Division of Rural Health and Wellbeing, University of Highlands and Islands, Inverness IV2 3JH, UK; Cardiology Department, Altnagelvin Hospital, Londonderry BT47 6SB, Northern Ireland, UK.
Ulster University, Jordanstown Campus, Shore Rd, Newtownabbey BT37 0QB, Northern Ireland, UK.
J Electrocardiol. 2019 Nov-Dec;57S:S86-S91. doi: 10.1016/j.jelectrocard.2019.08.006. Epub 2019 Aug 13.
Computerised electrocardiogram (ECG) interpretation diagnostic algorithms have been developed to guide clinical decisions like with ST segment elevation myocardial infarction (STEMI) where time in decision making is critical. These computer-generated diagnoses have been proven to strongly influence the final ECG diagnosis by the clinician; often called automation bias. However, the computerised diagnosis may be inaccurate and could result in a wrong or delayed treatment harm to the patient. We hypothesise that an algorithmic certainty index alongside a computer-generated diagnosis might mitigate automation bias. The impact of reporting a certainty index on the final diagnosis is not known.
To ascertain whether knowledge of the computer-generated ECG algorithmic certainty index influences operator diagnostic accuracy.
Clinicians who regularly analyse ECGs such as cardiology or acute care doctors, cardiac nurses and ambulance staff were invited to complete an online anonymous survey between March and April 2019. The survey had 36 ECGs with a clinical vignette of a typical chest pain and which were either a STEMI, normal, or borderline (but do not fit the STEMI criteria) along with an artificially created certainty index that was either high, medium, low or none. Participants were asked whether the ECG showed a STEMI and their confidence in the diagnosis. The primary outcomes were whether a computer-generated certainty index influenced interpreter's diagnostic decisions and improved their diagnostic accuracy. Secondary outcomes were influence of certainty index between different types of clinicians and influence of certainty index on user's own-diagnostic confidence.
A total of 91 participants undertook the survey and submitted 3262 ECG interpretations of which 75% of ECG interpretations were correct. Presence of a certainty index significantly increased the odds ratio of a correct ECG interpretation (OR 1.063, 95% CI 1.022-1.106, p = 0.004) but there was no significant difference between correct certainty index and incorrect certainty index (OR 1.028, 95% CI 0.923-1.145, p = 0.615). There was a trend for low certainty index to increase odds ratio compared to no certainty index (OR 1.153, 95% CI 0.898-1.482, p = 0.264) but a high certainty index significantly decreased the odds ratio of a correct ECG interpretation (OR 0.492, 95% CI 0.391-0.619, p < 0.001). There was no impact of presence of a certainty index (p = 0.528) or correct certainty index (p = 0.812) on interpreters' confidence in their ECG interpretation.
Our results show that the presence of an ECG certainty index improves the users ECG interpretation accuracy. This effect is not seen with differing levels of confidence within a certainty index, with reduced ECG interpretation success with a high certainty index compared with a trend for increased success with a low certainty index. This suggests that a certainty index improves interpretation when there is an increased element of doubt, possibly forcing the ECG user to spend more time and effort analysing the ECG. Further research is needed looking at time spent analysing differing certainty indices with alternate ECG diagnoses.
计算机化心电图(ECG)解释诊断算法已经被开发出来,以指导临床决策,例如在 ST 段抬高型心肌梗死(STEMI)中,决策时间至关重要。这些计算机生成的诊断已被证明会强烈影响临床医生最终的 ECG 诊断;这通常被称为自动化偏差。然而,计算机化的诊断可能不准确,可能会导致患者的错误或延迟治疗。我们假设算法确定性指数与计算机生成的诊断一起使用可能会减轻自动化偏差。报告确定性指数对最终诊断的影响尚不清楚。
确定是否了解计算机生成的 ECG 算法确定性指数会影响操作员的诊断准确性。
定期分析心电图的临床医生(如心脏病学或急症医生、心脏护士和急救人员)被邀请在 2019 年 3 月至 4 月期间完成在线匿名调查。该调查共有 36 个心电图,附有一个典型胸痛的临床案例,这些心电图要么是 STEMI,要么是正常,要么是边缘性(但不符合 STEMI 标准),还有一个人为创建的确定性指数,要么是高、中、低或无。参与者被要求判断心电图是否显示 STEMI,并对诊断的信心。主要结果是计算机生成的确定性指数是否影响解释器的诊断决策并提高其诊断准确性。次要结果是确定性指数在不同类型临床医生之间的影响,以及确定性指数对用户自身诊断信心的影响。
共有 91 名参与者完成了调查,并提交了 3262 份心电图解读,其中 75%的心电图解读是正确的。存在确定性指数显著增加了正确心电图解读的优势比(OR 1.063,95%CI 1.022-1.106,p=0.004),但正确确定性指数和不正确确定性指数之间没有显著差异(OR 1.028,95%CI 0.923-1.145,p=0.615)。低确定性指数与无确定性指数相比,增加了优势比(OR 1.153,95%CI 0.898-1.482,p=0.264),但高确定性指数显著降低了正确心电图解读的优势比(OR 0.492,95%CI 0.391-0.619,p<0.001)。存在确定性指数(p=0.528)或正确确定性指数(p=0.812)对解释者对其心电图解读的信心没有影响。
我们的结果表明,ECG 确定性指数的存在提高了用户的 ECG 解读准确性。在确定性指数内的置信度不同时,这种效果并不明显,与高确定性指数相比,ECG 解读成功率降低,而与低确定性指数相比,成功率呈上升趋势。这表明,当存在更多的不确定性时,确定性指数会提高解释效果,可能迫使 ECG 用户花费更多的时间和精力分析心电图。需要进一步研究不同确定性指数与不同心电图诊断的分析时间。