Innovations in Healthcare Analytics: A Review of Data Mining Techniques
- 1. Department of Computer Science, Mahatma Jyoti Rao Phoole University, Jaipur (R.J), India
- 2. Department of Computer Science, M.D.S University, Ajmer (R.J), India
- 3. Sophia girls' College, Ajmer (R.J), India
Contributors
Contact person:
- 1. Department of Computer Science, Mahatma Jyoti Rao Phoole University, Jaipur (R.J), India
Description
Abstract: This review article provides an overview of the current state of data mining applications in healthcare, including case studies, challenges, and future directions. The article begins with a discussion of the role of data mining in healthcare, highlighting its potential to transform healthcare delivery and research. It then provides a comprehensive review of the various data mining techniques and tools that are commonly used in healthcare, including predictive modelling, clustering, and association rule mining. The article also discusses some key challenges associated with data mining in healthcare, such as data quality, privacy, and security, and suggests possible solutions. Finally, the article concludes with a discussion of the future directions of data mining in healthcare, highlighting the need for continued research and development in this field. The article emphasises the importance of collaboration between healthcare providers, data scientists, and policymakers to ensure that data mining is used ethically and effectively to improve patient outcomes and support evidence-based decision-making in healthcare.
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- Journal article: 2231-2307 (ISSN)
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Subjects
- ISSN: 2231-2307 (Online)
- https://portal.issn.org/resource/ISSN/2231-2307#
- Retrieval Number: 100.1/ijsce.B36090513223
- https://www.ijsce.org/portfolio-item/b36090513223/
- Journal Website: www.ijsce.org
- https://www.ijsce.org/
- Publisher: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP)
- https://www.blueeyesintelligence.org/