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Trial Title:
Clinical Study on the Evaluation of the Efficacy of Cervical Cancer
NCT ID:
NCT06254729
Condition:
Uterine Cervical Neoplasms
Conditions: Official terms:
Uterine Cervical Neoplasms
Study type:
Observational [Patient Registry]
Overall status:
Not yet recruiting
Study design:
Time perspective:
Prospective
Intervention:
Intervention type:
Other
Intervention name:
Observational study
Description:
Our study does not have any exposure factors.
Arm group label:
training group
Arm group label:
validation group
Summary:
The main objectives of this study are to construct a multi-omics-based prognostic and
side-effect prediction model for cervical cancer based on pre-treatment imaging, digital
pathology, genomics, proteomics, molecular biology, metabolomics, and intestinal flora
characteristics data of cervical cancer patients, combined with patients' clinical
information, to guide the precise treatment of cervical cancer patients; and to deeply
excavate the characteristics related to recurrent cervical cancer based on time-series
multi-omics data. Construct an artificial intelligence auxiliary model for dynamic
monitoring of cervical cancer recurrence based on longitudinal multi-omics. To provide a
real-time and timely tool for clinical early prediction, early identification, early
diagnosis and early intervention of cervical cancer, to prolong the survival time and
improve the quality of patients' survival.
1. To realize multi-omics feature extraction of cervical cancer patients before
treatment, and build a prognosis and side-effect prediction model of cervical cancer
to guide accurate treatment;
2. To make iterative, comprehensive, real-time assessment of the risk of recurrence of
cervical cancer based on time-series multi-omics data, and to build an early warning
model for early identification and early diagnosis of recurrent cervical cancer;
3. To establish a prognostic and side-effect prediction and risk dynamic assessment
model for cervical cancer, to build an intelligent decision support system, to
implement the application of prognostic and side-effect prediction and dynamic
monitoring model, to further assist in the precise diagnosis and treatment of
cervical cancer, and to provide an accurate prognostic tool for identifying,
diagnosing, and intervening in cervical cancer during the follow-up process.
Detailed description:
1. Construct a prognosis and side effect prediction model based on pre-treatment
multi-omics features of cervical cancer patients.
1. Case selection: According to the overall experimental design, 2800 patients in the
training group were used as the training data set, and 1200 patients in the
validation group were used as the validation data collection.
2. Model training and tuning: a. Extract the multi-omics features of the training
group, carry out self-learning of the features, and form a preliminary cervical
cancer prognosis and side-effect prediction model; b. Input the multi-omics data of
the validation group into the model, and carry out the structure of the model and
the training parameters, and seek for the optimal model structure and training
parameters; c. Determine the optimal cervical cancer prognosis prediction and
side-effect model.
2.Mining recurrent tumor characteristics based on multi-omics data and constructing a
comprehensive assessment model for recurrence risk .
1. Case selection: In accordance with the overall experimental design, 2800 patients in
the training group were used as the training dataset, and 1200 patients in the
validation group were collected as the validation data.
2. Model training and tuning: a. The multi-omics data features of the training group
before the diagnosis of recurrence in previous follow-up visits are used to carry
out self-learning of the features, assess the risk of tumor recurrence based on
multi-omics features in the course of previous follow-up visits, form a dynamic,
real-time recurrence risk assessment model, and derive a comprehensive risk value
for the decision-making of recurrence intervention; b. Multi-omics features related
to the previous follow-up visits of the validation group before the diagnosis of
recurrence are inputted into the model, and the iterative time-series recurrence
risk assessment is carried out on the patients. time-series recurrence risk
iterative assessment of patients to assess the diagnostic performance of the model;
c. Adjust the structure and training parameters of the model according to the
segmentation accuracy of the validation group to seek the optimal model structure
and training parameters; d. Use technical means such as data augmentation and other
technical means to think of enlarging the sample size to improve the segmentation
accuracy; e. Determine the optimal risk assessment model.
3. Establish the prognosis and side-effect prediction and dynamic monitoring system of
cervical cancer.
a. Docking the above constructed model with the outpatient system to construct a
prognosis and side reaction prediction and dynamic monitoring system in the process of
cervical cancer diagnosis and treatment; b. Constructing an intelligent decision support
system through the prognosis and side reaction prediction and risk dynamic assessment
model, implementing the application of recurrence prediction and dynamic monitoring
system, and assisting the clinicians to make decisions on intervention measures.
Criteria for eligibility:
Study pop:
Cervical cancer patients receiving radiotherapy
Sampling method:
Probability Sample
Criteria:
Inclusion Criteria:
- Pathology: patients with pathologically confirmed cervical cancer
- Location: primary tumor of the cervix
Exclusion Criteria:
- Patients with no prior radiation therapy
- Patients without treatment
- Patients without regular follow-up
Gender:
Female
Minimum age:
18 Years
Maximum age:
N/A
Healthy volunteers:
Accepts Healthy Volunteers
Start date:
February 16, 2024
Completion date:
February 16, 2030
Lead sponsor:
Agency:
First Affiliated Hospital Xi'an Jiaotong University
Agency class:
Other
Collaborator:
Agency:
Gansu Maternal and Child Health Hospital
Agency class:
Other
Collaborator:
Agency:
Hanzhong Central Hospital
Agency class:
Other
Source:
First Affiliated Hospital Xi'an Jiaotong University
Record processing date:
ClinicalTrials.gov processed this data on November 12, 2024
Source: ClinicalTrials.gov page:
https://clinicaltrials.gov/ct2/show/NCT06254729