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Deep learning based thyroid prediction with opposition learning based red panda optimization feature selection.

K Hema Priya1, K Valarmathi2

  • 1Department of Computer Science and Design, Easwari Engineering College, Chennai, 600089, Tamil Nadu, India. hemapriyaauphd@gmail.com.

Scientific Reports
|December 16, 2025
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Summary
This summary is machine-generated.

This study presents a new thyroid prediction method using an Enhanced Transformer Model and an Opposition Learning-based Red Panda Optimization (OL_RPO) algorithm for accurate feature selection and robust predictions.

Keywords:
Deep learningOpposition learningOptimizationRed panda optimizationThyroid prediction

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Area of Science:

  • Medical Informatics
  • Artificial Intelligence in Healthcare
  • Biomedical Data Analysis

Background:

  • Thyroid disease prediction requires accurate and robust models.
  • Existing methods may suffer from biased outcomes and suboptimal feature extraction.
  • Publicly available datasets offer potential for developing advanced predictive tools.

Purpose of the Study:

  • To introduce a novel, cascaded autoencoder-based recurrent model for thyroid prediction.
  • To develop an Opposition Learning-based Red Panda Optimization (OL_RPO) algorithm for optimal feature selection.
  • To enhance thyroid prediction accuracy and robustness using an Enhanced Transformer Model.

Main Methods:

  • Preprocessing three public datasets for standardization and balance.
  • Utilizing a cascaded autoencoder-simple recurrent model for spatio-temporal feature extraction.
  • Employing the OL_RPO algorithm for optimal feature selection.
  • Performing thyroid prediction with an Enhanced Transformer Model.

Main Results:

  • The proposed model achieved high performance metrics: Accuracy (99%), Specificity (99.2%), Sensitivity (99.01%), F-Score (98.501%), PPV (98.1%), and NPV (1.9%).
  • A very low error rate of 0.07689 was recorded.
  • The OL_RPO algorithm effectively enhanced predictive model efficiency.

Conclusions:

  • The novel approach demonstrates significant potential for accurate and robust thyroid prediction.
  • The integration of advanced AI models and optimization algorithms offers a promising direction for medical diagnostics.
  • The proposed method provides a standardized and balanced approach to thyroid prediction using public data.