The Mental Health Impact of the COVID-19 Pandemic on Older Adults in China: A Systematic Review
Abstract
:1. Introduction
2. Method
2.1. Search Strategy and Selection Criteria
2.2. Condition and Individuals Being Studied
2.3. Data Extraction
2.4. Risk of Bias (Quality) Assessment
2.5. Strategy for Data Synthesis
3. Results
3.1. Search Results
3.2. Study Characteristic
3.3. Quality Appraisal
3.4. Symptoms of Anxiety and Associated Factors
3.5. Symptoms of Depression and Associated Risk Factors
3.6. Symptoms of Hypochondria, Suicidal Ideation, Insomnia and Other Adverse Mental Health Outcomes
3.7. Protective Factors against Symptoms of Mental Disorders
4. Discussion
4.1. Populations with Higher Susceptibility and Psychological Stressors
4.2. Efforts to Cope with Symptoms of Mental Disorders
4.3. Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Lead Author/Year | Study Design | Sample Size (n=) | Sample Characteristics | Sampling Strategy | Data Collection Method | Assessment Tool of Outcomes | Main Outcomes Related to Mental Health |
---|---|---|---|---|---|---|---|
[24] | Cross-sectional study | 1278 | Female (n = 707, 55.3%); Age < 70 (n = 725, 56.7%); Primary school or below (n = 588, 46%); Rural area dwellers (n = 690, 54.0%); Average household income between 600–6000 yuan per month (n = 852, 66.7%); Having two or more chronic disease (n = 514, 40.2%); Overweight (n = 426, 33.3%). | Convenience sampling | Self-reported online survey | PQEFPH |
|
[20] | Cross-sectional study | 49 | Age ≥ 60 (n = 49, 9.0%) (no other characteristic provided) | Convenience sampling | Self-reported online survey | GSAS | The General Social Alienation Scale Score of 49 participants (aged ≥ 60) is 31.3 ± 5.4, which is higher than the younger group (aged 50–59). |
[25] | Cross-sectional study | 114 | Wave 1: Female (n = 874, 76.1%); Age ≥ 60 (n = 72, 6.3%); High school or below (n = 162, 14.1%), College education or above (n = 986, 85.9%). Wave 2: Female (n = 357, 76.0%); Age ≥ 60 (n = 42, 8.9%); High school or below (n = 86, 18.3%), College education or above (n = 384, 81.7%). | Convenience sampling | Self-reported online survey | The Worries, Strategies, and Confidence Questionnaire (WSQ) | Compared to younger adults, older adults were less worried about the pandemic at the early stage of the outbreak (p < 0.05), and less attention was paid to precautionary measures (p = 0.004). However, as the disease evolved, older Chinese adults surveyed in the second wave were more worried than young adults and more attention was paid to precautionary measures (p = 0.027). |
[26] | Cross-sectional study | 516 | Female (n = 299, 57.9%); Age between 60–69 (n = 354, 68.6%); Married (n = 432, 83.7%); Primary school or below (n = 45, 8.7%); Living with spouse/partners/children (n = 468, 90.7%); An average level of household income (n = 299, 57.9%); Overweight or obese (n = 269, 52.1%). | Snowball sampling | Self-reported online survey | CESD-10 |
|
[27] | Cross-sectional study | 472 | Female (n = 266, 56.4%); Age between 60–70 (n = 329, 69.7%); Age ≥ 71 (n = 142, 30.1%); Married (n = 392, 83.1%); High school or above (n = 273, 57.8%); Living alone (n = 60, 12.7%); Average household income > 5000 yuan per month (n = 391, 83.0%). | Quota Sampling | Face to face interview | Life Satisfaction Scale for Chinese Older adults | Cognitive social capital had a mediation impact on the association between structural, social capital, and mental health indicators (life satisfaction: b = 0.122, SD = 0.029, p < 0.001; depressive symptoms: b = −0.343, SD = 0.119, p < 0.01). |
[26] | Cross-sectional study | 1159 | Female (n = 747, 64.5%), Male (n = 412, 35.5%); Age between 50–59 (n = 867, 74.8%), Age ≥ 60 (n = 292, 25.2%); Married (n = 1030, 88.9%); Middle school and below (n = 256, 22.1%), Associate’s degree and above (n = 903, 77.9%); Wuhan residents (n = 492, 42.5%), Other places (n = 667, 57.5%). | Convenience sampling | Self-reported online survey | A standardized questionnaire adapted from the National Comorbidity Survey | The results showed that 4.1% of participants experienced suicidal ideation during the pandemic. Among those who experienced suicidal ideation, 31.9% believed there is a need for mental health services, yet only 10.6% had reached out for help. |
[28] | Cohort study | 511 | Male (n = 176, 34.4%); Age between 60–64 (n = 87, 17.0%), Age between 65–69 (n = 128, 25.0%), Age between 70–75 (n = 141, 27.6%, Age ≥ 76 (n = 155, 30.3%). | Convenience sampling |
| PHQ-9 |
|
[29] | Cross-sectional study | 286 | Age between 60–74 (n = 170, 30.97%), Age ≥ 75 (n = 116, 21.13%). | Convenience sampling | Self-reported online survey | GHQ-20 | Older adults (aged ≥ 60) showed a significantly greater mean patient health questionnaire anxiety scale (PHQ-20) score (M = 2.65), when compared with participants aged 45–59 years (M = 2.49). |
[30] | Cross-sectional study | 341 | Female (n = 195, 57.2%), Male (n = 146, 42.8%); Age between 60–70 (n = 168, 49.3%), Age between 71–80 (n = 136, 39.9%), Age between 81–90 (n = 30, 8.8%), Age ≥ 91 (n = 7, 2.1%). | Convenience sampling | Self-reported online survey | Self-designed scale, which aimed to investigate older adults’ panic and anxiety about the pandemic, their attitude towards objective measures for epidemic prevention, and their subjective measures for responding to the pandemic. | 55.72% of the elderly had obvious fear and worry about COVID-19. |
[31] | Cross-sectional study | 173 | Age ≥ 60 (M = 71.18 ± 6.79) | Random sampling | Self-reported online survey | SAS |
|
[32] | Cross-sectional study | 887 | Female (n = 582, 65.6%); Age between 60–89 (M = 67.53); High school and below (n = 658, 74.18%), College and above (n = 229, 25.82%). | Convenience sampling | Telephone survey | Self-designed scale, consisting of seven questions and aiming to test the anxiety symptoms of older adults. | A total of 89.97% (798/887) of the older adults had no obvious anxiety and their mental health has not been significantly affected. |
[33] | Cross-sectional study | 867 | Female (n = 378, 43.6%), Male (n = 489, 56.4%); Middle school and below (n = 413, 47.6%), High school and above (n = 454, 52.4%); Married (n = 746, 86.0%), Others (n = 121, 14.0%); Living alone (n = 65, 7.5%), Living with partner only (n = 480, 55.4%) Living with family members (include children) (n = 322, 37.1%). | Convenience sampling | Self-reported online /tele survey | GDS-30 |
|
[34] | Cross-sectional study | 312 | Female (n = 192, 61.5%), Male (n = 120, 38.5%); Age between 65–71 (n = 152, 48.7%), Age ≥ 72 (n = 160, 51.3%); Married (n = 162, 51.9%), Divorced (n = 37, 11.9%), Separated living (n = 3, 1.0%), Widowed (n = 110, 35.3%). | Random sampling | Self-reported survey | PHQ-9 and GAD-7 |
|
[21] | Cross-sectional study | 6467 * | Female (n = 3599, 55.7%), Male (n = 2868, 44.3%); Age between 65–69 (n = 2902, 44.9%), Age between 70–74 (n = 1867, 28.9%), Age between 75–79 (n = 935, 14.5%), Age ≥ 80 (n = 763, 11.8%); Rural area dwellers (n = 1350, 20.9%), City dwellers (n = 5117, 79.1%). | Convenient Sampling | Self-reported survey | GAD-2 |
|
[35] | Cross-sectional study | 235 | Female (n = 157, 66.8%), Male (n = 78, 33.2%); Rural area dwellers (n = 69, 29.4%), City dwellers (n = 166, 70.6%); Low income (n = 101, 43.0%), Medium income (n = 123, 52.3%), High income (n = 11, 4.7%). | Convenient Sampling | Self-reported online survey | SDS |
|
[36] | Cross-sectional study | 320 | Female (n = 166, 51.9%), Male (n = 154, 48.1%); Age between 60–90 (n = 297, 92.8%), Age between 90–100 (n = 21, 6.6%), Age ≥ 100 (n = 2, 0.6%); Primary school and below (n = 212, 66.3%), Middle school (n = 69, 21.6%), High school and technical secondary school (n = 26, 8.1%), College and above (n = 13, 4.06%); Rural area dwellers (n = 218, 68.1%), City dwellers (n = 102, 31.9%). | Convenient Sampling | Self-reported survey | SAS and CD- RISC |
|
[37] | Cross-sectional study | 6467* | Female (n = 3599, 55.7%), Male (n = 2868, 44.3%); Age between 65–69 (n = 2902, 44.9%), Age between 70–74 (n = 1867, 28.9%), Age between 75–79 (n = 935, 14.5%), Age ≥ 80 (n = 763, 11.8%); Illiteracy (n = 870, 13.5%), Primary school (n = 2658, 41.1%), Middle school and above (n = 2939, 45.4%); Married (n = 4944, 76.4%), Others (n = 1523, 23.6%); Rural area dwellers (n = 1350, 20.9%), City dwellers (n = 5117, 79.1%). | Convenient Sampling | Self-reported survey | GAD-2 |
|
[22] | Cross-sectional study | 208 | Male (n = 73, 35.1%), Female (n = 135, 64.9%); Age between 60–69 (n = 67, 32.2%), Age between 70–79 (n = 82, 39.4%), Age ≥ 80 (n = 59, 28.4%); Living alone (n = 72, 34.6%), Living with people (n = 136, 65.4%) High educational level (n = 21, 10.1%), Medium educational level (n = 84, 40.4%), Low education level (n = 103, 49.5%); Monthly income < 2000 yuan (n = 61, 29.3%), Monthly income between 2000–5000 yuan (n = 132, 63.5%), Monthly income > 5000 yuan (n = 15, 7.2%). | Convenient Sampling | Self-reported survey | SAS and SDS |
|
[23] | Cross-sectional study | 94 | Total: Female (n = 36, 38.3%), Male (n = 58, 61.7%); COVID-19 Patient Group: Female (n = 21, 44.7%), Male (n = 26, 55.3%); Age between 62–84 (n = 47, M = 73.43); Healthy Group: Female (n = 15, 31.9%), Male (n = 32, 68.1%); Age between 62–80 (n = 47, M = 71.19). | Convenient Sampling | Self-reported survey | SAS, PHQ-9, and ISI |
|
[38] | Mixed-method study | 289 | Age between 60–86 (n = 289, median = 69.5); Living in the city (n = 177, 61.2%), Living in the village (n = 112, 38.8%); Living with children (n = 144, 49.8%), Living with partner (n = 105, 36.4%), Living alone (n = 40, 13.8%); Healthy (n = 202, 69.9%), Sick (n = 87, 30.1%). | Purposive sample (quantitative) and convenient sampling (qualitative) | Self-reported telephone survey and Face to face interview |
|
Victory belief: (a) have confidence in the country. The country’s strong pandemic prevention system will bring them to win the fight against the virus. (b) have confidence in medical staff. |
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Liu, J.; Kwan, C.; Deng, J.; Hu, Y. The Mental Health Impact of the COVID-19 Pandemic on Older Adults in China: A Systematic Review. Int. J. Environ. Res. Public Health 2022, 19, 14362. https://doi.org/10.3390/ijerph192114362
Liu J, Kwan C, Deng J, Hu Y. The Mental Health Impact of the COVID-19 Pandemic on Older Adults in China: A Systematic Review. International Journal of Environmental Research and Public Health. 2022; 19(21):14362. https://doi.org/10.3390/ijerph192114362
Chicago/Turabian StyleLiu, Jingyuan, Crystal Kwan, Jie Deng, and Yuxi Hu. 2022. "The Mental Health Impact of the COVID-19 Pandemic on Older Adults in China: A Systematic Review" International Journal of Environmental Research and Public Health 19, no. 21: 14362. https://doi.org/10.3390/ijerph192114362
APA StyleLiu, J., Kwan, C., Deng, J., & Hu, Y. (2022). The Mental Health Impact of the COVID-19 Pandemic on Older Adults in China: A Systematic Review. International Journal of Environmental Research and Public Health, 19(21), 14362. https://doi.org/10.3390/ijerph192114362