Classical neural networks (NNs) have shown strong performance in medical data analysis. However, they typically require large labeled datasets and may struggle in data-scarce scenarios, common in clinical practice. Quantum Neural Networks (QNNs) have emerged as a promising alternative. This paper presents a comparative study between NNs and QNNs for heart disease prediction, addressing the limitations of current models in low-data regimes. We systematically evaluate 460 QNNs (using 11-13 qubits) and 4,480 NN architectures, analyzing key design parameters: encoding schemes, re-uploading strategies, circuit depth, and dropout (for QNNs), as well as hidden layers, neurons per layer, and dropout (for classical NNs). Top-performing models are selected for a direct comparison in terms of accuracy and sample complexity. Our results show QNNs achieve comparable accuracy and demonstrate potential advantages in data-scarce settings. Our study presents a structured and reproducible methodology for evaluating QNNs in clinical contexts, thereby supporting the broader investigation of quantum machine learning in applied healthcare domains.

Ghisoni, F., Borrotti, M., Mariani, P. (2026). A large scale statistical analysis of quantum and classical neural networks in the medical domain. SCIENTIFIC REPORTS, 16(1) [10.1038/s41598-025-33825-7].

A large scale statistical analysis of quantum and classical neural networks in the medical domain

Borrotti, Matteo;Mariani, Paolo
2026

Abstract

Classical neural networks (NNs) have shown strong performance in medical data analysis. However, they typically require large labeled datasets and may struggle in data-scarce scenarios, common in clinical practice. Quantum Neural Networks (QNNs) have emerged as a promising alternative. This paper presents a comparative study between NNs and QNNs for heart disease prediction, addressing the limitations of current models in low-data regimes. We systematically evaluate 460 QNNs (using 11-13 qubits) and 4,480 NN architectures, analyzing key design parameters: encoding schemes, re-uploading strategies, circuit depth, and dropout (for QNNs), as well as hidden layers, neurons per layer, and dropout (for classical NNs). Top-performing models are selected for a direct comparison in terms of accuracy and sample complexity. Our results show QNNs achieve comparable accuracy and demonstrate potential advantages in data-scarce settings. Our study presents a structured and reproducible methodology for evaluating QNNs in clinical contexts, thereby supporting the broader investigation of quantum machine learning in applied healthcare domains.
Articolo in rivista - Articolo scientifico
Quantum statistical analysis; Classical neural networks; Medical
English
9-gen-2026
2026
16
1
3719
open
Ghisoni, F., Borrotti, M., Mariani, P. (2026). A large scale statistical analysis of quantum and classical neural networks in the medical domain. SCIENTIFIC REPORTS, 16(1) [10.1038/s41598-025-33825-7].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/591321
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