深度学习模型在乳腺癌预后预测中的应用及比较

Mahadi Hasan, Miraz Al Mamun, M. Das, Musaab Hasan, Asm Mohaimenul Islam
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引用次数: 2

摘要

各种类型的肺癌、食管癌、纵隔癌(肺之间的区域)、胸膜癌(胸腔和肺周围的膜)、气管癌、胸腺癌和心脏癌都被归类为乳腺癌,通常被称为胸癌。乳腺癌也可以从身体其他部位开始的癌症扩散。胸痛是乳腺癌的常见症状之一,包括咯血或咳血。此外,咳嗽疼痛或咳嗽不停是乳腺癌的征兆。间皮瘤是一种始于胸部或腹部的癌症,经常影响肺部和其他胸部器官和组织,这促使我们继续研究这种疾病,以便这项研究有助于早期发现。胸部x光片和计算机断层扫描(CT)图像是最常用于这些疾病的两种诊断技术。本研究提出了一种用于使用胸部ct扫描图像数据集检测乳腺癌的多分类深度学习模型。尽管胸部CT扫描在症状出现之前就有帮助,并能精确地检测出图像中发现的异常特征,但在疾病的早期阶段,胸部x光检查的效果较差。此外,使用这些类型的照片将提高分类精度。据我们所知,文献中没有深度学习模型可以在这些障碍之间做出选择。目前的工作考虑了三种架构的有效性- CNN, ResNet50和DenseNet121 -。使用公开的数字CT数据集(腺癌、大细胞癌、鳞状细胞癌和正常)对各种深度学习架构进行了全面评估。研究结果表明,DenseNet121模型比其他三种建议的模型表现得更好。CNN的准确率为56.19%,而ResNet50的准确率为56.51%。DenseNet121模型的准确率为71.74% (ACC)。我们打算用大数据集进一步研究深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application and comparison of Deep Learning models for the prediction of chest cancer prognosis
Lung cancers of all varieties, esophageal cancers, and cancers of the mediastinum (the area between the lungs), pleura (the membrane lining the chest cavity and surrounding the lungs), trachea, thymus gland, and heart are all classified as chest cancers, often known as thoracic cancers. Chest cancer can also spread from cancers that start in other places of the body. Chest pain is one of the usual signs of chest cancer, including hemoptysis or a cough that produces blood. Also, Coughing that hurts or a cough that does not go away is a sign of chest cancer. Mesothelioma, a cancer that begins in the lining of the chest or abdomen, frequently affects the lungs and other thoracic organs and tissues, which has prompted us to continue with this disease so that this research will aid in early detection. Chest X-rays and computed tomography (CT) pictures are the two diagnostic techniques that are most frequently utilized for these disorders. This study suggests a multiclassification deep learning model for detecting chest cancer using a dataset of chest CT-Scan pictures. While a chest CT scan is helpful even before symptoms show up and precisely detects the aberrant features that are found in images, a chest X-ray is less effective in the early stages of the disease.Furthermore, employing these kinds of photos will improve classification precision. To the best of our knowledge, no deep learning model in the literature can choose between these disorders. The current work considers the effectiveness of three architectures— CNN, ResNet50, and DenseNet121—. A thorough assessment of various deep learning architectures is performed using publicly available digital CT datasets with four classifications (Adenocarcinoma, Large Cell Carcinoma, Squamous Cell Carcinoma, and Normal). The study’s findings revealed that the DenseNet121 model performs better than the three other suggested models. CNN demonstrated 56.19% accuracy, whereas ResNet50 demonstrated 56.51% accuracy. The DenseNet121 model demonstrated 71.74% accuracy (ACC). We intend to investigate further deep learning models with large datasets.
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