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Left ventricular assessment with artificial intelligence increases the diagnostic accuracy of stress echocardiography.

  • Jamie O'Driscoll
  • , William Woodward
  • , Nikant Sabharwal
  • , Badrinathan Chandrasekaran
  • , Paul Leeson
  • , William Hawkes
  • , Arian Beqiri
  • , Angela Mumith
  • , Andrew Parker
  • , Ross Upton
  • , Annabelle McCourt
  • , Cameron Dockerill
  • , Attila Kardos
  • , Daniel X Augustine
  • , Katrin Balkhausen
  • , Soroosh Firoozan
  • , Anna Marciniak
  • , Stephen Heitner
  • , Mrinal Yadava
  • , Sanjiv Kaul
  • Rizwan Sarwar, Rajan Sharma, Gary Woodward

    Research output: Contribution to journalArticlepeer-review

    Abstract

    To evaluate whether left ventricular ejection fraction (LVEF) and global longitudinal strain (GLS), automatically calculated by artificial intelligence (AI), increases the diagnostic performance of stress echocardiography (SE) for coronary artery disease (CAD) detection. SEs from 512 participants who underwent a clinically indicated SE (with or without contrast) for the evaluation of CAD from seven hospitals in the UK and US were studied. Visual wall motion scoring (WMS) was performed to identify inducible ischaemia. In addition, SE images at rest and stress underwent AI contouring for automated calculation of AI-LVEF and AI-GLS (apical two and four chamber images only) with Ultromics EchoGo Core 1.0. Receiver operator characteristic curves and multivariable risk models were used to assess accuracy for identification of participants subsequently found to have CAD on angiography. Participants with significant CAD were more likely to have abnormal WMS, AI-LVEF, and AI-GLS values at rest and stress (all < 0.001). The areas under the receiver operating characteristics for WMS index, AI-LVEF, and AI-GLS at peak stress were 0.92, 0.86, and 0.82, respectively, with cut-offs of 1.12, 64%, and -17.2%, respectively. Multivariable analysis demonstrated that addition of peak AI-LVEF or peak AI-GLS to WMS significantly improved model discrimination of CAD [C-statistic (bootstrapping 2.5th, 97.5th percentile)] from 0.78 (0.69-0.87) to 0.83 (0.74-0.91) or 0.84 (0.75-0.92), respectively. AI calculation of LVEF and GLS by contouring of contrast-enhanced and unenhanced SEs at rest and stress is feasible and independently improves the identification of obstructive CAD beyond conventional WMSI. [Abstract copyright: © The Author(s) 2022. Published by Oxford University Press on the behalf of the European Society of Cardiology.]
    Original languageEnglish
    Pages (from-to)oeac059
    JournalEuropean Heart Journal Open
    Volume2
    Issue number5
    DOIs
    Publication statusPublished - 5 Sept 2022

    Keywords

    • Artificial intelligence
    • Contrast
    • Coronary artery disease
    • Ejection fraction
    • Global longitudinal strain
    • Stress echocardiography

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