利用预先训练的 CNN 模型检测肺癌

Chee Chiet Chai, W. Khoh, Ying Han Pang, Hui-Yen Yap
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引用次数: 0

摘要

在马来西亚,肺癌是一种常见的癌症,影响着大多数男性公民。早期发现肺癌可降低死亡率。检测肺癌的唯一方法是进行 CT 扫描,而且还需要医生检查扫描结果以确认疾病。从另一个角度讲,计算机对检测和诊断工具的支持将帮助医生更准确、更有效地判断肺癌。这项研究工作有三个主要目标。第一个目标是研究从 CT 扫描图像中检测和识别肺癌的最新研究成果。然后,文章将采用预先训练好的卷积神经网络模型进行肺癌检测。文章还评估了卷积模型在肺癌图像数据上的性能。然后,本文在预训练模型的基础上增加了一些层,并修改了epochs、批量大小、优化器等参数,以进行模型训练。之后,在图像预处理中使用 Python Pylidc 对数据集进行过滤。总体而言,ResNet-50、VGG-16、Xception 和 MobileNet 等经过预训练的模型在从 CT 扫描图像中对肺癌进行分类时取得了高于最先进水平的性能,准确率在 78% 到 86% 之间。检测准确率最高的是预训练的 VGG-16 模型,它增加了一些全连接层、16 个批次大小和 Adam 优化器,检测准确率达到了 86.71%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lung Cancer Detection with Pre-Trained CNN Models
Lung cancer is a common cancer in Malaysia, affecting the majority of male citizens. The early detection of lung cancer will decrease its death rate. The only way to detect lung cancer is with a CT scan, and it also requires the doctor to check the scan to confirm the disease. In another way, the computer's support for the detection and diagnosis tool will assist doctors in determining lung cancer more accurately and efficiently. There are three main objectives for this research work. The first target is to study state-of-the-art research work to detect and recognize lung cancer from CT scan images. Then, the article will aim to adopt pre-trained convolutional neural network models in lung cancer detection. It also evaluates the performance of convolutional models on lung cancer imagery data. Then, the pre-trained models with a few added layers and modifications to parameters such as epochs, batch size, optimizer, etc. to conduct model training in this article. After that, Python Pylidc is used in image pre-processing to filter the dataset. Overall, pre-trained models such as ResNet-50, VGG-16, Xception, and MobileNet achieve above-state-of-the-art performance in classifying lung cancer from CT scan images in the range of 78% to 86% accuracy. The best detection accuracy result is the pre-trained VGG-16 model with the addition of some fully connected layers, 16 batch sizes, and the Adam optimizer, which achieved 86.71%.
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