Mirasbekov Yerken, Aidossov Nurduman, Mashekova Aigerim, Zarikas Vasilios, Zhao Yong, Ng Eddie Yin Kwee, Midlenko Anna
School of Engineering and Digital Sciences, Nazarbayev University, Astana 010000, Kazakhstan.
Department of Mathematics, University of Thessaly, GR-35100 Lamia, Greece.
Biomimetics (Basel). 2024 Oct 9;9(10):609. doi: 10.3390/biomimetics9100609.
Breast cancer remains a global health problem requiring effective diagnostic methods for early detection, in order to achieve the World Health Organization's ultimate goal of breast self-examination. A literature review indicates the urgency of improving diagnostic methods and identifies thermography as a promising, cost-effective, non-invasive, adjunctive, and complementary detection method. This research explores the potential of using machine learning techniques, specifically Bayesian networks combined with convolutional neural networks, to improve possible breast cancer diagnosis at early stages. Explainable artificial intelligence aims to clarify the reasoning behind any output of artificial neural network-based models. The proposed integration adds interpretability of the diagnosis, which is particularly significant for a medical diagnosis. We constructed two diagnostic expert models: Model A and Model B. In this research, Model A, combining thermal images after the explainable artificial intelligence process together with medical records, achieved an accuracy of 84.07%, while model B, which also includes a convolutional neural network prediction, achieved an accuracy of 90.93%. These results demonstrate the potential of explainable artificial intelligence to improve possible breast cancer diagnosis, with very high accuracy.
乳腺癌仍然是一个全球性的健康问题,需要有效的诊断方法来进行早期检测,以实现世界卫生组织的乳房自我检查这一最终目标。文献综述表明了改进诊断方法的紧迫性,并将热成像确定为一种有前景、经济高效、非侵入性、辅助性和补充性的检测方法。本研究探索了使用机器学习技术,特别是贝叶斯网络与卷积神经网络相结合,来改善早期乳腺癌诊断可能性的潜力。可解释人工智能旨在阐明基于人工神经网络的模型任何输出背后的推理过程。所提出的整合增加了诊断的可解释性,这对于医学诊断尤为重要。我们构建了两个诊断专家模型:模型A和模型B。在本研究中,模型A将可解释人工智能处理后的热图像与病历结合在一起,准确率达到了84.07%,而同样包含卷积神经网络预测的模型B的准确率则达到了90.93%。这些结果证明了可解释人工智能在以非常高的准确率改善乳腺癌诊断可能性方面的潜力。