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Among the inputs to the model, parameters can be broken up by which ones should be firm details of the population and hospital, or reliable local calculations, and which ones are unknowns that observations should fit
Firm
Regional population
Market share
ICU and Ventilator usage, as a fraction of hospitalized cases
Lengths of stay
Unknown
% Infections requiring hospitalization
Spread parameter (as initial beta, doubling time, whatever)
Effect of social distancing measures (as contact reduction rate, or adjusted beta, whatever)
Given a week or two worth of actual hospital admissions, it should be possible to automatically estimate values for all of these parameters.
Additional details
One potential confounding factor would be if the standard for hospitalization changes over time, to reflect increasing healthcare system burden and narrowed focus on the most critical cases.
Of the unknowns, latency should be the most general across regions and populations, but may still vary with distribution of demographics, comorbidities, etc, so it seems worth treating it as local.
Suggested fix
Take as many days of hospital admission data as available as input, and automatically determine all possible parameters.
The text was updated successfully, but these errors were encountered:
Hi,
In my experience:
Regional population -> not firm: there may be inflation due to people fleeing areas for their second homes, University shut down
ICU and Ventilator usage, as a fraction of hospitalized cases -> this is largely not known
% Infections requiring hospitalization
Spread parameter (as initial beta, doubling time, whatever)
latency from infection to hospital presentation (#340 for implementation of this variable)
Effect of social distancing measures (as contact reduction rate, or adjusted beta, whatever)
For our case, we definitely want to fit regional population and hospitalized/ICU/Vent fraction
I am only fitting the doubling and social distances among the infection parameters.
Summary
Among the inputs to the model, parameters can be broken up by which ones should be firm details of the population and hospital, or reliable local calculations, and which ones are unknowns that observations should fit
Firm
Unknown
Given a week or two worth of actual hospital admissions, it should be possible to automatically estimate values for all of these parameters.
Additional details
One potential confounding factor would be if the standard for hospitalization changes over time, to reflect increasing healthcare system burden and narrowed focus on the most critical cases.
Of the unknowns, latency should be the most general across regions and populations, but may still vary with distribution of demographics, comorbidities, etc, so it seems worth treating it as local.
Suggested fix
Take as many days of hospital admission data as available as input, and automatically determine all possible parameters.
The text was updated successfully, but these errors were encountered: