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Introduction to Biostatistical Analysis Using R Statistics course for first-year PhD students

Introduction to Biostatistical Analysis Using R Statistics course for first-year PhD students. Session 2 Lecture : Introduction to statistical hypothesis testing Null and alternate hypothesis. Types of error. Two-sample hypotheses. Correlation. Analysis of frequency data.

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Introduction to Biostatistical Analysis Using R Statistics course for first-year PhD students

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  1. Introduction to Biostatistical AnalysisUsing RStatistics course for first-year PhD students Session 2 Lecture: Introduction to statistical hypothesis testing Null and alternate hypothesis. Types of error. Two-sample hypotheses. Correlation. Analysis of frequency data. Model simplification Lecturer: Lorenzo Marini, PhD Department of Environmental Agronomy and Crop Production, University of Padova, Viale dell’Università 16, 35020 Legnaro, Padova. E-mail: lorenzo.marini@unipd.it Tel.: +39 0498272807 http://www.biodiversity-lorenzomarini.eu/

  2. Inference A statistical hypothesis test is a method of making statistical decisions from and about experimental data. Null-hypothesis testing just answers the question of "how well do the findings fit the possibility that chance factors alone might be responsible?”. sampling Sample Estimation (Uncertainty!!!) Population testing Statistical Model

  3. Key concepts: Session 1 Statistical testing in five steps: 1. Construct a null hypothesis (H0) 2. Choose a statistical analysis (assumptions!!!) 3. Collect the data (sampling) 4. Calculate P-value and test statistic 5. Reject/accept (H0) if P is small/large Remember the order!!! Concept of replication vs. pseudoreplication 1. Spatial dependence (e.g. spatial autocorrelation) 2. Temporal dependence (e.g. repeated measures) 3. Biological dependence (e.g. siblings) n=6 yi Key quantities residual y mean x

  4. Hypothesis testing • 1 – Hypothesis formulation (Null hypothesis H0 vs. alternative hypothesis H1) • 2 – Compute the probability P that H0 is false; • 3 – If this probability is lower than a defined threshold we can reject the null hypothesis

  5. Hypothesis testing:Types of error Wrong conclusions: Type 1 and 2 errors As power increases, the chances of a Type II error decreases Statistical power depends on: the statistical significance criterion used in the test the size of the difference or the strength of the similarity (effect size) in the population the sensitivity of the data.

  6. Statistical analyses Mean comparisons for 2 populations Test the difference between the means drawn by two samples Correlation In probability theory and statistics, correlation, (often measured as a correlation coefficient), indicates the strength and direction of a linear relationship between two random variables. In general statistical usage, correlation refers to the departure of two variables from independence. Analysis of count or proportion data Whole number or integer numbers (not continuous, different distributional properties) or proportion

  7. Mean comparisons for 2 samples The t test H0: means do not differ H1: means differ Assumptions • Independence of cases (work with true replications!!!) - this is a requirement of the design. • Normality - the distributions in each of the groups are normal • Homogeneity of variances - the variance of data in groups should be the same (use Fisher test or Fligner's test for homogeneity of variances). • These together form the common assumption that the errors are independently, identically, and normally distributed

  8. Normality Before we can carry out a test assuming normality of the data we need to test our distribution (not always before!!!) Graphics analysis In many cases we must check this assumption after having fitted the model (e.g. regression or multifactorial ANOVA) hist(y) lines(density(y)) library(car) qq.plot(y) or qqnorm(y) RESIDUALS MUST BE NORMAL Test for normality Shapiro-Wilk Normality Test shapiro.test() Skew + kurtosis (t test)

  9. Normality:Histogram and Q-Q Plot

  10. Normality:Histogram Normal distribution must be symmetrical around the mean library(animation) ani.options(nmax = 2000 + 15 -2, interval = 0.003) freq = quincunx(balls = 2000, col.balls = rainbow(1)) # frequency table barplot(freq, space = 0)

  11. Normality:Quantile-Quantile Plot Quantiles are points taken at regular intervals from the cumulative distribution function (CDF) of a random variable. The quantiles are the data values marking the boundaries between consecutive subsets

  12. Normality In case of non-normality: 2 possible approaches 1. Change the distribution (use GLMs) Advanced statistics E.g. Poisson (count data) E.g. Binomial (proportion) 2. Data transformation Logaritmic (skewed data) Square-root Arcsin (percentage) Probit (proportion) Box-Cox transformation

  13. Homogeneity of variance: two samples Before we can carry out a test to compare two sample means, we need to test whether the sample variances are significantly different. The test could not be simpler. It is called Fisher’s F To compare two variances, all you do is divide the larger variance by the smaller variance. E.g. Students from TESAF vs. Students from DAAPV F calculated F<-var(A)/var(B) qf(0.975,nA-1,nB-1) F critical if the calculated F is larger than the critical value, we reject the null hypothesis Test can be carried out with the var.test()

  14. Homogeneity of variance : > two samples It is important to know whether variance differs significantly from sample to sample. Constancy of variance (homoscedasticity) is the most important assumption underlying regression and analysis of variance. For multiple samples you can choose between the Bartlett test and the Fligner–Killeen test. Bartlett.test(response,factor) Fligner.test(response,factor) There are differences between the tests: Fisher and Bartlett are very sensitive to outliers, whereas Fligner–Killeen is not

  15. Mean comparison In many cases, a researcher is interesting in gathering information about two populations in order to compare them. As in statistical inference for one population parameter, confidence intervals and tests of significance are useful statistical tools for the difference between two population parameters. Ho: the two means are the same H1: the two means differ • - All Assumptions met?Parametric t.test() • - t test with independent or paired sample -Some assumptions not met?Non-parametric Wilcox.test() - The Wilcoxon signed-rank test is a non-parametric alternative to the Student's t-test for the case of two samples.

  16. Mean comparison: 2 independent samples Two independent samples Students on the left Students on the right The two samples are statistically independent Test can be carried out with the t.test() function

  17. Mean comparison: t test for paired samples Paired sampling in time or in space E.g. Test your performance before or after the course. I measure twice on the same student Time 1 a: 1, 2, 3, 2, 3, 2 ,2 Time 2 b: 1, 2, 1, 1, 5, 1, 2 If we have information about dependence, we have to use this!!! Test can be carried out with the t.test() function We can deal with dependence

  18. Mean comparison: Wilcoxon Rank procedure n1 and n2 are the number of observations R1 is the sum of the ranks in the sample 1 Test can be carried out with the wilcox.test() function -NB Tied ranks correction

  19. Correlation Correlation, (often measured as a correlation coefficient), indicates the strength and direction of a linear relationship between two random variables Bird species richness Plant species richness 1 2 3 4 … 458 x1 x2 x3 x4 … x458 l1 l2 l3 l4 … l458 Sampling unit Three alternative approaches 1. Parametric - cor() 2. Nonparametric - cor() 3. Bootstrapping - replicate(), boot()

  20. Correlation: causal relationship? NONE Which is the response variable in a correlation analysis? Bird species richness Plant species richness 1 2 3 4 … 458 x1 x2 x3 x4 … x458 l1 l2 l3 l4 … l458 Sampling unit

  21. Correlation Plot the two variables in a Cartesian space A correlation of +1 means that there is a perfect positiveLINEARrelationship between variables. A correlation of -1 means that there is a perfect negative LINEAR relationship between variables. A correlation of 0 means there is no LINEAR relationship between the two variables.

  22. Correlation Same correlation coefficient! r= 0.816

  23. Parametric correlation: when is significant? Pearson product-moment correlation coefficient Correlation coefficient: Hypothesis testing using the t distribution: Ho: Is cor = 0 H1: Is cor ≠ 0 t critic value for d.f. = n-2 • Assumptions • Two random variables from a random populations • - cor() detects ONLY linear relationships

  24. Nonparametric correlation Rank procedures Distribution-free but less power Spearman correlation index The Kendall tau rank correlation coefficient P is the number of concordant pairs n is the total number of pairs

  25. Scale-dependent correlation NB Don’t use grouped data to compute overall correlation!!! 7 sites

  26. Issues related to correlation 1. Temporal autocorrelation Values in close years are more similar Dependence of the data 2. Spatial autocorrelation Values in close sites are more similar Dependence of the data Moran's I = 0 Moran's I = 1 Moran's I or Geary’s C Measures of global spatial autocorrelation

  27. Three issues related to correlation 2. Temporal autocorrelation Values in close years are more similar Dependence of the data Working with time series is likely to have temporal pattern in the data E.g. Ring width series Autoregressive models (not covered!)

  28. Three issues related to correlation 3. Spatial autocorrelation Values in close sites are more similar Dependence of the data ISSUE: can we explain the spatial autocorrelation with our models? Moran's I or Geary’s C (univariate response) Measures of global spatial autocorrelation Raw response Residuals after model fitting Hint: If you find spatial autocorrelation in your residuals, you should start worrying

  29. Estimate correlation with bootstrap BOOTSTRAP Bootstrapping is a statistical method for estimating the sampling distribution of an estimator by sampling with replacement from the original sample, most often with the purpose of deriving robust estimates of SEs and CIs of a population parameter Sampling with replacement >a<-c(1:5) > a [1] 1 2 3 4 5 > replicate(10, sample(a, replace=TRUE)) [,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9] [,10] [1,] 2 3 2 1 4 2 1 2 1 3 [2,] 1 5 2 3 5 3 1 1 3 2 [3,] 4 4 4 5 4 4 5 1 1 5 [4,] 4 1 1 3 3 2 3 1 5 2 [5,] 5 5 1 3 5 2 4 1 5 4 1 original sample 10 bootstrapped samples

  30. Estimate correlation with bootstrap Why bootstrap? It doesn’t depend on normal distribution assumption It allows the computation of unbiased SE and CIs Statistic distribution Sample Bootstrap Quantiles N samples with replacement …

  31. Estimate correlation with bootstrap CIs are asymmetric because our distribution reflects the structure of the data and not a defined probability distribution If we repeat the sample n time we will find 0.95*n values included in the CIs

  32. Frequency data • Properties of frequency data: • Count data • Proportion data Count data: where we count how many times something happened, but we have no way of knowing how often it did not happen (e.g. number of students coming at the first lesson) Proportion data: where we know the number doing a particular thing, but also the number not doing that thing (e.g. ‘mortality’ of the students who attend the first lesson, but not the second)

  33. Count data Straightforward linear methods (assuming constant variance, normal errors) are not appropriate for count data for four main reasons: • The linear model might lead to the prediction of negative counts. • The variance of the response variable is likely to increase with the mean. • The errors will not be normally distributed. • Many zeros are difficult to handle in transformations. - Classical test with contingency tables - Generalized linear models with Poisson distribution and log-link function (extremely powerful and flexible!!!)

  34. Count data: contingency tables We can assess the significance of the differences between observed and expected frequencies in a variety of ways: - Pearson’s chi-squared (χ2) - G test - Fisher’s exact test H0: frequencies found in rows are independent from frequencies in columns

  35. Count data: contingency tables - Pearson’s chi-squared (χ2) We need a model to define the expected frequencies (E) (many possibilities) – E.g. perfect independence Critic value X

  36. Count data: contingency tables - G test 1. We need a model to define the expected frequencies (E) (many possibilities) – E.g. perfect independence χ2 distribution - Fisher’s exact test fisher.test() If expected values are less than 4 o 5

  37. Proportion data Proportion data have three important properties that affect the way the data should be analyzed: • the data are strictly bounded (0-1); • the variance is non-constant (it depends on the mean); • errors are non-normal. - Classical test with probit or arcsin transformation - Generalized linear models with binomial distribution and logit-link function (extremely powerful and flexible!!!)

  38. Proportion data: traditional approach Transform the data! Arcsine transformation The arcsine transformation takes care of the error distribution p are percentages (0-100%) Probit transformation The probit transformation takes care of the non-linearity p are proportions (0-1)

  39. Proportion data: modern analysis An important class of problems involves data on proportions such as: • studies on percentage mortality (LD50), • infection rates of diseases, • proportion responding to clinical treatment (bioassay), • sex ratios, or in general • data on proportional response to an experimental treatment 2 approaches 1. It is often needed to transform both response and explanatory variables or 2. To use Generalized Linear Models (GLM) using different error distributions

  40. Statistical modelling MODELGenerally speaking, a statistical model is a function of your explanatory variables to explain the variation in your response variable (y) E.g. Y=a+bx1+cx2+ dx3 Y= response variable (performance of the students) xi= explanatory variables (ability of the teacher, background, age) The object is to determine the values of the parameters (a, b, c and d) in a specific model that lead to the best fit of the model to the data The best model is the model that produces the least unexplained variation (the minimal residual deviance), subject to the constraint that all the parameters in the model should be statistically significant (many ways to reach this!)

  41. Statistical modelling Getting started with complex statistical modeling It is essential, that you can answer the following questions: • Which of your variables is the response variable? • Which are the explanatory variables? • Are the explanatory variables continuous or categorical, or a mixture of both? • What kind of response variable do you have: is it a continuous measurement, a count, a proportion, a time at death, or a category?

  42. Statistical modelling: multicollinearity 1. Multicollinearity Correlation between predictors in a non-orthogonal multiple linear models Confounding effects difficult to separate Variables are not independent This makes an important difference to our statistical modelling because, in orthogonal designs, the variation that is attributed to a given factor is constant, and does not depend upon the order in which factors are removed from the model. In contrast, with non-orthogonal data, we find that the variation attributable to a given factor does depend upon the order in which factors are removed from the model The order of variable selection makes a huge difference (please wait for session 4!!!)

  43. Statistical modelling Getting started with complex statistical modeling The explanatory variables (a) All explanatory variables continuous - Regression (b) All explanatory variables categorical - Analysis of variance (ANOVA) (c) Explanatory variables both continuous and categorical - Analysis of covariance (ANCOVA) The response variable (a) Continuous - Normal regression, ANOVA or ANCOVA (b) Proportion - Logistic regression, GLM logit-linear models (c) Count - GLM Log-linear models (d) Binary - GLM binary logistic analysis (e) Time at death - Survival analysis

  44. Statistical modelling Each analysis estimate a MODEL You want the model to be minimal(parsimony), and adequate(must describe a significant fraction of the variation in the data) It is very important to understand that there is not just one model. • given the data, • and given our choice of model, • what values of the parameters of that model make the observed data most likely? Model building: estimate of parameters (slopes and level of factors) Occam’s Razor

  45. Statistical modelling Occam’s Razor • Models should have as few parameters as possible; • linear models should be preferred to non-linear models; • experiments relying on few assumptions should be preferred to those relying on many; • models should be pared down until they are minimal adequate; • simple explanations should be preferred to complex explanations. MODEL SIMPLIFICATION The process of model simplification is an integral part of hypothesis testing in R. In general, a variable is retained in the model onlyif it causes a significant increase in deviance when it is removed from the current model.

  46. Statistical modelling: model simplification Parsimony requires that the model should be as simple as possible. This means that the model should not contain any redundant parameters or factor levels. Model simplification • remove non-significant interaction terms; • remove non-significant quadratic or other non-linear terms; • remove non-significant explanatory variables; • group together factor levels that do not differ from one another; • in ANCOVA, set non-significant slopes of continuous explanatory variables to zero.

  47. Statistical modelling: model simplification

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