MACHINE LEARNING FOR PREDICTING PREECLAMPSIA BASED ON ARTERIAL PRESSURE AND BODY MASS DATA OF THE PREGNANT
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Keywords

preeclampsia, machine learning, blood pressure, body weight, body mass index, early screening, random forest, mobile application.

How to Cite

Nuratdinova , K. (2026). MACHINE LEARNING FOR PREDICTING PREECLAMPSIA BASED ON ARTERIAL PRESSURE AND BODY MASS DATA OF THE PREGNANT. INTERNATIONAL CONFERENCE ON SCIENCE, INNOVATION AND GLOBAL DEVELOPMENT, 1(5), 22-27. https://doi.org/10.5281/zenodo.20042803

Abstract

This article examines the task of early prediction of preeclampsia using machine learning methods based on data from pregnant women's blood pressure and body weight. The work describes a scheme for collecting clinical samples, preliminary data processing, and constructing a classification model based on a random forest algorithm. It has been shown that even simple, widely available indicators - systolic and diastolic blood pressure, blood pressure dynamics, body mass index, and weight gain - allow for high discrimination of the model, with good sensitivity and moderate specificity. The results obtained confirm the prospects for using non-invasive, easily measurable parameters and machine learning methods to support clinical decision-making in obstetric practice.  

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References

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