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In this video, Im going to explain what positive predictive values and negative predictive values are and how to calculate them. Hi, and Welcome back to physiotutors. Before you watch this video on how to calculate positive predictive values and negative predictive values, you should know what sensitivity and specificity are and how they are calculated. If you want to learn more about that make sure to click in the top right corner to watch our videos on those topics. Now remember that in the clinical setting you do not know if your patient has the disease or not. So the positive predictive value of a test tells you how likely it is that the patient has a disease after he tested positive and the negative predictive value tells you how likely it is that your patient does not have the disease if he tested negative. As the predicted values are always dependent on the prevalence of the disease it is wise to first calculate the prevalence and we do that if we take all the people who have