| Literature DB >> 36096822 |
Chae Jung Park1,2,3, Younghoon Seo2, Yeong Sim Choe1,2,4, Hyemin Jang2,4,5, Hyejoo Lee6,7,8, Jun Pyo Kim9.
Abstract
BACKGROUND: Cortical deposition of β-amyloid (Aβ) plaque is one of the main hallmarks of Alzheimer's disease (AD). While Aβ positivity has been the main concern so far, predicting whether Aβ (-) individuals will convert to Aβ (+) has become crucial in clinical and research aspects. In this study, we aimed to develop a classifier that predicts the conversion from Aβ (-) to Aβ (+) using artificial intelligence.Entities:
Keywords: Alzheimer’s disease; Amyloid PET; Dementia; Machine learning; Prediction model
Mesh:
Substances:
Year: 2022 PMID: 36096822 PMCID: PMC9465850 DOI: 10.1186/s13195-022-01067-8
Source DB: PubMed Journal: Alzheimers Res Ther Impact factor: 8.823
Fig. 1Inclusion and exclusion of the study datasets. a Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. b Samsung Medical Center (SMC) dataset
Clinical characteristics of β-amyloid positivity converters and non-converters
| ADNI dataset | SMC dataset | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Total | Converter | Nonconverter | Total | Converter | Nonconverter | ||||
| Subjects, | 229 (100.0) | 53 (23.1) | 176 (75.1) | - | 40 (100.0) | 10 (25.0) | 30 (75.0) | - | - |
| Follow-up duration (years) | 7.1 (1.7) | 5.7 (2.2) | 7.5 (1.3) | <0.001* | 6.1 (2.0) | 3.9 (1.2) | 6.7 (1.6) | <0.001* | <0.001* |
| Age, mean years (SD) | 71.7 (7.3) | 72.9 (6.8) | 71.3 (7.5) | 0.163 | 70.1 (7.7) | 75.0 (8.1) | 69.5 (7.3) | 0.050 | 0.498 |
| Female, | 108 (47.2) | 23 (43.4) | 85 (48.3) | 0.639 | 28 (68.3) | 7 (70.0) | 20 (67.7) | 1.000 | 0.028* |
| 54 (23.6) | 20 (37.7) | 34 (19.3) | 0.010* | 5 (12.5) | 3 (30.0) | 2 (6.7) | 0.168 | 0.175 | |
| Education, years (SD) | 16.5 (2.7) | 16.6 (2.3) | 16.5 (2.8) | 0.813 | 9.0 (4.6) | 11.2 (4.2) | 8.3 (4.6) | 0.087 | <0.001* |
| Family history, | 124 (54.1) | 31 (58.4) | 93 (52.8) | 0.571 | 10 (24.4) | 4 (40.0) | 6 (19.4) | 0.369 | 0.001* |
| Amyloid tracer uptakea, mean (SD) | 1.017 (0.054) | 1.058 (0.039) | 1.005 (0.052) | <0.001* | 3.377 (7.325) | 12.052 (5.492) | 0.088 (4.754) | <0.001* | - |
ADNI Alzheimer’s Disease Neuroimaging Initiative, SMC Samsung Medical Center, SD standard deviation, APOE ε4 apolipoprotein E ε4, SUVR standardized uptake value ratios, AD Alzheimer’s disease
†Comparisons between cohorts
aValues represent global SUVR in the ADNI dataset and global Centiloid in the SMC dataset
*Statistically significant (p < 0.05)
Beta-amyloid positivity classifier performances. Three different models were developed with different feature combinations
| Dataset | Model | Featuresa | AUROC (95% CI) | AUPRC (95% CI) | Sensitivity (95% CI) | Specificity (95% CI) | PPV (95% CI) | NPV (95% CI) |
|---|---|---|---|---|---|---|---|---|
| A. ADNI (development set) | Model 1 | Age, gender, | 0.674 (0.666–0.683) | 0.374 (0.364–0.384) | 0.606 (0.595–0.616) | 0.692 (0.668–0.715) | 0.373 (0.355–0.392) | 0.853 (0.849–0.858) |
| Model 2 | Age, gender, | 0.814 (0.806–0.821) | 0.549 (0.534–0.564) | 0.744 (0.707–0.780) | 0.727 (0.690–0.764) | 0.454 (0.430–0.478) | 0.905 (0.896–0.913) | |
| Model 3 | Age, gender, | 0.841 (0.832–0.849) | 0.627 (0.610–0.645) | 0.600 (0.581–0.619) | 0.869 (0.862–0.875) | 0.579 (0.562–0.597) | 0.878 (0.873–0.884) | |
| B. SMC (external validation set) | Model 2 | Age, gender, | 0.900 | 0.625 | 1.000 | 0.700 | 0.526 | 1.000 |
Measurements were described as averages and the 95% confidence interval of 10 times repeated 10-fold cross-validation with the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. The Samsung Medical Center (SMC) dataset was used for external validation to test the Model 2.
AUROC area under the receiver operating characteristic, AUPRC area under the precision-recall curve, CI confidence interval, PPV positive predictive value, NPV negative predictive value, ADNI Alzheimer’s Disease Neuroimaging Initiative, SMC Samsung Medical Center, APOE ε4 apolipoprotein E ε4, SUVR standardized uptake value ratio
aNumbers in parentheses indicate the total number of features used in each model
Fig. 2Receiver operating characteristic curves of three artificial neural network models that classify the β-amyloid positivity within 5 years. Mean curves of 10 times repeated 10-fold cross-validation are plotted. Each model included the following features for training with the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset: Model 1: age + gender + APOE ε4 carriers, Model 2: features from Model 1 + global SUVR, and Model 3: features from Model 2 + regional SUVR
Features attributing to the classification of β-amyloid positivity conversion in Model 3
| Feature | Importance |
|---|---|
| Global SUVR | 0.025 |
| 0.019 | |
| Right pars triangularis | 0.016 |
| Left superior parietal | 0.016 |
| Left inferior parietal | 0.014 |
| Left frontal pole | 0.012 |
| Right superior parietal | 0.012 |
| Left pars orbitalis | 0.012 |
| Right posterior cingulate | 0.009 |
| Left rostral middle frontal | 0.008 |
| Right pars opercularis | 0.008 |
| Right superior frontal | 0.007 |
Aβ beta-amyloid, APOE ε4 apolipoprotein E ε4, SUVR standardized uptake value ratio
Fig. 3Visualization of feature importance using mean attribution scores