Practice and Exploration of Machine Learning Algorithm in Program Optimization of Personalized Nursing

Authors

  • Jinxin Zheng
  • Haobin Yu
  • Xia Jiang
  • Xinyu Lai
  • Gengyang Yuan
  • Xueli Wang

DOI:

https://doi.org/10.62051/ijphmr.v3n2.07

Keywords:

Machine learning, Program optimization, Personalized nursing

Abstract

As an important branch of artificial intelligence, machine learning algorithm has shown a wide range of application prospects and significant advantages in the optimization of personalized care programs. It can provide accurate diagnostic support, real-time health monitoring and personalized adjuvant treatment for patients by analyzing multi-source medical data, effectively improve the scientificity and accuracy of nursing programs, and alleviate the workload of nursing staff. We should improve the ability of nurses to understand and apply machine learning technology, to achieve more efficient, more accurate, and more personalized medical care services, and promote the innovation and development of medical care model.

References

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Published

27-03-2025

Issue

Section

Articles

How to Cite

Zheng, J., Yu, H., Jiang, X., Lai, X., Yuan, G., & Wang, X. (2025). Practice and Exploration of Machine Learning Algorithm in Program Optimization of Personalized Nursing. International Journal of Public Health and Medical Research, 3(2), 71-75. https://doi.org/10.62051/ijphmr.v3n2.07