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The Importance of Artificial Intelligence Applications for Healthcare Professionals in Identifying Pregnancy Complications: A Traditional Review
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2025
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Abstract
The Importance of Artificial Intelligence Applications for Healthcare Professionals in Identifying Pregnancy Complications: A Traditional Review ABSTRACT Artificial intelligence applications are widely used in the healthcare field. Healthcare also integrates prediction, diagnosis, and prioritization methods into its operations. With the emergence of these applications, digital technologies are becoming practical auxiliary tools in various healthcare sectors. Especially, applications play an important role in predicting pregnancy complications. Pregnancy-related issues escalate the rate of maternal death. Therefore, early and accurate detection of pregnancy-related complications plays a critical role in reducing maternal mortality rates. Therefore, we need early screening and diagnosis to reduce maternal and neonatal mortality. Artificial intelligence applications have a wide range of applications and techniques in this field, including monitoring the health of the mother and embryo, identifying pregnancy risk factors, and predicting preterm birth. These applications facilitate earlier detection and intervention, allowing healthcare professionals to proactively manage pregnancy complications, thereby improving outcomes for both mother and baby. Additionally, with these predictive models, healthcare professionals can assess the risk of complications in the early stages of pregnancy and adapt interventions accordingly. This study aims to examine how artificial intelligence applications can improve maternal health care through early detection of pregnancy complications and increase access to quality care for women worldwide. Keywords: Artificial intelligence; pregnancy; complication. Source of Finance This study has no funding support
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