diagnosis of AD and Prediction of MCI Progression From Brain MRI Using Brain Anatomical Analysis Using Diffeomorphic Deformation.

Ali Haidar Syaifullah1,2, Akihiko Shiino1, Hitoshi Kitahara3, Ryuta Ito3, Manabu Ishida4, Kenji Tanigaki5.   

Abstract

Background: With the growing momentum for the adoption of machine learning (ML) in medical field, it is likely that reliance on ML for imaging will become routine over the next few years. We have developed a software named BAAD, which uses ML algorithms for the diagnosis of Alzheimer's disease (AD) and prediction of mild cognitive impairment (MCI) progression.
Methods: We constructed an algorithm by combining a support vector machine (SVM) to classify and a voxel-based morphometry (VBM) to reduce concerned variables. We grouped progressive MCI and AD as an AD spectrum and trained SVM according to this classification. We randomly selected half from the total 1,314 subjects of AD neuroimaging Initiative (ADNI) from North America for SVM training, and the remaining half were used for validation to fine-tune the model hyperparameters. We created two types of SVMs, one based solely on the brain structure (SVMst), and the other based on both the brain structure and Mini-Mental State Examination score (SVMcog). We compared the model performance with two expert neuroradiologists, and further evaluated it in test datasets involving 519, 592, 69, and 128 subjects from the Australian Imaging, Biomarker & Lifestyle Flagship Study of Aging (AIBL), Japanese ADNI, the Minimal Interval Resonance Imaging in AD (MIDIAD) and the Open Access Series of Imaging Studies (OASIS), respectively.
Results: BAAD's SVMs outperformed radiologists for AD diagnosis in a structural magnetic resonance imaging review. The accuracy of the two radiologists was 57.5 and 70.0%, respectively, whereas, that of the SVMst was 90.5%. The diagnostic accuracy of the SVMst and SVMcog in the test datasets ranged from 88.0 to 97.1% and 92.5 to 100%, respectively. The prediction accuracy for MCI progression was 83.0% in SVMst and 85.0% in SVMcog. In the AD spectrum classified by SVMst, 87.1% of the subjects were Aβ positive according to an AV-45 positron emission tomography. Similarly, among MCI patients classified for the AD spectrum, 89.5% of the subjects progressed to AD.
Conclusion: Our ML has shown high performance in AD diagnosis and prediction of MCI progression. It outperformed expert radiologists, and is expected to provide support in clinical practice.
Copyright © 2021 Syaifullah, Shiino, Kitahara, Ito, Ishida and Tanigaki.

Entities:  

Keywords:  ADNI; Alzheheimer's disease; artificial inteligence; cognitive impairment; machine learning; magnetic resonance imaging; support vector machine

Year:  2021        PMID: 33613411      PMCID: PMC7893082          DOI: 10.3389/fneur.2020.576029

Source DB:  PubMed          Journal:  Front Neurol        ISSN: 1664-2295            Impact factor:   4.003


  6 in total

Review 1.  Blood-Based Biomarkers for Alzheimer's Disease Diagnosis and Progression: An Overview.

Authors:  Angelica Varesi; Adelaide Carrara; Vitor Gomes Pires; Valentina Floris; Elisa Pierella; Gabriele Savioli; Sakshi Prasad; Ciro Esposito; Giovanni Ricevuti; Salvatore Chirumbolo; Alessia Pascale
Journal:  Cells       Date:  2022-04-17       Impact factor: 7.666

2.  Machine learning of brain structural biomarkers for Alzheimer's disease (AD) diagnosis, prediction of disease progression, and amyloid beta deposition in the Japanese population.

Authors:  Akihiko Shiino; Yoshitomo Shirakashi; Manabu Ishida; Kenji Tanigaki
Journal:  Alzheimers Dement (Amst)       Date:  2021-10-14

3.  Quantification of Brain β-Amyloid Load in Parkinson's Disease With Mild Cognitive Impairment: A PET/MRI Study.

Authors:  Michela Garon; Luca Weis; Eleonora Fiorenzato; Francesca Pistonesi; Annachiara Cagnin; Alessandra Bertoldo; Mariagiulia Anglani; Diego Cecchin; Angelo Antonini; Roberta Biundo
Journal:  Front Neurol       Date:  2022-03-01       Impact factor: 4.003

4.  A high-generalizability machine learning framework for predicting the progression of Alzheimer's disease using limited data.

Authors:  Caihua Wang; Yuanzhong Li; Yukihiro Tsuboshita; Takuya Sakurai; Tsubasa Goto; Hiroyuki Yamaguchi; Yuichi Yamashita; Atsushi Sekiguchi; Hisateru Tachimori
Journal:  NPJ Digit Med       Date:  2022-04-12

5.  Machine Learning Decomposition of the Anatomy of Neuropsychological Deficit in Alzheimer's Disease and Mild Cognitive Impairment.

Authors:  Ningxin Dong; Changyong Fu; Renren Li; Wei Zhang; Meng Liu; Weixin Xiao; Hugh M Taylor; Peter J Nicholas; Onur Tanglay; Isabella M Young; Karol Z Osipowicz; Michael E Sughrue; Stephane P Doyen; Yunxia Li
Journal:  Front Aging Neurosci       Date:  2022-05-03       Impact factor: 5.750

6.  Use of machine learning to identify functional connectivity changes in a clinical cohort of patients at risk for dementia.

Authors:  Ying Shen; Qian Lu; Tianjiao Zhang; Hailang Yan; Negar Mansouri; Karol Osipowicz; Onur Tanglay; Isabella Young; Stephane Doyen; Xi Lu; Xia Zhang; Michael E Sughrue; Tong Wang
Journal:  Front Aging Neurosci       Date:  2022-09-01       Impact factor: 5.702

  6 in total

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