ebm:effect_estimation
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| ====== Effect Estimation ====== | ====== Effect Estimation ====== | ||
| ===== Odds ratio ===== | ===== Odds ratio ===== | ||
| - | * Better for regression analysis, but relative ratio is more intuitive. | + | * Odds ration makes regression analysis |
| - | * Odds are defined as $\frac{p}{1-p}$ if $p$ is the probability of an event | + | * Odds are defined as $$\frac{p}{1-p}$$ if $$p$$ is the probability of an event |
| - | * if the probability is 50% then it's $ which is 50-50. | + | * if the probability is 50% then it' |
| ===== Relative ratio ===== | ===== Relative ratio ===== | ||
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| * Or it can be a relative risk: the likelihood of responding if given | * Or it can be a relative risk: the likelihood of responding if given | ||
| - | treatment would be $\frac{a}{a+b}$. So the relative likelihood of responding if given the treatment would be $\frac{c}{c+d}$. So the relative likelihood of responding if given the treatment would be (a/a+b) / (c/c+d). | + | treatment would be $$\frac{a}{a+b}.$$ So the relative likelihood of responding if given the treatment would be $$\frac{c}{c+d}.$$ So the relative likelihood of responding if given the treatment would be $$\frac{\frac{a}{a+b}}{\frac{c}{c+d}}$$ |
| ===== Effect size ===== | ===== Effect size ===== | ||
| * People use the term effect size to mean standardized effect size. | * People use the term effect size to mean standardized effect size. | ||
| - | * The standardized effect size, called | + | * The standardized effect size, called |
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| - | described above (such as a mean number) divided by the standard deviation (the measure of variability). | + | |
| * Cohen' | * Cohen' | ||
| * 0.4 or lower is small effect size | * 0.4 or lower is small effect size | ||
| * 0.4 to 0.7 is medium effect size | * 0.4 to 0.7 is medium effect size | ||
| * greater than 0.7 is large effect size | * greater than 0.7 is large effect size | ||
| - | * Nonetheless, | + | * Nonetheless, |
| - | ===== NNT and NNH ===== | + | ===== Number Needed to Treat and Number Needed to Harm ===== |
| - | ==== Forumula | + | ==== Formula |
| * Number needed to treat or harm is 1 divided by the absolute risk reduction or risk increase. | * Number needed to treat or harm is 1 divided by the absolute risk reduction or risk increase. | ||
| - | * example: If 50% of people responded to a drug and 30% responded to placebo the | + | * example: If 50% of people responded to a drug and 30% responded to placebo the absolute risk reduction would be 20%. The number needed to treat would be 1/0.2 which is 5. |
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| - | absolute risk reduction would be 20%. The number needed to treat would be 1/0.2 which is 5. | + | |
| ==== NNT ==== | ==== NNT ==== | ||
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| * Jerzy Neyman who created hypothesis testing also advanced confidence intervals approach. | * Jerzy Neyman who created hypothesis testing also advanced confidence intervals approach. | ||
| - | * Rather Neyman saw it as a conceptual construct that helped us appreciate how well our observations have approached reality. As Salsburg puts it: ¡°the | + | * Rather Neyman saw it as a conceptual construct that helped us appreciate how well our observations have approached reality. As Salsburg puts it: " |
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| + | * "The CI uses mathematical formulae similar to what are used to calculate p-values (each extreme is computed at 1.96 standard deviations from the mean in a normal distribution), | ||
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| + | ===== Cohort studies ===== | ||
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| + | * prospective is better. Framingham and STEP-BD are good prospective cohorts. | ||
| + | * STEP-BD cost 20 million dollars | ||
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| + | ==== Retrospective cohort studies ==== | ||
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| + | * cheap and can be very useful, but has limitations. | ||
| - | interval has to be viewed not in terms of each conclusion but as a process. In the long run, the statistician who always computes 95 percent confdence intervals will fnd that the true value of the parameter lies within the computed interval 95 percent of the time. Note that, to Neyman, the probability associated with the confdence interval was not the probability that we are correct. It was the frequency | + | < |
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| - | * "The CI uses mathematical formulae similar to what are used to calculate p-values (each extreme is computed at 1.96 standard deviations from the mean in a normal distribution), | ||
ebm/effect_estimation.1595207042.txt.gz · Last modified: 2020/07/20 01:04 by dhawann