Predicting Depression and Anxiety Risk in Dutch Neighborhoods from Street-View Images
Nin Khodorivsko, Giacomo Spigler

TL;DR
This study uses neural networks and explainability methods to predict neighborhood mental health risk levels from street-view images in the Netherlands, revealing landscape features associated with depression and anxiety risks.
Contribution
It refines neural network models for neighborhood risk prediction from street images and applies explainability techniques to interpret landscape features linked to mental health risks.
Findings
Neural networks achieved over 80% accuracy after adjustment.
Landscape features linked to different mental health risk categories.
Explainability methods highlighted landscape attributes, but their correlation with risk levels was unclear.
Abstract
Depression and anxiety disorders are prevalent mental health challenges affecting a substantial segment of the global population. In this study, we explored the environmental correlates of these disorders by analyzing street-view images (SVI) of neighborhoods in the Netherlands. Our dataset comprises 9,879 Dutch SVIs sourced from Google Street View, paired with statistical depression and anxiety risk metrics from the Dutch Health Monitor. To tackle this challenge, we refined two existing neural network architectures, DeiT Base and ResNet50. Our goal was to predict neighborhood risk levels, categorized into four tiers from low to high risk, using the raw images. The results showed that DeiT Base and ResNet50 achieved accuracies of 43.43% and 43.63%, respectively. Notably, a significant portion of the errors were between adjacent risk categories, resulting in adjusted accuracies of 83.55%…
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Taxonomy
TopicsHealth disparities and outcomes
MethodsAttention Is All You Need · Linear Layer · Softmax · Multi-Head Attention · Dense Connections · Feedforward Network · Attention Dropout · Balanced Selection · Dropout · Shapley Additive Explanations
