| Literature DB >> 30612574 |
Alex Bratt1, Jiwon Kim1,2, Meridith Pollie2, Ashley N Beecy2, Nathan H Tehrani2, Noel Codella3, Rocio Perez-Johnston4, Maria Chiara Palumbo2, Javid Alakbarli2, Wayne Colizza1, Ian R Drexler1, Clerio F Azevedo5, Raymond J Kim5, Richard B Devereux2, Jonathan W Weinsaft6,7,8,9.
Abstract
BACKGROUND: Phase contrast (PC) cardiovascular magnetic resonance (CMR) is widely employed for flow quantification, but analysis typically requires time consuming manual segmentation which can require human correction. Advances in machine learning have markedly improved automated processing, but have yet to be applied to PC-CMR. This study tested a novel machine learning model for fully automated analysis of PC-CMR aortic flow.Entities:
Keywords: Aorta; Cardiovascular magnetic resonance; Deep learning; Machine learning; Phase contrast
Mesh:
Year: 2019 PMID: 30612574 PMCID: PMC6322266 DOI: 10.1186/s12968-018-0509-0
Source DB: PubMed Journal: J Cardiovasc Magn Reson ISSN: 1097-6647 Impact factor: 5.364
Fig. 1Network Architecture. Schematic illustration of the model, which is based on the U-net architecture. Residual modules improve gradient propagation during training and improve performance
Fig. 2Representative Examples. Typical examples of aortic contouring as performed by manual segmentation (blue, left) and fully automated machine learning (red, right) in a patient with trileaflet (a) and bicuspid (b) aortic valve. For both examples, magnitude images shown on left, and corresponding PC images shown on right
Patient characteristics
| Overall ( | |
|---|---|
| Clinical | |
| Age (years) | 57 ± 12 |
| Male gender | 87% (165) |
| Body surface area | 2.0 ± 0.2 |
| Coronary Artery Disease Risk Factors | |
| Hypertension | 47% (90) |
| Hypercholesterolemia | 54% (102) |
| Diabetes mellitus | 28% (53) |
| Tobacco use | 35% (66) |
| Family history | 30% (56) |
| Cardiovascular Medications | |
| Beta-blocker | 91% (173) |
| ACEI/ARB | 60% (113) |
| Loop diuretic | 15% (28) |
| Statin | 93% (177) |
| Aspirin | 98% (186) |
| Thienopyridine | 83% (158) |
| Warfarin | 5% (9) |
| Nitroglycerin | 13% (25) |
| Cardiac morphology/function | |
| Left Ventricle | |
| Ejection fraction (%) | 52.2 ± 13.3 |
| LV dysfunction (EF < = 55%) | 55% (105) |
| End-diastolic volume (ml) | 161.9 ± 49.2 |
| End-systolic volume (ml) | 81.6 ± 46.4 |
| Myocardial mass (g) | 137.9 ± 38.2 |
| Late gadolinium enhancement (present) | 98% (186) |
| Infarct size (% myocardium) | 14.5 ± 10.4 |
| Aortic Valve | |
| Bileaflet | 2% (3) |
| Thickening/ fibrocalcific changes | 12% (23) |
| Stenosis | 2% (4) |
| Regurgitation | 7% (13) |
ACEI angiotensin converting enzyme inhibitor, ARB angiotensive receptor blocker
Fig. 3Processing Times. Processing times for manual segmentation and fully-automated machine learning algorithm among validation cohort (data shown as mean ± SD). As shown, mean processing times were > 100-fold lower using machine learning, which processed each case in ~ 380 msec per dataset, corresponding to a total processing time of 1.2 min for the entire validation cohort (n = 190)
Reproducibility Analyses
| Intra-Observer | Inter-Observer | |||||
|---|---|---|---|---|---|---|
| Mean ± SD (mL) | Limits of Agreement (mL) |
| Mean ± SD (mL) | Limits of Agreement (mL) |
| |
| Manual | 0.18 ± 1.6 | −3.0 to 2.5 | 0.32 | −0.28 ± 1.2 | −2.6 to 2.1 | 0.62 |
| Conventional | −0.33 ± 1.8 | −3.8 ± 3.1 | 0.42 | 0.28 ± 3.0 | - 5.7 ± 6.3 | 0.69 |
| Machine Learning | 0 | 0 | – | 0 | 0 | – |
Fig. 4Correlations Between Machine Learning and Manually Processed Flow. Scatter plots demonstrating correlations between fully-automated machine learning and manually processed flow among the overall study cohort (a) as well as among subgroups of patients with (b) and without (c) preserved left ventricular ejection fraction (LVEF≥55%). Note correlations approaching near unity (r > 0.99) in all groups
Difference in net flow between manual segmentation in relation to machine learning and conventional (commercially available) automated segmentation
| Net Flow | Absolute Difference (|manual – method|) | Correlation | |
|---|---|---|---|
| Manual | 81.5 ± 24.2 mL | ||
| Machine Learning | 80.5 ± 23.7 mLa | 1.85 ± 1.80 mLb | y = 1.01x + 0.16 |
| Conventional | 80.1 ± 23.2 mLa | 3.33 ± 3.18 mLb | y = 1.02x – 0.31 |
aBoth p < 0.01 (segmentation method vs. manual)
bp < 0.01 (machine learning vs. conventional segmentation in terms of MAD)
Fig. 5Bland-Altman Plot. Bland-Altman plots comparing fully automated machine learning to manually processed flow tracing for the overall study cohort. Middle line denotes mean. Dashed lines denote ±1.96 standard deviations
Fig. 6Machine Learning Derived Aortic Flow in Relation to Cine-CMR LV Stroke Volume. a Correlations between aortic through-plane flow as quantified by fully automated machine learning algorithm and LV volumetric stroke volume as quantified on cine-CMR among patients without advanced (>mild) mitral regurgitation. Note moderate correlation between approaches (left) and non-significant differences in stroke volume (right). b Machine learning aortic flow and cine-CMR stroke volume among patients with advanced (>mild) mitral regurgitation. Note lower transaortic flow as quantified by cine-CMR consistent with decreased forward systemic output in context of mitral regurgitation.