Submitted:
05 May 2025
Posted:
07 May 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Design and Theoretical Framework
2.2. Recruitment of Participants, Sample Size Determination, and Ethical Approval
2.3. Introductory Section of the Survey and Demographic Variables’ Assessment
2.4. Assessment of genAI Use, Frequency of Use, and Self-Rated Competency
2.5. Ed-TAME-ChatGPT Constructs and Items
2.6. Statistical and Data Analysis
3. Results
3.1. Description of the Final Study Sample
3.2. Frequency of GenAI Use, Self-Rated GenAI Competency and its Associated Factors
3.3. Confirmation of the Ed-TAME-ChatGPT Scale Reliability
3.4. Predictors of GenAI Perceived Usefulness and Effectiveness in Univariate Analysis
3.5. Predictors of GenAI Perceived Usefulness and Effectiveness in Multivariate Analysis
4. Discussion
4.1. Policy Implications and Recommendations
4.2. Study Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AI | Artificial intelligence |
| ANOVA | Analysis of variance |
| CFA | Confirmatory factor analysis |
| CI | Confidence interval |
| Ed-TAME-ChatGPT | Educators attitude to ChatGPT through Edited Technology Acceptance Model |
| EFA | Exploratory factor analysis |
| GCC | Gulf Cooperation Council |
| GFI | Goodness of fit index |
| genAI | Generative artificial intelligence |
| KMO | Kaiser-Meyer-Olkin |
| K-W | Kruskal-Wallis test |
| MSA | Measure of sampling adequacy |
| M-W | Mann-Whitney U test |
| QC | Quality Control |
| RMSEA | Root mean square error of approximation |
| SRMR | Standardized Root Mean Square Residual |
| TAM | Technology Acceptance Model |
| TLI | Tucker-Lewis index |
| UAE | United Arab Emirates |
| UTAUT | Unified Theory of Acceptance and Use of Technology |
| VIF | Variance inflation factor |
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| Variable | Category | Count (%) |
|---|---|---|
| Age | 25–34 years | 200 (29.2) |
| 35–44 years | 209 (30.5) | |
| 45–54 years | 177 (25.8) | |
| 55+ years | 99 (14.5) | |
| Sex | Male | 403 (58.8) |
| Female | 282 (41.2) | |
| Nationality | GCC 1 | 107 (15.6) |
| Levant and Iraq | 298 (43.5) | |
| Egypt and Sudan | 173 (25.3) | |
| Maghreb | 60 (8.8) | |
| Others | 47 (6.9) | |
| In which country is your university? | GCC | 246 (35.9) |
| Levant and Iraq | 235 (34.3) | |
| Egypt and Sudan | 133 (19.4) | |
| Maghreb | 59 (8.6) | |
| Others | 12 (1.8) | |
| Faculty | Humanities | 115 (16.8) |
| Health | 449 (65.5) | |
| Scientific | 121 (17.7) | |
| Your university is | Public | 402 (58.7) |
| Private | 283 (41.3) | |
| The highest academic qualification | Bachelor's degree | 123 (18.0) |
| Master's or a specialization degree | 183 (26.7) | |
| PhD, any doctorate, or fellowship degree | 379 (55.3) | |
| The country in which you received your highest qualification | Arab country | 369 (53.9) |
| non-Arab country | 316 (46.1) | |
| Current rank | Teaching assistant | 158 (23.1) |
| Lecturer | 176 (25.7) | |
| Assistant Professor | 129 (18.8) | |
| Associate Professor | 128 (18.7) | |
| Professor | 94 (13.7) |
| Variable | Category | Frequency of genAI use | p value | genAI use score | p value | |
|---|---|---|---|---|---|---|
| Daily | Less than daily | |||||
| Count (%) | Count (%) | Mean±SD 2 | ||||
| Age | 25–34 years | 112 (56.0) | 88 (44.0) | <0.001 | 2.17±1.22 | 0.028 |
| 35–44 years | 98 (46.9) | 111 (53.1) | 1.89±1.07 | |||
| 45–54 years | 76 (42.9) | 101 (57.1) | 2.03±1.34 | |||
| 55+ years | 29 (29.3) | 70 (70.7) | 1.83±1.33 | |||
| Sex | Male | 202 (50.1) | 201 (49.9) | 0.009 | 2.03±1.27 | 0.516 |
| Female | 113 (40.1) | 169 (59.9) | 1.95±1.18 | |||
| Nationality | GCC 1 | 75 (70.1) | 32 (29.9) | <0.001 | 2.64±1.42 | <0.001 |
| Levant and Iraq | 100 (33.6) | 198 (66.4) | 1.85±1.25 | |||
| Egypt and Sudan | 76 (43.9) | 97 (56.1) | 1.99±1.06 | |||
| Maghreb | 42 (70.0) | 18 (30.0) | 1.90±0.99 | |||
| Others | 22 (46.8) | 25 (53.2) | 1.60±1.06 | |||
| In which country is your university? | GCC | 149 (60.6) | 97 (39.4) | <0.001 | 2.37±1.36 | <0.001 |
| Levant and Iraq | 59 (25.1) | 176 (74.9) | 1.63±1.14 | |||
| Egypt and Sudan | 63 (47.4) | 70 (52.6) | 2.07±1.05 | |||
| Maghreb | 41 (69.5) | 18 (30.5) | 1.85±0.98 | |||
| Others | 3 (25.0) | 9 (75.0) | 1.50±0.90 | |||
| Faculty | Humanities | 40 (34.8) | 75 (65.2) | <0.001 | 1.69±1.13 | 0.009 |
| Health | 234 (52.1) | 215 (47.9) | 2.08±1.23 | |||
| Scientific | 41 (33.9) | 80 (66.1) | 2.00±1.29 | |||
| Your university is | Public | 167 (41.5) | 235 (58.5) | 0.005 | 1.93±1.26 | 0.029 |
| Private | 148 (52.3) | 135 (47.7) | 2.10±1.18 | |||
| The highest academic qualification | Bachelor's degree | 72 (58.5) | 51 (41.5) | 0.001 | 2.11±1.26 | 0.560 |
| Master's or a specialization degree | 90 (49.2) | 93 (50.8) | 1.90±1.05 | |||
| PhD, any doctorate, or fellowship degree | 153 (40.4) | 226 (59.6) | 2.01±1.30 | |||
| The country of the highest qualification | Arab country | 176 (47.7) | 193 (52.3) | 0.332 | 1.93±1.17 | 0.203 |
| non-Arab country | 139 (44.0) | 177 (56.0) | 2.08±1.29 | |||
| Current rank | Teaching assistant | 82 (51.9) | 76 (48.1) | 0.007 | 2.04±1.21 | 0.193 |
| Lecturer | 79 (44.9) | 97 (55.1) | 1.93±1.05 | |||
| Assistant Professor | 67 (51.9) | 62 (48.1) | 2.09±1.31 | |||
| Associate Professor | 59 (46.1) | 69 (53.9) | 2.09±1.34 | |||
| Professor | 28 (29.8) | 66 (70.2) | 1.80±1.31 | |||
| Variable | Category | Self-rated genAI competence | p value | |
|---|---|---|---|---|
| Competent or very competent | Somewhat competent or not competent | |||
| Count (%) | Count (%) | |||
| Age | 25–34 years | 91 (45.5) | 109 (54.5) | 0.003 |
| 35–44 years | 104 (49.8) | 105 (50.2) | ||
| 45–54 years | 61 (34.5) | 116 (65.5) | ||
| 55+ years | 32 (32.3) | 67 (67.7) | ||
| Sex | Male | 163 (40.4) | 240 (59.6) | 0.311 |
| Female | 125 (44.3) | 157 (55.7) | ||
| Nationality | GCC 1 | 50 (46.7) | 57 (53.3) | <0.001 |
| Levant and Iraq | 147 (49.3) | 151 (50.7) | ||
| Egypt and Sudan | 63 (36.4) | 110 (63.6) | ||
| Maghreb | 7 (11.7) | 53 (88.3) | ||
| Others | 21 (44.7) | 26 (55.3) | ||
| In which country is your university? | GCC | 119 (48.4) | 127 (51.6) | <0.001 |
| Levant and Iraq | 119 (50.6) | 116 (49.4) | ||
| Egypt and Sudan | 39 (29.3) | 94 (70.7) | ||
| Maghreb | 7 (11.9) | 52 (88.1) | ||
| Others | 4 (33.3) | 8 (66.7) | ||
| Faculty | Humanities | 43 (37.4) | 72 (62.6) | 0.446 |
| Health | 190 (42.3) | 259 (57.7) | ||
| Scientific | 55 (45.5) | 66 (54.5) | ||
| Your university is | Public | 142 (35.3) | 260 (64.7) | <0.001 |
| Private | 146 (51.6) | 137 (48.4) | ||
| The highest academic qualification | Bachelor's degree | 44 (35.8) | 79 (64.2) | 0.001 |
| Master's or a specialization degree | 99 (54.1) | 84 (45.9) | ||
| PhD, any doctorate, or fellowship degree | 145 (38.3) | 234 (61.7) | ||
| The country of the highest qualification | Arab country | 165 (44.7) | 204 (55.3) | 0.126 |
| non-Arab country | 123 (38.9) | 193 (61.1) | ||
| Current rank | Teaching assistant | 59 (37.3) | 99 (62.7) | 0.004 |
| Lecturer | 93 (52.8) | 83 (47.2) | ||
| Assistant Professor | 59 (45.7) | 70 (54.3) | ||
| Associate Professor | 44 (34.4) | 84 (65.6) | ||
| Professor | 33 (35.1) | 61 (64.9) | ||
| Category | Metric | Value |
|---|---|---|
| Chi-Square Test | Baseline model | 11686.246 (df = 351) |
| Chi-Square Test | Factor model | 1195.896 (df=309, p < 0.001) |
| Fit Indices | Comparative Fit Index (CFI) | 0.922 |
| Fit Indices | Tucker-Lewis Index (TLI) | 0.911 |
| Fit Measures | Root Mean Square Error of Approximation (RMSEA) 90% CI 1 | 0.065 (0.061 – 0.069) |
| Fit Measures | Standardized Root Mean Square Residual (SRMR) | 0.046 |
| Measures | Goodness of Fit Index (GFI) | 0.986 |
| Reliability | Perceived Usefulness | α=0.877 |
| Reliability | Perceived Effectiveness | α=0.892 |
| Reliability | Technology Readiness | α=0.851 |
| Reliability | Social Influence | α=0.817 |
| Reliability | Anxiety | α=0.899 |
| Reliability | Perceived Risk | α=0.695 |
| Variable | Category | Perceived Usefulness | Perceived Effectiveness | ||
|---|---|---|---|---|---|
| Mean±SD 2 | p value 3 | Mean±SD | p value | ||
| Age | 25–34 years | 4.07±0.75 | <0.001 | 3.78±0.82 | <0.001 |
| 35–44 years | 4.08±0.66 | 3.85±0.76 | |||
| 45–54 years | 3.75±0.70 | 3.48±0.73 | |||
| 55+ years | 3.76±0.71 | 3.52±0.77 | |||
| Sex | Male | 3.95±0.68 | 0.859 | 3.68±0.73 | 0.322 |
| Female | 3.94±0.78 | 3.70±0.86 | |||
| Nationality | GCC 1 | 4.06±0.64 | 0.003 | 3.76±0.71 | 0.001 |
| Levant and Iraq | 3.85±0.76 | 3.63±0.86 | |||
| Egypt and Sudan | 4.03±0.74 | 3.75±0.78 | |||
| Maghreb | 3.86±0.48 | 3.43±0.41 | |||
| Others | 4.08±0.77 | 3.99±0.75 | |||
| In which country is your university? | GCC | 4.09±0.64 | 0.003 | 3.85±0.71 | 0.003 |
| Levant and Iraq | 3.82±0.78 | 3.60±0.90 | |||
| Egypt and Sudan | 3.96±0.77 | 3.66±0.77 | |||
| Maghreb | 3.85±0.60 | 3.42±0.53 | |||
| Others | 3.77±0.73 | 3.80±0.57 | |||
| Faculty | Humanities | 3.67±0.73 | <0.001 | 3.48±0.80 | <0.001 |
| Health | 4.04±0.71 | 3.80±0.78 | |||
| Scientific | 3.85±0.70 | 3.50±0.73 | |||
| Your university is | Public | 3.83±0.73 | <0.001 | 3.54±0.80 | <0.001 |
| Private | 4.11±0.67 | 3.90±0.72 | |||
| The highest academic qualification | Bachelor's degree | 4.08±0.67 | <0.001 | 3.71±0.68 | <0.001 |
| Master's or a specialization degree | 4.12±0.76 | 3.95±0.82 | |||
| PhD, any doctorate, or fellowship degree | 3.82±0.70 | 3.56±0.77 | |||
| The country of the highest qualification | Arab country | 4.03±0.76 | <0.001 | 3.79±0.81 | <0.001 |
| non-Arab country | 3.84±0.66 | 3.57±0.74 | |||
| Current rank | Teaching assistant | 4.03±0.63 | <0.001 | 3.71±0.68 | <0.001 |
| Lecturer | 4.06±0.77 | 3.89±0.82 | |||
| Assistant Professor | 3.93±0.72 | 3.62±0.85 | |||
| Associate Professor | 3.82±0.68 | 3.57±0.71 | |||
| Professor | 3.78±0.78 | 3.53±0.84 | |||
| Model R2 = 0.562 | Unstandardized Coefficients | Standardized Coefficients | p value | VIF 2 |
| Dependent Variable: Perceived Usefulness | B (95.0% CI 1 for B) | β | ||
| Age | 0.008 (−0.044 to 0.061) | 0.012 | 0.753 | 2.242 |
| Nationality | 0.040 (−0.002 to 0.082) | 0.059 | 0.061 | 1.534 |
| In which country is your university? | −0.037 (−0.080 to 0.007) | −0.052 | 0.096 | 1.518 |
| Faculty | 0.031 (−0.032 to 0.095) | 0.026 | 0.334 | 1.071 |
| Your university is | 0.027 (−0.055 to 0.109) | 0.018 | 0.516 | 1.230 |
| The highest academic qualification | −0.091 (−0.168 to −0.015) | −0.098 | 0.019 | 2.625 |
| The country of the highest qualification | −0.010 (−0.099 to 0.080) | −0.007 | 0.833 | 1.528 |
| Current rank | 0.009 (−0.039 to 0.058) | 0.017 | 0.709 | 3.320 |
| Technology Readiness | 0.365 (0.300 to 0.430) | 0.325 | <0.001 | 1.336 |
| Anxiety | −0.124 (−0.181 to −0.067) | −0.154 | <0.001 | 2.030 |
| Perceived Risk | −0.005 (−0.065 to 0.055) | −0.006 | 0.872 | 1.926 |
| Social Influence | 0.469 (0.407 to 0.531) | 0.445 | <0.001 | 1.364 |
| Model R2 = 0.647 | Unstandardized Coefficients | Standardized Coefficients | p value | VIF |
| Dependent Variable: Perceived Effectiveness | B (95.0% CI for B) | β | ||
| Age | 0.027 (−0.024 to 0.079) | 0.035 | 0.302 | 2.242 |
| Nationality | 0.059 (0.018 to 0.100) | 0.081 | 0.005 | 1.534 |
| In which country is your university? | −0.054 (−0.097 to −0.011) | −0.070 | 0.013 | 1.518 |
| Faculty | −0.049 (−0.111 to 0.014) | −0.036 | 0.127 | 1.071 |
| Your university is | 0.074 (−0.006 to 0.154) | 0.046 | 0.068 | 1.230 |
| The highest academic qualification | −0.024 (−0.099 to 0.050) | −0.024 | 0.521 | 2.625 |
| The country of the highest qualification | −0.065 (−0.153 to 0.022) | −0.041 | 0.144 | 1.528 |
| Current rank | 0.001 (−0.047 to 0.048) | 0.001 | 0.983 | 3.320 |
| Technology Readiness | 0.384 (0.320 to 0.448) | 0.314 | <0.001 | 1.336 |
| Anxiety | −0.077 (−0.133 to −0.021) | −0.088 | 0.007 | 2.030 |
| Perceived Risk | −0.058 (−0.116 to 0.001) | −0.062 | 0.052 | 1.926 |
| Social Influence | 0.611 (0.550 to 0.671) | 0.531 | <0.001 | 1.364 |
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