Uncertainty quantification in DenseNet model using myocardial infarction ECG signals

被引:32
作者
Jahmunah, V. [1 ]
Ng, E. Y. K. [1 ]
Tan, Ru-San [2 ]
Oh, Shu Lih [3 ]
Acharya, U. Rajendra [3 ,4 ,5 ,6 ,7 ,8 ]
机构
[1] Nanyang Technol Univ, Sch Mech & Aerosp Engn, Singapore, Singapore
[2] Natl Heart Ctr, Singapore, Singapore
[3] Ngee Ann Polytech, Sch Engn, Singapore, Singapore
[4] Singapore Univ Social Sci, Sch Social Sci & Technol, Biomed Engn, Singapore, Singapore
[5] Kumamoto Univ, Int Res Org Adv Sci & Technol IROAST, Kumamotov, Japan
[6] Asia Univ, Dept Bioinformat & Med Engn, Taichung, Taiwan
[7] Univ Southern Queensland, Sch Management & Enterprise, Darling Ht, QLD, Australia
[8] Nanyang Technol Univ, Sch Mech & Aerosp Engn, Singapore 639798, Singapore
关键词
Uncertainty quantification; Myocardial infarction; DenseNet model; Deep learning; Predictive entropy; Reverse KL divergence; MORTALITY; FUSION;
D O I
10.1016/j.cmpb.2022.107308
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Background and objective: Myocardial infarction (MI) is a life-threatening condition diagnosed acutely on the electrocardiogram (ECG). Several errors, such as noise, can impair the prediction of automated ECG diagnosis. Therefore, quantification and communication of model uncertainty are essential for reliable MI diagnosis.Methods: A Dirichlet DenseNet model that could analyze out-of-distribution data and detect misclassi-fication of MI and normal ECG signals was developed. The DenseNet model was first trained with the pre-processed MI ECG signals (from the best lead V6) acquired from the Physikalisch-Technische Bun-desanstalt (PTB) database, using the reverse Kullback-Leibler (KL) divergence loss. The model was then tested with newly synthesized ECG signals with added em and ma noise samples. Predictive entropy was used as an uncertainty measure to determine the misclassification of normal and MI signals. Model per-formance was evaluated using four uncertainty metrics: uncertainty sensitivity (UNSE), uncertainty speci-ficity (UNSP), uncertainty accuracy (UNAC), and uncertainty precision (UNPR); the classification threshold was set at 0.3.Results: The UNSE of the DenseNet model was low but increased over the studied decremental noise range (-6 to 24 dB), indicating that the model grew more confident in classifying the signals as they got less noisy. The model became more certain in its predictions from SNR values of 12 dB and 18 dB onwards, yielding UNAC values of 80% and 82.4% for em and ma noise signals, respectively. UNSP and UNPR values were close to 100% for em and ma noise signals, indicating that the model was self-aware of what it knew and didn't. Conclusion: Through this work, it has been established that the model is reliable as it was able to convey when it was not confident in the diagnostic information it was presenting. Thus, the model is trustworthy and can be used in healthcare applications, such as the emergency diagnosis of MI on ECGs.(c) 2022 Elsevier B.V. All rights reserved.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] Morphological and Temporal ECG Features for Myocardial Infarction Detection Using Support Vector Machines
    Arenas, Wilson J.
    Sotelo, Silvia A.
    Zequera, Martha L.
    Altuve, Miguel
    VIII LATIN AMERICAN CONFERENCE ON BIOMEDICAL ENGINEERING AND XLII NATIONAL CONFERENCE ON BIOMEDICAL ENGINEERING, 2020, 75 : 172 - 181
  • [42] A novel myocardial infarction localization method using multi-branch DenseNet and spatial matching-based active semi-supervised learning
    He, Ziyang
    Yuan, Shuaiying
    Zhao, Jianhui
    Du, Bo
    Yuan, Zhiyong
    Alhudhaif, Adi
    Alenezi, Fayadh
    Althubiti, Sara A.
    INFORMATION SCIENCES, 2022, 606 : 649 - 668
  • [43] Automated uncertainty quantification analysis using a system model and data
    Nannapaneni, Saideep
    Mahadevan, Sankaran
    Lechevalier, David
    Narayanan, Anantha
    Rachuri, Sudarsan
    PROCEEDINGS 2015 IEEE INTERNATIONAL CONFERENCE ON BIG DATA, 2015, : 1408 - 1417
  • [44] Model reduction for uncertainty quantification
    Ghanem, Roger
    EURODYN 2014: IX INTERNATIONAL CONFERENCE ON STRUCTURAL DYNAMICS, 2014, : 3 - 9
  • [45] Uncertainty quantification and Heston model
    Suarez-Taboada, Maria
    Witteveen, Jeroen A. S.
    Grzelak, Lech A.
    Oosterlee, Cornelis W.
    JOURNAL OF MATHEMATICS IN INDUSTRY, 2018, 8
  • [46] The Method for Identification Complex Signals using the Example of Preliminary Diagnosis of a Myocardial Infarction
    Klikushin, Yu N.
    Koshekova, B., V
    Koshekov, A. K.
    Kashevkin, A. A.
    Savostina, G., V
    Astapenko, N., V
    2017 IEEE INTERNATIONAL CONFERENCE ON POWER, CONTROL, SIGNALS AND INSTRUMENTATION ENGINEERING (ICPCSI), 2017, : 6 - 11
  • [47] Practical identifiability and uncertainty quantification of a pulsatile cardiovascular model
    Marquis, Andrew D.
    Arnold, Andrea
    Dean-Bernhoft, Caron
    Carlson, Brian E.
    Olufsen, Mette S.
    MATHEMATICAL BIOSCIENCES, 2018, 304 : 9 - 24
  • [48] A predictive model of perioperative myocardial infarction following elective spine surgery
    Passias, Peter G.
    Pierce, Katherine E.
    Alas, Haddy
    Bortz, Cole
    Brown, Avery E.
    Vasquez-Montes, Dennis
    Oh, Cheongeun
    Wang, Erik
    Jain, Deeptee
    O'Connell, Brooke K.
    Raad, Micheal
    Diebo, Bassel G.
    Soroceanu, Alexandra
    Gerling, Michael C.
    JOURNAL OF CLINICAL NEUROSCIENCE, 2022, 95 : 112 - 117
  • [49] Deep learning based myocardial ischemia detection in ECG signals
    Ogrezeanu, Iulian
    Stoian, Diana
    Turcea, Alexandru
    Itu, Lucian Mihai
    2020 24TH INTERNATIONAL CONFERENCE ON SYSTEM THEORY, CONTROL AND COMPUTING (ICSTCC), 2020, : 250 - 253
  • [50] The added value of ECG-gating for the diagnosis of myocardial infarction using myocardial perfusion scintigraphy and artificial neural networks
    Gjertsson, Peter
    Lomsky, Milan
    Richter, Jens
    Ohlsson, Mattias
    Tout, Deborah
    van Aswegen, Andries
    Underwood, Richard
    Edenbrandt, Lars
    CLINICAL PHYSIOLOGY AND FUNCTIONAL IMAGING, 2006, 26 (05) : 301 - 304