Apr 27, 2026
Blindspots - Atlas for Testing Visibility and Local Conditions
Mushraf Ali Anver
Pandemic response depends on accurate detection and measurement. However, testing data has blind spots or poor visibility in many areas. During the critical early pandemic stage, predicting which communities and neighborhoods have blindspots can help control pandemic spread. Missing tests also matter in determining population antibodies, group vulnerability and several other pandemic measures. In contrast to extensive work on pandemic mortality, the data of who takes tests and who does not is just as relevant but neglected in Pandemic management.
This project builds a prototype pandemic response atlas using Covid-19 France and the greater Paris area as a case study. The prototype is an R Shiny web application that provides three map layers: COVID testing visibility across Île-de-France, IRIS-level socioeconomic conditions, and a high-resolution 200m Paris socioeconomic layer. Its main contribution is predicting better public-health surveillance interpreted with local socioeconomic context. Based on socio-economic conditions, policy makers should then better preventively protect the blindspot areas.
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Cite this work
@misc {
title={
(HckPrj) Blindspots - Atlas for Testing Visibility and Local Conditions
},
author={
Mushraf Ali Anver
},
date={
4/27/26
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}


