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Precision measurement of cardiac structure and function in cardiovascular magnetic resonance using machine learning

  • Rhodri H. Davies
  • , João B. Augusto
  • , Anish Bhuva
  • , Hui Xue
  • , Thomas A. Treibel
  • , Yang Ye
  • , Rebecca K. Hughes
  • , Wenjia Bai
  • , Clement Lau
  • , Hunain Shiwani
  • , Marianna Fontana
  • , Rebecca Kozor
  • , Anna Herrey
  • , Luis R. Lopes
  • , Viviana Maestrini
  • , Stefania Rosmini
  • , Steffen E. Petersen
  • , Peter Kellman
  • , Daniel Rueckert
  • , John P. Greenwood
  • Gabriella Captur, Charlotte Manisty, Erik Schelbert, James C. Moon*
*Autor correspondente para este trabalho

Resultado de pesquisarevisão de pares

70 Citações (Scopus)

Resumo

Background: Measurement of cardiac structure and function from images (e.g. volumes, mass and derived parameters such as left ventricular (LV) ejection fraction [LVEF]) guides care for millions. This is best assessed using cardiovascular magnetic resonance (CMR), but image analysis is currently performed by individual clinicians, which introduces error. We sought to develop a machine learning algorithm for volumetric analysis of CMR images with demonstrably better precision than human analysis. Methods: A fully automated machine learning algorithm was trained on 1923 scans (10 scanner models, 13 institutions, 9 clinical conditions, 60,000 contours) and used to segment the LV blood volume and myocardium. Performance was quantified by measuring precision on an independent multi-site validation dataset with multiple pathologies with n = 109 patients, scanned twice. This dataset was augmented with a further 1277 patients scanned as part of routine clinical care to allow qualitative assessment of generalization ability by identifying mis-segmentations. Machine learning algorithm (‘machine’) performance was compared to three clinicians (‘human’) and a commercial tool (cvi42, Circle Cardiovascular Imaging). Findings: Machine analysis was quicker (20 s per patient) than human (13 min). Overall machine mis-segmentation rate was 1 in 479 images for the combined dataset, occurring mostly in rare pathologies not encountered in training. Without correcting these mis-segmentations, machine analysis had superior precision to three clinicians (e.g. scan-rescan coefficients of variation of human vs machine: LVEF 6.0% vs 4.2%, LV mass 4.8% vs. 3.6%; both P < 0.05), translating to a 46% reduction in required trial sample size using an LVEF endpoint. Conclusion: We present a fully automated algorithm for measuring LV structure and global systolic function that betters human performance for speed and precision.

Idioma originalEnglish
Número do artigo16
RevistaJournal of Cardiovascular Magnetic Resonance
Volume24
Número de emissão1
DOIs
Estado da publicaçãoPublicado - dez. 2022
Publicado externamenteSim

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