Rjoob Khaled, Bond Raymond, Finlay Dewar, McGilligan Victoria, J Leslie Stephen, Rababah Ali, Iftikhar Aleeha, Guldenring Daniel, Knoery Charles, McShane Anne, Peace Aaron
Faculty of Computing, Engineering & Built Environment, Ulster University, Jordanstown, United Kingdom.
Faculty of Life & Health Sciences, Centre for Personalised Medicine, Ulster University, Londonderry, United Kingdom.
JMIR Med Inform. 2021 Apr 16;9(4):e25347. doi: 10.2196/25347.
A 12-lead electrocardiogram (ECG) is the most commonly used method to diagnose patients with cardiovascular diseases. However, there are a number of possible misinterpretations of the ECG that can be caused by several different factors, such as the misplacement of chest electrodes.
The aim of this study is to build advanced algorithms to detect precordial (chest) electrode misplacement.
In this study, we used traditional machine learning (ML) and deep learning (DL) to autodetect the misplacement of electrodes V1 and V2 using features from the resultant ECG. The algorithms were trained using data extracted from high-resolution body surface potential maps of patients who were diagnosed with myocardial infarction, diagnosed with left ventricular hypertrophy, or a normal ECG.
DL achieved the highest accuracy in this study for detecting V1 and V2 electrode misplacement, with an accuracy of 93.0% (95% CI 91.46-94.53) for misplacement in the second intercostal space. The performance of DL in the second intercostal space was benchmarked with physicians (n=11 and age 47.3 years, SD 15.5) who were experienced in reading ECGs (mean number of ECGs read in the past year 436.54, SD 397.9). Physicians were poor at recognizing chest electrode misplacement on the ECG and achieved a mean accuracy of 60% (95% CI 56.09-63.90), which was significantly poorer than that of DL (P<.001).
DL provides the best performance for detecting chest electrode misplacement when compared with the ability of experienced physicians. DL and ML could be used to help flag ECGs that have been incorrectly recorded and flag that the data may be flawed, which could reduce the number of erroneous diagnoses.
12导联心电图(ECG)是诊断心血管疾病患者最常用的方法。然而,ECG存在多种可能的误判情况,这些误判可能由多种不同因素引起,如胸电极放置不当。
本研究旨在构建先进算法以检测胸前(胸部)电极放置不当。
在本研究中,我们使用传统机器学习(ML)和深度学习(DL),利用所得ECG的特征自动检测V1和V2电极的放置不当情况。使用从诊断为心肌梗死、左心室肥厚或心电图正常的患者的高分辨率体表电位图中提取的数据对算法进行训练。
在本研究中,DL在检测V1和V2电极放置不当方面准确率最高,在第二肋间间隙放置不当的检测准确率为93.0%(95%CI 91.46 - 94.53)。DL在第二肋间间隙的表现以阅读ECG经验丰富的医生(n = 11,年龄47.3岁,标准差15.5)为基准(过去一年平均阅读ECG数量436.54,标准差397.9)。医生在识别ECG上的胸电极放置不当方面表现不佳,平均准确率为60%(95%CI 56.09 - 63.90),显著低于DL(P <.001)。
与经验丰富的医生相比,DL在检测胸电极放置不当方面表现最佳。DL和ML可用于帮助标记记录错误的ECG,并提示数据可能存在缺陷,这可能减少错误诊断的数量。