利用混合量子机器学习方法早期检测冠心病

Mehroush Banday, Sherin Zafar, Parul Agarwal, M Afshar Alam, Abubeker K M
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摘要

冠心病(CHD)是一种严重的心脏疾病,因此早期诊断至关重要,因为它能提高治疗效果并节省医疗费用。量子计算和机器学习(ML)技术的蓬勃发展可能会切实改善冠心病的诊断性能。量子机器学习(QML)因其更高的性能和能力而受到各学科的极大关注。量子学习技术具有预测心脏病和帮助早期检测的潜力。为了预测冠心病的风险,本文提出了一种混合方法,利用基于 QML 分类器的集合机器学习模型。我们的方法具有处理多维医疗数据的独特能力,通过在多步推理框架中融合量子和经典 ML 算法,保证了该方法的稳健性。心脏病和死亡率的显著上升影响着全球人类健康和全球经济。降低心脏病发病率和死亡率需要对心脏病进行早期检测。在这项研究中,一种混合方法利用具有量子计算能力的技术来解决传统机器学习算法无法解决的复杂问题,并最大限度地减少计算费用。所提出的方法是在 Raspberry Pi 5 图形处理单元(GPU)平台上开发的,并在一个广泛的数据集上进行了测试,该数据集整合了冠心病患者和健康对照组的临床和成像数据。与经典机器学习模型相比,用于冠心病的混合 QML 模型的准确性、灵敏度、F1 分数和特异性都高出数倍。
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Early Detection of Coronary Heart Disease Using Hybrid Quantum Machine Learning Approach
Coronary heart disease (CHD) is a severe cardiac disease, and hence, its early diagnosis is essential as it improves treatment results and saves money on medical care. The prevailing development of quantum computing and machine learning (ML) technologies may bring practical improvement to the performance of CHD diagnosis. Quantum machine learning (QML) is receiving tremendous interest in various disciplines due to its higher performance and capabilities. A quantum leap in the healthcare industry will increase processing power and optimise multiple models. Techniques for QML have the potential to forecast cardiac disease and help in early detection. To predict the risk of coronary heart disease, a hybrid approach utilizing an ensemble machine learning model based on QML classifiers is presented in this paper. Our approach, with its unique ability to address multidimensional healthcare data, reassures the method's robustness by fusing quantum and classical ML algorithms in a multi-step inferential framework. The marked rise in heart disease and death rates impacts worldwide human health and the global economy. Reducing cardiac morbidity and mortality requires early detection of heart disease. In this research, a hybrid approach utilizes techniques with quantum computing capabilities to tackle complex problems that are not amenable to conventional machine learning algorithms and to minimize computational expenses. The proposed method has been developed in the Raspberry Pi 5 Graphics Processing Unit (GPU) platform and tested on a broad dataset that integrates clinical and imaging data from patients suffering from CHD and healthy controls. Compared to classical machine learning models, the accuracy, sensitivity, F1 score, and specificity of the proposed hybrid QML model used with CHD are manifold higher.
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