Abstract
Abstract
Objective
The prospect of being able to gain relevant information from cardiovascular magnetic resonance (CMR) image analysis automatically opens up new potential to assist the evaluating physician. For machine-learning-based classification of complex congenital heart disease, only few studies have used CMR.
Materials and methods
This study presents a tailor-made neural network architecture for detection of 7 distinctive anatomic landmarks in CMR images of patients with hypoplastic left heart syndrome (HLHS) in Fontan circulation or healthy controls and demonstrates the potential of the spatial arrangement of the landmarks to identify HLHS. The method was applied to the axial SSFP CMR scans of 46 patients with HLHS and 33 healthy controls.
Results
The displacement between predicted and annotated landmark had a standard deviation of 8–17 mm and was larger than the interobserver variability by a factor of 1.1–2.0. A high overall classification accuracy of 98.7% was achieved.
Discussion
Decoupling the identification of clinically meaningful anatomic landmarks from the actual classification improved transparency of classification results. Information from such automated analysis could be used to quickly jump to anatomic positions and guide the physician more efficiently through the analysis depending on the detected condition, which may ultimately improve work flow and save analysis time.
Funder
Universitätsklinikum Schleswig-Holstein - Campus Kiel
Publisher
Springer Science and Business Media LLC
Reference29 articles.
1. Fotaki A, Puyol-Antón E, Chiribiri A, Botnar R, Pushparajah K, Prieto C (2022) Artificial intelligence in cardiac MRI: is clinical adoption forthcoming? Front Cardiovasc Med 8:818765
2. Helman SM, Herrup EA, Christopher AB, Al-Zaiti SS (2021) The role of machine learning applications in diagnosing and assessing critical and non-critical CHD: a scoping review. Cardiol Young 31(11):1770–1780
3. Karimi-Bidhendi S, Arafati A, Cheng AL, Wu Y, Kheradvar A, Jafarkhani H (2020) Fully-automated deep-learning segmentation of pediatric cardiovascular magnetic resonance of patients with complex congenital heart diseases. J Cardiovasc Magn Reson 22(1):80
4. Lu Y, Fu X, Li X, Qi Y (2020) Cardiac chamber segmentation using deep learning on magnetic resonance images from patients before and after atrial septal occlusion surgery. Annu Int Conf IEEE Eng Med Biol Soc 2020:1211–1216
5. Diller GP, Orwat S, Vahle J et al (2020) German competence network for congenital heart defects investigators. Prediction of prognosis in patients with tetralogy of fallot based on deep learning imaging analysis. Heart 106(13):1007–1014