相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。Perceptual and objective physical quality of chest images: a comparison between digital radiographic chest images processed for cancer screening and pneumoconiosis screening in Japan
Ryo Akima et al.
INDUSTRIAL HEALTH (2023)
Development and Validation of a Modified Three-Dimensional U-Net Deep-Learning Model for Automated Detection of Lung Nodules on Chest CT Images From the Lung Image Database Consortium and Japanese Datasets
Kazuhiro Suzuki et al.
ACADEMIC RADIOLOGY (2022)
Artificial Intelligence for Interstitial Lung Disease Analysis on Chest Computed Tomography: A Systematic Review
Shelly Soffer et al.
ACADEMIC RADIOLOGY (2022)
Current global perspectives on silicosis-Convergence of old and newly emergent hazards
Ryan F. Hoy et al.
RESPIROLOGY (2022)
External Validation of Deep Learning Algorithms for Radiologic Diagnosis: A Systematic Review
Alice C. Yu et al.
RADIOLOGY-ARTIFICIAL INTELLIGENCE (2022)
Risk assessment of farmers handling pelleted seeds containing crystalline silica and attapulgite
Mitsugu Hirano et al.
JOURNAL OF OCCUPATIONAL HEALTH (2021)
Radiographic diagnosis of Pneumoconioses by AIR Pneumo-trained physicians: Comparison with low-dose thin-slice computed tomography
Shoko Nogami et al.
JOURNAL OF OCCUPATIONAL HEALTH (2020)
Comparison of the International Classification of High-resolution Computed Tomography for occupational and environmental respiratory diseases with the International Labor Organization International Classification of Radiographs of Pneumoconiosis
Melahat Uzel Seneri et al.
INDUSTRIAL HEALTH (2019)
Assessment of physicians' proficiency in reading chest radiographs for pneumoconiosis, based on a 60-film examination set with two factors constituting eight indices
Taro Tamura et al.
INDUSTRIAL HEALTH (2018)
Potential asbestos exposure among patients with primary lung cancer in Japan
Akihiko Tamura et al.
JOURNAL OF OCCUPATIONAL HEALTH (2018)
Computerized Classification of Pneumoconiosis on Digital Chest Radiography Artificial Neural Network with Three Stages
Eiichiro Okumura et al.
JOURNAL OF DIGITAL IMAGING (2017)
Pneumoconioses Radiographs in a Large Population of US Coal Workers: Variability in A Reader and B Reader Classifications by Using the International Labour Office Classification
Cara N. Halldin et al.
RADIOLOGY (2017)
The development and evaluation of a computerized diagnosis scheme for pneumoconiosis on digital chest radiographs
Biyun Zhu et al.
BIOMEDICAL ENGINEERING ONLINE (2014)
Support Vector Machine Model for Diagnosing Pneumoconiosis Based on Wavelet Texture Features of Digital Chest Radiographs
Biyun Zhu et al.
JOURNAL OF DIGITAL IMAGING (2014)
Development of CAD based on ANN analysis of power spectra for pneumoconiosis in chest radiographs: effect of three new enhancement methods
Eiichiro Okumura et al.
RADIOLOGICAL PHYSICS AND TECHNOLOGY (2014)
The 60-Film Set with 8-index for Examining Physicians' Proficiency in Reading Pneumoconiosis Chest X-rays
Huashi Zhou et al.
INDUSTRIAL HEALTH (2012)
Proficiency in Reading Pneumoconiosis Radiographs Examined by the 60-film Set with 4-factor Structuring 8-index
Huashi Zhou et al.
INDUSTRIAL HEALTH (2012)
Computerized Analysis of Pneumoconiosis in Digital Chest Radiography: Effect of Artificial Neural Network Trained with Power Spectra
Eiichiro Okumura et al.
JOURNAL OF DIGITAL IMAGING (2011)
An Automatic Computer-Aided Detection Scheme for Pneumoconiosis on Digital Chest Radiographs
Peichun Yu et al.
JOURNAL OF DIGITAL IMAGING (2011)
Effect of a Two-hour Training on Physicians' Skill in Interpreting Pneumoconiotic Chest Radiographs
Nlandu Roger Ngatu et al.
JOURNAL OF OCCUPATIONAL HEALTH (2010)
Reliability of the Proposed International Classification of High-Resolution Computed Tomography for Occupational and Environmental Respiratory Diseases
Narufumi Suganuma et al.
JOURNAL OF OCCUPATIONAL HEALTH (2009)
Selection of reference films based on reliability assessment of a classification of high-resolution computed tomography for pneumoconioses
Narufumi Suganuma et al.
INTERNATIONAL ARCHIVES OF OCCUPATIONAL AND ENVIRONMENTAL HEALTH (2006)