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基于单条件决策规则的算法对 12 导联动态心电图记录质量进行二分类的评估。

Evaluation of an algorithm based on single-condition decision rules for binary classification of 12-lead ambulatory ECG recording quality.

机构信息

Institute of Cellular Medicine, Newcastle University, Newcastle upon Tyne, UK.

出版信息

Physiol Meas. 2012 Sep;33(9):1435-48. doi: 10.1088/0967-3334/33/9/1435. Epub 2012 Aug 17.

Abstract

A new algorithm for classifying ECG recording quality based on the detection of commonly observed ECG contaminants which often render the ECG unusable for diagnostic purposes was evaluated. Contaminants (baseline drift, flat line, QRS-artefact, spurious spikes, amplitude stepwise changes, noise) were detected on individual leads from joint time-frequency analysis and QRS amplitude. Classification was based on cascaded single-condition decision rules (SCDR) that tested levels of contaminants against classification thresholds. A supervised learning classifier (SLC) was implemented for comparison. The SCDR and SLC algorithms were trained on an annotated database (Set A, PhysioNet Challenge 2011) of 'acceptable' versus 'unacceptable' quality recordings using the 'leave M out' approach with repeated random partitioning and cross-validation. Two training approaches were considered: (i) balanced, in which training records had equal numbers of 'acceptable' and 'unacceptable' recordings, (ii) unbalanced, in which the ratio of 'acceptable' to 'unacceptable' recordings from Set A was preserved. For each training approach, thresholds were calculated, and classification accuracy of the algorithm compared to other rule based algorithms and the SLC using a database for which classifications were unknown (Set B PhysioNet Challenge 2011). The SCDR algorithm achieved the highest accuracy (91.40%) compared to the SLC (90.40%) in spite of its simple logic. It also offers the advantage that it facilitates reporting of meaningful causes of poor signal quality to users.

摘要

一种新的基于常见 ECG 干扰检测的 ECG 记录质量分类算法,这些干扰通常会使 ECG 无法用于诊断目的,该算法已得到评估。干扰(基线漂移、平线、QRS 伪差、杂散尖峰、幅度阶跃变化、噪声)在单个导联上通过联合时频分析和 QRS 幅度进行检测。分类基于级联单条件决策规则(SCDR),该规则根据分类阈值测试污染物的水平。实施了一个监督学习分类器(SLC)进行比较。SCDR 和 SLC 算法使用“M 留出”方法和重复随机分区和交叉验证,基于带注释的“可接受”与“不可接受”质量记录数据库(Set A,PhysioNet 挑战赛 2011)进行训练,使用“leave M out”方法和重复随机分区和交叉验证,进行训练。考虑了两种训练方法:(i)平衡,其中训练记录的“可接受”和“不可接受”记录数量相等,(ii)不平衡,其中 Set A 的“可接受”与“不可接受”记录的比例保持不变。对于每种训练方法,都计算了阈值,并使用未知分类的数据库(PhysioNet 挑战赛 2011 的 Set B)比较了算法与其他基于规则的算法和 SLC 的分类准确性。尽管 SCDR 算法的逻辑简单,但与 SLC(90.40%)相比,它实现了最高的准确性(91.40%)。它还具有向用户报告不良信号质量的有意义原因的优势。

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