| Literature DB >> 32316912 |
Lirong Teng1, Yongchao Li2, Yu Zhao2, Tao Hu2, Zhe Zhang2, Zhijun Yao3, Bin Hu4.
Abstract
BACKGROUND: Mild cognitive impairment (MCI) is an intermediate stage between normal aging and dementia. Studies on MCI progression are important for Alzheimer's disease (AD) prevention. 18F fluoro-deoxy-glucose positron emission tomography (FDG-PET) has been proven to be a powerful tool for measuring cerebral glucose metabolism. In this study, we proposed a classification framework for MCI prediction with both baseline and multiple follow-up FDG-PET scans as well as cognitive scores of 33 progressive MCI (pMCI) patients and 46 stable MCI (sMCI) patients from the Alzheimer's Disease Neuroimaging Initiative (ADNI).Entities:
Keywords: Classification; Cognitive scores; Dynamic features; FDG-PET; Mild cognitive impairment
Mesh:
Substances:
Year: 2020 PMID: 32316912 PMCID: PMC7171825 DOI: 10.1186/s12883-020-01728-x
Source DB: PubMed Journal: BMC Neurol ISSN: 1471-2377 Impact factor: 2.474
Fig. 1The classification framework. Static feature, dynamic feature, and cognitive feature extraction (a). The LOO cross-validation classification evaluation process (b)
Subject information
| Group | sMCI | pMCI | |
|---|---|---|---|
| Number of subjects | 46 | 33 | – |
| Gender(M/F) | 31/15 | 24/9 | 0.6110# |
| Baseline age (mean ± std) | 77.1 ± 6.8 | 73.4 ± 6.7 | 0.0192$* |
| Baseline MMSE (mean ± std) | 27.8 ± 1.4 | 27.1 ± 1.6 | 0.0387$* |
| Baseline ADAS-cog (mean ± std) | 13.9 ± 5.5 | 18.1 ± 4.0 | 3.86e-04$* |
pMCI progressive mild cognitive impairment, sMCI stable mild cognitive impairment, MMSE Mini-mental State Examination, ADAS-cog Alzheimer’s disease Assessment Scale-Cognitive section. # and $ represent p-value for chi-square test and two-sample t-test, respectively. * indicates there are significant differences of the corresponding demographic variables at baseline.
Fig. 2The optimization process of classification. The number of selected features increased from 1 to 246 as shown in x-axis. And the y-axis represents the classification performance with static and dynamic features in different colors and markers. ACC, classification accuracy. Static_mbl, static feature obtained in the baseline. Static_m6, static feature obtained in the 6th month after baseline. Static_m12, static feature obtained in the 12th month after baseline. Static_m18, Static feature obtained in the 18th month after baseline. Dynamic_1, dynamic feature calculated with Static_mbl and Static_m6. Dynamic_2, dynamic feature calculated with Static_mbl and Static_m12. Dynamic_3, dynamic feature calculated with Static_mbl and Static_m18
Fig. 3Locations of the selected regions as features overlaid on the standard template. Static_m6, static feature obtained in 6th month after baseline. Dynamic_1, dynamic feature calculated with static feature in baseline and in the 6th month after baseline
Comparison of the classification performance in static features
| Static_mbl | 59.49 | 6.06 | 97.83 | 0.5402 |
| Static_m6 | 78.48 | 57.58 | 93.48 | 0.6634 |
| Static_m12 | 73.41 | 48.48 | 91.30 | 0.6344 |
| Static_m18 | 70.88 | 45.45 | 89.13 | 0.5428 |
| Static_all | 75.95 | 51.52 | 93.48 | 0.6614 |
ACC classification accuracy, SEN classification sensitivity, SPE classification specificity, AUC Area Under Curve, Static_mbl static feature obtained in the baseline, Static_m6 static feature obtained in the 6th month after baseline, Static_m12 static feature obtained in the 12th month after baseline, Static_m18 static feature obtained in the 18th month after baseline, Static_all combining all the static features
Comparison of the classification performance in dynamic features
| Dynamic_2 | 77.21 | 75.76 | 78.26 | 0.8063 |
| Dynamic_3 | 82.28 | 73.91 | 93.94 | 0.9289 |
| R1 | 60.76 | 6.32 | 100 | 0.8524 |
| R2 | 64.56 | 15.22 | 100 | 0.6278 |
| R3 | 64.56 | 54.55 | 71.74 | 0.5738 |
| Dynamic_all | 87.38 | 87.88 | 86.96 | 0.8959 |
ACC classification accuracy, SEN classification sensitivity, SPE classification specificity. AUC Area Under Curve, Dynamic_1 dynamic feature calculated with Static_mbl and Static_m6 in Table 2, Dynamic_2 dynamic feature calculated with Static_mbl and Static_m12, Dynamic_3 dynamic feature calculated with Static_mbl and Static_m18, R1 metabolic change rate in the 6th month after baseline, R2 metabolic change rate in the 12th month after baseline, R3 metabolic change rate in the 18th month after baseline, Dynamic_all combining all the dynamic features
Fig. 4The ROC curves for static features and dynamic features. The ROC curves are at the best performance of classification for static features, dynamic features and the combination of dynamic features and static features respectively
Comparison of the classification performance in the combination features
| Static | 75.95 | 51.52 | 93.48 | 0.6614 |
| Dynamic | ||||
| Cognitive | 77.22 | 55.55 | 93.48 | 0.6414 |
| Static & Dynamic | 72.15 | 57.58 | 82.61 | 0.7444 |
| Static & Cognitive | 73.42 | 57.58 | 84.78 | 0.7345 |
| Dynamic & Cognitive | 87.34 | 75.76 | 95.65 | 0.9308 |
| All | 72.42 | 36.36 | 97.83 | 0.6443 |
ACC classification accuracy, SEN classification sensitivity, SPE classification specificity, AUC Area Under Curve. Static denotes the combination of all the static features, which is the same as Static_all in Table 2. Dynamic denotes the combination of all the dynamic features as shown in Table 3 (Dynamic_all). Cognitive denotes the combination of all the MMSE and ADAS-cog score features. All denotes the combination of all the types of features