| Literature DB >> 34045953 |
Dafa Shi1, Haoran Zhang1, Siyuan Wang1, Guangsong Wang1, Ke Ren1.
Abstract
This study aimed to investigate the value of amplitude of low-frequency fluctuation (ALFF)-based histogram analysis in the diagnosis of Parkinson's disease (PD) and to investigate the regions of the most important discriminative features and their contribution to classification discrimination. Patients with PD (n = 59) and healthy controls (HCs; n = 41) were identified and divided into a primary set (80 cases, including 48 patients with PD and 32 HCs) and a validation set (20 cases, including 11 patients with PD and nine HCs). The Automated Anatomical Labeling (AAL) 116 atlas was used to extract the histogram features of the regions of interest in the brain. Machine learning methods were used in the primary set for data dimensionality reduction, feature selection, model construction, and model performance evaluation. The model performance was further validated in the validation set. After feature data dimension reduction and feature selection, 23 of a total of 1,276 features were entered in the model. The brain regions of the selected features included the frontal, temporal, parietal, occipital, and limbic lobes, as well as the cerebellum and the thalamus. In the primary set, the area under the curve (AUC) of the model was 0.974, the sensitivity was 93.8%, the specificity was 90.6%, and the accuracy was 93.8%. In the validation set, the AUC, sensitivity, specificity, and accuracy were 0.980, 90.9%, 88.9%, and 90.0%, respectively. ALFF-based histogram analysis can be used to classify patients with PD and HCs and to effectively identify abnormal brain function regions in PD patients.Entities:
Keywords: Parkinson’s disease; amplitude of low-frequency fluctuation; functional MRI; histogram analysis; least absolute shrinkage and selection operator; machine learning
Year: 2021 PMID: 34045953 PMCID: PMC8144304 DOI: 10.3389/fnagi.2021.624731
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
Figure 1Whole-brain parcellation with the Automated Anatomical Labeling (AAL) 116 template.
Comparison of the general clinical data between healthy controls (HCs) and Parkinson’s disease (PD) patients in the primary and validation sets.
| Primary set | Validation set | |||||
|---|---|---|---|---|---|---|
| HCs | PD | HCs | PD | |||
| Sex (M/F) | 16/16 | 28/20 | 0.46 | 4/5 | 7/4 | 0.68 |
| Age (years) | 57.25 ± 4.87 | 55.94 ± 9.42 | 0.42 | 53.22 ± 4.41 | 58.73 ± 7.89 | 0.08 |
| Years of education | 11.12 ± 4.53 | 11.38 ± 3.61 | 0.79 | 11.89 ± 4.96 | 11.00 ± 2.61 | 0.61 |
| MMSE | 28.91 ± 1.73 | 28.52 ± 1.35 | 0.27 | 29.67 ± 0.71 | 29.18 ± 1.08 | 0.26 |
Figure 2The remaining 129 features correlation heatmap.
Figure 3Feature selection using the LASSO model. (A) In the primary dataset, the penalization parameter λ was selected using 10-fold cross-validation LASSO method with the mean squared error (MSE) as the criterion. In this study, the minimum MSE was at λ = 0.069, log(λ) = –2.68. (B) LASSO coefficient profile of 129 radiomic features. There are 23 nonzero coefficient features at the optimal λ. LASSO, least absolute shrinkage and selection operator.
Figure 4The brain regions of the selected features. The color bar value represents the feature weight value.
Different brain regions between Parkinson’s disease patients and healthy controls.
| AAL number | AAL brain areas | Brodmann brain areas | Features | Weight value |
|---|---|---|---|---|
| 7 | Frontal_MidL | BA46_L | Mean | 0.070 |
| 38 | Hippocampus_R | BA20_R | Mean | 0.016 |
| 61 | Parietal_InfL | BA40_L | Mean | 0.099 |
| 69 | Paracentral_LobuleL | BA4_L | Mean | 0.115 |
| 77 | Thalamus_L | None | Mean | 0.205 |
| 105 | Cerebelum_9L | None | Minimum | 0.287 |
| 53 | Occipital_InfL | BA19_L | Maximum | 0.081 |
| 90 | Temporal_InfR | BA20_R | Maximum | 0.081 |
| 99 | Cerebelum_6L | BA19_L | Maximum | 0.191 |
| 20 | Supp_Motor_AreaR | BA6_R | Standard deviation | 0.229 |
| 53 | Occipital_InfL | BA19_L | Standard deviation | 0.012 |
| 68 | Precuneus_R | None | Median | 0.119 |
| 39 | ParaHippocampal_L | BA35_L | Skewness | 0.072 |
| 40 | ParaHippocampal_R | BA35_R | Skewness | 0.020 |
| 42 | Amygdala_R | BA34_R | Skewness | 0.215 |
| 51 | Occipital_MidL | BA19_L | Skewness | 0.086 |
| 62 | Parietal_InfR | BA40_R | Skewness | 0.137 |
| 7 | Frontal_MidL | BA46_L | Kurtosis | 0.037 |
| 3 | Frontal_SupL | None | 10th percentile | 0.513 |
| 19 | Supp_Motor_AreaL | BA6_L | 10th percentile | 0.016 |
| 61 | Parietal_InfL | BA40_L | 10th percentile | 0.018 |
| 62 | Parietal_InfR | BA40_R | 10th percentile | 0.064 |
| 78 | Thalamus_R | None | 10th percentile | 0.017 |
AAL, Automated Anatomical Labeling; BA, Brodmann brain areas; Frontal_Mid, middle frontal gyrus; .
Figure 5The Rag-score for each subject in the primary (A) and validation (B) sets. Red bars represent the HC group and blue bars represent the PD group. The greater the score, the more likely it is to be PD. Rag-scores, radiomic signature scores; HC, healthy control; PD, Parkinson’s disease.
Figure 6Receiver operating characteristic (ROC) analysis of the radiomic signature scores in the primary (A) and validation (B) sets.
Classification performances of the different cross-validation methods.
| CV methods | Dataset | AUC (95% CI) | Accuracy (%) | Sensitivity (%; 95% CI) | Specificity (%; 95% CI) |
|---|---|---|---|---|---|
| 10-fold | Primary | 0.974 (0.946–1) | 93.8 | 93.8 (82.8–98.69) | 90.6 (74.98–98.02) |
| Validation | 0.980 (0.929–1) | 90.0 | 90.9 (58.72–99.77) | 88.9 (51.75–99.72) | |
| 5-fold | Primary | 0.978 (0.953–1) | 90.0 | 97.9 (88.93–99.95) | 78.1 (60.03–90.72) |
| Validation | 0.981 (0.925–1) | 90.0 | 77.8 (39.99–97.19) | ||
| LOO | Primary | 0.971 (0.940–1) | 83.8 | 75.0 (60.4–86.36) | 96.9 (83.78–99.92) |
| Validation | 0.968 (0.918–1) | 85.0 | 72.7 (39.03–93.98) |
CV, cross-validation; .