Unraveling Depressive Symptomatology and Risk Factors in a Changing World
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design
2.1.1. Outcome Definitions and Measurements
2.1.2. Covariates of Interest
2.1.3. Statistical Analysis
2.1.4. Research Questions
- −
- What is the prevalence of depressive symptoms in the Portuguese adult population after the lockdown resulting from the COVID-19 pandemic?
- −
- What are the sociodemographic factors, lifestyles, and health characteristics associated with depressive symptoms in the Portuguese adult population after the lockdown resulting from the COVID-19 pandemic?
- −
- How are these associated with different levels of depressive symptoms?
3. Results
3.1. Symptoms of Depression According to Sociodemographic Factors, Lifestyle, and Health Characteristics
3.2. Factors Associated with Different Levels of Depression
4. Discussion
- (1)
- There was a high prevalence of depressive symptoms (12%) in the late phase of the pandemic.
- (2)
- There are population groups that are particularly vulnerable to depressive symptoms: the elderly (who remain more vulnerable to COVID-19 even after vaccination) and people living in isolation.
- (3)
- There is potentially an important role of physical exercise as a protective agent.
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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All (n = 3425) | Missing (n %) | Normal (n = 3001) (HADS-D 0–7) | Missing (n%) | Mild (n = 253) (HADS-D 8–10) | Missing (n%) | Moderate/Severe (n = 171) (HADS-D 11–21) | Missing (n%) | |
---|---|---|---|---|---|---|---|---|
Sociodemographic | ||||||||
Marital status | 3 (0.09) | 1 (0.03) | 2 (0.79) | - | ||||
Married | 2241 (65.49%) | 1969 (87.86%) | 160 (7.14%) | 112 (5.00%) | ||||
Other | 1181 (34.51%) | 1031 (87.30%) | 91 (7.71%) | 59 (5.00%) | ||||
Education level | 7 (0.20) | 5 (0.00) | 1 (0.40) | 1 (0.58) | ||||
0–4 years | 1168 (34.17%) | 926 (79.28%) | 141 (12.07%) | 101 (8.65%) | ||||
5–9 years | 698 (20.42%) | 614 (87.97%) | 47 (6.73%) | 37 (5.30%) | ||||
10–12 years | 746 (21.83%) | 682 (91.42%) | 38 (5.09%) | 26 (3.49%) | ||||
>12 years | 806 (23.58%) | 774 (96.03%) | 26 (3.23%) | 6 (0.74%) | ||||
Employment status | 37 (1.08) | 27 (0.90) | 4 (0.02) | 6 (3.51) | ||||
Employed full/part-time | 1744 (51.48%) | 1650 (94.61%) | 67 (3.84%) | 27 (1.55%) | ||||
Retired | 1158 (34.18%) | 966 (83.42%) | 111 (9.59%) | 81 (6.99%) | ||||
Other | 486 (14.34%) | 358 (73.66%) | 71 (14.61%) | 57 (11.73%) | ||||
Income perception | 57 (1.66) | 44 (1.47) | 5 (1.98) | 8 (4.68) | ||||
Living comfortably with the present income | 1130 (33.55%) | 1076 (95.22%) | 37 (3.27%) | 17 (1.50%) | ||||
Living with the present income | 1597 (47.42%) | 1421 (88.98%) | 113 (7.08%) | 63 (3.94%) | ||||
Finding it difficult to live with the present income | 463 (13.75%) | 354 (76.46%) | 59 (12.74%) | 50 (10.80%) | ||||
Finding it very difficult to live with the present income | 178 (5.29%) | 106 (59.55%) | 39 (21.91%) | 33 (18.54%) | ||||
Household size | 46 (1.34) | 34 (1.13) | 5 (1.98) | 7 (4.09) | ||||
One person | 585 (17.31%) | 469 (80.17%) | 66 (11.28%) | 50 (8.55%) | ||||
Two people | 1205 (35.66%) | 1046 (86.80%) | 93 (7.72%) | 66 (5.48%) | ||||
Three or more people | 1589 (47.03%) | 1452 (91.38%) | 89 (5.60%) | 48 (3.02%) | ||||
BMI (kg/m2) | 141 (4.12) | 106 (3.53) | 23 (9.09) | 12 (7.02) | ||||
Underweight/normal | 1237 (37.67%) | 1116 (90.22%) | 69 (5.58%) | 52 (4.20%) | ||||
Overweight | 1332 (40.56%) | 1180 (88.59%) | 89 (6.68%) | 63 (4.73%) | ||||
Obese | 715 (21.77%) | 599 (83.78%) | 72 (10.07%) | 44 (6.15%) | ||||
Alcohol intake | 35 (1.02) | 25 (0.83) | 3 (1.19) | 7 (4.37) | ||||
Daily | 833 (24.57%) | 779 (93.52%) | 34 (4.08%) | 20 (2.40%) | ||||
Occasional | 1182 (34.87%) | 1091 (92.30%) | 58 (4.91%) | 33 (2.79%) | ||||
Never | 1375 (40.56%) | 1106 (80.44%) | 158 (11.49%) | 111 (8.07%) | ||||
Smoking habits | 32 (0.93) | 23 (0.77) | 3 (1.19) | 6 (3.51) | ||||
Past smoker | 758 (22.34%) | 698 (92.08%) | 36 (4.75%) | 24 (3.17%) | ||||
Current/occasional smoker | 516 (15.21%) | 464 (89.13%) | 31 (6.01%) | 21 (4.07%) | ||||
Never | 2119 (62.45%) | 1816 (85.70%) | 183 (8.64%) | 120 (5.66%) | ||||
Regular physical Exercise | 38 (1.11) | 29 (0.97) | 4 (1.58) | 5 (2.92) | ||||
Never | 1744 (51.49%) | 1451 (83.20%) | 177 (10.15%) | 116 (6.65%) | ||||
Yes | 830 (24.51%) | 773 (93.13%) | 32 (3.86%) | 25 (3.01%) | ||||
Occasionally | 813 (24.00%) | 748 (92.00%) | 40 (4.92%) | 25 (3.08%) | ||||
Health | ||||||||
Multimorbidity (self-reported) | - | - | - | |||||
No | 1719 (50.19%) | 1615 (93.95%) | 62 (3.61%) | 42 (2.44%) | ||||
Yes | 1706 (49.81%) | 1386 (81.24%) | 191 (11.20%) | 129 (7.56%) | ||||
COVID-19 | ||||||||
COVID-19 infection | 15 (0.44) | 15 (0.50) | - | - | ||||
No | 3145 (92.23%) | 2749 (87.41%) | 238 (7.57%) | 158 (5.02%) | ||||
Yes | 265 (7.77%) | 237 (89.43%) | 15 (5.66%) | 11 (4.91%) |
Normal vs. Mild | |||
---|---|---|---|
Relative Risk Ratio | [95% CI] | ||
Gender | |||
Male | Ref | - | |
Female | 1.85 | [1.26–2.71] | |
Age group | |||
25–34 | Ref | - | |
35–44 | 3.02 | [1.13–8.06] | |
45–54 | 1.49 | [0.55–4.03] | |
55–64 | 1.76 | [0.64–4.81] | |
65–74 | 1.16 | [0.39–3.47] | |
≥75 years | 1.62 | [0.53–4.91] | |
NUTSII | |||
LVT | Ref | - | |
Norte | 1.68 | [1.06–2.67] | |
Centro | 1.84 | [1.14–2.97] | |
Alentejo | 1.30 | [0.64–2.65] | |
Algarve | 2.38 | [1.06–5.33] | |
Azores | 1.78 | [1.00–3.15] | |
Madeira | 1.45 | [0.77–2.73] | |
Education level | |||
0–4 years | Ref | - | |
5–9 years | 0.77 | [0.51–1.17] | |
10–12 years | 0.96 | [0.60–1.53] | |
>12 years | 0.72 | [0.41–1.24] | |
Employment status | |||
Employed full/part-time | Ref | - | |
Retired | 1.87 | [1.10–3.16] | |
Other | 2.33 | [1.52–3.58] | |
Income perception | |||
Living comfortably with the present income | Ref | - | |
Living with the present income | 1.58 | [1.03–2.43] | |
Finding it difficult to live with the present income | 2.48 | [1.51–4.08] | |
Finding it very difficult to live with the present income | 4.64 | [2.58–8.37] | |
BMI (kg/m2) | |||
Underweight/normal | Ref | - | |
Overweight | 1.03 | [0.73–1.47] | |
Obese | 1.16 | [0.80–1.70] | |
Alcohol intake | |||
Never | Ref | - | |
Daily | 0.55 | [0.35–0.85] | |
Occasional | 0.66 | [0.47–0.95] | |
Regular Exercise | |||
Never | Ref | - | |
Yes | 0.41 | [0.27–0.62] | |
Occasionally | 0.67 | [0.45–0.98] | |
Multimorbidity (self-reported) | |||
No | Ref | - | |
Yes | 2.27 | [1.54–3.35] | |
Normal vs. Moderate/Severe | |||
Relative Risk ratio | [95% CI] | ||
Gender | |||
Male | Ref | - | |
Female | 2.16 | [1.33–3.50] | |
Age group | |||
25–34 years | Ref | - | |
35–44 years | 0.86 | [0.27–2.79] | |
45–54 years | 0.75 | [0.25–2.21] | |
55–64 years | 1.63 | [0.56–4.70] | |
65–74 years | 0.58 | [0.18–1.89] | |
≥75 years | 0.66 | [0.20–2.20] | |
NUTSII | |||
LVT | Ref | - | |
Norte | 1.13 | [0.69–1.85] | |
Centro | 0.82 | [0.47–1.43] | |
Alentejo | 0.66 | [0.29–1.52] | |
Algarve | 0.18 | [0.02–1.43] | |
Azores | 0.84 | [0.42–1.67] | |
Madeira | 0.79 | [0.38–1.67] | |
Education level | |||
0–4 years | Ref | - | |
5–9 years | 0.79 | [0.50–1.26] | |
10–12 years | 0.81 | [0.46–1.44] | |
>12 years | 0.19 | [0.07–0.51] | |
Employment status | |||
Employed full/part-time | Ref | - | |
Retired | 3.54 | [1.90–6.58] | |
Other | 3.84 | [2.25–6.55] | |
Income perception | |||
Living comfortably with the present income | Ref | - | |
Living with the present income | 1.38 | [0.77–2.47] | |
Finding it difficult to live with the present income | 3.12 | [1.68–5.79] | |
Finding it very difficult to live with the present income | 6.84 | [3.41–13.72] | |
BMI (kg/m2) | |||
Underweight/normal | Ref | - | |
Overweight | 0.84 | [0.55–1.27] | |
Obese | 0.78 | [0.49–1.24] | |
Alcohol intake | |||
Never | Ref | - | |
Daily | 0.43 | [0.25–0.75] | |
Occasional | 0.56 | [0.38–0.87] | |
Regular Exercise | |||
Never | Ref | - | |
Yes | 0.44 | [0.27–0.71] | |
Occasionally | 0.56 | [0.34–0.93] | |
Multimorbidity (self-reported) | |||
No | Ref | - | |
Yes | 1.51 | [0.95–2.39] |
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Share and Cite
Sousa, R.D.; Henriques, A.R.; Caldas de Almeida, J.; Canhão, H.; Rodrigues, A.M. Unraveling Depressive Symptomatology and Risk Factors in a Changing World. Int. J. Environ. Res. Public Health 2023, 20, 6575. https://doi.org/10.3390/ijerph20166575
Sousa RD, Henriques AR, Caldas de Almeida J, Canhão H, Rodrigues AM. Unraveling Depressive Symptomatology and Risk Factors in a Changing World. International Journal of Environmental Research and Public Health. 2023; 20(16):6575. https://doi.org/10.3390/ijerph20166575
Chicago/Turabian StyleSousa, Rute Dinis, Ana Rita Henriques, José Caldas de Almeida, Helena Canhão, and Ana Maria Rodrigues. 2023. "Unraveling Depressive Symptomatology and Risk Factors in a Changing World" International Journal of Environmental Research and Public Health 20, no. 16: 6575. https://doi.org/10.3390/ijerph20166575
APA StyleSousa, R. D., Henriques, A. R., Caldas de Almeida, J., Canhão, H., & Rodrigues, A. M. (2023). Unraveling Depressive Symptomatology and Risk Factors in a Changing World. International Journal of Environmental Research and Public Health, 20(16), 6575. https://doi.org/10.3390/ijerph20166575