Clinical Trial Details
— Status: Completed
Administrative data
NCT number |
NCT04811677 |
Other study ID # |
UUH 2018-04-009 |
Secondary ID |
|
Status |
Completed |
Phase |
|
First received |
|
Last updated |
|
Start date |
January 1, 2018 |
Est. completion date |
March 30, 2019 |
Study information
Verified date |
December 2022 |
Source |
Chungnam National University Sejong Hospital |
Contact |
n/a |
Is FDA regulated |
No |
Health authority |
|
Study type |
Observational
|
Clinical Trial Summary
To approval for detecting lymphedema fibrosis before its progression, verification of
CT-based quantification of suprafascial microscopic fibrosis has been tried.
Description:
In lymphedema, proinflammatory cytokine-mediated progressive cascades always occur, leading
to macroscopic fibrosis. However, no methods are practically available for measuring
lymphedema-induced fibrosis before its deterioration. Technically, CT can visualize fibrosis
in superficial and deep locations. For standardized measurement, verification of deep
learning (DL)-based recognition was performed. A cross-sectional, observational cohort trial
was conducted at a teaching university hospital. The protocol of this study was approved by
the University Hospital Institutional Review Board and was registered at the Protocol
Registration and Results System (PRS), www. clini caltr ials. gov (NCT04811677: https://
clini caltr ials. gov/ ct2/ show/ NCT04 811677? term= NCT04 81167 7& draw= 2& rank=1). All
methods were performed in accordance with the relevant guidelines and regulations. The trial
conformed to the tenets of the Declaration of Helsinki. Patients were included if they were
clinically diagnosed with unilateral limb lymphedema and had undergone BEI analysis and CT
scanning. The subjects provided written informed consent for publication of the case details.
Data were collected as close to the CT scanning date as possible. Patients who were diagnosed
with deep vein thrombosis, bilateral limb involvement, vascular disease, or local infection
were excluded.
After narrowing window width of the absorptive values in CT images, SegNet-based semantic
segmentation model of every pixel into 5 classes (air, skin, muscle/water, fat, and fibrosis)
was trained (65%), validated (15%), and tested (20%). Then, 4 indices were formulated and
compared with the standardized circumference difference ratio (SCDR) and bioelectrical
impedance (BEI) results. In total, 2138 CT images of 27 chronic unilateral lymphedema
patients were analyzed.