We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Establishing a predictive model for the evaluation of fecundity.
- Authors
Zhan, Qiong; Zhao, Jing; Paziliya, Yasheng; Zhao, Junda; La, Xiaolin; Yao, Hua
- Abstract
Aim: We aim to establish a predictive model for the evaluation of fecundity based on infertility‐related factors. Methods: A total of 410 expectant couples who visited the First Affiliated Hospital of Xinjiang Medical University on January 1, 2017 and June 10, 2019 were included in this study. The 1‐year follow‐up was carried out to investigate the pregnancy of the female. They were divided into model group and test group, respectively. The basic information, life behavior and clinical indices were screened using the Logistics regression analysis and LASSO regression analysis. In addition, the multivariate logistic regression was used to establish the model for the prediction of fecundity risk. Results: The risk factors for the predictive model included female age and occupational pressure, gynecological disease, anti‐Müllerian hormone (AMH), follicle‐stimulating hormone (FSH), fasting plasma glucose (FPG), depression, as well as male smoking. The area under the curve (AUC) for the model A and model B was 0.954 (0.931 ~ 0.978) and 0.955 (0.931 ~ 0.979), respectively. The AUC in the test group was 0.917 (0.869 ~ 0.965) and 0.921 (0.873 ~ 0.968). There were no statistical differences in the fitting value and measured values in the model group. Conclusions: We established a predictive model for the evaluation of fecundity, which showed a satisfactory accuracy and discriminatory power.
- Subjects
RISK factors in infertility; PATIENT aftercare; FASTING; ACADEMIC medical centers; FEMALE reproductive organ diseases; FOLLICLE-stimulating hormone; CLASSIFICATION; MULTIVARIATE analysis; AGE distribution; JOB stress; PATIENTS; REGRESSION analysis; BLOOD sugar; SEX distribution; FERTILITY; MENTAL depression; SEX hormones; PREDICTION models; LOGISTIC regression analysis; SMOKING; RECEIVER operating characteristic curves
- Publication
Journal of Obstetrics & Gynaecology Research, 2022, Vol 48, Issue 4, p987
- ISSN
1341-8076
- Publication type
Article
- DOI
10.1111/jog.15167