Predicting micronutrient deficiency with publicly available satellite data

Author:

Bondi‐Kelly Elizabeth12ORCID,Chen Haipeng3,Golden Christopher D.4,Behari Nikhil5,Tambe Milind6

Affiliation:

1. MIT Cambridge Massachusetts USA

2. University of Michigan Ann Arbor Michigan USA

3. William & Mary Williamsburg Virginia USA

4. Department of Nutrition Harvard T.H. Chan School of Public Health Boston Massachusetts USA

5. MIT Media Lab Cambridge Massachusetts USA

6. Center for Research on Computation and Society Harvard University Cambridge Massachusetts USA

Abstract

AbstractMicronutrient deficiency (MND), which is a form of malnutrition that can have serious health consequences, is difficult to diagnose in early stages without blood draws, which are expensive and time‐consuming to collect and process. It is even more difficult at a public health scale seeking to identify regions at higher risk of MND. To provide data more widely and frequently, we propose an accurate, scalable, low‐cost, and interpretable regional‐level MND prediction system. Specifically, our work is the first to use satellite data, such as forest cover, weather, and presence of water, to predict deficiency of micronutrients such as iron, Vitamin B12, and Vitamin A, directly from their biomarkers. We use real‐world, ground truth biomarker data collected from four different regions across Madagascar for training, and demonstrate that satellite data are viable for predicting regional‐level MND, surprisingly exceeding the performance of baseline predictions based only on survey responses. Our method could be broadly applied to other countries where satellite data are available, and potentially create high societal impact if these predictions are used by policy makers, public health officials, or healthcare providers.

Funder

United States Agency for International Development

Army Research Office

Publisher

Wiley

Subject

Artificial Intelligence

Reference37 articles.

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