College of Computer Science And Cyber Security(Pilot Software College), Chengdu University of Technology, Chengdu, 610059, China.
Sci Rep. 2024 Oct 21;14(1):24699. doi: 10.1038/s41598-024-74778-7.
The World Health Organization states that early diagnosis is essential to increasing the cure rate for breast cancer, which poses a danger to women's health worldwide. However, the efficacy and cost limitations of conventional diagnostic techniques increase the possibility of misdiagnosis. In this work, we present a quantum hybrid classical convolutional neural network (QCCNN) based breast cancer diagnosis approach with the goal of utilizing quantum computing's high-dimensional data processing power and parallelism to increase diagnosis efficiency and accuracy. When working with large-scale and complicated datasets, classical convolutional neural network (CNN) and other machine learning techniques generally demand a large amount of computational resources and time. Their restricted capacity for generalization makes it challenging to maintain consistent performance across multiple data sets. To address these issues, this paper adds a quantum convolutional layer to the classical convolutional neural network to take advantage of quantum computing to improve learning efficiency and processing speed. Simulation experiments on three breast cancer datasets, GBSG, SEER and WDBC, validate the robustness and generalization of QCCNN and significantly outperform CNN and logistic regression models in classification accuracy. This study not only provides a novel method for breast cancer diagnosis but also achieves a breakthrough in breast cancer diagnosis and promotes the development of medical diagnostic technology.
世界卫生组织指出,早期诊断对于提高乳腺癌的治愈率至关重要,乳腺癌对全球女性健康构成威胁。然而,传统诊断技术的疗效和成本限制增加了误诊的可能性。在这项工作中,我们提出了一种基于量子混合经典卷积神经网络(QCCNN)的乳腺癌诊断方法,旨在利用量子计算的高维数据处理能力和并行性来提高诊断效率和准确性。在处理大规模和复杂数据集时,经典卷积神经网络(CNN)和其他机器学习技术通常需要大量的计算资源和时间。它们的概括能力有限,使得在多个数据集上保持一致的性能变得具有挑战性。为了解决这些问题,本文在经典卷积神经网络中添加了一个量子卷积层,利用量子计算来提高学习效率和处理速度。对三个乳腺癌数据集(GBSG、SEER 和 WDBC)的仿真实验验证了 QCCNN 的鲁棒性和泛化性,并在分类准确性方面显著优于 CNN 和逻辑回归模型。本研究不仅为乳腺癌诊断提供了一种新方法,而且在乳腺癌诊断方面取得了突破,推动了医疗诊断技术的发展。