Liang Yongbo, Hussain Ahmed, Abbott Derek, Menon Carlo, Ward Rabab, Elgendi Mohamed
School of Electrical and Computer Engineering, University of British Columbia, Vancouver, BC, Canada.
Faculty of Medicine, University of British Columbia, Vancouver, BC, Canada.
Front Digit Health. 2020 Dec 23;2:610956. doi: 10.3389/fdgth.2020.610956. eCollection 2020.
Cardiovascular diseases continue to be a significant global health threat. The electrocardiogram (ECG) signal is a physiological signal that plays a major role in preventing severe and even fatal heart diseases. The purpose of this research is to explore a simple mathematical feature transformation that could be applied to ECG signal segments in order to improve the detection accuracy of heartbeats, which could facilitate automated heart disease diagnosis. Six different mathematical transformation methods were examined and analyzed using 10s-length ECG segments, which showed that a reciprocal transformation results in consistently better classification performance for normal vs. atrial fibrillation beats and normal vs. atrial premature beats, when compared to untransformed features. The second best data transformation in terms of heartbeat detection accuracy was the cubic transformation. Results showed that applying the logarithmic transformation, which is considered the go-to data transformation, was not optimal among the six data transformations. Using the optimal data transformation, the reciprocal, can lead to a 35.6% accuracy improvement. According to the overall comparison tested by different feature engineering methods, classifiers, and different dataset sizes, performance improvement also reached 4.7%. Therefore, adding a simple data transformation step, such as the reciprocal or cubic, to the extracted features can improve current automated heartbeat classification in a timely manner.
心血管疾病仍然是全球重大的健康威胁。心电图(ECG)信号是一种生理信号,在预防严重甚至致命的心脏病方面发挥着重要作用。本研究的目的是探索一种简单的数学特征变换,该变换可应用于心电图信号段,以提高心跳检测的准确性,从而有助于心脏病的自动诊断。使用时长为10秒的心电图段对六种不同的数学变换方法进行了检验和分析,结果表明,与未变换的特征相比,倒数变换在正常心跳与房颤心跳以及正常心跳与房性早搏的分类性能上始终表现更好。就心跳检测准确性而言,第二好的数据变换是三次方变换。结果表明,在这六种数据变换中,被视为常用数据变换的对数变换并非最优。使用最优的数据变换——倒数变换,可使准确率提高35.6%。根据不同特征工程方法、分类器以及不同数据集大小进行的总体比较测试,性能提升也达到了4.7%。因此,在提取的特征中添加一个简单的数据变换步骤,如倒数变换或三次方变换,可及时改进当前的自动心跳分类。