One of the major problems in suppressing the spreading of an epidemic resides in understanding and monitoring its propagation patterns, and in evaluating how these are modified by enforced policies. The standard solution requires detailed information at the microscopic scales, e.g. how infected people have moved and whom they came in contact with, which is hardly ever available. The researchers propose a novel approach to the study of the propagation of COVID-19, in which a proxy of this information is derived at macroscopic scales. This will be based on two ingredients: the spatiotemporal study in shiny with mathematical models with aggregated or non aggregated data and the reconstruction of functional networks of spreading patterns, and the development of a supporting software.
Study Type
OBSERVATIONAL
Enrollment
2,646
just descriptive analysis of clinical data
CHGUV
Valencia, Spain
CHGUV
Valencia, Spain
spatiotemporal spread
spatiotemporal spread of COVID-19 patient in our hospital
Time frame: February 1, 2020 to September 30, 2020
classification score
risk classification score of each patients with clinical and analytical variables
Time frame: February 1, 2020 to September 30, 2020
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