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Development of Health Information Database using Spatial Technologies for Japanese Encephalitis Shipra Verma, Prof. R.D. Gupta Presented By Shipra Verma – PowerPoint PPT presentation

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Title: Shipra Verma


1
Development of Health Information Database
using Spatial Technologies for Japanese
Encephalitis
Shipra Verma, Prof. R.D. Gupta
Presented By Shipra Verma
GIS Cell Motilal Nehru National
Institute Of Technology Allahabad - 211004
GIS Cell, MNNIT-A
2
Introduction
  • Health is essential for every human as their
    basic right and must be at reach to all in an
    affordable manner (Wennberg JE, 2002).
  • Health is geographically differentiated between
    place and health.
  • Public Health is the science and art of
    protecting and improving the health of
    communities through education, promotion of
    healthy lifestyle, and research of disease and
    injury prevention.

GIS Cell, MNNIT-A
3
  • Health data needs to produced, to assess the
    ability of the system for valid, reliable,
    timely, and reasonably accurate health
    information.
  • The planner and decision makers allow the user to
    integrate data collection, processing,
    reporting, and use of the information necessary
    for improving health service, effectiveness and
    efficiency through better management at all
    levels of health services.

4
  • At district level, health information enables
    health planners and managers to take effective
    functioning of health facilities and of the
    health system as a whole.
  • At higher levels, health information is needed
    for strategic policy-making and resource
    allocation.
  • The data requirements for patient care, system
    management and policy-making are different but
    also linked along a continuum ((Ruston. 2003).

Source Bulletin of the World Health
Organization, 2005
5
  • Such an infrastructure serves as the foundation
    for planning, delivering, and evaluating public
    health

At district level Health units
6
  • Vector-borne diseases represents one of the
    greatest global public health challenges of the
    21st century.
  • Changes in public health including lack of
    effective vector control, deterioration of public
    health infrastructure to deal with vector-borne
    diseases, disease surveillance and prevention
    programs and possible climate change.
  • In the absence of effective control, these
    diseases have a major impact on public health and
    socio-economic development.

GIS Cell, MNNIT-A
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Japanese Encephalitis (JE)
  • Japanese encephalitis is a major cause of
    encephalitis in Asia (Erlanger et al., 2009,
    Singh et al., 2004).
  • An estimated 50,000 cases occur in largely rural
    areas of the south and east Asian region
    resulting in significant morbidity and mortality
    (Gupta et al., 2008).

GIS Cell, MNNIT-A
SOURCE Fischer et al., 2010
8
  • JE is caused by a zoonotic flavivirus which is
    one of the common causes of AES.
  • It is difficult to eradicate JE because it is
    transmitted from natural reservoirs like pigs,
    waddling birds which are important amplifying
    hosts and man is involved as an accidental host
    (Khinchi et al., 2010, Fischer et al., 2010).
  • Among 175 districts 80 districts classified as
    endemic 54 (68) are from Uttar Pradesh state
    alone (Sabenson, 2008, Saxena et al., 2008).
  • The scourge of the disease is most severe in
    Gorakhpur District (Singh. 2007).

GIS Cell, MNNIT-A
9
Life cycle of Japanese Encephalitis
10
District-wise JE infected number of households
and children covered under the study is given
below (UNICEF, 2008).
District NO. Of House Hold No. of Children
Dibrugarh, Assam 900 1653
Kolar, Karnataka 900 1613
Amravati, Maharashtra 920 1719
Gorakhpur, UP 901 1969
Bahraich, UP 931 2089
Bardhaman, WB 895 1538
Total 5447 10581
  • A total of 2320 suspected cases and 528 deaths of
    JE from Uttar Pradesh mostly from Gorakhpur were
    reported in 2006 (Source Website of National
    Vector Borne Disease Control Programme, New
    Delhi).
  • Thus, serological and entomological observations
    were made to confirm the aetiology of a focal
    outbreak of JE in rural areas of Gorakhpur
    Division, UP in 2006.

11
ROLE OF GIS AND REMOTE SENSING
  • GIS has proved extremely useful for supporting
    the extent of various infections in the world.
  • A simplified GIS supported database management
    tool facilitates the collection, storage,
    retrieval and analysis of data for public health
    purposes (Berquist., 2001).
  • By utilizing a GIS, various departments can share
    information through databases on computer
    generated maps in one location.
  • Disease mapping is used to understand the
    geographical distribution and spread of disease
    in the past or present.

GIS Cell, MNNIT-A
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  • Remote sensing (RS) by earth-observing satellites
    has become increasingly important for the
    analysis and integration of various data.
  • The heterogeneity of climates and landscapes
    determines the distribution of vector-borne
    diseases.
  • These new technologies through their propensity
    for powerful data collection and data handling
    are particularly well suited to pinpointing
    constraining factors.
  • Remote Sensing technique used to obtained disease
    information on vegetation properties, canopy,
    surface temperature and soil moisture over large
    areas.

GIS Cell, MNNIT-A
13
GIS Health Dataset
  • To integrate and make the health database in GIS
    environment , the following data layers to
    perform different types of health-related
    analyses (Boulos et al2001)
  • Population data, e.g. census and socioeconomic
    data
  • Environmental and ecological data, e.g.,
    monitored data on pollution and vegetation
    (satellite pictures)
  • Topography, hydrology and climatic data
  • Land-use and public infrastructure data, e.g.,
    schools and main drinking water supply
  • Transportation networks (access routes) data,
    e.g., roads and railways
  • Health infrastructure and epidemiological data,
    e.g., data on mortality, morbidity, disease
    distribution and healthcare facilities

14
Integration of GIS data set
  • Demographic Data Births, Deaths, Diseases,
    Population
  • Infrastructure
  • Buildings, Roads, Floor Plans, Nursing
    Units
  • Internal Data
  • Patients, Utilization, Revenues
  • Facilities Hospitals, Ambulatories, Health
    Posts, Drug Stores
  • Administrative Boundaries Service Regions,
    Planning Areas
  • Environmental Topographic, Toxic Sites,
    Infectious Disease, Air and Water Quality

15
Objective Of The Present Work
  • The objective of present work includes creating a
    GIS based health data set using spatial data and
    their attribute information particularly for
    Japanese encephalitis.
  • The collected statistical dataset has been
    integrated in GIS using ArcGIS 10 software.
  • The statistical information has been converted
    into GIS based thematic map for better
    visualization and interpretation.

GIS Cell, MNNIT-A
16
Study Area
  • Gorakhpur is a city in the eastern part of the
    state of Uttar Pradesh in India, near the border
    with Nepal.
  • Gorakhpur division is mainly a paddy growing
    area, with clay soil and a very high water table.
  • The district of Gorakhpur lies between Lat. 26º
    13' N and 27º 29' N and Long. 83º 05' E and 83º
    56' E.
  • Gorakhpur district in UP has an area of 3483.8
    sq. km with a population of 37,69,456 (2001
    census). The village ecosystem of Gorakhpur
    comprised rivers, lakes, irrigation canals,
    reservoirs and rice fields (July-November).

Fig 1 Location Map of Study Area
GIS Cell, MNNIT-A
17
Collection of Health data
  • The health data is collected from district
    hospital Gorakhpur, Vikas Bhawan and NIC center
    of Gorakhpur.
  • The collected data is on the basis of -
  • Month wise disease data from year 2005 to 2010
  • Age wise and Sex wise data from age
    0-5,5-10,10-15,15-20,20-30,30-40 40-50
    50-ABOVE.
  • Use of Census data 2001.
  • The satellite data is also used, i.e., Landsat
    ETM images 2010 from April and November.

GIS Cell, MNNIT-A
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Adopted Methodology
GIS Cell, MNNIT-A
19
Details of Database Created
1. Base Map Road Map Preparation
GIS Cell, MNNIT-A
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2. Detailed Information of Gorakhpur Blocks and
Distribution of Pig Population
GIS Cell, MNNIT-A
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Presence of Health Centers in a District
Fig Location of Total Health Centers
22
3. Identification of Disease Habitats
The identification of disease habitats, used the
technique of land use and land cover for creation
of water abundance area, creation of base map,
water bodies, vegetation cover, population
diversity and paddy field.
GIS Cell, MNNIT-A
23
  • 4. Normalized difference water index (NDWI) is
    proposed for remote sensing to identify
    vegetation liquid water from space.
  • It gives the result of sensitive change in water
    content of vegetation canopies.

GIS Cell, MNNIT-A
24
5. The water pixel from post and pre monsoon and
the superimpose map of JE prominent area in
Gorakhpur District
GIS Cell, MNNIT-A
25
CONCLUDING REMARKS
  • The analysis of data in the present study reveals
    the details about health and sanitation awareness
    in rural people.
  • Their living behavior near the pond, river and
    water body creates more disease habitation due to
    the pig habitation too.
  • The available health facility is insufficient due
    to the presence of habitat population and their
    surrounding impact.
  • As poor transportation, and water management and
    sanitation are the main reason to facilitate the
    disease habitation

GIS Cell, MNNIT-A
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  • The study by using GIS and remote sensing helped
    to extract the update information and prepare the
    data for disease control and management
    strategies.
  • This geospatial database is update and contains
    the latest information through which health
    planners can perform their task of
    epidemiological mapping more efficiently.

GIS Cell, MNNIT-A
27
THANK YOU
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