Automated Detection of Left Ventricle in Arterial Input Function Images for Inline Perfusion Mapping using Deep Learning: A study of 15,000 Patients
Hui Xue, Ethan Tseng, Kristopher D Knott, Tushar Kotecha, Louise, Brown, Sven Plein, Marianna Fontana, James C Moon, Peter Kellman

TL;DR
This study develops and validates a deep learning CNN method for accurate, real-time detection of the left ventricle in arterial input function images, enabling fully automated myocardial perfusion mapping in clinical settings.
Contribution
The paper introduces a robust CNN-based approach for LV detection in AIF images, validated on a large multi-center dataset, and successfully deployed for inline use on MRI scanners.
Findings
3CS model detects LV in 99.98% of cases
Mean Dice ratio of 0.87 for 3CS model
No significant difference between CNN-extracted and manual AIF features
Abstract
Quantification of myocardial perfusion has the potential to improve detection of regional and global flow reduction. Significant effort has been made to automate the workflow, where one essential step is the arterial input function (AIF) extraction. Since failure here invalidates quantification, high accuracy is required. For this purpose, this study presents a robust AIF detection method using the convolutional neural net (CNN) model. CNN models were trained by assembling 25,027 scans (N=12,984 patients) from three hospitals, seven scanners. A test set of 5,721 scans (N=2,805 patients) evaluated model performance. The 2D+T AIF time series was inputted into CNN. Two variations were investigated: a) Two Classes (2CS) for background and foreground (LV mask); b) Three Classes (3CS) for background, foreground LV and RV. Final model was deployed on MR scanners via the Gadgetron InlineAI.…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
MethodsTest
