Impact of Hyperparameter Optimization to Enhance Machine Learning Performance: A Case Study on Breast Cancer Recurrence Prediction

Author:

González-Castro Lorena1ORCID,Chávez Marcela2,Duflot Patrick2ORCID,Bleret Valérie3,Del Fiol Guilherme4ORCID,López-Nores Martín5ORCID

Affiliation:

1. School of Telecommunication Engineering, Universidade de Vigo, 36310 Vigo, Spain

2. Department of Information System Management, CHU of Liège, 4000 Liège, Belgium

3. Senology Department, CHU of Liège, 4000 Liège, Belgium

4. Department of Biomedical Informatics, University of Utah School of Medicine, Salt Lake City, UT 84132, USA

5. atlanTTic Research Center, Department of Telematics Engineering, Universidade de Vigo, 36130 Vigo, Spain

Abstract

Accurate and early prediction of breast cancer recurrence is crucial to guide medical decisions and treatment success. Machine learning (ML) has shown promise in this domain. However, its effectiveness critically depends on proper hyperparameter setting, a step that is not always performed systematically in the development of ML models. In this study, we aimed to highlight the impact that this process has on the final performance of ML models through a real-world case study by predicting the five-year recurrence of breast cancer patients. We compared the performance of five ML algorithms (Logistic Regression, Decision Tree, Gradient Boosting, eXtreme Gradient Boost, and Deep Neural Network) before and after optimizing their hyperparameters. Simpler algorithms showed better performance using the default hyperparameters. However, after the optimization process, the more complex algorithms demonstrated superior performance. The AUCs obtained before and after adjustment were 0.7 vs. 0.84 for XGB, 0.64 vs. 0.75 for DNN, 0.7 vs. 0.8 for GB, 0.62 vs. 0.7 for DT, and 0.77 vs. 0.72 for LR. The results underscore the critical importance of hyperparameter selection in the development of ML algorithms for the prediction of cancer recurrence. Neglecting this step can undermine the potential of more powerful algorithms and lead to the choice of suboptimal models.

Funder

European Union’s Horizon 2020 research and innovation program

European Regional Development Fund

Galician Regional Government

Publisher

MDPI AG

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3. (2024, April 08). Breast Cancer Outcomes. Available online: https://www.oecd-ilibrary.org/sites/c63a671a-en/index.html?itemId=/content/component/c63a671a-en#.

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5. Madani, M., Behzadi, M.M., and Nabavi, S. (2022). The role of deep learning in advancing breast cancer detection using different imaging modalities: A systematic review. Cancers, 14.

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