Application of MR images in radiotherapy planning for brain tumor based on deep learning

INTERNATIONAL JOURNAL OF NEUROSCIENCE(2024)

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Abstract
PurposeExplore the function and dose calculation accuracy of MRI images in radiotherapy planning through deep learning methods.Methods131 brain tumor patients undergoing radiotherapy with previous MR and CT images were recruited for this study. A new series of MRI from the aligned MR was firstly registered to CT images strictly using MIM software and then resampled. A deep learning method (U-NET) was used to establish a MRI-to-CT conversion model, for which 105 patient images were used as the training set and 26 patient images were used as the tuning set. Data from additional 8 patients were collected as the test set, and the accuracy of the model was evaluated from a dosimetric standpoint.ResultsComparing the synthetic CT images with the original CT images, the difference in dosimetric parameters D98, D95, D2 and Dmean of PTV in 8 patients was less than 0.5%. The gamma passed rates of PTV and whole body volume were: 1%/1 mm: 93.96%+/- 6.75%, 2%/2 mm: 99.87%+/- 0.30%, 3%/3 mm: 100.00%+/- 0.00%; and 1%/1 mm: 99.14%+/- 0.80%, 2%/2 mm: 99.92%+/- 0.08%, 3%/3 mm: 99.99%+/- 0.01%.ConclusionMR images can be used both in delineation and treatment efficacy evaluation and in dose calculation. Using the deep learning way to convert MR image to CT image is a viable method and can be further used in dose calculation.
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Key words
MR,deep learning,dose calculation
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