Enhanced QSVM with elitist non-dominated sorting genetic optimisation algorithm for breast cancer diagnosis

IF 2.8 Q3 QUANTUM SCIENCE & TECHNOLOGY IET Quantum Communication Pub Date : 2024-10-23 DOI:10.1049/qtc2.12113
Jose P, Shanmugasundaram Hariharan, Vimaladevi Madhivanan, Sujaudeen N, Murugaperumal Krisnamoorthy, Aswani Kumar Cherukuri
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Abstract

Machine learning has emerged as a promising method for predicting breast cancer using quantum computation techniques. Quantum machine learning algorithms, such as quantum support vector machines (QSVMs), are demonstrating superior efficiency and economy in tackling complex problems compared to traditional machine learning methods. When compared with classical support vector machine, the quantum machine produces remarkably accurate results. The suggested quantum SVM model in this study effectively resolved the binary classification problem for diagnosing malignant breast cancer. This work introduces an enhanced approach to breast cancer diagnosis by integrating QSVM with elitist non-dominated sorting genetic optimization (ENSGA), leveraging the strengths of both techniques to achieve more accurate and efficient classification results. ENSGA plays a crucial role in optimising QSVM parameters, ensuring that the model attains the best possible classification accuracy while considering multiple objectives simultaneously. Moreover, the quantum kernel estimation method demonstrated exceptional performance by achieving high accuracy within an impressive execution time of 0.14 in the IBM QSVM simulator. The seamless integration of quantum computation techniques with optimisation strategies such as ENSGA highlights the potential of quantum machine learning in revolutionising the field of healthcare, particularly in the domain of breast cancer diagnosis.

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基于精英非支配排序遗传优化算法的增强QSVM乳腺癌诊断
机器学习已经成为使用量子计算技术预测乳腺癌的一种很有前途的方法。与传统的机器学习方法相比,量子支持向量机(qsvm)等量子机器学习算法在解决复杂问题方面显示出更高的效率和经济性。与经典支持向量机相比,量子机的计算结果非常准确。本研究提出的量子支持向量机模型有效地解决了恶性乳腺癌诊断的二值分类问题。本文介绍了一种将QSVM与精英非支配排序遗传优化(enga)相结合的增强乳腺癌诊断方法,利用这两种技术的优势来获得更准确和高效的分类结果。ENSGA在优化QSVM参数中起着至关重要的作用,确保模型在同时考虑多个目标的情况下获得最佳的分类精度。此外,量子核估计方法在IBM QSVM模拟器中以0.14的令人印象深刻的执行时间实现了高精度,从而展示了卓越的性能。量子计算技术与优化策略(如ENSGA)的无缝集成突出了量子机器学习在医疗保健领域的革命性潜力,特别是在乳腺癌诊断领域。
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