Machine learning techniques to predict the risk of developing diabetic nephropathy: a literature review

被引:0
作者
Mesquita, F. [1 ]
Bernardino, J. [1 ,2 ]
Henriques, J. [2 ]
Raposo, J. F. [3 ]
Ribeiro, R. T. [3 ]
Paredes, S. [1 ,2 ]
机构
[1] Polytech Inst Coimbra, Coimbra Inst Engn, Rua Pedro Nunes-Quinta Nora, P-3030199 Coimbra, Portugal
[2] Syst Univ Coimbra, Ctr Informat & Syst, Polo 2, P-3030290 Coimbra, Portugal
[3] Educ & Res Ctr, APDP Diabet Portugal, Rua Salitre 118-120, P-1250203 Lisbon, Portugal
关键词
Diabetic nephropathy; Kidney disease; Clinical data; Risk prediction; Machine learning; KIDNEY-DISEASE; COMPLICATIONS; SELECTION; MODELS;
D O I
10.1007/s40200-023-01357-4
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
PurposeDiabetes is a major public health challenge with widespread prevalence, often leading to complications such as Diabetic Nephropathy (DN)-a chronic condition that progressively impairs kidney function. In this context, it is important to evaluate if Machine learning models can exploit the inherent temporal factor in clinical data to predict the risk of developing DN faster and more accurately than current clinical models.MethodsThree different databases were used for this literature review: Scopus, Web of Science, and PubMed. Only articles written in English and published between January 2015 and December 2022 were included.ResultsWe included 11 studies, from which we discuss a number of algorithms capable of extracting knowledge from clinical data, incorporating dynamic aspects in patient assessment, and exploring their evolution over time. We also present a comparison of the different approaches, their performance, advantages, disadvantages, interpretation, and the value that the time factor can bring to a more successful prediction of diabetic nephropathy.ConclusionOur analysis showed that some studies ignored the temporal factor, while others partially exploited it. Greater use of the temporal aspect inherent in Electronic Health Records (EHR) data, together with the integration of omics data, could lead to the development of more reliable and powerful predictive models.
引用
收藏
页码:825 / 839
页数:15
相关论文
共 50 条
  • [31] Stroke Risk Prediction with Machine Learning Techniques
    Dritsas, Elias
    Trigka, Maria
    SENSORS, 2022, 22 (13)
  • [32] Machine learning and microsimulation techniques on the prognosis of dementia: A systematic literature review
    Dallora, Ana Luiza
    Eivazzadeh, Shahryar
    Mendes, Emilia
    Berglund, Johan
    Anderberg, Peter
    PLOS ONE, 2017, 12 (06):
  • [33] Machine Learning Techniques for Breast Cancer Analysis: A Systematic Literature Review
    Alkhathlan, Lina
    Saudagar, Abdul Khader Jilani
    INTERNATIONAL JOURNAL OF COMPUTER SCIENCE AND NETWORK SECURITY, 2020, 20 (06): : 83 - 90
  • [34] Application of machine learning techniques to predict biodiesel iodine value
    Valbuena, G. Diez
    Tuero, A. Garcia
    Diez, J.
    Rodriguez, E.
    Battez, A. Hernandez
    ENERGY, 2024, 292
  • [35] Machine Learning for Credit Risk Prediction: A Systematic Literature Review
    Noriega, Jomark Pablo
    Rivera, Luis Antonio
    Herrera, Jose Alfredo
    DATA, 2023, 8 (11)
  • [36] Comparison of machine learning techniques to predict unplanned readmission following total shoulder arthroplasty
    Arvind, Varun
    London, Daniel A.
    Cirino, Carl
    Keswani, Aakash
    Cagle, Paul J.
    JOURNAL OF SHOULDER AND ELBOW SURGERY, 2021, 30 (02) : E50 - E59
  • [37] Literature review: Machine learning techniques applied to financial market prediction
    Henrique, Bruno Miranda
    Sobreiro, Vinicius Amorim
    Kimura, Herbert
    EXPERT SYSTEMS WITH APPLICATIONS, 2019, 124 : 226 - 251
  • [38] Prediction of Depression using Machine Learning Techniques: A Review of Existing Literature
    Usman, Muhammad
    Haris, Syed
    Fong, A. C. M.
    2020 2ND IEEE INTERNATIONAL WORKSHOP ON SYSTEM BIOLOGY AND BIOMEDICAL SYSTEMS (SBBS), 2020,
  • [39] Machine learning techniques for code smell detection: A systematic literature review and meta-analysis
    Azeem, Muhammad Ilyas
    Palomba, Fabio
    Shi, Lin
    Wang, Qing
    INFORMATION AND SOFTWARE TECHNOLOGY, 2019, 108 : 115 - 138
  • [40] Application of machine learning and deep learning techniques on reverse vaccinology – a systematic literature review
    Alashwal, Hany
    Kochunni, Nishi Palakkal
    Hayawi, Kadhim
    Soft Computing, 2025, 29 (01) : 391 - 403