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Main Authors: Mistri, Rajeshwari, Joshi, Harsh, Kapure, Nachiket, Kumari, Parul, Mali, Manasi, Purohit, Seema, Sharma, Neha, Panday, Mrityunjoy, Yajnik, Chittaranjan S.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.15290
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author Mistri, Rajeshwari
Joshi, Harsh
Kapure, Nachiket
Kumari, Parul
Mali, Manasi
Purohit, Seema
Sharma, Neha
Panday, Mrityunjoy
Yajnik, Chittaranjan S.
author_facet Mistri, Rajeshwari
Joshi, Harsh
Kapure, Nachiket
Kumari, Parul
Mali, Manasi
Purohit, Seema
Sharma, Neha
Panday, Mrityunjoy
Yajnik, Chittaranjan S.
contents Accurate fetal birth weight prediction is a cornerstone of prenatal care, yet traditional methods often rely on imaging technologies that remain inaccessible in resource-limited settings. This study presents a novel machine learning-based framework that circumvents these conventional dependencies, using a diverse set of physiological, environmental, and parental factors to refine birth weight estimation. A multi-stage feature selection pipeline filters the dataset into an optimized subset, demonstrating previously underexplored yet clinically relevant predictors of fetal growth. By integrating advanced regression architectures and ensemble learning strategies, the model captures non-linear relationships often overlooked by traditional approaches, offering a predictive solution that is both interpretable and scalable. Beyond predictive accuracy, this study addresses a question: whether birth weight can be reliably estimated without conventional diagnostic tools. The findings challenge entrenched methodologies by introducing an alternative pathway that enhances accessibility without compromising clinical utility. While limitations exist, the study lays the foundation for a new era in prenatal analytics, one where data-driven inference competes with, and potentially redefines, established medical assessments. By bridging computational intelligence with obstetric science, this research establishes a framework for equitable, technology-driven advancements in maternal-fetal healthcare.
format Preprint
id arxiv_https___arxiv_org_abs_2504_15290
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Parental Imprints On Birth Weight: A Data-Driven Model For Neonatal Prediction In Low Resource Prenatal Care
Mistri, Rajeshwari
Joshi, Harsh
Kapure, Nachiket
Kumari, Parul
Mali, Manasi
Purohit, Seema
Sharma, Neha
Panday, Mrityunjoy
Yajnik, Chittaranjan S.
Other Statistics
Accurate fetal birth weight prediction is a cornerstone of prenatal care, yet traditional methods often rely on imaging technologies that remain inaccessible in resource-limited settings. This study presents a novel machine learning-based framework that circumvents these conventional dependencies, using a diverse set of physiological, environmental, and parental factors to refine birth weight estimation. A multi-stage feature selection pipeline filters the dataset into an optimized subset, demonstrating previously underexplored yet clinically relevant predictors of fetal growth. By integrating advanced regression architectures and ensemble learning strategies, the model captures non-linear relationships often overlooked by traditional approaches, offering a predictive solution that is both interpretable and scalable. Beyond predictive accuracy, this study addresses a question: whether birth weight can be reliably estimated without conventional diagnostic tools. The findings challenge entrenched methodologies by introducing an alternative pathway that enhances accessibility without compromising clinical utility. While limitations exist, the study lays the foundation for a new era in prenatal analytics, one where data-driven inference competes with, and potentially redefines, established medical assessments. By bridging computational intelligence with obstetric science, this research establishes a framework for equitable, technology-driven advancements in maternal-fetal healthcare.
title Parental Imprints On Birth Weight: A Data-Driven Model For Neonatal Prediction In Low Resource Prenatal Care
topic Other Statistics
url https://arxiv.org/abs/2504.15290