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Addressing Binary Classification over Class Imbalanced Clinical Datasets Using Computationally Intelligent

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This study evaluated six classifiers and seven balancing techniques on imbalanced clinical data. SMOTEEN demonstrated superior performance for improving machine learning model accuracy in healthcare applications.

Keywords:
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Area of Science:

  • Machine Learning in Healthcare
  • Data Science
  • Clinical Informatics

Background:

  • Clinical datasets are crucial for intelligent healthcare systems.
  • Real-world clinical data often exhibits class imbalance, leading to poor classifier performance.
  • This imbalance negatively impacts accuracy, precision, and recall, necessitating effective data balancing techniques.

Purpose of the Study:

  • To empirically evaluate the performance of six classifiers on five imbalanced clinical datasets.
  • To compare seven distinct class balancing techniques for addressing data imbalance in clinical machine learning.
  • To identify optimal strategies for handling imbalanced clinical datasets in supervised learning.

Main Methods:

  • Literature review on class imbalanced learning.
  • Performance evaluation of Decision Tree, k-Nearest Neighbor, Logistic Regression, Artificial Neural Network, Support Vector Machine, and Gaussian Naïve Bayes classifiers.
  • Application and comparison of seven balancing techniques: Undersampling, Random Oversampling, SMOTE, ADASYN, SVM-SMOTE, SMOTEEN, and SMOTETOMEK.

Main Results:

  • SMOTEEN consistently outperformed the other six data-balancing techniques across all tested classifiers and datasets.
  • The remaining six balancing techniques showed comparable, yet moderately lesser, performance compared to SMOTEEN.
  • Analysis explored the reasons behind the effectiveness of specific classifiers and balancing methods.

Conclusions:

  • SMOTEEN is a highly effective technique for addressing class imbalance in clinical datasets.
  • The findings provide practical recommendations for improving supervised machine learning model performance in healthcare.
  • Careful selection of data-balancing techniques is essential for robust clinical predictive models.