Effective and accurate diagnosis of diseases such as cancer, diabetes, and heart failure is crucial for timely medical intervention and improving patient survival rates. Machine learning has revolutionized diagnostic methods in recent years by developing classification models that detect diseases based on selected features. However, these classification tasks are often highly imbalanced, limiting the performance of classical models. Quantum models offer a promising alternative, exploiting their ability to express complex patterns by operating in a higher- dimensional computational space through superposition and entanglement. These unique properties make quantum models potentially more effective in addressing the challenges of imbal- anced datasets. This work evaluates the potential of quantum classifiers in healthcare, focusing on Quantum Neural Networks (QNNs) and Quantum Support Vector Machines (QSVMs), com- paring them with popular classical models. The study is based on three well-known healthcare datasets — Prostate Cancer, Heart Failure, and Diabetes. The results indicate that QSVMs outperform QNNs across all datasets due to their susceptibility to overfitting. Furthermore, quantum models prove the ability to overcome classical models in scenarios with high dataset imbalance. Although preliminary, these findings highlight the potential of quantum models in healthcare classification tasks and lead the way for further research in this domain

Quantum Machine Learning in Healthcare: Evaluating QNN and QSVM Models / Tudisco, Antonio; Volpe, Deborah; Turvani, Giovanna. - (2025), pp. 1-8. ( 2025 International Joint Conference on Neural Networks (IJCNN) Roma (ita) 30 June 2025 - 05 July 2025) [10.1109/ijcnn64981.2025.11227750].

Quantum Machine Learning in Healthcare: Evaluating QNN and QSVM Models

Tudisco, Antonio;Volpe, Deborah;Turvani, Giovanna
2025

Abstract

Effective and accurate diagnosis of diseases such as cancer, diabetes, and heart failure is crucial for timely medical intervention and improving patient survival rates. Machine learning has revolutionized diagnostic methods in recent years by developing classification models that detect diseases based on selected features. However, these classification tasks are often highly imbalanced, limiting the performance of classical models. Quantum models offer a promising alternative, exploiting their ability to express complex patterns by operating in a higher- dimensional computational space through superposition and entanglement. These unique properties make quantum models potentially more effective in addressing the challenges of imbal- anced datasets. This work evaluates the potential of quantum classifiers in healthcare, focusing on Quantum Neural Networks (QNNs) and Quantum Support Vector Machines (QSVMs), com- paring them with popular classical models. The study is based on three well-known healthcare datasets — Prostate Cancer, Heart Failure, and Diabetes. The results indicate that QSVMs outperform QNNs across all datasets due to their susceptibility to overfitting. Furthermore, quantum models prove the ability to overcome classical models in scenarios with high dataset imbalance. Although preliminary, these findings highlight the potential of quantum models in healthcare classification tasks and lead the way for further research in this domain
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/3005190