Tianjin Key Laboratory of Ionic-Molecular Function of Cardiovascular disease, Department of Cardiology, Tianjin Institute of Cardiology, The Second Hospital of Tianjin Medical University, 23, Pingjiang Road, Hexi District, Tianjin, 300211, People's Republic of China.
Department of Cardiovascular Surgery, Tianjin Medical University General Hospital, Tianjin, China.
BMC Med Educ. 2023 Dec 8;23(1):936. doi: 10.1186/s12909-023-04907-9.
The accuracy of electrocardiogram (ECG) interpretation by doctors are affected by the available clinical information. However, having a complete set of clinical details before making a diagnosis is very difficult in the clinical setting especially in the early stages of the admission process. Therefore, we developed an artificial intelligence-assisted ECG diagnostic system (AI-ECG) using natural language processing to provide screened key clinical information during ECG interpretation.
Doctors with varying levels of training were asked to make diagnoses from 50 ECGs using a common ECG diagnosis system that does not contain clinical information. After a two-week-blanking period, the same set of ECGs was reinterpreted by the same doctors with AI-ECG containing clinical information. Two cardiologists independently provided diagnostic criteria for 50 ECGs, and discrepancies were resolved by consensus or, if necessary, by a third cardiologist. The accuracy of ECG interpretation was assessed, with each response scored as correct/partially correct = 1 or incorrect = 0.
The mean accuracy of ECG interpretation was 30.2% and 36.2% with the common ECG system and AI-ECG system, respectively. Compared to the unaided ECG system, the accuracy of interpretation was significantly improved with the AI-ECG system (P for paired t-test = 0.002). For senior doctors, no improvement was found in ECG interpretation accuracy, while an AI-ECG system was associated with 27% higher mean scores (24.3 ± 9.4% vs. 30.9 ± 10.6%, P = 0.005) for junior doctors.
Intelligently screened key clinical information could improve the accuracy of ECG interpretation by doctors, especially for junior doctors.
医生对心电图(ECG)的解读准确性受到可用临床信息的影响。然而,在临床环境中,特别是在入院过程的早期阶段,要做出诊断,获得完整的临床详细信息是非常困难的。因此,我们使用自然语言处理开发了一种人工智能辅助心电图诊断系统(AI-ECG),在进行心电图解读时提供筛选后的关键临床信息。
要求不同水平培训的医生使用不包含临床信息的常见心电图诊断系统对 50 份心电图进行诊断。在两周的空白期后,同一位医生使用包含临床信息的 AI-ECG 重新解读同一组心电图。两位心脏病专家独立为 50 份心电图提供诊断标准,如果存在分歧,则通过共识或必要时通过第三位心脏病专家解决。评估心电图解读的准确性,每个响应的评分均为正确/部分正确=1 或错误=0。
使用常见心电图系统和 AI-ECG 系统进行心电图解读的平均准确率分别为 30.2%和 36.2%。与未辅助的心电图系统相比,使用 AI-ECG 系统显著提高了心电图解读的准确性(配对 t 检验 P 值=0.002)。对于资深医生,心电图解读准确性没有提高,而 AI-ECG 系统与初级医生的平均得分提高了 27%(24.3±9.4%比 30.9±10.6%,P=0.005)。
智能筛选的关键临床信息可以提高医生心电图解读的准确性,特别是对初级医生。