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arXiv 提交日期: 2026-01-26
📄 Abstract - Analyzing Images of Blood Cells with Quantum Machine Learning Methods: Equilibrium Propagation and Variational Quantum Circuits to Detect Acute Myeloid Leukemia

This paper presents a feasibility study demonstrating that quantum machine learning (QML) algorithms achieve competitive performance on real-world medical imaging despite operating under severe constraints. We evaluate Equilibrium Propagation (EP), an energy-based learning method that does not use backpropagation (incompatible with quantum systems due to state-collapsing measurements) and Variational Quantum Circuits (VQCs) for automated detection of Acute Myeloid Leukemia (AML) from blood cell microscopy images using binary classification (2 classes: AML vs. Healthy). Key Result: Using limited subsets (50-250 samples per class) of the AML-Cytomorphology dataset (18,365 expert-annotated images), quantum methods achieve performance only 12-15% below classical CNNs despite reduced image resolution (64x64 pixels), engineered features (20D), and classical simulation via Qiskit. EP reaches 86.4% accuracy (only 12% below CNN) without backpropagation, while the 4-qubit VQC attains 83.0% accuracy with consistent data efficiency: VQC maintains stable 83% performance with only 50 samples per class, whereas CNN requires 250 samples (5x more data) to reach 98%. These results establish reproducible baselines for QML in healthcare, validating NISQ-era feasibility.

顶级标签: medical machine learning theory
详细标签: quantum machine learning medical imaging blood cell analysis leukemia detection variational quantum circuits 或 搜索:

利用量子机器学习方法分析血细胞图像:基于平衡传播和变分量子电路检测急性髓系白血病 / Analyzing Images of Blood Cells with Quantum Machine Learning Methods: Equilibrium Propagation and Variational Quantum Circuits to Detect Acute Myeloid Leukemia


1️⃣ 一句话总结

这项研究证明,即使在数据量极少、图像分辨率降低的苛刻条件下,量子机器学习算法也能在急性髓系白血病的血细胞图像检测任务中达到接近经典深度学习的性能,为当前量子计算设备在医疗影像领域的实际应用提供了可行性验证。

源自 arXiv: 2601.18710