Clinical Trial Details
— Status: Recruiting
Administrative data
NCT number |
NCT04952675 |
Other study ID # |
PekingUTH-002 |
Secondary ID |
|
Status |
Recruiting |
Phase |
|
First received |
|
Last updated |
|
Start date |
August 1, 2018 |
Est. completion date |
December 2025 |
Study information
Verified date |
June 2021 |
Source |
Peking University Third Hospital |
Contact |
Xiao Li, M.D. |
Phone |
+8613051709411 |
Email |
lixiao.sy[@]bjmu.edu.cn |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational
|
Clinical Trial Summary
Precaution of pneumoconiosis is more important than treatment. However, the current process
can't early warn the high-risk dust exposed workers until they are diagnosed with
pneumoconiosis. With the feature of efficiency, impersonality and quantification, artificial
intelligence is just appropriate for solving this problems. Therefore, we are aiming at
adapting deep learning to develop models of pneumoconiosis intelligent detection, grade
diagnosis and high risk early warning. The annotated images will be used for convolutional
neural networks (CNNs) algorithm training, aiming at pneumoconiosis screening and grade
diagnosis. Moreover, risk score calculated by density heat map will be used for early warning
of dust-exposed workers. Then follow up of cohort will be implied to verify the validity of
the risk score. By this way, the high-risk dust-exposed workers will get early intervention
and better prognosis, which can obviously reduce medical burden.
Description:
Pneumoconiosis, the predominant occupational disease in China and all over the world. Chest
radiography is the most accessible and affordable radiological test available for the
physical examination of dust-exposed workers and mass screening for pneumoconiosis. But the
diagnosis process has some disadvantages, such as strong subjectivity, inefficiency, and
disability of judgement of borderline lesion, etc. Besides, precaution of pneumoconiosis is
more important than treatment. However, the current process can't early warn the high-risk
dust exposed workers until they are diagnosed with pneumoconiosis. With the feature of
efficiency, impersonality and quantification, artificial intelligence is just appropriate for
solving the aforesaid problems. Up to now, there has been rare research about adapting deep
learning for pneumoconiosis grade diagnosis and high risk early warning. In our previous
studies, we set up a chest radiograph database, which contains more than 100,000 digital
pneumoconiosis radiography images. The result of detection-system evaluation demonstrated
that the accuracy in the identification of pneumoconiosis could reach 90%, with an AUC(Area
Under The Curve) of 0.965 and a sensitivity of 99%. More works need to be continued.
Therefore, we are aiming at adapting deep learning to develop models of pneumoconiosis
intelligent detection, grade diagnosis and high risk early warning. The annotated images will
be used for convolutional neural networks (CNNs) algorithm training, aiming at pneumoconiosis
screening and grade diagnosis. Moreover, risk score calculated by density heat map will be
used for early warning of dust-exposed workers. Then follow up of cohort will be implied to
verify the validity of the risk score. By this way, the high-risk dust-exposed workers will
get early intervention and better prognosis, which can obviously reduce medical burden.