Faculty of Applied Computer Science, King Saud University, Riyadh 11451, Saudi Arabia.
Department of Information Systems, Madina Higher Institute of Management and Technology, Shabramant 12947, Egypt.
Sensors (Basel). 2022 Jul 20;22(14):5429. doi: 10.3390/s22145429.
Liver cancer is a life-threatening illness and one of the fastest-growing cancer types in the world. Consequently, the early detection of liver cancer leads to lower mortality rates. This work aims to build a model that will help clinicians determine the type of tumor when it occurs within the liver region by analyzing images of tissue taken from a biopsy of this tumor. Working within this stage requires effort, time, and accumulated experience that must be possessed by a tissue expert to determine whether this tumor is malignant and needs treatment. Thus, a histology expert can make use of this model to obtain an initial diagnosis. This study aims to propose a deep learning model using convolutional neural networks (CNNs), which are able to transfer knowledge from pre-trained global models and decant this knowledge into a single model to help diagnose liver tumors from CT scans. Thus, we obtained a hybrid model capable of detecting CT images of a biopsy of a liver tumor. The best results that we obtained within this research reached an accuracy of 0.995, a precision value of 0.864, and a recall value of 0.979, which are higher than those obtained using other models. It is worth noting that this model was tested on a limited set of data and gave good detection results. This model can be used as an aid to support the decisions of specialists in this field and save their efforts. In addition, it saves the effort and time incurred by the treatment of this type of cancer by specialists, especially during periodic examination campaigns every year.
肝癌是一种危及生命的疾病,也是世界上增长最快的癌症类型之一。因此,早期发现肝癌可降低死亡率。本工作旨在建立一个模型,通过分析从肿瘤活检中获取的组织图像,帮助临床医生确定肿瘤发生在肝区时的肿瘤类型。在这个阶段工作需要努力、时间和积累的经验,这些经验必须由组织专家来确定肿瘤是否恶性并需要治疗。因此,组织学专家可以利用这个模型来获得初步诊断。本研究旨在提出一种使用卷积神经网络(CNN)的深度学习模型,该模型能够从预训练的全局模型中转移知识,并将该知识沉淀到单个模型中,以帮助从 CT 扫描中诊断肝肿瘤。因此,我们获得了一个能够检测肝脏肿瘤活检 CT 图像的混合模型。在这项研究中,我们获得了最好的结果,准确率达到 0.995,精度值为 0.864,召回率为 0.979,高于使用其他模型获得的结果。值得注意的是,该模型是在有限的数据集中进行测试的,并取得了良好的检测结果。该模型可以作为辅助专家决策的工具,节省他们的精力。此外,它还可以节省专家在治疗这种癌症方面的精力和时间,特别是在每年的定期检查活动中。