Back to Search Start Over

Explainable Deep Learning Improves Physician Interpretation of Myocardial Perfusion Imaging.

Authors :
Miller RJH
Kuronuma K
Singh A
Otaki Y
Hayes S
Chareonthaitawee P
Kavanagh P
Parekh T
Tamarappoo BK
Sharir T
Einstein AJ
Fish MB
Ruddy TD
Kaufmann PA
Sinusas AJ
Miller EJ
Bateman TM
Dorbala S
Carli MD
Cadet S
Liang JX
Dey D
Berman DS
Slomka PJ
Source :
Journal of nuclear medicine : official publication, Society of Nuclear Medicine [J Nucl Med] 2022 Nov; Vol. 63 (11), pp. 1768-1774. Date of Electronic Publication: 2022 May 05.
Publication Year :
2022

Abstract

Artificial intelligence may improve accuracy of myocardial perfusion imaging (MPI) but will likely be implemented as an aid to physician interpretation rather than an autonomous tool. Deep learning (DL) has high standalone diagnostic accuracy for obstructive coronary artery disease (CAD), but its influence on physician interpretation is unknown. We assessed whether access to explainable DL predictions improves physician interpretation of MPI. Methods: We selected a representative cohort of patients who underwent MPI with reference invasive coronary angiography. Obstructive CAD, defined as stenosis ≥50% in the left main artery or ≥70% in other coronary segments, was present in half of the patients. We used an explainable DL model (CAD-DL), which was previously developed in a separate population from different sites. Three physicians interpreted studies first with clinical history, stress, and quantitative perfusion, then with all the data plus the DL results. Diagnostic accuracy was assessed using area under the receiver-operating-characteristic curve (AUC). Results: In total, 240 patients with a median age of 65 y (interquartile range 58-73) were included. The diagnostic accuracy of physician interpretation with CAD-DL (AUC 0.779) was significantly higher than that of physician interpretation without CAD-DL (AUC 0.747, P = 0.003) and stress total perfusion deficit (AUC 0.718, P < 0.001). With matched specificity, CAD-DL had higher sensitivity when operating autonomously compared with readers without DL results ( P < 0.001), but not compared with readers interpreting with DL results ( P = 0.122). All readers had numerically higher accuracy with CAD-DL, with AUC improvement 0.02-0.05, and interpretation with DL resulted in overall net reclassification improvement of 17.2% (95% CI 9.2%-24.4%, P < 0.001). Conclusion: Explainable DL predictions lead to meaningful improvements in physician interpretation; however, the improvement varied across the readers, reflecting the acceptance of this new technology. This technique could be implemented as an aid to physician diagnosis, improving the diagnostic accuracy of MPI.<br /> (© 2022 by the Society of Nuclear Medicine and Molecular Imaging.)

Details

Language :
English
ISSN :
1535-5667
Volume :
63
Issue :
11
Database :
MEDLINE
Journal :
Journal of nuclear medicine : official publication, Society of Nuclear Medicine
Publication Type :
Academic Journal
Accession number :
35512997
Full Text :
https://doi.org/10.2967/jnumed.121.263686