Puri Chetanya, Singh Rituraj, Bandyopadhyay Soma, Ukil Arijit, Mukherjee Ayan
Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:2753-2756. doi: 10.1109/EMBC.2017.8037427.
Phonocardiogram (PCG) records heart sound and murmurs, which contains significant information of cardiac health. Analysis of PCG signal has the potential to detect abnormal cardiac condition. However, the presence of noise and motion artifacts in PCG hinders the accuracy of clinical event detection. Thus, noise detection and elimination are crucial to ensure accurate clinical analysis. In this paper, we present a robust denoising technique, Proclean that precisely detects the noisy PCG signal through pattern recognition, and statistical learning. We propose a novel self-discriminant learner that ensures to obtain distinct feature set to distinguish clean and noisy PCG signals without human-in-loop. We demonstrate that our proposed denoising leads to higher accuracy in subsequent clinical analytics for medical investigation. Our extensive experimentations with publicly available MIT-Physionet datasets show that we achieve more than 85% accuracy for noisy PCG signal detection. Further, we establish that physiological abnormality detection improves by more than 20%, when our proposed denoising mechanism is applied.
心音图(PCG)记录心音和杂音,其中包含有关心脏健康的重要信息。对PCG信号进行分析有检测心脏异常状况的潜力。然而,PCG中存在的噪声和运动伪影会妨碍临床事件检测的准确性。因此,噪声检测和消除对于确保准确的临床分析至关重要。在本文中,我们提出了一种强大的去噪技术Proclean,它通过模式识别和统计学习精确检测有噪声的PCG信号。我们提出了一种新颖的自判别学习器,可确保在无需人工干预的情况下获得不同的特征集,以区分干净和有噪声的PCG信号。我们证明,我们提出的去噪方法在后续用于医学调查的临床分析中具有更高的准确性。我们对公开可用的麻省理工学院 - 生理网数据集进行的广泛实验表明,我们对有噪声的PCG信号检测的准确率超过85%。此外,我们证实,当应用我们提出的去噪机制时,生理异常检测的准确率提高了20%以上。