Risk Prediction Model of Preeclampsia

NCT ID: NCT04794855

Last Updated: 2021-03-12

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

UNKNOWN

Total Enrollment

2000 participants

Study Classification

OBSERVATIONAL

Study Start Date

2021-02-20

Study Completion Date

2024-12-31

Brief Summary

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Preeclampsia is the main cause of increased maternal and perinatal mortality during pregnancy. Preeclampsia is mainly manifested as hypertension, urine protein, or damage symptoms of other target organs after 20 weeks of pregnancy. In preeclampsia high-risk group, early intervention and prevention of aspirin treatment can reduce preeclampsia or reduce its complications. Some serological biomarkers, such as placental protein 13 and placental growth factor, are closely related to preeclampsia. The clinical manifestations of preeclampsia are diverse, and the biomarkers distribution of early and late preeclampsia is also different. Multivariate models will be the trend for the prediction of risk of preeclampsia. The deep learning model can train the algorithm layer by layer by unsupervised learning method, and then use the supervised back propagation algorithm for tuning. It has strong capability and flexibility, and has been successfully applied in medical fields, such as the diagnosis of skin cancer.

In this study, maternal clinical data, routine laboratory indicators and biological markers in early pregnancy will be combined, and a deep learning method based on multiple models will be adopted to establish a risk prediction model for early preeclampsia, so as to improve the clinical ability for early diagnosis of preeclampsia. The deep learning method reduces the number of parameters by using spatial relative relation, which can improve the prediction ability of the model. Multi-model method is a less commonly used modeling method, and the models established by this method generally have better stability.

This project combines the above two methods to establish a risk prediction model for preeclampsia, and the research is of great significance.

Detailed Description

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Research objects:

This is a prospective study. About 2000 pregnant women who will take regular prenatal examination in the Department of Obstetrics, Peking University Third Hospital. During 6-8 weeks of gestation, routine laboratory tests, such as liver function, were required before the establishment of obstetric records. The remain serum from routine laboratory tests will be collected and frozen at -80℃ for detection of biological markers after delivery.

Some routine laboratory tests will be carried out with the prenatal examination at 16-18 GWs、26-28 GWs、30-34GWs. The remain serum of the participants will be collected if the routine tests were done.

We will not draw extra blood samples from the participants.

Quality assurance plan:

1. Check the patient information and gestational age carefully to obtain the correct cases.
2. The samples of hemolysis, lipid turbidity and jaundice should be eliminated to prevent interference with the experimental results.
3. The serum was placed in a cryopreservation tube and immediately stored at -70℃.
4. Calibration and quality control should be carried out for each batch of testing. Record the results of quality control and start testing after control.

Data dictionary:

(1) General information of the research object: Data on risk factors for preeclampsia were collected at 6-8 weeks of gestation, including age, primipara or pluripara, multiple births, prepregnancy body mass index, preeclampsia history, basal systolic blood pressure, basal diastolic blood pressure, hypertension history, renal history, diabetes history, autoimmune history, etc. The above records will be obtained from the medical records system.

(3) Test results of routine laboratory tests: Laboratory test results, such as total cholesterol, triglycerides, high-density lipoprotein cholesterol, low density lipoprotein cholesterol and lipoprotein a and C reactive protein, alanine aminotransferase, aspartate aminotransferase, lactate dehydrogenase, urea, uric acid, creatinine and cystatine C, D-dimer, neutrophils and lymphocytes ratio, platelet and lymphocyte ratio and so on, the above test results can query from the electronic medical record system.

(4) Biological markers detection: After delivery, the biomarkers will be tested with the 6-8 GWs samples of the 2000 participants, such as the complement factor B, complement factor H, C3, complement C4, matrix metalloproteinases 7, placenta protein 13, soluble vascular endothelial growth factor receptor 1, placental growth factor, fibronectin, etc.

(5) Establishment of database: To input the above original data into the database.

Sample size: About 100 to 160 preeclampsia patients will be collected out of the 2000 participants accoeding to the he incidence of preeclampsia which is 3% to 8%.

The missing data will be reported as missing, unavailable, non-reported, uninterpretable, or considered missing because of data inconsistency or out-of-range results according to actual condition.

Statistical analysis plan:

By using univariate logistic regression model, maternal clinical data, routine laboratory tests and biological markers in early pregnancy were divided into two categories: "important indicators" and "general indicators".

The data set was divided into a training set and a test set in a 3:1 ratio for the training and testing of preeclampsia risk prediction model, respectively.

Samples of pregnant women without preeclampsia in the training set were evenly divided into three subsets A, B and C, and the sample set of preeclampsia patients in the training set was called set D.Build A deep learning model with two sets A and D, build A deep learning model with two sets B and D, and build A deep learning model with two sets C and D.These three models are successively referred to as Model 1, Model 2 and Model 3.

Model test method:

Substituting the data of each sample in the test set into the above three deep learning models, the three output values of each sample are obtained, and then the prediction of the type of each sample is obtained based on the average value of the three numbers. Then the prediction results are compared with the sample labels to evaluate the model.

Conditions

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Preeclampsia Preeclampsia Severe

Study Design

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Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Study Groups

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preganant women

observation from 6-8 weeks.

laboratory tests

Intervention Type DIAGNOSTIC_TEST

routine laboratory tests and biomarkers tests

Interventions

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laboratory tests

routine laboratory tests and biomarkers tests

Intervention Type DIAGNOSTIC_TEST

Eligibility Criteria

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Inclusion Criteria

* Pregnant women aged 20-50 years old, primiparas or postparturas,
* and undergoing prenatal examination in Peking University Third Hospital ;
* and deliver live fetuses or stillborn fetuses with normal appearance after 24 weeks.

Exclusion Criteria

* The pregant woman has tumor ,
* or has severe fetal abnormality,
* or terminates the pregnancy before 24 weeks,
* or the fetus dies.
Minimum Eligible Age

20 Years

Maximum Eligible Age

50 Years

Eligible Sex

FEMALE

Accepts Healthy Volunteers

No

Sponsors

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Beijing Forestry university

UNKNOWN

Sponsor Role collaborator

Peking University Third Hospital

OTHER

Sponsor Role lead

Responsible Party

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Responsibility Role SPONSOR

Principal Investigators

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Keke Jia, master

Role: STUDY_DIRECTOR

study director

Locations

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Peking University Third Hospital

Beijing, Beijing Municipality, China

Site Status

Countries

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China

Other Identifiers

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76439-02

Identifier Type: -

Identifier Source: org_study_id

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