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Dr. S. Nishan Silva (MBBS) Stages in the Research Process Define Problem Planning a Research Design Conclusions and Report Planning a Sample Processing and Analysing the Data Gathering the Data Research Process Phase I Preparation Phase Phase II Implementation phase Phase III Outcome Phase 1. Select a problem for research 7. Collect the data 9. Interpret research findings. 2. Literature review 8. Analyse data 10. Report the study 3. Formulate research question 4. Select research approach and design 5. Select data collection method. 6. Specify a population Research Methods - Timeframe Research Project Day 1 Develop Research Proposal and obtain approval Develop and test questions Develop and test tool Obtain participants Administer instrument(s) Ongoing data collection and analysis Final collection of data Research Report Day 344 1. Problem Identification and statement of research problems Sources to identify problems Nursing experience Nursing Literature Personal, of collegues Of hospital records Nursing journals, books Theory Text books 2. Process of Selecting a Research Problem The topic is RESEARCHABLE The question is “THEORY BASED” The research is a feasible project The researcher has the ability to carry out the study 3. Writing a problem statement Convert the topic in to a “STATEMENT” Question, statement or hypothesis A hypothesis is a statement of predicted relationship or difference between two or more variables A good research statement should have, Area of focus Population Research design Setting of the study Different levels of research problems Level 1 One variable One Population Level 2 Two variables Relationship between them Level 3 Experimental type designs, finding causes Manipulation of one variable to find its effect on the other 4. Define Variables What is a variable? A characteristic, property or attribute of the person or thing under investigation. Types of variables Dependant Variable Independent Variable Other variable (outside the research) that can interrupt May be controlled – increase accuracy Discrete variable The variable that is manipulated Extraneous variable It is the researched, observed variable It changes according to the manipulating variable A variable that it finite ; a whole number – ex- days, patients Continuous variable That is infinite Spans a range Defining variables Conceptual definition Defining as it is understood Ex- Social class Operational definition Working definition Definition to be used in the research Ex – Father’s usual occupation as stated by the Mother 5. Literature review Definition It is a critical summery of available theoretical and research literature on the selected research topic. Finding Literature Library catalogues – manual and electronic Indexes and abstracts – Ex – MEDLINE, CINAHL, PubMED e-Medicine Guidelines in doing the Review 1. Search for existing literature in the library and on the web; 2. Prepare a working bibliography. Record all vital details concerning the books or research you are including in your bibliography • Write in index cards; group together references from a. books b. journals and periodicals c. unpublished material 3. Examine each material, then decide which ones will actually be included in your review 6. Population and sample Population – define as much as possible Time bound? Geographically bound? Process of selecting a sample – sampling Bias? Therefore Probability sampling Non probability sampling 1. 2. 3. 4. 5. Define the Population of Interest Identify a Sampling Frame (if possible) Select a Sampling Method Determine Sample Size Execute the Sampling Plan Population of interest is entirely dependent on Management Problem, Research Problems, and Research Design. Some Bases for Defining Population: Geographic Area Demographics Usage/Lifestyle Awareness Probability Sampling Simple Random Sampling Everyone has a chance of getting included Random numbers table Stratified Random Sampling Population divided in to strata – segments Then do simple random sampling for each strata Systematic Sampling Using every -----th person. Random numbers table Non-probability Sampling Convenience sampling Purposive sampling Judgemental sampling Selects groups according to criteria Quota sampling Also called accidental. As you meet them. Quotas from pre-decided characteristic groups Convenience sampling within a group Cluster sampling Multistage sampling Larger clusters and smaller clusters within Multistage Sampling Stage 1 randomly sample clusters (schools) Stage 2 randomly sample individuals from the schools selected How many completed questionnaires do we need to have a representative sample? Generally the larger the better, but that takes more time and money. Answer depends on: How different or dispersed the population is. Desired level of confidence. Desired degree of accuracy. Other factors Inclusion criteria? Who gets in? How to filter? Exclusion criteria? Who stays out? How to determine? 7. Research Design Quantitative Research Experimental Designs Non-experimental Designs Descriptive Design Exploratory Design Co-relational Design Retrospective Design Quasi-experimental Qualitative Designs Research Experimental Designs Researcher manipulates variable/s The design uses control groups The selection of sample is based on random sampling Non-Experimental Designs Descriptive Design Exploratory Designs To find out relationship between dependant variable and independent variable without any manipulations . (Observe as it is) Co-Relational research Design Description of a data collection on several variables Relationship between two variables in the same sample Retrospective Design Collect data on variables after they have happened (looking back at the past). Cross-Sectional Versus Longitudinal Studies Cross-Sectional Studies A study can be done in which data are gathered just once, perhaps over a period of days or weeks or months, in order to answer a research question. Longitudinal Studies Studying people or phenomena at more than one point in time in order to answer the research question. Because data are gathered at two different points in time, the study is not cross-sectional kind, but is carried longitudinally across a period of time. Quasi-Experimental Research Researcher does manipulate the independent variable But unable to randomly allocate Uses a convenient sampling method to form the sample. Qualitative Research What? Why? How? Data – words / pictures etc The unfolding process determines the next step Researcher is the key instrument of data collection Open ended questionaires / Interviews / Video recordings / Observations Qualitative - Definition … qualitative researchers study things in their natural settings, attempting to make sense of or interpret phenomenon in terms of the meanings people bring to them. (Denzin & Lincoln, 2000, p.3). Qualitative Research Designs Descriptive / Exploratory Design Interpretative Design Ethnography Anthropological Methods – Interviews/ Observations / Records / Life history facts / news reports / Diaries Phenomenology “What it is like to have a certain experience?” Ask peoples real life experiences / use novels/ films Ground Theory Researcher formulates tentative theories – using inductive reasoning Follows up those ideas with further enquiry – deductive reasoning Data Collection methods Types of data to be collected Quantitative Data that is collected as numbers Qualitative As Data data words, pictures, documents, Photos Data Collection Methods and Instruments Bio-Physical measurements Observations Questionnaires Advantages? Disadvantages? Interviews Unstructured – Open ended questions Structured – Close ended questions Interview schedules and interview guides Advantages ? Disadvantages? Issues in research instrument Suitable for use Based on theory frame of the study Accurate Protocol Simple directions for users Should test the theory / not too much of other info. Collect adequate info Valid / Reliable / Un-biased Language / Culture Uncomplicated Easy to administer Not taking too much time / effort Pilot Project Smaller version Test the instrument (questionnaire) Small sample from the same or similar population Sort out problems Understandability Validity Accuracy Reliability and Validity Reliability Basic sources of inaccuracy Deficiency (error) Inconsistency between readings Methods to test reliability Test-retest method Equivalent Test Same test twice with a rest in between Two tests given to two samples with different behaviors Split half method Separate scores for even numbered and odd numbered items analyzed. Reliability and Validity Validity Types of Validity Predictive validity Content validity Ability to differentiate people based on a criterian Construct validity Adequacy of coverage Concurrent validity Ability of the instrument to predict future behavior Whether the theory is measured or something else is? Face validity Whether it appears to be valid Data Analysis How to process the collection (?papers) Master data sheets Coding Master tables Statistics Flowcharting the Research Process (2) Survey (Interview, Questionnaire) Experiment (Laboratory, Field) Secondary Data Study Observation Collection of Data (Fieldwork) Editing and Coding Data Sample Design Probability Sampling Non-Probability Sampling Data Processing and Analysis Interpretation of Findings Report Homework Read Research Statistics Chapter The MOST IMPORTANT TIME for the statistics to be involved with a research study is in the very BEGINNING STATISTICS CAN HELP OBTAIN THE MAXIMUM AMOUNT INFORMATON FROM AVAILABLE RESOURCES HOW??? HELP WITH THE DESIGN OF THE EXPERIMENT DETERMINE SAMPLE SIZE NEEDED DEVELOP PROCESS OF COLLECTING DATA DISCUSS VARIABLES TO BE MEASURED AND HOW THEY RELATE TO THE OBJECTIVES OF THE STUDY PROVIDE METHODS OF ANALYZING THE DATA HELP TRANSLATE STATISTICAL CONCLUSIONS INTO SUBJECT MATTER CONCLUSIONS Why Use Statistics? Descriptive Statistics • • identify patterns leads to hypothesis generating Inferential Statistics • • distinguish true differences from random variation allows hypothesis testing Describing the Data with Numbers Measures of Central Tendency • • • MEAN -- average MEDIAN -- middle value MODE -- most frequently observed value(s) Describing the Data with Numbers Measures of Central Tendency • • • MEAN -- average MEDIAN -- middle value MODE -- most frequently observed value(s) Histogram-Frequency Distribution Charts Number of Plants in each Class 35 30 25 20 Number of plants in each class 15 10 5 0 0.0-0.9 1.0-1.9 2.0-2.9 3.0-3.9 4.0-4.9 5.0-5.9 6.0-6.9 This is called a “normal” curve or a bell curve This is an “idealized” curve and is theoretical based on an infinite number derived from a sample The Normal Curve and Standard A normal curve: Deviation Each vertical line is a unit of standard deviation 68% of values fall within +1 or -1 of the mean 95% of values fall within +2 & -2 units Nearly all members (>99%) fall within 3 std dev units Terms confidence interval: The range of values we can be reasonably certain includes the true value. 95% Confidence Intervals Khaja (n=40) Anderson (n=50) Kennedy (n=250) -.40 -.35 -.30 -.25 -.20 -.15 -.10 -.05 .00 .05 .10 .15 .20