| Literature DB >> 28821235 |
Ahmad Chaddad1,2, Christian Desrosiers3, Lama Hassan4, Camel Tanougast4.
Abstract
BACKGROUND: Emerging evidence suggests the presence of neuroanatomical abnormalities in subjects with autism spectrum disorder (ASD). Identifying anatomical correlates could thus prove useful for the automated diagnosis of ASD. Radiomic analyses based on MRI texture features have shown a great potential for characterizing differences occurring from tissue heterogeneity, and for identifying abnormalities related to these differences. However, only a limited number of studies have investigated the link between image texture and ASD. This paper proposes the study of texture features based on grey level co-occurrence matrix (GLCM) as a means for characterizing differences between ASD and development control (DC) subjects. Our study uses 64 T1-weighted MRI scans acquired from two groups of subjects: 28 typical age range subjects 4-15 years old (14 ASD and 14 DC, age-matched), and 36 non-typical age range subjects 10-24 years old (20 ASD and 16 DC). GLCM matrices are computed from manually labeled hippocampus and amygdala regions, and then encoded as texture features by applying 11 standard Haralick quantifier functions. Significance tests are performed to identify texture differences between ASD and DC subjects. An analysis using SVM and random forest classifiers is then carried out to find the most discriminative features, and use these features for classifying ASD from DC subjects.Entities:
Keywords: Autism spectrum disorder; Hippocampus; Radiomics
Mesh:
Substances:
Year: 2017 PMID: 28821235 PMCID: PMC6389224 DOI: 10.1186/s12868-017-0373-0
Source DB: PubMed Journal: BMC Neurosci ISSN: 1471-2202 Impact factor: 3.288
Fig. 1Workflow of the proposed model. Data derived from T1-weighted MRI [scans reproduced with permission from the International Neuroimaging Data-Sharing Initiative (INDI), under the creative commons license (https://creativecommons.org/licenses/by-nc-sa/3.0/)]; manual labeling of hippocampus and amygdala regions; extraction of GLCM-based texture features from hippocampus and amygdala regions; identification of discriminative features for classifying ASD and DC subjects
Demographic and clinical characteristics of the study groups
| Subjects | Study group | n | Sex (male/female) | Age (years) |
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|---|---|---|---|---|---|---|
| Group A | ASD | 14 | 6/8 | 12.87 (4–15) | 0.791 | 0.886 |
| DC | 14 | 6/8 | 13.97 (4–15) | 0.811 | ||
| Group B | ASD | 20 | 17/3 | 17.00 (11–24) | 0.021 | 0.835 |
| DC | 16 | 14/2 | 16.50 (10–23) | 0.013 |
* p value of age subjects
Fig. 2Examples of hippocampus regions in ASD and DC subjects. a, b Examples of hippocampus segmentation masks for ASD and DC subjects (scans reproduced with permission from the International Neuroimaging Data-Sharing Initiative (INDI), under the creative commons license); c histogram of normalized intensities in MRI images of ASD and DC typical age range subjects; d dice similarity coefficient between the two expert labelings (left and right of hippocampus and amygdala regions, respectively)
Fig. 3GLCM computation. a Labeling of the hippocampus region in red (scans reproduced with permission from the International Neuroimaging Data-Sharing Initiative (INDI), under the creative commons license); b example of GLCMs corresponding to one offset and four different directions
Summary (average ± StDev) of texture features extracted from hippocampal and amygdala regions of ASD and DC patients, with corresponding p values
| Features | Group A | Group B |
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|---|---|---|---|---|---|---|
| ASD | DC | ASD | DC | Group A | Group B | |
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| Energy | 0.990 ± 0.0021 | 0.992 ± 0.0025 | 0.599 ± 0.079 | 0.626 ± 0.049 |
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| Entropy | 0.022 ± 0.0044 | 0.018 ± 0.0053 | 0.089 ± 0.0019 | 0.026 ± 0.003 |
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| Correlation | 0.488 ± 0.0972 | 0.584 ± 0.2263 | 0.735 ± 0.022 | 0.741 ± 0.015 |
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| Contrast | 0.858 ± 0.1167 | 0.716 ± 0.1527 | 1.483 ± 0.492 | 1.565 ± 0.560 |
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| Homogeneity | 0.997 ± 0.0006 | 0.998 ± 0.0007 | 0.898 ± 0.024 | 0.905 ± 0.015 |
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| Variance | 2.696 ± 0.5259 | 2.089 ± 0.6217 | 9.837 ± 3.311 | 10.666 ± 4.018 |
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| Sum-mean | 1.108 ± 0.0215 | 1.083 ± 0.0260 | 3.625 ± 0.463 | 3.602 ± 0.457 |
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| Cluster shade | 476.318 ± 99.8276 | 369.168 ± 111.025 | 50.099 ± 21.728 | 59.828 ± 25.645 |
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| Cluster tendency | 23,825.94 ± 5306.88 | 18,606.34 ± 5536.42 | 409.330 ± 209.082 | 507.268 ± 255.621 |
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| Max. probability | 0.995 ± 0.001 | 0.996 ± 0.0012 | 0.766 ± 0.057 | 0.786 ± 0.032 |
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| Inverse variance | 0.002 ± 0.0004 | 0.001 ± 0.0004 | 0.320 ± 0.04 | 0.407 ± 0.049 |
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| Energy | 0.434 ± 0.039 | 0.422 ± 0.036 | 0.443 ± 0.043 | 0.417 ± 0.039 | 0.317 | 0.064 |
| Entropy | 0.472 ± 0.096 | 0.473 ± 0.081 | 0.475 ± 0.112 | 0.486 ± 0.09 | 0.985 | 0.741 |
| Correlation | 0.723 ± 0.016 | 0.728 ± 0.014 | 0.733 ± 0.021 | 0.745 ± 0.011 | 0.389 |
|
| Contrast | 3.181 ± 0.566 | 3.366 ± 0.265 | 2.824 ± 0.459 | 3.001 ± 0.417 | 0.235 | 0.239 |
| Homogeneity | 0.855 ± 0.014 | 0.855 ± 0.011 | 0.857 ± 0.014 | 0.859 ± 0.011 | 0.984 | 0.602 |
| Variance | 19.830 ± 3.414 | 21.421 ± 1.961 | 18.433 ± 3.289 | 20.595 ± 2.854 | 0.107 |
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| Sum-mean | 5.141 ± 0.466 | 5.357 ± 0.373 | 4.974 ± 0.503 | 5.338 ± 0.407 | 0.141 |
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| Cluster shade | 77.687 ± 16.401 | 80.996 ± 7.505 | 72.273 ± 13.411 | 73.692 ± 17.258 | 0.461 | 0.783 |
| Cluster tendency | 817.399 ± 201.952 | 884.467 ± 80.220 | 729.620 ± 166 | 804.451 ± 181.051 | 0.220 | 0.205 |
| Max. probability | 0.640 ± 0.035 | 0.628 ± 0.033 | 0.649 ± 0.039 | 0.621 ± 0.038 | 0.314 |
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| Inverse variance | 2.717 ± 0.465 | 2.878 ± 0.201 | 2.420 ± 0.380 | 2.578 ± 0.352 | 0.207 | 0.209 |
Performance metrics (%) of classification between ASD and DC
| Subjects | Brain region | Accuracy | Sensitivity | Specificity |
|---|---|---|---|---|
| Group A (n = 28) | Hippocampus | 67.85 | 64.28 | 71.42 |
| Amygdala | 52.00 | 43.75 | 60.00 | |
| Group B (n = 36) | Hippocampus | 75.00 | 62.50 | 85.00 |
| Amygdala | 50.00 | 18.75 | 75.00 |
n number of subjects
Summary of confusion matrix
| Subjects | Hippocampus | Amygdala | ||||||
|---|---|---|---|---|---|---|---|---|
| Group A (n = 28) | Group B (n = 36) | Group A (n = 28) | Group B (n = 36) | |||||
| ASD (14) | DC (14) | ASD (20) | DC (16) | ASD (14) | DC (14) | ASD (20) | DC (16) | |
| ASD | 10 | 4 | 17 | 3 | 12 | 8 | 15 | 5 |
| DC | 5 | 9 | 6 | 10 | 9 | 7 | 13 | 3 |
n number of subjects
Fig. 4ASD versus DC classification performance. Mean receiver operating characteristic (ROC) curve and AUC obtained by the SVM using the texture features derived from hippocampus (black curves) and amygdala (red curves) regions in typical (group A) and non-typical (group B) age range subjects
Summary of permutation test
| Brain regions | Subjects | Average ± StDev | Median |
|---|---|---|---|
| Hippocampus | Group A | 48.10 ± 12.78 | 50.00 |
| Group B | 52.00 ± 8.50 | 51.11 | |
| Amygdala | Group A | 49.90 ± 9.62 | 51.20 |
| Group B | 51.34 ± 6.32 | 50.36 |
StDev standard deviation
Fig. 5Dominant feature identification. (First row) Hippocampus-derived features; (second row) amygdala-derived features. Each bar represents the occurrence number of a feature in decision-tree root nodes (from 0 to 1000). Group A (left) and group B (right) contains typical and non-typical age range subjects, respectively