一种利用心电图数据的无参考注释的图形化评估工具

Yu-He Zhang, S. Babaeizadeh
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引用次数: 0

摘要

如果没有参考注释,则无法计算灵敏度和阳性预测值(PPV)等统计指标。对大型心电图数据库进行注释可能不可行,因此,开发一种不需要参考注释的评估工具是很有兴趣的。我们开发了一种评估关键性能属性(KPA)的工具,包括心律失常检测、心率、ST值和噪声耐受性。该工具有三层KPA图形。顶层包括整个数据库聚合结果的KPA值的交互式分布图。从这个顶层,用户可以选择一个单独的记录来启动交互式趋势图,显示特定记录上某个时间跨度的KPA值或它们的差异。从这第二层,用户可以识别任何感兴趣的KPA值(例如,特定的心律失常标签),以查看底层心电图波形。通过这三层导航,用户可以快速确认算法上报的KPA的有效性。对一种运动心律不齐算法的噪声容忍度进行了改进。然后使用该工具对遥测和动态心电图仓库(THEW)压力数据库E-OTH-12-0927-015进行可视化验证。我们通过手动标注该数据库中的一小部分记录来确认改进的视觉验证。
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A Graphical Evaluation Tool to Utilize ECG Data Without Reference Annotation
Without reference annotation, statistical metrics such as sensitivity and positive predictive value (PPV) cannot be calculated. Annotating a large ECG database may not be feasible, hence, the interest in developing an evaluation tool that does not require reference annotation. We developed a tool for evaluating key performance attributes (KPA) including arrhythmia detection, heart rate, ST value, and noise tolerance. The tool has three layers of KPA graphics. The top layer includes interactive distribution graphs of the KPA values for aggregated results for the entire database. From this top layer the user can select an individual record to launch interactive trending graphs that display the KPA values, or their discrepancies, for a time span on that particular record. From this second layer the user can identify any KPA value of interest (e.g., a specific arrhythmia label) to view the underlying ECG waveform. Navigating through these three layers, the user is able to quickly confirm the validity of KPA reported by the algorithm. We modified the noise tolerance of an exercise ECG arrhythmia algorithm. Then used this tool to visually verify the resulting improvement on the Telemetric and Holter ECG Warehouse (THEW) stress database E-OTH-12-0927-015. We confirmed the visual verification of improvement by manually annotating a small subset of records in this database.
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