For assignment, you will examine the statistical implications of mass COVID-19 testing. You will determine the anticipated PPV and NPV, you will analyze the possible sampling biases in the presented data, and you will identify possible correlations. Finally, you will examine the significance of these data implications on public policy.

Throughout the COVID-19 pandemic, there has been an urgency in many countries, to increase the testing of the general population to determine and contain the spread of the disease. The plan to control an epidemic is to identify and isolate all cases to stop the spread. This plan requires accurate identification of everyone that is infected and/or exposed to the disease. But no test is 100% accurate, so our project is to quantify the implications of testing accuracy during mass testing of COVID-19 and the real-life consequences of our findings on public policy.

1) Review the site below to understand Sensitivity, Specificity, Positive Predictive Value (PPV), and Negative Predictive Value (NPV).

Sensitivity, Specificity, PPV, and NPV

2) Review the accuracy of standard COVID-19 tests to determine their sensitivity and specificity.

The link below provides some information about the sensitivity and specificity of the rapid Covid tests. For our purposes, we will use the following:

Testing a population with symptoms:

· Sensitivity: 92.0%

· Specificity: 99.6%

Testing a population without symptoms:

· Sensitivity: 80.0%

· Specificity: 99.5%

Rapid, point‐of‐care antigen and molecular‐based tests for diagnosis of SARS‐CoV‐2 infection

3) Review the two links below to understand how to calculate false positives and false negatives given sensitivity, specificity, and prevalence.

False Positive Calculator

False Negative Calculator

4) Review the following two instances in time:

– First consider March 15, 2000, when the U.S. decided to shut down. At the time, the CDC reported 383 cases in the U.S. (7-day moving average). For our analysis, please look at the anticipated results of testing 1,000 with symptoms and 1,000,000 without symptoms.

– Second, consider the peak of the outbreak on or about January 11, 2021, with 250,836 reported cases. Since this date is later in the outbreak, please consider testing 10,000 with symptoms and 10,000,000 without symptoms.

– Consider that the U.S. has 330,000,000 people during this time (for our purposes, we can consider the population of the U.S. constant a 330 million). This data will allow calculating the prevalence of the disease at these two points.

The following two resources may also be helpful in these calculations and also considerations of how to implement the results. Additional resources are also encouraged.

Pitfalls of Mass Testing for COVID-19

The Positives and Negatives of Mass Testing for Coronavirus

5) After reviewing the data and learning more about calculations:

• Determine the prevalence of the disease at these two dates. We will assume that the prevalence of those with symptoms is 20 times the general population for our purposes.

• Calculate the true positives, true negatives, false positives, and false negatives.

• Calculate the PPV and NPV for these two times (March and January) for the rapid Covid test using the sensitivity and specificity given above.

• Interpret the results of this statistical analysis and how these results are or are not helpful for public policy to quarantine and contract traces to control the disease.

• Examine how sampling bias (Section 9.4 in the text) could affect the results across large areas and smaller communities.

For assignment, you will examine the statistical implications of mass COVID

19

testing. You will determine the anticipated PPV and NPV, you will analyze the possible

sampling biases in the presented data, and you will identify possible correlations.

Finall

y, you will examine the significance of these data implications on public policy.

Throughout

the

COVID

19

pandemic,

there

has

been

an

urgency

in

many

countries,

to

increase

the

testing

of

the

general

population

to

determine

and

contain

the

spread

of

the

di

sease.

The

plan

to

control

an

epidemic

is

to

identify

and

isolate

all

cases

to

stop

the

spread.

This

plan

requires

accurate

identification

of

everyone

that

is

infected

and/or

exposed

to

the

disease.

But

no

test

is

100%

accurate,

so

our

project

is

to

quanti

fy

the

implications

of

testing

accuracy

during

mass

testing

of

COVID

19

and

the

real

life

consequences

of

our

findings

on

public

policy.

1)

Review

the

site

below

to

understand

Sensitivity,

Specificity,

Positive

Predictive

Value

(PPV),

and

Negative

Predict

ive

Value

(NPV).

Sensitivity,

Specificity,

PPV,

and

NPV

2)

R

eview

the

accuracy

of

standard

COVID

19

tests

to

determine

their

sensitivity

and

specificity.

The

link

below

provides

some

information

about

the

sensitivity

and

specificity

of

the

rapid

Covid

tests.

For

our

purposes,

we

will

use

the

following:

Testing

a

population

with

symptoms:

·

Sensitivity:

92.0%

·

Specificity:

9

9.6%

Testing

a

population

without

symptoms:

·

Sensitivity:

80.0%

·

Specificity: 99.5%

Rapid,

point

of

care

antigen

and

molecular

based

tests

for

diagnosi

s

of

SARS

CoV

2

infection

3)

Review

the

two

links

below

to

understand

how

to

calculate

false

positives

and

false

negatives

given

sensitivity,

specificity,

and

prevalence

.

False

Positive

Calculator

False

Negative

Calculator

4)

Review

the

following

two

instances

in

time:

First

consider

March

15,

2000,

when

the

U.S.

decided

to

shut

down.

At

the

time,

the

CDC

reported

383

cases

in

the

U.S.

(7

day

moving

average).

For

our

analysis,

please

look

at

the

anticipated

results

of

testing

1,000

with

symptoms

and

1,000,000

without

s

ymptoms.

Second,

consider

the

peak

of

the

outbreak

on

or

about

January

11,

2021,

with

250,836

reported

cases.

Since

this

date

is

later

in

the

outbreak,

please

consider

testing

10,000

with

symptoms

and

10,000,000

without

symptoms.

For assignment, you will examine the statistical implications of mass COVID-19

testing. You will determine the anticipated PPV and NPV, you will analyze the possible

sampling biases in the presented data, and you will identify possible correlations.

Finally, you will examine the significance of these data implications on public policy.

Throughout the COVID-19 pandemic, there has been an urgency in many countries, to

increase the testing of the general population to determine and contain the spread of

the disease. The plan to control an epidemic is to identify and isolate all cases to stop

the spread. This plan requires accurate identification of everyone that is infected

and/or exposed to the disease. But no test is 100% accurate, so our project is to

quantify the implications of testing accuracy during mass testing of COVID-19 and the

real-life consequences of our findings on public policy.

1) Review the site below to understand Sensitivity, Specificity, Positive Predictive

Value (PPV), and Negative Predictive Value (NPV).

Sensitivity, Specificity, PPV, and NPV

2) Review the accuracy of standard COVID-19 tests to determine their sensitivity

and specificity.

The link below provides some information about the sensitivity and specificity of the

rapid Covid tests. For our purposes, we will use the following:

Testing a population with symptoms:

 Sensitivity: 92.0%

 Specificity: 99.6%

Testing a population without symptoms:

 Sensitivity: 80.0%

 Specificity: 99.5%

Rapid, point-of-care antigen and molecular-based tests for diagnosis of SARS-CoV-2

infection

3) Review the two links below to understand how to calculate false positives and

false negatives given sensitivity, specificity, and prevalence.

False Positive Calculator

False Negative Calculator

4) Review the following two instances in time:

– First consider March 15, 2000, when the U.S. decided to shut down. At the time, the

CDC reported 383 cases in the U.S. (7-day moving average). For our analysis, please

look at the anticipated results of testing 1,000 with symptoms and 1,000,000 without

symptoms.

– Second, consider the peak of the outbreak on or about January 11, 2021, with

250,836 reported cases. Since this date is later in the outbreak, please consider

testing 10,000 with symptoms and 10,000,000 without symptoms.

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