Deep Learning Prediction of Cancer Prevalence from Satellite Imagery

Author:

Bibault Jean-Emmanuel12ORCID,Bassenne Maxime1,Ren Hongyi1ORCID,Xing Lei1

Affiliation:

1. Laboratory of Artificial Intelligence in Medicine and Biomedical Physics, Stanford University School of Medicine, Stanford, CA 94304, USA

2. Radiation Oncology Department, Hôpital Européen Georges Pompidou, Assistance Publique–Hôpitaux de Paris, 75015 Paris, France

Abstract

The worldwide growth of cancer incidence can be explained in part by changes in the prevalence and distribution of risk factors. There are geographical gaps in the estimates of cancer prevalence, which could be filled with innovative methods. We used deep learning (DL) features extracted from satellite images to predict cancer prevalence at the census tract level in seven cities in the United States. We trained the model using detailed cancer prevalence estimates from 2018 available in the CDC (Center for Disease Control) 500 Cities project. Data from 3500 census tracts covering 14,483,366 inhabitants were included. Features were extracted from 170,210 satellite images with deep learning. This method explained up to 64.37% (median = 43.53%) of the variation of cancer prevalence. Satellite features are highly correlated with individual socioeconomic and health measures that are linked to cancer prevalence (age, smoking and drinking status, and obesity). A higher similarity between two environments is associated with better generalization of the model (p = 1.10–6). This method can be used to accurately estimate cancer prevalence at a high spatial resolution without using surveys at a fraction of the cost.

Publisher

MDPI AG

Reference31 articles.

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3. (2019, September 24). US Census Bureau American Community Survey (ACS), Available online: https://www.census.gov/programs-surveys/acs.

4. Cancer incidence trends using American Community Survey estimates are not consistent with SEER for small populations;Mantey;Cancer Epidemiol.,2016

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