Answer:
The probability that a person who tests positive actually has the disease is 9.96 %
Explanation:
Given:
Rate of incidence of disease is 0.6%. So, 0.6% of the persons have actually a disease.
Percent of persons not having the disease will be 100 - 0.6 = 99.4%
Let the event of having disease be 'D'. Therefore,
![P(D)=0.6\% = 0.006\\\\P(\overline{D})=99.4\% =0.994](https://img.qammunity.org/2020/formulas/mathematics/college/jys3hegk9bd6939sxxfx12klh88nt6bexb.png)
False negative rate means that the person having disease shows negative test result.
Let the events 'P' and 'N' represent positive test and negative test results respectively.
As per question,
![P(N|D)=8\%=0.08\\\therefore, P(P|D)=1-0.08=0.92](https://img.qammunity.org/2020/formulas/mathematics/college/9grilgjo73hny4q3vvi4eosasr4h966cz8.png)
Also, false positive test result means the person not having disease showing a positive test result. Therefore,
![P(P|\overline{D})=5\%=0.05](https://img.qammunity.org/2020/formulas/mathematics/college/gds437t07ht8b1nyzjvqgad8tsazc1ha0v.png)
Now, we are asked to determine the probability of a person who tests positive actually has the disease,
, which is given using the Bayes' Theorem:
![P(D|P)=\fracD){P(D)\cdot P(P|D)+P(\overline{D})\cdot P(P|\overline{D})}\\P(D|P)=(0.006* 0.92)/(0.006* 0.92+0.994* 0.05)\\P(D|P)=(5.52* 10^(-3))/(5.52* 10^(-3)+49.7* 10^(-3))\\P(D|P)=(5.52)/(55.22)\\P(D|P)=0.0996=0.0996* 100=9.96\%](https://img.qammunity.org/2020/formulas/mathematics/college/zw9o401i611bz8it2gl5zgt2r3ufe4gj7m.png)
Therefore, the probability that a person who tests positive actually has the disease is 9.96 %