Answer:
0.1626 = 16.26% probability that the patient actually has HIV
Explanation:
Conditional Probability
We use the conditional probability formula to solve this question. It is
![P(B|A) = (P(A \cap B))/(P(A))](https://img.qammunity.org/2022/formulas/mathematics/college/r4cfjc1pmnpwakr53eetfntfu2cgzen9tt.png)
In which
P(B|A) is the probability of event B happening, given that A happened.
is the probability of both A and B happening.
P(A) is the probability of A happening.
In this question:
Event A: Positive test
Event B: Has HIV.
Probability of a positive test:
0.028 of 100 - 0.6 = 99.4% = 0.994(false-positive).
1 - 0.091 = 0.901 out of 0.6% = 0.006(positive). So
![P(A) = 0.028*0.994 + 0.901*0.006 = 0.033238](https://img.qammunity.org/2022/formulas/mathematics/college/vhkrqknj101mb9nhjm5gn45k2ahrdzjdwv.png)
Probability of a positive test and having HIV:
0.901 out of 0.006. So
![P(A \cap B) = 0.901*0.006 = 0.005406](https://img.qammunity.org/2022/formulas/mathematics/college/g341otgavjx1klq7117izeb0zro68nozcn.png)
What is the probability that the patient actually has HIV?
![P(B|A) = (P(A \cap B))/(P(A)) = (0.005406)/(0.033238) = 0.1626](https://img.qammunity.org/2022/formulas/mathematics/college/ut1om24yu03ke4xr48mlldsr67g6wlswyr.png)
0.1626 = 16.26% probability that the patient actually has HIV