These trend lines mark the proportion of new cases, normalized by population—useful for showing the local fluctuations of case rates throughout the outbreak. When viewing these local rates across the map, comparative national and regional patterns of transmission emerge.
These trend lines mark the proportion of new covid-19 related deaths, normalized by population. When viewing these local rates across the map, comparative national and regional patterns of transmission emerge. Given the incubation and illness period of the virus, these lines may show a similar pattern to NEW CASES PER CAPITA, though with a time lag.
These trend lines track the ongoing cumulative number of cases, normalized by population. Because it is a cumulative count, the lines will never trend downward, except in the event of data-corrective measures (see SOURCES, below).
When the Trend Category option is selected, county trend lines are rendered in a color corresponding to their statistically-determined “trend summary”, created by Charlie Frye. Find the full methodology here.
The y-axis of chart lines are consistent within each of the categories so place-to-place comparisons can be visualized—except for rare outlier counties. Outlier counties are constrained by a scaled y-axis. Specifically, outliers are defined for NEW CASES PER CAPITA as counties with greater than 200 cases per 100,000 population; DEATHS PER CAPITA outliers are defined as counties with numbers of weekly deaths that are two standard deviations (currently a rate of 1408 per 10 million population) higher than the national average; CUMULATIVE CASES outliers are defined as counties with counts that are two standard deviations above (currently 42830) the national mean.
These counts are sourced from the Johns Hopkins University CSSE feature service of daily US County Cases since March 1st, 2020, and normalized into population-normalized rates using the population attribute also provided in the JHU service. Care has been taken to note, via county tooltip, when state reporting structures have impeded the Johns Hopkins University effort to aggregate this data in an ongoing fashion. Please refer to their frequently asked questions for more context around this data. The Khaki basemap is available via Living Atlas. Learn more about sparklines as a data visualization tool here.
This application was created by Jinnan Zhang and John Nelson, of Esri, with help from Yann Cabon and Fang Li, inspired by the trend line maps of Mathieu Rajerison and the local 1918 flu charts of Riley D. Champine. We are not medical professionals but saw a need for a visual sense of local rates and trends and created this primarily as a resource for ourselves but are making it available to the public in the event that it is a helpful resource for understanding patterns. We make no claims of officiality and share it only as a reference. For more geographic resources, please visit the Esri COVID-19 hub.
On March 10, 2023, the Johns Hopkins Coronavirus Resource Center ceased collecting and reporting of global COVID-19 data.
For updated cases, deaths, and vaccine data please visit the following sources:
For more information, visit the Johns Hopkins Coronavirus Resource Center.