The Application of Unsupervised Clustering Methods to Alzheimer's Disease

被引:116
作者
Alashwal, Hany [1 ]
El Halaby, Mohamed [2 ]
Crouse, Jacob J. [3 ]
Abdalla, Areeg [2 ]
Moustafa, Ahmed A. [4 ]
机构
[1] United Arab Emirates Univ, Dept Comp Sci & Software Engn, Coll Informat Technol, Al Ain, U Arab Emirates
[2] Cairo Univ, Dept Math, Fac Sci, Giza, Egypt
[3] Univ Sydney, Brain & Mind Ctr, Sydney, NSW, Australia
[4] Western Sydney Univ, Sch Social Sci & Psychol, Sydney, NSW, Australia
关键词
clustering; neurological diseases; Alzheimer's disease; unsupervised learning; machine learning techniques; MILD COGNITIVE IMPAIRMENT; DIAGNOSIS; PROGRESSION; DEMENTIA;
D O I
10.3389/fncom.2019.00031
中图分类号
Q [生物科学];
学科分类号
090105 [作物生产系统与生态工程];
摘要
Clustering is a powerful machine learning tool for detecting structures in datasets. In the medical field, clustering has been proven to be a powerful tool for discovering patterns and structure in labeled and unlabeled datasets. Unlike supervised methods, clustering is an unsupervised method that works on datasets in which there is no outcome (target) variable nor is anything known about the relationship between the observations, that is, unlabeled data. In this paper, we focus on studying and reviewing clustering methods that have been applied to datasets of neurological diseases, especially Alzheimer's disease (AD). The aim is to provide insights into which clustering technique is more suitable for partitioning patients of AD based on their similarity. This is important as clustering algorithms can find patterns across patients that are difficult for medical practitioners to find. We further discuss the implications of the use of clustering algorithms in the treatment of AD. We found that clustering analysis can point to several features that underlie the conversion from early-stage AD to advanced AD. Furthermore, future work can apply semi-clustering algorithms on AD datasets, which will enhance clusters by including additional information.
引用
收藏
页数:9
相关论文
共 45 条
[1]
Diseases diagnosis using fuzzy logic methods: A systematic and meta-analysis review [J].
Ahmadi, Hossein ;
Gholamzadeh, Marsa ;
Shahmoradi, Leila ;
Nilashi, Mehrbakhsh ;
Rashvand, Pooria .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2018, 161 :145-172
[2]
Developing coping typologies of minority adolescents: A latent profile analysis [J].
Aldridge, Arianna A. ;
Roesch, Scott C. .
JOURNAL OF ADOLESCENCE, 2008, 31 (04) :499-517
[3]
Almeida E., 2013, P 28 ANN ACM S APPL, P813, DOI DOI 10.1145/2480362.2480518
[4]
THE IDENTIFICATION OF PATHOLOGICAL SUBTYPES OF ALZHEIMERS-DISEASE USING CLUSTER-ANALYSIS [J].
ARMSTRONG, RA ;
WOOD, L .
ACTA NEUROPATHOLOGICA, 1994, 88 (01) :60-66
[5]
Posterior AD-Type Pathology: Cognitive Subtypes Emerging from a Cluster Analysis [J].
Cappa, Antonella ;
Ciccarelli, Nicoletta ;
Baldonero, Eleonora ;
Martelli, Marialuisa ;
Silveri, Maria Caterina .
BEHAVIOURAL NEUROLOGY, 2014, 2014
[6]
A hybrid intelligent model of analyzing clinical breast cancer data using clustering techniques with feature selection [J].
Chen, Chien-Hsing .
APPLIED SOFT COMPUTING, 2014, 20 :4-14
[7]
Automatic classification of patients with Alzheimer's disease from structural MRI: A comparison of ten methods using the ADNI database [J].
Cuingnet, Remi ;
Gerardin, Emilie ;
Tessieras, Jerome ;
Auzias, Guillaume ;
Lehericy, Stephane ;
Habert, Marie-Odile ;
Chupin, Marie ;
Benali, Habib ;
Colliot, Olivier .
NEUROIMAGE, 2011, 56 (02) :766-781
[8]
Eick CF, 2004, PROC INT C TOOLS ART, P774
[9]
Escudero J, 2011, IEEE ENG MED BIO, P6470, DOI 10.1109/IEMBS.2011.6091597
[10]
FORGY EW, 1965, BIOMETRICS, V21, P768