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Clinical Resource Management with AI/ML-Driven Automated Diagnostics in Smart Healthcare

Published: 13 May 2024 Publication History

Abstract

This abstract is ready for helpful medical resource management with AI/ML-driven automated diagnostics in intelligent healthcare. Synthetic Intelligence and device-getting-to-know technologies are growing inside the healthcare enterprise to cope with medical assets and impart green diagnostics. By leveraging AI/ML-driven automated diagnostics, healthcare specialists can use the technology to quickly permit efficient and accurate diagnosis. It will make it possible to collect extra detailed affected person information, examine trends, and quickly perceive clinical diseases and abnormalities, leading to advanced preventative care. It makes healthcare decisions more knowledgeable, and doctors can spend more time on complex diagnoses. Additionally, AI/ML-driven automation can reduce the time spent on mundane analysis tasks, freeing up staff time for better-impact paintings. In precis, AI/ML-pushed computerized diagnostics can permit precision and accuracy, central to advanced patient effects and proper resource management in intelligent healthcare. Clever healthcare medical aid management (CRM) with AI/ML-driven automatic diagnostics is a gadget that uses AI and device learning (ML) technologies to automate the prognosis of affected person-related facts. The gadget can identify signs, symptoms, and underlying situations requiring medical interest.

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ICIMMI '23: Proceedings of the 5th International Conference on Information Management & Machine Intelligence
November 2023
1215 pages
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Publication History

Published: 13 May 2024

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Author Tags

  1. Artificial Intelligence
  2. Automated Diagnostics
  3. Machine Learning
  4. Smart Healthcare

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