Selasa, 06 Mei 2014

[C182.Ebook] Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Beginning with seeing this site, you have actually tried to begin nurturing reviewing a book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky This is specialized site that sell hundreds collections of books Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky from great deals sources. So, you won't be tired any more to pick guide. Besides, if you also have no time to look the book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky, simply sit when you're in workplace and also open the web browser. You can discover this Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky inn this internet site by attaching to the web.

Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky



Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky. One day, you will certainly discover a brand-new journey as well as expertise by spending even more money. Yet when? Do you think that you should obtain those all requirements when having significantly cash? Why do not you aim to obtain something basic at initial? That's something that will lead you to understand more about the world, experience, some areas, past history, enjoyment, as well as much more? It is your very own time to continue checking out practice. Among guides you can delight in now is Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky here.

This Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky is very proper for you as newbie user. The users will always start their reading practice with the favourite theme. They could rule out the author and also publisher that develop guide. This is why, this book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky is really right to read. Nevertheless, the concept that is given in this book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky will show you lots of points. You can begin to love also reviewing until the end of guide Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky.

On top of that, we will certainly discuss you the book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky in soft documents types. It will certainly not disrupt you to make heavy of you bag. You require just computer gadget or gizmo. The link that we offer in this website is readily available to click then download this Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky You understand, having soft data of a book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky to be in your device can make ease the visitors. So through this, be a good reader now!

Just attach to the web to get this book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky This is why we suggest you to use as well as use the industrialized technology. Reading book doesn't suggest to bring the printed Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky Established modern technology has allowed you to check out just the soft data of the book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky It is very same. You may not have to go and get conventionally in looking the book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky You may not have enough time to spend, may you? This is why we give you the very best means to get the book Intuitive Biostatistics: A Nonmathematical Guide To Statistical Thinking, 3rd Edition, By Harvey Motulsky now!

Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky

Thoroughly revised and updated, the third edition of Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking retains and refines the core perspectives of the previous editions: a focus on how to interpret statistical results rather than on how to analyze data, minimal use of equations, and a detailed review of assumptions and common mistakes.

With its engaging and conversational tone, this unique book provides a clear introduction to statistics for undergraduate and graduate students in a wide range of fields and also serves as a statistics refresher for working scientists. It is especially useful for those students in health-science related fields who have no background in biostatistics.

CONTENTS
Part A: Introducing Statistics  1. Statistics and Probability Are Not Intuitive 2. The Complexities of Probability 3. From Sample to Population Part B: Confidence Intervals  4. Confidence Interval of a Proportion  5. Confidence Interval of Survival Data  6. Confidence Interval of Counted Data Part C: Continuous Variables  7. Graphing Continuous Data 8. Types of Variables  9. Quantifying Scatter 10. The Gaussian Distribution 11. The Lognormal Distribution and Geometric Mean12. Confidence Interval of a Mean 13. The Theory of Confidence Intervals14. Error Bars PART D: P Values and Significance 15. Introducing P Values 16. Statistical Significance and Hypothesis Testing17. Relationship Between Confidence Intervals and Statistical Significance 18. Interpreting a Result That Is Statistically Significant 19. Interpreting a Result That Is Not Statistically Significant 20. Statistical Power21. Testing for Equivalence or NoninferiorityPART E: Challenges in Statistics 22. Multiple Comparisons Concepts 23. The Ubiquity of Multiple Comparison24. Normality Tests25. Outliers 26. Choosing a Sample SizePART F: Statistical Tests 27. Comparing Proportions28. Case-Control Studies29. Comparing Survival Curves 30. Comparing Two Means: Unpaired t Test31. Comparing Two Paired Groups32. Correlation PART G: Fitting Models to Data 33. Simple Linear Regression34. Introducing Models 35. Comparing Models 36. Nonlinear Regression37. Multiple Regression 38. Logistic and Proportional Hazards RegressionPART H The Rest of Statistics 39. Analysis of Variance 40. Multiple Comparison Tests After ANOVA 41. Nonparametric Methods42. Sensitivity and Specificity and Receiver-Operator Characteristic Curves 43. Meta-analysisPART I Putting It All Together 44. The Key Concepts of Statistics45. Statistical Traps to Avoid46. Capstone Example 47. Review Problems 48. Answers to Review Problems  

  • Sales Rank: #38890 in Books
  • Brand: Brand: Oxford University Press
  • Published on: 2013-12-13
  • Original language: English
  • Number of items: 1
  • Dimensions: 6.10" h x .90" w x 9.20" l, 1.57 pounds
  • Binding: Paperback
  • 576 pages
Features
  • Used Book in Good Condition

Review
 Unlike other statistics texts I have seen, it includes extensive and carefully crafted discussions of the perils of multiple comparisons, warnings about common and avoidable mistakes in data analysis, a review of the assumptions that apply to various tests, an emphasis on confidence intervals rather than P values, explanations as to why the concept of statistical significance is rarely needed in scientific work, and a clear explanation of nonlinear regression (commonly used in labs; rarely explained in statistics books).     --Bruce Beutler, 2011 Nobel Laureate, Physiology or Medicine

This splendid book meets a major need in public health, medicine, and biomedical research training -- a user-friendly biostatistics text for non-mathematicians that clearly explains how to make sense of statistical results, how to avoid common mistakes in data analysis, and how to avoid being confused by statistical nonsense. You may enjoy statistics for the first time!
    --Gilbert S. Omenn, Professor of Medicine, Genetics, Public Health,        and Computational Medicine & Bioinformatics, University of Michigan

After struggling with books that weren't right for my class, I was delighted to find Intuitive Biostatistics. It is the best starting point for undergraduate students seeking to learn the fundamental principles of statistics because of its unique presentation of the important concepts behind statistics.  It meticulously goes through common mistakes and shows how to correctly choose, perform, and interpret the proper statistical test. It is accessible to new learners without being condescending.

  --Beth Dawson, The University of Texas at Austin

I've read several statistics books, but found that some concepts I was interested in were not mentioned and other concepts were hard to understand. You can ignore the "bio" in Intuitive Biostatistics, as it is the best applied statistics books I have come across, period. Its clear, straightforward explanations have allowed me to better understand research papers and select appropriate statistical tests. Highly recommended.

  --Ariel H. Collis, Economist, Georgetown Economic Services


"Intuitive Biostatistics is a beautiful book that has much to teach experimental biologists of all stripes. Motulsky has written thoughtfully, with compelling logic and wit. He teaches by example what one may expect of statistical methods and, perhaps just as importantly, what one may not expect of them. He is to be congratulated for this work, which will surely be valuable and perhaps even transformative for many of the scientists who read it."--Bruce Beutler, 2011 Nobel Laureate, Physiology or Medicine, and Director, Center for the Genetics of Host Defense, UT Southwestern Medical Center


"Let's face it. Most statistics textbooks intimidate the average student. Motulsky's Intuitive Biostatistics, however, is written in a welcoming tone. It takes the static out of statistics. This textbook covers a wide spectrum of statistical concepts in a way that will benefit readers with varying levels of quantitative backgrounds."--Heather Hoffman, George Washington University


From the Author
What makes the book unique?
Intuitive Biostatistics is both an introduction and review of statistics. Compared to other books, it has:

  • Breadth rather than depth. It is a guidebook, not a cookbook.
  • Words rather than math. It has very few equations.
  • Explanations rather than recipes. This book presents few details of statistical methods and only a few tables required to complete the calculations.
Intuitive Biostatistics includes many topics often omitted from short introductory texts, including:
  • How common sense can mislead. Chapter 1 is a fun chapter that explains how common sense can lead you astray and why we therefore need to understand statistical principles.
  • Multiple comparisons. It is simply impossible to understand statistical results without a deep understanding of how to think about multiple comparisons. This isn't just a practical issue, but almost a philosophical issue in analyzing data. Chapters 22, 23, and 40 are devoted to this topic. I explain several approaches used to deal with multiple comparisons, including the false discovery rate (FDR).
  • Nonlinear regression. In many fields of science, nonlinear regression is used more often than linear regression, but most introductory statistics books ignore nonlinear regression completely. This book gives them equal weight. Chapters 34 and 35 set the stage by explaining the concept of fitting models to data and comparing alternative models. Chapter 36 then discusses nonlinear regression.
  • Bayesian logic. Bayesian thinking is briefly mentioned in Chapter 2 and is then explored in Chapter 18 as a way to interpret a finding that a comparison is statistically significant. This topic returns in Chapter 42, which compares interpreting statistical significance to interpreting the results of clinical laboratory tests. These are only brief introductions to Bayesian thinking. This book is about conventional (Frequentist) statistics, and only briefly introduces Bayesian approaches to data analysis.
  • Lognormal distributions. These are commonly found in scientific data, but not in statistics books. They are explained in Chapter 11 and are touched upon again in several examples that appear in later chapters. Logarithms and antilogarithms are reviewed in Appendix E.
  • Testing for equivalence. Sometimes the goal is not to prove that two groups differ, but rather to prove that they are the same. This requires a different mindset, as explained in Chapter 21.
  • Normality tests. Many statistical tests assume data are sampled from a Gaussian (also called normal) distribution, and normality tests are used to test this assumption. Chapter 24 explains why these tests are less useful than many hope.
  • Outliers. Values far from the other values in a set are called outliers. Chapter 25 explains how to think about outliers.
  • Comparing the fit of alternative models. Statistical hypothesis testing is usually viewed as a way to test a null hypothesis. Chapter 35 explains an alternative way to view statistical hypothesis testing as a way to compare the fits of alternative models.
  • Meta-analysis as a way to reach conclusions by combining data from several studies. This topic is the subject of new chapter (Chapter 43).
  • Detailed review of assumptions. All analyses are based on a set of assumptions, and many chapters discuss these assumptions in depth. 
  • Lengthy discussion of common mistakes in data analysis. Most chapters include lists (with explanations) of common mistakes and misunderstandings.
To make space for these topics, I have left out many topics that are traditionally included in introductory texts:
  • Probability. I assume that you have at least a vague familiarity with the ideas of probability, and this book does not explain these principles in much depth. I have added a new chapter (Chapter 2) to this edition that explains why probability can seem confusing. But you can still understand the rest of the book even if you skip this chapter.
  • Equations needed to compute statistical tests. I assume that you will be either interpreting data analyzed by others or using statistical software to run statistical tests. In only a few places do I give enough details to compute the tests by hand. 
  • Statistical tables. If you aren't going to be analyzing data by hand, there is very little need for statistical tables. I include only a few tables in places where it might be useful to do simple calculations by hand.
  • Statistical distributions. You can choose statistical tests and interpret the results without knowing much about z, t, and F distributions. This book mentions them but goes into very little depth.

From the Inside Flap
Excerpt from "Q and A about confidence intervals of "proportions (chapter 4, page 40). Q. Which is wider, a 95% CI or a 99% CI?
A. To be more certain that an interval contains the true population value, you must generate a wider interval. A 99% CI is wider than a 95% CI. See Figure 4.2.

Q. Is it possible to generate a 100% CI?
A. A 100% CI would have to include every possible value, so it would always extend from 0.0 to 100.0% and not be the least bit useful.

Q. How do CIs change if you increase the sample size?
A. The width of the CI is approximately proportional to the reciprocal of the square root of the sample size. So if you increase the sample size by a factor of four, you can expect to cut the length of the CI in half.  

Q. Can you compute a confidence interval of a proportion if you know the proportion but not the sample size?
A. No. The width of the confidence interval depends on the sample size.

Q. Why isn't the CI symmetrical around the observed proportion?
A. Because a proportion cannot go below 0.0 or above 1.0, the CI will be lopsided when the sample proportion is far from 0.50 or the sample size is small. 

Q. You expect the population proportion to be outside your 95% CI in 5% of samples. Will you know when this happens?
A. No. You don't know the true value of the population proportion (except when doing simulations), so you won't know if it lies within your CI or not.

 Excerpt from "Common mistakes: P values" (chapter 15, page 134)

The P value is not the probability that the result was due to sampling error. The P value is computed assuming the null hypothesis is true. In other words, the P value is computed based on the assumption that the difference was due to randomness in selecting subjects--that is, to sampling error. Therefore, the P value cannot tell you the probability that the result is due to sampling error.

The P value is not the probability that the null hypothesis is true. The P value is computed assuming that the null hypothesis is true, so it cannot be the probability that it is true.

The probability that the results will hold up when the experiment is repeated is not (1.0 minus the P value). If the P value is 0.03, it is tempting to think that this means there is a 97% chance of getting similar results in a repeated experiment. Not so. The P value does not itself quantify reproducibility.

A high P value does not prove that the null hypothesis is true. A high P value means that if the null hypothesis were true, it would not be surprising to observe the treatment effect seen in a particular experiment. But that does not prove that the null hypothesis is true. It just says that the data are consistent with the null hypothesis.

Excerpt from "An analogy to understand power" (chapter 20, page 170) 
  Here is a silly analogy helps illustrate the concept of statistical power (Hartung, 2005). You send your child into the basement to find a tool. He comes back and says, "It isn't there." What do you conclude? Is the tool there or not? There is no way to be sure, so the answer must be a probability. The question you really want to answer is, What is the probability that the tool is in the basement? But that question can't really be answered without knowing the prior probability and using Bayesian thinking (see Chapter 18). Instead, let's ask a different question: If the tool really is in the basement, what is the chance your child would have found it? The answer, of course, is: it depends. To estimate the probability, you'd want to know three things:

  • How long did he spend looking? If he looked for a long time, he is more likely to have found the tool than if he looked for a short time. The time spent looking for the tool is analogous to sample size. An experiment with a large sample size has high power to find an effect, while an experiment with a small sample size has less power.
  • How big is the tool? It is easier to find a snow shovel than the tiny screwdriver used to fix eyeglasses. The size of the tool is analogous to the size of the effect you are looking for. An experiment has more power to find a big effect than a small one.
  • How messy is the basement? If the basement is a real mess, he was less likely to find the tool than if it is carefully organized. The messiness is analogous to experimental scatter. An experiment has more power when the data are very tight (little variation), and less power when the data are very scattered.

Most helpful customer reviews

13 of 13 people found the following review helpful.
A must-have for people who read research articles...
By PerpetualLearner
I used this as a supplementary book to my statistics textbook and it has the most thorough explanations. It helps you really understand the material--not just the "how?", but also the "why?".

It was the second favorite supplementary book I used.

My most useful supplementary books for statistics class (in order of usefulness) were:
1) Statistics in Plain English: clearest explanations
2) Intuitive Biostatistics: most thorough explanations
3) Statistics in a Nutshell: good summaries for reviewing for tests
4) What is p-value anyway?: nice stories but not in-depth enough about many concepts

12 of 12 people found the following review helpful.
An excellent statistics book
By Matt Carter
For over a decade, I have been searching for a clear, lucid guide to statistics that I can use in my research and share with my students. Finally, after combing through dozens of books, I can say I found an excellent book.

Harvey Motulsky seems to have pulled off the trick of writing a book with high explanatory power that will not intimidate the busy undergraduate, graduate student, postdoc, or primary investigator who wants to learn the necessary information but does not want to drown in esoteric details, problem sets, or unhelpful information. As a practicing neuroscientist, I appreciate a guide that is informative but also a pleasure to read (I don't have time to read through the standard statistic texts I have come across).

It is not surprising that Motulsky is also the CEO of GraphPad Software, the company that makes Prism. This software intuitively guides scientists into using the appropriate statistical tests for their data, and it is easily the best and most user-friendly statistical software on the market. I have used Prism for years and was unaware that Motulsky also wrote this book. Now I plan on recommending this book to my students and colleagues, and I purchased a copy for my office and lab.

If you are a bioscientist intimidated by statistics (or feel like you could use a refresher after a long ago forgotten stats class), this book is a gem.

7 of 7 people found the following review helpful.
If you want to understand the practice of Statistics read this book
By Kindle Customer
I was taking an intro graduate level statistics course from a professor that focused only on the math and formulas. I am not a "numbers" person and I was struggling with the material. However, when I read Dr. Motulsky's book I finally could connect what my professor was trying to teach us with the practical implications of what Statistics can (and cannot) tell us about our data. Statistics is a tool and nothing more, it does not prove or disprove anything but it does quantify to a particular degree if your sample can be trusted. Also, even though this book talks about biostats, it is not limiting ... every discussion here can be applied to all subjects using statistics.

See all 33 customer reviews...

Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky PDF
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky EPub
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Doc
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky iBooks
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky rtf
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Mobipocket
Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Kindle

[C182.Ebook] Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Doc

[C182.Ebook] Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Doc

[C182.Ebook] Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Doc
[C182.Ebook] Ebook Intuitive Biostatistics: A Nonmathematical Guide to Statistical Thinking, 3rd edition, by Harvey Motulsky Doc

Tidak ada komentar:

Posting Komentar