ChatGPT in medical imaging higher education
Academic integrity among radiographers and nuclear medicine technologists/scientists in both higher education and scientific writing has been challenged by advances in artificial intelligence (AI). The recent release of ChatGPT, a chatbot powered by GPT-3.5 capable of producing accurate and human-li...
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| Published in | Radiography (London, England. 1995) Vol. 29; no. 4; pp. 792 - 799 |
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| Main Authors | , , , , , |
| Format | Journal Article |
| Language | English |
| Published |
Netherlands
Elsevier Ltd
01.07.2023
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| Subjects | |
| Online Access | Get full text |
| ISSN | 1078-8174 1532-2831 1532-2831 |
| DOI | 10.1016/j.radi.2023.05.011 |
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| Abstract | Academic integrity among radiographers and nuclear medicine technologists/scientists in both higher education and scientific writing has been challenged by advances in artificial intelligence (AI). The recent release of ChatGPT, a chatbot powered by GPT-3.5 capable of producing accurate and human-like responses to questions in real-time, has redefined the boundaries of academic and scientific writing. These boundaries require objective evaluation.
ChatGPT was tested against six subjects across the first three years of the medical radiation science undergraduate course for both exams (n = 6) and written assignment tasks (n = 3). ChatGPT submissions were marked against standardised rubrics and results compared to student cohorts. Submissions were also evaluated by Turnitin for similarity and AI scores.
ChatGPT powered by GPT-3.5 performed below the average student performance in all written tasks with an increasing disparity as subjects advanced. ChatGPT performed better than the average student in foundation or general subject examinations where shallow responses meet learning outcomes. For discipline specific subjects, ChatGPT lacked the depth, breadth, and currency of insight to provide pass level answers.
ChatGPT simultaneously poses a risk to academic integrity in writing and assessment while affording a tool for enhanced learning environments. These risks and benefits are likely to be restricted to learning outcomes of lower taxonomies. Both risks and benefits are likely to be constrained by higher order taxonomies.
ChatGPT powered by GPT3.5 has limited capacity to support student cheating, introduces errors and fabricated information, and is readily identified by software as AI generated. Lack of depth of insight and appropriateness for professional communication also limits capacity as a learning enhancement tool. |
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| AbstractList | Academic integrity among radiographers and nuclear medicine technologists/scientists in both higher education and scientific writing has been challenged by advances in artificial intelligence (AI). The recent release of ChatGPT, a chatbot powered by GPT-3.5 capable of producing accurate and human-like responses to questions in real-time, has redefined the boundaries of academic and scientific writing. These boundaries require objective evaluation.INTRODUCTIONAcademic integrity among radiographers and nuclear medicine technologists/scientists in both higher education and scientific writing has been challenged by advances in artificial intelligence (AI). The recent release of ChatGPT, a chatbot powered by GPT-3.5 capable of producing accurate and human-like responses to questions in real-time, has redefined the boundaries of academic and scientific writing. These boundaries require objective evaluation.ChatGPT was tested against six subjects across the first three years of the medical radiation science undergraduate course for both exams (n = 6) and written assignment tasks (n = 3). ChatGPT submissions were marked against standardised rubrics and results compared to student cohorts. Submissions were also evaluated by Turnitin for similarity and AI scores.METHODChatGPT was tested against six subjects across the first three years of the medical radiation science undergraduate course for both exams (n = 6) and written assignment tasks (n = 3). ChatGPT submissions were marked against standardised rubrics and results compared to student cohorts. Submissions were also evaluated by Turnitin for similarity and AI scores.ChatGPT powered by GPT-3.5 performed below the average student performance in all written tasks with an increasing disparity as subjects advanced. ChatGPT performed better than the average student in foundation or general subject examinations where shallow responses meet learning outcomes. For discipline specific subjects, ChatGPT lacked the depth, breadth, and currency of insight to provide pass level answers.RESULTSChatGPT powered by GPT-3.5 performed below the average student performance in all written tasks with an increasing disparity as subjects advanced. ChatGPT performed better than the average student in foundation or general subject examinations where shallow responses meet learning outcomes. For discipline specific subjects, ChatGPT lacked the depth, breadth, and currency of insight to provide pass level answers.ChatGPT simultaneously poses a risk to academic integrity in writing and assessment while affording a tool for enhanced learning environments. These risks and benefits are likely to be restricted to learning outcomes of lower taxonomies. Both risks and benefits are likely to be constrained by higher order taxonomies.CONCLUSIONChatGPT simultaneously poses a risk to academic integrity in writing and assessment while affording a tool for enhanced learning environments. These risks and benefits are likely to be restricted to learning outcomes of lower taxonomies. Both risks and benefits are likely to be constrained by higher order taxonomies.ChatGPT powered by GPT3.5 has limited capacity to support student cheating, introduces errors and fabricated information, and is readily identified by software as AI generated. Lack of depth of insight and appropriateness for professional communication also limits capacity as a learning enhancement tool.IMPLICATIONS FOR PRACTICEChatGPT powered by GPT3.5 has limited capacity to support student cheating, introduces errors and fabricated information, and is readily identified by software as AI generated. Lack of depth of insight and appropriateness for professional communication also limits capacity as a learning enhancement tool. Academic integrity among radiographers and nuclear medicine technologists/scientists in both higher education and scientific writing has been challenged by advances in artificial intelligence (AI). The recent release of ChatGPT, a chatbot powered by GPT-3.5 capable of producing accurate and human-like responses to questions in real-time, has redefined the boundaries of academic and scientific writing. These boundaries require objective evaluation. ChatGPT was tested against six subjects across the first three years of the medical radiation science undergraduate course for both exams (n = 6) and written assignment tasks (n = 3). ChatGPT submissions were marked against standardised rubrics and results compared to student cohorts. Submissions were also evaluated by Turnitin for similarity and AI scores. ChatGPT powered by GPT-3.5 performed below the average student performance in all written tasks with an increasing disparity as subjects advanced. ChatGPT performed better than the average student in foundation or general subject examinations where shallow responses meet learning outcomes. For discipline specific subjects, ChatGPT lacked the depth, breadth, and currency of insight to provide pass level answers. ChatGPT simultaneously poses a risk to academic integrity in writing and assessment while affording a tool for enhanced learning environments. These risks and benefits are likely to be restricted to learning outcomes of lower taxonomies. Both risks and benefits are likely to be constrained by higher order taxonomies. ChatGPT powered by GPT3.5 has limited capacity to support student cheating, introduces errors and fabricated information, and is readily identified by software as AI generated. Lack of depth of insight and appropriateness for professional communication also limits capacity as a learning enhancement tool. |
| Author | Al-Hayek, Y. Singh, C. Spuur, K. Nelson, T. Nabasenja, C. Currie, G. |
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| BackLink | https://www.ncbi.nlm.nih.gov/pubmed/37271011$$D View this record in MEDLINE/PubMed |
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| References | Falleur (bib3) 1990; 19 Choi, Hickman, Monahan, Schwarcz (bib6) 2023 Alkaissi, McFarlane (bib5) 2023; 15 Awdry, Ives (bib1) 2022; 8 Kung, Cheatham, Medenilla, Sillos, De leon, Elepario (bib4) 2023; 2 Stone (bib2) 2022; 28 Gravel, D'Amours-Gravel, Smanlliu (bib7) 2023 Falleur (10.1016/j.radi.2023.05.011_bib3) 1990; 19 Gravel (10.1016/j.radi.2023.05.011_bib7) 2023 Choi (10.1016/j.radi.2023.05.011_bib6) 2023 Alkaissi (10.1016/j.radi.2023.05.011_bib5) 2023; 15 Kung (10.1016/j.radi.2023.05.011_bib4) 2023; 2 Awdry (10.1016/j.radi.2023.05.011_bib1) 2022; 8 Stone (10.1016/j.radi.2023.05.011_bib2) 2022; 28 |
| References_xml | – year: 2023 ident: bib6 article-title: ChatGPT goes to law school. Minnesota legal studies research paper No. 23-03 – volume: 19 start-page: 313 year: 1990 end-page: 324 ident: bib3 article-title: An investigation of academic dishonesty in allied health: incidence and definitions publication-title: J Allied Health – volume: 15 year: 2023 ident: bib5 article-title: Artificial hallucinations in ChatGPT: implications in scientific writing publication-title: Cureus – volume: 8 start-page: 1 year: 2022 end-page: 20 ident: bib1 article-title: International predictors of contract cheating in higher education publication-title: J Acad Ethics – volume: 28 start-page: 1 year: 2022 end-page: 19 ident: bib2 article-title: Student perceptions of academic integrity: a qualitative study of understanding, consequences, and impact publication-title: J Acad Ethics – volume: 2 year: 2023 ident: bib4 article-title: Performance of ChatGPT on USMLE: potential for AI-assisted medical education using large language models publication-title: PLOS Digit Health – year: 2023 ident: bib7 article-title: Learning to fake it: limited responses and fabricated references provided by ChatGPT for medical questions publication-title: medRxiv – volume: 28 start-page: 1 year: 2022 ident: 10.1016/j.radi.2023.05.011_bib2 article-title: Student perceptions of academic integrity: a qualitative study of understanding, consequences, and impact publication-title: J Acad Ethics – volume: 2 issue: 2 year: 2023 ident: 10.1016/j.radi.2023.05.011_bib4 article-title: Performance of ChatGPT on USMLE: potential for AI-assisted medical education using large language models publication-title: PLOS Digit Health doi: 10.1371/journal.pdig.0000198 – volume: 15 issue: 2 year: 2023 ident: 10.1016/j.radi.2023.05.011_bib5 article-title: Artificial hallucinations in ChatGPT: implications in scientific writing publication-title: Cureus – volume: 8 start-page: 1 year: 2022 ident: 10.1016/j.radi.2023.05.011_bib1 article-title: International predictors of contract cheating in higher education publication-title: J Acad Ethics – year: 2023 ident: 10.1016/j.radi.2023.05.011_bib7 article-title: Learning to fake it: limited responses and fabricated references provided by ChatGPT for medical questions publication-title: medRxiv – volume: 19 start-page: 313 issue: 4 year: 1990 ident: 10.1016/j.radi.2023.05.011_bib3 article-title: An investigation of academic dishonesty in allied health: incidence and definitions publication-title: J Allied Health – year: 2023 ident: 10.1016/j.radi.2023.05.011_bib6 |
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| Title | ChatGPT in medical imaging higher education |
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