| Literature DB >> 35421112 |
Liam Wright1, Alexandra Burton2, Alison McKinlay2, Andrew Steptoe2, Daisy Fancourt2.
Abstract
BACKGROUND: Confidence in the central UK Government has declined since the beginning of the COVID-19 pandemic, and while this may be linked to specific government actions to curb the spread of the virus, understanding is still incomplete. Examining public opinion is important, as research suggests that low confidence in government increases the extent of non-compliance with infection-dampening rules (for instance, social distancing); however, the detailed reasons for this association are still unclear.Entities:
Mesh:
Year: 2022 PMID: 35421112 PMCID: PMC9009625 DOI: 10.1371/journal.pone.0264134
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.752
Free-text response questions.
| Question |
|---|
|
Is there anything you would like to tell us about the changes that have been brought about by the Covid-19 pandemic and the impact these have had on your mental health or wellbeing? |
|
What is bothering you the most about the pandemic? What aspects of it have you been finding most difficult? |
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Has the pandemic had any negative impacts on your mental health and wellbeing? If so could you tell us about these? |
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Has the pandemic had any positive impacts on your mental health and wellbeing? If so could you tell us about these? |
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Since the Covid-19 pandemic began, how have you been feeling about the future? What are you hopeful or concerned about? |
* Longer list of questions asked in the free-text module shown in S1 Table.
Fig 1Flow diagram.
Sample descriptive statistics.
| Government | ||||||
|---|---|---|---|---|---|---|
| Variable | Non-Response | Response | Not Mentioned | Mentioned | Missing | |
| N | 8,900 (40.09%) | 13,298 (59.91%) | 8,896 (66.90%) | 4,402 (33.10%) | ||
| Confidence in UK government | 3.31 (1.87) | 2.93 (1.85)* | 3.35 (1.85) | 2.08 (1.51)* | 0.02% | |
| Adherence to guidelines | 6.23 (0.94) | 6.23 (0.98) | 6.28 (0.91) | 6.13 (1.11)* | 0.02% | |
| Gender | Male | 2,671 (30.10%) | 2,649 (20.01%)* | 1,567 (17.67%) | 1,082 (24.77%)* | 0.75% |
| Female | 6,202 (69.90%) | 10,588 (79.99%) | 7,301 (82.33%) | 3,287 (75.23%) | ||
| Ethnicity | White | 8,532 (96.1%) | 12,738 (96.1%) | 8,566 (96.46%) | 4,172 (95.36%)* | 0.61% |
| Non-White | 346 (3.9%) | 517 (3.9%) | 314 (3.54%) | 203 (4.64%) | ||
| Age (grouped) | 18–29 | 473 (5.31%) | 583 (4.38%)* | 395 (4.44%) | 188 (4.27%)* | 0% |
| 30–45 | 2,026 (22.76%) | 2,754 (20.71%) | 1,802 (20.26%) | 952 (21.63%) | ||
| 46–59 | 2,989 (33.58%) | 4,429 (33.31%) | 2,923 (32.86%) | 1,506 (34.21%) | ||
| 60+ | 3,412 (38.34%) | 5,532 (41.6%) | 3,776 (42.45%) | 1,756 (39.89%) | ||
| Education | Degree or above | 5,724 (64.31%) | 9,470 (71.21%)* | 5,938 (66.75%) | 3,532 (80.24%)* | 0% |
| A-levels or equivalent | 1,658 (18.63%) | 2,171 (16.33%) | 1,623 (18.24%) | 548 (12.45%) | ||
| GCSE or below | 1,518 (17.06%) | 1,657 (12.46%) | 1,335 (15.01%) | 322 (7.31%) | ||
| Employment status | Employed | 5,344 (60.04%) | 7,727 (58.11%)* | 5,099 (57.32%) | 2,628 (59.7%) | 0% |
| Inactive or Retired | 3,201 (35.97%) | 5,060 (38.05%) | 3,454 (38.83%) | 1,606 (36.48%) | ||
| Student | 189 (2.12%) | 268 (2.02%) | 176 (1.98%) | 92 (2.09%) | ||
| Unemployed | 166 (1.87%) | 243 (1.83%) | 167 (1.88%) | 76 (1.73%) | ||
Fig 2Marginal effect (+ 95% CIs) of participant characteristics and answering free-text questions (left panel) or mentioning government in free-text questions (right panel).
Estimates derived from probit model (left panel) and Heckman’s selection probit model (right panel) with simultaneous adjustment for participant characteristics. Heckman’s selection model include each characteristic in both the selection and outcome parts of the model.
Topics extracted from structural topic model.
| Topic | Proportion | Topic Name | Short Title | Theme | FREX | Description |
|---|---|---|---|---|---|---|
| 1 | 15.54% | Worries and hopes for the future | Future feelings | (Standalone topic) | hope, concern, econom, societi, climat, world, vaccin, polit, environ, elect | Worries and hopes about the future including political populism, social divisions, climate change, and the economy. |
| 2 | 11.11% | Impact of social and societal restrictions on mental health | Social restrictions | Disruptions to lives | school, parent, mental, visit, bubbl, daughter, children, physic, son, teacher | Impact of government policies such as lockdowns on mental health, including due to work, isolation from friends and family, and closure of schools. |
| 3 | 10.93% | Lack of openness and transparency | Transparency | Inconsistencies and uncertainties | decis, scientif, polici, base, approach, transpar, consist, inabl, evid, leader | Lack of transparency on scientific basis for decision making and release of data. Exemplar texts also included discussion of inconsistency of messaging and action (across time and devolved nations). |
| 4 | 9.45% | Government incompetence and corruption | Corruption | (Standalone topic) | corrupt, contract, incompet, tori, award, hopeless, croni, wast, utter, useless | Government incompetence and perceived corruption/cronyism in awarding positions and contracts. |
| 5 | 9.42% | Tensions with the public | Public tensions | Tensions between government and others | mask, wear, enforc, spread, distanc, flout, regul, adher, put, selfish | Lack of enforcement of Government guidelines. Anger at perceived selfishness of others and people taking advantage of exemption criteria. |
| 6 | 8.17% | Tensions with politicians, scientists, and the media | Media tensions | Tensions between government and others | scientist, politician, media, listen, expert, new, report, sage, figur, contradictori | Partisan and sensationalist press coverage. Concern statistics are flawed or manipulated. |
| 7 | 7.84% | Test and Trace | Test and Trace | Disruptions to lives | test, track, system, trace, surgeri, offic, oper, symptom, promis, patient | Poor experiences with test and trace. This topic also produced exemplar texts with irrelevant responses about adaption to new–often pleasant–routines, including working from home |
| 8 | 7.73% | Uncertainty and lack of forward planning | Uncertainty | Inconsistencies and uncertainties | plan, uncertainti, abil, manag, strategi, anger, forward, sight, anxieti, difficult | Anxiety and stress arising from uncertainty related to government management of the pandemic. Sadness at inability to plan and lack of things to look forward to. |
| 9 | 7.07% | Lack of confidence in government’s ability | Low confidence | Inconsistencies and uncertainties | confid, faith, cum, domin, bori, confus, minist, prime, lost, powerless | Lack of confidence or faith in government, particularly regarding treatment of Dominic Cummings. |
| 10 | 6.70% | Insufficient financial support | Finances | (Standalone topic) | pai, tax, retir, incom, save, pension, financi, busi, job, selfemploi | Financial and/or employment concerns. Lack of government support and worry that worsened situation may be permanent. |
| 11 | 6.04% | Inconsistencies in policies | Inconsistencies | Inconsistencies and uncertainties | handl, messag, mix, control, know, trust, slow, badli, inept, deal | Belief that government handling of the pandemic has been inept, especially regarding inconsistencies in rules and U-turns. |
Fig 3Correlation between topics.
Correlations shown where ρ > 0.05.
Fig 4Association between topic proportions and person characteristics (+ 95% CIs).
Drawn from multivariate regression models. Continuous variables scaled to 0–1 range, so estimate reflects estimated change in topic proportion due to increase from minimum to maximum value.
Fig 5Sentiment analysis.
Results of linear regression of average sentiment on topic proportions in text.