Published May 30, 2023 | Version CC BY-NC-ND 4.0
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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.

Notes

Published By: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP) © Copyright: All rights reserved.

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Journal article: 2231-2307 (ISSN)

References

  • Shekhar S, Xiong H (2008) Active Data Mining. Encycl GIS 10–10.
  • Liao SH, Chu PH, Hsiao PY (2012) Data mining techniques and applications - A decade review from 2000 to 2011. Expert Syst Appl 39:11303–11311.
  • Jothi N, Rashid NA, Husain W (2015) Data Mining in Healthcare - A Review. Procedia Comput Sci 72:306–313.
  • John LH, Kors JA, Reps JM, et al (2022) Logistic regression models for patient-level prediction based on massive observational data: Do we need all data? Int J Med Inform 163:104762.
  • Jegelevičius D, Lukoševičius A, Paunksnis A, Barzdžiukas V (2002) Application of Data Mining Technique for Diagnosis of Posterior Uveal Melanoma. Informatica 13:455–464
  • Hachesu PR, Ahmadi M, Alizadeh S, Sadoughi F (2013) Use of data mining techniques to determine and predict length of stay of cardiac patients. Healthc Inform Res 19:121–129.
  • McLachlan S, Dube K, Hitman GA, et al (2020) Bayesian networks in healthcare: Distribution by medical condition. Artif Intell Med 107:101912.
  • Berkhin P (2006) A survey of clustering data mining techniques BT - Grouping Multidimensional Data. Group Multidimens Data 25–71
  • Zheng B, Yoon SW, Lam SS (2014) Breast cancer diagnosis based on feature extraction using a hybrid of K-means and support vector machine algorithms. Expert Syst Appl 41:1476–1482.
  • Fernandez-Basso C, Gutiérrez-Batista K, Morcillo-Jiménez R, et al (2022) A fuzzy-based medical system for pattern mining in a distributed environment: Application to diagnostic and co-morbidity. Appl Soft Comput 122:108870
  • Hong TP, Lee YC (2008) An overview of mining fuzzy association rules. Stud Fuzziness Soft Comput 220:397–410.
  • Hong TP, Lin KY, Wang SL (2003) Fuzzy data mining for interesting generalised association rules. Fuzzy Sets Syst 138:255–269.
  • Gosain A, Dahiya S (2016) Performance Analysis of Various Fuzzy Clustering Algorithms: A Review. Procedia Comput Sci 79:100–111.
  • Simhachalam B, Ganesan G (2014) Possibilistic fuzzy C-means clustering on medical diagnostic systems. Proc 2014 Int Conf Contemp Comput Informatics, IC3I 2014 1125–1129.
  • Mohanty SD, Lekan D, McCoy TP, et al (2022) Machine learning for predicting readmission risk among the frail: Explainable AI for healthcare. Patterns 3:100395.
  • Kadhim RR, Kamil MY (2023) Comparison of machine learning models for breast cancer diagnosis. IAES Int J Artif Intell 12:415– 421.
  • Wang KJ, Makond B, Wang KM (2013) An improved survivability prognosis of breast cancer by using sampling and feature selection technique to solve imbalanced patient classification data. BMC Med Inform Decis Mak 13:.
  • Gulzar K, Ayoob Memon M, Mohsin SM, et al (2023) An Efficient Healthcare Data Mining Approach Using Apriori Algorithm: A Case Study of Eye Disorders in Young Adults. Information 14:1–14.
  • R. Pallavi Reddy (2020) A Review on Data Mining Techniques and Challenges in Medical Field. Int J Eng Res V9:329–333.

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)
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