Risk Perception among Psychiatric Patients during the COVID-19 Pandemic
Abstract
:1. Introduction
- investigate the perception of the likelihood of COVID-19 pandemic resolution in psychiatric patients seeking ambulatory care;
- determine differences in health risk concerns and health risk likelihood in patients with different pre-existing mental disorders;
- investigate the mortality risk perception, the economic risk perception, the interpersonal, and psychological risk perception;
- investigate the perceived knowledge regarding the pandemic and the perceived control concerning the risk for infection
- investigate their perception regarding the political decisions adopted to address the health crisis;
- investigate the patient ‘affective states during the COVID-19 pandemic.
2. Materials and Methods
2.1. Study Design
- Socio-Demographics Characteristics: we collected the participant’s age, gender, marital status, education, employment, compliance with government regulations about quarantine, the presence of children at home, and the number of housemates during quarantine.
- Risk Perceptions:
- ⚬
- Likelihood of COVID-19 Resolution: participants had to indicate the probability of the complete resolution of the pandemic and the likelihood of returning to previous life habits. It consists of two 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Health Risk Perception Concern: patients had to indicate how concerned they felt for their own health, for the health of their loved ones. They also had to express their concern to return to their old habits given the risk of infection. It consists of three 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Health Risk Perception Likelihood: we asked participants to provide an estimate of the likelihood of contagion, death, and recovery for themselves and others. It consists of 6 items and the participant answered by a 11-point scale (0 = not at all; 10 = very much);
- ⚬
- Work Risk Perception: we asked participants to rate the impact of pandemic on unemployment, job management, job prospects, job self-efficacy, and employment relationships in the future. It is composed by five 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Institutional-Economy Risk Perception: the participants had to indicate a possible future role of the pandemic on continuity of government, EU relations, and political landscape or financial crisis. It is composed by four 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Interpersonal Risk Perception: we asked participants to estimate the effect of the pandemic on friendships, family relationships, love relationships, and social cohesion. It is composed by four 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Psychological Risk Perception: participants had to express how the pandemic will affect people’s freedom, self-actualization, well-being, isolation, and thinking modalities. It is composed by five 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Mortality Risk Perception: we asked participants about the likelihood of dying from the following cause: COVID-19, heart attack, stroke, cancer, dementia, and infection. It is composed by six 11-point Likert items (0 = not at all; 10 = very much).
- ⚬
- Perceived Knowledge: we asked participants how well informed they felt regarding COVID-19. It is composed by one item and the participant answered by a 11-point Likert scale (0 = not at all; 10 = very much);
- ⚬
- COVID-19 Cause: participants had to choose from a list of probable causes of COVID-19, the one that was most likely for them;
- ⚬
- News Seeking: participants were asked how many times a day they searched for COVID-19 information (1 = never; 2 = 1 to 5 times; 3 = 5 to 10 times; 4 = more than 10 times);
- ⚬
- News Source: participants indicated their news source of choice used to keep up to date (social networks, chat, institutional channels, newspapers, informal channels, websites, radio, etc.). Participant could choose multiple answers;
- ⚬
- Perceived Control: participants had to express how much they could control the risk of infection. It is composed by one item and the participant answered by a 11-point Likert scale (0 = not at all; 10 = very much);
- ⚬
- Perceived Efficacy of Containment Measures: we asked the participants to estimate the efficacy of government measures, the efficacy of compliance with government containment measures, perceived safety by respecting government containment measures, and efficacy of the contribution of each individual citizen during lockdown. It is composed of four items and the participant answered by a 11-point Likert scale (0 = not at all; 10 = very much);
- ⚬
- Affective States: we asked the participants to rate each emotion they felt during the lockdown using an 11-point Likert scale (0 = not at all; 10 = very much) anger, wrath, fear, anguish, sadness, depression, loneliness, nostalgia (collected in a category “Negative Affective States index”); nervousness, anxiety, restlessness, vulnerability, (collected in a category “Anxiety States index”); impotence, frustration, inadequacy, uncertainty, confusion, disorientation (collected in a category “Uncertain States Index”); hope, and trust (collected in a category “Positive Affective States Index”).
2.2. Statistical Analysis
3. Results
3.1. Socio-Demographic Data
3.2. Perception Risk, Risk-Related Variables, and Mortality Risk
3.3. Emotional States
3.4. Correlations among Risk Perception and Risk-Related Variables
3.5. The Role of Risk-Related Variables and Risk Perceptions
4. Discussion
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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Total | Major Depression | Bipolar I | Schizophrenia | p Value | |||||
---|---|---|---|---|---|---|---|---|---|
AGE | 44 (IQR: 34–53) | 43 (IQR: 33–56) | 50 (IQR: 36–59) | 42 (IQR: 34–49) | 0.086 | ||||
Gender | |||||||||
M | 84 | 56.00% | 27 | 54.00% | 22 | 44.00% | 35 | 70.00% | 0.030 |
F | 66 | 44.00% | 23 | 46.00% | 28 | 56.00% | 15 | 30.00% | |
Marital Status | |||||||||
Single | 75 | 50.00% | 18 | 36.00% | 22 | 44.00% | 35 | 70.00% | 0.004 |
Married | 39 | 26.00% | 21 | 42.00% | 11 | 22.00% | 7 | 14.00% | |
Separated/Divorced | 32 | 21.33% | 9 | 18.00% | 15 | 30.00% | 8 | 16.00% | |
Widowed | 4 | 2.67% | 2 | 4.00% | 2 | 4.00% | 0 | 0.00% | |
Education | |||||||||
Elementary | 15 | 10.00% | 7 | 14.00% | 3 | 6.00% | 5 | 10.00% | 0.653 |
Secondary school | 47 | 31.33% | 16 | 32.00% | 15 | 30.00% | 16 | 32.00% | |
High school | 70 | 46.67% | 22 | 44.00% | 23 | 46.00% | 25 | 50.00% | |
University and Post-degree | 18 | 12.00% | 5 | 10.00% | 9 | 18.00% | 4 | 8.00% | |
Employement | |||||||||
No | 90 | 60.00% | 25 | 50.00% | 31 | 62.00% | 34 | 68.00% | 0.174 |
Yes | 60 | 40.00% | 25 | 50.00% | 19 | 38.00% | 16 | 32.00% | |
Quarantine | |||||||||
No | 9 | 6.00% | 0 | 0.00% | 5 | 10.00% | 4 | 8.00% | 0.006 |
Yes, I stay home | 33 | 22.00% | 18 | 36.00% | 7 | 14.00% | 8 | 16.00% | |
Yes, but I go to work | 104 | 69.33% | 28 | 56.00% | 38 | 76.00% | 38 | 76.00% | |
Yes, because I’ve been in contact with a COVID 19 positive | 1 | 0.67% | 1 | 2.00% | 0 | 0.00% | 0 | 0.00% | |
Yes, because I tested positive for COVID-19 | 3 | 2.00% | 3 | 6.00% | 0 | 0.00% | 0 | 0.00% | |
Children at Home | |||||||||
No | 108 | 72.00% | 31 | 62.00% | 39 | 78.00% | 38 | 76.00% | 0.152 |
Yes | 42 | 28.00% | 19 | 38.00% | 11 | 22.00% | 12 | 24.00% | |
Number of Housemates during Quarantine | |||||||||
Living alone | 11 | 7.33% | 3 | 6.00% | 7 | 14.00% | 1 | 2.00% | 0.424 |
One person | 44 | 29.33% | 14 | 28.00% | 15 | 30.00% | 15 | 30.00% | |
Between two and four persons | 85 | 56.67% | 29 | 58.00% | 25 | 50.00% | 31 | 62.00% | |
More than four persons | 10 | 6.67% | 4 | 8.00% | 3 | 6.00% | 3 | 6.00% | |
CONCERNED ABOUT DISTANT FAMILY MEMBERS | 71 | 47.33% | 31 | 62.00% | 23 | 46.00% | 17 | 34.00% | 0.019 |
Total | Major Depression | Bipolar I | Schizophrenia | p Value | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Perception risk and risk-related variables | Likelihood of COVID-19 Resolution | 6.5 (IQR: 5–7.5) | 6.00 (IQR: 5–7) | 6.5 (IQR: 5.5–8) | 7 (IQR: 5.5–8) | 0.011 | |||||
Health Concern | 5.66 (IQR: 4–7) | 5.33 (IQR: 4.33–7) | 5.67 (IQR: 3.67–7) | 6 (IQR: 3.33–7.33) | 0.946 | ||||||
Health Likelihood (contagion, death, healing reversed) | 5.67 (IQR: 5–6.5) | 5.83 (IQR: 5–6.5) | 5.5 (IQR: 5–6.5) | 5.67 (IQR: 4.67–6.83) | 0.91 | ||||||
Work Risk | 8 (IQR: 7.2–9) | 8 (IQR: 7.4–8.8) | 8 (IQR: 7.2–9) | 8 (IQR: 6.8–9.6) | 0.946 | ||||||
Institutional-Economic Risk | 8.75 (IQR: 7.5–9.5) | 9 (IQR: 7.75–9.25) | 8.25 (IQR: 7.5–9.75) | 8.5 (IQR: 7–10) | 0.773 | ||||||
Interpesonal Risk | 7 (IQR: 5.25–8.25) | 6.25 (IQR: 5.5–8) | 7 (IQR: 5–8.25) | 7.25 (IQR: 5.25–9) | 0.558 | ||||||
Psychological Risk | 7.6 (IQR: 6.20–9) | 8 (IQR: 6.80–9.40) | 7.6 (IQR: 6–9) | 7.2 (IQR: 6–8) | 0.212 | ||||||
Perceived Knowledge | 7 (IQR: 6–8) | 8 (IQR: 7–8) | 7 (IQR: 6–8) | 7 (IQR: 6–8) | 0.066 | ||||||
COVID-19 Cause | Bat | 13 | −8.70% | 1 | −2% | 4 | −8% | 8 | −16% | ||
Virus created in laboratory | 36 | −24% | 13 | −26% | 10 | −20% | 13 | −26% | |||
Chemical/Economic/Social War | 27 | −18% | 8 | −16% | 9 | −18% | 10 | −20% | |||
Evolution of an existing virus/Species jump | 24 | −16% | 11 | −22% | 8 | −16% | 5 | −10% | |||
I don’t know | 20 | −13.30% | 8 | −16% | 7 | −14% | 5 | −10% | 0.536 | ||
Experiment disclosed by mistake | 19 | −12.70% | 7 | −14% | 7 | −14% | 5 | −10% | |||
Chinese eating dogs | 3 | −2% | 1 | −2% | 2 | −4% | 0 | 0% | |||
Divine providence | 4 | −2.70% | 0 | 0% | 2 | −4% | 2 | −4% | |||
Negligence | 2 | −1.30% | 0 | 0% | 1 | −2% | 1 | −2% | |||
Climate change | 1 | −0.70% | 1 | −2% | 0 | 0% | 0 | 0% | |||
Reduction of world population | 1 | −0.70% | 0 | 0% | 0 | 0% | 1 | −2% | |||
News Seeking/Day | 0 | 21 | −14.10% | 7 | −14% | 9 | −18% | 5 | −10% | ||
From 1 to 5 | 109 | −72.70% | 38 | −76% | 37 | −74% | 34 | −68% | 0.31 | ||
From 5 to 10 | 16 | −10.70% | 4 | −8% | 3 | −6% | 9 | −18% | |||
>10 | 4 | −2.70% | 1 | −2% | 1 | −2% | 2 | −4% | |||
Perceived Efficacy | 7 (IQR: 5.75–7.75) | 7.25 (IQR: 5.5–7.75) | 6.75 (IQR: 6–7.75) | 7 (IQR: 5.75–7.75) | 0.912 | ||||||
Perceived Control | 7 (IQR: 5–8) | 6 (IQR: 5–8) | 7 (IQR: 5–8) | 7 (IQR: 5–8) | 0.183 | ||||||
Mortality Risk | COVID-19 | 6 (IQR: 5–8) | 7 (IQR: 5–7) | 6 (IQR: 4–8) | 7 (IQR: 5–9) | 0.28 | |||||
Heart Attack | 8 (IQR: 6–9) | 8 (IQR: 7–8) | 7 (IQR: 6–8) | 7 (IQR: 5–9) | 0.388 | ||||||
Stroke | 7 (IQR: 6–8) | 8 (IQR: 7–8) | 7 (IQR: 6–8) | 7 (IQR: 5–8) | 0.202 | ||||||
Cancer | 8 (IQR: 6–9) | 8 (IQR: 7–9) | 7 (IQR: 6–9) | 8 (IQR: 6–10) | 0.266 | ||||||
Dementia | 6 (IQR: 5–7) | 6 (IQR: 5–7) | 6 (IQR: 4–7) | 6 (IQR: 5–8) | 0.071 | ||||||
Infection | 6 (IQR: 5–7) | 6 (IQR: 5–7) | 6 (IQR: 5–7) | 6 (IQR: 5–8) | 0.657 |
Total | Major Depression | Bipolar I | Schizophrenia | p Value | |
---|---|---|---|---|---|
Anger | 6 (IQR: 3–8) | 7 (IQR: 3–9) | 7 (IQR: 3–9) | 5 (IQR: 2–7) | 0.025 |
Wrath | 4 (IQR: 1–7) | 6 (IQR: 2–8) | 4 (IQR: 2–8) | 3 (IQR: 1–6) | 0.452 |
Fear | 7 (IQR: 5–8) | 8 (IQR: 5–10) | 7 (IQR: 5–8) | 7 (IQR: 4–8) | 0.205 |
Trust | 7 (IQR: 6–9) | 7 (IQR: 6–9) | 8 (IQR: 6–9) | 7 (IQR: 6–10) | 0.828 |
Hope | 8 (IQR: 6–9) | 8 (IQR: 7–9) | 8 (IQR: 6–9) | 7 (IQR: 6–10) | 0.629 |
Vulnerability | 6 (IQR: 4–8) | 6 (IQR: 4–8) | 7 (IQR: 5–8) | 6 (IQR: 2–7) | 0.142 |
Injustice | 6 (IQR: 3–8) | 6 (IQR: 2–8) | 6 (IQR: 3–9) | 5 (IQR: 4–8) | 0.616 |
Frustration | 5 (IQR: 3–8) | 6 (IQR: 4–8) | 6 (IQR: 2–8) | 5 (IQR: 1–7) | 0.029 |
Disorientation | 5 (IQR: 3–8) | 6 (IQR: 4–8) | 7 (IQR: 2–8) | 5 (IQR: 2–7) | 0.154 |
Confusion | 6 (IQR: 4–8) | 7 (IQR: 5–8) | 7 (IQR: 5–8) | 5 (IQR: 4–7) | 0.013 |
Uncertainty | 7 (IQR: 5–8) | 7 (IQR: 6–9) | 7 (IQR: 4–9) | 6 (IQR: 5–8) | 0.126 |
Inadequacy | 6 (IQR: 3–8) | 6 (IQR: 2–7) | 6 (IQR: 2–8) | 5 (IQR: 3–7) | 0.303 |
Impotence | 7 (IQR: 4–9) | 8 (IQR: 6–10) | 7 (IQR: 2–7) | 6 (IQR: 4–8) | 0.036 |
Nostalgia | 7 (IQR: 5–9) | 8 (IQR: 5–10) | 7 (IQR: 3–9) | 7 (IQR: 5–8) | 0.191 |
Disquiet | 6 (IQR: 4–8) | 6 (IQR: 5–8) | 6 (IQR: 4–8) | 6 (IQR: 4–7) | 0.736 |
Solitude | 7 (IQR: 4–9) | 8 (IQR: 5–10) | 7 (IQR: 4–9) | 7 (IQR: 5–8) | 0.348 |
Anxiety | 7 (IQR: 4–8) | 7 (IQR: 5–10) | 7 (IQR: 4–8) | 6 (IQR: 3–8) | 0.028 |
Nervousness | 7 (IQR: 4–8) | 7 (IQR: 5–9) | 7 (IQR: 5–8) | 6 (IQR: 4–7) | 0.012 |
Depression | 7 (IQR: 4–9) | 8 (IQR: 4–10) | 8 (IQR: 3–10) | 5 (IQR: 3–7) | 0.009 |
Sadness | 7 (IQR: 5–8) | 8 (IQR: 6–8) | 7 (IQR: 4–9) | 7 (IQR: 5–8) | 0.109 |
Anguish | 7 (IQR: 4–8) | 7 (IQR: 6–9) | 7 (IQR: 4–8) | 5 (IQR: 4–7) | 0.013 |
Negative Affective States index | 5.94 (IQR: 4.5–7.63) | 6.63 (IQR: 4.75–7.5) | 6.13 (IQR: 4.10–8) | 5.69 (IQR: 4.5–6.78) | 0.043 |
Positive Affective States index | 7.5 (IQR: 4.5–7.63) | 7.5 (IQR: 6–9) | 8 (IQR: 6–9) | 7 (IQR: 6–9.25) | 0.058 |
Uncertain States index | 5.8 (IQR: 4.5–7.63) | 6.17 (IQR: 4.5–7.88) | 6.17 (IQR: 4.88–8.04) | 5.3 (IQR: 3.78–6.41) | 0.054 |
Anxiety States index | 6.25 (IQR: 4.75–7.5) | 6.5 (IQR: 5–7.56) | 6.25 (IQR: 4.18–7.75) | 5.5 (IQR: 4.38–7) | 0.909 |
Likelihood of COVID-19 Resolution Index | Health Concern Index | Health Likelihood | Work Risk Index | Institutional-Economy Risk Index | Interpersonal Risk Index | Psychological Risk Index | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
β | t | β | t | β | t | β | t | β | t | β | t | β | t | |
(Constant) | 2.47 | 2.96 | 3.82 | 4.41 | 3.01 | |||||||||
Diagnosis (Reference depression) | ||||||||||||||
Bipolar disorder | ||||||||||||||
Schizophrenia | 0.27 | 2.56 | ||||||||||||
Cohabitants (reference alone) | ||||||||||||||
One person | ||||||||||||||
Two-four persons | ||||||||||||||
More than four persons | −0.3 | −2.53 | ||||||||||||
Concern about distant family members | 0.21 | 2.64 | ||||||||||||
Perceived knowledge | 0.2 | 2.09 | 0.21 | 2.15 | ||||||||||
Uncertainty states | 0.27 | 2.11 | ||||||||||||
Positive states | 0.24 | 2.7 | 0.2 | 2.19 | 0.22 | 2.59 |
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Natale, A.; Concerto, C.; Rodolico, A.; Birgillito, A.; Bonelli, M.; Martinez, M.; Signorelli, M.S.; Petralia, A.; Infortuna, C.; Battaglia, F.; et al. Risk Perception among Psychiatric Patients during the COVID-19 Pandemic. Int. J. Environ. Res. Public Health 2022, 19, 2620. https://doi.org/10.3390/ijerph19052620
Natale A, Concerto C, Rodolico A, Birgillito A, Bonelli M, Martinez M, Signorelli MS, Petralia A, Infortuna C, Battaglia F, et al. Risk Perception among Psychiatric Patients during the COVID-19 Pandemic. International Journal of Environmental Research and Public Health. 2022; 19(5):2620. https://doi.org/10.3390/ijerph19052620
Chicago/Turabian StyleNatale, Antimo, Carmen Concerto, Alessandro Rodolico, Andrea Birgillito, Marina Bonelli, Miriam Martinez, Maria Salvina Signorelli, Antonino Petralia, Carmenrita Infortuna, Fortunato Battaglia, and et al. 2022. "Risk Perception among Psychiatric Patients during the COVID-19 Pandemic" International Journal of Environmental Research and Public Health 19, no. 5: 2620. https://doi.org/10.3390/ijerph19052620
APA StyleNatale, A., Concerto, C., Rodolico, A., Birgillito, A., Bonelli, M., Martinez, M., Signorelli, M. S., Petralia, A., Infortuna, C., Battaglia, F., & Aguglia, E. (2022). Risk Perception among Psychiatric Patients during the COVID-19 Pandemic. International Journal of Environmental Research and Public Health, 19(5), 2620. https://doi.org/10.3390/ijerph19052620