Clinical Trial Details
— Status: Completed
Administrative data
NCT number |
NCT04959656 |
Other study ID # |
IRB00006761-M2020255 |
Secondary ID |
|
Status |
Completed |
Phase |
|
First received |
|
Last updated |
|
Start date |
January 1, 2020 |
Est. completion date |
June 1, 2021 |
Study information
Verified date |
July 2021 |
Source |
Peking University Third Hospital |
Contact |
n/a |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational
|
Clinical Trial Summary
Cervical spine tumor is a small sample of tumor disease with low incidence, great harm, and
complex anatomical structure. It is very difficult to identify and classify benign and
malignant cervical spine tumors clinically.
The deep learning model we constructed in the early stage has a higher accuracy rate for the
image diagnosis of cervical spondylosis with a large number of cases, and a better clinical
application effect, but the accuracy rate for cervical spine tumors with a small number of
cases is lower. The reason may be the amount of data. With limited tasks, the traditional
deep learning model is difficult to play an effective role.
Based on this, we propose to build a small sample-oriented deep learning model to assist
clinicians in the diagnosis of cervical spine tumors with multimodal images, and to evaluate
the benign and malignant tumors.
Description:
Cervical spine tumor is a small-sample tumor disease with low incidence, great harm, and
complex anatomical structure. It is very difficult to identify and classify benign and
malignant cervical spine tumors clinically. The deep learning model we constructed in the
early stage is suitable for the large number of cases. The imaging diagnosis of cervical
spondylosis has a high accuracy rate and a good clinical application effect, but the accuracy
rate is low for cervical spine tumors with a small number of cases. The reason may be that
for tasks with limited amount of data, the traditional deep learning model is difficult to
play an effective role. Based on this, we propose to construct a small sample-oriented deep
learning model to assist clinicians in the diagnosis of cervical spine tumors in multi-modal
imaging, and to evaluate the benign and malignant tumors. This research will not only improve
the efficiency and efficiency of cervical spine tumor imaging diagnosis. Accuracy, to guide
clinical personalized treatment, will also provide a basis for the clinical application of
deep learning in the field of small samples, which has important clinical significance.