2. Materials and Methods
This quantitative descriptive cross-sectional study investigated the perceptions of healthcare users toward eHealth data and record privacy in Dubai in terms of user perceptions regarding the data protection practices of eHealthcare facilities in Dubai as well as their understanding of the adoption of useful privacy measures. We also investigated the privacy principles offered by healthcare providers and users to maintain data privacy and measured their association with some demographic variables, including gender, age, nationality and income.
Respondents of the research study (the Mohammed Bin Rashid School of Government (MBRSG)) ethics approval number as REC-02-2019 and the DHA ethics approval number as DSREC-SR-01/2019_01) consisted of a sample of eHealthcare facility professionals and users, between January and February 2019. The healthcare professionals included physicians, nurses, paramedics and nutritionists, while the healthcare users represented the patients receiving care from such facilities. The survey inclusion criteria required literacy in Arabic or English. Users who did not speak either English or Arabic were excluded.
The data collection procedure was through a universal link sent by a convenient method through email and social media programs to the citizens and residents of Dubai. At the same time, healthcare professionals were contacted by the primary healthcare sector of DHA using the Qualtrics program. Participation was entirely voluntary, and the participant could stop the survey based on their convenience at any time while answering the survey questionnaire. There was no identifiable information obtained from the participants, and the participants were anonymous. Data collection was carried out over four weeks. By the end date, the collection period survey was closed, and the data were downloaded from the survey platform.
The researchers used email, mobile phone and social media programs to recruit participants; the universal link was sent to different contacts, to reach a maximum number of users in the months of January–February of 2019. After data cleaning, the final number obtained from survey respondents for providers and users was 201. Similar to providers, the users’ sampling method was based on volunteer sampling. The survey link had the same message sent to all participants explaining the purpose of the study, the informed consent form and the survey questions. The previous research carried out in Dubai regarding eHealth data privacy was based on a survey as well [
13]. Many types of research tackling the same topic area used the survey method, which made the cross-sectional survey approach the best to collect the required data [
14,
15,
16,
17].
The demographic variables obtained for both users and providers in the survey included gender, age, nationality, employment designation, length of service, type of healthcare sector and income. Nationality measured all nationalities to capture all non-Emirati living in Dubai, considering that Dubai is a multinational city. Nationality was then divided into United Arab Emirates (UAE) and non-UAE. The healthcare sector was divided into public, private and other, as public and private are the two main categories, while other will cover an additional minority if it exists. Income was measured as categorical variables from the highest, which was more than dirhams (AED) 50,000 to the lowest levels, which was below AED 10,000, as at least 30% of the population lies within this group.
The dependent variables (DVs) were obtained through posing three questions; the first was about how the user feels while using the eHealthcare facility regarding their rights, data record accuracy and protection and if they trust and feel comfortable while using the EMRs. The second DV question was regarding the seven privacy principles used to measure the degree of privacy offered by healthcare providers in Dubai to maintain data privacy. The seven principles are the notice principle, choice principle, disclosure principle, security principle, data integrity principle, access principle and enforcement principle. The third DV question was regarding the perception of healthcare users of the right adoption of data privacy measures by healthcare providers in Dubai. The dependent variables were measured against a Likert scale.
Qualtrics is a software for flexibly collecting data to design the survey. The data collected were exported to Microsoft Excel in both forms as coded values and coded text and then exported into Statistical Package for the Social Sciences (SPSS). Data cleaning and screening procedures were applied to the exported SPSS data. After cleaning, a codebook was generated for all variables, the data entry was performed using the codebook, and descriptive tables for demographic data were generated.
Three domains of perceptions were investigated. This was carried out using 25 questions, with 6 for healthcare professional and user feelings regarding data privacy while using the eHealth facility in Dubai, seven for privacy principles and 12 for good provision of privacy and confidentiality of healthcare providers when dealing with patient data. Each question had seven options ranging across Strongly Disagree, Somewhat Disagree, Slightly Disagree, Slightly Agree, Somewhat Agree, Strongly Agree, and Not Applicable. They were given scores of 1, 2, 3, 4, 5, 6, and 7, respectively.
After applying the percentage score, descriptive tables were generated; cross tables regarding the correlations between demographic variables and the principle domains were also generated using SPSS. The statistical significance was calculated, and a p-value of less than 0.05 was considered the cut-off point of significance.
3. Results
In total, 78% of the survey respondents were healthcare professionals, while 22% (n = 44) represented healthcare users (
Table 1). The description of demographic characteristics of the participants shows that 82% of the respondents were female while there were 18% male respondents. Approximately 86% of the respondents were 30 years of age or above. In comparison, 14.5% were 20 years of age. Nearly half (52%) of the survey respondents (including users and healthcare professionals) had an income of UAE 30,000 or above (
Table 1).
The survey respondents were divided as 55% Emiratis and 45% expatriates. The expatriate countries of origin included India, Egypt, the Philippines, Yemen, Sudan, Pakistan, the United Kingdom, Jordan, Syria, Comoros, Iran, Iraq, Oman, Palestine, Somalia and the USA. Approximately 90% of the respondents (n = 180) utilized the private healthcare sector, as compared to 21 respondents (10%) who used the public healthcare sector. The healthcare users who reported that the purpose of the last visit to the healthcare institution or clinic included medical follow-up constituted 41%. In comparison, 27.3% used it for medical tests, 18% for emergency visits and 13,6% for regular check-ups (
Table 2). On the other hand, healthcare professionals were 62.4% doctors, 27.4% nurses, 2.5% medical assistants, and 1.3% dieticians and nutritionists, while 6.4% were reported as other health-allied professionals, including pharmacists, radiographers and speech therapists. Forty-eight percent of the survey healthcare professionals had more than ten years of working experience within their respective designations (
Table 3).
3.2. Discussion/Conclusions
The massive volume of clinical data, new knowledge and advanced clinical tools, as well as integrated and coordinated patient clinical information, created the need for eHealth and electronic medical records. Patient health record data and information are crucial in the healthcare sector. Electronic medical records help to achieve massive cost savings, improve the efficiency and quality of care by increasing accessibility, aid in the provision of coordinated and comprehensive care and reduce medication error [
18]. This study (
Table 5) showed that there is an increased level of agreement on the data protection practice by an eHealthcare provider as indicated in the results achieved on 11 of the statements measured after EMR was implemented at the Dubai Health Authority. This was true except for the “rights have not been violated” statement, which showed a similar level of privacy perception before and after electronic medical records implementation according to “privacy protection laws and public perception of data privacy, the case of Dubai eHealthcare services [
13]”. A study on the perception of EMRs by nursing staff in a teaching hospital in India showed that 75% of the nurses were comfortable using the electronic medical records [
19] while the results in this study showed a higher level of agreement particularly after the implementation of electronic medical records.
The rated data privacy principles showed an overall reduction in the level of agreement on the presence of privacy principles except for the data integrity and enforcement principle, which increased from 84% to 90% after electronic medical records implementation. A study carried out in the United States (n = 30) with mixed cultures to assess patients willingness to share their information showed that individuals with highly sensitive data were less likely to share their information unconditionally [
20,
21], especially if there was a lack of consent before data usage [
12]. This might provide an insight into the reason behind the reduction in the notice, choice, and disclosure principle levels of agreements.
When the results of this survey were compared with the earlier study that was conducted before EMR implementation [
13], the survey findings regarding the providers’ opinions on the motives for adopting ethical eHealth data privacy principles by eHealth service providers showed an increased level of agreement, except for statements such as “educate the patients of the standard privacy rules and procedures in place”, which remained the same before and after EMR implementation. A study by Gupta et al. (2016) showed that a user’s trust could be positively impacted by the perceived effectiveness of the technological and regulatory mechanisms [
11]. Respondent perceptions in this study might reflect the level of trust toward eHealthcare facility electronic medical record privacy measures.
In the Sarabdeen and Moonesar study [
13], the majority of respondents were from healthcare users, and there was no significant association between all the demographic variables and the privacy principles in the study. In this study, the majority were from the healthcare professional category who are using electronic medical records to manage the patients. In this study, age had no statistically significant association with the different studied elements of privacy. However, there was a statistically significant correlation between income and “the data collected are recorded accurately and precisely” and “they trust the eHealth services systems offered.” In addition, there was also a statistically significant relationship between income and the access principles and enforcement principles. The results of this study showed that income might have an impact on the individual perception of electronic medical record privacy in Dubai. A study by O’Donnell et al. showed that persons with personal earnings of more than USD 100,000 annually believed that EMR will improve the security and confidentiality of medical records [
15].
There were statistically significant associations between the gender of the electronic medical record providers and “educate the patients of the standard privacy rules and procedures in place”, “continually improve the process of collecting patient’s information” and “the gender relationship needs to be further studied to understand how it affects users’ and providers’ perceptions”. Regarding nationality, there were statistically significant associations between the nationality of the electronic medical records users and the security principle and “reassuring patients that privacy is at its highest.” Another statistically significant association was between nationality and “educate the patients of the standard privacy rules and procedures in place.” The results of this study showed that nationality had an impact on the individual perception of electronic medical record privacy in Dubai, similar to a study conducted by Papoutsi et al., which showed that there were differences in the security perceptions between different ethnic groups [
14].
Privacy principle applications at various healthcare institutions must be encouraged by policymakers. The presence of EMR data protection, confidentiality, and privacy law will strengthen patient rights. Reserving patient and healthcare professional rights will increase satisfaction. Different areas of data protection and privacy adopted from the Sarabdeen and Moonesar study provide a baseline for healthcare leaders and policymakers [
13,
21]. The policy implications of those are as follows:
Perception of the data protection practices of eHealthcare providers: This provides insights regarding healthcare users perceptions of eHealth facility practices, and how users and healthcare professionals feel with regard to facility data protection and their rights. The majority of respondents agreed on all statements, and the only variable that affected the results was income. Involving individuals with different levels of income during all phases of policymaking might have an impact and provide more insights into the area discussed.
Perception of participants on adopting good eHealth data privacy practices by eHealthcare providers: This provides an insight into the motives for selecting ethical eHealth data privacy principles by the eHealth service provider. The variables that were associated were gender and nationality. This can be advised by the policymakers to invite and involve UAE nationals and non-nationals as well as both genders to address any issues related to data protection before the implementation of the national unified electronic medical records system.
Perception of participants on the privacy principle practices of eHealthcare providers: Although most participants agreed on the privacy principle practices by eHealth providers, the only variables that had an association were nationality and income. While income may be related to living standards, social status and education, which can explain differentials in privacy perceptions, culture may have a role to play in the understanding of privacy also. Different nationalities represent different cultural backgrounds. This phenomenon should be further explored in future studies. Policymakers should explore this area to further understand why the income and the nationality affected user perceptions of privacy principles through surveys, workshops and interviews during healthcare facility visits and in the community.
Future studies are required to investigate the further effects of specific demographic variables on the perception of privacy among eHealthcare facility users. Additionally, participant responses could be influenced by the questionnaire items, resulting in commonly biased answers. Future researchers should include an in-depth interview method and add the perception of non-eHealth facility users to compare the knowledge of both groups.
Author Contributions
Conceptualization, I.A.M. and F.M.A.; methodology, I.A.M. and F.M.A.; software, F.M.A. and I.A.M.; validation, F.M.A., I.A.M. and R.A.; formal analysis, F.M.A. and I.A.M.; investigation, F.M.A.; resources, F.M.A. and I.A.M.; data curation, F.M.A. and I.A.M.; writing—original draft preparation, F.M.A., I.A.M. and R.A.; writing—review and editing, I.A.M. and R.A.; visualization, F.M.A.; supervision, I.A.M.; project administration, F.M.A. and I.A.M.; funding acquisition, I.A.M. All authors have read and agreed to the published version of the manuscript.
Funding
We would like to acknowledge the Alliance for Health Policy and Systems Research at the World Health Organization for financial support as part of the Knowledge to Policy (K2P) Center Mentorship Program [BIRD Project].
Acknowledgments
The authors would like to acknowledge the support from the Dubai Health Authority and the Mohammed Bin Rashid School of Government, Dubai, United Arab Emirates.
Conflicts of Interest
The authors declare no conflict of interest.
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Table 1.
The demographic characteristics of the study.
Variable | | n | % |
---|
Gender | Female | 165 | 82 |
| Male | 36 | 18 |
Age (years) | Below 20 | 5 | 2.5 |
| 20–29 | 24 | 12 |
| 30–39 | 86 | 42.8 |
| 40–49 | 63 | 31.3 |
| Above 50 | 23 | 11.4 |
Respondent | Healthcare user | 44 | 22 |
| Healthcare professional | 157 | 78 |
Nationality | UAE | 110 | 55 |
| Non-UAE | 91 | 45 |
Income (Dirhams, AED) | Below 10,000 | 46 | 23 |
| 10,000–20,000 | 30 | 15 |
| 20,000–30,000 | 42 | 20 |
| 30,000–40,000 | 46 | 23 |
| 40,000–50,000 | 18 | 9 |
| Above 50,000 | 19 | 10 |
Healthcare sector | Public | 180 | 90 |
| Private | 21 | 10 |
Table 2.
Healthcare user purpose of the last visit to the healthcare facility.
Variable | | n | % |
---|
Purpose of the last visit | Medical follow-up | 18 | 41 |
Medical test | 12 | 27.3 |
Emergency visit | 8 | 18.1 |
Regular check-up | 6 | 13.6 |
Table 3.
Length of service and designation of healthcare professionals.
Variable | | n | % |
---|
| Less than 5 years | 45 | 28 |
5–10 years | 37 | 24 |
More than 10 years | 75 | 48 |
Designation | Doctors | 98 | 62.4 |
Nurse | 43 | 27.4 |
Medical assistant | 4 | 2.5 |
Dietician | 2 | 1.3 |
Other health allied | 10 | 6.4 |
Table 4.
Statistical associations between the perceptions of participants on privacy principles and the practice of providers and users and selected demographic variables.
| Age | Gender | Nationality | Income |
---|
Notice principle | 0.706 | 0.524 | 0.080 | 0.170 |
Choice principle | 0.736 | 0.762 | 0.723 | 0.829 |
Disclosure principle | 0.662 | 0.495 | 0.074 | 0.420 |
Security principle | 0.710 | 0.752 | 0.006 * | 0.402 |
Data integrity principle | 0.509 | 0.081 | 0.636 | 0.090 |
Access principle | 0.337 | 0.926 | 0.310 | 0.039 * |
Enforcement principle | 0.776 | 0.684 | 0.169 | 0.020 * |
Table 5.
Percent scores on the perception of data protection practice of eHealth providers in the current study in comparison to the previous study [
13].
Perception of Data Protection Practice of eHealth | Current Findings | Previous Study Findings [13] |
---|
Comfortable when using eHealth services | 94% | 80% |
Secure when using eHealth services | 92% | 80% |
The data collected are protected | 90% | 80% |
My rights have not been violated | 90% | 90% |
The data collected are recorded accurately and precisely | 92% (p-value of 0.031) | 90% (no indication) |
They trust the eHealth services systems offered | 94% (p-value of 0.039) | 90% (no indication) |
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