Cairns Andrew W, Bond Raymond R, Finlay Dewar D, Breen Cathal, Guldenring Daniel, Gaffney Robert, Gallagher Anthony G, Peace Aaron J, Henn Pat
Ulster University, Northern Ireland, UK.
Ulster University, Northern Ireland, UK.
J Biomed Inform. 2016 Dec;64:93-107. doi: 10.1016/j.jbi.2016.09.016. Epub 2016 Sep 27.
The 12-lead Electrocardiogram (ECG) presents a plethora of information and demands extensive knowledge and a high cognitive workload to interpret. Whilst the ECG is an important clinical tool, it is frequently incorrectly interpreted. Even expert clinicians are known to impulsively provide a diagnosis based on their first impression and often miss co-abnormalities. Given it is widely reported that there is a lack of competency in ECG interpretation, it is imperative to optimise the interpretation process. Predominantly the ECG interpretation process remains a paper based approach and whilst computer algorithms are used to assist interpreters by providing printed computerised diagnoses, there are a lack of interactive human-computer interfaces to guide and assist the interpreter.
An interactive computing system was developed to guide the decision making process of a clinician when interpreting the ECG. The system decomposes the interpretation process into a series of interactive sub-tasks and encourages the clinician to systematically interpret the ECG. We have named this model 'Interactive Progressive based Interpretation' (IPI) as the user cannot 'progress' unless they complete each sub-task. Using this model, the ECG is segmented into five parts and presented over five user interfaces (1: Rhythm interpretation, 2: Interpretation of the P-wave morphology, 3: Limb lead interpretation, 4: QRS morphology interpretation with chest lead and rhythm strip presentation and 5: Final review of 12-lead ECG). The IPI model was implemented using emerging web technologies (i.e. HTML5, CSS3, AJAX, PHP and MySQL). It was hypothesised that this system would reduce the number of interpretation errors and increase diagnostic accuracy in ECG interpreters. To test this, we compared the diagnostic accuracy of clinicians when they used the standard approach (control cohort) with clinicians who interpreted the same ECGs using the IPI approach (IPI cohort).
For the control cohort, the (mean; standard deviation; confidence interval) of the ECG interpretation accuracy was (45.45%; SD=18.1%; CI=42.07, 48.83). The mean ECG interpretation accuracy rate for the IPI cohort was 58.85% (SD=42.4%; CI=49.12, 68.58), which indicates a positive mean difference of 13.4%. (CI=4.45, 22.35) An N-1 Chi-square test of independence indicated a 92% chance that the IPI cohort will have a higher accuracy rate. Interpreter self-rated confidence also increased between cohorts from a mean of 4.9/10 in the control cohort to 6.8/10 in the IPI cohort (p=0.06). Whilst the IPI cohort had greater diagnostic accuracy, the duration of ECG interpretation was six times longer when compared to the control cohort.
We have developed a system that segments and presents the ECG across five graphical user interfaces. Results indicate that this approach improves diagnostic accuracy but with the expense of time, which is a valuable resource in medical practice.
12导联心电图(ECG)包含大量信息,解读时需要广泛的知识和较高的认知工作量。虽然心电图是一种重要的临床工具,但经常被错误解读。众所周知,即使是专家临床医生也会凭第一印象冲动地做出诊断,常常忽略合并异常情况。鉴于广泛报道称心电图解读能力不足,优化解读过程势在必行。目前,心电图解读过程主要仍是基于纸质的方法,虽然使用计算机算法通过提供打印的计算机化诊断来协助解读人员,但缺乏交互式人机界面来指导和协助解读人员。
开发了一种交互式计算系统,以指导临床医生在解读心电图时的决策过程。该系统将解读过程分解为一系列交互式子任务,并鼓励临床医生系统地解读心电图。我们将此模型命名为“基于交互式渐进的解读”(IPI),因为除非用户完成每个子任务,否则无法“推进”。使用此模型,心电图被分为五个部分,并通过五个用户界面呈现(1:心律解读,2:P波形态解读,3:肢体导联解读,4:结合胸导联和心律条图的QRS形态解读,5:12导联心电图的最终审核)。IPI模型使用新兴的网络技术(即HTML5、CSS3、AJAX、PHP和MySQL)实现。假设该系统将减少解读错误的数量,并提高心电图解读人员的诊断准确性。为了验证这一点,我们比较了临床医生使用标准方法(对照组)与使用IPI方法解读相同心电图的临床医生(IPI组)的诊断准确性。
对于对照组,心电图解读准确性的(平均值;标准差;置信区间)为(45.45%;SD = 18.1%;CI = 42.07, 48.83)。IPI组的平均心电图解读准确率为58.85%(SD = 42.4%;CI = 49.12, 68.58),这表明平均正差值为13.4%。(CI = 4.45, 22.35)独立性的N - 1卡方检验表明,IPI组有92%的可能性具有更高的准确率。解读人员的自我评估信心在两组之间也有所提高,从对照组的平均4.9/10提高到IPI组的6.8/10(p = 0.06)。虽然IPI组具有更高的诊断准确性,但与对照组相比,心电图解读的持续时间长了六倍。
我们开发了一个系统,该系统通过五个图形用户界面分割并呈现心电图。结果表明,这种方法提高了诊断准确性,但以时间为代价,而时间在医疗实践中是一种宝贵的资源。