| Literature DB >> 32296326 |
Weiming Lin1,2, Qinquan Gao2,3, Jiangnan Yuan1,4, Zhiying Chen5, Chenwei Feng1,4, Weisheng Chen6, Min Du2,7, Tong Tong2,8.
Abstract
Identifying patients with mild cognitive impairment (MCI) who are at high risk of progressing to Alzheimer's disease (AD) is crucial for early treatment of AD. However, it is difficult to predict the cognitive states of patients. This study developed an extreme learning machine (ELM)-based grading method to efficiently fuse multimodal data and predict MCI-to-AD conversion. First, features were extracted from magnetic resonance (MR) images, and useful features were selected using a feature selection method. Second, multiple modalities of MCI subjects, including MRI, positron emission tomography, cerebrospinal fluid biomarkers, and gene data, were individually graded using the ELM method. Finally, these grading scores calculated from different modalities were fed into a classifier to discriminate subjects with progressive MCI from those with stable MCI. The proposed approach has been validated on the Alzheimer's Disease Neuroimaging Initiative (ADNI) cohort, and an accuracy of 84.7% was achieved for an AD prediction within 3 years. Experiments on predicting AD conversion from MCI within different periods showed similar results with the 3-year prediction. The experimental results demonstrate that the proposed approach benefits from the efficient fusion of four modalities, resulting in an accurate prediction of MCI-to-AD conversion.Entities:
Keywords: Alzheimer’s disease; extreme learning machine; mild cognitive impairment; multimodal; prediction
Year: 2020 PMID: 32296326 PMCID: PMC7140986 DOI: 10.3389/fnagi.2020.00077
Source DB: PubMed Journal: Front Aging Neurosci ISSN: 1663-4365 Impact factor: 5.750
The demographic information of subjects.
| Count (F/M) | 200 (93/107) | 205 (90/115) | 110 (47/63) | 102 (35/67) |
| Age | 73.9 ± 6.0 | 71.8 ± 7.1 | 73.9 ± 7.2 | 75.7 ± 8.0 |
| Education | 16.4 ± 2.7 | 16.1 ± 2.7 | 16.2 ± 2.7 | 15.4 ± 3.0 |
| MMSE | 29.0 ± 1.2 | 28.1 ± 1.7 | 27.1 ± 1.7 | 23.2 ± 2.0 |
FIGURE 1The overall framework of the proposed approach.
The pseudo-code of the proposed method.
| 1 |
| 2 |
| 3 scoreMRI = ELM(train = |
| scorePET = ELM(train = |
| scoreBio = ELM(train = |
| 4 scores = [scoreMRI, scorePET, scoreBio]; ## scores∈ |
| 5 for n from 1 to 100: |
| 6 scores = scores[random_permute,:]; |
| |
| 7 separate scores into ten folds along first dimension; |
| 8 for i from 1 to 10: |
| testSet = scores[foldth = = i,:]; |
| trainSet = scores[others,:]; |
| record predict = ELM(train = trainSet).classify(testSet); |
| end for |
| end for |
| 9 statistics of 100 runs |
FIGURE 2The comparison of the proposed approach with the method that directly concatenates multiple modalities. The black lines superimposed on each bar, and the second number in each bar represents the standard deviations derived from 100 runs of validation. ACC, accuracy; AUC, area under receiver operating characteristic curve; BACC, balanced accuracy; SEN, sensitivity; SPE, specificity.
The contributions of different modalities.
| MRI | 74.5 ± 0.4% | 54.8 ± 0.9% | 85.0 ± 0.3% | 69.9 ± 0.5% | 79.2 ± 0.2% |
| FDG-PET | 76.7 ± 0.4% | 55.1 ± 0.8% | 88.2 ± 0.5% | 71.7 ± 0.4% | 80.9 ± 0.2% |
| CSF | 73.0 ± 0.5% | 62.5 ± 1.0% | 78.7 ± 0.5% | 70.6 ± 0.6% | 79.0 ± 0.3% |
| CSF + APOEϵ4 | 73.9 ± 0.4% | 63.2 ± 0.7% | 79.7 ± 0.6% | 71.4 ± 0.4% | 78.8 ± 0.3% |
| - MRI | 81.3 ± 0.5% | 67.0 ± 1.0% | 89.0 ± 0.5% | 78.0 ± 0.6% | 86.8 ± 0.2% |
| - FDG-PET | 81.0 ± 0.5% | 67.2 ± 0.8% | 88.4 ± 0.5% | 77.8 ± 0.5% | 86.7 ± 0.2% |
| - CSF | 79.6 ± 0.6% | 63.5 ± 1.2% | 88.3 ± 0.5% | 75.9 ± 0.7% | 85.8 ± 0.2% |
| - APOEϵ4 | 83.2 ± 0.5% | 69.8 ± 1.0% | 90.4 ± 0.5% | 80.1 ± 0.6% | 88.7 ± 0.2% |
| - LASSO | 83.5 ± 0.6% | 69.0 ± 1.2% | 91.2 ± 0.6% | 80.1 ± 0.7% | 88.8 ± 0.2% |
| All | 84.7 ± 0.4% | 72.7 ± 0.8% | 91.2 ± 0.4% | 81.9 ± 0.5% | 88.8 ± 0.2% |
FIGURE 3The receiver operating characteristic curves when different modalities were used.
FIGURE 4The performance of predicting MCI-to-AD conversion at different time periods. (A) Performance of accuracy and AUC. (B) Performance of sensitivity, specificity, and balanced accuracy. AD, Alzheimer’s disease; AUC, area under receiver operating characteristic curve; MCI, mild cognitive impairment.
The experiments on different conditions.
| SVM | MRI, PET, CSF, APOE | 110/205 | 83.6% | – |
| ELM | MRI, PET, CSF, APOE | 110/205 | 84.7% | 88.8% |
| ELM | MRI, PET, CSF, APOE, neuropsychological scores | 110/205 | 85.1% | 92.6% |
| ELM | MRI, PET, CSF, APOE, neuropsychological scores | 110/141 (ambiguous subjects excluded) | 87.1% | 94.7% |
The top 10 AD-related MRI features from LASSO feature selection.
| 1 | Volume of left hippocampus |
| 2 | Volume of left amygdala |
| 3 | Volume of left inferior lateral ventricle |
| 4 | Surface area of left isthmus cingulate |
| 5 | Volume of right hippocampus |
| 6 | Volume of left inferior temporal |
| 7 | Cortical thickness average of left middle temporal |
| 8 | Cortical thickness standard deviation of right transverse temporal |
| 9 | Cortical thickness standard deviation of right lateral orbitofrontal |
| 10 | Cortical thickness average of right entorhinal |