-
Question 1
Incorrect
-
What is the term used to describe the point at which a researcher chooses to reject a null hypothesis?
Your Answer: Theta level
Correct Answer: Alpha level
Explanation:If the p-value is lower than the predetermined alpha level of 0.05, the outcome is considered significant.
Understanding Hypothesis Testing in Statistics
In statistics, it is not feasible to investigate hypotheses on entire populations. Therefore, researchers take samples and use them to make estimates about the population they are drawn from. However, this leads to uncertainty as there is no guarantee that the sample taken will be truly representative of the population, resulting in potential errors. Statistical hypothesis testing is the process used to determine if claims from samples to populations can be made and with what certainty.
The null hypothesis (Ho) is the claim that there is no real difference between two groups, while the alternative hypothesis (H1 of Ha) suggests that any difference is due to some non-random chance. The alternative hypothesis can be one-tailed of two-tailed, depending on whether it seeks to establish a difference of a change in one direction.
Two types of errors may occur when testing the null hypothesis: Type I and Type II errors. Type I error occurs when the null hypothesis is rejected when it is true, while Type II error occurs when the null hypothesis is accepted when it is false. The power of a study is the probability of correctly rejecting the null hypothesis when it is false, and it can be increased by increasing the sample size.
P-values provide information on statistical significance and help researchers decide if study results have occurred due to chance. The p-value is the probability of obtaining a result that is as large of larger when in reality there is no difference between two groups. The cutoff for the p-value is called the significance level (alpha level), typically set at 0.05. If the p-value is less than the cutoff, the null hypothesis is rejected, and if it is greater or equal to the cut off, the null hypothesis is not rejected. However, the p-value does not indicate clinical significance, which may be too small to be meaningful.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 2
Correct
-
What statement accurately describes percentiles?
Your Answer: Q1 is the 25th percentile
Explanation:Measures of dispersion are used to indicate the variation of spread of a data set, often in conjunction with a measure of central tendency such as the mean of median. The range, which is the difference between the largest and smallest value, is the simplest measure of dispersion. The interquartile range, which is the difference between the 3rd and 1st quartiles, is another useful measure. Quartiles divide a data set into quarters, and the interquartile range can provide additional information about the spread of the data. However, to get a more representative idea of spread, measures such as the variance and standard deviation are needed. The variance gives an indication of how much the items in the data set vary from the mean, while the standard deviation reflects the distribution of individual scores around their mean. The standard deviation is expressed in the same units as the data set and can be used to indicate how confident we are that data points lie within a particular range. The standard error of the mean is an inferential statistic used to estimate the population mean and is a measure of the spread expected for the mean of the observations. Confidence intervals are often presented alongside sample results such as the mean value, indicating a range that is likely to contain the true value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 3
Incorrect
-
What is the intervention (buprenorphine) relative risk reduction for non-prescription opioid use at six months in the group of patients with opioid dependence who received the treatment compared to those who did not receive it?
Your Answer: 3
Correct Answer: 0.45
Explanation:Relative risk reduction (RRR) is calculated as the percentage decrease in the occurrence of events in the experimental group (EER) compared to the control group (CER). It can be expressed as:
RRR = 1 – (EER / CER)
For example, if the EER is 18 and the CER is 33, then the RRR can be calculated as:
RRR = 1 – (18 / 33) = 0.45 of 45%
Alternatively, the RRR can be calculated as the difference between the CER and EER divided by the CER:
RRR = (CER – EER) / CER
Using the same example, the RRR can be calculated as:
RRR = (33 – 18) / 33 = 0.45 of 45%
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 4
Incorrect
-
A study examines the benefits of adding an intensive package of dialectic behavioural therapy (DBT) to standard care following an episode of serious self-harm in adolescents. The following results are obtained:
Percentage of adolescents having a further episode
of serious self harm within 3 months
Standard care 4%
Standard care and intensive DBT 3%
What is the number needed to treat to prevent one adolescent having a further episode of serious self harm within 3 months?Your Answer:
Correct Answer: 100
Explanation:The number needed to treat (NNT) is equal to 100. This means that for every 100 patients treated, one patient will benefit from the treatment. The absolute risk reduction (ARR) is 0.01, which is the difference between the control event rate (CER) of 0.04 and the experimental event rate (EER) of 0.03.
Measures of Effect in Clinical Studies
When conducting clinical studies, we often want to know the effect of treatments of exposures on health outcomes. Measures of effect are used in randomized controlled trials (RCTs) and include the odds ratio (of), risk ratio (RR), risk difference (RD), and number needed to treat (NNT). Dichotomous (binary) outcome data are common in clinical trials, where the outcome for each participant is one of two possibilities, such as dead of alive, of clinical improvement of no improvement.
To understand the difference between of and RR, it’s important to know the difference between risks and odds. Risk is a proportion that describes the probability of a health outcome occurring, while odds is a ratio that compares the probability of an event occurring to the probability of it not occurring. Absolute risk is the basic risk, while risk difference is the difference between the absolute risk of an event in the intervention group and the absolute risk in the control group. Relative risk is the ratio of risk in the intervention group to the risk in the control group.
The number needed to treat (NNT) is the number of patients who need to be treated for one to benefit. Odds are calculated by dividing the number of times an event happens by the number of times it does not happen. The odds ratio is the odds of an outcome given a particular exposure versus the odds of an outcome in the absence of the exposure. It is commonly used in case-control studies and can also be used in cross-sectional and cohort study designs. An odds ratio of 1 indicates no difference in risk between the two groups, while an odds ratio >1 indicates an increased risk and an odds ratio <1 indicates a reduced risk.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 5
Incorrect
-
What is necessary to compute the standard deviation?
Your Answer:
Correct Answer: Mean
Explanation:The standard deviation represents the typical amount that the data points deviate from the mean.
Measures of dispersion are used to indicate the variation of spread of a data set, often in conjunction with a measure of central tendency such as the mean of median. The range, which is the difference between the largest and smallest value, is the simplest measure of dispersion. The interquartile range, which is the difference between the 3rd and 1st quartiles, is another useful measure. Quartiles divide a data set into quarters, and the interquartile range can provide additional information about the spread of the data. However, to get a more representative idea of spread, measures such as the variance and standard deviation are needed. The variance gives an indication of how much the items in the data set vary from the mean, while the standard deviation reflects the distribution of individual scores around their mean. The standard deviation is expressed in the same units as the data set and can be used to indicate how confident we are that data points lie within a particular range. The standard error of the mean is an inferential statistic used to estimate the population mean and is a measure of the spread expected for the mean of the observations. Confidence intervals are often presented alongside sample results such as the mean value, indicating a range that is likely to contain the true value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 6
Incorrect
-
A team of scientists aimed to examine the prognosis of late-onset Alzheimer's disease using the available evidence. They intend to arrange the evidence in a hierarchy based on their study designs.
What study design would be placed at the top of their hierarchy?Your Answer:
Correct Answer: Systematic review of cohort studies
Explanation:When investigating prognosis, the hierarchy of study designs starts with a systematic review of cohort studies, followed by a cohort study, follow-up of untreated patients from randomized controlled trials, case series, and expert opinion. The strength of evidence provided by a study depends on its ability to minimize bias and maximize attribution. The Agency for Healthcare Policy and Research hierarchy of study types is widely accepted as reliable, with systematic reviews and meta-analyses of randomized controlled trials at the top, followed by randomized controlled trials, non-randomized intervention studies, observational studies, and non-experimental studies.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 7
Incorrect
-
What is the average age of the 7 women who participated in the qualitative study on self-harm among females, with ages of 18, 22, 40, 17, 23, 18, and 44?
Your Answer:
Correct Answer: 26
Explanation:Measures of Central Tendency
Measures of central tendency are used in descriptive statistics to summarize the middle of typical value of a data set. There are three common measures of central tendency: the mean, median, and mode.
The median is the middle value in a data set that has been arranged in numerical order. It is not affected by outliers and is used for ordinal data. The mode is the most frequent value in a data set and is used for categorical data. The mean is calculated by adding all the values in a data set and dividing by the number of values. It is sensitive to outliers and is used for interval and ratio data.
The appropriate measure of central tendency depends on the measurement scale of the data. For nominal and categorical data, the mode is used. For ordinal data, the median of mode is used. For interval data with a normal distribution, the mean is preferable, but the median of mode can also be used. For interval data with skewed distribution, the median is used. For ratio data, the mean is preferable, but the median of mode can also be used for skewed data.
In addition to measures of central tendency, the range is also used to describe the spread of a data set. It is calculated by subtracting the smallest value from the largest value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 8
Incorrect
-
What statement accurately describes the mode?
Your Answer:
Correct Answer: A data set can have more than one mode
Explanation:This set of numbers has no mode as no number occurs more than once: 3, 6, 9, 16, 27, 37, 48.
Measures of Central Tendency
Measures of central tendency are used in descriptive statistics to summarize the middle of typical value of a data set. There are three common measures of central tendency: the mean, median, and mode.
The median is the middle value in a data set that has been arranged in numerical order. It is not affected by outliers and is used for ordinal data. The mode is the most frequent value in a data set and is used for categorical data. The mean is calculated by adding all the values in a data set and dividing by the number of values. It is sensitive to outliers and is used for interval and ratio data.
The appropriate measure of central tendency depends on the measurement scale of the data. For nominal and categorical data, the mode is used. For ordinal data, the median of mode is used. For interval data with a normal distribution, the mean is preferable, but the median of mode can also be used. For interval data with skewed distribution, the median is used. For ratio data, the mean is preferable, but the median of mode can also be used for skewed data.
In addition to measures of central tendency, the range is also used to describe the spread of a data set. It is calculated by subtracting the smallest value from the largest value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 9
Incorrect
-
What is a true statement about correlation?
Your Answer:
Correct Answer: Complete absence of correlation is expressed by a value of 0
Explanation:Stats: Correlation and Regression
Correlation and regression are related but not interchangeable terms. Correlation is used to test for association between variables, while regression is used to predict values of dependent variables from independent variables. Correlation can be linear, non-linear, of non-existent, and can be strong, moderate, of weak. The strength of a linear relationship is measured by the correlation coefficient, which can be positive of negative and ranges from very weak to very strong. However, the interpretation of a correlation coefficient depends on the context and purposes. Correlation can suggest association but cannot prove of disprove causation. Linear regression, on the other hand, can be used to predict how much one variable changes when a second variable is changed. Scatter graphs are used in correlation and regression analyses to visually determine if variables are associated and to detect outliers. When constructing a scatter graph, the dependent variable is typically placed on the vertical axis and the independent variable on the horizontal axis.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 10
Incorrect
-
What is the appropriate interpretation of a standardised mortality ratio of 120% (95% CI 90-130) for a cohort of patients diagnosed with antisocial personality disorder?
Your Answer:
Correct Answer: The result is not statistically significant
Explanation:The statistical significance of the result is questionable as the confidence interval encompasses values below 100. This implies that there is a possibility that the actual value could be lower than 100, which contradicts the observed value of 120 indicating a rise in mortality in this population.
Calculation of Standardised Mortality Ratio (SMR)
To calculate the SMR, age and sex-specific death rates in the standard population are obtained. An estimate for the number of people in each category for both the standard and study populations is needed. The number of expected deaths in each age-sex group of the study population is calculated by multiplying the age-sex-specific rates in the standard population by the number of people in each category of the study population. The sum of all age- and sex-specific expected deaths gives the expected number of deaths for the whole study population. The observed number of deaths is then divided by the expected number of deaths to obtain the SMR.
The SMR can be standardised using the direct of indirect method. The direct method is used when the age-sex-specific rates for the study population and the age-sex-structure of the standard population are known. The indirect method is used when the age-specific rates for the study population are unknown of not available. This method uses the observed number of deaths in the study population and compares it to the number of deaths that would be expected if the age distribution was the same as that of the standard population.
The SMR can be interpreted as follows: an SMR less than 1.0 indicates fewer than expected deaths in the study population, an SMR of 1.0 indicates the number of observed deaths equals the number of expected deaths in the study population, and an SMR greater than 1.0 indicates more than expected deaths in the study population (excess deaths). It is sometimes expressed after multiplying by 100.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 11
Incorrect
-
What is the probability that a person who tests negative on the new Mephedrone screening test does not actually use Mephedrone?
Your Answer:
Correct Answer: 172/177
Explanation:Negative predictive value = 172 / 177
Clinical tests are used to determine the presence of absence of a disease of condition. To interpret test results, it is important to have a working knowledge of statistics used to describe them. Two by two tables are commonly used to calculate test statistics such as sensitivity and specificity. Sensitivity refers to the proportion of people with a condition that the test correctly identifies, while specificity refers to the proportion of people without a condition that the test correctly identifies. Accuracy tells us how closely a test measures to its true value, while predictive values help us understand the likelihood of having a disease based on a positive of negative test result. Likelihood ratios combine sensitivity and specificity into a single figure that can refine our estimation of the probability of a disease being present. Pre and post-test odds and probabilities can also be calculated to better understand the likelihood of having a disease before and after a test is carried out. Fagan’s nomogram is a useful tool for calculating post-test probabilities.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 12
Incorrect
-
Which type of bias is the second phase of the study intended to address if the second phase involved home visits to those people who did not reply to the mailed questionnaire on levels of physical activity in adults aged 50 and above?
Your Answer:
Correct Answer: Participation bias
Explanation:Types of Bias in Statistics
Bias is a systematic error that can lead to incorrect conclusions. Confounding factors are variables that are associated with both the outcome and the exposure but have no causative role. Confounding can be addressed in the design and analysis stage of a study. The main method of controlling confounding in the analysis phase is stratification analysis. The main methods used in the design stage are matching, randomization, and restriction of participants.
There are two main types of bias: selection bias and information bias. Selection bias occurs when the selected sample is not a representative sample of the reference population. Disease spectrum bias, self-selection bias, participation bias, incidence-prevalence bias, exclusion bias, publication of dissemination bias, citation bias, and Berkson’s bias are all subtypes of selection bias. Information bias occurs when gathered information about exposure, outcome, of both is not correct and there was an error in measurement. Detection bias, recall bias, lead time bias, interviewer/observer bias, verification and work-up bias, Hawthorne effect, and ecological fallacy are all subtypes of information bias.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 13
Incorrect
-
In a study, the null hypothesis posits that there is no disparity between the mean values of group A and group B. Upon analysis, the study discovers a difference and presents a p-value of 0.04. Which statement below accurately reflects this scenario?
Your Answer:
Correct Answer: Assuming the null hypothesis is correct, there is a 4% chance that the difference detected between A and B has arisen by chance
Explanation:Understanding Hypothesis Testing in Statistics
In statistics, it is not feasible to investigate hypotheses on entire populations. Therefore, researchers take samples and use them to make estimates about the population they are drawn from. However, this leads to uncertainty as there is no guarantee that the sample taken will be truly representative of the population, resulting in potential errors. Statistical hypothesis testing is the process used to determine if claims from samples to populations can be made and with what certainty.
The null hypothesis (Ho) is the claim that there is no real difference between two groups, while the alternative hypothesis (H1 of Ha) suggests that any difference is due to some non-random chance. The alternative hypothesis can be one-tailed of two-tailed, depending on whether it seeks to establish a difference of a change in one direction.
Two types of errors may occur when testing the null hypothesis: Type I and Type II errors. Type I error occurs when the null hypothesis is rejected when it is true, while Type II error occurs when the null hypothesis is accepted when it is false. The power of a study is the probability of correctly rejecting the null hypothesis when it is false, and it can be increased by increasing the sample size.
P-values provide information on statistical significance and help researchers decide if study results have occurred due to chance. The p-value is the probability of obtaining a result that is as large of larger when in reality there is no difference between two groups. The cutoff for the p-value is called the significance level (alpha level), typically set at 0.05. If the p-value is less than the cutoff, the null hypothesis is rejected, and if it is greater or equal to the cut off, the null hypothesis is not rejected. However, the p-value does not indicate clinical significance, which may be too small to be meaningful.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 14
Incorrect
-
What is the conventional cutoff for a p-value of 0.05 and what does it mean in terms of the likelihood of detecting a difference by chance?
Your Answer:
Correct Answer: 1 in 14 times
Explanation:The probability of detecting a difference by chance is 1 in 20 times when the p-value is 0.05, which is the conventional cutoff. In this case, the answer is 1 in 14 times, which is equivalent to a p-value of 0.07.
Understanding Hypothesis Testing in Statistics
In statistics, it is not feasible to investigate hypotheses on entire populations. Therefore, researchers take samples and use them to make estimates about the population they are drawn from. However, this leads to uncertainty as there is no guarantee that the sample taken will be truly representative of the population, resulting in potential errors. Statistical hypothesis testing is the process used to determine if claims from samples to populations can be made and with what certainty.
The null hypothesis (Ho) is the claim that there is no real difference between two groups, while the alternative hypothesis (H1 of Ha) suggests that any difference is due to some non-random chance. The alternative hypothesis can be one-tailed of two-tailed, depending on whether it seeks to establish a difference of a change in one direction.
Two types of errors may occur when testing the null hypothesis: Type I and Type II errors. Type I error occurs when the null hypothesis is rejected when it is true, while Type II error occurs when the null hypothesis is accepted when it is false. The power of a study is the probability of correctly rejecting the null hypothesis when it is false, and it can be increased by increasing the sample size.
P-values provide information on statistical significance and help researchers decide if study results have occurred due to chance. The p-value is the probability of obtaining a result that is as large of larger when in reality there is no difference between two groups. The cutoff for the p-value is called the significance level (alpha level), typically set at 0.05. If the p-value is less than the cutoff, the null hypothesis is rejected, and if it is greater or equal to the cut off, the null hypothesis is not rejected. However, the p-value does not indicate clinical significance, which may be too small to be meaningful.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 15
Incorrect
-
What statement accurately describes measures of dispersion?
Your Answer:
Correct Answer: The standard error indicates how close the statistical mean is to the population mean
Explanation:Measures of dispersion are used to indicate the variation of spread of a data set, often in conjunction with a measure of central tendency such as the mean of median. The range, which is the difference between the largest and smallest value, is the simplest measure of dispersion. The interquartile range, which is the difference between the 3rd and 1st quartiles, is another useful measure. Quartiles divide a data set into quarters, and the interquartile range can provide additional information about the spread of the data. However, to get a more representative idea of spread, measures such as the variance and standard deviation are needed. The variance gives an indication of how much the items in the data set vary from the mean, while the standard deviation reflects the distribution of individual scores around their mean. The standard deviation is expressed in the same units as the data set and can be used to indicate how confident we are that data points lie within a particular range. The standard error of the mean is an inferential statistic used to estimate the population mean and is a measure of the spread expected for the mean of the observations. Confidence intervals are often presented alongside sample results such as the mean value, indicating a range that is likely to contain the true value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 16
Incorrect
-
Which statement accurately describes research variables?
Your Answer:
Correct Answer: Changes in a dependent variable may result from changes in the independent variable
Explanation:Understanding Stats Variables
Variables are characteristics, numbers, of quantities that can be measured of counted. They are also known as data items. Examples of variables include age, sex, business income and expenses, country of birth, capital expenditure, class grades, eye colour, and vehicle type. The value of a variable may vary between data units in a population. In a typical study, there are three main variables: independent, dependent, and controlled variables.
The independent variable is something that the researcher purposely changes during the investigation. The dependent variable is the one that is observed and changes in response to the independent variable. Controlled variables are those that are not changed during the experiment. Dependent variables are affected by independent variables but not by controlled variables, as these do not vary throughout the study.
For instance, a researcher wants to test the effectiveness of a new weight loss medication. Participants are divided into three groups, with the first group receiving a placebo (0mg dosage), the second group a 10 mg dose, and the third group a 40 mg dose. After six months, the participants’ weights are measured. In this case, the independent variable is the dosage of the medication, as that is what is being manipulated. The dependent variable is the weight, as that is what is being measured.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 17
Incorrect
-
What measure of deprivation was created specifically to assess the workload of General Practice?
Your Answer:
Correct Answer: Jarman Score
Explanation:It is advisable not to focus too much on this unusual question in the college exams. It is important to keep in mind that the Jarman Score is the commonly used score in general practice.
Measuring Deprivation: Common Indices
Deprivation indices are used to measure the proportion of households in a small geographical area that have low living standards of a high need for services, of both. Several measures of deprivation are commonly used, including the Jarman Score, Townsend Index, Carstairs Index, Index of Multiple Deprivation, and Index of Local Conditions. The Townsend and Carstairs indices were developed to measure material deprivation, while the Jarman Underprivileged Area Score was initially designed to measure General Practice workload.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 18
Incorrect
-
The researcher conducted a study to test his hypothesis that a new drug would effectively treat depression. The results of the study indicated that his hypothesis was true, but in reality, it was not. What happened?
Your Answer:
Correct Answer: Type I error
Explanation:Type I errors occur when we reject a null hypothesis that is actually true, leading us to believe that there is a significant difference of effect when there is not.
Understanding Hypothesis Testing in Statistics
In statistics, it is not feasible to investigate hypotheses on entire populations. Therefore, researchers take samples and use them to make estimates about the population they are drawn from. However, this leads to uncertainty as there is no guarantee that the sample taken will be truly representative of the population, resulting in potential errors. Statistical hypothesis testing is the process used to determine if claims from samples to populations can be made and with what certainty.
The null hypothesis (Ho) is the claim that there is no real difference between two groups, while the alternative hypothesis (H1 of Ha) suggests that any difference is due to some non-random chance. The alternative hypothesis can be one-tailed of two-tailed, depending on whether it seeks to establish a difference of a change in one direction.
Two types of errors may occur when testing the null hypothesis: Type I and Type II errors. Type I error occurs when the null hypothesis is rejected when it is true, while Type II error occurs when the null hypothesis is accepted when it is false. The power of a study is the probability of correctly rejecting the null hypothesis when it is false, and it can be increased by increasing the sample size.
P-values provide information on statistical significance and help researchers decide if study results have occurred due to chance. The p-value is the probability of obtaining a result that is as large of larger when in reality there is no difference between two groups. The cutoff for the p-value is called the significance level (alpha level), typically set at 0.05. If the p-value is less than the cutoff, the null hypothesis is rejected, and if it is greater or equal to the cut off, the null hypothesis is not rejected. However, the p-value does not indicate clinical significance, which may be too small to be meaningful.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 19
Incorrect
-
Which of the following is the correct description of construct validity?
Your Answer:
Correct Answer: A test has good construct validity if it has a high correlation with another test that measures the same construct
Explanation:Validity in statistics refers to how accurately something measures what it claims to measure. There are two main types of validity: internal and external. Internal validity refers to the confidence we have in the cause and effect relationship in a study, while external validity refers to the degree to which the conclusions of a study can be applied to other people, places, and times. There are various threats to both internal and external validity, such as sampling, measurement instrument obtrusiveness, and reactive effects of setting. Additionally, there are several subtypes of validity, including face validity, content validity, criterion validity, and construct validity. Each subtype has its own specific focus and methods for testing validity.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 20
Incorrect
-
Which option below represents a variable that belongs to an interval scale?
Your Answer:
Correct Answer: The acidity of a group of patient's urine measured with a urine pH test
Explanation:The categorization of patients on a hospital ward based on their diagnosis = nominal
Scales of Measurement in Statistics
In the 1940s, Stanley Smith Stevens introduced four scales of measurement to categorize data variables. Knowing the scale of measurement for a variable is crucial in selecting the appropriate statistical analysis. The four scales of measurement are ratio, interval, ordinal, and nominal.
Ratio scales are similar to interval scales, but they have true zero points. Examples of ratio scales include weight, time, and length. Interval scales measure the difference between two values, and one unit on the scale represents the same magnitude on the trait of characteristic being measured across the whole range of the scale. The Fahrenheit scale for temperature is an example of an interval scale.
Ordinal scales categorize observed values into set categories that can be ordered, but the intervals between each value are uncertain. Examples of ordinal scales include social class, education level, and income level. Nominal scales categorize observed values into set categories that have no particular order of hierarchy. Examples of nominal scales include genotype, blood type, and political party.
Data can also be categorized as quantitative of qualitative. Quantitative variables take on numeric values and can be further classified into discrete and continuous types. Qualitative variables do not take on numerical values and are usually names. Some qualitative variables have an inherent order in their categories and are described as ordinal. Qualitative variables are also called categorical of nominal variables. When a qualitative variable has only two categories, it is called a binary variable.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 21
Incorrect
-
What is the most appropriate way to describe the method of data collection used for the Likert scale questionnaire created by the psychiatrist and administered to 100 community patients to better understand their religious needs?
Your Answer:
Correct Answer: Ordinal
Explanation:Likert scales are a type of ordinal scale used in surveys to measure attitudes of opinions. Respondents are presented with a series of statements of questions and asked to rate their level of agreement of frequency of occurrence on a scale of options. For instance, a Likert scale question might ask how often someone prays, with response options ranging from never to daily. While the responses are ordered in terms of frequency, the intervals between each option are not necessarily equal of quantifiable. Therefore, Likert scales are considered ordinal rather than interval scales.
Scales of Measurement in Statistics
In the 1940s, Stanley Smith Stevens introduced four scales of measurement to categorize data variables. Knowing the scale of measurement for a variable is crucial in selecting the appropriate statistical analysis. The four scales of measurement are ratio, interval, ordinal, and nominal.
Ratio scales are similar to interval scales, but they have true zero points. Examples of ratio scales include weight, time, and length. Interval scales measure the difference between two values, and one unit on the scale represents the same magnitude on the trait of characteristic being measured across the whole range of the scale. The Fahrenheit scale for temperature is an example of an interval scale.
Ordinal scales categorize observed values into set categories that can be ordered, but the intervals between each value are uncertain. Examples of ordinal scales include social class, education level, and income level. Nominal scales categorize observed values into set categories that have no particular order of hierarchy. Examples of nominal scales include genotype, blood type, and political party.
Data can also be categorized as quantitative of qualitative. Quantitative variables take on numeric values and can be further classified into discrete and continuous types. Qualitative variables do not take on numerical values and are usually names. Some qualitative variables have an inherent order in their categories and are described as ordinal. Qualitative variables are also called categorical of nominal variables. When a qualitative variable has only two categories, it is called a binary variable.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 22
Incorrect
-
What is the proportion of values that fall within a range of 3 standard deviations from the mean in a normal distribution?
Your Answer:
Correct Answer: 99.70%
Explanation:Standard Deviation and Standard Error of the Mean
Standard deviation (SD) and standard error of the mean (SEM) are two important statistical measures used to describe data. SD is a measure of how much the data varies, while SEM is a measure of how precisely we know the true mean of the population. The normal distribution, also known as the Gaussian distribution, is a symmetrical bell-shaped curve that describes the spread of many biological and clinical measurements.
68.3% of the data lies within 1 SD of the mean, 95.4% of the data lies within 2 SD of the mean, and 99.7% of the data lies within 3 SD of the mean. The SD is calculated by taking the square root of the variance and is expressed in the same units as the data set. A low SD indicates that data points tend to be very close to the mean.
On the other hand, SEM is an inferential statistic that quantifies the precision of the mean. It is expressed in the same units as the data and is calculated by dividing the SD of the sample mean by the square root of the sample size. The SEM gets smaller as the sample size increases, and it takes into account both the value of the SD and the sample size.
Both SD and SEM are important measures in statistical analysis, and they are used to calculate confidence intervals and test hypotheses. While SD quantifies scatter, SEM quantifies precision, and both are essential in understanding and interpreting data.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 23
Incorrect
-
What is the term used to describe the likelihood of correctly rejecting the null hypothesis when it is actually false?
Your Answer:
Correct Answer: Power of the test
Explanation:Understanding Hypothesis Testing in Statistics
In statistics, it is not feasible to investigate hypotheses on entire populations. Therefore, researchers take samples and use them to make estimates about the population they are drawn from. However, this leads to uncertainty as there is no guarantee that the sample taken will be truly representative of the population, resulting in potential errors. Statistical hypothesis testing is the process used to determine if claims from samples to populations can be made and with what certainty.
The null hypothesis (Ho) is the claim that there is no real difference between two groups, while the alternative hypothesis (H1 of Ha) suggests that any difference is due to some non-random chance. The alternative hypothesis can be one-tailed of two-tailed, depending on whether it seeks to establish a difference of a change in one direction.
Two types of errors may occur when testing the null hypothesis: Type I and Type II errors. Type I error occurs when the null hypothesis is rejected when it is true, while Type II error occurs when the null hypothesis is accepted when it is false. The power of a study is the probability of correctly rejecting the null hypothesis when it is false, and it can be increased by increasing the sample size.
P-values provide information on statistical significance and help researchers decide if study results have occurred due to chance. The p-value is the probability of obtaining a result that is as large of larger when in reality there is no difference between two groups. The cutoff for the p-value is called the significance level (alpha level), typically set at 0.05. If the p-value is less than the cutoff, the null hypothesis is rejected, and if it is greater or equal to the cut off, the null hypothesis is not rejected. However, the p-value does not indicate clinical significance, which may be too small to be meaningful.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 24
Incorrect
-
Which of the following statements accurately describes the standard error of the mean?
Your Answer:
Correct Answer: Gets smaller as the sample size increases
Explanation:As the sample size (n) increases, the standard error of the mean (SEM) decreases. This is because the SEM is inversely proportional to the square root of the sample size (n). As n gets larger, the denominator of the SEM equation gets larger, causing the overall value of the SEM to decrease. This means that larger sample sizes provide more accurate estimates of the population mean, as the calculated sample mean is expected to be closer to the true population mean.
Measures of dispersion are used to indicate the variation of spread of a data set, often in conjunction with a measure of central tendency such as the mean of median. The range, which is the difference between the largest and smallest value, is the simplest measure of dispersion. The interquartile range, which is the difference between the 3rd and 1st quartiles, is another useful measure. Quartiles divide a data set into quarters, and the interquartile range can provide additional information about the spread of the data. However, to get a more representative idea of spread, measures such as the variance and standard deviation are needed. The variance gives an indication of how much the items in the data set vary from the mean, while the standard deviation reflects the distribution of individual scores around their mean. The standard deviation is expressed in the same units as the data set and can be used to indicate how confident we are that data points lie within a particular range. The standard error of the mean is an inferential statistic used to estimate the population mean and is a measure of the spread expected for the mean of the observations. Confidence intervals are often presented alongside sample results such as the mean value, indicating a range that is likely to contain the true value.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 25
Incorrect
-
In a randomised controlled trial investigating the initial management of sexual dysfunction with two drugs, some patients withdraw from the study due to medication-related adverse effects. What is the appropriate method for analysing the resulting data?
Your Answer:
Correct Answer: Include the patients who drop out in the final data set
Explanation:Intention to Treat Analysis in Randomized Controlled Trials
Intention to treat analysis is a statistical method used in randomized controlled trials to analyze all patients who were randomly assigned to a treatment group, regardless of whether they completed of received the treatment. This approach is used to avoid the potential biases that may arise from patients dropping out of switching between treatment groups. By analyzing all patients according to their original treatment assignment, intention to treat analysis provides a more accurate representation of the true treatment effects. This method is widely used in clinical trials to ensure that the results are reliable and unbiased.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 26
Incorrect
-
Which of the following would make the use of the unpaired t-test inappropriate for comparing the mean ages of two groups of participants?
Your Answer:
Correct Answer: Non-normal distribution of data
Explanation:The t test is limited to parametric data that follows a normal distribution. However, inadequate statistical power due to a small sample size does not necessarily invalidate the t test results. While it is likely that a small sample size may not reveal any significant differences, it is still possible that large differences may be observed regardless of prior power calculations.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 27
Incorrect
-
A team of investigators aims to explore the perspectives of middle-aged physicians regarding individuals with chronic fatigue syndrome. They will conduct interviews with a random selection of physicians until no additional insights are gained of existing ones are substantially altered. What is their objective before concluding further interviews?
Your Answer:
Correct Answer: Data saturation
Explanation:In qualitative research, data saturation refers to the point where additional data collection becomes unnecessary as the responses obtained are repetitive and do not provide any new insights. This is when the researcher has heard the same information repeatedly and there is no need to continue recruiting participants. Understanding data saturation is crucial in qualitative research.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 28
Incorrect
-
A team of scientists aims to perform a systematic review and meta-analysis of the environmental impacts and benefits of using solar energy in residential homes. They want to investigate how their findings would be affected by potential future changes, such as an increase in the cost of solar panels of a shift in government policies promoting renewable energy. What type of analysis should they undertake to address this inquiry?
Your Answer:
Correct Answer: Sensitivity analysis
Explanation:A sensitivity analysis is a tool utilized to evaluate the degree to which the outcomes of a study of systematic review are influenced by modifications in the methodology employed. It is employed to determine the resilience of the findings to uncertain judgments of assumptions regarding the data and techniques employed.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 29
Incorrect
-
In what way can the study on depression be deemed as having limited applicability to the average patient population?
Your Answer:
Correct Answer: External validity
Explanation:When a study has good external validity, its findings can be applied to other populations with confidence.
Validity in statistics refers to how accurately something measures what it claims to measure. There are two main types of validity: internal and external. Internal validity refers to the confidence we have in the cause and effect relationship in a study, while external validity refers to the degree to which the conclusions of a study can be applied to other people, places, and times. There are various threats to both internal and external validity, such as sampling, measurement instrument obtrusiveness, and reactive effects of setting. Additionally, there are several subtypes of validity, including face validity, content validity, criterion validity, and construct validity. Each subtype has its own specific focus and methods for testing validity.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
-
Question 30
Incorrect
-
A study was conducted to investigate the correlation between body mass index (BMI) and mortality in patients with schizophrenia. The study involved a cohort of 1000 patients with schizophrenia who were evaluated by measuring their weight and height, and calculating their BMI. The participants were then monitored for up to 15 years after the study commenced. The BMI levels were classified into three categories (high, average, low). The findings revealed that, after adjusting for age, gender, treatment method, and comorbidities, a high BMI at the beginning of the study was linked to a twofold increase in mortality.
How is this study best described?Your Answer:
Correct Answer:
Explanation:The study is a prospective cohort study that observes the effect of BMI as an exposure on the group over time, without manipulating any risk factors of interventions.
Types of Primary Research Studies and Their Advantages and Disadvantages
Primary research studies can be categorized into six types based on the research question they aim to address. The best type of study for each question type is listed in the table below. There are two main types of study design: experimental and observational. Experimental studies involve an intervention, while observational studies do not. The advantages and disadvantages of each study type are summarized in the table below.
Type of Question Best Type of Study
Therapy Randomized controlled trial (RCT), cohort, case control, case series
Diagnosis Cohort studies with comparison to gold standard test
Prognosis Cohort studies, case control, case series
Etiology/Harm RCT, cohort studies, case control, case series
Prevention RCT, cohort studies, case control, case series
Cost Economic analysisStudy Type Advantages Disadvantages
Randomized Controlled Trial – Unbiased distribution of confounders – Blinding more likely – Randomization facilitates statistical analysis – Expensive – Time-consuming – Volunteer bias – Ethically problematic at times
Cohort Study – Ethically safe – Subjects can be matched – Can establish timing and directionality of events – Eligibility criteria and outcome assessments can be standardized – Administratively easier and cheaper than RCT – Controls may be difficult to identify – Exposure may be linked to a hidden confounder – Blinding is difficult – Randomization not present – For rare disease, large sample sizes of long follow-up necessary
Case-Control Study – Quick and cheap – Only feasible method for very rare disorders of those with long lag between exposure and outcome – Fewer subjects needed than cross-sectional studies – Reliance on recall of records to determine exposure status – Confounders – Selection of control groups is difficult – Potential bias: recall, selection
Cross-Sectional Survey – Cheap and simple – Ethically safe – Establishes association at most, not causality – Recall bias susceptibility – Confounders may be unequally distributed – Neyman bias – Group sizes may be unequal
Ecological Study – Cheap and simple – Ethically safe – Ecological fallacy (when relationships which exist for groups are assumed to also be true for individuals)In conclusion, the choice of study type depends on the research question being addressed. Each study type has its own advantages and disadvantages, and researchers should carefully consider these when designing their studies.
-
This question is part of the following fields:
- Research Methods, Statistics, Critical Review And Evidence-Based Practice
-
00
Correct
00
Incorrect
00
:
00
:
00
Session Time
00
:
00
Average Question Time (
Mins)