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Trial Title:
Early Detection of Endometrial Cancer Using Plasma Cell-free DNA Fragmentomics
NCT ID:
NCT06083779
Condition:
Endometrial Cancer
Conditions: Official terms:
Endometrial Neoplasms
Conditions: Keywords:
Endometrial Cancer
Early Stage
Plasma Cell-free DNA
Fragmentomic assay
Study type:
Observational
Overall status:
Recruiting
Study design:
Time perspective:
Prospective
Intervention:
Intervention type:
Genetic
Intervention name:
low-depth whole-genome sequencing technology
Description:
the characteristics of five cfDNA fragments based on low-depth whole-genome sequencing
technology (WGS)
Arm group label:
Patients with endometrial cancer
Arm group label:
healthy people
Summary:
The purpose of this study is to enable non-invasive early detection of endometrial cancer
in high-risk populations through the establishment of a multimodal machine learning model
using plasma cell-free DNA fragmentomics. Plasma cell-free DNA from early stage
endometrial cancer patients and healthy individuals will be subjected to whole-genome
sequencing. Five different feature types, including Fragment Size Distribution,
nucleosome features, SBS Signatures, BreakPoint Motif , and Copy Number Variation will be
assessed to generate this model.
Detailed description:
Currently, there is no international consensus on the standard for endometrial cancer
screening. The Expert Committee on Endometrial Cancer Screening in China released the
"Expert Consensus on Endometrial Cancer Screening and Early Diagnosis (Draft)" in 2017,
recommending the use of endometrial brushes for endometrial sampling and the use of
endometrial cytology for slide preparation. Transvaginal ultrasound (TVS) can be used as
an initial assessment and auxiliary method for endometrial cytology screening for
endometrial cancer. For women without clinical symptoms, the routine method of
endometrial cancer screening is mainly TVS to monitor endometrial thickness. Although TVS
has high sensitivity, its specificity is very low, with a low positive predictive value
(PPV) and a high false-positive rate, making it unable to distinguish between benign and
malignant endometrial changes. There are also certain operator subjective judgments and
instrument-related errors. For women with clinical symptoms, patients need endometrial
cytology testing, that is, invasive endometrial sampling with an endometrial brush,
followed by cytological slide preparation. Suspicious malignant tumor cells or malignant
tumor cells should immediately undergo hysteroscopy and segmental diagnostic curettage to
obtain endometrial biopsy tissue, and further clinical treatment should be carried out
based on the pathological results. Due to the need to go deep into the uterus, the
sampling failure rate for nulliparous women is as high as 20%, and the sampling failure
rate for multiparous women is 8%. Whether it is endometrial cytology or hysteroscopic
biopsy, which is close to the invasive operation of abortion, it will bring a lot of pain
and economic burden to women. Moreover, there are currently no specific and sensitive
tumor markers available for the diagnosis and follow-up of endometrial cancer. Therefore,
it is urgent to develop a non-invasive, efficient screening detection method.
In short, the space for early screening of endometrial cancer is vast, and liquid biopsy
is non-invasive, convenient and easy to accept. It is an important technical means for
early screening research of endometrial cancer, and has great potential to improve the
performance of early screening of endometrial cancer. In order to further verify the
application value of cfDNA-based fragmentomics in early screening of endometrial cancer
and better screen the high-risk population of endometrial cancer in China, this study
intends to analyze the characteristics of five cfDNA fragments based on low-depth
whole-genome sequencing technology (WGS), and integrate artificial intelligence machine
learning technology to establish a prediction model for early screening of endometrial
cancer based on cfDNA.
Criteria for eligibility:
Study pop:
Approximately 108 early to mid-stage endometrial cancer patients and 108 non-cancer
controls
Sampling method:
Probability Sample
Criteria:
Inclusion Criteria:
- Age minimum 18 years
- Patients diagnosed with early to mid-stage endometrial cancer (more than 50% are in
FIGO stages I/II) through histological and/or cytological examination.
- Ability to understand and the willingness to sign a written informed consent
document
- Participants can obtain comprehensive clinical and pathological information.
- Non-cancer controls are sex- and age-matched individuals without presence of any
tumors or nodules or any other severe chronic diseases through systematic screening
Exclusion Criteria:
- Participants must not be pregnant or breastfeeding
- Participants must not have prior cancer histories or a second non-endometrial
malignancy
- Participants must not have had any form of cancer treatment before enrollment or
plasma collection, including surgery, chemotherapy, radiotherapy, targeted therapy
and immunotherapy
- Participants must not present medical conditions of fever or have acute or
immunological diseases that required treatment 14 days before plasma collection
- Participants who underwent organ transplant or allogenic bone marrow or
hematopoietic stem cell transplantation
- Participants with clinically important abnormalities or conditions unsuitable for
blood collection
- Any other disease or clinical condition of participants that the researcher believes
may affect the compliance of the protocol, or affect the patient's signing of the
informed consent form (ICF), which is not suitable to participate in this clinical
trial.
Gender:
Female
Minimum age:
18 Years
Maximum age:
N/A
Healthy volunteers:
Accepts Healthy Volunteers
Locations:
Facility:
Name:
The Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University
Address:
City:
Guangzhou
Country:
China
Status:
Recruiting
Contact:
Last name:
Bingzhong Zhang, MD
Phone:
13925063030
Phone ext:
86
Email:
13925063030@163.com
Start date:
August 1, 2023
Completion date:
April 30, 2024
Lead sponsor:
Agency:
Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University
Agency class:
Other
Collaborator:
Agency:
Nanjing Geneseeq Technology Inc.
Agency class:
Industry
Source:
Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University
Record processing date:
ClinicalTrials.gov processed this data on November 12, 2024
Source: ClinicalTrials.gov page:
https://clinicaltrials.gov/ct2/show/NCT06083779