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Main Authors: Novák, Vojtěch, Zelinka, Ivan, Přibylová, Lenka, Martínek, Lubomír, Benčurik, Vladimír
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.01708
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author Novák, Vojtěch
Zelinka, Ivan
Přibylová, Lenka
Martínek, Lubomír
Benčurik, Vladimír
author_facet Novák, Vojtěch
Zelinka, Ivan
Přibylová, Lenka
Martínek, Lubomír
Benčurik, Vladimír
contents Anastomotic leak (AL) is a life-threatening complication following colorectal surgery, and its accurate prediction remains a significant clinical challenge. This study explores the potential of Quantum Neural Networks (QNNs) for AL prediction, presenting a rigorous benchmark against hyperparameter-tuned classical models including logistic regression, multilayer perceptrons, and boosting algorithms. Using a clinical dataset of 200 patients and four key predictors identified through statistical analysis, we evaluated QNNs with ZZFeatureMap encoding and EfficientSU2 and RealAmplitudes ansätze simulated under realistic hardware noise models. Our framework emphasizes robustness, with performance metrics averaged over 10 independent optimization runs using multiple algorithms. The EfficientSU2-BFGS combination achieved the highest mean AUC of $0.7966 \pm 0.0237$, while RealAmplitudes with CMA-ES excelled in Average Precision ($0.5041 \pm 0.1214$), critical for imbalanced medical datasets. We establish a direct link between optimizer convergence and model efficacy, where effective variational parameter optimization translates to improved classification metrics. Interpretability analysis suggests QNNs may capture complex, non-linear feature relationships not evident in classical linear models. This work highlights QNNs' potential as screening tools while underscoring the need for model selection based on specific clinical goals, pending validation on larger datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2506_01708
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Quantum Machine Learning for Predicting Anastomotic Leak: A Clinical Study
Novák, Vojtěch
Zelinka, Ivan
Přibylová, Lenka
Martínek, Lubomír
Benčurik, Vladimír
Quantum Physics
68T05
I.2.6
Anastomotic leak (AL) is a life-threatening complication following colorectal surgery, and its accurate prediction remains a significant clinical challenge. This study explores the potential of Quantum Neural Networks (QNNs) for AL prediction, presenting a rigorous benchmark against hyperparameter-tuned classical models including logistic regression, multilayer perceptrons, and boosting algorithms. Using a clinical dataset of 200 patients and four key predictors identified through statistical analysis, we evaluated QNNs with ZZFeatureMap encoding and EfficientSU2 and RealAmplitudes ansätze simulated under realistic hardware noise models. Our framework emphasizes robustness, with performance metrics averaged over 10 independent optimization runs using multiple algorithms. The EfficientSU2-BFGS combination achieved the highest mean AUC of $0.7966 \pm 0.0237$, while RealAmplitudes with CMA-ES excelled in Average Precision ($0.5041 \pm 0.1214$), critical for imbalanced medical datasets. We establish a direct link between optimizer convergence and model efficacy, where effective variational parameter optimization translates to improved classification metrics. Interpretability analysis suggests QNNs may capture complex, non-linear feature relationships not evident in classical linear models. This work highlights QNNs' potential as screening tools while underscoring the need for model selection based on specific clinical goals, pending validation on larger datasets.
title Quantum Machine Learning for Predicting Anastomotic Leak: A Clinical Study
topic Quantum Physics
68T05
I.2.6
url https://arxiv.org/abs/2506.01708