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Retracted: Medical Data Feature Learning Based on Probability and Depth Learning Mining: Model Development and

Yuanlin Yang1,2, Dehua Li2,3

  • 1Department of Logistics Management, West China Second University Hospital, Sichuan University, Chengdu, China.

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This study developed an intelligent application using deep learning to predict daily hospital outpatient visits. Accurate daily predictions aid in efficient resource allocation and personalized patient care.

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data miningdeep learningmedical big datamodel building

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Area of Science:

  • Medical Informatics
  • Artificial Intelligence in Healthcare
  • Big Data Analytics

Background:

  • Big data technology offers advanced capabilities for medical data management and analysis.
  • Deep learning and machine learning enhance healthcare by assisting diagnosis, personalizing treatment, and enabling intelligent processes.

Purpose of the Study:

  • To analyze healthcare big data and develop an intelligent application for predicting hospital outpatient visits.
  • To design a data feature learning model for effective patient treatment and optimal resource utilization.

Main Methods:

  • Implemented a cascaded depth learning framework for feature transformation, selection, and classification.
  • Developed a medical data feature learning model using probabilistic and deep learning for multimodal data analysis and disease risk assessment.

Main Results:

  • The developed depth model accurately forecasts daily outpatient volumes, outperforming weekly or monthly predictions.
  • Daily volume forecasting benefits from larger datasets and avoids error accumulation inherent in longer-term predictions.

Conclusions:

  • Proposed data feature learning models effectively extract relationships in outpatient volume data for precise predictions.
  • Accurate outpatient volume predictions facilitate rational medical resource allocation and advance intelligent healthcare.