| Literature DB >> 36248622 |
Sarya Swed1, Hidar Alibrahim1, Nashaat Kamal Hamdy Elkalagi2, Mohamad Nour Nasif1, Mohammed Amir Rais3, Abdulqadir J Nashwan4, Ahmed Aljabali5, Mohamed Elsayed6,7, Bisher Sawaf8, Mhd Kutaiba Albuni8, Elias Battikh8, Leena Abdelwahab Mohamed Elsharif9, Safaa Mohamed Alsharief Ahmed10, Eman Mohammed Sharif Ahmed11, Zain Alabdeen Othman12, Ahmad Alsaleh13, Sheikh Shoib14,15.
Abstract
Artificial intelligence has been prevalent recently as its use in the medical field is noticed to be increased. However, middle east countries like Syria are deficient in multiple AI implementation methods in the field of medicine. So, holding these AI implementation methods in the medical field is necessary, which may be incredibly beneficial for making diagnosis more accessible and help in the treatment. This paper intends to determine AI's knowledge, attitude, and practice among doctors and medical students in Syria. A questionnaire conducted an online cross-sectional study on the google form website consisting of demographic data, knowledge, and perception of AI. There were 1,494 responses from both doctors and medical students. We included Syrian medical students and doctors who are currently residing in Syria. Of the 1,494 participants, 255 (16.9%) are doctors, while the other 1,252 (83.1%) are undergraduate medical students. About 1,055 (70%) participants have previous knowledge about AI. However, only 357 (23.7%) participants know about its application in the medical field. Most have shown positive attitudes toward its necessity in the medical field; 689 (45.7%) individuals strongly agree, and 628 (41.7%) agree. The undergraduate students had 3.327 times more adequate knowledge of AI than students in the first year. In contrast, the undergraduate 6th-year students had 2.868 times the attitude toward AI higher than students in the first year. The residents and assistant professors had 2.371 and 4.422 times the practice of AI higher than students, respectively. Although most physicians and medical students do not sufficiently understand AI and its significance in the medical field, they have favorable views regarding using AI in the medical field. Syrian medical authorities and international organizations should suggest including artificial intelligence in the medical field, particularly when training residents and fellowship physicians.Entities:
Keywords: Syria; artificial intelligence; attitude; doctor; knowledge; medical student; practice
Year: 2022 PMID: 36248622 PMCID: PMC9558737 DOI: 10.3389/frai.2022.1011524
Source DB: PubMed Journal: Front Artif Intell ISSN: 2624-8212
Baseline characteristics of the study population.
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|---|---|---|---|
| Age | 21–30 | 1,452 | 97.2% |
| 31–40 | 25 | 1.7% | |
| 41–50 | 4 | 0.3% | |
| 51–60 | 8 | 0.5% | |
| 60< | 5 | 0.3% | |
| Gender | Males | 779 | 52.0% |
| Females | 718 | 48.0% | |
| Qualification level | Undergraduate | 1,252 | 83.1% |
| Graduate | 255 | 16.9% | |
| If undergraduate, then which university year? | First-year | 126 | 8.4% |
| Second year | 114 | 7.6% | |
| third year | 145 | 9.6% | |
| fourth year | 82 | 5.4% | |
| fifth year | 286 | 19.0% | |
| sixth year | 476 | 31.6% | |
| Graduate | 278 | 18.4% | |
| If graduate, then current status | Student | 1,277 | 84.7% |
| Resident | 182 | 12.1% | |
| Medical practitioner | 24 | 1.6% | |
| Senior house officer | 7 | 0.5% | |
| House officer | 17 | 1.1% | |
| If postgraduate, specify the rank: | Student | 1,284 | 85.2% |
| Resident | 193 | 12.8% | |
| Senior registrar | 12 | 9.8% | |
| Assistant professor | 12 | 9.8% | |
| Associate professor | 1 | 9.1% | |
| Professor | 5 | 9.3% |
Descriptive statistics for knowledge of artificial intelligence.
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|---|---|---|---|
| Do you know what artificial intelligence is? | No | 452 | 30.0% |
| Yes | 1,055 | 70.0% | |
| Do you know about machine learning and deep learning (subtypes of AI)? | No | 984 | 65.3% |
| Yes | 523 | 34.7% | |
| Do you know about any application of AI in the medical field? | No | 1,150 | 76.3% |
| Yes | 357 | 23.7% | |
| Have you ever been taught about Artificial intelligence in medical school? | No | 1,345 | 89.3% |
| Yes | 162 | 10.7% | |
| Do you know about the application of AI in radiology? | No | 1,187 | 78.8% |
| Yes | 320 | 21.2% | |
| Do you know about the application of AI in the pathology field? | No | 1,246 | 82.7% |
| Yes | 261 | 17.3% | |
| If you are a PGR, does your training include a curriculum regarding AI? | No | 1,441 | 95.6% |
| Yes | 66 | 4.4% |
P-value < 0.05.
Knowledge, attitude and practice score of AI in medical students and doctors.
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| Knowledge of artificial intelligence | Male | 1.6508 | 1.77494 | 0.000 |
| Female | 2.0195 | 1.87166 | ||
| Total | 1.8277 | 1.83065 | ||
| Practice of AI | Male | 1.9114 | 1.00697 | 0.968 |
| Female | 1.9136 | 1.11828 | ||
| Total | 1.9125 | 1.06146 | ||
| Attitude toward AI | Male | 6.2169 | 2.08259 | 0.001 |
| Female | 5.8607 | 2.22640 | ||
| Total | 6.0461 | 2.15939 | ||
| Qualification level | ||||
| Knowledge of artificial intelligence | Undergraduate | 1.7093 | 1.72909 | 0.000 |
| Graduate | 2.3686 | 2.18743 | ||
| Total | 1.8208 | 1.83076 | ||
| Practice of AI | Undergraduate | 1.8147 | 0.91833 | 0.000 |
| Graduate | 2.3725 | 1.50014 | ||
| Total | 1.9091 | 1.06013 | ||
| Attitude toward AI | Undergraduate | 6.1134 | 2.12929 | 0.003 |
| Graduate | 5.6784 | 2.28452 | ||
| Total | 6.0398 | 2.16172 | ||
| Age | ||||
| Knowledge of artificial intelligence | 21–30 | 1.8079 | 1.81528 | 0.297 |
| 31–40 | 2.3600 | 2.32522 | ||
| 41–50 | 3.0000 | 2.70801 | ||
| 51–60 | 2.3750 | 2.26385 | ||
| 60< | 1.4000 | 1.51658 | ||
| Total | 1.8220 | 1.82904 | ||
| Practice of AI | 21–30 | 1.9001 | 1.02838 | 0.004 |
| 31–40 | 2.4800 | 1.78232 | ||
| 41–50 | 2.5000 | 2.08167 | ||
| 51–60 | 2.3750 | 2.26385 | ||
| 60< | 0.8000 | 0.83666 | ||
| Total | 1.9103 | 1.06077 | ||
| Attitude toward AI | 21–30 | 6.0861 | 2.13407 | 0.000 |
| 31–40 | 5.0800 | 2.39653 | ||
| 41–50 | 4.2500 | 3.40343 | ||
| 51–60 | 4.3750 | 2.44584 | ||
| 60< | 3.4000 | 3.20936 | ||
| Total | 6.0462 | 2.15908 |
Knowledge of AI based on gender, age, qualification level, professional, current status and rank of the doctors.
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| Age | 21–30 | 1,218 | 80.8% | 234 | 15.5% | 0.519 |
| 31–40 | 18 | 1.2% | 7 | 0.5% | ||
| 41–50 | 3 | 0.2% | 1 | 0.1% | ||
| 51–60 | 6 | 0.4% | 2 | 0.1% | ||
| 60< | 4 | 0.3% | 1 | 0.1% | ||
| Gender | Male | 661 | 43.9% | 118 | 7.8% | 0.142 |
| Female | 589 | 39.1% | 129 | 8.6% | ||
| Qualification level | Undergraduate | 1,069 | 70.5% | 183 | 12.1% |
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| Graduate | 190 | 12.9% | 65 | 4.4% | ||
| If undergraduate, then which professional? | 1st professional | 112 | 7.4% | 14 | 0.9% |
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| 2nd professional | 96 | 6.4% | 18 | 1.2% | ||
| 3rd professional | 130 | 8.6% | 15 | 1% | ||
| 4th professional | 59 | 3.9% | 23 | 1.5% | ||
| 5th professional | 230 | 15.3% | 56 | 3.7% | ||
| 6th professional | 422 | 28.0% | 54 | 3.6% | ||
| Graduate | 210 | 13.9% | 68 | 4.5% | ||
| If graduate, then current status | Student | 1,089 | 72.3% | 188 | 12.5% | 0.000279 |
| Resident | 138 | 9.2% | 44 | 2.9% | ||
| Medical practitioner | 16 | 1.1% | 8 | 0.5% | ||
| Senior house officer | 4 | 0.8% | 5 | 0.3% | ||
| House officer | 12 | 0.3% | 3 | 0.2% | ||
| If postgraduate, specify the rank: | Student | 1,096 | 72.7% | 188 | 12.5% | 0.000002 |
| Resident | 146 | 9.7% | 47 | 3.1% | ||
| Senior registrar | 9 | 0.6% | 3 | 0.2% | ||
| Assistant professor | 7 | 0.5% | 5 | 0.3% | ||
| Associate professor | 0 | 0.0% | 1 | 0.1% | ||
| Professor | 1 | 0.1% | 4 | 0.3% | ||
P-value < 0.05.
Binary logistic regression between baseline characteristics of the study population and the knowledge of artificial intelligence.
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|---|---|---|---|---|---|
| Age | 21–30 | 0.997 | Reference | ||
| 31–40 | 0.830 | 1.125 | 0.830 | 1.125 | |
| 41–50 | 0.999 | 0.000 | 0.999 | 0.000 | |
| 51–60 | 0.722 | 1.373 | 0.722 | 1.373 | |
| 60< | 0.891 | 1.174 | 0.891 | 1.174 | |
| Level of education | undergraduate | Reference | |||
| graduate | 0.276 | 2.366 | 0.503 | 11.129 | |
| Gender | Male | Reference | |||
| Female | 0.256 | 1.182 | 0.886 | 1.576 | |
| If undergraduate, then which professional? | 1st professional | 0.001 | Reference | ||
| 2nd professional | 0.299 | 1.508 | 0.299 | 1.508 | |
| 3rd professional | 0.978 | 0.989 | 0.978 | 0.989 | |
| 4th professional | 0.002 | 3.327 | 0.002 | 3.327 | |
| 5th professional | 0.025 | 2.092 | 0.025 | 2.092 | |
| 6th professional | 0.673 | 1.150 | 0.673 | 1.150 | |
| Graduate | 0.692 | 0.724 | 0.692 | 0.724 | |
| If postgraduate, specify the rank | Student | 0.569 | Reference | ||
| Resident | 0.231 | 1.639 | 0.231 | 1.639 | |
| Senior registrar | 0.528 | 1.652 | 0.528 | 1.652 | |
| Assistant professor | 0.053 | 3.784 | 0.053 | 3.784 | |
| Associate Professor | 1.000 | - | - | - | |
| Professor | 0.221 | 5.251 | 0.370 | 74.602 | |
| Constant | 0.000 | 0.107 |
The logistic regression model was statistically significant, X2 (7) = 58.33, p-value = 0.000, Hosmer and lemeshow test: 15.73(P-value = 0.028), The model explained 0.065 Nagelkerke R Square of the variance in knowledge of artificial intelligence among doctors and medical students in Syria.
Descriptive statistics for attitude toward artificial intelligence.
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| Do you believe AI is essential in the medical field? | agree | 628 | 41.7% |
| strongly agree | 689 | 45.7% | |
| Don't Know | 151 | 10.0% | |
| disagree | 33 | 2.2% | |
| strongly disagree | 6 | 0.4% | |
| Do you think AI should be included in the curriculum in medical school as well as specialist training? | agree | 680 | 45.1% |
| strongly agree | 606 | 40.2% | |
| Don't Know | 128 | 8.5% | |
| disagree | 76 | 5.0% | |
| strongly disagree | 17 | 1.1% | |
| Do you think that AI aids practitioners in early diagnosis and assessment of the severity of disease? | agree | 690 | 45.8% |
| strongly agree | 558 | 37.0% | |
| Don't Know | 186 | 12.3% | |
| disagree | 60 | 4.0% | |
| strongly disagree | 13 | 0.9% | |
| Do you believe that AI will replace physicians in the future? | agree | 197 | 13.1% |
| strongly agree | 127 | 8.4% | |
| Don't Know | 327 | 21.7% | |
| disagree | 551 | 36.6% | |
| strongly disagree | 305 | 20.2% | |
| Do you believe AI is very essential in the field of radiology? | agree | 660 | 43.8% |
| strongly agree | 445 | 29.5% | |
| Don't Know | 342 | 22.7% | |
| disagree | 51 | 3.4% | |
| strongly disagree | 9 | 0.6% | |
| Do You believe AI is essential in the field of Pathology? | agree | 711 | 47.2% |
| strongly agree | 396 | 26.3% | |
| Don't Know | 343 | 22.8% | |
| disagree | 52 | 3.5% | |
| strongly disagree | 5 | 0.3% | |
| Do you think the introduction of AI is essential in the current COVID 19 pandemic? | agree | 661 | 43.9% |
| strongly agree | 365 | 24.2% | |
| Don't Know | 376 | 25.0% | |
| disagree | 87 | 5.8% | |
| strongly disagree | 18 | 1.2% | |
| Do you believe AI would be a burden for practitioners? | agree | 154 | 10.2% |
| strongly agree | 114 | 7.6% | |
| Don't Know | 387 | 25.7% | |
| disagree | 684 | 45.4% | |
| strongly disagree | 168 | 11.1% | |
| Do you believe the budget should be allocated for AI to be used in the current COVID 19 pandemics? | agree | 648 | 43.0% |
| strongly agree | 366 | 24.3% | |
| Don't Know | 328 | 21.8% | |
| disagree | 141 | 9.4% | |
| strongly disagree | 24 | 1.6% | |
| Do you believe AI would increase the percentage of errors in diagnosis? | agree | 273 | 18.1% |
| strongly agree | 134 | 8.9% | |
| Don't Know | 488 | 32.4% | |
| disagree | 496 | 32.9% | |
| strongly disagree | 116 | 7.7% |
Attitude toward AI based on gender, age, qualification level, professional, current status and rank of the doctor.
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| Age | 21–30 | 445 | 29.5% | 1,007 | 66.8% |
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| 31–40 | 13 | 0.9% | 12 | 0.8% | ||
| 41–50 | 2 | 0.1% | 2 | 0.1% | ||
| 51–60 | 4 | 0.3% | 4 | 0.3% | ||
| 60< | 4 | 0.3% | 1 | 0.1% | ||
| Gender | Male | 215 | 14.3% | 564 | 37.4% |
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| Female | 255 | 16.9% | 463 | 30.7% | ||
| Qualification level | Undergraduate | 383 | 25.3% | 869 | 57.3% | 0.086 |
| Graduate | 92 | 6.2% | 163 | 11.2% | ||
| If undergraduate, then which professional? | 1st professional | 49 | 3.3% | 77 | 5.1% |
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| 2nd professional | 49 | 3.3% | 65 | 4.3% | ||
| 3rd professional | 66 | 4.4% | 79 | 5.2% | ||
| 4th professional | 37 | 2.5% | 45 | 3% | ||
| 5th professional | 98 | 6.5% | 188 | 12.5% | ||
| 6th professional | 78 | 5.2% | 398 | 26.4% | ||
| Graduate | 98 | 6.5% | 180 | 11.9% | ||
| If graduate, then current status | Student | 401 | 26.6% | 876 | 58.1% | 0.912 |
| Resident | 56 | 3.7% | 126 | 8.4% | ||
| Medical practitioner | 9 | 0.6% | 15 | 1.0% | ||
| Senior house officer | 6 | 0.4% | 11 | 0.7% | ||
| House officer | 3 | 0.2% | 4 | 0.3% | ||
| If postgraduate, specify the rank: | Student | 403 | 26.7% | 881 | 58.5% | 0.659 |
| Resident | 60 | 4.0% | 133 | 8.8% | ||
| Senior registrar | 5 | 0.3% | 7 | 0.5% | ||
| Assistant professor | 6 | 0.4% | 6 | 0.4% | ||
| Associate professor | 0 | 0.0% | 1 | 0.1% | ||
| Professor | 1 | 0.1% | 4 | 0.3% | ||
P-value < 0.05.
Binary logistic regression between baseline characteristics of the study population and the attitude toward artificial intelligence.
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| Age | 21–30 | 0.173 | Reference | ||
| 31–40 | 0.073 | 0.429 | 0.073 | 0.429 | |
| 41–50 | 0.344 | 0.288 | 0.344 | 0.288 | |
| 51–60 | 0.440 | 0.553 | 0.440 | 0.553 | |
| 60< | 0.085 | 0.138 | 0.085 | 0.138 | |
| Level of education | undergraduate | Reference | |||
| graduate | 0.458 | 0.669 | 0.232 | 1.931 | |
| Gender | Male | Reference | |||
| Female | 0.128 | 0.835 | 0.661 | 1.053 | |
| If undergraduate, then which professional? | 1st professional | 0.000 | Reference | ||
| 2nd professional | 0.379 | 0.789 | 0.379 | 0.789 | |
| 3rd professional | 0.175 | 0.710 | 0.175 | 0.710 | |
| 4th professional | 0.224 | 0.701 | 0.224 | 0.701 | |
| 5th professional | 0.657 | 1.106 | 0.657 | 1.106 | |
| 6th professional | 0.000 | 2.868 | 0.000 | 2.868 | |
| Graduate | 0.548 | 1.370 | 0.548 | 1.370 | |
| If Postgraduate, specify the rank | Student | 0.584 | |||
| Resident | 0.263 | 1.458 | 0.263 | 1.458 | |
| Senior registrar | 0.625 | 1.401 | 0.625 | 1.401 | |
| Assistant professor | 0.577 | 0.697 | 0.577 | 0.697 | |
| Associate Professor | 1.000 | - | - | - | |
| Professor | 0.221 | 5.251 | 0.370 | 74.602 | |
| Constant | 0.002 | 1.894 |
The logistic regression model was statistically significant, X2(17) = 102.32, p-value = 0.000, Hosmer and lemeshow test: 5.75(P-value = 0.57). The model explained 0.094 Nagelkerke R Square of the variance in the Attitude toward artificial intelligence among doctors and medical students in Syria.
Descriptive statistics for practice of artificial intelligence.
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| Have you ever applied AI technology in any field? | No | 1,346 | 89.3% |
| Yes | 161 | 10.7% | |
| Was it easy for you to apply AI? | No | 52 | 3.5% |
| never applied | 1,360 | 90.2% | |
| Yes | 95 | 6.3% | |
| Did AI make your task easy? | No | 25 | 1.7% |
| never applied | 1,352 | 89.7% | |
| Yes | 130 | 8.6% | |
| Do you think physician role is important in application and evaluation of AI in the medical field? | agree | 699 | 46.4% |
| strongly agree | 531 | 35.2% | |
| Don't Know | 239 | 15.9% | |
| disagree | 25 | 1.7% | |
| strongly disagree | 13 | 0.9% | |
| Would you like to work on AI in future? | No | 49 | 3.3% |
| Don't know | 274 | 18.2% | |
| Yes | 1,184 | 78.6% |
Practice of AI based on gender, age, qualification level, professional, current status and rank of the doctors.
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| Age | 21–30 | 1,245 | 82.6% | 207 | 13.7% |
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| 31–40 | 16 | 1.1% | 9 | 0.6% | ||
| 41–50 | 2 | 0.1% | 2 | 0.1% | ||
| 51–60 | 5 | 0.3% | 3 | 0.2% | ||
| 60< | 5 | 0.3% | 0 | 0.0% | ||
| Gender | Male | 676 | 44.9% | 103 | 6.8% | 0.058 |
| Female | 598 | 39.7% | 120 | 8.0% | ||
| Qualification level | Undergraduate | 1,102 | 72.8% | 150 | 9.8% |
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| Graduate | 182 | 12.5% | 73 | 5.1% | ||
| If undergraduate, then which professional? | 1st professional | 113 | 7.5% | 13 | 0.9% |
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| 2nd professional | 98 | 6.5% | 16 | 1.1% | ||
| 3rd professional | 129 | 8.6% | 16 | 1.1% | ||
| 4th professional | 70 | 4.6% | 12 | 0.8% | ||
| 5th professional | 243 | 16.1% | 43 | 2.9% | ||
| 6th professional | 431 | 28.6% | 45 | 3% | ||
| Graduate | 200 | 13.3% | 78 | 5.2% | ||
| If graduate, then current status | Student | 1,125 | 74.7% | 152 | 10.1% |
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| Resident | 132 | 8.8% | 50 | 3.3% | ||
| Medical practitioner | 13 | 0.9% | 11 | 0.7% | ||
| Senior house officer | 10 | 0.7% | 7 | 0.5% | ||
| House officer | 4 | 0.3% | 3 | 0.2% | ||
| If postgraduate, specify the rank: | Student | 1,132 | 75.1% | 152 | 10.1% |
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| Resident | 138 | 9.2% | 55 | 3.6% | ||
| Senior registrar | 7 | 0.5% | 5 | 0.3% | ||
| Assistant professor | 7 | 0.5% | 5 | 0.3% | ||
| Associate professor | 0 | 0.0% | 1 | 0.1% | ||
| Professor | 0 | 0.0% | 5 | 0.3% | ||
P-value < 0.05.
Binary logistic regression between baseline characteristics of the study population and the Practice of artificial intelligence.
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| Age | 21–30 | 0.845 | Reference | ||
| 31–40 | 0.453 | 1.476 | 0.534 | 4.079 | |
| 41–50 | 0.999 | 0.000 | 0.000 | . | |
| 51–60 | 0.300 | 2.349 | 0.467 | 11.817 | |
| 60< | 0.999 | 0.000 | 0.000 | . | |
| Level of education | undergraduate | Reference | |||
| graduate | 0.939 | 1.048 | 0.311 | 3.530 | |
| Gender | Male | Reference | |||
| Female | 0.076 | 1.317 | 0.971 | 1.786 | |
| If undergraduate then which professional? | 1st professional | 0.400 | Reference | ||
| 2nd professional | 0.223 | 1.663 | 0.733 | 3.773 | |
| 3rd professional | 0.538 | 1.291 | 0.573 | 2.906 | |
| 4th professional | 0.199 | 1.773 | 0.739 | 4.251 | |
| 5th professional | 0.088 | 1.844 | 0.913 | 3.723 | |
| 6th professional | 0.664 | 1.168 | 0.580 | 2.352 | |
| Graduate | 0.443 | 1.671 | 0.451 | 6.195 | |
| If post graduate, specify the rank | Student | 0.230 | Reference | ||
| Resident | 0.036 | 2.371 | 1.058 | 5.314 | |
| Senior registrar | 0.097 | 3.289 | 0.805 | 13.441 | |
| Assistant professor | 0.032 | 4.422 | 1.141 | 17.142 | |
| Associate professor | 1.000 | - | - | - | |
| Professor | 0.999 | - | - | - | |
| Constant | 0.000 | 0.082 |
The logistic regression model was statistically significant, X2 (17) = 81.25, p-value = 0.000, Hosmer and lemeshow test: 18.06 (P-value = 0.012). The model explained 0.094 Nagelkerke R Square of the variance in the Practice of artificial intelligence among doctors and medical students in Syria.