Published February 4, 2026 | Version v1
Dataset Open

Urban built environment, lifestyles, dietary habits, physical indicator and health: a machine learning analysis in Japanese cities

  • 1. ROR icon Hiroshima University

Description

This repository provides the spatial datasets used in the study “Urban built environment, lifestyles, dietary habits, physical indicators and health: a machine learning analysis in Japanese cities”.

The datasets were compiled and processed by the authors to support the empirical analyses 
examining the associations between urban built environment characteristics, lifestyle and dietary patterns, physical indicators, and health outcomes across multiple Japanese cities using machine learning approaches.

The shared data primarily include spatially aggregated built environment indicators derived from open urban data sources (https://nlftp.mlit.go.jp/ksj/). 
These indicators capture multiple dimensions of the urban environment, such as land-use structure, 
density and accessibility of facilities, transportation-related characteristics, and environmental context. 
All variables were processed at consistent spatial units to enable integration with individual- or area-level 
health, lifestyle, and dietary information used in the analysis.

To protect privacy and comply with data governance requirements, no individual-level or personally identifiable 
information is included in this repository. Health-related, lifestyle, and dietary variables are not shared at 
the raw microdata level; instead, this repository focuses on the spatial data and derived indicators that can be 
openly distributed and reused.

The data provided here allow replication of the built environment feature construction process and facilitate 
reuse in related studies on urban health, spatial epidemiology, and machine learning–based urban analytics. 
Researchers may combine these spatial indicators with their own health or survey data to explore similar research 
questions in other contexts.

This dataset is shared for academic research purposes. Users are requested to cite this dataset appropriately 
when using it in publications or derivative works.

Files

spatial data.zip

Files (37.4 MB)

Name Size Download all
md5:9656bb992c700c07f07b78bc5519994c
37.4 MB Preview Download