What would likely lower the negative predictive value of a screening test?

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The negative predictive value (NPV) of a screening test refers to the probability that individuals with a negative test result truly do not have the disease. Factors that influence NPV primarily include the prevalence of the disease and the sensitivity and specificity of the test.

A high prevalence of the disease actually enhances the positive predictive value, but does not inherently invalidate the negative predictive value. A screening test's NPV is inversely related to disease prevalence. When disease prevalence is high, a proportion of negative results may actually be false negatives, given that the test could miss undiagnosed cases among high-risk individuals. Therefore, a lower prevalence would typically enhance NPV, while a higher prevalence can reduce it.

Low specificity means that a significant number of individuals who do not have the disease may incorrectly test positive. This would affect the positive predictive value more significantly than the negative. Similarly, low sensitivity impacts how many true cases are correctly identified, impacting positive results more than negative. High accuracy overall indicates good performance of the test and would generally support a robust NPV.

In conclusion, high disease prevalence is likely to lower the negative predictive value of a screening test, as it leads to a greater risk of false negatives among individuals screened, thus reducing the likelihood that negative test

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