Deep Learning-based Method for Fully Automatic Quantification of Left Ventricle Function from Cine MR Images: A Multivendor, Multicenter Study.
Qian TaoWenjun YanYuanyuan WangElisabeth H M PaimanDenis P ShamoninPankaj GargSven PleinLu HuangLiming XiaMarek SramkoJarsolav TinteraAlbert de RoosHildo J LambRob J van der GeestPublished in: Radiology (2018)
Purpose To develop a deep learning-based method for fully automated quantification of left ventricular (LV) function from short-axis cine MR images and to evaluate its performance in a multivendor and multicenter setting. Materials and Methods This retrospective study included cine MRI data sets obtained from three major MRI vendors in four medical centers from 2008 to 2016. Three convolutional neural networks (CNNs) with the U-NET architecture were trained on data sets of increasing variability: (a) a single-vendor, single-center, homogeneous cohort of 100 patients (CNN1); (b) a single-vendor, multicenter, heterogeneous cohort of 200 patients (CNN2); and (c) a multivendor, multicenter, heterogeneous cohort of 400 patients (CNN3). All CNNs were tested on an independent multivendor, multicenter data set of 196 patients. CNN performance was evaluated with respect to the manual annotations from three experienced observers in terms of (a) LV detection accuracy, (b) LV segmentation accuracy, and (c) LV functional parameter accuracy. Automatic and manual results were compared with the paired Wilcoxon test, Pearson correlation, and Bland-Altman analysis. Results CNN3 achieved the highest performance on the independent testing data set. The average perpendicular distance compared with manual analysis was 1.1 mm ± 0.3 for CNN3, compared with 1.5 mm ± 1.0 for CNN1 (P < .05) and 1.3 mm ± 0.6 for CNN2 (P < .05). The LV function parameters derived from CNN3 showed a high correlation (r2 ≥ 0.98) and agreement with those obtained by experts for data sets from different vendors and centers. Conclusion A deep learning-based method trained on a data set with high variability can achieve fully automated and accurate cine MRI analysis on multivendor, multicenter cine MRI data. © RSNA, 2018 See also the editorial by Colletti in this issue.
Keyphrases
- convolutional neural network
- deep learning
- end stage renal disease
- ejection fraction
- artificial intelligence
- newly diagnosed
- machine learning
- electronic health record
- magnetic resonance imaging
- chronic kidney disease
- left ventricular
- big data
- peritoneal dialysis
- heart failure
- healthcare
- prognostic factors
- computed tomography
- cross sectional
- coronary artery disease
- clinical trial
- acute myocardial infarction
- body composition
- pulmonary hypertension
- hypertrophic cardiomyopathy
- magnetic resonance
- percutaneous coronary intervention
- acute coronary syndrome
- coronary artery
- patient reported
- aortic valve
- cardiac resynchronization therapy
- transcatheter aortic valve replacement