Cervical Cancer Diagnosis Using Stacked Ensemble Model and Optimized Feature Selection: An Explainable Artificial Intelligence Approach
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Published:2023-10-07
Issue:10
Volume:12
Page:200
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ISSN:2073-431X
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Container-title:Computers
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language:en
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Short-container-title:Computers
Author:
AlMohimeed Abdulaziz1ORCID, Saleh Hager2ORCID, Mostafa Sherif2ORCID, Saad Redhwan M. A.3, Talaat Amira Samy4
Affiliation:
1. College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh 13318, Saudi Arabia 2. Faculty of Computers and Artificial Intelligence, South Valley University, Hurghada 84511, Egypt 3. College of Informatics, Midocean University, Moroni 8722, Comoros 4. Computers and Systems Department, Electronics Research Institute, Cairo 12622, Egypt
Abstract
Cervical cancer affects more than half a million women worldwide each year and causes over 300,000 deaths. The main goals of this paper are to study the effect of applying feature selection methods with stacking models for the prediction of cervical cancer, propose stacking ensemble learning that combines different models with meta-learners to predict cervical cancer, and explore the black-box of the stacking model with the best-optimized features using explainable artificial intelligence (XAI). A cervical cancer dataset from the machine learning repository (UCI) that is highly imbalanced and contains missing values is used. Therefore, SMOTE-Tomek was used to combine under-sampling and over-sampling to handle imbalanced data, and pre-processing steps are implemented to hold missing values. Bayesian optimization optimizes models and selects the best model architecture. Chi-square scores, recursive feature removal, and tree-based feature selection are three feature selection techniques that are applied to the dataset For determining the factors that are most crucial for predicting cervical cancer, the stacking model is extended to multiple levels: Level 1 (multiple base learners) and Level 2 (meta-learner). At Level 1, stacking (training and testing stacking) is employed for combining the output of multi-base models, while training stacking is used to train meta-learner models at level 2. Testing stacking is used to evaluate meta-learner models. The results showed that based on the selected features from recursive feature elimination (RFE), the stacking model has higher accuracy, precision, recall, f1-score, and AUC. Furthermore, To assure the efficiency, efficacy, and reliability of the produced model, local and global explanations are provided.
Funder
Midocean University
Subject
Computer Networks and Communications,Human-Computer Interaction
Reference57 articles.
1. World Health Organization (2023, August 05). Cervical-Cancer. Available online: https://www.who.int/news-room/fact-sheets/detail/cervical-cancer. 2. Tanimu, J.J., Hamada, M., Hassan, M., Kakudi, H., and Abiodun, J.O. (2022). A machine learning method for classification of cervical cancer. Electronics, 11. 3. A review of feature selection and its methods;Venkatesh;Cybern. Inf. Technol.,2019 4. Gu, Q., Li, Z., and Han, J. (2012). Generalized fisher score for feature selection. arXiv. 5. Lin, X., Li, C., Zhang, Y., Su, B., Fan, M., and Wei, H. (2017). Selecting feature subsets based on SVM-RFE and the overlapping ratio with applications in bioinformatics. Molecules, 23.
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