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利用深度学习对肺 3D 图像进行分割和放射组学纹理分析来识别矽肺高危人群。

Identification of high-risk population of pneumoconiosis using deep learning segmentation of lung 3D images and radiomics texture analysis.

机构信息

School of Medicine, Anhui University of Science and Technology, Huainan, PR China; Anhui Province Engineering Laboratory of Occupational Health and Safety, Anhui University of Science and Technology, Huainan, PR China.

School of Medicine, Anhui University of Science and Technology, Huainan, PR China; Anhui Province Engineering Laboratory of Occupational Health and Safety, Anhui University of Science and Technology, Huainan, PR China.

出版信息

Comput Methods Programs Biomed. 2024 Feb;244:108006. doi: 10.1016/j.cmpb.2024.108006. Epub 2024 Jan 4.

Abstract

OBJECTION

The aim of this study is to develop an early-warning model for identifying high-risk populations of pneumoconiosis by combining lung 3D images and radiomics lung texture features.

METHODS

A retrospective study was conducted, including 600 dust-exposed workers and 300 confirmed pneumoconiosis patients. Chest computed tomography (CT) images were divided into a training set and a test set in a 2:1 ratio. Whole-lung segmentation was performed using deep learning models for feature extraction of radiomics. Two feature selection algorithms and five classification models were used. The optimal model was selected using a 10-fold cross-validation strategy, and the calibration curve and decision curve were evaluated. To verify the applicability of the model, the diagnostic efficiency and accuracy between the model and human interpretation were compared. Additionally, the risk probabilities for different risk groups defined by the model were compared at different time intervals.

RESULTS

Four radiomics features were ultimately used to construct the predictive model. The logistic regression model was the most stable in both the training set and testing set, with an area under curve (AUC) of 0.964 (95 % confidence interval [CI], 0.950-0.976) and 0.947 (95 %CI, 0.925-0.964). In the training and testing sets, the Brier scores were 0.092 and 0.14, respectively, with threshold probability ranges of 2 %-99 % and 2 %-85 %. These results indicate that the model exhibits good calibration and clinical benefit. The comparison between the model and human interpretation showed that the model was not inferior in terms of diagnostic efficiency and accuracy. Additionally, the high-risk population identified by the model was diagnosed as pneumoconiosis two years later.

CONCLUSION

This study provides a meticulous and quantifiable method for detecting and assessing the risk of pneumoconiosis, building upon accurate diagnosis. Employing risk scoring and probability estimation, not only enhances the efficiency of diagnostic physicians but also provides a valuable reference for controlling the occurrence of pneumoconiosis.

摘要

异议

本研究旨在通过结合肺部 3D 图像和放射组学肺纹理特征,开发一种识别尘肺病高危人群的预警模型。

方法

本研究为回顾性研究,共纳入 600 名尘暴露工人和 300 名确诊尘肺病患者。将胸部 CT 图像按 2:1 的比例分为训练集和测试集。使用深度学习模型对全肺进行分割,以提取放射组学特征。使用两种特征选择算法和五种分类模型。采用 10 折交叉验证策略选择最优模型,并评估校准曲线和决策曲线。为验证模型的适用性,比较了模型和人工解读之间的诊断效率和准确率。此外,还比较了模型定义的不同风险组在不同时间间隔的风险概率。

结果

最终选择了 4 个放射组学特征来构建预测模型。在训练集和测试集中,逻辑回归模型最稳定,曲线下面积(AUC)分别为 0.964(95%置信区间[CI],0.950-0.976)和 0.947(95%CI,0.925-0.964)。在训练集和测试集中,Brier 评分分别为 0.092 和 0.14,阈值概率范围分别为 2%-99%和 2%-85%。这些结果表明该模型具有良好的校准和临床获益。模型与人工解读的比较结果表明,该模型在诊断效率和准确率方面并不逊于人工解读。此外,模型识别的高危人群在两年后被诊断为尘肺病。

结论

本研究为尘肺病的检测和风险评估提供了一种细致和可量化的方法,为准确诊断奠定了基础。通过风险评分和概率估计,不仅提高了诊断医师的效率,也为控制尘肺病的发生提供了有价值的参考。

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