» Articles » PMID: 32090204

Deep Learning-based Prescription of Cardiac MRI Planes

Overview
Date 2020 Feb 25
PMID 32090204
Citations 22
Authors
Affiliations
Soon will be listed here.
Abstract

Purpose: To develop and evaluate a system to prescribe imaging planes for cardiac MRI based on deep learning (DL)-based localization of key anatomic landmarks.

Materials And Methods: Annotated landmarks on 892 long-axis (LAX) and 493 short-axis (SAX) cine steady-state free precession series from cardiac MR images were retrospectively collected between February 2012 and June 2017. U-Net-based heatmap regression was used for localization of cardiac landmarks, which were used to compute cardiac MRI planes. Performance was evaluated by comparing localization distances and plane angle differences between DL predictions and ground truth. The plane angulations from DL were compared with those prescribed by the technologist at the original time of acquisition. Data were split into 80% for training and 20% for testing, and results confirmed with fivefold cross-validation.

Results: On LAX images, DL localized the apex within mean 12.56 mm ± 19.11 (standard deviation) and the mitral valve (MV) within 7.68 mm ± 6.91. On SAX images, DL localized the aortic valve within 5.78 mm ± 5.68, MV within 5.90 mm ± 5.24, pulmonary valve within 6.55 mm ± 6.39, and tricuspid valve within 6.39 mm ± 5.89. On the basis of these localizations, average angle bias and mean error of DL-predicted imaging planes relative to ground truth annotations were as follows: SAX, -1.27° ± 6.81 and 4.93° ± 4.86; four chambers, 0.38° ± 6.45 and 5.16° ± 3.80; three chambers, 0.13° ± 12.70 and 9.02° ± 8.83; and two chamber, 0.25° ± 9.08 and 6.53° ± 6.28, respectively.

Conclusion: DL-based anatomic localization is a feasible strategy for planning cardiac MRI planes. This approach can produce imaging planes comparable to those defined by ground truth landmarks.© RSNA, 2019

Citing Articles

Automated vs manual cardiac MRI planning: a single-center prospective evaluation of reliability and scan times.

Glessgen C, Crowe L, Wetzl J, Schmidt M, Yoon S, Vallee J Eur Radiol. 2025; .

PMID: 39841204 DOI: 10.1007/s00330-025-11364-z.


Improving privacy-preserving multi-faceted long short-term memory for accurate evaluation of encrypted time-series MRI images in heart disease.

cepova L, Elangovan M, Naga Ramesh J, Chohan M, Verma A, Mohammad F Sci Rep. 2024; 14(1):20218.

PMID: 39215022 PMC: 11364645. DOI: 10.1038/s41598-024-70593-2.


Deep learning-based automated scan plane positioning for brain magnetic resonance imaging.

Zhu G, Shen X, Sun Z, Xiao Z, Zhong J, Yin Z Quant Imaging Med Surg. 2024; 14(6):4015-4030.

PMID: 38846304 PMC: 11151238. DOI: 10.21037/qims-23-1740.


Artificial Intelligence and Its Role in Diagnosing Heart Failure: A Narrative Review.

Medhi D, Kamidi S, Mamatha Sree K, Shaikh S, Rasheed S, Thengu Murichathil A Cureus. 2024; 16(5):e59661.

PMID: 38836155 PMC: 11148729. DOI: 10.7759/cureus.59661.


Present and Future Innovations in AI and Cardiac MRI.

Morales M, Manning W, Nezafat R Radiology. 2024; 310(1):e231269.

PMID: 38193835 PMC: 10831479. DOI: 10.1148/radiol.231269.


References
1.
Frick M, Paetsch I, den Harder C, Kouwenhoven M, Heese H, Dries S . Fully automatic geometry planning for cardiac MR imaging and reproducibility of functional cardiac parameters. J Magn Reson Imaging. 2011; 34(2):457-67. DOI: 10.1002/jmri.22626. View

2.
Lelieveldt B, van der Geest R, Lamb H, KAYSER H, Reiber J . Automated observer-independent acquisition of cardiac short-axis MR images: a pilot study. Radiology. 2001; 221(2):537-42. DOI: 10.1148/radiol.2212010177. View

3.
Suinesiaputra A, Bluemke D, Cowan B, Friedrich M, Kramer C, Kwong R . Quantification of LV function and mass by cardiovascular magnetic resonance: multi-center variability and consensus contours. J Cardiovasc Magn Reson. 2015; 17:63. PMC: 4517503. DOI: 10.1186/s12968-015-0170-9. View

4.
Jackson C, Robson M, Francis J, Noble J . Computerised planning of the acquisition of cardiac MR images. Comput Med Imaging Graph. 2004; 28(7):411-8. DOI: 10.1016/j.compmedimag.2004.03.006. View

5.
Lopez-Mattei J, Shah D . The role of cardiac magnetic resonance in valvular heart disease. Methodist Debakey Cardiovasc J. 2013; 9(3):142-8. PMC: 3782321. DOI: 10.14797/mdcj-9-3-142. View