首页> 外文期刊>Journal of Electrocardiology: An International Publication for the Study of the Electrical Activities of the Heart >A decision support system and rule-based algorithm to augment the human interpretation of the 12-lead electrocardiogram
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A decision support system and rule-based algorithm to augment the human interpretation of the 12-lead electrocardiogram

机译:一种决策支持系统和基于规则的算法,增加了12引线心电图的人类解释

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Abstract Background The 12-lead Electrocardiogram (ECG) has been used to detect cardiac abnormalities in the same format for more than 70years. However, due to the complex nature of 12-lead ECG interpretation, there is a significant cognitive workload required from the interpreter. This complexity in ECG interpretation often leads to errors in diagnosis and subsequent treatment. We have previously reported on the development of an ECG interpretation support system designed to augment the human interpretation process. This computerised decision support system has been named ‘Interactive Progressive based Interpretation’ (IPI). In this study, a decision support algorithm was built into the IPI system to suggest potential diagnoses based on the interpreter's annotations of the 12-lead ECG. We hypothesise semi-automatic interpretation using a digital assistant can be an optimal man-machine model for ECG interpretation. Objectives To improve interpretation accuracy and reduce missed co-abnormalities. Methods The Differential Diagnoses Algorithm (DDA) was developed using web technologies where diagnostic ECG criteria are defined in an open storage format, Javascript Object Notation (JSON), which is queried using a rule-based reasoning algorithm to suggest diagnoses. To test our hypothesis, a counterbalanced trial was designed where subjects interpreted ECGs using the conventional approach and using the IPI+DDA approach. Results A total of 375 interpretations were collected. The IPI+DDA approach was shown to improve diagnostic accuracy by 8.7% (although not statistically significant, p -value=0.1852), the IPI+DDA suggested the correct interpretation more often than the human interpreter in 7/10 cases (varying statistical significance). Human interpretation accuracy increased to 70% when seven suggestions were generated. Conclusion Although results were not found to be statistically significant, we found; 1) our decision support tool increased the number of correct interpretations, 2) the DDA algorithm suggested the correct interpretation more often than humans, and 3) as many as 7 computerised diagnostic suggestions augmented human decision making in ECG interpretation. Statistical significance may be achieved by expanding sample size.
机译:摘要背景,12引线心电图(ECG)已被用于检测相同格式的心脏异常超过70年。然而,由于12引导ECG解释的复杂性,从口译员需要了解显着的认知工作量。 ECG解释中的这种复杂性往往导致诊断和随后的治疗中的错误。我们之前有关于开发ECG解释支持系统,旨在增强人类解释过程。这种计算机化决策支持系统已被命名为“基于交互式渐进式解释”(IPI)。在本研究中,建立了一种决策支持算法,以基于翻译的12-Lead ECG的注释来建议潜在诊断。我们假设使用数字助理的半自动解释可以是ECG解释的最佳人机模型。目标提高解释准确性并减少错过的共同异常。方法使用Web技术开发差异诊断算法(DDA),其中使用诊断ECG标准以开放存储格式定义,JavaScript对象表示法(JSON),使用基于规则的推理算法查询以建议诊断。为了测试我们的假设,设计了一个平衡的试验,其中受试者使用传统方法解释ECG并使用IPI + DDA方法。结果总共收集了375个解释。显示IPI + DDA方法以提高诊断准确性8.7%(虽然没有统计学意义,但value = 0.1852),IPI + DDA在7/10案例中更频繁地提出了正确的解释器(不同的统计显着性)。当产生七项建议时,人类解释准确性增加到70%。结论虽然我们发现了结果没有结果存在统计学意义; 1)我们的决策支持工具增加了正确解释的数量,2)DDA算法提出了比人类更常用的正确解释,以及3)多达7个计算机化诊断建议在ECG解释中增强了人为决策。通过扩张样品大小,可以实现统计学意义。

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