| Literature DB >> 32417771 |
Ferdinando Petrazzuoli1, Susanna Vestberg2, Patrik Midlöv1, Hans Thulesius1,3, Erik Stomrud4, Sebastian Palmqvist4.
Abstract
BACKGROUND: Differentiating mild cognitive impairment (MCI) from subjective cognitive decline (SCD) is important because of the higher progression rate to dementia for MCI and when considering future disease-modifying drugs that will have treatment indications at the MCI stage.Entities:
Keywords: AQT; Mini-Mental State Examination; clock drawing test; cognitive screening; diagnostic accuracy; mild zzm321990cognitive impairment; subjective cognitive decline
Mesh:
Year: 2020 PMID: 32417771 PMCID: PMC7369041 DOI: 10.3233/JAD-191191
Source DB: PubMed Journal: J Alzheimers Dis ISSN: 1387-2877 Impact factor: 4.472
Fig.1Enrollment process. The eligible population was defined as those who met the inclusion criteria (see Methods). Participation in other studies was not an exclusion criterion, but because of multiple investigations at the same time, some patients could not be included in the present study. “Any missing data” was defined as missing data for MMSE, CDT, AQT, SCD/MCI classification, or years of education.
Characteristics of the SCD and MCI groups
| Characteristic | SCD | MCI | |
| N | 208 | 258 | |
| Age mean, y | 70.0 (5.7) | 71.0 (5.4) | 0.061 |
| Female sex, N (%) | 109 (52.4) | 104 (40.3) | |
| Education, y | 12.5 (3.5) | 11.1 (3.2) | |
| Stroke, | 26 (12.5%) | 38 (14.7%) | 0.487 |
| Hypertension, | 62 (29.8%) | 84 (32.6%) | 0.525 |
| Diabetes ( | 17 (8.2%) | 26 (10.1%) | 0.522 |
| Ischemic heart disease ( | 19 (9.1%) | 45 (17.5%) | |
| Atrial fibrillation ( | 14 (6.7%) | 15 (5.8%) | 0.704 |
| Congestive heart failure ( | 3 (1.4%) | 3 (1.2%) | 1.000 |
| Hyperlipemia ( | 25 (12.5%) | 21 (8.2%) | 0.211 |
| 78 (37.5%) | 131 (50.8%) | ||
| MMSE, points | 28.5 (1.4) | 27.0 (1.8) | |
| AQT | 74.1 (20.4) | 88.8 (31.3) | |
| CDT | 4.5 (0.9) | 4.0 (1.1) | |
| Amnestic MCI single domain | N/A | 107 (41.5%) | |
| Amnestic MCI multidomain | N/A | 84 (32.6%) | |
| Non-amnestic MCI single domain | N/A | 47 (18.2%) | |
| Non-amnestic MCI multidomain | N/A | 19 (7.4%) | |
| MCI not subclassified | N/A | 1 (0.4%) |
Data are in mean (standard deviation) if not otherwise specified. SCD, subjective cognitive decline; MCI, mild cognitive impairment; n, number of patients; N/A, not applicable; MMSE, Mini-Mental State Examination; AQT, A Quick Test of Cognitive Speed; CDT, Clock Drawing Test.
ROC analysis for identifying MCI using MMSE, CDT, and AQT in the training and validation samples
| Total number of tests | Training sample ( | Validation sample ( | |||||
| Cut-off* | Sensitivity (%) | Specificity (%) | Youden index | Sensitivity (%) | Specificity (%) | Youden index | |
| AQT > 83 s | 54.7 | 73.8 | 0.28 | 68.8 | 49.2 | 0.18 | |
| CDT < 4 p | 33.7 | 85.5 | 0.19 | 35.1 | 85.7 | 0.21 | |
| 2 | MMSE < 28 AND AQT > 52 | 58.0 | 80.7 | 0.39 | 40.3 | 87.3 | 0.28 |
| 2 | MMSE < 30 AND CDT < 5 | 48.6 | 75.2 | 0.24 | 42.9 | 82.5 | 0.25 |
| 2 | MMSE < 28 OR CDT < 4 | 69.6 | 70.3 | 0.40 | 63.6 | 68.2 | 0.32 |
| 3 | |||||||
*Cut-offs were established in the training sample according to the highest Youden index and tested in the validation sample. MMSE, Mini-Mental State Examination; AQT, A Quick Test of Cognitive Speed; CDT, Clock Drawing Test.
Detection of MCI in the total population using logistic regressions models
| Predictors | AUC (95% CI) | AIC | Accuracy | Sensitivity | Specificity | Youden index |
| MMSE | 0.75 (0.70–0.79)1,2 | 557 | 66.5% | 55.0% | 83.2% | 0.38 |
| CDT | 0.66 (0.61–0.71) | 609 | 61.6% | 48.4% | 77.9% | 0.26 |
| AQT | 0.68 (0.63–0.73) | 600 | 63.7% | 78.7% | 50.5% | 0.29 |
| MMSE and CDT | 0.75 (0.71–0.80)4,5,7 | 552 | 69.1% | 64.0% | 76.4% | 0.40 |
| MMSE and AQT | 0.76 (0.72–0.80)4,6,8 | 547 | 68.5% | 66.2% | 73.1% | 0.39 |
| AQT and CDT | 0.71 (0.66–0.75)1 | 590 | 65.8% | 65.9% | 69.2% | 0.35 |
| MMSE, CDT and AQT | 0.77 (0.72–0.81)3,4,6,9 | 545 | 70.8% | 72.5% | 69.7% | 0.42 |
All models were adjusted for age and education. Neither age nor education were significant in any of the models except for the single cognitive test models with CDT and AQT, respectively. AIC shows the model fit in relation to the number of predictors in the model, where a decrease in ΔAIC of < –2 equals a significant better model fit (the addition of an extra cognitive test is thus justified if the AIC drops by >2). Accuracy was defined as % correctly classified cases (MCI or SCD) using a probability cut-off of 0.5. Sensitivity and specificity are shown for the probability cut-off (probability output from the logistic regression model) that provides the highest Youden index (sensitivity + specificity –1). 1p < 0.01 compared to CDT; 2p < 0.05 compared to AQT; 3p < 0.05 compared to MMSE; 4p < 0.001 compared to CDT; 5p < 0.01 compared to AQT; 6p < 0.001 compared to AQT; 7p < 0.05 compared to AQT and CDT; 8p < 0.01 compared to AQT and CDT; 9p < 0.001 compared to AQT and CDT. AIC, Akaike Information Criterion; AUC, Area under the Curve; MMSE, Mini-Mental State Examination; AQT, A Quick Test of Cognitive Speed; CDT, Clock Drawing Test.
Fig.2ROC curves from logistic regression models for identifying MCI. A shows the ROC curves of the individual cognitive tests adjusted for age and education in logistic regression models with classification (SCD or MCI) as outcome variable. B shows the different combinations of tests, also adjusted for age and education. See Table 3 for more details. AUC, Area under the Curve; MMSE, Mini-Mental State Examination; AQT, A Quick Test of Cognitive Speed; CDT, Clock Drawing Test.