A BILSTM MODEL ENHANCED WITH MULTI-OBJECTIVE ARITHMETIC OPTIMIZATION FOR COVID-19 DIAGNOSIS FROM CT IMAGES

A BiLSTM model enhanced with multi-objective arithmetic optimization for COVID-19 diagnosis from CT images

A BiLSTM model enhanced with multi-objective arithmetic optimization for COVID-19 diagnosis from CT images

Blog Article

Abstract In response to the relentless mutation of the coronavirus disease, current artificial intelligence algorithms for the automated diagnosis read more of COVID-19 via CT imaging exhibit suboptimal accuracy and efficiency.This manuscript proposes a multi-objective optimization algorithm (MOAOA) to enhance the BiLSTM model for COVID-19 automated diagnosis.The proposed approach involves configuring several hyperparameters for the bidirectional long short-term memory (BiLSTM), optimized using the MOAOA intelligent optimization algorithm, and subsequently validated on publicly accessible medical read more datasets.Remarkably, our model achieves an impressive 95.32% accuracy and 95.

09% specificity.Comparative analysis with state-of-the-art techniques demonstrates that the proposed model significantly enhances accuracy, efficiency, and other performance metrics, yielding superior results.

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