[双能谱CT定量指标辅助尘肺病风险预测]。

Q3 Medicine
H Xing, Turepu Aisanjiang, Y J Cheng, P Dong, S Q Ma, J X Xu, H Dou, X R Ai
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引用次数: 0

摘要

目的:探讨双能谱CT定量指标及相关临床资料,建立预测尘肺的预测模型。方法:对2024年4月新疆维吾尔自治区第三人民医院(新疆自治区职业病医院)职业病鉴定专家组2022年1月至2023年12月诊断的203例尘肺患者资料进行回顾性分析。选取有粉尘暴露史的非尘肺患者207例作为对照组。两组测量资料比较采用依赖质量检验中的T检验或Wilcoxon检验,计数数据采用卡方检验或fisher检验,比较两组患者的能谱相关指标和临床指标,通过单因素分析筛选诊断尘肺的潜在因素,并通过多因素logistic回归进一步确定独立危险因素。在回归分析结果的基础上,构建机器学习模型,绘制受试者工作特征曲线(ROC)评价模型的有效性,并计算曲线下面积(AUC)值、敏感性和特异性。结果:吸烟、肺组织质量、二氧化硅(SiO(2))等效总质量和SiO(2)等效浓度是尘肺病的危险因素(POR=0.53、0.99、1.13、0.85、POR)结论:双能谱CT定量分析指标与临床相关指标建立的机器学习预测模型对尘肺病的诊断具有较好的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Dual-energy spectral CT quantitative indicators assist in the risk prediction of pneumoconiosis].

Objective: To explore the quantitative indexes of dual energy spectrum CT and related clinical data to establish a predictive model for predicting pneumoconiosis. Methods: In April 2024, the information of 203 pneumoconiosis patients diagnosed by the occupational disease appraisal expert group in the Third People's Hospital of Xinjiang Uygur Autonomous Region (Occupational Disease Hospital of Xinjiang Autonomous Region) from January 2022 to December 2023 was retrospectively analyzed. Another 207 non-pneumoconiosis patients with dust exposure history were selected as control group. The measurement data between the two groups were compared using T test or Wilcoxon in dependent quality test, count date asing chi-square or Fishers test, the energy spectrum related indicators and clinical indicators of the patients were compared between groups, and potential factors for diagnosis of pneumoconiosis were screened through univariate analysis, and independent risk factors were further determined by multivariate logistic regression. Based on the results of regression analysis, the machine learning model was constructed, and the reciver operating characteristic curve (ROC) was drawn to evaluate the efficiency of the model, and the Area under cruve (AUC) value, sensitivity and specificity were calculated. Results: Smoking, lung tissue mass, silicon dioxide (SiO(2)) equivalent total mass and SiO(2) equivalent concentration were the risk factors for pneumoconiosis (P<0.05) . Multivariate logistic regression analysis showed that smoking, lung tissue mass, total lung SiO(2) equivalent total volume and total lung SiO(2) equivalent total mass were independent predicators of the diagnosis of pneumoconiosis (OR=0.53, 0.99, 1.13, 0.85, P<0.05) . Logistic regression machine learning was used to establish a predictive model, and the training set AUC was 0.74, and the verification set AUC was 0.72, indicating that the model had good accuracy and certain ability to diagnose pneumoconiosis. Conclusion: The machine learning prediction model established by the quantitative analysis index of dual energy spectrum CT and clinical related indexes has a good diagnostic performance for the diagnosis of pneumoconiosis.

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来源期刊
中华劳动卫生职业病杂志
中华劳动卫生职业病杂志 Medicine-Medicine (all)
CiteScore
1.00
自引率
0.00%
发文量
9764
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