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Deep learning applications in magnetic resonance imaging : radiofrequency pulse design and automated real-time quality control Nelson, Seger C.
Abstract
Deep Learning–Based Design of RF pulses in MRI. Purpose: The development of custom-designed power-independent-of-number of-slices (PINS) RF pulses that yield desirable slice profiles requires time consuming, iterative tuning. The goal of this work was to simplify the design process by training a deep learning (DL) model to generate PINS 180° RF pulses given a desired slice profile. Methods: A 6-layer feed-forward neural network (NN) was trained with 1.2 million generated PINS slice profiles and their corresponding 5 pulse characteristic parameter labels. The model predictions were fed into a pulse design algorithm from which an RF pulse and simulated slice profile were generated and used for validation. The root mean squared error of the slice profiles was calculated over the test dataset. Results: The highest performing model achieved a mean root mean-squared error (RMSE) of 45.18% between the predicted vs. expected slice profiles in the test dataset. Conclusion: The model was unable to generalize to unseen data. Future work may entail exploring different DL models, and expanding the train set to include a larger and more diverse set of RF pulse - slice profile pairs. Towards Deep Transfer Learning-Based Automated Real-Time QC in MRI. Purpose: The frequent use of RF coils in MRI occasionally causes hardware failures. Often, failures may not be visually recognizable, and are only caught during routine quality control (QC) procedures that may only occur on a weekly to monthly basis due to the large number of coils that require testing. Images acquired between failures and QC checks may possess a reduction in diagnostic quality, which can lead to costly patient re-scans that can negatively impact wait times, diagnosis, and treatment planning. This problem was investigated by training a DL model on a labeled dataset of passed and failed MR images to recognize a coil failure. Methods: Patient images from instances of passed and failed RF coils were collected by referencing the Interior Health Authority QC logsheet to create labeled datasets. Three pre-trained convolutional neural networks (CNNs) associated with image classification were trained to differentiate between images taken with passed and failed RF coils. receiver operating characteristic (ROC) curves and accuracy were used to evaluate the model on a test dataset. Results: The highest performing model achieved an accuracy of 0.73 when evaluated on the test set. Conclusion: These results serve as a proof of concept for deep transfer learning–based RF coil failure recognition in magnetic resonance (MR) images. However, the models show signs of overfitting and further investigation is needed.
Item Metadata
Title |
Deep learning applications in magnetic resonance imaging : radiofrequency pulse design and automated real-time quality control
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Creator | |
Supervisor | |
Publisher |
University of British Columbia
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Date Issued |
2024
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Description |
Deep Learning–Based Design of RF pulses in MRI.
Purpose: The development of custom-designed power-independent-of-number of-slices (PINS) RF pulses that yield desirable slice profiles requires time consuming, iterative tuning. The goal of this work was to simplify the design process by training a deep learning (DL) model to generate PINS 180° RF pulses given a desired slice profile.
Methods: A 6-layer feed-forward neural network (NN) was trained with 1.2 million generated PINS slice profiles and their corresponding 5 pulse characteristic parameter labels. The model predictions were fed into a pulse design algorithm from which an RF pulse and simulated slice profile were generated and used for validation. The root mean squared error of the slice profiles was calculated over the test dataset.
Results: The highest performing model achieved a mean root mean-squared error (RMSE) of 45.18% between the predicted vs. expected slice profiles in the test dataset.
Conclusion: The model was unable to generalize to unseen data. Future work may entail exploring different DL models, and expanding the train set to include a larger and more diverse set of RF pulse - slice profile pairs.
Towards Deep Transfer Learning-Based Automated Real-Time QC in MRI.
Purpose: The frequent use of RF coils in MRI occasionally causes hardware failures. Often, failures may not be visually recognizable, and are only caught during routine quality control (QC) procedures that may only occur on a weekly to monthly basis due to the large number of coils that require testing. Images acquired between failures and QC checks may possess a reduction in diagnostic quality, which can lead to costly patient re-scans that can negatively impact wait times, diagnosis, and treatment planning. This problem was investigated by training a DL model on a labeled dataset of passed and failed MR images to recognize a coil failure.
Methods: Patient images from instances of passed and failed RF coils were collected by referencing the Interior Health Authority QC logsheet to create labeled datasets. Three pre-trained convolutional neural networks (CNNs) associated with image classification were trained to differentiate between images taken with passed and failed RF coils. receiver operating characteristic (ROC) curves and accuracy were used to evaluate the model on a test dataset. Results: The highest performing model achieved an accuracy of 0.73 when evaluated on the test set.
Conclusion: These results serve as a proof of concept for deep transfer learning–based RF coil failure recognition in magnetic resonance (MR) images. However, the models show signs of overfitting and further investigation is needed.
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Genre | |
Type | |
Language |
eng
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Date Available |
2024-10-07
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Provider |
Vancouver : University of British Columbia Library
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Rights |
Attribution-NonCommercial-NoDerivatives 4.0 International
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DOI |
10.14288/1.0445503
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URI | |
Degree | |
Program | |
Affiliation | |
Degree Grantor |
University of British Columbia
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Graduation Date |
2024-11
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Campus | |
Scholarly Level |
Graduate
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Rights URI | |
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DSpace
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Rights
Attribution-NonCommercial-NoDerivatives 4.0 International