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Use of Artificial Intelligence Methods in Risk Assessment and Prediction of Preeclampsia

Nematova Marjona ZikrillaevnaBukhara State Medical Institute named after Abu Ali Ibn Sina, Bukhara
Academia Openjournal2025
ABI

Аннотация

General Background: Preeclampsia is a leading cause of maternal and perinatal morbidity and mortality worldwide, with early prediction remaining a critical challenge in obstetric care. Specific Background: Conventional diagnostic approaches based on clinical and isolated biochemical markers often identify the disorder at advanced stages and fail to capture its multifactorial pathophysiology. Knowledge Gap: There is limited integration of multidimensional clinical, biochemical, and Doppler data into robust predictive models capable of early and individualized risk assessment. Aims: This study aimed to develop and evaluate a machine learning–based model for early prediction of preeclampsia using comprehensive antenatal data. Results: In a retrospective cohort of 1,200 pregnant women, the Extreme Gradient Boosting (XGBoost) model demonstrated superior performance, achieving an AUC of 0.94, sensitivity of 91%, specificity of 89%, and overall accuracy of 90%, outperforming random forest, support vector machine, and logistic regression models. Key predictors included mean arterial pressure, maternal age, uterine artery pulsatility index, placental growth factor, and soluble fms-like tyrosine kinase-1. Novelty: The study integrates 35 heterogeneous parameters into an AI-driven framework, highlighting the strength of ensemble learning in capturing nonlinear risk patterns. Implications: AI-based predictive tools offer significant potential for early identification of high-risk pregnancies, enabling targeted preventive interventions and advancing precision obstetrics to reduce preeclampsia-related adverse outcomes.Highlight : XGBoost showed high accuracy for early preeclampsia risk prediction. Combined clinical, biochemical, and Doppler data enabled early risk identification. Early prediction supports timely preventive obstetric interventions. Keywords : Preeclampsia, Pregnancy, Prediction, Artificial Intelligence, Machine Learning

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Показатели — AkademScholar · Скоро