Prognostic value of a normal Artificial Intelligence applicative response in subjects with stable chest pain. From the ARTICA co-operative registry

Abstract Background An innovative artificial intelligence (AI) Decision Support System (DSS) ESC guidelines based has already been used at point of care with efficacy for evaluating subjects with stable chest pain (SCP) and it has been proved to correctly identify absence of significant coronary art...

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Bibliographic Details
Published in:European Heart Journal
Main Authors: Mazzanti, M, Shirka, E, Marini, M, Pottle, A, Goda, A, Pugliese, F
Format: Article in Journal/Newspaper
Language:English
Published: Oxford University Press (OUP) 2020
Subjects:
Online Access:http://dx.doi.org/10.1093/ehjci/ehaa946.3504
http://academic.oup.com/eurheartj/article-pdf/41/Supplement_2/ehaa946.3504/34513678/ehaa946.3504.pdf
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Summary:Abstract Background An innovative artificial intelligence (AI) Decision Support System (DSS) ESC guidelines based has already been used at point of care with efficacy for evaluating subjects with stable chest pain (SCP) and it has been proved to correctly identify absence of significant coronary artery disease (CAD) versus standard care approach (SD) without known prognostic implication yet. Purpose The aim is to determine the prognostic value of “no testing/Follow up” AI DSS response in a referral population evaluated for SCP. Methods From 2016 to 2019, an AI DSS ESC guidelines based applicative was used on 1.291 subjects with SCP to determine testing appropriateness compared with human specialist standard evaluation. 590 of them, 332 males, mean age 62±11 years deemed to be completely negative – by “no testing/follow up” response - were evaluated. The negative response was defined and confirmed by a normal Coronary Tomography Angiography scan executed in all these subjects. Mean follow-up was 3.46±1.76 years. Two groups based on pre-test likelihood of having CAD were analyzed – low and intermediate. No subjects with high pre-test likelihood were present. The primary endpoint was cumulative incidence of cardiovascular death, hospitalizations for acute coronary syndrome and coronary revascularizations. Results The primary endpoints classification is displayed in the Table. The unadjusted hazard ratio for primary endpoint was 3.84 (95% CI 0.32–8.68, p=0.009) in patients with intermediate compared to those with low pre-test likelihood of CAD. Moreover, the “no testing and Follow up” response showed an incremental prognostic value over conventional risk factors (χ2=7, P=0.022) and over a combination of conventional factors and ST-T changes (χ2=9, P=0.014). Conclusions In an outpatient population without known CAD evaluated for chest pain, after the administration of AI DSS, a “No tests/Follow up” confers an excellent prognosis regardless of the ESC SCORE Charts and rest ECG abnormalities. These preliminary data confirms the safety of ARTICA AI DSS use in subjects with stable chest pain. Funding Acknowledgement Type of funding source: None