Hybrid Classical–Quantum Transfer Learning for Cardiomegaly Detection in Chest X-rays

Author:

Decoodt Pierre1ORCID,Liang Tan Jun23ORCID,Bopardikar Soham4ORCID,Santhanam Hemavathi5,Eyembe Alfaxad6ORCID,Garcia-Zapirain Begonya7ORCID,Sierra-Sosa Daniel8ORCID

Affiliation:

1. Cardiologie, Centre Hospitalo-Universitaire Brugmann, Faculté de Médecine, Université Libre de Bruxelles, Place Van Gehuchten 4, 1020 Brussels, Belgium

2. School of Computer Science, Digital Health and Innovations Impact Lab, Taylor’s University, Subang Jaya 47500, Selangor, Malaysia

3. qBraid Co., Chicago, IL 60615, USA

4. Department of Electronics and Telecommunication Engineering, College of Engineering Pune, Pune 411005, India

5. Faculty of Graduate Studies and Research, Saint Mary’s University, 923 Robie Street, Halifax, NS B3H 3C3, Canada

6. Faculty of Engineering, Kyoto University of Advanced Science (KUAS), Ukyo-ku, Kyoto 615-8577, Japan

7. eVIDA Research Group, Department of Engineering, Deusto University, 48007 Bilbao, Spain

8. Computer Science and Information Technologies Department, Hood College, 401 Rosemont Ave., Frederick, MD 21702, USA

Abstract

Cardiovascular diseases are among the major health problems that are likely to benefit from promising developments in quantum machine learning for medical imaging. The chest X-ray (CXR), a widely used modality, can reveal cardiomegaly, even when performed primarily for a non-cardiological indication. Based on pre-trained DenseNet-121, we designed hybrid classical–quantum (CQ) transfer learning models to detect cardiomegaly in CXRs. Using Qiskit and PennyLane, we integrated a parameterized quantum circuit into a classic network implemented in PyTorch. We mined the CheXpert public repository to create a balanced dataset with 2436 posteroanterior CXRs from different patients distributed between cardiomegaly and the control. Using k-fold cross-validation, the CQ models were trained using a state vector simulator. The normalized global effective dimension allowed us to compare the trainability in the CQ models run on Qiskit. For prediction, ROC AUC scores up to 0.93 and accuracies up to 0.87 were achieved for several CQ models, rivaling the classical–classical (CC) model used as a reference. A trustworthy Grad-CAM++ heatmap with a hot zone covering the heart was visualized more often with the QC option than that with the CC option (94% vs. 61%, p < 0.001), which may boost the rate of acceptance by health professionals.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Vision and Pattern Recognition,Radiology, Nuclear Medicine and imaging

Reference60 articles.

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