Bayes Probability HIV Word Problem

In summary, researchers have constructed a risk score for HIV for the U.S. population, which is a function of discrete valued risk factors. The risk score is defined as the fraction of HIV positive individuals among those with the same risk factors. The ELISA HIV test has known sensitivity and specificity and is performed on a random individual with risk score r. The probability that the individual is HIV positive given a positive test result is represented by the expression S1*p(r)/[S1*p(r) + (1-S2)(1-p(r)].
  • #1
dspampi
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In this problem, assume researchers have constructed a risk score for HIV for the U.S. population, which is a function of risk factors such as frequency of unprotected sex, use of intravenous drugs, having another sexually trans- mitted infection, etc. Assume each risk factor measured is discrete valued. The risk score r for an individual is defined as the fraction who are HIV positive among those in the U.S. with exactly the same risk factors as this individual. (In practice the risk score will have to be estimated, but here we assume it is known). Let R ⊆ [0, 1] denote the set of possible risk scores. (R may not be the entire interval [0, 1] if for some values of r, no individual in the U.S. has risk score r.)

We consider the ELISA HIV test. We assume this test has known sensitivity denoted by s1 and known specificity denoted by s2, neither of which depend on the risk score. That is, for any r, if we consider the population of those with risk score r, the test’s sensitivity and specificity among this population are s1 and s2, respectively, where s1,s2 do not depend on r. We assume the number of HIV positive individuals in the U.S. is 1.2 million, and the total U.S. population is 310 million.

Note: the sensitivity of a test is the probability the outcome of the test is positive given that the person tested has HIV; the specificity of a test is the probability the outcome of the test is negative given that the person tested does not have HIV.

(a) For each r ∈ R, let p(r) denote the prevalence of HIV infection among those in the U.S. population with risk score r. Write an expression for the function p(r) as a function of r. (Hint: it’s a very simple function of r.)

(b) Assume an individual in the U.S. is selected at random, and has risk score r. The individual is given the ELISA HIV test, and tests positive. Given just this information, what is the probability that the individual is HIV infected? (This is the positive predictive value of the test, within the population of individuals with risk score r.) Your answer should be an expression involving p(r),s1,s2 (or could just involve r,s1,s2 if you plug in the answer from (a) for p(r)).


There are other parts to the problem but I want to see what I've got so far:

For (a) I'm thinking since we are looking at prevalence in terms of p(r) that it would be the percentage of (people HIV+/ total people)* r

(b) Since the person has a risk value of r,
and given that their test score came back +, we want know the probability that he is actually HIV+; so I think it's:

P(P+|T+) = S1*p(r)/[S1*p(r) + (1-S2)(1-p(r)] ?
 
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  • #2


Your approach for (a) is correct. The function p(r) would simply be the percentage of HIV positive individuals among those with risk score r. So the expression for p(r) would be p(r) = p(HIV+|r) = p(HIV+ and r) / p(r).

For (b), you are on the right track. The probability of a person being HIV positive given a positive test result is the positive predictive value, which can be calculated using Bayes' Theorem:

P(HIV+|T+) = P(T+|HIV+) * P(HIV+) / P(T+)

Using the information given, we can substitute in the values for P(T+|HIV+) (sensitivity), P(HIV+) (prevalence), and P(T+) (total number of positive tests in the population). So the expression would be:

P(HIV+|T+) = s1 * p(r) / [s1 * p(r) + (1-s2) * (1-p(r))]
 

Related to Bayes Probability HIV Word Problem

1. What is Bayes Probability and how is it used in the context of HIV?

Bayes Probability is a mathematical concept that enables us to update our beliefs about the likelihood of an event occurring based on new information. In the context of HIV, Bayes Probability can be used to estimate the probability of an individual having HIV based on their test results and other relevant factors.

2. What is the "HIV Word Problem" and why is it important?

The "HIV Word Problem" is a commonly used example in probability and statistics to demonstrate the application of Bayes Theorem. It involves determining the probability of an individual having HIV given a positive test result, taking into account the prevalence of HIV in the population and the accuracy of the test. It is important as it helps us understand the limitations of diagnostic tests and the role of prior knowledge in making accurate predictions.

3. What are the key factors that affect the Bayes Probability in the HIV Word Problem?

The key factors that affect the Bayes Probability in the HIV Word Problem include the prevalence of HIV in the population, the accuracy of the diagnostic test, and the individual's risk factors for HIV (e.g. sexual activity, drug use, etc.). These factors all influence the prior probability or the initial belief about the likelihood of an individual having HIV before any test results are taken into account.

4. Can Bayes Probability be used to accurately diagnose HIV?

No, Bayes Probability alone cannot be used to accurately diagnose HIV. It is just one tool that can be used to estimate the probability of an individual having HIV, but it should be used in conjunction with other diagnostic tests and medical evaluation. Additionally, the accuracy of Bayes Probability is highly dependent on the accuracy of the prior probability and the quality of data used to calculate it.

5. Are there any limitations to using Bayes Probability in the context of HIV?

Yes, there are several limitations to using Bayes Probability in the context of HIV. One limitation is that it assumes the prior probability is accurate, which may not always be the case. Additionally, it does not take into account other factors that may affect the likelihood of HIV, such as the individual's behavior or exposure to risk factors. Furthermore, Bayes Probability is only as accurate as the data and information used to calculate it, so any errors or biases in the data can affect the results.

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