使用 ResNet 架构的卷积神经网络方法进行肺癌分类

Teknika Pub Date : 2024-07-09 DOI:10.34148/teknika.v13i2.906
Aldrich Deril Christian Zebua, Dedy Yehezkiel Marbun, Felix Thedora, Mawaddah Harahap
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引用次数: 0

摘要

肺癌已成为健康领域最可怕的幽灵之一,每年导致许多人死亡。因此,肺癌类型的分类对于确定适当的治疗步骤非常重要。考虑到肺癌早期治疗的效果和效率要高得多,准确的分类是提高生存率的关键。本研究重点关注三种常见肺癌类型的分类:腺癌、大细胞癌和鳞状细胞癌。为了达到最佳效果,本研究采用了 ResNet 架构,这是一种深度神经网络模型,已在多个领域证明了其能力。在模型使用之前,包含患者肺部 X 光图像的数据集需要经过预处理。在此阶段,每张图像都被调整为 256x256 像素,以确保图像的统一性和与模型的兼容性。此外,本研究还训练了各种 ResNet 模型,从 ResNet50、ResNet101 到 ResNet152,其中 ResNet152 是参数最多的模型。通过比较每个模型的性能,本研究发现所有训练过的 ResNet 模型都能在肺癌类型分类中产生良好的准确性。在这些模型中,ResNet152 的准确率高达 89%,表现最为出色。这一结果表明,ResNet 架构在辅助高精度肺癌类型分类方面具有巨大潜力。这项研究为改善肺癌的诊断和治疗做出了重要贡献,为肺癌患者的美好未来铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Lung Cancer with Convolutional Neural Network Method Using ResNet Architecture
Lung cancer has become one of the most frightening specters in the world of health, leading many people to death each year. Therefore, the classification of lung cancer types is very important to determine the appropriate treatment steps. Considering that lung cancer treatment in the early stages is far more effective and efficient, accurate classification is the key to improving survival rates. This research focuses on the classification of three common lung cancer types: Adenocarcinoma, Large Cell Carcinoma, and Squamous Cell Carcinoma. To achieve optimal results, this study utilizes the ResNet architecture, a deep neural network model that has demonstrated its capabilities in various fields. Before being used on the model, the dataset containing lung X-ray images of patients undergoes preprocessing. At this stage, each image is resized to 256x256 pixels to ensure uniformity and compatibility with the model. Furthermore, this research trains various ResNet models, ranging from ResNet50, ResNet101, to ResNet152, which is the model with the most parameters. By comparing the performance of each model, this study finds that all trained ResNet models are capable of producing good accuracy in classifying lung cancer types. Among these models, ResNet152 demonstrates the most superior performance with an accuracy of 89%. This result suggests that the ResNet architecture has great potential to be used as an aid in classifying lung cancer types with a high level of accuracy. This research makes a significant contribution to the effort to improve the diagnosis and treatment of lung cancer, paving the way for a brighter future for lung cancer patients.
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