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Gray-level discretization impacts reproducible MRI radiomics texture features

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Academic year: 2021

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Figure

Fig 1. Example of computer simulations of delineations. The reference manual delineation is in red
Table 1. Reproducible features using the Pyradiomics software and manual delineations on DATASET 1 according to the gray-level discretization.
Table 3. Reproducible features using the Pyradiomics software and manual delineations on DATASET 2 according to the gray-level discretization.
Fig 3. Highest number of reproducible texture features obtained for each experiment according to the discretization method
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