A Multicenter, Scan-Rescan, Human and Machine Learning CMR Study to Test Generalizability and Precision in Imaging Biomarker Analysis

Author:

Bhuva Anish N.12,Bai Wenjia3,Lau Clement24,Davies Rhodri H.2,Ye Yang25,Bulluck Heeraj1,McAlindon Elisa67,Culotta Veronica2,Swoboda Peter P.8,Captur Gabriella12,Treibel Thomas A.12,Augusto Joao B.12,Knott Kristopher D.12,Seraphim Andreas12,Cole Graham D.9,Petersen Steffen E.24,Edwards Nicola C.10,Greenwood John P.8,Bucciarelli-Ducci Chiara6,Hughes Alun D.1,Rueckert Daniel11,Moon James C.12,Manisty Charlotte H12

Affiliation:

1. Institute for Cardiovascular Science, University College London, United Kingdom (A.N.B., H.B., G.C., T.A.T., J.B.A., K.D.K., A.S., A.D.H., J.C.M., C.H.M.).

2. Department of Cardiovascular Imaging, Barts Heart Centre, Barts Health NHS Trust, London, United Kingdom (A.N.B., C.L., R.H.D., Y.Y., V.C., G.C., T.A.T., J.B.A., K.D.K., A.S., S.E.P., J.C.M., C.H.M.).

3. Data Science Institute and Department of Medicine (W.B.), Imperial College London, South Kensington Campus, United Kingdom.

4. William Harvey Research Institute, NIHR Barts Biomedical Research Centre, Queen Mary University of London, United Kingdom (C.L., S.E.P.).

5. Department of Cardiology, Sir Run Run Shaw Hospital, Zhejiang University, Hangzhou, People's Republic of China (Y.Y.).

6. Bristol Heart Institute, Bristol NIHR Biomedical Research Centre, University Hospitals Bristol NHS Trust and University of Bristol, United Kingdom (E.M., C.B.-D.).

7. Heart and Lung Centre, New Cross Hospital, Wolverhampton, United Kingdom (E.M.).

8. Multidisciplinary Cardiovascular Research Centre and Division of Biomedical Imaging, Leeds Institute of Cardiovascular and Metabolic Medicine, University of Leeds, United Kingdom (P.P.S., J.P.G.).

9. Imperial College London, National Heart and Lung Institute, Hammersmith Hospital, United Kingdom (G.D.C.).

10. Auckland City Hospital, New Zealand and Institute of Cardiovascular Science, University of Birmingham (N.C.E.).

11. Department of Computing (D.R.), Imperial College London, South Kensington Campus, United Kingdom.

Abstract

Background: Automated analysis of cardiac structure and function using machine learning (ML) has great potential, but is currently hindered by poor generalizability. Comparison is traditionally against clinicians as a reference, ignoring inherent human inter- and intraobserver error, and ensuring that ML cannot demonstrate superiority. Measuring precision (scan:rescan reproducibility) addresses this. We compared precision of ML and humans using a multicenter, multi-disease, scan:rescan cardiovascular magnetic resonance data set. Methods: One hundred ten patients (5 disease categories, 5 institutions, 2 scanner manufacturers, and 2 field strengths) underwent scan:rescan cardiovascular magnetic resonance (96% within one week). After identification of the most precise human technique, left ventricular chamber volumes, mass, and ejection fraction were measured by an expert, a trained junior clinician, and a fully automated convolutional neural network trained on 599 independent multicenter disease cases. Scan:rescan coefficient of variation and 1000 bootstrapped 95% CIs were calculated and compared using mixed linear effects models. Results: Clinicians can be confident in detecting a 9% change in left ventricular ejection fraction, with greater than half of coefficient of variation attributable to intraobserver variation. Expert, trained junior, and automated scan:rescan precision were similar (for left ventricular ejection fraction, coefficient of variation 6.1 [5.2%–7.1%], P =0.2581; 8.3 [5.6%–10.3%], P =0.3653; 8.8 [6.1%–11.1%], P =0.8620). Automated analysis was 186× faster than humans (0.07 versus 13 minutes). Conclusions: Automated ML analysis is faster with similar precision to the most precise human techniques, even when challenged with real-world scan:rescan data. Assessment of multicenter, multi-vendor, multi-field strength scan:rescan data (available at www.thevolumesresource.com ) permits a generalizable assessment of ML precision and may facilitate direct translation of ML to clinical practice.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine,Radiology, Nuclear Medicine and imaging

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