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Table 2 Results of feature selection for each dataset

From: Are radiomics features universally applicable to different organs?

Dataset

Feature category

Feature name

Repetition times

Training (7 features)

Histogram-based

2.5 percentile

20

97.5 percentile

20

Shape-based (3D)

Sphericity

20

Max 3D diameter

20

Shape-based (2D)

Roundness factor

20

Texture-based

Informational Measure of Correlation, subsampled GLCM

17

Size zone variability

10

Test set1

(6 features)

Histogram-based

Variance

20

50 Percentile

20

Texture-based

Homogeneity, subsampled GLCM

15

Shape-based (2D)

Roundness factor

9

Fractal-based

FSD

4

Histogram-based

Standard deviation

1

Test set2

(3 features)

Texture-based

Energy, subsampled GLCM

1

Contrast, NGTDM

1

Difference entropy, subsampled GLCM

1

Test set3

(2 features)

Texture-based

Informational Measure of Correlation, subsampled GLCM

19

Coarseness, NGTDM

3

  1. Bold font indicates the features commonly selected between the training set and given test sets. 2D two-dimensional, 3D three-dimensional, GLCM gray-level co-occurrence matrix, FSD fractal signature dissimilarity, NGTDM neighborhood gray-tone difference matrix