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DATA MANAGEMENT Using EpiData and SPSS
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References Public domain (pdf) book on data management:
Bennett, et al. (2001). Data Management for Surveys and Trials. A Practical Primer Using EpiData. The EpiData Documentation Project. : EpiData Association Website: Importing raw data into SPSS:
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Data Management Planning data needs Data collection
Data entry and control Validation and checking Data cleaning and variable transformation Data backup and storage System documentation Other
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Types of Data Base Management Systems (DBMSs)
Spreadsheets (e.g., Excel, SPSS Data Editor) Prone to error, data corruption, & mismanagement Lack data controls, limited programmability Suitable only for small and didactic projects Also good for last step data cleaning Commercial DBMS programs (e.g., Oracle, Access) Limited data control, good programmability Slow & expensive Powerful and widely available Public domain programs (e.g., EpiData, Epi Info) Controlled data entry, good programmability Suitable for research and field use
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We will use two platforms:
EpiData controlled data entry data documentation export (“write”) data SPSS import (“read”) data analysis reporting
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What is EpiData ? EpiData is computer program (small in size 1.2Mb) for simple or programmed data entry and data documentation It is highly reliable It runs on Windows computers Runs on Macs and Linus with emulator software (only) Interface pull down menus work bar
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History of EpiInfo & EpiData
1976–1995: EpiInfo (DOS program) created by CDC (in wake of swine flu epidemic) Small, fast, reliable, 100,000+ users worldwide 1995–2000: DOS dies slow painful death 2000: CDC releases EpiInfo2000 Based on Microsoft Jet (Access) data engine Large, slow, unreliable (resembled EpiInfo in name only) 2001: Loyal EpiInfo user group decides it needs real “EpiInfo for Windows” Creates open source public domain program Calls program “EpiData”
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Goal: Create & Maintain Error-Free Datasets
Two types of data errors Measurement error (i.e., information bias) – discussed last couple of weeks Processing errors = errors that occur during data handling – discussed this week Examples of data processing errors Transpositions (91 instead of 19) Copying errors (O instead of 0) Additional processing errors described on p. 18.2
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Avoiding Data Processing Errors
Manual checks (e.g., handwriting legibility) Range and consistency checks* (e.g., do not allow hysterectomy dates for men) Double entry and validation* Operator 1 enters data Operator 2 enters data in separate file Check files for inconsistencies Screening during analysis (e.g., look for outliers) * covered in lab
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Controlled Data Entry Criteria for accepting & rejecting data
Types of data controls Range checks (e.g., restrict AGE to reasonable range) Value labels (e.g., SEX: 1 = male, 2 = female) Jumps (e.g., if “male,” jump to Q8) Consistency checks (e.g., if “sex = male,” do not allow “hysterectomy = yes”) Must enters etc.
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Data Processing Steps File naming conventions
Variables types and names QES (questionnaire) development Convert .QES file to .REC (record) file Add .CHK file Enter data in REC file Validate data (double entry procedure) Documentation data (code book) Export data to SPSS Import data into SPSS
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Filenaming and File Management
c:\path\filename.ext A web address is a good example of a filename, e.g., Some systems are case sensitive (Unix) Others are not (Windows) Always be aware of Physical location (local, removable, network) Path (folders and subfolders) Filename (proper) Extension Demo Windows Network Explorer: right-click Start Bar > Explore
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File extensions you should know
Software program .qes EpiInfo/EpiData questionnaire .rec EpiInfo/EpiData records (data) .chk EpiInfo/EpiData check (controls & labels) .not EpiData notes (data documentation) .sav SPSS permanent data file .sps SPSS syntax file (program) .txt Generic (flat) text data .htm Web Browser .doc Microsoft Word .xls Microsoft Excel
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Selected EpiData Variable Types
Examples Text _ <A > Numeric # ##.# Date <mm/dd/yyyy> <dd/mm/yyyy> Auto ID <IDNUM> Sondex (sanitized) <S >
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EpiData Variable Names
Variable name based on text that occurs before variable type indicator code EpiData variable naming default vary depending on installation Create variable names exactly as specified To be safe, denote variable names in {curly brackets} For example, to create a two byte numeric variable called age, use the question: What is your {age}? ##
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Demo / Work Along Create QES file [demo.qes]
Convert QES to REC [demo.rec] Create CHK file [demo.chk] Create double entry file [demo2.rec] Enter data Validate data Fname Lname DOB SEX DEATHAGE John Snow 3/15/1813 1 45 George Orwell 6/25/1903 46
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We will stop here and pick up the second part of the lecture next week
“Stay tuned”
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Codebooks Contain info that helps users decipher data file content and structure Includes: Filename(s) File location(s) Variable names Coding schemes Units Anything else you think might be useful
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EpiData codebook generators
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File Structure Codebook
Full codebook contains descriptive statistics (demo)
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Full Codebook Notice descriptive statistics
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Conversion of Data File
Requires common intermediate file format Examples of common intermediate files .TXT = plain text .DBF = dBase program .XLS = Excel Steps Export .REC file .TXT file Import .TXT file into SPSS Save permanent SAV file
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Current Export Formats Supported by EpiData
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Plain (“raw”) TXT data plain ASCII data format no column demarcations
no variable names no labels
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TXT file with codebook tox-samp.txt tox-samp.not
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SPSS Data Export / Import
TXT (raw data) SAV REC SPS (syntax)
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Top of tox-samp.sps Lines beginning with * are comments (ignored by
command interpreter) Next set of commands show file location and structure via SPSS command syntax
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Bottom part of tox-samp.sps file
Labels being imported into SPSS Delete * if you want this command to run
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Opening the SPS (command) file
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Running the SPS file
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Ethics of Data Keeping Confidentiality (sanitized files – free of identifiers) Beneficence Equipoise Informed consent (To what extent?) Oversight (IRB)
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