Title of article :
Analyzing Patterns in Anesthesiology Residents Exam Performance Using Data Mining Techniques
Author/Authors :
Karimian ، Maedeh Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Rahmatizadeh ، Shahabedin Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Kohzadi ، Zeinab Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Kohzadi ، Zahra Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Madadi ، Firoozeh Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Dabbagh ، Ali Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences , Department of Anesthesiology, Critical Care and Pain Medicine ، DACCPM Department of Anesthesiology - Anesthesiology Research Center, School of Medicine - Shahid Beheshti University of Medical Sciences
From page :
1
To page :
10
Abstract :
Background: Residency is a critical period in the development of medical professionals. It provides hands-on training and exposure to various medical specialties, enabling residents to improve their skills and achieve expertise in their chosen field. Objectives: This study aimed to extract frequent patterns in annual and board examination performance among anesthesiology residents by analyzing results from the department s weekly exams. Methods: This cross-sectional study was conducted in the Department of Anesthesiology, Critical Care, and Pain Medicine (DACCPM) from September 2022 to June 2023. Weekly intra-group exams were administered at the university s electronic exam center for residents in their first to fourth years (CA-1 to CA-4), with a total of 61 participants. Learner grades were categorized as excellent (A), good (B), average (C), poor (D), and inferior (E). The Apriori algorithm was employed to extract frequently repeated patterns in these exams and compare them with results from the final national examination. Results: A total of 24 exams were conducted, with all 61 residents participating. The most frequent patterns, identified with a minimum support of 0.41, revealed that residents generally achieved average scores in exam 7 and very poor scores in exams 1 and 5. The study found a statistically significant relationship between residents’ scores in in-training examinations (ITEs) and their national examination performance. Conclusions: Analyzing residents’ exam performance using frequent pattern recognition can help identify their strengths and weaknesses. Faculty members can utilize these insights to better plan curricula and enhance the quality of education.
Keywords :
Educational Measurement , Artificial Intelligence , Anesthesiology , Internship and Residency , Apriori Algorithm , Data Mining , Education , Medical
Journal title :
Anesthesiology and Pain Medicine
Journal title :
Anesthesiology and Pain Medicine
Record number :
2775670
Link To Document :
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