Left Ventricular Pressure Estimation Using Machine Learning-Based Heart Sound Classification

被引:4
|
作者
Westphal, Philip [1 ,2 ]
Luo, Hongxing [1 ]
Shahmohammadi, Mehrdad [3 ]
Heckman, Luuk I. B. [1 ]
Kuiper, Marion [1 ]
Prinzen, Frits W. [1 ]
Delhaas, Tammo [3 ]
Cornelussen, Richard N. [1 ,2 ]
机构
[1] Cardiovasc Res Inst Maastricht CARIM, Dept Physiol, Maastricht, Netherlands
[2] plc, Bakken Res Ctr, Medtron, Maastricht, Netherlands
[3] Cardiovasc Res Inst Maastricht CARIM, Dept Biomed Engn, Maastricht, Netherlands
来源
FRONTIERS IN CARDIOVASCULAR MEDICINE | 2022年 / 9卷
关键词
heart sound; hemodynamics; cardiac resynchronization therapy; artificial intelligence; machine learning; animal; epicardial acceleration; PEAK ENDOCARDIAL ACCELERATION; CARDIAC RESYNCHRONIZATION; FAILURE; OPTIMIZATION; VALIDATION; IMPACT; DELAY;
D O I
10.3389/fcvm.2022.763048
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
ObjectiveA method to estimate absolute left ventricular (LV) pressure and its maximum rate of rise (LV dP/dtmax) from epicardial accelerometer data and machine learning is proposed. MethodsFive acute experiments were performed on pigs. Custom-made accelerometers were sutured epicardially onto the right ventricle, LV, and right atrium. Different pacing configurations and contractility modulations, using isoflurane and dobutamine infusions, were performed to create a wide variety of hemodynamic conditions. Automated beat-by-beat analysis was performed on the acceleration signals to evaluate amplitude, time, and energy-based features. For each sensing location, bootstrap aggregated classification tree ensembles were trained to estimate absolute maximum LV pressure (LVPmax) and LV dP/dtmax using amplitude, time, and energy-based features. After extraction of acceleration and pressure-based features, location specific, bootstrap aggregated classification ensembles were trained to estimate absolute values of LVPmax and its maximum rate of rise (LV dP/dtmax) from acceleration data. ResultsWith a dataset of over 6,000 beats, the algorithm narrowed the selection of 17 predefined features to the most suitable 3 for each sensor location. Validation tests showed the minimal estimation accuracies to be 93% and 86% for LVPmax at estimation intervals of 20 and 10 mmHg, respectively. Models estimating LV dP/dtmax achieved an accuracy of minimal 93 and 87% at estimation intervals of 100 and 200 mmHg/s, respectively. Accuracies were similar for all sensor locations used. ConclusionUnder pre-clinical conditions, the developed estimation method, employing epicardial accelerometers in conjunction with machine learning, can reliably estimate absolute LV pressure and its first derivative.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Machine Learning-Based Prediction of Myocardial Recovery in Patients With Left Ventricular Assist Device Support
    Topkara, Veli K.
    Elias, Pierre
    Jain, Rashmi
    Sayer, Gabriel
    Burkhoff, Daniel
    Uriel, Nir
    CIRCULATION-HEART FAILURE, 2022, 15 (01) : 20 - 27
  • [22] Machine Learning-Based Segmentation of Left Ventricular Myocardial Fibrosis from Magnetic Resonance Imaging
    Fatemeh Zabihollahy
    S. Rajan
    E. Ukwatta
    Current Cardiology Reports, 2020, 22
  • [23] Machine learning-based classification of cardiac diseases from PCG recorded heart sounds
    Yadav, Anjali
    Singh, Anushikha
    Dutta, Malay Kishore
    Travieso, Carlos M.
    NEURAL COMPUTING & APPLICATIONS, 2020, 32 (24) : 17843 - 17856
  • [24] Machine Learning-Based Segmentation of Left Ventricular Myocardial Fibrosis from Magnetic Resonance Imaging
    Zabihollahy, Fatemeh
    Rajan, S.
    Ukwatta, E.
    CURRENT CARDIOLOGY REPORTS, 2020, 22 (08)
  • [25] Non-Destructive Quality Estimation Using a Machine Learning-Based Spectroscopic Approach in Kiwifruits
    Tziotzios, Georgios
    Pantazi, Xanthoula Eirini
    Paraskevas, Charalambos
    Tsitsopoulos, Christos
    Valasiadis, Dimitrios
    Nasiopoulou, Elpida
    Michailidis, Michail
    Molassiotis, Athanassios
    HORTICULTURAE, 2024, 10 (03)
  • [26] Machine learning-based bladder effusion estimation model construction on intravesical pressure data
    Yuan, Gang
    Li, Yu
    Ge, Zicong
    Yang, Xiaodong
    Zheng, Jian
    Wu, Zhongyi
    Zhang, Yin
    Zhang, Wanlu
    Tang, Liangfeng
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2023, 86
  • [27] Evaluation of machine learning-based solutions for health
    Antoniou, Tony
    Mamdani, Muhammad
    CANADIAN MEDICAL ASSOCIATION JOURNAL, 2021, 193 (44) : E1720 - E1724
  • [28] Automatic Heart Disease Detection by Classification of Ventricular Arrhythmias on ECG Using Machine Learning
    Aamir, Khalid Mahmood
    Ramzan, Muhammad
    Skinadar, Saima
    Khan, Hikmat Ullah
    Tariq, Usman
    Lee, Hyunsoo
    Nam, Yunyoung
    Khan, Muhammad Attique
    CMC-COMPUTERS MATERIALS & CONTINUA, 2022, 71 (01): : 17 - 33
  • [29] Machine learning-based methods for TTF estimation with application to APU prognostics
    Yang, Chunsheng
    Letourneau, Sylvain
    Liu, Jie
    Cheng, Qiangqiang
    Yang, Yubin
    APPLIED INTELLIGENCE, 2017, 46 (01) : 227 - 239
  • [30] Machine Learning-Based Classification of Abnormal Liver Tissues Using Relative Permittivity
    Samaddar, Poulami
    Mishra, Anup Kumar
    Gaddam, Sunil
    Singh, Mansunderbir
    Modi, Vaishnavi K.
    Gopalakrishnan, Keerthy
    Bayer, Rachel L.
    Sa, Ivone Cristina Igreja
    Khanal, Shalil
    Hirsova, Petra
    Kostallari, Enis
    Dey, Shuvashis
    Mitra, Dipankar
    Roy, Sayan
    Arunachalam, Shivaram P.
    SENSORS, 2022, 22 (24)