Ch 6, Principle of Biostatistics

Slides:



Advertisements
Similar presentations
TWO STEP EQUATIONS 1. SOLVE FOR X 2. DO THE ADDITION STEP FIRST
Advertisements

You have been given a mission and a code. Use the code to complete the mission and you will save the world from obliteration…
Fundamentals of Probability
Bellwork If you roll a die, what is the probability that you roll a 2 or an odd number? P(2 or odd) 2. Is this an example of mutually exclusive, overlapping,
Advanced Piloting Cruise Plot.
Chapter 1 The Study of Body Function Image PowerPoint
Copyright © 2011, Elsevier Inc. All rights reserved. Chapter 5 Author: Julia Richards and R. Scott Hawley.
1 Copyright © 2010, Elsevier Inc. All rights Reserved Fig 2.1 Chapter 2.
By D. Fisher Geometric Transformations. Reflection, Rotation, or Translation 1.
Business Transaction Management Software for Application Coordination 1 Business Processes and Coordination.
Probability Rules.
Performance of a diagnostic test
Jeopardy Q 1 Q 6 Q 11 Q 16 Q 21 Q 2 Q 7 Q 12 Q 17 Q 22 Q 3 Q 8 Q 13
Jeopardy Q 1 Q 6 Q 11 Q 16 Q 21 Q 2 Q 7 Q 12 Q 17 Q 22 Q 3 Q 8 Q 13
Title Subtitle.
Probability I Introduction to Probability
Determine Eligibility Chapter 4. Determine Eligibility 4-2 Objectives Search for Customer on database Enter application signed date and eligibility determination.
My Alphabet Book abcdefghijklm nopqrstuvwxyz.
Multiplying binomials You will have 20 seconds to answer each of the following multiplication problems. If you get hung up, go to the next problem when.
0 - 0.
ALGEBRAIC EXPRESSIONS
DIVIDING INTEGERS 1. IF THE SIGNS ARE THE SAME THE ANSWER IS POSITIVE 2. IF THE SIGNS ARE DIFFERENT THE ANSWER IS NEGATIVE.
MULTIPLYING MONOMIALS TIMES POLYNOMIALS (DISTRIBUTIVE PROPERTY)
ADDING INTEGERS 1. POS. + POS. = POS. 2. NEG. + NEG. = NEG. 3. POS. + NEG. OR NEG. + POS. SUBTRACT TAKE SIGN OF BIGGER ABSOLUTE VALUE.
SUBTRACTING INTEGERS 1. CHANGE THE SUBTRACTION SIGN TO ADDITION
MULT. INTEGERS 1. IF THE SIGNS ARE THE SAME THE ANSWER IS POSITIVE 2. IF THE SIGNS ARE DIFFERENT THE ANSWER IS NEGATIVE.
FACTORING ax2 + bx + c Think “unfoil” Work down, Show all steps.
Addition Facts
Year 6 mental test 5 second questions
CS CS1512 Foundations of Computing Science 2 Lecture 23 Probability and statistics (4) © J.
Around the World AdditionSubtraction MultiplicationDivision AdditionSubtraction MultiplicationDivision.
ZMQS ZMQS
BT Wholesale October Creating your own telephone network WHOLESALE CALLS LINE ASSOCIATED.
ABC Technology Project
MAT 103 Probability In this chapter, we will study the topic of probability which is used in many different areas including insurance, science, marketing,
Business and Economics 6th Edition
© S Haughton more than 3?
© Charles van Marrewijk, An Introduction to Geographical Economics Brakman, Garretsen, and Van Marrewijk.
VOORBLAD.
1 Breadth First Search s s Undiscovered Discovered Finished Queue: s Top of queue 2 1 Shortest path from s.
Squares and Square Root WALK. Solve each problem REVIEW:
© 2012 National Heart Foundation of Australia. Slide 2.
©Evergreen Public Schools /11/2011 Arithmetic Sequences Explicit Rules Teacher Notes Notes : We will continue work students have done with arithmetic.
Chapter 5 Test Review Sections 5-1 through 5-4.
GG Consulting, LLC I-SUITE. Source: TEA SHARS Frequently asked questions 2.
Addition 1’s to 20.
Warm Up Express the indicated degree of likelihood as a probability value: “There is a 40% chance of rain tomorrow.” A bag contains 6 red marbles, 3 blue.
25 seconds left…...
Test B, 100 Subtraction Facts
Week 1.
We will resume in: 25 Minutes.
©Brooks/Cole, 2001 Chapter 12 Derived Types-- Enumerated, Structure and Union.
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 15 Probability Rules!
A SMALL TRUTH TO MAKE LIFE 100%
1 Unit 1 Kinematics Chapter 1 Day
PSSA Preparation.
TASK: Skill Development A proportional relationship is a set of equivalent ratios. Equivalent ratios have equal values using different numbers. Creating.
How Cells Obtain Energy from Food
Immunobiology: The Immune System in Health & Disease Sixth Edition
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Chapter 14 From Randomness to Probability.
Chapter 30 Induction and Inductance In this chapter we will study the following topics: -Faraday’s law of induction -Lenz’s rule -Electric field induced.
1 General Structural Equation (LISREL) Models Week 3 #2 A.Multiple Group Models with > 2 groups B.Relationship to ANOVA, ANCOVA models C.Introduction to.
6 Probability Chapter6 p Operations on events and probability An event is the basic element to which probability can be applied. Notations Event:
Topic 6 Probability Modified from the notes of Professor A. Kuk P&G pp
STATISTICS 6.0 Conditional Probabilities “Conditional Probabilities”
Biostatistics Class 2 Probability 2/1/2000.
Unit 8 Probability.
Presentation transcript:

Ch 6, Principle of Biostatistics Probability Ch 6, Principle of Biostatistics Pagano & Gauvreau Prepared by Yu-Fen Li

Operations on Events a Venn diagram is a useful device for depicting the relationships among events Ac or , “not A” A ∩ B “both A and B” A ∪ B “A or B”

The additive rule of probability The numerical value of a probability lies between 0 and 1. We have The additive rule of probability

The additive rule of probability For any two events A and B If A and B are disjoint (mutually exclusive) 𝑃(𝐴∪𝐵)=𝑃(𝐴)+𝑃(𝐵)−𝑃(𝐴∩𝐵) 𝑃(𝐴∪𝐵)=𝑃(𝐴)+𝑃(𝐵)

The additive rule of probability The additive rule can be extended to the cases of three or more mutually exclusive events If A1, A2, · · · , and An are n mutually exclusive events, then A5 A7 A3 A6 A2 A4 A8

Joint and Marginal Probabilities Joint probability is the probability that two events will occur simultaneously. Marginal probability is the probability of the occurrence of the single event. A1 A2 B1 a b a+b B2 c d c+d a+c b+d n P(A2B1) P(A1)

Conditional Probability We are often interested in determining the probability that an event B will occur given that we already know the outcome of another event A The multiplicative rule of probability states that the probability that two events A and B will both occur is equal to the probability of A multiplied by the probability of B given that A has already occurred

Independence Two events are said to be independent, if the outcome of one event has no effect on the occurrence of the other. If A and B are independent events,

Multiplicative rule of probability For any events A and B If A and B are independent

‘independent’ vs ‘mutually exclusive’ the terms ‘independent’ and ‘mutually exclusive’ do not mean the same thing. If A and B are independent and event A occurs, the outcome of B is not affected, i.e. P(B|A) = P(B). If A and B are mutually exclusive and event A occurs, then event B cannot occur, i.e. P(B|A) = 0.

Bayes’ Theorem If A1, A2, · · · , and An are n mutually exclusive and exhaustive events Bayes’ theorem states mutually exclusive exhaustive

The Law of Total Probability P(A)=P(A1∪A2∪A3∪A4) =P(A1) + P(A2 ) + P(A3 ) + P(A4) = 1 P(B)=P(B∩A1) + P(B∩A2) + P(B∩A3) + P(B∩A4) =P(A1)P(B|A1) + P(A2)P(B|A2) + P(A3)P(B∩A3) + P(A4)P(B|A4) B ∩ ∩B

Examples For example, the 163157 persons in the National Health Interview Survey of 1980-1981 (S) were subdivided into three mutually exclusive categories:

Examples of marginal probabilities Find the marginal probabilities

Example of the additive rule of probability If S is the event that an individual in the study is currently employed or currently unemployed or not in the labor force, i.e. S = E1 ∪ E2 ∪ E3. the additive rule of probability

Example of the law of total probability H may be expressed as the union of three exclusive events: the law of total probability

Examples of conditional probabilities Looking at each employment status subgroup separately

Example of Bayes’ theorem What is the probability of being current employed given on having hearing impairment?

Diagnostic Tests Bayes’ theorem is often employed in issues of diagnostic testing or screening Sensitivity and Specificity

Positive and Negative Predictive Values (PPV and NPV) Sensitivity (SE) 1-Specificity (1-SP)

A 2 x 2 table The diagnostic test is compared against a reference ('gold') standard, and results are tabulated in a 2 x 2 table Sensitivity = a / a+c Specificity = d / b+d Positive Predictive Value (PPV) = a / a+b ?? Negative Predictive Value (NPV) = d / c +d ?? Prevalence = a+c / (a+b+c+d) ?? Test Gold Standard Results D+ D- T+ a (TP) b (FP) T- c (FN) d (TN)

Relationship of Disease Prevalence to Predictive Values The probability that he or she has the disease depends on the prevalence of the disease in the population tested and the validity of the test (sensitivity and specificity)

Example D+ D- Total T+ 20 180 200 T- 10 1820 1830 30 2000 2030 Frequency Table of response by age response age 35 55 75 Total 0 3 7 23 33 1 31 3 6 40 Total 34 10 29 73

Example D+ D- Total T+ 67 9 76 T- 33 91 124 100 200 Frequency Table of response by age response age 35 55 75 Total 0 3 7 23 33 1 31 3 6 40 Total 34 10 29 73