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Showing 2 results for Farrokhi

Ramin Farrokhi, Samaneh Hosseinzadeh, Abbas Habibelahi, Akbar Biglarian,
Volume 20, Issue 1 (Vol.20, No.1, Spring 2024)
Abstract

Background and Objectives: Identifying pregnant women who are at risk of premature birth and determining its risk factors is essential because it affects their health. This study aimed to use an interpretable machine-learning model to predict premature birth.
Methods: In this study, data from 149,350 births in Tehran in 2019 were utilized from the Iranian Mothers and Babies Network (IMaN) dataset. Various factors related to the mother and the fetus, such as the mother's demographic variables and health status, medical history, pregnancy conditions, childbirth, and associated risks, were considered. The machine learning models, including multilayer neural networks, random forest, and XGBoost, were employed to predict the occurrence of preterm birth after data preprocessing. The models were evaluated based on accuracy, sensitivity, specificity, and area under the ROC curve. The Python programming language version 3.10.0 was applied to analyze the data.
Results: About 8.67% of births were premature. The XGBoost algorithm achieved the highest prediction accuracy (90%). According to the model output, multiple births, which account for 46% of pregnant women's births, had the highest importance score. Delivery risk factors had a score of 41%, and other variables, including neurological and mental illness, preeclampsia, and cardiovascular disease, were subsequently ranked in order of importance for this particular individual.
Conclusion: Using an interpretable machine learning method could predict the occurrence of premature birth. Based on risk factors, the interpretable machine learning method can provide personalized preventive recommendations for every pregnant woman, aiming to reduce the risk of preterm birth.

Shima Shadkam Farrokhi, Amir Hossein Nekouei, Saeedeh Haji Maghsoudi, Hamid Sharifi, Aliakbar Haghdoost,
Volume 21, Issue 2 (Vol.21, No.2, Summer 2025)
Abstract

Background and Objectives: Abortion is a significant health and social issue in Iran, which affects women's physical and mental health, as well as population growth rates. This study evaluated and compared direct and indirect estimates of abortion incidence and its associated factors among women of reproductive age in Kerman, Iran.
Methods: This cross-sectional study estimated the incidence of abortion using direct and indirect methods (Proxy network Scale-Up Method). In the direct method, 471 women aged 18-54 were interviewed about their personal experiences with abortion. In the indirect method, 450 women provided information about abortions within their close social networks. The number of abortions reported by each individual was divided by the corresponding person-time to estimate the incidence rate using the direct method. The number of abortions reported within the social network was divided by the size of each individual’s close network population for the indirect abortion incidence estimation.
Results: The annual abortion incidence is estimated indirectly at 62 per 1,000 women of reproductive age (95% CI = 52, 73), with 57% attributed to spontaneous abortion and 43% to induced abortion. Factors such as more children, higher socioeconomic status, and an educated spouse were associated with increased abortion rates.
Conclusion: The occurrence of abortion in Kerman, as in the rest of the country, was a serious health issue. The underlying and root causes should be addressed to manage it more effectively. And it should be noted, more than half of these abortions are spontaneous, meaning that there are inherent limitations in reducing the number of abortions even with optimal management.


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