2021
DOI: 10.21037/qims-20-1114
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MRI classification using semantic random forest with auto-context model

Abstract: Background: It is challenging to differentiate air and bone on MR images of conventional sequences due to their low contrast. We propose to combine semantic feature extraction under auto-context manner into random forest to improve reasonability of the MRI segmentation for MRI-based radiotherapy treatment planning or PET attention correction.Methods: We applied a semantic classification random forest (SCRF) method which consists of a training stage and a segmentation stage. In the training stage, patch-based M… Show more

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“…Random Forest is another ML algorithm used for classification tasks. In radiology, it can be used to analyse medical images and detect different types of abnormalities or diseases (Lei et al, 2021). Random forests enable us to medical image quality control.…”
Section: Applications Of Deep and Machine Learning In Medical Fieldsmentioning
confidence: 99%
“…Random Forest is another ML algorithm used for classification tasks. In radiology, it can be used to analyse medical images and detect different types of abnormalities or diseases (Lei et al, 2021). Random forests enable us to medical image quality control.…”
Section: Applications Of Deep and Machine Learning In Medical Fieldsmentioning
confidence: 99%