Abstract
The quality of life (QoL) is now recognised as a central indicator of the effectiveness of interventions especially in patients after myocardial infarction (MI). The QoL may be important predict poor outcomes in cardiac patients.The present work aims to increase knowledge of the level of QoL in patients after MI. Moreover, the paper analyses the QoL in relation to sociodemographic factors and the degree of functioning in chronic disease. The study was conducted among 231 patients who were hospitalized due to MI within the period of June 2021 to June 2022 in the Hospital in Racibórz in Poland. The WHO Quality of Life Questionnaire and the Chronic Disease Functioning Scale were used. The analysis showed a statistically significant correlation (coefficient value 0.5 <|r/rho|≤ 0.7) between general functioning in chronic disease and the average QoL (rho = 0.56; p < 0.001)and somatic QoL levels(rho = 0.52; p < 0.001), as well as a moderately strong positive correlation with the QoL level on the psychological domain (rho = 0.50; p < 0.001), social domain(rho = 0.48; p < 0.001) and environmental domain (rho = 0.43; p < 0.001). The results of this study suggested that healthcare workers adopts appropriate policies for the implementation of quality of life, which can reduce the number of repetitive referrals to the hospital and costs imposed on the health system.
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Discover the latest articles, news and stories from top researchers in related subjects.Introduction
The concept of quality of life has been defined by the World Health Organization (WHO) as "an individual's perception of their position in life in the context of the culture and value systems in which they live and in relation to their goals, expectations, standards and interests"1. In recent years, attention has been given to the role of quality of life in the impact of disease and treatment on functioning in the physical, mental and social spheres. In clinical practice, the assessment of individual parameters of quality of life improves the effectiveness of therapy and is particularly important in the care of patients with chronic diseases2,3. Cardiovascular diseases, due to their prevalence as well as social and economic effects, are a special group in which the assessment of quality of life should be performed. However, since quality of life, according to the WHO definition, covers all aspects of human life, medical sciences more often use the concept of health-related quality of life (HRQoL). HRQoL represents a multidimensional concept that examines the physical, emotional and social impact of diseases on patients' lives2. In medicine, apart from objective clinical parameters, the impact of therapy and disease on a patient's quality of life is increasingly assessed, which allows for the consideration of a patient's point of view in the assessment4.
Despite advances in pharmacological and interventional treatment, ischaemic heart disease(IHD) is still the leading cause of death due to cardiovascular diseases5,6,7. There is preliminary evidence that the detrimental impact of work stress on health is independent of conventional risk factors for IHD and their treatment6. Myocardial infarction (MI), which is the most common manifestation of IHD, is one of the leading causes of death from chronic diseases worldwide8,9. A previous scientific study confirmed that there is a relationship between poorer quality of life and a 3.6-fold higher risk of death as a consequence of IHD10. It has been shown that the type of cardiac surgery is associated with the deterioration of functional status and HRQoL among elderly patients hospitalized for acute myocardial infarction (AMI).Patients who underwent coronary artery bypass grafting (CABG) and percutaneous coronary intervention (PCI) had lower HRQoL levels than those treated pharmacologically11. In contrast, data from studies by Tegn et al. showed no clinically significant differences in HRQoL after 1 year between older MI patients randomized to undergo an invasive strategy compared to a conservative approach12.
Predictive factors that reduce the quality of life of MI patients include obesity and smoking13. It is believed that the comprehensive cardiac rehabilitation of patients after MI makes it possible to significantly improve all aspects of quality of life, especially the sphere of physical health among younger people and the sphere of mental health among older people13. However, despite numerous studies on HRQoL, knowledge about all its factors among patients after MI remains limited14. According to the current standards, the goal of stable coronary artery disease therapy is to eliminate cardiovascular risk factors and improve long-term prognosis and quality of life. Deterioration of functional status, assessed using HRQoL or the scale of functioning in activities of daily living (ADL), is associated with an increase in mortality in this group of patients15,16. Therefore, evaluating a patient's quality of life after MI may provide health care professionals with the opportunity to individualize treatment advice for secondary prevention. Identification of HRQoL factors can help to identify patients who are at risk of low HRQoL at the stage of convalescence or rehabilitation after myocardial infarction17.
This study aimed to examine the level of quality of life in patients after myocardial infarction in relation to sociodemographic factors and the degree of functioning in chronic disease. The main research aims were to determine the following: (1) the level of quality of life inpatients after MI; (2) whether and which sociodemographic factors affect the quality of life of MI patients (in the somatic, psychological, social and environmental spheres); and (3) whether and how the quality of life of patients after MI affects functioning in chronic disease (in terms of the overall outcome, impact of the disease on the patient, impact of the patient on the disease, and impact of the disease on the patient's attitudes).
Methods
Study design
A cross-sectional, single-centre design was utilized in this study. The study was carried out according to the STROBE checklist for observational studies18.
Settings and participants
The study used a purposefully selected group of patients (n = 231) from the Unit of Cardiology, Electrotherapy and Angiology in the Silesian Voivodeship in Racibórz Hospital in Poland. The patients were hospitalized due to MI within the period of June 2021 to June 2022. Written consent for the management of the Scanmed S.A. was obtained for the study. The minimum sample size was 196 patients, which was calculated based on the available patient population with a 95% confidence interval. The data to determine the minimum number of individuals within the groups were obtained from the demographic situation in Poland up to 202019. The questionnaires were provided in a paper form (“pen-pencil questionnaire”), and the interview was conducted by two investigators who were medical staff on the ward and one investigator who was a researcher from a university. The inclusion criteria for the study were as follows: (1) adult participants diagnosed with MI, as well as STEMI andNSTEMI; (2) patients treated with PCI; (3) patients who provided informed consent to participate in the study; (4) patients without dementia-related disorders; and (5)patients without mental disorders. Patients who did not consent to participate in the study or who were unable to answer questions due to hearing disorders, vision disorders, advanced senile dementia or diagnosed mental illnesses were excluded from the study. Data collection began in January 2020 but was suspended during the COVID-19 pandemic because the ward was reclassified as a COVID-19 ward. Surveys that were collected on the ward before the pandemic were disposed of as part of the disinfection of the ward. Twenty-three people refused to participate in the survey, and 36 surveys were not included in the statistical analysis because the survey subscales contained missing responses.
Instruments
The research was carried out using two standardized measures: the WHO Quality of Life Questionnaire(WHOQOL BREF) and the Chronic Disease Functioning Scale (FCIS). Moreover, an original survey on sociodemographic and clinical factors was used.
The WHO Quality of Life Questionnaire (WHOQOL BREF) is a person-centred, multilingual instrument for subjective assessment and is designed for generic use as a multidimensional profile, enabling the comparison of patients with a wide range of diseases and conditions. It is an integrated26-item version of the WHOQOL-100 that contains items in four domains physical health, psychological, social relations, and environment, with all facet items scored as part of their hypothesized domain. Cronbach’s internal consistency values are acceptable (> 0.7) for Domains 1, 2 and 4 of the scale, i.e., physical health (0.82), psychological (0.81), environment (0.80), and social relationships (0.68)20.The questionnaire was adapted to Polish conditions and was shown to be a reliable tool for assessing quality of life21.
The Chronic Disease Functioning Scale (FCIS) allows results to be obtained for four scales: general functioning of the patient in the illness, the impact of the illness on the patient, the impact of the patient on the illness and the impact of the illness on the patient's attitudes. The internal consistency of the questionnaire expressed by a Cronbach coefficient was 0.855, indicating its high reliability and homogeneity. The set of items divided into 3 subscales allows for the evaluation of the impact of the disease on the patient, the patient’s impact on the disease and the impact of the disease on the patient’s attitudes22.
Statistical analyses
The statistical analysis was performed at e-statystyka.com.pl, a company specializing in statistical calculations in the fields of medicine, psychology, pedagogy, sociology and other scientific fields. The analysis used a p < 0.05 to indicate significance. Parametric tests (Student's T test or ANOVA) or their nonparametric equivalents (Mann‒Whitney U test or Kruskal‒Wallis test) were used to analyse quantitative variables, which were broken down into groups. Correlations amongthe variables were verified using Pearson’s (r) or Spearman’s (rho) correlation coefficient. The selection of tests was made on the basis of the distribution of the variables, which was verified by the Shapiro‒Wilk test. Calculations were made in the statistical software R ver.3.6.0, PSPP program and MS Office 2019.
Ethical procedure
The study was conducted under the recommendations of the Helsinki Declaration reported by the World Medical Association23 and the guidelines of Good Clinical Practice24. Before beginning the study, the respondents were informed about the anonymous and voluntary nature of the survey. Consent to participate in the study was obtained from each respondent. The study protocol was approved by the Bioethics Committee at the Medical University of Silesia in Katowice on04 March 2019 (ethical approval code: KNW/0022/KB/46/19).Informed consent was obtained from all subjects involved in the study.
Results
Characteristics of the study group
The sample consisted of 231 patients (76 women and 155 men), and detailed information on the characteristics of the study group is provided in Table 1.
Evolution of the quality of life of MI patients
The median values of the quality of life results obtained using the WHOQOL questionnaire, presented in sten values (1–10), ranged from 5.44 to 5.53, which means that the level of quality of life of the entire study group, for each of the spheres, was average. The table below shows the distribution of quality of life levels in the study group. Detailed information can be found in Tables 2 and 3.
The sociodemographic and clinical variables of quality of life in MI patients
The analysis showed statistically significant differences in the average quality of life level depending on education level and the prevalence of diabetes and other chronic diseases(p < 0.05). The Kruskal‒Wallis test showed that people with higher education levels (Me = 80.00) had a statistically significantly higher (p = 0.012) average quality of life than people with a primary education (Me = 66.00) (Fig. 1). The Mann‒Whitney U test showed that people without diabetes (Me = 72.00) and without other chronic diseases (Me = 72.00) were characterized by a significantly higher average quality of life than people with diabetes (Me = 67.00; p = 0.006) and other chronic diseases (Me = 66.50; p = 0.027) (Figs. 2 and 3).
The Mann‒Whitney U test showed statistically significant differences in quality of life in the physical health domain depending on education level and the prevalence of diabetes and other chronic diseases (p < 0.05). People with higher education levels (Me = 75.00) were characterized by a statistically significantly higher quality of life (p = 0.003) in the physical health domain than people with primary (Me = 56.00) and secondary (Me = 63.00) education (Fig. 4). In addition, people without diabetes (p = 0.005) and other chronic diseases (Me = 63.00;p = 0.001) were characterized by a significantly higher quality of life in this area than people with these diseases (Me = 56.00)(Figs. 5 and 6).
According to the Mann‒Whitney U test, there were significant differences in the quality of life in the psychological domain, depending on marital status, education level, professional activity and the presence of diabetes(p < 0.05). People who were in a relationship (Me = 75.00, p = 0.046), had a higher education level (Me = 81.0; p = 0.010), were professionally active (Me = 75.00; p = 0.047) and did not have diabetes (Me = 75.00; p = 0.004) showed significantly higher quality of life in the psychological domain than people who were unmarried, had a primary education, were economically inactive and had diabetes (for these four groups, an Me = 69.00 was obtained) (Figs. 7, 8, 9 and 10).
There were significant differences in the quality of life in the social domain depending on the prevalence of diabetes and other chronic diseases (p < 0.05).Among people without diabetes (p = 0.019) and other diseases (Me = 75.00; p = 0.035), the quality of life in the social domain was statistically significantly higher than that among people with these diseases (Me = 69.00) (Figs. 11 and 12).
Statistically insignificant differences in the quality of life in the environmental domain resulting from the analysed sociodemographic and clinical variables were found (p > 0.05). Quality of life was slightly higher among women, people aged over 70 years, people of normal weight, people who were in a relationship, people residing in the city, people with a higher education level, and people who were professionally active. Quality of life was also slightly higher among people with children, people without comorbidities, people who did not smoke at all, and people with a subsequent heart attack. Detailed information is included in Table 4.
Correlation between quality of life and functioning with chronic illness
The analysis using Spearman's correlation coefficient showed a statistically significant (p < 0.05) correlation (coefficient value 0.5 <|r/rho|≤ 0.7) between general functioning in chronic disease and average quality of life (rho = 0.56; p < 0.001) and somatic quality of life (rho = 0.52; p < 0.001), as well as a moderately strong positive correlation with quality of life in the psychological (rho = 0.50; p < 0.001), social (rho = 0.48; p < 0.001) and environmental domains (rho = 0.43; p < 0.001).This means that the better a patient’s general functioning in disease was, the higher their quality of life in all dimensions.
There was also a statistically significant, strong positive correlation between the impact of the disease on the patient and the average quality of life(rho = 0.56; p < 0.001) and physical health quality of life (rho = 0.56; p < 0.001) and a moderately strong, positive correlation with the quality of life in the psychological (rho = 0.49; p < 0.001), social(rho = 0.46; p < 0.001) and environmental domains (rho = 0.38; p < 0.001).The higher the scores of the patient’s impact on the disease was, the higher their quality of life in all its dimensions.
The impact of the disease on the patient's attitude was significantly and positively correlated with average quality of life (rho = 0.57; p < 0.001) and quality of life in the psychological domain (rho = 0.53; p < 0.001)and moderately strong and positively correlated with the somatic quality of life (rho = 0.49; p < 0.001), social (rho = 0.49; p < 0.001) and environmental domains(rho = 0.47; p < 0.001). It was therefore shown that the lower the impact of the disease on the patient's attitudes was (the higher the score), the higher their quality of life in all dimensions.
Discussion
This study examined the quality of life of patients after MI and the relationship between sociodemographic and clinical factors and functioning in chronic illness. The study showed that the sociodemographic variables that affect quality of life are education level (overall scores and somatic and psychological domains), the presence of diabetes (overall scores and somatic, psychological and social domains) and the presence of other chronic diseases (overall scores and somatic, psychological and social domains)status, as well as marital status and professional activity in the psychological domain. The above results are in line with the study conducted by Endalew et al. in Ethiopia25, who found that the level of education among patients after MI affected health-related quality of life in each domain. Contrary to this study, Endalew et al. noted the impact of place of residence on the level of health-related quality of life. When comparing the studies described above, the age and cultural differences of the groups in the study by Endalew et al. and in this study should be taken into account.
However, the role of professional activity was also noticed in a study by Hawkes et al., who found that the quality of life was lower in post-MI patients who were unemployed26. This is consistent with the results of this study. A 6-month observation in the study by Gąsiecka et al. showed that a higher baseline BMI and the presence of dyslipidaemia increased the quality of health in patients after myocardial infarction27. Contrary to the study by Gąsiecka et al., in this study, BMI and hypercholesterolemia did not affect the quality of life of patients after MI27. In contrast, this study showed that the presence of diabetes and other chronic diseases reduced the quality of life of patients after MI.A cross-sectional study conducted in Spain by Rodríguez-Almagro et al. showed an average level of quality of life among people with diabetes, similar to the results of our study conducted among patients after MI28. Diabetes is a disease, and the course of diabetes is characterized by the development of chronic complications that contribute to the coexistence of other comorbidities. In the present study, the presence of other chronic diseases correlated with the quality of life of patients after MI. The obtained results can be compared to a study conducted by Kolarić et al., who analysed the quality of life of patients with diabetes in relation to the occurrence of chronic complications. The authors of these studies suggest that differences in the assessment of the quality of life of diabetes patients depend on the type of chronic complication29.
This study indicated an average quality of life in 88(38.1%) patients, while 78(33.8%) patients were characterized by a high level, and 35(28.1%) exhibited a low quality of life. Studies conducted by Endalew et al.25 in a group of Ethiopian patients after MI and studies conducted by Mollon et al.30 in a group of American patients showed a low level of quality of life in this group of patients. Previous research results on the subject indicate different data on the level of quality of life in relation to the age of the respondents. According to Arnold et al.31, older age was associated with better quality of life in post-MI patients, and studies by Oninska-Bulik32 found that older age predicted poor quality of life. Studies by Mori et al. showed that over half of the elderly patients (≥ 75 years) hospitalized for MI within 6 months of hospitalization had a significant decrease in at least 1 of the 3 functional domains of the ADL daily functioning scale and HRQoL11. According to these authors, the risk of decline was lower in patients treated with PCI or CABG compared to other medical treatments10. In this study, 68 people (29.4%) aged ≥ 75 years underwent PCI, and the average quality of life was measured during hospitalization. The analysis of the results of this study obtained different results from the abovementioned studies because age did not correlate with the level of quality of life inpatients after MI.
Hawkes et al. showed that a higher level of anxiety correlated with a lower level of quality of life in patients after MI26. Research conducted by Oginska-Bulik showed that among patients after MI, people with a type D personality were characterized by a lower quality of life compared to people with an atypical type D personality32. Džubur et al. showed the influence of depression on decreased quality of life among post-MI patients33. Similar results were obtained by Spanish researchers Upadhyayi et al., who observed that depression and poor social support led to impairments in the physical and social domains of QoL34. In this study, the correlation of the psychosocial variable, i.e., the impact of functioning in chronic disease, on the quality of life of patients after myocardial infarction was examined. In this paper, in the field of psychosocial factors, the impact of a patient’s functioning after MI was examined, and to our knowledge, the impact of this factor on the quality of life of patients after MI has not been investigated thus far. This study showed that the lower the impact of disease on a patient and the lower the impact of disease on a patient's attitudes is, the higher their quality of life in all its dimensions. According to French et al., who investigated the relationship between disease perceptions and quality of life in post-MI patients, therapeutic interventions aimed at changing disease perceptions may be useful in improving HRQoL after MI35. A change in a patient's perception of their illness, which affects their quality of life in terms of health, may translate into their satisfaction with the medical services provided. This is confirmed in a study by Steele et al., who showed that patients with an optimistic attitude better assessed the effectiveness of the therapy and more willingly followed the doctor's recommendations36.
The main limitation of our study is its single-centre design and the selection of patients from only one region in Poland (Silesian Region), which might limit the generalizability of the results. In addition, the limitations of this work include missing survey answers and the long period of data collection. The observational study design does not allow conclusions to be drawn regarding causality when identifying possible factors that improve or reduce HRQOL. Therefore, these results should be interpreted with caution and re-evaluated in future studies; we plan to include more study groups in a multicentre study. Replicating this study with more data and more robust study designs is warranted to confirm these results.
Conclusions
The general health-related quality of life in the Polish population of patients after myocardial infarction is moderate and depends on several sociodemographic and clinical factors as well as on functioning in chronic disease. In relation to medical practice, the measurement of quality of life among patients after MI should be performed by all members of the treatment team due to its clinical implications. In clinical practice, the assessment of HRQoL should be considered a central indicator of the need for medical services, the effectiveness of therapeutic intervention and the effects of cardiac rehabilitation on patients after MI. This ability is diminished by some socioeconomic, psychological, cognitive and physical factors, and the incorporation of HRQoL measurement into clinical practice may make it easier to identify them. It is therefore reasonable to perform quality of life assessment as a holistic approach to post-MI care in healthcare policies.
Data availability
The datasets used and/or analysed during the current study available from the corresponding author on reasonable request.
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Acknowledgements
The authors would like to acknowledge Piotr Dec together with the team from e-statystyka.com.pl for statistical support. The authors also wish to thank all the patients participating in this study and the entire staff of Racibórz Medical Centre.
Funding
This research was funded by the Medical University of Silesia in Katowice, Poland, no: PCN-2-036/N/1/Z.
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E.K. and A.M. designed the peer intervention. E.K., A.W. and M.S. carried out the intervention and collected the data. E.K. prepared the figures and the tables and wrote the main manuscript text.A.M. and D.K. reviewed the manuscript. The author(s) read and approved the final manuscript.
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Kolarczyk, E., Kohanová, D., Witkowska, A. et al. The factors of quality of life among patients after myocardial infarction in Poland: a cross-sectional study. The quality of life among patients after myocardial infarction. Sci Rep 14, 15925 (2024). https://doi.org/10.1038/s41598-024-65525-z
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DOI: https://doi.org/10.1038/s41598-024-65525-z
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