人工智能增强了心脏可插入式心脏监护仪的检测准确性:一项前瞻性先导观察研究的结果

IF 2.6 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS Cardiovascular digital health journal Pub Date : 2022-10-01 DOI:10.1016/j.cvdhj.2022.07.071
Fabio Quartieri MD , Manuel Marina-Breysse MD, MS , Annalisa Pollastrelli MS , Isabella Paini MScN , Carlos Lizcano MS , José María Lillo-Castellano PhD , Andrea Grammatico PhD
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引用次数: 4

摘要

背景:可移动心脏监护仪(ICMs)适用于长期监测不明原因晕厥或有心律失常风险的患者。icm传输的信息量可能导致长时间的数据审查,以确定真正的和临床相关的心律失常。目的评价人工智能(AI)是否可以提高ICM的检测准确率。方法对连续植入Confirm RxTM ICM (Abbott)的患者进行回顾性分析,并进行前瞻性观察研究。该设备持续监测皮下心电图(secg),并向临床医生传递有关检测到的心律失常和患者激活的症状发作的信息。所有secg均由电生理学专家和WillemTM人工智能算法(IDOVEN)进行分类。结果20例ICM患者平均随访23个月,平均年龄68±12岁;50%女性),19例有2261个与心律失常检测或患者症状相关的secg记录。11例患者发生真正的心律失常:2例心脏骤停,3例心动过缓,4例室性心动过速,10例房性心动过速/心房颤动(AT/AF);1种心律失常类型6例。AI算法对心律失常分类的总体准确率为95.4%,敏感性97.19%,特异性94.52%,阳性预测值89.74%,阴性预测值98.55%。人工智能的应用将假阳性结果的总数减少98.0%:AT/AF为94.0%,室性心动过速为87.5%,心动过缓为99.5%,无骤停为98.8%。结论人工智能应用于ICM检测事件分类准确率高,可通过ICM数据分类显著减少医护人员的工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Artificial intelligence augments detection accuracy of cardiac insertable cardiac monitors: Results from a pilot prospective observational study

Background

Insertable cardiac monitors (ICMs) are indicated for long-term monitoring of patients with unexplained syncope or who are at risk for cardiac arrhythmias. The volume of ICM-transmitted information may result in long data review times to identify true and clinically relevant arrhythmias.

Objective

The purpose of this study was to evaluate whether artificial intelligence (AI) may improve ICM detection accuracy.

Methods

We performed a retrospective analysis of consecutive patients implanted with the Confirm RxTM ICM (Abbott) and followed in a prospective observational study. This device continuously monitors subcutaneous electrocardiograms (SECGs) and transmits to clinicians information about detected arrhythmias and patient-activated symptomatic episodes. All SECGs were classified by expert electrophysiologists and by the WillemTM AI algorithm (IDOVEN).

Results

During mean follow-up of 23 months, of 20 ICM patients (mean age 68 ± 12 years; 50% women), 19 had 2261 SECGs recordings associated with cardiac arrhythmia detections or patient symptoms. True arrhythmias occurred in 11 patients: asystoles in 2, bradycardias in 3, ventricular tachycardias in 4, and atrial tachyarrhythmias (atrial tachycardia/atrial fibrillation [AT/AF]) in 10; with 6 patients having >1 arrhythmia type. AI algorithm overall accuracy for arrhythmia classification was 95.4%, with 97.19% sensitivity, 94.52% specificity, 89.74% positive predictive value, and 98.55% negative predictive value. Application of AI would have reduced the number of false-positive results by 98.0% overall: 94.0% for AT/AF, 87.5% for ventricular tachycardia, 99.5% for bradycardia, and 98.8% for asystole.

Conclusion

Application of AI to ICM-detected episodes is associated with high classification accuracy and may significantly reduce health care staff workload by triaging ICM data.

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来源期刊
Cardiovascular digital health journal
Cardiovascular digital health journal Cardiology and Cardiovascular Medicine
CiteScore
4.20
自引率
0.00%
发文量
0
审稿时长
58 days
期刊最新文献
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