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Automated <scp>MR</scp> Image Prescription of the Liver Using Deep Learning: Development, Evaluation, and Prospective Implementation

Authors :
Ruiqi Geng
Collin J. Buelo
Mahalakshmi Sundaresan
Jitka Starekova
Nikolaos Panagiotopoulos
Thekla H. Oechtering
Edward M. Lawrence
Marcin Ignaciuk
Scott B. Reeder
Diego Hernando
Source :
Journal of Magnetic Resonance Imaging.
Publication Year :
2022
Publisher :
Wiley, 2022.

Abstract

There is an unmet need for fully automated image prescription of the liver to enable efficient, reproducible MRI.To develop and evaluate artificial intelligence (AI)-based liver image prescription.Prospective.A total of 570 female/469 male patients (age: 56 &#177; 17 years) with 72%/8%/20% assigned randomly for training/validation/testing; two female/four male healthy volunteers (age: 31 &#177; 6 years).1.5 T, 3.0 T; spin echo, gradient echo, bSSFP.A total of 1039 three-plane localizer acquisitions (26,929 slices) from consecutive clinical liver MRI examinations were retrieved retrospectively and annotated by six radiologists. The localizer images and manual annotations were used to train an object-detection convolutional neural network (YOLOv3) to detect multiple object classes (liver, torso, and arms) across localizer image orientations and to output corresponding 2D bounding boxes. Whole-liver image prescription in standard orientations was obtained based on these bounding boxes. 2D detection performance was evaluated on test datasets by calculating intersection over union (IoU) between manual and automated labeling. 3D prescription accuracy was calculated by measuring the boundary mismatch in each dimension and percentage of manual volume covered by AI prescription. The automated prescription was implemented on a 3 T MR system and evaluated prospectively on healthy volunteers.Paired t-tests (threshold = 0.05) were conducted to evaluate significance of performance difference between trained networks.In 208 testing datasets, the proposed method with full network had excellent agreement with manual annotations, with median IoU 0.91 (interquartile range 0.09) across all seven classes. The automated 3D prescription was accurate, with shifts2.3 cm in superior/inferior dimension for 3D axial prescription for 99.5% of test datasets, comparable to radiologists&#39; interreader reproducibility. The full network had significantly superior performance than the tiny network for 3D axial prescription in patients. Automated prescription performed well across single-shot fast spin-echo, gradient-echo, and balanced steady-state free-precession sequences in the prospective study.AI-based automated liver image prescription demonstrated promising performance across the patients, pathologies, and field strengths studied.4.Stage 1.

Details

ISSN :
15222586 and 10531807
Database :
OpenAIRE
Journal :
Journal of Magnetic Resonance Imaging
Accession number :
edsair.doi.dedup.....3eb5eb0f7be81592e25b9518193964b4