Submitted:
02 June 2026
Posted:
03 June 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Subjects and Methods
2.1. Survey Subjects
2.2. Research Instruments
2.3. Data Collection
2.4. Data Analysis
2.5. Ethics Statement
3. Results
3.1. Demographic Characteristics of the Sample
3.2. Application Status of Generative AI
3.3. Medical Students’ Perceptions of the Hidden Risks of Generative AI
3.4. Descriptive Statistics and Intergroup Difference Analysis of GenAI Usage Intention
3.5. Multiple Linear Regression Analysis of Influencing Factors on Behavior Intention to Use GenAI
4. Discussion
4.1. Generative AI has become a frequently used and scenario-differentiated auxiliary tool in medical students’ autonomous learning
4.2. Medical students’ intention to use generative artificial intelligence is mainly influenced by perceived usefulness, external conditions, individual factors, and difficulty of use.
5. Conclusion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Disclosure statement
References
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| Demographic Characteristics | Number of people | percentage (%) | |
|---|---|---|---|
| gender | female | 117 | 58.79 |
| male | 82 | 41.21 | |
| age | 18 | 25 | 12.56 |
| 19 | 54 | 27.14 | |
| 20 | 55 | 27.64 | |
| 21 | 30 | 15.07 | |
| 22-30 | 35 | 17.59 | |
| Academic stage | undergraduate | 183 | 91.96 |
| Master’s degree | 10 | 5.03 | |
| Doctor | 6 | 3.02 | |
| College or Hospital Affiliated | School of Basic Medical Sciences | 76 | 38.19 |
| School of Nursing | 64 | 32.16 | |
| Directly affiliated hospitals and teaching hospitals | 17 | 8.54 | |
| School of Pharmacy | 20 | 10.05 | |
| Others | 22 | 11.06 | |
| Total | 199 | 100.0 | |
| Yes(n,%) | No(n,%) | Partially concerned/uncertain(n,%) | |
|---|---|---|---|
| undermine academic integrity | 55(27.64) | 60(30.15) | 84(42.21) |
| Disclosure of personal information or academic data | 75(37.69) | 52(26.13) | 72(36.18) |
| impact or replace traditional professional roles in the medical field | 107(53.77) | 36(18.09) | 56(28.14) |
| variable | average value | standard deviation | median |
|---|---|---|---|
| individual factors | 3.894 | 0.642 | 4.000 |
| perceived ease of use | 3.978 | 0.727 | 4.000 |
| perceived usefulness | 4.041 | 0.643 | 4.000 |
| technical characteristics | 3.998 | 0.652 | 4.000 |
| task-technology fit | 3.697 | 0.696 | 3.667 |
| hedonic motivation | 3.670 | 0.850 | 4.000 |
| perceived risk | 3.688 | 0.774 | 3.667 |
| effort expectancy | 2.965 | 0.823 | 3.000 |
| technology anxiety | 3.487 | 0.988 | 4.000 |
| social influence | 3.873 | 0.765 | 4.000 |
| external variables | 3.897 | 0.568 | 3.917 |
| behavioral intention | 4.068 | 0.719 | 4.000 |
| individual factors | perceived ease of use | perceived usefulness | technical characteristics | task-technology fit | hedonic motivation | perceived risk | effort expectancy | technology anxiety | social influence | external variables | behavioral intention | |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Gender | ||||||||||||
| Female(n=117) | 3.82±0.59 | 3.82±0.68** | 3.93±0.61** | 3.91±0.62* | 3.58±0.67** | 3.58±0.80 | 3.75±0.62 | 3.00±0.75 | 3.57±0.87 | 3.79±0.75 | 3.77±0.48** | 3.97±0.65* |
| Male(n=82) | 4.00±0.70 | 4.20±0.74** | 4.20±0.66** | 4.13±0.67* | 3.86±0.70** | 3.79±0.91 | 3.59±0.95 | 2.92±0.92 | 3.37±1.13 | 3.99±0.78 | 4.07±0.63** | 4.21±0.79* |
| age | ||||||||||||
|
18~20 (n=133) |
3.88±0.67 | 3.95±0.72 | 4.01±0.64 | 4.02±0.65 | 3.74±0.72 | 3.69±0.87 | 3.69±0.77 | 2.70±1.01 | 3.50±1.00 | 3.92±0.77 | 3.92±0.62 | 4.04±0.70 |
|
21~30 (n=65) |
3.92±0.60 | 4.04±0.75 | 4.09±0.65 | 3.97±0.66 | 3.63±0.63 | 3.62±0.80 | 3.66±0.78 | 2.75±0.96 | 3.45±0.96 | 3.79±0.74 | 3.89±0.60 | 4.14±0.75 |
| professional | ||||||||||||
| School of Basic Medical Sciences (n=76 | 3.83±0.63 | 3.81±0.75* | 4.06±0.61 | 4.14±0.57** | 3.79±0.59 | 3.68±0.82 | 3.51±0.77 | 2.61±0.94 | 3.32±0.99 | 3.85±0.83 | 3.93±0.62** | 4.07±0.78 |
| School of Nursing (n=64) | 3.99±0.71 | 4.15±0.71* | 4.11±0.68 | 4.07±0.68** | 3.65±0.82 | 3.70±0.91 | 3.80±0.79 | 2.67±1.13 | 3.53±1.07 | 3.90±0.79 | 4.05±0.64** | 4.17±0.72 |
| Directly affiliated hospitals and teaching hospitals (n=17) | 3.82±0.54 | 4.22±0.50* | 3.99±0.53 | 3.92±0.57** | 3.84±0.50 | 3.57±0.75 | 3.61±0.71 | 2.63±0.90 | 3.41±0.64 | 3.94±0.71 | 3.88±0.39** | 4.12±0.67 |
| School of Pharmacy (n=20) | 3.73±0.60 | 3.73±0.63* | 3.74±0.72 | 3.58±0.72** | 3.35±0.80 | 3.45±1.00 | 3.87±0.69 | 3.02±0.84 | 3.83±0.67 | 3.82±0.80 | 3.45±0.58** | 3.73±0.64 |
|
Others (n=22) |
4.02±0.58 | 4.09±0.76* | 4.11±0.62 | 3.76±0.64** | 3.73±0.58 | 3.82±0.72 | 3.88±0.77 | 3.08±0.93 | 3.70±1.12 | 3.88±0.45 | 3.85±0.52** | 4.02±0.50 |
| usage frequency | ||||||||||||
| high frequency (n=110) | 4.03±0.64** | 4.14±0.69** | 4.16±0.65** | 4.11±0.65** | 3.80±0.70* | 3.80±0.87* | 3.76±0.79 | 2.74±1.05 | 3.51±1.07 | 4.03±0.79** | 4.04±0.59** | 4.28±0.69** |
| low frequency (n=89) | 3.72±0.61** | 3.78±0.73** | 3.90±0.61** | 3.86±0.64** | 3.57±0.67* | 3.51±0.80* | 3.60±0.74 | 2.70±0.94 | 3.46±0.88 | 3.67±0.69** | 3.73±0.60** | 3.81±0.67** |
| independent variable | B | Standard error | Beta | t | p | 95% CI | VIF |
|---|---|---|---|---|---|---|---|
| constant | -0.076 | 0.300 | - | -0.254 | 0.800 | -0.668 ~ 0.515 | - |
| individual factors | 0.180 | 0.068 | 0.161 | 2.658 | 0.009** | 0.046 ~ 0.313 | 1.687 |
| perceived ease of use | 0.099 | 0.067 | 0.100 | 1.471 | 0.143 | -0.034 ~ 0.232 | 2.136 |
| perceived usefulness | 0.266 | 0.082 | 0.238 | 3.234 | 0.001** | 0.104 ~ 0.428 | 2.499 |
| technical characteristics | 0.058 | 0.078 | 0.053 | 0.745 | 0.457 | -0.096 ~ 0.213 | 2.329 |
| task-technology fit | -0.021 | 0.063 | -0.020 | -0.333 | 0.740 | -0.146 ~ 0.104 | 1.731 |
| hedonic motivation | -0.078 | 0.050 | -0.092 | -1.559 | 0.121 | -0.177 ~ 0.021 | 1.615 |
| perceived risk | 0.103 | 0.055 | 0.111 | 1.867 | 0.063 | -0.031 ~ 0.182 | 1.638 |
| effort expectancy | -0.111 | 0.056 | -0.127 | -1.980 | 0.049* | -0.166 ~ -0.000 | 1.890 |
| technology anxiety | 0.028 | 0.047 | 0.039 | 0.605 | 0.546 | -0.064 ~ 0.120 | 1.902 |
| social influence | 0.101 | 0.064 | 0.108 | 1.591 | 0.113 | 0.098 ~ 0.305 | 2.117 |
| external variables | 0.401 | 0.109 | 0.317 | 3.682 | <0.0001** | 0.140 ~ 0.462 | 3.424 |
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