Challenges of Clustering Multimodal Clinical Data: Review of Applications in Asthma Subtyping

被引:25
|
作者
Horne, Elsie [1 ]
Tibble, Holly [1 ]
Sheikh, Aziz [1 ]
Tsanas, Athanasios [1 ]
机构
[1] Univ Edinburgh, Edinburgh Med Sch, Usher Inst, Nine Edinburgh Bio Quarter,9 Little France Rd, Edinburgh EH16 4UX, Midlothian, Scotland
基金
英国医学研究理事会; 英国经济与社会研究理事会; 英国惠康基金; 英国工程与自然科学研究理事会;
关键词
asthma; cluster analysis; data mining; machine learning; unsupervised machine learning; SYSTEMATIC ANALYSIS; YOUNG-CHILDREN; GLOBAL BURDEN; 195; COUNTRIES; PHENOTYPES; DISEASE; HETEROGENEITY; TERRITORIES; PREVALENCE; VALIDATION;
D O I
10.2196/16452
中图分类号
R-058 [];
学科分类号
摘要
Background: In the current era of personalized medicine, there is increasing interest in understanding the heterogeneity in disease populations. Cluster analysis is a method commonly used to identify subtypes in heterogeneous disease populations. The clinical data used in such applications are typically multimodal, which can make the application of traditional cluster analysis methods challenging. Objective: This study aimed to review the research literature on the application of clustering multimodal clinical data to identify asthma subtypes. We assessed common problems and shortcomings in the application of cluster analysis methods in determining asthma subtypes, such that they can be brought to the attention of the research community and avoided in future studies. Methods: We searched PubMed and Scopus bibliographic databases with terms related to cluster analysis and asthma to identify studies that applied dissimilarity-based cluster analysis methods. We recorded the analytic methods used in each study at each step of the cluster analysis process. Results: Our literature search identified 63 studies that applied cluster analysis to multimodal clinical data to identify asthma subtypes. The features fed into the cluster algorithms were of a mixed type in 47 (75%) studies and continuous in 12 (19%), and the feature type was unclear in the remaining 4 (6%) studies. A total of 23 (37%) studies used hierarchical clustering with Ward linkage, and 22 (35%) studies used k-means clustering. Of these 45 studies, 39 had mixed-type features, but only 5 specified dissimilarity measures that could handle mixed-type features. A further 9 (14%) studies used a preclustering step to create small clusters to feed on a hierarchical method. The original sample sizes in these 9 studies ranged from 84 to 349. The remaining studies used hierarchical clustering with other linkages (n=3), medoid-based methods (n=3), spectral clustering (n=1), and multiple kernel k-means clustering (n=1), and in 1 study, the methods were unclear. Of 63 studies, 54 (86%) explained the methods used to determine the number of clusters, 24 (38%) studies tested the quality of their cluster solution, and 11 (17%) studies tested the stability of their solution. Reporting of the cluster analysis was generally poor in terms of the methods employed and their justification. Conclusions: This review highlights common issues in the application of cluster analysis to multimodal clinical data to identify asthma subtypes. Some of these issues were related to the multimodal nature of the data, but many were more general issues in the application of cluster analysis. Although cluster analysis may be a useful tool for investigating disease subtypes, we recommend that future studies carefully consider the implications of clustering multimodal data, the cluster analysis process itself, and the reporting of methods to facilitate replication and interpretation of findings.
引用
收藏
页数:20
相关论文
共 50 条
  • [41] Clinical data in asthma
    El-Agathy, A
    LANCET, 1934, 1 : 596 - 596
  • [42] Data Stream Clustering: Challenges and Issues
    Khalilian, Madjid
    Mustapha, Norwati
    INTERNATIONAL MULTICONFERENCE OF ENGINEERS AND COMPUTER SCIENTISTS (IMECS 2010), VOLS I-III, 2010, : 566 - +
  • [43] Data Clustering with Actuarial Applications
    Gan, Guojun
    Valdez, Emiliano A.
    NORTH AMERICAN ACTUARIAL JOURNAL, 2020, 24 (02) : 168 - 186
  • [44] Pairwise data clustering and applications
    Wu, XD
    Chen, DZ
    Mason, JJ
    Schmid, SR
    COMPUTING AND COMBINATORICS, PROCEEDINGS, 2003, 2697 : 455 - 466
  • [45] Interval data clustering with applications
    Peng, Wei
    Li, Tao
    ICTAI-2006: EIGHTEENTH INTERNATIONAL CONFERENCE ON TOOLS WITH ARTIFICIAL INTELLIGENCE, PROCEEDINGS, 2006, : 355 - +
  • [46] DATA CLUSTERING: APPLICATIONS IN ENGINEERING
    Krpic, Zdravko
    Martinovic, Goran
    Vazler, Ivan
    CROATIAN OPERATIONAL RESEARCH REVIEW (CRORR), VOL 1, 2010, 1 : 180 - +
  • [47] Theory and Applications of Data Clustering
    Panagiotakis, Costas
    Ramasso, Emmanuel
    Fragopoulou, Paraskevi
    Aloise, Daniel
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2016, 2016
  • [48] DATA CLUSTERING: APPLICATIONS IN ENGINEERING
    Krpic, Zdravko
    Martinovic, Goran
    Vazler, Ivan
    CROATIAN OPERATIONAL RESEARCH REVIEW, 2010, 1 (01) : 180 - 189
  • [49] A review of multimodal human activity recognition with special emphasis on classification, applications, challenges and future directions
    Yadav, Santosh Kumar
    Tiwari, Kamlesh
    Pandey, Hari Mohan
    Akbar, Shaik Ali
    KNOWLEDGE-BASED SYSTEMS, 2021, 223
  • [50] CHALLENGES IN TRANSCRIBING MULTIMODAL DATA: A CASE STUDY
    Helm, Francesca
    Dooly, Melinda
    LANGUAGE LEARNING & TECHNOLOGY, 2017, 21 (01): : 166 - 185