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Automated selection of myocardial inversion time with a convolutional neural network: Spatial temporal ensemble myocardium inversion network (STEMI‐NET)
Author(s) -
Bahrami Naeim,
Retson Tara,
Blansit Kevin,
Wang Kang,
Hsiao Albert
Publication year - 2019
Publication title -
magnetic resonance in medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.696
H-Index - 225
eISSN - 1522-2594
pISSN - 0740-3194
DOI - 10.1002/mrm.27680
Subject(s) - convolutional neural network , computer science , artificial intelligence , ground truth , classifier (uml) , pattern recognition (psychology) , inversion (geology) , paleontology , structural basin , biology
Purpose Delayed enhancement imaging is an essential component of cardiac MRI, which is used widely for the evaluation of myocardial scar and viability. The selection of an optimal inversion time (TI) or null point (TI NP ) to suppress the background myocardial signal is required. The purpose of this study was to assess the feasibility of automated selection of TI NP using a convolutional neural network (CNN). We hypothesized that a CNN may use spatial and temporal imaging characteristics from an inversion‐recovery scout to select TI NP , without the aid of a human observer. Methods We retrospectively collected 425 clinically acquired cardiac MRI exams performed at 1.5 T that included inversion‐recovery scout acquisitions. We developed a VGG19 classifier ensembled with long short‐term memory to identify the TI NP . We compared the performance of the ensemble CNN in predicting TI NP against ground truth, using linear regression analysis. Ground truth was defined as the expert physician annotation of the optimal TI. In a backtrack approach, saliency maps were generated to interpret the classification outcome and to increase the model’s transparency. Results Prediction of TI NP from our ensemble VGG19 long short‐term memory closely matched with expert annotation (ρ = 0.88). Ninety‐four percent of the predicted TI NP were within ±36 ms, and 83% were at or after expert TI selection. Conclusion In this study, we show that a CNN is capable of automated prediction of myocardial TI from an inversion‐recovery experiment. Merging the spatial and temporal characteristics of the VGG‐19 and long short‐term‐memory CNN structures appears to be sufficient to predict myocardial TI from TI scout.