1 |
李亿廷. 多排螺旋CT诊断职业性尘肺病的价值分析[J]. 中外医学研究,2020, 18(18): 66-67.
|
2 |
曾 敏,胡茂能,含 笑,等. 胸部DR高仟伏成像与CT成像在尘肺病诊断中的价值比较[J]. 安徽医学,2020, 41(10):1147-1150.
|
3 |
张柏林,雷 益,纪 祥. 多排螺旋CT诊断职业性尘肺病的价值评价[J]. 职业卫生与应急救援,2019, 37(3): 218-221.
|
4 |
杨志前,李秀花,张伊莉,等. 尘肺患者血清神经元特异性烯醇化酶水平检测分析[J]. 中国工业医学杂志,2020, 33(3): 266-268.
|
5 |
蔡志春. 对GBZ70-2015《职业性尘肺病的诊断》的理解[J]. 中华劳动卫生职业病杂志,2016, 34(11): 866-867.
|
6 |
张建芳. 尘肺病综合治疗指南[M]. 煤炭工业出版社,2013.
|
7 |
Chiumello D, Umbrello M, Sferrazza PG, et al. Global and regional diagnostic accuracy of lung ultrasound compared to CT in patients with acute respiratory distress syndrome[J]. Crit Care Med, 2019, 47(11): 1599-1606.
|
8 |
Devnath L, Summons P, Luo S, et al. Computer-aided diagnosis of coal workers′pneumoconiosis in chest X-ray radiographs using machine learning: A systematic literature review[J]. Int J Environ Res Public Health, 2022, 19(11): 6439-6446.
|
9 |
Li J, Yin P, Wang H, et al. The burden of pneumoconiosis in China: an analysis from the Global Burden of Disease Study 2019[J]. BMC Public Health, 2022, 22(1): 1114-1125.
|
10 |
梁俊芳,上官建伟. 薄层螺旋CT联合CEA和NSE在早期肺癌检测中的诊断价值[J]. 中国卫生工程学,2020, 19(1): 80-82.
|
11 |
任泽元,钱树森. 高分辨率CT联合肺癌血清肿瘤标志物检测对早期肺癌的诊断价值[J]. 分子影像学杂志,2020, 43(3): 457-461.
|
12 |
Masanori A. Imaging diagnosis of classical and new pneumoconiosis: predominant reticular HRCT pattern[J]. Insights Imaging, 2021, 12(1): 33-40.
|
13 |
李鹏飞,台 娜,马小玉,等. 血清CEA、SCCA、NSE联合多层螺旋CT在诊断周围型肺癌中的应用[J]. 中国CT和MRI杂志,2020, 18(7): 42-44, 154.
|
14 |
冯小玲,陈红梅,成军霞,等. 血清NSE、CYFRA21-1、SCC水平联合CT灌注成像对肺结节良恶性病变的诊断价值[J]. 标记免疫分析与临床,2020, 27(9): 1551-1555, 1619.
|
15 |
Huang Y, Si Y, Hu B, et al. Transformer-based factorized encoder for classification of pneumoconiosis on 3D CT images[J]. Comput Biol Med, 2022, 150(4): 106-110.
|
16 |
Genet S, Visser E, van den Borne B, et al. Correction of the NSE concentration in hemolyzed serum samples improves its diagnostic accuracy in small-cell lung cancer[J]. Oncotarget, 2020, 11(27): 2660-2668.
|
17 |
唐 黎. 多层螺旋CT征象联合血清肿瘤标记物CYFRA21-1、CEA和NSE检测对诊断肺癌的临床价值[J]. 中国CT和MRI杂志,2019, 17(7): 71-73.
|
18 |
曾 晓,谢志斌,戴剑明,等. 穿刺洗脱液及血清CEA、NSE、Cyfra21-1在肺癌诊断中的应用价值分析[J]. 肿瘤药学,2020, 10(5): 580-584.
|
19 |
Yuan J, Sun Y, Wang K, et al. Development and validation of reassigned CEA, CYFRA21-1 and NSE-based models for lung cancer diagnosis and prognosis prediction[J]. BMC Cancer, 2022, 22(1): 686-695.
|
20 |
Lu L, Zha Z, Zhang P, et al. NSE, positively regulated by LINC00657-miR-93-5p axis, promotes small cell lung cancer (SCLC) invasion and epithelial-mesenchymal transition (EMT) process[J]. Int J Med Sci, 2021, 18(16): 3768-3779.
|
21 |
Li Y, Kuang Y, Jia Y, et al. Diagnostic value of NSE factor combined with ultrasound hemodynamic indexes in cervical lymph node metastasis of lung cancer[J]. Oncol Lett, 2020, 20(1): 699-704.
|
22 |
杨明星,董 文,李 冀. 血清NSE、1, 25-(OH)_(2)D_(3)水平与尘肺病发病风险及其肺部炎症的相关性研究[J]. 国际检验医学杂志,2022, 43(9): 1097-1099.
|
23 |
Li Q, Sang S. Diagnostic value and clinical significance of combined detection of serum markers CYFRA21-1, SCC Ag, NSE, CEA and ProGRP in non-small cell lung carcinoma[J]. Clin Lab, 2020, 66(11): 124-133.
|
24 |
朱莉莉,袁新平. CT联合血清肿瘤标志物水平检测在周围型肺癌患者中的诊断价值[J]. 中国医师杂志,2019, 21(10): 1529-1532.
|
25 |
盛俊卿,李卫星,贾 祯,等. 多层螺旋CT灌注成像联合血清CYFRA21-1、CEA、NSE对周围型非小细胞肺癌的诊断价值[J]. 解放军医学杂志,2020, 45(5): 542-546.
|
26 |
Wang Z, Hu M, Zeng M, et al. Intelligent image diagnosis of pneumoconiosis based on wavelet transform-derived texture features[J]. Comput Math Methods Med, 2022, 20(3): 701-714.
|
27 |
Hayashi H, Ashizawa K, Takahashi M, et al. The diagnosis of early pneumoconiosis in dust-exposed workers: comparison of chest radiography and computed tomography[J]. Acta Radiol, 2022, 63(7): 909-913.
|
28 |
Hu X, Zhou R, Hu M, et al. Differentiation and prediction of pneumoconiosis stage by computed tomography texture analysis based on U-Net neural network[J]. Comput Methods Programs Biomed, 2022, 225(3): 1070-1079.
|
29 |
Yu S, Wang Y, Fan Y, et al. Pulmonary hypertension in patients with pneumoconiosis with progressive massive fibrosis[J]. Occup Environ Med, 2022, 10(8): 95-102.
|
30 |
杨 洁,冀瑞烨,张玉祥. 影像科尘肺合并肺结核患者高分辨率CT特征及其鉴别诊断价值研究[J]. 中国CT和MRI杂志,2022, 20(5): 108-109.
|