Synthetic MRI Generation from CT Scans for Stroke Patients

Author:

McNaughton Jake1ORCID,Holdsworth Samantha234,Chong Benjamin123ORCID,Fernandez Justin15,Shim Vickie14,Wang Alan123

Affiliation:

1. Auckland Bioengineering Institute, University of Auckland, 6/70 Symonds Street, Auckland 1010, New Zealand

2. Faculty of Medical and Health Sciences, University of Auckland, 85 Park Road, Auckland 1023, New Zealand

3. Centre for Brain Research, University of Auckland, 85 Park Road, Auckland 1023, New Zealand

4. Mātai Medical Research Institute, 400 Childers Road, Tairāwhiti Gisborne 4010, New Zealand

5. Department of Engineering Science and Biomedical Engineering, University of Auckland, 3/70 Symonds Street, Auckland 1010, New Zealand

Abstract

CT scans are currently the most common imaging modality used for suspected stroke patients due to their short acquisition time and wide availability. However, MRI offers superior tissue contrast and image quality. In this study, eight deep learning models are developed, trained, and tested using a dataset of 181 CT/MR pairs from stroke patients. The resultant synthetic MRIs generated by these models are compared through a variety of qualitative and quantitative methods. The synthetic MRIs generated by a 3D UNet model consistently demonstrated superior performance across all methods of evaluation. Overall, the generation of synthetic MRIs from CT scans using the methods described in this paper produces realistic MRIs that can guide the registration of CT scans to MRI atlases. The synthetic MRIs enable the segmentation of white matter, grey matter, and cerebrospinal fluid by using algorithms designed for MRIs, exhibiting a high degree of similarity to true MRIs.

Funder

Health Research Council of New Zealand

Publisher

MDPI AG

Subject

Management Science and Operations Research,Mechanical Engineering,Energy Engineering and Power Technology

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Brain CT to MRI medical image transformation based on U-Net;Journal of Physics: Conference Series;2024-08-01

2. Synthesizing MRIs From CT Scans Using Deep Learning Techniques: A Comprehensive Review;2024 5th International Conference on Image Processing and Capsule Networks (ICIPCN);2024-07-03

3. Machine Learning for Medical Image Translation: A Systematic Review;Bioengineering;2023-09-12

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