Alzahrani Ahmed, Raza Muhammad Ali, Asghar Muhammad Zubair
Department of Computer Science, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah, Saudi Arabia.
Gomal Research Institute of Computing, Faculty of Computing, Gomal University, D.I. Khan, KP, Pakistan.
PeerJ Comput Sci. 2025 Apr 16;11:e2806. doi: 10.7717/peerj-cs.2806. eCollection 2025.
As per a WHO survey conducted in 2023, more than 2.3 million breast cancer (BC) cases are reported every year. In nearly 95% of countries, the second leading cause of death for females is BC. Breast and cervical cancers cause 80% of reported deaths in middle-income countries. Early detection of breast cancer can help patients better manage their condition and increase their chances of survival. However, traditional AI models frequently conceal their decision-making processes and are mainly tailored for classification tasks. Our approach combines composite deep learning techniques with explainable artificial intelligence (XAI) to enhance interpretability and predictive accuracy. By utilizing XAI to examine features and provide insights into its classifications, the model clarifies the rationale behind its decisions, resulting in an understanding of concealed patterns linked to breast cancer detection. The XAI strengthens practitioners' and health researchers' confidence and understanding of artificial intelligence (AI)-based models. In this work, we introduce a hybrid deep learning bi-directional long short-term memory-convolutional neural network (BiLSTM-CNN) model to identify breast cancer using patient data effectively. We first balanced the dataset before using the BiLSTM-CNN model. The hybrid deep learning (DL) model presented here performed well in comparison to other studies, with 0.993 accuracy, precision 0.99, recall 0.99, and F1-score 0.99.
根据世界卫生组织2023年进行的一项调查,每年报告的乳腺癌(BC)病例超过230万例。在近95%的国家,女性的第二大死因是乳腺癌。乳腺癌和宫颈癌导致中等收入国家80%的报告死亡病例。早期发现乳腺癌可以帮助患者更好地控制病情,增加生存几率。然而,传统的人工智能模型常常隐藏其决策过程,并且主要针对分类任务进行定制。我们的方法将复合深度学习技术与可解释人工智能(XAI)相结合,以提高可解释性和预测准确性。通过利用XAI来检查特征并深入了解其分类,该模型阐明了其决策背后的原理,从而使人们了解与乳腺癌检测相关的隐藏模式。XAI增强了从业者和健康研究人员对基于人工智能(AI)模型的信心和理解。在这项工作中,我们引入了一种混合深度学习双向长短期记忆-卷积神经网络(BiLSTM-CNN)模型,以有效地利用患者数据识别乳腺癌。在使用BiLSTM-CNN模型之前,我们首先对数据集进行了平衡处理。与其他研究相比,这里提出的混合深度学习(DL)模型表现良好,准确率为0.993,精确率为0.99,召回率为0.99,F1分数为0.99。