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逻辑回归和卷积神经网络在肺癌高危人群预测和诊断中的应用。

Application of logistic regression and convolutional neural network in prediction and diagnosis of high-risk populations of lung cancer.

机构信息

Departments of Toxicology.

Occupational and Environmental Health.

出版信息

Eur J Cancer Prev. 2022 Mar 1;31(2):145-151. doi: 10.1097/CEJ.0000000000000684.

Abstract

OBJECTIVES

The early detection, early diagnosis, and early treatment of lung cancer are the best strategies to improve the 5-year survival rate. Logistic regression analysis can be a helpful tool in the early detection of high-risk groups of lung cancer. Convolutional neural network (CNN) could distinguish benign from malignant pulmonary nodules, which is critical for early precise diagnosis and treatment. Here, we developed a risk assessment model of lung cancer and a high-precision classification diagnostic model using these technologies so as to provide a basis for early screening of lung cancer and for intelligent differential diagnosis.

METHODS

A total of 355 lung cancer patients, 444 patients with benign lung disease and 472 healthy people from The First Affiliated Hospital of Zhengzhou University were included in this study. Moreover, the dataset of 607 lung computed tomography images was collected from the above patients. The logistic regression method was employed to screen the high-risk groups of lung cancer, and the CNN model was designed to classify pulmonary nodules into benign or malignant nodules.

RESULTS

The area under the curve of the lung cancer risk assessment model in the training set and the testing set were 0.823 and 0.710, respectively. After finely optimizing the settings of the CNN, the area under the curve could reach 0.984.

CONCLUSIONS

This performance demonstrated that the lung cancer risk assessment model could be used to screen for high-risk individuals with lung cancer and the CNN framework was suitable for the differential diagnosis of pulmonary nodules.

摘要

目的

肺癌的早期发现、早期诊断和早期治疗是提高 5 年生存率的最佳策略。逻辑回归分析可以作为肺癌高危人群早期检测的有用工具。卷积神经网络(CNN)可用于区分良恶性肺结节,这对于早期精确诊断和治疗至关重要。在这里,我们使用这些技术开发了肺癌风险评估模型和高精度分类诊断模型,为肺癌的早期筛查和智能鉴别诊断提供了依据。

方法

本研究共纳入郑州大学第一附属医院 355 例肺癌患者、444 例良性肺部疾病患者和 472 例健康人群,共收集 607 例肺部 CT 图像数据集。采用逻辑回归方法筛选肺癌高危人群,设计 CNN 模型对肺结节进行良恶性分类。

结果

训练集和测试集中肺癌风险评估模型的曲线下面积分别为 0.823 和 0.710。经过对 CNN 模型参数的精细优化,曲线下面积可达 0.984。

结论

该研究表明,肺癌风险评估模型可用于筛选肺癌高危个体,CNN 框架适用于肺结节的鉴别诊断。

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