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Enhancing Clinical Decision Support Systems with Big Data and AI in Medical Informatics

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  • Srikant Kumar Dhar
  • Kotte Navyav
  • Kanika Seth
  • Dikshit Sharma
  • Sourabh Kumar Singh
  • Shashikant Patil

Abstract

By allowing real-time diagnostics, predictive analytics, and automated therapy recommendations, the combination of Artificial Intelligence (AI) and Big Data into Clinical Decision Support Systems (CDSS) has changed healthcare decision-making. While AI-driven models use machine learning (ML), deep learning (DL), and natural language processing (NLP) to improve diagnosis accuracy and clinical efficiency, traditional rule-based CDSS suffered constraints in managing complex and dynamic patient data. With an overall increase of over 30% in predictive performance, this research assesses the efficacy of AI-powered CDSS against conventional rule-based models by showing notable accuracy, precision, recall, and F1-score improvement. Streaming data processing, edge artificial intelligence, and federated learning further help real-time decision-making to guarantee scalable AI-based interventions. Widespread use depends on the difficulties of data security, model interpretability, and interoperability being overcome. This research highlights the potential, challenges, and future directions of AI-driven CDSS in improving evidence-based, data-driven, and personalized healthcare solutions.

Suggested Citation

Handle: RePEc:dbk:medicw:v:3:y:2024:i::p:503:id:503
DOI: 10.56294/mw2024503
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