Revolutionizing Health and Technology
Join us in exploring new frontiers in innovation and discovery for Women's Health
Join us in exploring new frontiers in innovation and discovery for Women's Health
At FemEquity Tech Innovations LLC (FETI), we are dedicated to pioneering technological advancements to achieve gender equity, with a special focus on maternal health for Black, Indigenous, and Women of Color (BIWOC). Our dual mission is to support clinicians in fostering self-reflexivity and recognizing and addressing unrecognized biases contributing to maternal health disparities. We also support the empowerment of diverse women through innovative solutions, giving them a voice to drive positive health changes throughout pregnancy, birth, and beyond.
Our passionate, multidisciplinary team is committed to exploring the latest advancements, including cutting-edge technology. At FETI, we share our knowledge and expertise nationally and globally. Visit our website to learn about our exciting projects nearing prototype completion.
Gestational diabetes is a condition characterized by high blood sugar levels that develop during pregnancy. The review identifies multiple AI models that predict the risk of GDM by analyzing factors such as maternal age, body mass index (BMI), and family history of diabetes. These models help in the early diagnosis and management of GDM, thereby reducing potential complications for the mother and child (Oprescu et al., 2020).
Apart from pre-eclampsia, other hypertensive disorders during pregnancy, such as gestational hypertension, pose significant risks. AI applications focus on early detection, continuous blood pressure monitoring, and related physiological parameters. These technologies help manage hypertensive disorders effectively, reducing the risk of severe complications (Oprescu et al., 2020).
Preterm birth, defined as birth before 37 weeks of gestation, is a leading cause of neonatal mortality and morbidity. AI has been used to predict preterm birth by analyzing various biomarkers, clinical data, and environmental factors. Studies indicate that machine learning algorithms can significantly improve prediction accuracy, allowing timely interventions to prevent preterm births (Oprescu et al., 2020).
AI applications in labor and delivery include predicting the need for interventions such as cesarean sections and optimizing delivery timing. Machine learning models evaluate various factors, including maternal health, fetal condition, and labor progression, to support decision-making in the delivery room. These applications aim to improve mother and baby outcomes (Oprescu et al., 2020).
Mental health issues such as anxiety, depression, and stress during pregnancy are significant risk factors for adverse outcomes. AI and affective computing are used to monitor and assess the emotional well-being of pregnant women. These technologies help identify those at risk of mental health disorders, enabling timely psychological support and interventions to ensure better pregnancy outcomes (Oprescu et al., 2020).
Maternal and neonatal mortality rates can be significantly impacted by timely and accurate predictions of complications using AI. Machine learning models analyze a wide range of clinical, demographic, and socioeconomic data to identify at-risk pregnancies. Early identification enables proactive measures to prevent adverse outcomes and reduce mortality rates (Oprescu et al., 2020).
Learn About Our Initiatives
4742 North 24th Street, Ste 300 PMB 242, Phoenix, Arizona 85016, United States
Sign up to hear from us about specials, sales, and events.
Copyright © 2024 FemEquity Tech Innovations LLC - All Rights Reserved.
Powered by GoDaddy
We use cookies to analyze website traffic and optimize your website experience. By accepting our use of cookies, your data will be aggregated with all other user data.