Automatic measurements of left ventricular volumes and ejection fraction by artificial intelligence: clinical validation in real time and large databases

Author:

Olaisen Sindre1ORCID,Smistad Erik12ORCID,Espeland Torvald13ORCID,Hu Jieyu1,Pasdeloup David1ORCID,Østvik Andreas12,Aakhus Svend13,Rösner Assami45,Malm Siri56,Stylidis Michael47,Holte Espen13ORCID,Grenne Bjørnar13,Løvstakken Lasse1,Dalen Havard138ORCID

Affiliation:

1. Centre for Innovative Ultrasound Solutions, Department of Circulation and Medical Imaging, Norwegian University of Science and Technology , Prinsesse Kristinas Gate 3, 7030 Trondheim , Norway

2. Medical Image Analysis, Health Research, SINTEF Digital , Trondheim , Norway

3. Clinic of Cardiology, St.Olavs Hospital , Trondheim University Hospital, Prinsesse Kristinas Gate 3, 7030 Trondheim , Norway

4. Department of Cardiology, University Hospital of North Norway , Tromsø , Norway

5. Institute for Clinical Medicine, UiT, The Arctic University of Norway , Tromsø , Norway

6. Department of Cardiology, University Hospital of North Norway, UNN Harstad , Tromsø , Norway

7. Department of Community Medicine, UiT, The Arctic University of Norway , Tromsø , Norway

8. Department of Medicine, Levanger Hospital, Nord-Trøndelag Hospital Trust , Kirkegata 2, 7600 Levanger , Norway

Abstract

Abstract Aims Echocardiography is a cornerstone in cardiac imaging, and left ventricular (LV) ejection fraction (EF) is a key parameter for patient management. Recent advances in artificial intelligence (AI) have enabled fully automatic measurements of LV volumes and EF both during scanning and in stored recordings. The aim of this study was to evaluate the impact of implementing AI measurements on acquisition and processing time and test–retest reproducibility compared with standard clinical workflow, as well as to study the agreement with reference in large internal and external databases. Methods and results Fully automatic measurements of LV volumes and EF by a novel AI software were compared with manual measurements in the following clinical scenarios: (i) in real time use during scanning of 50 consecutive patients, (ii) in 40 subjects with repeated echocardiographic examinations and manual measurements by 4 readers, and (iii) in large internal and external research databases of 1881 and 849 subjects, respectively. Real-time AI measurements significantly reduced the total acquisition and processing time by 77% (median 5.3 min, P < 0.001) compared with standard clinical workflow. Test–retest reproducibility of AI measurements was superior in inter-observer scenarios and non-inferior in intra-observer scenarios. AI measurements showed good agreement with reference measurements both in real time and in large research databases. Conclusion The software reduced the time taken to perform and volumetrically analyse routine echocardiograms without a decrease in accuracy compared with experts.

Funder

Norwegian University of Science and Technology

Research Council of Norway

Central Norway Health Authority

St. Olavs University Hospital

Nord-Trøndelag Hospital Trust

Simon Fougner Hartmann Family Foundation

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine,Radiology, Nuclear Medicine and imaging,General Medicine

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