Litcius/Paper detail

An Artificial Intelligence-Based Alarm Strategy Facilitates Management of Acute Myocardial Infarction

Wencheng Liu, Chin Lin, Chin‐Sheng Lin, Min‐Chien Tsai, Sy‐Jou Chen, Shih‐Hung Tsai, Wei‐Shiang Lin, Chia‐Cheng Lee, Tien‐Ping Tsao, Cheng‐Chung Cheng

2021Journal of Personalized Medicine25 citationsDOIOpen Access PDF

Abstract

(1) Background: While an artificial intelligence (AI)-based, cardiologist-level, deep-learning model for detecting acute myocardial infarction (AMI), based on a 12-lead electrocardiogram (ECG), has been established to have extraordinary capabilities, its real-world performance and clinical applications are currently unknown. (2) Methods and Results: To set up an artificial intelligence-based alarm strategy (AI-S) for detecting AMI, we assembled a strategy development cohort including 25,002 visits from August 2019 to April 2020 and a prospective validation cohort including 14,296 visits from May to August 2020 at an emergency department. The components of AI-S consisted of chest pain symptoms, a 12-lead ECG, and high-sensitivity troponin I. The primary endpoint was to assess the performance of AI-S in the prospective validation cohort by evaluating F-measure, precision, and recall. The secondary endpoint was to evaluate the impact on door-to-balloon (DtoB) time before and after AI-S implementation in STEMI patients treated with primary percutaneous coronary intervention (PPCI). Patients with STEMI were alerted precisely by AI-S (F-measure = 0.932, precision of 93.2%, recall of 93.2%). Strikingly, in comparison with pre-AI-S (N = 57) and post-AI-S (N = 32) implantation in STEMI protocol, the median ECG-to-cardiac catheterization laboratory activation (EtoCCLA) time was significantly reduced from 6.0 (IQR, 5.0–8.0 min) to 4.0 min (IQR, 3.0–5.0 min) (p < 0.01). The median DtoB time was shortened from 69 (IQR, 61.0–82.0 min) to 61 min (IQR, 56.8–73.2 min) (p = 0.037). (3) Conclusions: AI-S offers front-line physicians a timely and reliable diagnostic decision-support system, thereby significantly reducing EtoCCLA and DtoB time, and facilitating the PPCI process. Nevertheless, large-scale, multi-institute, prospective, or randomized control studies are necessary to further confirm its real-world performance.

Topics & Concepts

MedicineMyocardial infarctionProspective cohort studyPercutaneous coronary interventionCohortChest painInternal medicineCardiac catheterizationCardiologyCulpritClinical endpointEmergency departmentClinical trialPsychiatryAcute Myocardial Infarction ResearchECG Monitoring and AnalysisHealthcare Technology and Patient Monitoring