2020
DOI: 10.1007/978-3-030-59137-3_13
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AI Medical School Tutor: Modelling and Implementation

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Cited by 6 publications
(7 citation statements)
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“…In addition, the tutoring system should not merely be a knowledge-transfer system, but one designed on current educational principles such as cased-based, problem-based, and complex scenario-based gamification that can move beyond managing a patient with a single condition under contextless circumstances. Interaction with the student can utilise Natural Language Processing (NLP) ( Chary et al , 2019 ), and these systems can then present flexible and realistic virtual patients, constructed by AI, based upon real patient records ( Wijayarathna and Zary, 2019 ; Afzal et al , 2020 ), requiring critical thinking and clinical reasoning, and adjusting the levels of complexity to better suit the level at which the student is expected to perform. One can then have effective virtual (or even robotic) patient case simulation for general use ( Hayasaka, Fujikura and Kashimura, 2018 ; Laleye et al , 2020 ) or within specific environments, such as single or multi-centre PBL ( Caudell et al , 2003 ; Hamdy et al , 2017 ).…”
Section: Administration and Methodologymentioning
confidence: 99%
“…In addition, the tutoring system should not merely be a knowledge-transfer system, but one designed on current educational principles such as cased-based, problem-based, and complex scenario-based gamification that can move beyond managing a patient with a single condition under contextless circumstances. Interaction with the student can utilise Natural Language Processing (NLP) ( Chary et al , 2019 ), and these systems can then present flexible and realistic virtual patients, constructed by AI, based upon real patient records ( Wijayarathna and Zary, 2019 ; Afzal et al , 2020 ), requiring critical thinking and clinical reasoning, and adjusting the levels of complexity to better suit the level at which the student is expected to perform. One can then have effective virtual (or even robotic) patient case simulation for general use ( Hayasaka, Fujikura and Kashimura, 2018 ; Laleye et al , 2020 ) or within specific environments, such as single or multi-centre PBL ( Caudell et al , 2003 ; Hamdy et al , 2017 ).…”
Section: Administration and Methodologymentioning
confidence: 99%
“…Furthermore, through adequate metrics obtained from the analyses of the user's logged actions, VPSs may generate a multidimensional representation of the students' medical competence, thus providing teachers with potentially valuable didactical information [9][10][11][12][13]. VPSs may include the use of natural language processing (NLP) techniques to better mimic physician-patient interactions and facilitate the use of these techniques by medical school students [13][14][15].…”
Section: Introductionmentioning
confidence: 99%
“…In many VPSs, metrics are set up to merely assess sectorial aspects of the overall patient's diagnostic management, such as history taking [14] or clinical examination [13], whereas, in other VPSs, crucial diagnostic activities such as conducting a physical examination and ordering medical tests are not considered [15]. Therefore, many VPSs and their relative metrics aim to address specific didactical items rather than embracing the overall clinical diagnostic approach.…”
Section: Introductionmentioning
confidence: 99%
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“…ITS technologies can be adapted to students' specific learning needs, thus potentially increasing the simulator's teaching effectiveness [15][16][17]. Natural language processing (NLP) may complement and support medical education techniques [18], particularly where the diagnostic reasoning aspect is concerned [15,[19][20][21][22]. Notably, the combined use of NLP and ITS technologies in the simulation of virtual patients might promote students' learning by making the student-software interaction more similar to a real-life scenario, while simultaneously giving the student appropriate feedback after every simulated medical activity.…”
Section: Introductionmentioning
confidence: 99%