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{{WBRQuestion
{{WBRQuestion
|QuestionAuthor=[[User:Gonzalo Romero|Gonzalo A. Romero, M.D.]] [mailto:gromero@wikidoc.org]
|QuestionAuthor=[[User:Serge korjian|Serge Korjian, M.D.]], [[User:Gonzalo Romero|Gonzalo A. Romero, M.D.]] [mailto:gromero@wikidoc.org] (Reviewed by Serge Korjian and  {{YD}})
|ExamType=USMLE Step 1
|ExamType=USMLE Step 1
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|MainCategory=Biostatistics/ Epidemiology
|MainCategory=Biostatistics/Epidemiology
|SubCategory=General Principles
|SubCategory=General Principles
|Prompt=A research group is trying to measure the difference of green coffee extract in two different groups. They design a double blinded study recruiting 150 subjects. Subjects are randomized in a blind fashion into 2 groups. One of the groups is given the active treatment and the other group is given placebo. At the end of the 3 month period, the research group wants to compare the body weight change (delta weight) after given the treatments. They want to compare the mean of the two different groups to determine if a statistical significance was achieved. Which of the following tests should the researchers use in order to compare the 2 groups?
|Prompt=A research group is studying the effects of a short course of concentrated coffee bean extract on weight loss among healthy volunteers. The group designs a randomized double-blinded controlled trial and recruits 154 subjects. Subjects are then randomized into 2 groups, one receiving 3 daily doses of coffee bean extract and the other receiving 3 daily doses of placebo. At the end of the two-month period, the biostatistician wants to compare the mean change in body weight from baseline among the 2 groups. Which of the following tests should the biostatistician use in order to obtain a valid comparison?
|Explanation=The research group is trying to compare the mean value of the weight change between two groups, therefore it the test recommended is t-test. This statistical test allows to compare the means of two groups. Nemonic: Tea for two
|Explanation=The student's t-test is used to evaluate a significant difference between 2 means of continuous variables. In this study, the researchers are looking to compare the mean Δbody-weight between the 2 groups making the t-test the most appropriate choice. The t-test operates under the assumption that the population has a normal distribution. The t-test can be either independent (unpaired), used when two independent sets of similarly distributed samples one from each of the two groups being compared, or paired used in cases where the study population consists of matched pairs.
<br>
|AnswerA=χ<sup>2</sup> (Chi-square) test
<font color="MediumBlue"><font size="4">'''Educational Objective:''' </font></font> T- test is used to check if a difference exists between the means of 2 groups.
|AnswerAExp=[[Chi-square test|Chi-square]] is a test which allows to determine a difference between 2 or more proportions or percentages of categorical outcomes.
|AnswerA=Chi-square
|AnswerAExp=<font color="red">'''Incorrect.'''</font> [[Chi-square test|Chi-square]] is a test which allows to determine a difference between 2 or more proportions or percentages of categorical outcomes.  
|AnswerB=ANOVA
|AnswerB=ANOVA
|AnswerBExp=<font color="red">'''Incorrect.'''</font> [[ANOVA]] or analysis of variance allows to determine if a difference exists between the means of 3 or more groups. ANOVA (Analysis of Variance of 3 or more groups).
|AnswerBExp=[[ANOVA]] or analysis of variance allows to determine if a significant difference exists between the means of 3 or more groups. It is used in the same context as the t-test but when comparing more than 2 groups.
|AnswerC=T-test
|AnswerC=t-test
|AnswerCExp=<font color="Green">'''Correct.'''</font> [[T-test]] allows to check for difference between the means of 2 groups.
|AnswerCExp=The [[t-test]] allows the comparison of 2 means for statistical significance. It can only be used with 2 means, whereas ANOVA evaluates 3 or more mean values.
|AnswerD=Pearson correlation
|AnswerD=Pearson's correlation coefficient
|AnswerDExp=<font color="red">'''Incorrect.'''</font> [[Pearson product-moment correlation coefficient|Pearson correlation]] is a coefficient which allows to determine relationship, not to determine if statistical significance is achieved. It does not allow to determine causality. The relationship could be represented graphically; the more solid the line represented, the stronger the correlation. This correlation could vary from +1 to -1; varying from a directional relationship or inverse relationship respectively. The closer the absolute value to 1, the stronger the correlation being graphically represented as a line.
|AnswerDExp=The [[Pearson product-moment correlation coefficient|Pearson correlation coefficient]] is a measure that demonstrates the correlation between 2 variables. It is not used to determine if statistical significance is achieved and cannot be used to compare means. This correlation varies from +1 to -1, with negative values demonstrating an inverse relationship. The closer the absolute value is to 1, the stronger the correlation, whether positive or negative.
|AnswerE=Power measure
|AnswerE=Median
|AnswerEExp=<font color="red">'''Incorrect.'''</font> Power measure
|AnswerEExp=The median is the numerical value separating the higher half of a data sample from the lower half. It may be used to determine a skew in the distribution of the study population when compared to the population mean.
|EducationalObjectives=The t-test is used to detect a statistically significant difference between the means of 2 groups.
|References=Gerstman BB. Basic Biostatistics, Statistics for Public Health Practice/ Formula and Tables. Jones & Bartlett Learning; 2007.
|RightAnswer=C
|RightAnswer=C
|WBRKeyword=t-test, T-test, Mean, Categorical, Continuous, ANOVA, Chi-square, Median, Pearson's correlation coefficient, Correlation coefficient, Clinical trial
|Approved=Yes
|Approved=Yes
}}
}}

Latest revision as of 00:18, 28 October 2020

 
Author [[PageAuthor::Serge Korjian, M.D., Gonzalo A. Romero, M.D. [1] (Reviewed by Serge Korjian and Yazan Daaboul, M.D.)]]
Exam Type ExamType::USMLE Step 1
Main Category MainCategory::Biostatistics/Epidemiology
Sub Category SubCategory::General Principles
Prompt [[Prompt::A research group is studying the effects of a short course of concentrated coffee bean extract on weight loss among healthy volunteers. The group designs a randomized double-blinded controlled trial and recruits 154 subjects. Subjects are then randomized into 2 groups, one receiving 3 daily doses of coffee bean extract and the other receiving 3 daily doses of placebo. At the end of the two-month period, the biostatistician wants to compare the mean change in body weight from baseline among the 2 groups. Which of the following tests should the biostatistician use in order to obtain a valid comparison?]]
Answer A [[AnswerA::χ2 (Chi-square) test]]
Answer A Explanation [[AnswerAExp::Chi-square is a test which allows to determine a difference between 2 or more proportions or percentages of categorical outcomes.]]
Answer B AnswerB::ANOVA
Answer B Explanation [[AnswerBExp::ANOVA or analysis of variance allows to determine if a significant difference exists between the means of 3 or more groups. It is used in the same context as the t-test but when comparing more than 2 groups.]]
Answer C AnswerC::t-test
Answer C Explanation [[AnswerCExp::The t-test allows the comparison of 2 means for statistical significance. It can only be used with 2 means, whereas ANOVA evaluates 3 or more mean values.]]
Answer D AnswerD::Pearson's correlation coefficient
Answer D Explanation [[AnswerDExp::The Pearson correlation coefficient is a measure that demonstrates the correlation between 2 variables. It is not used to determine if statistical significance is achieved and cannot be used to compare means. This correlation varies from +1 to -1, with negative values demonstrating an inverse relationship. The closer the absolute value is to 1, the stronger the correlation, whether positive or negative.]]
Answer E AnswerE::Median
Answer E Explanation AnswerEExp::The median is the numerical value separating the higher half of a data sample from the lower half. It may be used to determine a skew in the distribution of the study population when compared to the population mean.
Right Answer RightAnswer::C
Explanation [[Explanation::The student's t-test is used to evaluate a significant difference between 2 means of continuous variables. In this study, the researchers are looking to compare the mean Δbody-weight between the 2 groups making the t-test the most appropriate choice. The t-test operates under the assumption that the population has a normal distribution. The t-test can be either independent (unpaired), used when two independent sets of similarly distributed samples one from each of the two groups being compared, or paired used in cases where the study population consists of matched pairs.

Educational Objective: The t-test is used to detect a statistically significant difference between the means of 2 groups.
References: Gerstman BB. Basic Biostatistics, Statistics for Public Health Practice/ Formula and Tables. Jones & Bartlett Learning; 2007.]]

Approved Approved::Yes
Keyword WBRKeyword::t-test, WBRKeyword::T-test, WBRKeyword::Mean, WBRKeyword::Categorical, WBRKeyword::Continuous, WBRKeyword::ANOVA, WBRKeyword::Chi-square, WBRKeyword::Median, WBRKeyword::Pearson's correlation coefficient, WBRKeyword::Correlation coefficient, WBRKeyword::Clinical trial
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