Predicting and Classifying the Perceptions of Learning Needs Importance in Cancer Patients; a Machine Learning Approach

Publish Year: 1403
نوع سند: مقاله ژورنالی
زبان: English
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JR_HEHP-12-4_014

تاریخ نمایه سازی: 14 بهمن 1403

Abstract:

Aims: Artificial intelligence (AI) and machine learning (ML) are revolutionizing healthcare by enhancing the prediction of learning needs and enabling tailored educational interventions for patients and staff. This study explores the application of AI and ML models to predict learning needs from the patient's perspective. Instruments & Methods: Three ML models (Linear Regression, Random Forest, and Gradient Boosting) were trained on health literacy, demographic, and treatment data from ۲۱۸ cancer patients at Sultan Qaboos Comprehensive Cancer Center. Evaluation metrics included Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), R۲ Score, and Area Under the Curve (AUC). Classification models (Random Forest, Gradient Boosting, Decision Tree, and Extra Trees) were assessed for accuracy, precision, recall, F۱-score, and AUC in categorizing learning needs. Findings: Gradient Boosting had the best predictive performance (MAE:۰.۰۵۳۴, RMSE: ۰.۰۷۸۸, R²:۰.۹۸۴۴, AUC:۰.۹۶), followed by Random Forest (AUC:۰.۹۳). Linear Regression was less effective (AUC: ۰.۸۵). Key predictors included literacy level in chemotherapy, hormonal therapy, and treatment experiences, while demographic factors had minimal impact. For classification, Gradient Boosting and Decision Tree models achieved the highest accuracy (۹۶.۵۱%) and AUC (۰.۹۶). Random Forest showed ۹۴.۱۹% accuracy, while Extra Trees had ۹۰.۷۰%, indicating variability in model performance. Conclusion: AI and ML, particularly Gradient Boosting, demonstrate strong potential in predicting and categorizing learning needs.

Authors

O. Ayaad

Quality and Accreditation Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

R. Ibrahim

Quality and Accreditation Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

Kh. AlBaimani

Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), Muscat, Oman

M.M. AlGhaithi

Quality and Accreditation Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

Z.G. Sawaya

Nursing Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

N.S. AlHasni

Nursing Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

H.S. AlAwaisi

Nursing Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

A.S. AlFahdi

Holistic Care Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

B. Al Faliti

Quality and Accreditation Department, Sultan Qaboos Comprehensive Cancer Care and Research Centre (SQCCCRC), University Medical City, Muscat, Oman

B.M. Salman

Pharmacy Department, National Hematology and Bone Marrow Transplant Center, University Medical City, Muscat, Oman