Application of Machine Learning in Multimorbidity Research: Protocol for a Scoping Review

被引:1
作者
Anthonimuthu, Danny Jeganathan [1 ]
Hejlesen, Ole [1 ]
Zwisler, Ann-Dorthe Olsen [2 ,3 ]
Udsen, Flemming Witt [1 ]
机构
[1] Aalborg Univ, Fac Med, Dept Hlth Sci & Technol, Selma Lagerlofs Vej 249, DK-9260 Gistrup, Denmark
[2] Rigshosp, Clin Rehabil & Palliat Med, Copenhagen, Denmark
[3] Univ Copenhagen, Dept Clin Med, Copenhagen, Denmark
来源
JMIR RESEARCH PROTOCOLS | 2024年 / 13卷
关键词
multimorbidity; multiple long-term conditions; machine learning; artificial intelligence; scoping review; protocol; chronic conditions; health care system; health care; HEALTH-CARE UTILIZATION; FUTURE;
D O I
10.2196/53761
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Multimorbidity, defined as the coexistence of multiple chronic conditions, poses significant challenges to health care systems on a global scale. It is associated with increased mortality, reduced quality of life, and increased health care costs. The burden of multimorbidity is expected to worsen if no effective intervention is taken. Machine learning has the potential to assist in addressing these challenges since it offers advanced analysis and decision -making capabilities, such as disease prediction, treatment development, and clinical strategies. Objective: This paper represents the protocol of a scoping review that aims to identify and explore the current literature concerning the use of machine learning for patients with multimorbidity. More precisely, the objective is to recognize various machine learning models, the patient groups involved, features considered, types of input data, the maturity of the machine learning algorithms, and the outcomes from these machine learning models. Methods: The scoping review will be based on the guidelines of the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta -Analyses Extension for Scoping Reviews). Five databases (PubMed, Embase, IEEE, Web of Science, and Scopus) are chosen to conduct a literature search. Two reviewers will independently screen the titles, abstracts, and full texts of identified studies based on predefined eligibility criteria. Covidence (Veritas Health Innovation Ltd) will be used as a tool for managing and screening papers. Only studies that examine more than 1 chronic disease or individuals with a single chronic condition at risk of developing another will be included in the scoping review. Data from the included studies will be collected using Microsoft Excel (Microsoft Corp). The focus of the data extraction will be on bibliographical information, objectives, study populations, types of input data, types of algorithm, performance, maturity of the algorithms, and outcome. Results: The screening process will be presented in a PRISMA-ScR flow diagram. The findings of the scoping review will be conveyed through a narrative synthesis. Additionally, data extracted from the studies will be presented in more comprehensive formats, such as charts or tables. The results will be presented in a forthcoming scoping review, which will be published in a peer -reviewed journal. Conclusions: To our knowledge, this may be the first scoping review to investigate the use of machine learning in multimorbidity research. The goal of the scoping review is to summarize the field of literature on machine learning in patients with multiple chronic conditions, highlight different approaches, and potentially discover research gaps. The results will offer insights for future research within this field, contributing to developments that can enhance patient outcomes. International Registered Report Identifier (IRRID): PRR1-10.2196/53761
引用
收藏
页数:8
相关论文
共 51 条
  • [1] acmedsci.ac.uk, 2018, Multimorbidity: a priority for global health research
  • [2] Health-related quality of life and healthcare utilization in multimorbidity: results of a cross-sectional survey
    Agborsangaya, Calypse B.
    Lau, Darren
    Lahtinen, Markus
    Cooke, Tim
    Johnson, Jeffrey A.
    [J]. QUALITY OF LIFE RESEARCH, 2013, 22 (04) : 791 - 799
  • [3] aihw.gov.au, Rural and remote health
  • [4] aihw.gov.au, Health across socioeconomic groups
  • [5] aihw.gov.au, 2016, Diabetes and chronic kidney disease as risks for other diseases: Australian Burden of Disease Study 2011
  • [6] Deep Learning for Brain MRI Segmentation: State of the Art and Future Directions
    Akkus, Zeynettin
    Galimzianova, Alfiia
    Hoogi, Assaf
    Rubin, Daniel L.
    Erickson, Bradley J.
    [J]. JOURNAL OF DIGITAL IMAGING, 2017, 30 (04) : 449 - 459
  • [7] Predicting Multimorbidity Using Saudi Health Indicators (Sharik) Nationwide Data: Statistical and Machine Learning Approach
    Albagmi, Faisal Mashel
    Hussain, Mehwish
    Kamal, Khurram
    Sheikh, Muhammad Fahad
    AlNujaidi, Heba Yaagoub
    Bah, Sulaiman
    Althumiri, Nora A.
    BinDhim, Nasser F.
    [J]. HEALTHCARE, 2023, 11 (15)
  • [8] Arksey H., 2005, INT J SOC RES METHOD, V8, P19, DOI [10.1080/1364557032000119616, DOI 10.1080/1364557032000119616]
  • [9] Aromataris E, 2024, JBI Manual for Evidence Synthesis
  • [10] Multimorbidity prediction using link prediction
    Aziz, Furqan
    Cardoso, Victor Roth
    Bravo-Merodio, Laura
    Russ, Dominic
    Pendleton, Samantha C.
    Williams, John A.
    Acharjee, Animesh
    Gkoutos, Georgios, V
    [J]. SCIENTIFIC REPORTS, 2021, 11 (01)