Machine Learning-Based Polycystic Ovary Syndrome Generative Modelling via Ensemble Learning and Neural Networks for Infertility Prediction

Authors
  • Caleb A. ABORISADE

    Department of Physics and Science Laboratory Technology, Abiola Ajimobi Technical University, Ibadan, Oyo State, Nigeria

    Author

  • Jide E.T. AKINSOLA

    Department of Computer Sciences, Abiola Ajimobi Technical University, Ibadan, Oyo State, Nigeria

    Author

  • Ifeoluwa M. OLANIYI

    Department of Computer Sciences, Abiola Ajimobi Technical University, Ibadan, Oyo State, Nigeria

    Author

  • Fathia O. ONIPEDE

    Department of Computer Sciences, Abiola Ajimobi Technical University, Ibadan, Oyo State, Nigeria

    Author

  • Emmanuel A. OLAJUBU

    Department of Computer Science and Engineering, Obafemi Awolowo University Ile–Ife, Nigeria

    Author

  • Ganiyu A. ADEROUNMU

    Department of Computer Science and Engineering, Obafemi Awolowo University, Ile–Ife, Nigeria

    Author

Keywords:
Deep learning, Infertility, Machine learning, Polycystic ovary syndrome, Random forest, Recurrent neural network, Reproductive health, Support vector machine, Women's health.
Abstract

Higher health issues, such as diabetes and hypertension, are sacrosanct with Polycystic Ovary Syndrome (PCOS) and they greatly affect fertility in women. Therefore, irregular menstrual periods, acne, increased hair growth and several hormone-related disorders are prevalent in people with PCOS. The study employed variable distributions and correlations, and the experimental design made use of exploratory data analysis and heat map visualization. Principal Component Analysis (PCA) was used for feature selection to minimize dimensionality and pinpoint the most informative attributes. A thorough cross-validation evaluation that suggested models' generalizability, robustness, and performance was considered. To ensure a thorough evaluation of the PCOS diagnostic value, evaluation measures such as F1-score, precision, accuracy and recall were utilized on Random Forest (RF), Recurrent Neural Networks (RNN) and Support Vector Machines (SVM) algorithms to build the models. The performance results show that RF had the best accuracy result of 99.74% followed by SVM with 99.21% and RNN with the worst result of 65.09%. This means that RF had the highest accurate predictions of the total amount of input samples. SVM and RF had the same precision result of 1.00, which shows that the two models had no misclassification of the PCOS infertility outcomes. That is, both SVM and RF could correctly identify all the positive instances and all the negative instances. The higher the value of the F1-score, the more reliable the model’s predictability. RF based on the highest F1-score of 0.9956 can be used for PCOS infertility modelling. The study concludes that RF is the golden model due to its superior performance for building a PCOS infertility prediction generative model. The study, therefore, suggests the implementation of federated learning and other deep learning algorithms for scalable performance using the big data paradigm.

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Published
03-07-2025
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Articles
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Copyright (c) 2025 FUDMA Journal of Engineering and Technology

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How to Cite

Machine Learning-Based Polycystic Ovary Syndrome Generative Modelling via Ensemble Learning and Neural Networks for Infertility Prediction. (2025). FUDMA Journal of Engineering and Technology, 1(1), 28-35. https://doi.org/10.33003/8fcaw581

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