School of Medicine, The University of Notre Dame Australia, 21 Henry St., Fremantle, WA, 6160, Australia; Department of Medicine, Royal Perth Hospital, 197 Wellington Street, Perth, WA, 6000, Australia.
Department of Medicine, Royal Perth Hospital, 197 Wellington Street, Perth, WA, 6000, Australia.
Sleep Med. 2021 Sep;85:166-171. doi: 10.1016/j.sleep.2021.07.014. Epub 2021 Jul 17.
Individuals with obstructive sleep apnoea (OSA) experience a higher burden of atrial fibrillation (AF) than the general population, and many cases of AF remain undetected. We tested the feasibility of an artificial intelligence (AI) approach to opportunistic detection of AF from single-lead electrocardiograms (ECGs) which are routinely recorded during in-laboratory polysomnographic sleep studies.
Using transfer learning, an existing ECG AI model was applied to 1839 single-lead ECG traces recorded during in-laboratory sleep studies without any training of the algorithm. Manual review of all traces was performed by two trained clinicians who were blinded to each other's review. Discrepancies between the two investigators were resolved by two cardiologists who were also unaware of each other's scoring. The diagnostic accuracy of the AI algorithm was calculated against the results of the manual ECG review which were considered gold standard.
Manual review identified AF in 144 of the 1839 single-lead ECGs (7.8%). The AI detected all cases of manually confirmed AF (sensitivity = 100%, 95% CI: 97.5-100.0). The AI model misclassified many ECGs with artefacts as AF, resulting in a specificity of 76.0 (95% CI: 73.9-78.0), and an overall diagnostic accuracy of 77.9% (95% CI: 75.9%-97.8%).
Transfer learning AI, without additional training, can be successfully applied to disparate ECG signals, with excellent negative predictive values, and can exclude AF among patients undergoing evaluation for suspected OSA. Further signal-specific training is likely to improve the AI's specificity and decrease the need for manual verification.
与普通人群相比,阻塞性睡眠呼吸暂停(OSA)患者心房颤动(AF)的负担更高,许多 AF 病例仍未被发现。我们测试了一种人工智能(AI)方法从常规记录的单导联心电图(ECG)中偶然检测 AF 的可行性,这些心电图是在实验室多导睡眠研究中记录的。
使用迁移学习,将现有的 ECG AI 模型应用于 1839 条在实验室睡眠研究中记录的单导联 ECG 轨迹,而无需对算法进行任何培训。由两名经过培训的临床医生对所有轨迹进行手动复查,两名临床医生彼此之间对复查结果不知情。两名心脏病专家对两位研究人员之间的差异进行了裁决,他们也不知道彼此的评分。根据手动 ECG 复查的结果计算 AI 算法的诊断准确性,该结果被认为是金标准。
手动复查在 1839 条单导联 ECG 中发现了 144 例 AF(7.8%)。AI 检测到所有经手动确认的 AF 病例(敏感性=100%,95%CI:97.5-100.0)。该 AI 模型错误地将许多带有伪影的 ECG 分类为 AF,导致特异性为 76.0(95%CI:73.9-78.0),总体诊断准确性为 77.9%(95%CI:75.9%-97.8%)。
无需额外培训,迁移学习 AI 可成功应用于不同的 ECG 信号,具有出色的阴性预测值,可排除疑似 OSA 患者中 AF 的存在。进一步的信号特异性训练可能会提高 AI 的特异性,并减少手动验证的需求。