ROBUST ALGORITHM FOR DIGITIZATION OF DEGRADED ELECTROCARDIOGRAM PAPER RECORDS

Rupali Patil, R. Karandikar
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引用次数: 3

Abstract

Electrocardiogram (ECG) paper records are used commonly for diagnosing heart abnormalities. The stored ECG paper records are recorded on thermal paper and may face ink evaporation problem over the time. Generally, to overcome this problem ECG paper record is scanned and stored as an image. However, the addition of noise during scanning such as low resolution scan, blurring, folding of paper, nonuniform lighting, orientation etc. can create difficulty in information retrieval. Current work robustly handles various degradation problems encountered in ECG paper scanning using modified k-fill algorithm. The proposed algorithm is tested with 836 ECG paper recordings with different types of degradations like aging effect, folding effect, ink evaporation effect, blurring effect and low resolution effect. We extracted clinically important parameters such as heart rate etc. with accuracy of 97.33% and abnormalities such as bradycardia, tachycardia, and atrial flutter from the ECG paper records using perceptual spectral centroid method. Overall accuracy of our prediction algorithm was found out to be 98.6%. We assume our work would be low cost, preliminary expert mechanism at rural places in the absence of expert cardiologist.
退化心电图纸质记录数字化的鲁棒算法
心电图(ECG)纸质记录通常用于诊断心脏异常。存储的心电图纸记录记录在热敏纸上,随着时间的推移可能会面临墨水蒸发问题。通常,为了克服这个问题,ECG纸质记录被扫描并存储为图像。然而,扫描过程中添加的噪声,如低分辨率扫描、模糊、纸张折叠、不均匀照明、方向等,会给信息检索带来困难。目前的工作使用改进的k-fill算法稳健地处理ECG纸张扫描中遇到的各种退化问题。该算法在836张具有老化效应、折叠效应、墨水蒸发效应、模糊效应和低分辨率效应等不同退化类型的心电记录上进行了测试。我们使用感知频谱质心法从心电图纸记录中提取了心率等临床重要参数,准确率为97.33%,以及心动过缓、心动过速和心房扑动等异常。我们的预测算法的总体准确率为98.6%。我们认为,在没有心脏病专家的情况下,我们的工作将是低成本的,在农村地区的初步专家机制。
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