| Literature DB >> 32085774 |
Harsh Bhasin1, Ramesh Kumar Agrawal2.
Abstract
BACKGROUND: The detection of Alzheimer's Disease (AD) in its formative stages, especially in Mild Cognitive Impairments (MCI), has the potential of helping the clinicians in understanding the condition. The literature review shows that the classification of MCI-converts and MCI-non-converts has not been explored profusely and the maximum classification accuracy reported is rather low. Thus, this paper proposes a Machine Learning approach for classifying patients of MCI into two groups one who converted to AD and the others who are not diagnosed with any signs of AD. The proposed algorithm is also used to distinguish MCI patients from controls (CN). This work uses the Structural Magnetic Resonance Imaging data.Entities:
Keywords: 3D discrete wavelet transform; 3D local binary pattern; Machine learning; Magnetic resonance imaging; Mild cognitive impairments
Year: 2020 PMID: 32085774 PMCID: PMC7035729 DOI: 10.1186/s12911-020-1055-x
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Demographic and Clinical Information of the subjects
| Group | MCI-NC ( | MCI-C ( | CN ( |
|---|---|---|---|
| Female/ Male | 51/61 | 33/42 | 45/44 |
| Age (Mean ± SD) | 74.83 ± 7.34 | 74.69 ± 7.28 | 75.21 ± 5.13 |
Fig. 1Flowchart of the training phase of 3D-DWT-LBP-20
Comparison of performance of various methods to distinguish MCI-C from MCI-NC and MCI from CN
| Dataset | Model | Original Number of Features | Accuracy | Specificity | Sensitivity | Average Number of Features |
|---|---|---|---|---|---|---|
| MCI-C vs. MCI-NC | 3D DWT | 1,359,872 | 0.8574 ± 0.0073 | 0.8564 ± 0.0068 | 0.8555 ± 0.0099 | 271.8 ± 79.35 |
| LBP-3D | 262,144 | 0.7644 ± 0.0395 | 0.7497 ± 0.0291 | 0.8100 ± 0.0237 | 232.6 ± 29.28 | |
| LBP-309 | 309 | 0.8361 ± 0.0209 | 0.8453 ± 0.0264 | 0.8363 ± 0.0238 | 194.5 ± 59.68 | |
| LBP-20 | 20 | 0.8432 ± 0.0131 | 0.8416 ± 0.0093 | 0.8411 ± 0.0132 | 16 ± 2.49 | |
| 3D DWT + LBP-20 | 140 | 0.8877 ± 0.0167 | 0.8916 ± 0.0216 | 0.9016 ± 0.0054 | 15.3 ± 2.40 | |
| MCI vs. CN | 3D DWT | 1,359,872 | 0.8834 ± 0.0072 | 0.8846 ± 0.0064 | 0.8802 ± 0.0072 | 235.6 ± 95.01 |
| LBP-3D | 262,144 | 0.7763 ± 0.0267 | 0.7805 ± 0.0331 | 0.7900 ± 0.0342 | 230.4 ± 3 8.29 | |
| LBP-309 | 309 | 0.8791 ± 0.0134 | 0.8780 ± 0.0167 | 0.8631 ± 0.0158 | 188 ± 67.42 | |
| LBP-20 | 20 | 0.8847 ± 0.0086 | 0.8699 ± 0.0137 | 0.8575 ± 0.0115 | 15.1 ± 2.33 | |
| 3D DWT + LBP-20 | 140 | 0.9031 ± 0.0137 | 0.9015 ± 0.0168 | 0.9022 ± 0.0134 | 16.2 ± 1.39 |
Comparison of performance of the proposed method with existing works
| Method | Accuracy (%) | Sensitivity (%) | Specificity (%) | |
|---|---|---|---|---|
| MCI-C vs. MCI-NC | Colliot et al. 2008 [ | 66 | 66 | 65 |
| Chupin et al. 2009 [ | 65 | 68 | ||
| Andrea Chincarini et.al., 2011 [ | _ | 72 | 65 | |
| Chong-Yaw Wee et.al., 2013 [ | 75.05 | 63.52 | 84.41 | |
| Tong Tong et al., 2014 [ | 72 | 69 | 74 | |
| Suk et al. 2014 [ | 72.42 | 36.70 | 90.98 | |
| Liu et al. 2018 [ | 72.08 | 75.11 | 71.05 | |
| 0.8877 | 0.8916 | 0.9016 | ||
| MCI vs. CN | Pennanen et al.2004 [ | 65.9 | 66.2 | 65.5 |
| Chupin et al. 2009 [ | 75 | 74 | ||
| Carlton Chu et al., 2011 [ | 67.3 | _ | _ | |
| Chong-Yaw Wee et.al., 2013 [ | 92.33 | 83.55 | 83.95 | |
| Suk et al. 2014 [ | 84.24 | 99.58 | 53.79 | |
| Ahmed et al. 2015 [ | 78.22 | 70.73 | 83.34 | |
| Khedher et al. 2015 [ | 80.27 | 73.51 | 82.70 | |
| Liu et al. 2018 [ | 85.79 | 88.91 | 80.34 | |
| 0.9031 | 0.9015 | 0.9022 |
Fig. 2The comparison of the normalized features obtained with LBP-20 and 3D-DWT+ LBP-20: Here, DWT1, DWT2 etc. are the seven detailed components obtained using the 3D-DWT