Litcius/Paper detail

Hybrid Random Feature Selection and Recurrent Neural Network for Diabetes Prediction

Oyebayo Ridwan Olaniran, Aliu Omotayo Sikiru, Jeza Allohibi, Abdulmajeed Atiah Alharbi, Nada MohammedSaeed Alharbi

2025Mathematics15 citationsDOIOpen Access PDF

Abstract

This paper proposes a novel two-stage ensemble framework combining Long Short-Term Memory (LSTM) and Bidirectional LSTM (BiLSTM) with randomized feature selection to enhance diabetes prediction accuracy and calibration. The method first trains multiple LSTM/BiLSTM base models on dynamically sampled feature subsets to promote diversity, followed by a meta-learner that integrates predictions into a final robust output. A systematic simulation study conducted reveals that feature selection proportion critically impacts generalization: mid-range values (0.5–0.8 for LSTM; 0.6–0.8 for BiLSTM) optimize performance, while values close to 1 induce overfitting. Furthermore, real-life data evaluation on three benchmark datasets—Pima Indian Diabetes, Diabetic Retinopathy Debrecen, and Early Stage Diabetes Risk Prediction—revealed that the framework achieves state-of-the-art results, surpassing conventional (random forest, support vector machine) and recent hybrid frameworks with an accuracy of up to 100%, AUC of 99.1–100%, and superior calibration (Brier score: 0.006–0.023). Notably, the BiLSTM variant consistently outperforms unidirectional LSTM in the proposed framework, particularly in sensitivity (98.4% vs. 97.0% on retinopathy data), highlighting its strength in capturing temporal dependencies.

Topics & Concepts

OverfittingRandom forestComputer scienceFeature selectionArtificial intelligenceMachine learningBenchmark (surveying)Feature (linguistics)Artificial neural networkBrier scoreSelection (genetic algorithm)Support vector machinePattern recognition (psychology)LinguisticsPhilosophyGeodesyGeographyArtificial Intelligence in HealthcareMachine Learning in HealthcareRetinal Imaging and Analysis