肺癌
接收机工作特性
卷积神经网络
主成分分析
肺
拉曼光谱
医学
癌症
肿瘤科
内科学
放射科
人工智能
模式识别(心理学)
病理
胃肠病学
计算机科学
光学
物理
作者
Jiamin Shi,Rui Li,Yuchen Wang,Chenlei Zhang,Xiaohong Lyu,Yuan Wan,Zhanwu Yu
标识
DOI:10.1016/j.saa.2024.124189
摘要
Early detection and postoperative assessment are crucial for improving overall survival among lung cancer patients. Here, we report a non-invasive technique that integrates Raman spectroscopy with machine learning for the detection of lung cancer. The study encompassed 88 postoperative lung cancer patients, 73 non-surgical lung cancer patients, and 68 healthy subjects. The primary aim was to explore variations in serum metabolism across these cohorts. Comparative analysis of average Raman spectra was conducted, while principal component analysis was employed for data visualization. Subsequently, the augmented dataset was used to train convolutional neural networks (CNN) and Resnet models, leading to the development of a diagnostic framework. The CNN model exhibited superior performance, as verified by the receiver operating characteristic curve. Notably, postoperative patients demonstrated an increased likelihood of recurrence, emphasizing the crucial need for continuous postoperative monitoring. In summary, the integration of Raman spectroscopy with CNN-based classification shows potential for early detection and postoperative assessment of lung cancer.
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