Addressing public health and environmental challenges in rapidly urbanizing areas requires identifying and analyzing relevant indicators. This study introduces an AI-powered framework for extracting and analyzing health and ecological indicators from biomedical literature. Using PubMed as a data source and Large Language Models, we processed 16,474 publications from 5 European regions related to the EU-funded OneAquaHealth project. We automated the identification of 41,377 unique georeferenced relationships between health and environmental indicators. Through dimensionality reduction and clustering, we elicited eight healthcare-focused clusters (e.g., chronic disease and mental health) and eight environmental-focused clusters (e.g., exposure to contaminants). Spatial patterns highlighted disparities in data density, with greater coverage in Western Europe and less in Africa and the Middle East. Our methodology demonstrates how extracting valuable, geographically based insights from unstructured biomedical text supports interdisciplinary research and helps decision-makers address health and environmental challenges.

Identification of Ecological and Human Health Indicators Based on Geographic and Spatial Mapping

Tamburis O.;
2026

Abstract

Addressing public health and environmental challenges in rapidly urbanizing areas requires identifying and analyzing relevant indicators. This study introduces an AI-powered framework for extracting and analyzing health and ecological indicators from biomedical literature. Using PubMed as a data source and Large Language Models, we processed 16,474 publications from 5 European regions related to the EU-funded OneAquaHealth project. We automated the identification of 41,377 unique georeferenced relationships between health and environmental indicators. Through dimensionality reduction and clustering, we elicited eight healthcare-focused clusters (e.g., chronic disease and mental health) and eight environmental-focused clusters (e.g., exposure to contaminants). Spatial patterns highlighted disparities in data density, with greater coverage in Western Europe and less in Africa and the Middle East. Our methodology demonstrates how extracting valuable, geographically based insights from unstructured biomedical text supports interdisciplinary research and helps decision-makers address health and environmental challenges.
2026
Istituto di Biostrutture e Bioimmagini - IBB - Sede Napoli
9781643686615
Clustering
Environmental Indicators
Geographic Mapping
Health Status Indicators
Large Language Models
One Health
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/586774
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