Behind the Model

Purpose

  • Web series sharing the behind-the-scenes work of Center for Forecasting and Outbreak Analytics (CFA) and partners in generating models, forecasts, and other analytic products.
  • Aim to provide a high-level overview of methods and practical applications of our work.
  • Written for public health practitioners, healthcare providers, and the public.
Dark blue background with orange waves in two corners. White text on top that says "Center for Forecasting and Outbreak Analytics" and "Behind the Model"

Spotlight Recent Work

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CFA's latest Behind the Model is a behind-the-scenes look into how CFA and NCIRD partnered to support the Chicago and Illinois Departments of Public Health during a local measles outbreak. We show how disease modeling can be applied to answer questions from decision-makers and improve real-time response to an outbreak.

Supporting Decision-Making in a Local Measles Response

CFA is building modeling tools that can be used in real-time to support decision-making for outbreak response. In March 2024, CDC’s National Center for Immunization and Respiratory Diseases (NCIRD) and CFA worked together to support the response by the Chicago and Illinois Departments of Public Health to a measles outbreak. The models helped forecast the expected size and duration of the outbreak and helped the Chicago Department of Public Health plan the public health response, allocate resources, and evaluate the impact of public health measures.

Schematic of a population represented by compartmental and agent-based models. This graphic illustrates two schematics based on a real-world population represented by figures on the lefthand side of the graphic. Colors represent disease states for both models: susceptible (grey), exposed (light orange), infectious (dark orange), and recovered (blue). People who already have immunity due to vaccination start the model as "recovered" (blue).
Schematic of a population represented by compartmental and agent-based models (ABM). Compartmental models group the population by disease state whereas ABMs simulate how infection progresses at the individual level. Colors represent disease states for both models: susceptible (grey), exposed (light orange), infectious (dark orange), and recovered (blue). People who already have immunity due to vaccination start the model as “recovered.”   

Improving CDC’s Tools for Assessing Epidemic Growth

CFA is building modeling tools and computational pipelines so that we can analyze data quickly and accurately in response to outbreaks. Our goal is to make these tools accessible to federal, state, tribal, territorial, local, and academic partners. One of these efforts is to estimate the time-varying reproductive number, Rt, a measure that helps us quickly assess whether infections are increasing or decreasing.

Idealized Rt chart. Transmission chain of 3 infected generation persons to 4 infected generation persons.
Rt is a data-driven quantity. We identify all the individuals infected on a particular date (this is referred to as the "infectee generation", with four newly infected persons), and divide by the number of people who caused those infections (or the "parents" of those cases, making up the "infector generation").

Estimating Impact of Updated Isolation Guidance

We estimated the potential impact of CDC’s updated respiratory virus isolation guidance on an individual’s COVID-19 transmission potential. Our analysis found little difference on average for the likelihood that someone with COVID-19 would spread it to others under the updated isolation guidance compared with the previous guidance.

Blue mask outlined in black next to a coronavirus image with darker blue crowns.
Post-isolation precautions are a key feature of the updated guidance.

Wastewater-Informed Forecasting

CFA is building public health modeling tools that use signal fusion, in which data streams from multiple sources are used to produce more accurate modeling and analytics. In one example of this work, we are partnering with the National Wastewater Surveillance System (NWSS) and the National Center for Immunization and Respiratory Diseases (NCIRD) to use wastewater data alongside hospital admissions data to forecast COVID-19 hospital admissions at the state and national levels. These additional data could improve forecasts at critical times, such as when entering a surge in transmission.

Image of water flowing out of pipe
Monitoring pathogens in wastewater can help track community spread of COVID-19 and other diseases.