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Proof-of-Concept Machine Learning Framework for Arboviral Disease Classification Using Literature-Derived Synthetic

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Summary
This summary is machine-generated.

This study demonstrates that synthetic data can train machine learning models for diagnosing arboviral diseases like Dengue, Zika, and Chikungunya, overcoming data scarcity for early detection.

Keywords:
ChikungunyaDengueZikaarboviral diseaseclassificationmachine learningstatistical analysis

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Area of Science:

  • Medical Informatics
  • Computational Biology
  • Epidemiology

Background:

  • Arboviral diseases (Dengue, Zika, Chikungunya) share vectors, geography, and symptoms, complicating diagnosis.
  • Data scarcity poses a significant challenge for developing machine learning diagnostic tools for co-circulating arboviruses.

Purpose of the Study:

  • To demonstrate the proof of concept for using synthetic data to establish computational feasibility for arboviral disease diagnosis.
  • To guide future real-world validation efforts for machine learning diagnostic tools.

Main Methods:

  • Assembled a synthetic dataset of 28,000 records (7,000 each for Dengue, Zika, Chikungunya, plus Influenza as control).
  • Created a binary matrix of 67 symptoms for statistical analysis (Odds Ratios, Chi-Square).
  • Trained and evaluated machine learning algorithms (MLP, NN, QSVM, BT) using performance metrics (accuracy, precision, sensitivity, specificity, F1-score, AUC-ROC, Cohen's kappa).

Main Results:

  • The synthetic dataset's clinical relevance was validated against PAHO guidelines and existing arboviral databases.
  • The Narrow Neural Network (NN) model achieved high performance: 0.92 accuracy, >0.98 AUC, >0.85 precision/sensitivity/specificity, and 0.89 Cohen's Kappa.
  • The NN model reliably distinguished Dengue from Influenza, with slightly lower performance for Zika and Chikungunya differentiation.

Conclusions:

  • Machine learning and deep learning models leveraging symptom features can accelerate early diagnosis of arboviral diseases.
  • These models can serve as valuable support tools in resource-limited regions.
  • The developed models do not replace, but augment, clinical medical expertise.