Choi Dong-Ju, Park Jin Joo, Ali Taqdir, Lee Sungyoung
1Division of Cardiology, Department of Internal Medicine, Seoul National University Bundang Hospital, Seongnam, Republic of Korea.
2Department of Computer Science and Engineering, Kyung Hee University, Yongin, Republic of Korea.
NPJ Digit Med. 2020 Apr 8;3:54. doi: 10.1038/s41746-020-0261-3. eCollection 2020.
The diagnosis of heart failure can be difficult, even for heart failure specialists. Artificial Intelligence-Clinical Decision Support System (AI-CDSS) has the potential to assist physicians in heart failure diagnosis. The aim of this work was to evaluate the diagnostic accuracy of an AI-CDSS for heart failure. AI-CDSS for cardiology was developed with a hybrid (expert-driven and machine-learning-driven) approach of knowledge acquisition to evolve the knowledge base with heart failure diagnosis. A retrospective cohort of 1198 patients with and without heart failure was used for the development of AI-CDSS (training dataset, = 600) and to test the performance (test dataset, = 598). A prospective clinical pilot study of 97 patients with dyspnea was used to assess the diagnostic accuracy of AI-CDSS compared with that of non-heart failure specialists. The concordance rate between AI-CDSS and heart failure specialists was evaluated. In retrospective cohort, the concordance rate was 98.3% in the test dataset. The concordance rate for patients with heart failure with reduced ejection fraction, heart failure with mid-range ejection fraction, heart failure with preserved ejection fraction, and no heart failure was 100%, 100%, 99.6%, and 91.7%, respectively. In a prospective pilot study of 97 patients presenting with dyspnea to the outpatient clinic, 44% had heart failure. The concordance rate between AI-CDSS and heart failure specialists was 98%, whereas that between non-heart failure specialists and heart failure specialists was 76%. In conclusion, AI-CDSS showed a high diagnostic accuracy for heart failure. Therefore, AI-CDSS may be useful for the diagnosis of heart failure, especially when heart failure specialists are not available.
心力衰竭的诊断可能具有挑战性,即使对于心力衰竭专科医生来说也是如此。人工智能临床决策支持系统(AI-CDSS)有潜力协助医生进行心力衰竭诊断。这项工作的目的是评估一种AI-CDSS对心力衰竭的诊断准确性。用于心脏病学的AI-CDSS是采用知识获取的混合(专家驱动和机器学习驱动)方法开发的,以完善心力衰竭诊断的知识库。对1198例有或无心力衰竭的患者进行回顾性队列研究,用于AI-CDSS的开发(训练数据集,n = 600)和性能测试(测试数据集,n = 598)。对97例呼吸困难患者进行前瞻性临床试点研究,以评估AI-CDSS与非心力衰竭专科医生相比的诊断准确性。评估了AI-CDSS与心力衰竭专科医生之间的一致性率。在回顾性队列中,测试数据集中的一致性率为98.3%。射血分数降低的心力衰竭患者、射血分数中等范围的心力衰竭患者、射血分数保留的心力衰竭患者和无心力衰竭患者的一致性率分别为100%、100%、99.6%和91.7%。在一项对97例到门诊就诊的呼吸困难患者进行的前瞻性试点研究中,44%的患者患有心力衰竭。AI-CDSS与心力衰竭专科医生之间的一致性率为98%,而非心力衰竭专科医生与心力衰竭专科医生之间的一致性率为76%。总之,AI-CDSS对心力衰竭显示出较高的诊断准确性。因此,AI-CDSS可能有助于心力衰竭的诊断,尤其是在没有心力衰竭专科医生的情况下。