| Literature DB >> 34199578 |
Yuehong Qiu1,2, Kaigong Wei1,2, Lijun Zhu1,2, Dan Wu1, Can Jiao1,2.
Abstract
Individual and meteorological factors are associated with cognitive function in older adults. However, how these two factors interact with each other to affect cognitive function in older adults is still unclear. We used mixed effects models to assess the association of individual and meteorological factors with cognitive function among older adults. Individual data in this study were from the database of China Family Panel Studies. A total of 3448 older adults from 25 provinces were included in our analysis. Cognitive functions were measured using a memory test and a logical sequence test. We used the meteorological data in the daily climate dataset of China's surface international exchange stations, and two meteorological factors (i.e., average temperature and relative humidity) were assessed. The empty model showed significant differences in the cognitive scores of the older adults across different provinces. The results showed a main impact of residence (i.e., urban or rural) and a significant humidity-residence interaction on memory performance in older adults. Specifically, the negative association between humidity and memory performance was more pronounced in urban areas. This study suggested that meteorological factors may, in concert with individual factors, be associated with differences in memory function in older adults.Entities:
Keywords: cognitive function; meteorological variables; mixed effects model; older age
Mesh:
Year: 2021 PMID: 34199578 PMCID: PMC8199712 DOI: 10.3390/ijerph18115981
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The proposed multi-level model.
The demographic information of all the participants.
| Variables | All Population | |
|---|---|---|
|
| n | Mean ± SD (min–max) |
| Age | 3448 | 67.5 ± 6.0 (60–94) |
| Memory test score | 3448 | 6.89 ± 3.02 (0–14) |
| Sequence test score | 3448 | 4.59 ± 3.82 (0–14) |
|
| n | % |
| Gender | ||
| Male | 2187 | 63.4 |
| Female | 1261 | 36.6 |
| Education level | ||
| Low (≤6) | 1584 | 45.9 |
| High (>6) | 1864 | 54.1 |
| Place of residence | ||
| Urban | 1903 | 55.1 |
| Rural | 1545 | 44.9 |
| Chronic disease | ||
| Yes | 1081 | 31.3 |
| No | 2367 | 68.7 |
The gap value, variance, ICC, and design effect value of models.
| Model | Gap (−2) | Variance | ICC | Design Effect | |
|---|---|---|---|---|---|
| Within-Province | Between-Province | ||||
| Empty model | 17,314.501 | 8.740 | 0.679 | 0.072 | 10.86 |
| Level 1 model | 17,108.243 | 8.210 | 0.567 | 0.065 | 9.90 |
| Level 1 and 2 model | 17,134.779 | 8.203 | 0.503 | 0.058 | 8.94 |
| Full model | 17,180.733 | 8.200 | 0.514 | 0.059 | 9.08 |
Descriptive statistics of memory scores of categorical variables.
| Categorical Variables |
| Mean ± SD |
|---|---|---|
| Gender | ||
| male | 2187 | 6.70 ± 2.955 |
| female | 1261 | 7.21 ± 3.104 |
| Residence | ||
| urban | 1903 | 7.16 ± 3.089 |
| rural | 1545 | 6.55 ± 2.899 |
| Chronic disease | ||
| Yes | 1081 | 6.79 ± 3.064 |
| No | 2367 | 6.93 ± 3.000 |
The main effects of the empty, individual level, and provincial level model.
| Parameter | The Empty Model | The Individual Level Model | The Individual Level and Provincial Level Model | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Estimate |
|
|
| Estimate |
|
|
| Estimate |
|
|
| |
| Intercept | 6.738 | 37.758 | <0.001 | 6.366–7.110 | 14.722 | 23.199 | <0.001 | 13.477–15.966 | 17.889 | 11.935 | <0.001 | 14.940–20.839 |
|
| ||||||||||||
| Age | −0.112 | −13.464 | <0.001 | −0.128–−0.095 | −0.112 | −13.488 | <0.001 | −0.128–−0.096 | ||||
| Gender | 0.311 | 2.999 | 0.003 | 0.108–0.515 | 0.317 | 3.053 | 0.002 | 0.113–0.520 | ||||
| Residence | −0.582 | −5.450 | <0.001 | −0.791–−0.372 | −0.598 | −5.602 | <0.001 | −0.808–−0.389 | ||||
| Chronic disease | −0.078 | −0.732 | 0.464 | −0.287–0.131 | −0.083 | −0.781 | 0.435 | −0.292–0.126 | ||||
|
| ||||||||||||
| Temperature | 0.019 | 1.123 | 0.262 | −0.014–0.053 | ||||||||
| Humidity | −0.048 | −2.685 | 0.008 | −0.084–−0.013 | ||||||||
|
| ||||||||||||
| Traffic | 9.49210 × 10 −7 | 0.145 | 0.886 | −1.28 × 10 −5–1.47 × 10 −5 | ||||||||
The effects of individual level and provincial level variables in the full model.
| Parameter | The Full Model | ||||
|---|---|---|---|---|---|
| Estimate |
|
|
|
| |
| Intercept | 22.273 | 3431.989 | 2.522 | 0.012 | 4.957–39.588 |
|
| |||||
| Age | −0.176 | 3419.325 | −1.481 | 0.139 | −0.409–0.057 |
| Gender | 2.482 | 3417.022 | 1.705 | 0.088 | −0.373–5.337 |
| Residence | −2.995 | 3312.824 | −2.083 | 0.037 | −5.815–−0.175 |
| Chronic disease | 1.105 | 3418.057 | 0.776 | 0.438 | −1.687–3.898 |
|
| |||||
| Temperature | 0.007 | 3417.297 | 0.040 | 0.968 | −0.326–0.340 |
| Humidity | −0.101 | 3431.016 | −0.828 | −0.408 | −0.341–0.139 |
|
| |||||
| Traffic | 7.1501 × 10 −7 | 19.059 | 0.108 | 0.915 | −1.31 × 10 −5–1.46 × 10 −5 |
|
| |||||
| Age × Temperature | 0.001 | 3422.119 | 0.437 | 0.662 | −0.003–0.005 |
| Age × Humidity | 0.001 | 3419.433 | 0.310 | 0.757 | −0.003–0.004 |
| Gender × Temperature | −0.003 | 3423.568 | −0.100 | 0.921 | −0.058–0.052 |
| Gender × Humidity | −0.028 | 3420.440 | −1.381 | 0.167 | −0.067–0.012 |
| Residence × Temperature | −0.039 | 3309.418 | −1.301 | 0.193 | −0.099–0.020 |
| Residence × Humidity | 0.045 | 3258.090 | 2.197 | 0.028 | 0.005–0.085 |
| Chronic disease × Temperature | −0.002 | 3421.325 | −0.057 | 0.955 | −0.060–0.056 |
| Chronic disease × Humidity | −0.015 | 3416.835 | −0.766 | 0.444 | −0.054–0.024 |
Figure 2The memory scores between urban and rural areas under different humidity levels.
The gap value, variance, ICC, and design effect value of models.
| Model | Gap (−2) | Variance | ICC | Design Effect | |
|---|---|---|---|---|---|
| Within-Province | Between-Province | ||||
| Empty model | 18,947.059 | 14.049 | 0.916 | 0.061 | 9.35 |
| Level 1 model | 18,806.274 | 13.452 | 0.835 | 0.058 | 8.94 |
| Level 1 and 2 model | 18,837.135 | 13.460 | 0.777 | 0.055 | 8.53 |
| Full model | 18,877.735 | 13.456 | 0.698 | 0.049 | 7.71 |
Descriptive statistics of logical sequence test scores of categorical variables.
| Categorical Variables |
| Mean ± SD |
|---|---|---|
| Gender | ||
| Male | 2187 | 4.86 ± 3.87 |
| Female | 1261 | 4.11 ± 3.70 |
| Residence | ||
| Urban | 1903 | 4.96 ± 3.97 |
| Rural | 1545 | 4.12 ± 3.59 |
| Chronic disease | ||
| Yes | 1081 | 4.73 ± 3.88 |
| No | 2367 | 4.52 ± 3.80 |
The main effects of individual level variables.
| Parameter | Estimate |
|
|
|
| |
|---|---|---|---|---|---|---|
|
| ||||||
| Intercept | 13.632 | 2218.282 | 16.831 | <0.001 | 12.044 | 15.221 |
| Age | −0.098 | 3431.986 | −9.269 | <0.001 | −0.119 | −0.078 |
| Gender | −1.037 | 3431.832 | −7.805 | <0.001 | −1.297 | −0.776 |
| Residence | −0.736 | 3404.812 | −5.391 | <0.001 | −1.003 | −0.468 |
| Chronic disease | 0.270 | 3431.226 | 1.981 | 0.048 | 0.003 | 0.538 |