SlideShare une entreprise Scribd logo
1  sur  31
Information Cycle
Data Handling in Information Cycle:
Collection and Collation
University of Oslo
Department of Informatics
Oslo - 2007
Facilitator: Gertrudes Macueve
11th April 2007
Learning objectives (1)
• Define what is data and what is
information
• Identify the different stages of the
information cycle
• Explain how to handle data
• Recognize the difference between
collecting data and gathering data
• Identify data collection tools
Learning objectives (2)
• Explain the need for flexibility and
standardization in data collection
• Explain the rationale for use of an
essential dataset
• Explain the correlation between data
elements and indicators
• Define what is data collation
• Indicate common data collation methods
and problems
Data and information
• Data
– observations and measurements about the world,
e.g.
– Representation of observations or concepts suitable
for communication, interpretation, and processing by
humans or machines.
– May or may be not useful to a particular task.
• Information
– facts extracted from a set of data (interpreted data),
Meaningful and useful
– Data brought together in aggregate to demonstrate
facts;
– It is useful to a particular task.
Information CycleInformation Cycle
What do we
collect?
What do we do with
it?
How do we present
it?
How do we use
it?
Quality
information
Information Cycle
Data converted to
information
What do we do withWhat do we do with
it?it?
How do we presentHow do we present
it?it?
How do we use it?How do we use it?
data sources &
tools
Process &
Analysis
Reports & graphs
Interpretation of
information
Good quality
data
What do we collect?What do we collect?
Decision-making
for effective
management
feedbackfeedback
Stages
Tools
Outputs
Quality atQuality at
every stageevery stage
EDSEDS
Data Handling in the Information
Cycle:
1. Data collection
The starting point…
Feeding the information cycle
Collection
Input
Raw data
Presenting
Interpreting
USEANALYSIS
Processing
Output
INFORMATION
Data collection
• Two ways to obtain data
1. Collect data: Physical counting of elements
2. Gather data: if data have already been
collected; Requirements:
• The definitions of the data are the same as
ours
• The format in which the data are collected, is
the same
• Data are collected reasonably accurately
• We are able to negotiate access to the data
Data collection/gathering
guiding principles
• WHO health care workers at all levels
• WHAT Essential Data Set
• WHEN daily – collated weekly & processed monthly
• WHERE work sites, facilities, districts (info filter)
• HOW data sources (tally sheets, registers etc)
• WHY To monitor progress towards goals & targets
To Plan new policies and changes
To evaluate current services
To assist health management processes
What data elements should be
collected?
• Can provide useful information (affecting the
management decisions)
• Cannot be obtained elsewhere
• Are easy to collect
• Do not require much work or time
• Can be collected relatively accurately
 ESSENTIAL DATA SET based on indicators
reflecting the health status of the community
Essential data set
MUST
KNOW
The % of children
under one year who
are fully immunised
Drop out rate DPT 1-
3; measles coverage The % of children
under two years who
are fully immunised
Other programme
vaccines given
Essential data set at each level
• Standardised
• Usefulness
• Address the needs
of all stakeholders
• User-friendly
• Dynamic
Where do we get data from?
• Routine data collection
– Routine health unit and community data
• Activity data about patients seen and
programmes run, routine services and
epidemiological surveillance; e.g.
• Semi-permanent data about the population
served, the facility itself and staff that run it
– Civil registration
Where do we get data from?
• Non-routine data collection
– Surveys
– Population census (headcounts
proportion/facility catchment’s area)
– Quantitative or qualitative rapid assessment
methods
Example: data collected at PHC facilities
Special
programme
activities
• Mental & reproductive health
• Child health & nutrition
• HIV/AIDS, STI and TB
• Chronic diseases
Routine Service
Activities
• Minor ailments
• Non-priority activities
Epidemiological
surveillance
• Notifiable diseases
• Environmental health
Administrative
Systems
• Infrastructure, equipment
• Human resources
• Drugs, transport, labs, finances, budget, staff
Population • Census: age, sex, place
• Births & deaths registration
Requirement for data collection:
Standardised definitions
• Essential standardised definitions of both
data elements and indicators:
– To ensure comparability between different
facilities, districts and provinces
– To ensure comparability across years
Data collection tools
A. Client Record Cards
B. Tally Sheets
C. Registers
A. Client Record Cards
• Record details of the client’s interaction
with the health service, e.g.:
– Health facility record system (traditional)
Associated with misfiling and loss vs
– Client-held record system (Road to Health
Card, Child Health Booklet, Women’s Health
Book, TB patient treatment card);
Associated with efficiency of the individual
concern, suitable for mobile community
Road to Health card
Family planning consultation card
B. Tally sheets
• Easy way of counting identical events that do not
have to be followed-up (e.g. headcounts, children weighed)
C. Registers
• Record data that need follow-up over long periods
such as ANC, immunisation, FP, TB
Assessment of data collection toolsAssessment of data collection tools
(Using SOURCE criteria)(Using SOURCE criteria)
 conduct an information audit of all tools – type & number
 S simple – ease of use (layout)
 O overlap – duplication (no overlap)
 U useful for – indicators (relevance)
 R relevance
 C clear – ease of use (layout)
 E effective – decisions used for (purpose)
Data collection ToolsData collection Tools
criteria for appropriatenesscriteria for appropriateness
TOOL PURPOSE LAYOUT RELEVANCE OVERLAP
How many?
•client cards
• tally sheets
• registers
• reports
Effective
decision-making
for:
•Public health
• Management
• Supervision/
support
•monitoring
• evaluation
Simple,
Clear,
Easy to
understand
•Priority actions
•No useless data
•Missing actions
evident
Useful for:
• Output/
Outcome/imput/
Process
• coverage/
Quality
• incidence/
prevalence
• no Overlap
with other
forms
• What
• When
• Where
• Why
• How
Data Collation
1. summarising data from the same data
elements but from different sources
2. summarising data from the same
source but over a period of time.
Ways of collating data
Common collation problems
• Incorrect grouping of data
• Data are incorrectly added
• Missing data forms
• Double counting of data
Data collation practical methods
Unities method
Disease Cases Frequency
Cholera III 3
Accidents I 1
Malaria IIII IIII IIII 15
Diarrhea 12IIII IIII II
Data collation practical methods
Rectangles method
Disease Cases Frequency
Cholera 3
Accidents 1
15
12
Malaria
Diarrea
Data collation practical methods
Zeros Method (Tally sheet)
Disease Cases Frequency
Malaria 0000000000000000000000000 15
Diarrea 0000000000000000000000000 12
Cholera 0000000000000000000000000 3
Accidents 0000000000000000000000000 1

Contenu connexe

En vedette

día del idioma conmemoración a Miguel de Cervantes Saavedra
día del idioma conmemoración a Miguel de Cervantes Saavedradía del idioma conmemoración a Miguel de Cervantes Saavedra
día del idioma conmemoración a Miguel de Cervantes SaavedraJennacastillo
 
Ближний Восток в тупике радикализма. предложения
Ближний Восток в тупике радикализма. предложенияБлижний Восток в тупике радикализма. предложения
Ближний Восток в тупике радикализма. предложенияRustem Agziamov, CAPM®, MCTS®
 
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJA
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJAANGGOTA PAGUYUBAN PURNA WIDYA PRAJA
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJAHamzah Laduny
 
M2b crm points
M2b   crm pointsM2b   crm points
M2b crm pointsAmit Jain
 
Tugas MTK3 BAB 4
Tugas MTK3 BAB 4Tugas MTK3 BAB 4
Tugas MTK3 BAB 4cinjy
 
Tugas MTK3 BAB 3
Tugas MTK3 BAB 3Tugas MTK3 BAB 3
Tugas MTK3 BAB 3cinjy
 
Super receptionist cyrome
Super receptionist cyromeSuper receptionist cyrome
Super receptionist cyromeRitty Cherian
 
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review Comments
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review CommentsMichael Cea ISSCR 2015 Stem Cell Research Guideline Review Comments
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review Commentsms emporda
 

En vedette (17)

día del idioma conmemoración a Miguel de Cervantes Saavedra
día del idioma conmemoración a Miguel de Cervantes Saavedradía del idioma conmemoración a Miguel de Cervantes Saavedra
día del idioma conmemoración a Miguel de Cervantes Saavedra
 
ΙΚΑ 41/18-11-16
ΙΚΑ 41/18-11-16ΙΚΑ 41/18-11-16
ΙΚΑ 41/18-11-16
 
Ближний Восток в тупике радикализма. предложения
Ближний Восток в тупике радикализма. предложенияБлижний Восток в тупике радикализма. предложения
Ближний Восток в тупике радикализма. предложения
 
Social shovel
Social shovelSocial shovel
Social shovel
 
MHP_Mix-d_Manifesto
MHP_Mix-d_ManifestoMHP_Mix-d_Manifesto
MHP_Mix-d_Manifesto
 
Staff - Copy
Staff - CopyStaff - Copy
Staff - Copy
 
DIPLOMA
DIPLOMADIPLOMA
DIPLOMA
 
41815/Δ.10.199
41815/Δ.10.19941815/Δ.10.199
41815/Δ.10.199
 
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJA
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJAANGGOTA PAGUYUBAN PURNA WIDYA PRAJA
ANGGOTA PAGUYUBAN PURNA WIDYA PRAJA
 
M2b crm points
M2b   crm pointsM2b   crm points
M2b crm points
 
Sturgis media kit
Sturgis media kitSturgis media kit
Sturgis media kit
 
Tugas MTK3 BAB 4
Tugas MTK3 BAB 4Tugas MTK3 BAB 4
Tugas MTK3 BAB 4
 
CV _ Rakesh Agarwal
CV _ Rakesh AgarwalCV _ Rakesh Agarwal
CV _ Rakesh Agarwal
 
Tugas MTK3 BAB 3
Tugas MTK3 BAB 3Tugas MTK3 BAB 3
Tugas MTK3 BAB 3
 
Body
BodyBody
Body
 
Super receptionist cyrome
Super receptionist cyromeSuper receptionist cyrome
Super receptionist cyrome
 
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review Comments
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review CommentsMichael Cea ISSCR 2015 Stem Cell Research Guideline Review Comments
Michael Cea ISSCR 2015 Stem Cell Research Guideline Review Comments
 

Similaire à Dhis elective topic 3 - info cycle, collection and collation

Introduction to Routine Health Information System Slides
Introduction to Routine Health Information System SlidesIntroduction to Routine Health Information System Slides
Introduction to Routine Health Information System SlidesSaide OER Africa
 
Big Data Mining Methods in Medical Applications [Autosaved].pptx
Big Data Mining Methods in Medical Applications [Autosaved].pptxBig Data Mining Methods in Medical Applications [Autosaved].pptx
Big Data Mining Methods in Medical Applications [Autosaved].pptxHemaSenthil5
 
COMMUNITY NEED ASSESSMENT.pptx
COMMUNITY NEED ASSESSMENT.pptxCOMMUNITY NEED ASSESSMENT.pptx
COMMUNITY NEED ASSESSMENT.pptxGhaffarAhmed9
 
Routine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidanceRoutine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidanceMEASURE Evaluation
 
Training on data collection 2
Training  on data collection 2Training  on data collection 2
Training on data collection 2saminu lewi
 
4. HIS - Introductionforjuniorshealthinformatics.ppt
4. HIS - Introductionforjuniorshealthinformatics.ppt4. HIS - Introductionforjuniorshealthinformatics.ppt
4. HIS - Introductionforjuniorshealthinformatics.pptAronMozart1
 
4EXAM. HIS - Introducodajbcvsovbation (3).ppt
4EXAM. HIS - Introducodajbcvsovbation (3).ppt4EXAM. HIS - Introducodajbcvsovbation (3).ppt
4EXAM. HIS - Introducodajbcvsovbation (3).pptAronMozart1
 
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRY
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRYDATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRY
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRYPoonam Narang
 
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdf
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdfLec 1 Theories, Models and Frameworks (Nursing Informatics).pdf
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdfSarahJaneMagante
 
MANAGEMENT INFORMATION SYSTEM
MANAGEMENT INFORMATION SYSTEMMANAGEMENT INFORMATION SYSTEM
MANAGEMENT INFORMATION SYSTEMAvantikaGupta33
 
Data collection and reporting of key performance indicators
Data collection and reporting of key performance indicatorsData collection and reporting of key performance indicators
Data collection and reporting of key performance indicatorskiran
 
Research instruments
Research instruments Research instruments
Research instruments zain khan
 
Data Extraction for Systematic Reviews - Dr Ekpereonne Esu
Data Extraction for Systematic Reviews - Dr Ekpereonne EsuData Extraction for Systematic Reviews - Dr Ekpereonne Esu
Data Extraction for Systematic Reviews - Dr Ekpereonne EsuACSRM
 
Biostatisitics.pptx
Biostatisitics.pptxBiostatisitics.pptx
Biostatisitics.pptxFatima117039
 

Similaire à Dhis elective topic 3 - info cycle, collection and collation (20)

Introduction to Routine Health Information System Slides
Introduction to Routine Health Information System SlidesIntroduction to Routine Health Information System Slides
Introduction to Routine Health Information System Slides
 
Big Data Mining Methods in Medical Applications [Autosaved].pptx
Big Data Mining Methods in Medical Applications [Autosaved].pptxBig Data Mining Methods in Medical Applications [Autosaved].pptx
Big Data Mining Methods in Medical Applications [Autosaved].pptx
 
COMMUNITY NEED ASSESSMENT.pptx
COMMUNITY NEED ASSESSMENT.pptxCOMMUNITY NEED ASSESSMENT.pptx
COMMUNITY NEED ASSESSMENT.pptx
 
management .pptx
management .pptxmanagement .pptx
management .pptx
 
Routine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidanceRoutine data use in evaluation: practical guidance
Routine data use in evaluation: practical guidance
 
Training on data collection 2
Training  on data collection 2Training  on data collection 2
Training on data collection 2
 
Hm 418 harris ch09 ppt
Hm 418 harris ch09 pptHm 418 harris ch09 ppt
Hm 418 harris ch09 ppt
 
4. HIS - Introductionforjuniorshealthinformatics.ppt
4. HIS - Introductionforjuniorshealthinformatics.ppt4. HIS - Introductionforjuniorshealthinformatics.ppt
4. HIS - Introductionforjuniorshealthinformatics.ppt
 
4EXAM. HIS - Introducodajbcvsovbation (3).ppt
4EXAM. HIS - Introducodajbcvsovbation (3).ppt4EXAM. HIS - Introducodajbcvsovbation (3).ppt
4EXAM. HIS - Introducodajbcvsovbation (3).ppt
 
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRY
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRYDATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRY
DATA COLLECTION AND PRESENTATION IN PUBLIC HEALTH DENTISTRY
 
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdf
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdfLec 1 Theories, Models and Frameworks (Nursing Informatics).pdf
Lec 1 Theories, Models and Frameworks (Nursing Informatics).pdf
 
Hmis
HmisHmis
Hmis
 
data for measurement.pptx
data for measurement.pptxdata for measurement.pptx
data for measurement.pptx
 
MANAGEMENT INFORMATION SYSTEM
MANAGEMENT INFORMATION SYSTEMMANAGEMENT INFORMATION SYSTEM
MANAGEMENT INFORMATION SYSTEM
 
Data collection
Data collection Data collection
Data collection
 
Data collection and reporting of key performance indicators
Data collection and reporting of key performance indicatorsData collection and reporting of key performance indicators
Data collection and reporting of key performance indicators
 
Research instruments
Research instruments Research instruments
Research instruments
 
Data Extraction for Systematic Reviews - Dr Ekpereonne Esu
Data Extraction for Systematic Reviews - Dr Ekpereonne EsuData Extraction for Systematic Reviews - Dr Ekpereonne Esu
Data Extraction for Systematic Reviews - Dr Ekpereonne Esu
 
Mis
MisMis
Mis
 
Biostatisitics.pptx
Biostatisitics.pptxBiostatisitics.pptx
Biostatisitics.pptx
 

Dernier

Trump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts SweatshirtTrump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts Sweatshirtrahman018755
 
一比一原版田纳西大学毕业证如何办理
一比一原版田纳西大学毕业证如何办理一比一原版田纳西大学毕业证如何办理
一比一原版田纳西大学毕业证如何办理F
 
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfpdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfJOHNBEBONYAP1
 
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Room
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac RoomVip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Room
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Roommeghakumariji156
 
20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdfMatthew Sinclair
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge GraphsEleniIlkou
 
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsMira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsPriya Reddy
 
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...kumargunjan9515
 
Abu Dhabi Escorts Service 0508644382 Escorts in Abu Dhabi
Abu Dhabi Escorts Service 0508644382 Escorts in Abu DhabiAbu Dhabi Escorts Service 0508644382 Escorts in Abu Dhabi
Abu Dhabi Escorts Service 0508644382 Escorts in Abu DhabiMonica Sydney
 
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样ayvbos
 
一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理F
 
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrStory Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrHenryBriggs2
 
20240510 QFM016 Irresponsible AI Reading List April 2024.pdf
20240510 QFM016 Irresponsible AI Reading List April 2024.pdf20240510 QFM016 Irresponsible AI Reading List April 2024.pdf
20240510 QFM016 Irresponsible AI Reading List April 2024.pdfMatthew Sinclair
 
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...gajnagarg
 
APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC
 
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdfMatthew Sinclair
 
Russian Escort Abu Dhabi 0503464457 Abu DHabi Escorts
Russian Escort Abu Dhabi 0503464457 Abu DHabi EscortsRussian Escort Abu Dhabi 0503464457 Abu DHabi Escorts
Russian Escort Abu Dhabi 0503464457 Abu DHabi EscortsMonica Sydney
 
Best SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasBest SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasDigicorns Technologies
 
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...APNIC
 

Dernier (20)

Trump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts SweatshirtTrump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts Sweatshirt
 
一比一原版田纳西大学毕业证如何办理
一比一原版田纳西大学毕业证如何办理一比一原版田纳西大学毕业证如何办理
一比一原版田纳西大学毕业证如何办理
 
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdfpdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
pdfcoffee.com_business-ethics-q3m7-pdf-free.pdf
 
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Room
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac RoomVip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Room
Vip Firozabad Phone 8250092165 Escorts Service At 6k To 30k Along With Ac Room
 
20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
 
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call GirlsMira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
Mira Road Housewife Call Girls 07506202331, Nalasopara Call Girls
 
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...Local Call Girls in Seoni  9332606886 HOT & SEXY Models beautiful and charmin...
Local Call Girls in Seoni 9332606886 HOT & SEXY Models beautiful and charmin...
 
Abu Dhabi Escorts Service 0508644382 Escorts in Abu Dhabi
Abu Dhabi Escorts Service 0508644382 Escorts in Abu DhabiAbu Dhabi Escorts Service 0508644382 Escorts in Abu Dhabi
Abu Dhabi Escorts Service 0508644382 Escorts in Abu Dhabi
 
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样
一比一原版(Flinders毕业证书)弗林德斯大学毕业证原件一模一样
 
一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理一比一原版奥兹学院毕业证如何办理
一比一原版奥兹学院毕业证如何办理
 
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrStory Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
Story Board.pptxrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrrr
 
20240510 QFM016 Irresponsible AI Reading List April 2024.pdf
20240510 QFM016 Irresponsible AI Reading List April 2024.pdf20240510 QFM016 Irresponsible AI Reading List April 2024.pdf
20240510 QFM016 Irresponsible AI Reading List April 2024.pdf
 
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...
Top profile Call Girls In Dindigul [ 7014168258 ] Call Me For Genuine Models ...
 
APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53
 
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
20240509 QFM015 Engineering Leadership Reading List April 2024.pdf
 
Russian Escort Abu Dhabi 0503464457 Abu DHabi Escorts
Russian Escort Abu Dhabi 0503464457 Abu DHabi EscortsRussian Escort Abu Dhabi 0503464457 Abu DHabi Escorts
Russian Escort Abu Dhabi 0503464457 Abu DHabi Escorts
 
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
call girls in Anand Vihar (delhi) call me [🔝9953056974🔝] escort service 24X7
 
Best SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency DallasBest SEO Services Company in Dallas | Best SEO Agency Dallas
Best SEO Services Company in Dallas | Best SEO Agency Dallas
 
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...
APNIC Policy Roundup, presented by Sunny Chendi at the 5th ICANN APAC-TWNIC E...
 

Dhis elective topic 3 - info cycle, collection and collation

  • 1. Information Cycle Data Handling in Information Cycle: Collection and Collation University of Oslo Department of Informatics Oslo - 2007 Facilitator: Gertrudes Macueve 11th April 2007
  • 2. Learning objectives (1) • Define what is data and what is information • Identify the different stages of the information cycle • Explain how to handle data • Recognize the difference between collecting data and gathering data • Identify data collection tools
  • 3. Learning objectives (2) • Explain the need for flexibility and standardization in data collection • Explain the rationale for use of an essential dataset • Explain the correlation between data elements and indicators • Define what is data collation • Indicate common data collation methods and problems
  • 4. Data and information • Data – observations and measurements about the world, e.g. – Representation of observations or concepts suitable for communication, interpretation, and processing by humans or machines. – May or may be not useful to a particular task. • Information – facts extracted from a set of data (interpreted data), Meaningful and useful – Data brought together in aggregate to demonstrate facts; – It is useful to a particular task.
  • 5. Information CycleInformation Cycle What do we collect? What do we do with it? How do we present it? How do we use it? Quality information
  • 6. Information Cycle Data converted to information What do we do withWhat do we do with it?it? How do we presentHow do we present it?it? How do we use it?How do we use it? data sources & tools Process & Analysis Reports & graphs Interpretation of information Good quality data What do we collect?What do we collect? Decision-making for effective management feedbackfeedback Stages Tools Outputs Quality atQuality at every stageevery stage EDSEDS
  • 7. Data Handling in the Information Cycle: 1. Data collection
  • 8. The starting point… Feeding the information cycle Collection Input Raw data Presenting Interpreting USEANALYSIS Processing Output INFORMATION
  • 9. Data collection • Two ways to obtain data 1. Collect data: Physical counting of elements 2. Gather data: if data have already been collected; Requirements: • The definitions of the data are the same as ours • The format in which the data are collected, is the same • Data are collected reasonably accurately • We are able to negotiate access to the data
  • 10. Data collection/gathering guiding principles • WHO health care workers at all levels • WHAT Essential Data Set • WHEN daily – collated weekly & processed monthly • WHERE work sites, facilities, districts (info filter) • HOW data sources (tally sheets, registers etc) • WHY To monitor progress towards goals & targets To Plan new policies and changes To evaluate current services To assist health management processes
  • 11. What data elements should be collected? • Can provide useful information (affecting the management decisions) • Cannot be obtained elsewhere • Are easy to collect • Do not require much work or time • Can be collected relatively accurately  ESSENTIAL DATA SET based on indicators reflecting the health status of the community
  • 12. Essential data set MUST KNOW The % of children under one year who are fully immunised Drop out rate DPT 1- 3; measles coverage The % of children under two years who are fully immunised Other programme vaccines given
  • 13. Essential data set at each level • Standardised • Usefulness • Address the needs of all stakeholders • User-friendly • Dynamic
  • 14. Where do we get data from? • Routine data collection – Routine health unit and community data • Activity data about patients seen and programmes run, routine services and epidemiological surveillance; e.g. • Semi-permanent data about the population served, the facility itself and staff that run it – Civil registration
  • 15. Where do we get data from? • Non-routine data collection – Surveys – Population census (headcounts proportion/facility catchment’s area) – Quantitative or qualitative rapid assessment methods
  • 16. Example: data collected at PHC facilities Special programme activities • Mental & reproductive health • Child health & nutrition • HIV/AIDS, STI and TB • Chronic diseases Routine Service Activities • Minor ailments • Non-priority activities Epidemiological surveillance • Notifiable diseases • Environmental health Administrative Systems • Infrastructure, equipment • Human resources • Drugs, transport, labs, finances, budget, staff Population • Census: age, sex, place • Births & deaths registration
  • 17. Requirement for data collection: Standardised definitions • Essential standardised definitions of both data elements and indicators: – To ensure comparability between different facilities, districts and provinces – To ensure comparability across years
  • 18. Data collection tools A. Client Record Cards B. Tally Sheets C. Registers
  • 19. A. Client Record Cards • Record details of the client’s interaction with the health service, e.g.: – Health facility record system (traditional) Associated with misfiling and loss vs – Client-held record system (Road to Health Card, Child Health Booklet, Women’s Health Book, TB patient treatment card); Associated with efficiency of the individual concern, suitable for mobile community
  • 22. B. Tally sheets • Easy way of counting identical events that do not have to be followed-up (e.g. headcounts, children weighed)
  • 23. C. Registers • Record data that need follow-up over long periods such as ANC, immunisation, FP, TB
  • 24. Assessment of data collection toolsAssessment of data collection tools (Using SOURCE criteria)(Using SOURCE criteria)  conduct an information audit of all tools – type & number  S simple – ease of use (layout)  O overlap – duplication (no overlap)  U useful for – indicators (relevance)  R relevance  C clear – ease of use (layout)  E effective – decisions used for (purpose)
  • 25. Data collection ToolsData collection Tools criteria for appropriatenesscriteria for appropriateness TOOL PURPOSE LAYOUT RELEVANCE OVERLAP How many? •client cards • tally sheets • registers • reports Effective decision-making for: •Public health • Management • Supervision/ support •monitoring • evaluation Simple, Clear, Easy to understand •Priority actions •No useless data •Missing actions evident Useful for: • Output/ Outcome/imput/ Process • coverage/ Quality • incidence/ prevalence • no Overlap with other forms • What • When • Where • Why • How
  • 27. 1. summarising data from the same data elements but from different sources 2. summarising data from the same source but over a period of time. Ways of collating data
  • 28. Common collation problems • Incorrect grouping of data • Data are incorrectly added • Missing data forms • Double counting of data
  • 29. Data collation practical methods Unities method Disease Cases Frequency Cholera III 3 Accidents I 1 Malaria IIII IIII IIII 15 Diarrhea 12IIII IIII II
  • 30. Data collation practical methods Rectangles method Disease Cases Frequency Cholera 3 Accidents 1 15 12 Malaria Diarrea
  • 31. Data collation practical methods Zeros Method (Tally sheet) Disease Cases Frequency Malaria 0000000000000000000000000 15 Diarrea 0000000000000000000000000 12 Cholera 0000000000000000000000000 3 Accidents 0000000000000000000000000 1

Notes de l'éditeur

  1. The relationship between data and information is better seen by considering a diagram, that is called info cycle. So, information cycle is a diagrammatic way of looking at data and information. The Inf Cycle enables one to see the links between the different stages of information. What are these stages or phases? As you can see through this diagram, phases of information handling include the process of data capturing, through observation of real events (collecting), processing data (process means ensuring data quality by auditing data (3Cs), collating (aggregating) data… so that one can analyse it and turn it into information. The information is then presented, interpreted and used for decision-making.
  2. EDS – Essential Data Set – All data collected must have a purpose…. Mainly used to calculate indicators that measure (performance) how well the various programmes are performing.
  3. Because we are dealing with thousands of data elements, we have to select exactly the data we need, the data which will contribute for decision-making, usually called esd or minimum data set.
  4. As data flows from lower levels to higher levels, less data is required. Data collection normally begins at the community/facility level. It  should then be sent to the district office. From there it may go to a regional office and then to a provincial level before being sent to a national level. The national level will have international reporting requirements. Each level has different requirements. The facility might want to know how many swabs are used on a daily basis. This information would be irrelevant to the national level. However, information such as the infant mortality rate is of international concern and thus important for all levels of the health system. Become familiar with the information flows within and outside your district.
  5. Special registers (birth registers, TB registers, mental health registers)
  6. Special registers (birth registers, TB registers, mental health registers)