Understanding Complaints in the Emergency Department

This article is distributed under the terms of the Creative Commons Attribution 4.0 License (https://creativecommons.org/licenses/by/4.0/) which permits any use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage).

Abstract

The aim of this research is to identify the main determinants of patients’ complaints and potential mediators and moderators in this regard. This research shows that complaints can result from a complex set of processes involving direct, mediating, and moderating effects. Interventions aimed at reducing patients’ complaints should consider specific patient groups and experiences.

Keywords: Patient satisfaction, perceived quality of healthcare, emergency department, patients’ complaints, frequency of ED experiences, frequent users, waiting time for triage, privacy

Introduction

The number of emergency department (ED) visits is steadily increasing in most high-income countries. 1 Researchers have emphasized several factors that contribute to ED visits: inability to cope with pain; fear; access to other services and resources; and suggestions from family to go to the ED. 2

It is estimated that 1% to 5% of the entire ED population comprises frequent users. 3 Patients who visit the ED frequently are a particularly vulnerable population group. 4 When compared to infrequent users, frequent ED users are more likely to have chronic disease and poor physical health, resulting in higher hospital admission rates and mortality. 4 Various thresholds for the definition of frequent ED users exist in the literature, with no consensus on a single definition (eg, 3-10 ED visits within 12 months, 3 4 or more ED visits, 5,6 or 5 or more ED visits per year 7 ).

Patients may return to the same medical facility repeatedly over time because they are satisfied with their experience; however, repeat/frequent visits may not necessarily indicate patient loyalty resulting from satisfaction. 8 In some cases, patients cannot easily change the medical facility they visit and thus temporarily continue using the same provider despite an unsatisfactory experience. 8

Additionally, patients become more informed about the health care services through frequent visits and can incorporate a wider set of factors into their service quality assessment. 8 Therefore, patients may become more critical of professional practices through increased interactions. 8

Patient satisfaction is associated with complaints and correlated with malpractice lawsuits (problems with patient care quality) and communication problems. 9 In turn, patient complaints are associated with malpractice lawsuits. 10

In this study, we sought to understand the determinants of patients’ complaints, whether the effect of the predictors (antecedents) on patients’ complaints is mediated by the perceived quality of healthcare (PQHC) and satisfaction, and whether the effect of PQHC and satisfaction on patients’ complaints is moderated by patients’ characteristics.

Methods

Authorization for this study was obtained from the Ethics Committee and Board of Directors and Administration of the Centro Hospitalar de Lisboa Ocidental E.P.E. (CHLO). To calculate our random probabilistic sample size, we used a list of 55 903 patients who entered the ED at the public hospital in Lisbon, Portugal at least once between January 1 and December 31, 2016. When a chosen individual had more than 1 ED admission in the year under study, we chose the last admission according to the date of admission. A 5% margin of error and a 95% confidence interval were used. The representative sample size comprised 382 patients. The data were collected between May and November 2017. The questionnaire was developed using various measurement scales and consisted of 75 questions. It was sent either by mail or e-mail, depending on the respondent’s preference.

For the given analysis, we selected only the main predictors (antecedents) of satisfaction/PQHC that we considered as having statistically significant conditions (P ⩽ .05), and some other predictors that had a statistically significant (marginal effects) relationship with satisfaction/PQHC (P ⩽ .10). Thus, variables were selected with the consideration that the antecedents (doctors; qualitative perceived waiting time for triage; meeting expectations; information about possible delays; accessibility and availability; qualitative perceived waiting time to be called back by the doctor following examinations and/or tests; and privacy) were significantly correlated with both the mediators (PQHC or satisfaction) and the dependent variable (patients’ complaints). We also determined the effect of the moderators on the relationship between satisfaction or PQHC and patients’ complaints. Variables were selected with the consideration that both satisfaction or PQHC and the moderators (gender; age; number of people in household; level of education; monthly household income; level of satisfaction with life; level of happiness; evaluation of state of health; frequency of ED experiences; duration of symptoms or complaints before going to the ED; existence of illness or chronic health condition; number of chronic illnesses; possession of health insurance) were significantly correlated with the dependent variable (patients’ complaints).

Stepwise multiple linear regression analysis was used to test the mediation and moderation models using the methodology proposed by Baron and Kenny. 11 In this research, we considered and analyzed different models with regard to satisfaction and PQHC as they have been proven to be distinct concepts. 12 In addition, we used only qualitative perceived waiting times (evaluated on a scale of 1-10, where 1 means “very long” and 10 means “very fast”) because they had a stronger correlation with satisfaction and PQHC than quantitative perceived waiting times (evaluated with an exact time scale using hours and minutes).

Results

The descriptive statistics of the main variables used in the models are represented in Table 1 .

Table 1.

Mean, minimum, maximum, and standard deviation related to perceived waiting time for triage, privacy, satisfaction, perceived quality of healthcare, and frequency of ED experiences.

nMeanMinMaxSD
Perceived waiting time for triage
Waiting time for triage considering the severity of the condition3627.351102.37
Privacy
How privacy was safeguarded3727.271102.41
Satisfaction
The level of satisfaction, considering the entire experience in the ED3807.101102.38
Perceived quality of healthcare
Overall evaluation of the quality of healthcare3737.651102.10
n%MeanMinMaxSD
Frequency of ED experiences
Number of times in the ED in 2016 2.211202.22
112147.1
27529.2
3249.3
4166.2
5 or more218.3
Total257100
Patients’ complaints
Presentation of verbal or written complaint
Yes, verbal307.9
Yes, in writing143.7
No33588.4
Total379100.0

Only 2 of the mediation models were statistically significant, represented in Figure 1 . The models that represent perceived waiting time for triage and privacy show that the contribution of satisfaction and PQHC is 2% and 1% of the explained variance, with statistically significant results (P < .01 and P < .05).

An external file that holds a picture, illustration, etc. Object name is 10.1177_11786329211057351-fig1.jpg

Effect on patients’ complaints.

Without satisfaction or PQHC as a mediator, the effect of perceived waiting time for triage and privacy on complaints is also explained by 2% and 1%. The models without satisfaction and PQHC have an r = −.12 correlation level. Adding satisfaction and PQHC in the models reduces the direct correlation level to r = −.05 and r = .06, showing partial mediation through satisfaction and PQHC. Analyzing the entire models shows that these effects through satisfaction and PQHC are explained by 4% and 2% of the variation, with statistically significant results (P < .01 and P < .05).

The moderation models with PQHC were not statistically significant. Only 1 moderation model was statistically significant (with satisfaction). Thus, the contribution of the frequency of ED experiences in the model, represented in Figure 2 , is 2% of the explained variance; thus, the effect of satisfaction on complaints is moderated by the frequency of ED experiences by 2%, with statistically significant results (P < .05).

An external file that holds a picture, illustration, etc. Object name is 10.1177_11786329211057351-fig2.jpg

The simple slopes analysis shows that the effect of satisfaction on complaints is lower among patients with more frequent ED experiences (b = 0.00) than among those with less frequent ED experiences (b=0.05).

Discussion

Increased efforts have been made to effectively analyze complaints to improve healthcare quality. 13 Researchers have found that most of the grievances and complaints in the healthcare setting are related to communication problems with hospital employees, followed by patient perceptions that patient safety and medical care have been compromised. 14 One of the major problems in EDs is overcrowding. Visits from frequent ED users could be a possible reason and explanation for ED crowding that is associated with overstressed healthcare professionals, long waiting times, safety issues, and patient dissatisfaction. 1

Researchers have pointed out that waiting times 15 and a lack of privacy and confidentiality 16 can cause patient complaints, and this is consistent with our results. However, we determined that privacy influences complaints through PQHC, and perceived waiting time for triage influences complaints through satisfaction.

Patient satisfaction may be affected by patient-level characteristics and mental health scores. 17 Satisfaction level was found to be associated with a range of factors such as sex, age, race, socioeconomic status, education level, and health outcomes. 17 However, the results in terms of sociodemographic characteristics and clinical variables vary depending on the context of the patient satisfaction measurement. Some researchers did not detect a correlation between the patient satisfaction level and sociodemographic factors; rather, patient satisfaction was found to be associated with perceived state of health. 18

Instead of using patient characteristics as predictors, we used them as moderators in this study. According to our results, only frequency of ED experiences acts as a moderator in the association between satisfaction and complaints. Satisfaction is less likely to influence complaints among patients with more frequent ED experiences than among those with less frequent ED experiences. Thus, when analyzing complaints, one needs to consider improving satisfaction and/or PQHC, taking into account specific patients’ characteristics.

Footnotes

Contributed by

Author Contributions: Conceptualization: Alina Abidova. Data curation: Alina Abidova. Formal analysis: Alina Abidova, Sérgio Moreira. Investigation: Alina Abidova. Methodology: Alina Abidova, Pedro Alcântara da Silva. Project administration: Alina Abidova. Resources: Alina Abidova. Supervision: Alina Abidova, Pedro Alcântara da Silva. Validation: Alina Abidova. Visualization: Alina Abidova. Writing – original draft: Alina Abidova. Writing – review & editing: Alina Abidova, Pedro Alcântara da Silva, Sérgio Moreira.

Ethics Approval and Consent to Participate: We obtained authorization to administer our study from the Ethics Committee and the Board of Directors and Administration of the Centro Hospitalar de Lisboa Occidental E.P.E. (CHLO). Our study was conducted in compliance with the ethical principles set out in the Declaration of Helsinki. All interviewed patients were asked to provide verbal and written consent to participate in the research. Patients were given a form to sign that would confirm their consent to participate in the research along with the questionnaire sent by mail or e-mail. Patients were informed that all gathered data were to be confidential and anonymous and would be used only in the framework of the research. Participation was voluntary and each participant had the right at any time to interrupt or stop filling in the survey without any explanation and penalties.

Declaration OF Conflicting Interests: The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Funding: The author(s) received no financial support for the research, authorship, and/or publication of this article.

An external file that holds a picture, illustration, etc. Object name is 10.1177_11786329211057351-img1.jpg

ORCID iD: Alina Abidova https://orcid.org/0000-0003-2058-0922

References

1. Van den Heede K, Van de Voorde C. Interventions to reduce emergency department utilisation: a review of reviews . Health Policy . 2016; 120 :1337–1349. [PubMed] [Google Scholar]

2. Glynn BA, Brulé M, Kenny SL, et al. Understanding the high frequency use of the emergency department for patients with chronic pain: a mixed-methods study . J Healthc Qual . 2019; 41 :195–211. [PubMed] [Google Scholar]

3. Soril LJ, Leggett LE, Lorenzetti DL, Noseworthy TW, Clement FM. Reducing frequent visits to the emergency department: a systematic review of interventions . PLoS One . 2015; 10 :e0123660. [PMC free article] [PubMed] [Google Scholar]

4. Moe J, Kirkland S, Ospina MB, et al. Mortality, admission rates and outpatient use among frequent users of emergency departments: a systematic review . Emerg Med J . 2016; 33 :230–236. [PubMed] [Google Scholar]

5. Krieg C, Hudon C, Chouinard MC, Dufour I. Individual predictors of frequent emergency department use: a scoping review . BMC Health Serv Res . 2016; 16 :594. [PMC free article] [PubMed] [Google Scholar]

6. Boh C, Li H, Finkelstein E, et al. Factors contributing to inappropriate visits of frequent attenders and their economic effects at an emergency department in Singapore . Acad Emerg Med . 2015; 22 :1025–1033. [PubMed] [Google Scholar]

7. Paul P, Heng BH, Seow E, Molina J, Tay SY. Predictors of frequent attenders of emergency department at an acute general hospital in Singapore . Emerg Med J . 2010; 27 :843–848. [PubMed] [Google Scholar]

8. Cho WH, Lee H, Kim C, Lee S, Choi KS. The impact of visit frequency on the relationship between service quality and outpatient satisfaction: a South Korean study . Health Serv Res . 2004; 39 :13–33. [PMC free article] [PubMed] [Google Scholar]

9. Stelfox HT, Gandhi TK, Orav EJ, Gustafson ML. The relation of patient satisfaction with complaints against physicians and malpractice lawsuits . Am J Med . 2005; 118 :1126–1133. [PubMed] [Google Scholar]

10. Hickson GB, Federspiel CF, Pichert JW, Miller CS, Gauld-Jaeger J, Bost P. Patient complaints and malpractice risk . JAMA . 2002; 287 :2951–2957. [PubMed] [Google Scholar]

11. Baron RM, Kenny DA. The moderator-mediator variable distinction in social psychological research: conceptual, strategic, and statistical considerations . J Pers Soc Psychol . 1986; 51 :1173–1182. [PubMed] [Google Scholar]

12. Lei P, Jolibert A. A three-model comparison of the relationship between quality, satisfaction and loyalty: an empirical study of the Chinese healthcare system . BMC Health Serv Res . 2012; 12 :436. [PMC free article] [PubMed] [Google Scholar]

13. van Dael J, Reader TW, Gillespie A, Neves AL, Darzi A, Mayer EK. Learning from complaints in healthcare: a realist review of academic literature, policy evidence and front-line insights . BMJ Qual Saf . 2020; 29 :684–695. [PMC free article] [PubMed] [Google Scholar]

14. Bayer S, Kuzmickas P, Boissy A, Rose SL, Mercer MB. Categorizing and rating patient complaints: an innovative approach to improve patient experience . J Patient Exp . 2021; 8 :2374373521998624. [PMC free article] [PubMed] [Google Scholar]

15. Saxon K, London K, Bacharouch A, Smith K, Santen S, Perry M. Patients’ perceptions of waiting times and the effect on patient satisfaction in the emergency department . Ann Emerg Med . 2013; 62 :S82. [Google Scholar]

16. Hartigan L, Cussen L, Meaney S, O’Donoghue K. Patients’ perception of privacy and confidentiality in the emergency department of a busy obstetric unit . BMC Health Serv Res . 2018; 18 :978. [PMC free article] [PubMed] [Google Scholar]

17. Chen Q, Beal EW, Okunrintemi V, et al. The association between patient satisfaction and patient-reported health outcomes . J Patient Exp . 2019; 6 :201–209. [PMC free article] [PubMed] [Google Scholar]

18. Romero-García M, Delgado-Hito P, de la Cueva-Ariza L, et al. Level of satisfaction of critical care patients regarding the nursing care received: correlation with sociodemographic and clinical variables . Aust Crit Care . 2019; 32 :486–493. [PubMed] [Google Scholar]