Diabetes Detection and Management through Photoplethysmographic and Electrocardiographic Signals Analysis: A Systematic Review

被引:9
|
作者
Zanelli, Serena [1 ,2 ]
Ammi, Mehdi [1 ]
Hallab, Magid [3 ]
El Yacoubi, Mounim A. [2 ]
机构
[1] Univ Paris 08, LAGA, CNRS, Inst Galilee, F-93200 St Denis, France
[2] Inst Polytech Paris, SAMOVAR Telecom SudParis, CNRS, F-91764 Paris, France
[3] Clin Bizet, F-75116 Paris, France
关键词
PPG signal; diabetes; ECG signal; machine learning; deep learning; glucose estimation; HEART-RATE-VARIABILITY; HYPOGLYCEMIC EPISODES; NATURAL OCCURRENCE; BLOOD-GLUCOSE; MACHINE; HYPERGLYCEMIA; CHILDREN; ECG; IDENTIFICATION; NEUROPATHY;
D O I
10.3390/s22134890
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
(1) Background: Diabetes mellitus (DM) is a chronic, metabolic disease characterized by elevated levels of blood glucose. Recently, some studies approached the diabetes care domain through the analysis of the modifications of cardiovascular system parameters. In fact, cardiovascular diseases are the first leading cause of death in diabetic subjects. Thanks to their cost effectiveness and their ease of use, electrocardiographic (ECG) and photoplethysmographic (PPG) signals have recently been used in diabetes detection, blood glucose estimation and diabetes-related complication detection. This review's aim is to provide a detailed overview of all the published methods, from the traditional (non machine learning) to the deep learning approaches, to detect and manage diabetes using PPG and ECG signals. This review will allow researchers to compare and understand the differences, in terms of results, amount of data and complexity that each type of approach provides and requires. (2) Method: We performed a systematic review based on articles that focus on the use of ECG and PPG signals in diabetes care. The search was focused on keywords related to the topic, such as "Diabetes", "ECG", "PPG", "Machine Learning", etc. This was performed using databases, such as PubMed, Google Scholar, Semantic Scholar and IEEE Xplore. This review's aim is to provide a detailed overview of all the published methods, from the traditional (non machine learning) to the deep learning approaches, to detect and manage diabetes using PPG and ECG signals. This review will allow researchers to compare and understand the differences, in terms of results, amount of data and complexity that each type of approach provides and requires. (3) Results: A total of 78 studies were included. The majority of the selected studies focused on blood glucose estimation (41) and diabetes detection (31). Only 7 studies focused on diabetes complications detection. We present these studies by approach: traditional, machine learning and deep learning approaches. (4) Conclusions: ECG and PPG analysis in diabetes care showed to be very promising. Clinical validation and data processing standardization need to be improved in order to employ these techniques in a clinical environment.
引用
下载
收藏
页数:28
相关论文
共 50 条
  • [1] Detection of motion artifacts in photoplethysmographic signals based on time and period domain analysis
    Couceiro, R.
    Carvalho, P.
    Paiva, R. P.
    Henriques, J.
    Muehlsteff, J.
    2012 ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2012, : 2603 - 2606
  • [2] Detection of motion artifact patterns in photoplethysmographic signals based on time and period domain analysis
    Couceiro, R.
    Carvalho, P.
    Paiva, R. P.
    Henriques, J.
    Muehlsteff, J.
    PHYSIOLOGICAL MEASUREMENT, 2014, 35 (12) : 2369 - 2388
  • [3] Mental-disorder detection using chaos and nonlinear dynamical analysis of photoplethysmographic signals
    Pham, Tuan D.
    Truong Cong Thang
    Oyama-Higa, Mayumi
    Sugiyama, Masahide
    CHAOS SOLITONS & FRACTALS, 2013, 51 : 64 - 74
  • [4] Management of diabetes and arthritis - A systematic review
    Gillani, Syed Wasif
    Abdul, Mohi Iqbal Mohammed
    Zaghloul, Hisham A.
    Ansari, Irfan Altaf
    Ata-ur-Rahman, Syed
    Farooqui, Sadaf
    TROPICAL JOURNAL OF PHARMACEUTICAL RESEARCH, 2018, 17 (05) : 967 - 973
  • [5] Home telehealth for diabetes management: a systematic review and meta-analysis
    Polisena, J.
    Tran, K.
    Cimon, K.
    Hutton, B.
    McGill, S.
    Palmer, K.
    DIABETES OBESITY & METABOLISM, 2009, 11 (10): : 913 - 930
  • [6] Telemedicine Interventions for the Management of Diabetes: A Systematic Review and Meta-Analysis
    Hangaard, Stine
    Laursen, Sisse H.
    Udsen, Flemming W.
    Vestergaard, Peter
    Hejlesen, Ole
    DIGITAL PERSONALIZED HEALTH AND MEDICINE, 2020, 270 : 1403 - 1404
  • [7] Machine Learning Applied to Reference Signal-Less Detection of Motion Artifacts in Photoplethysmographic Signals: A Review
    Argüello-Prada, Erick Javier
    Castillo García, Javier Ferney
    Sensors, 2024, 24 (22)
  • [8] SYSTEMATIC REVIEW OF DIABETES DISEASE MANAGEMENT INVERVENTIONS
    Gorman, K. M.
    Foster, A. D.
    Kaspin, L. C.
    Kindermann, S. L.
    Miller, R. M.
    VALUE IN HEALTH, 2012, 15 (04) : A187 - A187
  • [9] A systematic review of diabetes disease management programs
    Knight, K
    Badamgarav, E
    Henning, JM
    Hasselblad, V
    Gano, AD
    Ofman, JJ
    Weingarten, SR
    AMERICAN JOURNAL OF MANAGED CARE, 2005, 11 (04): : 242 - 250
  • [10] Financial incentives in the management of diabetes: a systematic review
    Zhang, Qingqing
    Wei, Xue
    Zheng, Jing
    Lu, Yu
    Wu, Yucheng
    COST EFFECTIVENESS AND RESOURCE ALLOCATION, 2024, 22 (01):