METHODOLOGIES IN PREDICTIVE ANALYSIS OF MEDICAL EDUCATION: A COMPREHENSIVE REVIEW
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Date
2024-07
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Era's Lucknow Medical College & Hospital, Lucknow in association with American University of Barbados (AUB)
Abstract
By utilizing a variety of statistical methods and machine learning algorithms to estimate student outcomes and improve instructional practices, predictive analytics is transforming the field of medical education. This thorough analysis examines the many approaches—such as statistical procedures, machine learning algorithms, data mining techniques, and instructional data mining approaches—that are used in predictive analytics in medical education. Fundamental tools in statistics include survival analysis and regression analysis. Exam results and pass/fail rates are two examples of continuous and binary outcomes that are predicted by linear and logistic regression models, respectively. For time-to-event data, survival analysis—which uses the Kaplan-Meier estimator and the Cox proportional hazards model-is essential for estimating dropout rates and graduation times. Predictive analytics has greatly evolved thanks to machine learning algorithms, which provide reliable models for complicated data. For forecasting student performance and detecting at-risk pupils, supervised learning methods such as decision trees, random forests, support vector machines, and neural networks are widely utilized. Unsupervised learning techniques that reveal hidden patterns and important variables impacting results include principal component analysis and clustering. Although less popular, reinforcement learning has potential for personalized, adaptive learning systems. To extract meaningful insights from massive datasets, data mining techniques like sequence analysis, text mining, and association rule mining are crucial. These techniques measure performance development, identify connections between student actions and academic results, and evaluate textual data—such as feedback—to forecast engagement and satisfaction. Learning analytics and educational data mining (EDM) are fields that concentrate on creating and using techniques to comprehend and enhance learning processes. Within EDM, predictive modeling projects student performance, while descriptive and prescriptive analytics offer analysis and suggestions for how to go better. In order to forecast group performance, social network analysis looks at relationships within educational networks. Applications of predictive analytics in medical education are vast. Predicting student performance and early identification of at-risk students enable targeted interventions. Predictive models also inform curriculum development by identifying effective components and areas needing enhancement. Personalized learning systems adapt content and resources to individual student needs, improving learning outcomes.However, the implementation of predictive analytics in medical education raises ethical considerations and challenges. Ensuring data privacy and compliance with regulations, mitigating biases in models, enhancing interpretability of complex algorithms, and integrating these tools into existing systems are critical issues that need addressing. In conclusion, predictive analytics offers transformative potential for medical education, enhancing student performance, retention, and curriculum effectiveness. Future research should focus on developing sophisticated models for deeper insights and establishing ethical frameworks to safeguard student privacy and promote fairness. Predictive analytics is expected to become more and more important in determining how medical education develops in the future as technology develops.
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Keywords
Predictive analysis, Medical education, Educational data mining, Learning analytics.
Citation
Beg Sheza Waqar . METHODOLOGIES IN PREDICTIVE ANALYSIS OF MEDICAL EDUCATION: A COMPREHENSIVE REVIEW. Era's Journal of Medical Research. 2024 Jul; 11(1): 56-59