The Analysis of Risk Factors for Recurrent Pregnancy Loss and Prediction of Pregnancy Loss Risk
NCT ID: NCT06249230
Last Updated: 2024-02-12
Study Results
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Basic Information
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NOT_YET_RECRUITING
1000 participants
OBSERVATIONAL
2024-01-31
2024-12-31
Brief Summary
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Detailed Description
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2. Data collection: history collection at the initial consultation , outpatient medical record system query to collect laboratory indicators and ultrasound results, outpatient or telephone follow-up after the consultation of the outcome of the first pregnancy, "EpiData" software data entry;
3. Data processing: data cleaning to remove duplicates, interpolation of missing values, categorisation of variables uniquely hot coding, elimination of heterozygous ratio \<0.1 variables; characteristic Engineering descriptive statistics, correlation analysis, handling of outliers; data set division, the data were randomly divided into training set and test set according to the ratio of 7:3 according to the pregnancy outcome;
4. Predictive factor screening: t-test, analysis of variance (ANOVA), non-parametric test, chi-square test, and other analyses of the risk factors of miscarriage in patients with recurrent miscarriages; or according to the results of the analysis in combination with the results of previous studies and clinical expertise or LASSO regression (the last absolute shrinkage and the last absolute shrinkage and the last absolute shrinkage and the last absolute shrinkage). (least absolute shrinkage and selection operator, LASSO regression). Method 1: A one-way analysis of variance (ANOVA) was performed in the training set to screen for risk factors associated with miscarriage in patients with recurrent miscarriage. Two independent samples t-tests were used for continuous data, and Mann-Whitney tests were used for non-normally distributed data; for categorical data, Chi-square tests or Fisher's exact test (FET) were used. For categorical data, Chi-square tests or Fisher's exact tests were used. A two-sided p-value of less than 0.05 was considered statistically significant. Differential variables were then included in a multifactorial logistic analysis with stepwise regression to screen for independent risk factors predicting pregnancy loss in patients with recurrent miscarriage. Method 2: LASSO regression (least absolute shrinkage and selection operator) was used for feature selection in the training set. The basic principle is to introduce the L1 regularisation term on the basis of ordinary least squares to achieve feature selection and coefficient sparsification of the model by minimising the objective function, screening the important features related to the outcome variable, while setting the coefficients of irrelevant or redundant features to zero. During the fitting process, the sparsity of features is controlled by adjusting the regularisation parameter. Optimal regularisation parameters are found using methods such as cross-validation or grid search. Obtain the coefficients of all features based on the trained Lasso regression model. Sort the coefficients, in descending order of absolute value. Set a threshold to retain features with coefficients greater than the threshold.
5. Predictive model building: the training set data are taken to construct the model by machine learning methods such as logistic regression, K-nearest neighbour, decision tree, linear discriminant, neural network, random forest, support vector machine, gradient boosting, extreme gradient boosting, light gradient boosting or deep learning.
6. Internal validation method: k-fold cross-validation is used within the training set to compare the model performance, select the optimal model to adjust the hyper-parameters, and then test the generalisation ability of the model in the test set.
7. Comparison of model performance: calculate C-statistic (area under the curve AUC), accuracy, precision, recall, F1 score, and draw calibration curves, clinical decision curves and clinical impact curves to compare the prediction performance of different models.
8. Risk stratification: patients are classified into low-risk and high-risk according to the model, which is applied to clinical assessment of patients and pregnancy supervision and management. Risk stratification is proposed to construct a column-line diagram based on logistic regression and calculate the column-line diagram score for each patient, and determine the optimal score threshold based on the Youden index; patients lower than or equal to the optimal score threshold are classified as low-risk subgroups, and patients higher than the optimal score threshold are classified as high-risk subgroups. The Pearson chi-square test was used to determine the validity of risk stratification by comparing the differences in pregnancy outcomes between the low-risk and high-risk subgroups.
9. Model visualisation: column-line diagrams, risk score scales and "SHAP" were used to explain the model.
Conditions
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Study Design
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COHORT
RETROSPECTIVE
Study Groups
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Pregnancy success
Patients followed up with a live intrauterine pregnancy beyond 32 weeks were judged as pregnancy success.
Hematologic features
Hematologic features include coagulation indicators, autoimmune indicators, and endocrine indicators.
Ultrasound indices of uterine artery blood flow
Ultrasound indices of uterine artery blood flow include endometrial thickness, endometrial artery blood flow parameters , and bilateral uterine artery blood flow parameters.
Demographic characteristics
Demographic characteristics include age, the number of previous spontaneous abortions (including biochemical pregnancies), BMI, fertility history, past disease history, chromosomal status, family and genetic history, etc.
Pregnancy loss
Patients with histologically confirmed spontaneous abortion by ultrasound or curettage before 28 weeks of gestation, including biochemical pregnancies and embryonic arrests, were judged as pregnancy loss
Hematologic features
Hematologic features include coagulation indicators, autoimmune indicators, and endocrine indicators.
Ultrasound indices of uterine artery blood flow
Ultrasound indices of uterine artery blood flow include endometrial thickness, endometrial artery blood flow parameters , and bilateral uterine artery blood flow parameters.
Demographic characteristics
Demographic characteristics include age, the number of previous spontaneous abortions (including biochemical pregnancies), BMI, fertility history, past disease history, chromosomal status, family and genetic history, etc.
Interventions
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Hematologic features
Hematologic features include coagulation indicators, autoimmune indicators, and endocrine indicators.
Ultrasound indices of uterine artery blood flow
Ultrasound indices of uterine artery blood flow include endometrial thickness, endometrial artery blood flow parameters , and bilateral uterine artery blood flow parameters.
Demographic characteristics
Demographic characteristics include age, the number of previous spontaneous abortions (including biochemical pregnancies), BMI, fertility history, past disease history, chromosomal status, family and genetic history, etc.
Eligibility Criteria
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Inclusion Criteria
2. ≥20 years old;
3. Completion of initial history taking and complete results of the etiological screening programme;
4. Knowledge of the purpose and significance of the study, consent and sign the informed consent form;
Exclusion Criteria
2. Presence of severe contraindications to pregnancy, making it inadvisable to conceive;
3. Voluntary withdrawal from the pregnancy or from the study;
4. No pregnancy outcome as of the follow-up endpoint (December 31, 2023), indicating no pregnancy;
5. Loss to follow-up, unable to obtain pregnancy outcome;
6. Subsequent pregnancy outcomes after the clinic visit included ectopic pregnancy, molar pregnancy, fetal malformations, and pregnancy at the scar site of previous cesarean section.
20 Years
50 Years
FEMALE
No
Sponsors
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RenJi Hospital
OTHER
Responsible Party
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Principal Investigators
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Aimin Zhao, MD
Role: PRINCIPAL_INVESTIGATOR
RenJi Hospital
Locations
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Renji Hospital Affiliated to Shanghai Jiao Tong University School of Medicine
Shanghai, Shanghai Municipality, China
Countries
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Central Contacts
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Facility Contacts
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Other Identifiers
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IIT-2023-0311
Identifier Type: -
Identifier Source: org_study_id
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