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  • Datasets: Sea Surface Temperature Anomaly (SST) (Oceanic Nino Index (3 month running means of Extended Reconstructed Sea Surface Temperature (ERSST) v5 anomalies) [Multiple: Multisensors including buoys, passive microwave sensors]

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  • The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between precipitation anomaly in Southeast Asia and dengue outbreaks. Drier than normal habitats drew mosquitoes into populated, urban areas containing the open water needed for laying eggs. As the air warmed, mosquitoes also grew hungrier and reached sexual maturity more quickly, resulting in an increase in mosquito bites. ID: 4693 Visualization Visualization

    Precipitation Anomaly and Dengue Outbreaks in South East Asia: 2015-2016

    February 28, 2019

    The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between precipitation anomaly in Southeast Asia and dengue outbreaks. Drier than normal habitats drew mosquitoes into populated, urban areas containing the open water needed for laying eggs. As the air warmed, mosquitoes also grew hungrier and reached sexual maturity more quickly, resulting in an increase in mosquito bites. || SEAsia_PrecipDengueComposite_1920x1080_1211_print.jpg (1024x576) [75.8 KB] || SEAsia_PrecipDengueComposite_1920x1080_1211_searchweb.png (320x180) [52.9 KB] || SEAsia_PrecipDengueComposite_1920x1080_1211_thm.png (80x40) [5.4 KB] || SEAsia_PrecipDengueComposite_1920x1080_p30.webm (1920x1080) [6.4 MB] || SEAsia_PrecipDengue_Composite (1920x1080) [0 Item(s)] || SEAsia_PrecipDengueComposite_1920x1080_p30.mp4 (1920x1080) [14.8 MB] || SEAsia_PrecipDengueComposite_1920x1080_1211.tif (1920x1080) [1.5 MB] || SEAsia_PrecipDengueComposite (3840x2160) [0 Item(s)] || || 4693 || Precipitation Anomaly and Dengue Outbreaks in South East Asia: 2015-2016 || The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between precipitation anomaly in Southeast Asia and dengue outbreaks. Drier than normal habitats drew mosquitoes into populated, urban areas containing the open water needed for laying eggs. As the air warmed, mosquitoes also grew hungrier and reached sexual maturity more quickly, resulting in an increase in mosquito bites. || SEAsia_PrecipDengueComposite_1920x1080_1211_print.jpg (1024x576) [75.8 KB] || SEAsia_PrecipDengueComposite_1920x1080_1211_searchweb.png (320x180) [52.9 KB] || SEAsia_PrecipDengueComposite_1920x1080_1211_thm.png (80x40) [5.4 KB] || SEAsia_PrecipDengueComposite_1920x1080_p30.webm (1920x1080) [6.4 MB] || SEAsia_PrecipDengue_Composite (1920x1080) [262144 Item(s)] || SEAsia_PrecipDengueComposite_1920x1080_p30.mp4 (1920x1080) [14.8 MB] || SEAsia_PrecipDengueComposite_1920x1080_1211.tif (1920x1080) [1.5 MB] || SEAsia_PrecipDengueComposite (3840x2160) [262144 Item(s)] || Colorbar for precipitation anomaly. || Precipitation_Colorbar.png (640x180) [13.7 KB] || Precipitation_Colorbar_print.jpg (1024x288) [12.9 KB] || Earth || Climate Indicators || Climatology || Diseases || Diseases/Epidemics || Drought Indices || Earth Science || El Nino || El Nino Southern Oscillation || Environmental science || Human Dimensions || Human geography || Human Health || Hyperwall || Precipitation Indices || Public Health || Teleconnections || CPC UNI (CPC UNI (Climate Prediction Center (CPC) Global Unified) Precipitation) [N/A: Gauge-based] || Sea Surface Temperature Anomaly (SST) (Oceanic Nino Index (3 month running means of Extended Reconstructed Sea Surface Temperature (ERSST) v5 anomalies) [Multiple: Multisensors including buoys, passive microwave sensors] || Land Surface Tempearature Anomaly (MOD11C3 V006: MODIS/Terra Land Surface Temperature and Emissivity Monthly L3 Global 0.05Deg CMG V006) [Terra: Moderate Resolution Imaging Spectroradiometer (MODIS)] || Disease Reports || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Helen-Nicole Kostis (USRA) as Visualizer || Greg Shirah (NASA/GSFC) as Visualizer || Assaf Anyamba (USRA) as Scientist || Radina Soebiyanto (USRA) as Scientist || Jennifer Small (SSAI) as Science support || Matthew R. Radcliff (USRA) as Producer || Helen-Nicole Kostis (USRA) as Producer || Samson K. Reiny (Wyle Information Systems) as Writer || Laurence Schuler (ADNET Systems, Inc.) as Technical support || Ian Jones (ADNET Systems, Inc.) as Technical support || Eric Sokolowsky (Global Science and Technology, Inc.) as Project support || Joycelyn Thomson Jones (NASA/GSFC) as Project support || Leann Johnson (Global Science and Technology, Inc.) as Project support ||

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  • This visualization captures Sea Surface Temperature (SST) anomalies around the world from 1982 to 2017, along with a corresponding timeplot graph focusing on the Niño 3.4 SST Index region (5N-5S, 120W-170W), which represents average equatorial sea surface temperatures in the Pacific Ocean from about the International Date Line to the coast of South America. Highlighted in the timeline are the El Niño years, in which sea surface temperature anomalies peaked: 1982-1983, 1997-1998, and 2015-2016. ID: 4695 Visualization Visualization

    Niño 3.4 Index and Sea Surface Temperature Anomaly Timeline: 1982-2017

    February 28, 2019

    This visualization captures Sea Surface Temperature (SST) anomalies around the world from 1982 to 2017, along with a corresponding timeplot graph focusing on the Niño 3.4 SST Index region (5N-5S, 120W-170W), which represents average equatorial sea surface temperatures in the Pacific Ocean from about the International Date Line to the coast of South America. Highlighted in the timeline are the El Niño years, in which sea surface temperature anomalies peaked: 1982-1983, 1997-1998, and 2015-2016. || NINO3.4SST_FlatMapComposite_1920x1080_00932_print.jpg (1024x576) [104.9 KB] || NINO3.4SST_FlatMapComposite_1920x1080_00932_searchweb.png (320x180) [72.1 KB] || NINO3.4SST_FlatMapComposite_1920x1080_00932_thm.png (80x40) [6.8 KB] || SST_Nino3.4Index_1982_2017_Composite (1920x1080) [0 Item(s)] || NINO3.4SST_FlatMapComposite_1920x1080_p30.mp4 (1920x1080) [57.2 MB] || NINO3.4SST_FlatMapComposite_1920x1080_00932.tif (1920x1080) [1.4 MB] || NINO3.4SST_FlatMapComposite_1920x1080_p30.webm (1920x1080) [9.3 MB] || SSTNino3.4Index_1982_2017_Composite (3840x2160) [0 Item(s)] || || 4695 || Niño 3.4 Index and Sea Surface Temperature Anomaly Timeline: 1982-2017 || This visualization captures Sea Surface Temperature (SST) anomalies around the world from 1982 to 2017, along with a corresponding timeplot graph focusing on the Niño 3.4 SST Index region (5N-5S, 120W-170W), which represents average equatorial sea surface temperatures in the Pacific Ocean from about the International Date Line to the coast of South America. Highlighted in the timeline are the El Niño years, in which sea surface temperature anomalies peaked: 1982-1983, 1997-1998, and 2015-2016. || NINO3.4SST_FlatMapComposite_1920x1080_00932_print.jpg (1024x576) [104.9 KB] || NINO3.4SST_FlatMapComposite_1920x1080_00932_searchweb.png (320x180) [72.1 KB] || NINO3.4SST_FlatMapComposite_1920x1080_00932_thm.png (80x40) [6.8 KB] || SST_Nino3.4Index_1982_2017_Composite (1920x1080) [2294 Item(s)] || NINO3.4SST_FlatMapComposite_1920x1080_p30.mp4 (1920x1080) [57.2 MB] || NINO3.4SST_FlatMapComposite_1920x1080_00932.tif (1920x1080) [1.4 MB] || NINO3.4SST_FlatMapComposite_1920x1080_p30.webm (1920x1080) [9.3 MB] || SSTNino3.4Index_1982_2017_Composite (3840x2160) [2294 Item(s)] || El Niño-Southern Oscillation (ENSO) phenomenon is an irregularly recurring climate pattern characterized by warmer (El Niño) and colder (La Niña) than usual ocean temperatures in the equatorial Pacific Ocean from about the International Date Line to the coast of South America. ENSO (El Niño, La Niña) events create a ripple effect of anticipated weather changes in far-spread regions on Earth. Weather changes associated with the ENSO phenomenon result in rainfall, temperature, vegetation and environmental anomaly conditions worldwide that directly favor outbreaks of infectious diseases of public health concern typically 2-3 months after.During the last 20 years NASA scientist Dr. Assaf Anyamba and colleagues have been studying interannual climate variability patterns associated with ENSO events by monitoring the Niño 3.4 Index region over the Pacific Ocean (5N-5S, 120W-170W), along with rainfall, land surface temperature and vegetation anomaly data from NASA and NOAA.Dr. Anyamba and colleagues conducted a scientific study - the first one to comprehensively assess the public health impacts of the major climate event on a global scale - that was open access published in the journal Nature Scientific Reports, with the title Global Disease Outbreaks Associated with the 2015-2016 El Niño event. According to the study, the 2015-2016 El Niño event brought weather conditions that triggered infectious disease outbreaks in teleconnected regions around the world. For example, plague and hantavirus in Colorado and New Mexico (in 2015), cholera in East Africa’s Tanzania (during 2015 and 2016), and dengue fever in Brazil and Southeast Asia (during 2015) among others.The data visualization featured on this page provides a historical timeline of El Niño events for the period of 1982-2017 and illustrates the relationship between ENSO events (El Niño, La Niña) and the increase (red hues)/decrease (blue hues) of average Sea Surface Temperature (SST) Anomaly data over the Niño 3.4 Index region. The visualization showcases a global flat map with monthly Sea Surface Temperature (SST) anomaly data over water, along with a timeline plot of the ENSO Index (Niño 3.4 Index region SST anomaly) for the same period. The Nino 3.4 Index region SST with extents (5N-5S, 120W-170W) is the box region highlighted over the Pacific Ocean. Highlighted in the timeline are the strong El Niño years, in which Sea Surface Temperature (SST) anomalies peaked: 1982-1983, 1997-1998, and 2015-2016.To learn more about the relationship between ENSO events and infectious disease outbreaks, please see the following data visualizations:Sea Surface Temperature anomalies and patterns of Global Disease Outbreaks: 2009-2018 (4K version)Teleconnections in South East Asia for the period of 2015-2016Precipitation Anomaly and Dengue Outbreaks in South East Asia: 2015-2016Land Surface Temperature Anomaly and Dengue Outbreaks in South East Asia Region: 2015-2016ENSO Teleconnections and Rift Valley fever (RVF) OutbreaksPrecipitation Anomaly and Rift Valley fever (RVF) outbreaks in South Africa: 2008-2011Vegetation Index Anomalies and Rift Valley fever (RVF) outbreaks in South Africa region: 2008-2011The strong relationship between ENSO events and disease outbreaks underscores the importance of seasonal forecasts. Since disease outbreaks typically manifest 2-3 months after the start of El Niño and La Niña events, early and regular climate monitoring, paired with the use of monthly and seasonal climate forecasts become significant tools for disease control and prevention. Findings of the scientific study by Dr. Assaf Anyamba and colleagues, suggests that by monitoring monthly climate datasets, country public health agencies and organizations such as the United Nations' World Health Organization and Food and Agriculture Organizations, can utilize early warning forecasts to undertake preventive measures to minimize the spread of ecologically coupled diseases.Data Sources:Sea Surface Temperature Anomaly data (global, monthly time series: 1982-2017)Global monthly SST data known as Optimum Interpolation (OI) SST version 2 dataset produced by NOAA can be accessed from https://www.ncdc.noaa.gov/oisstNiño 3.4 Sea Surface Temperature (SST) ENSO index (monthly time series: 1982-2017) is obtained from the NOAA National Center for Climate Prediction online archives. The warm (El Niño) and cold (La Niña) periods of ENSO events were determined using the Oceanic Niño Index (ONI) threshold of +/- 0.5°C based on centered 30-year base periods updated every 5 years. The ONI is a 3-month running mean of Extended Reconstructed Sea Surface Temperature (ERSST) Version 4 (v4) SST anomalies in the Niño 3.4 region (5N-5S, 120W-170W).Supported with funding from the Defense Threat Reduction Agency's (DTRA) Joint Science and Technology Office for Chemical and Biological Defense (JSTO-CBD) Biosurveillance Ecosystem (BSVE) Program (HDTRA1-16-C-0045) and the Defense Health Agency-Armed Forces Health Surveillance Branch (AFHSB) Global Emerging Infections Surveillance and Response System (GEIS) under Project # P0072_19_NS.The rest of this webpage offers frames, layers and colorbar information associated with the development of this data-driven visualization. || Monthly Sea Surface Temperature Anomaly data visualized for the period 1982-2017. Frames contain alpha channel. || SST_FlatMap1982_2017_3840x2160_00002_print.jpg (1024x576) [88.1 KB] || SSTFlatMap_wAlpha (3840x2160) [2292 Item(s)] || Still Image of ENSO 3.4 box area with transparency. The coordinates of the Nino 3.4 region are: 5N-5S, 120W-170W. This still image can be overlaid on top of the flat map monthly Sea Surface Temperature Anomaly data visualization. || ENSO3.4_3840x2160_print.jpg (1024x576) [24.2 KB] || ENSO3.4_3840x2160.tif (3840x2160) [197.3 KB] || Still image of ENSO 3.4 Area with alpha channel. The Nino 3.4 region coordinates are: 5N-5S, 120W-170W. This still image can be overlaid on top of the flat map monthly Sea Surface Temperature Anomaly data visualization. || ENSO3.4BoxArea_FlatMap_3840x2160_print.jpg (1024x576) [2.6 KB] || ENSO3.4BoxArea_FlatMap_3840x2160.tif (3840x2160) [115.5 KB] || Monthly Sea Surface Temperature Anomaly visualization for the period of 1982-2017. This set of frames is provided with alpha channel. || SSTAmericas1982_2017.0000_print.jpg (1024x576) [40.7 KB] || SSTGlobe_wAlpha (3840x2160) [2294 Item(s)] || This set of frames provides the dates layer for the Sea Surface Temperature Anomaly visuals for the period 1982-2017. Frames are provided with alpha channel. || SSTDates1982_2017.0000_print.jpg (1024x576) [3.0 KB] || SSTGlobe_Dates (3840x2160) [2294 Item(s)] || Sea Surface Temperature Anomaly colorbar. || SST_anomaly.png (640x180) [11.1 KB] || Earth || Climate Indicators || Climate Variability and Change || Climatology || Diseases || Diseases/Epidemics || Drought Indices || Earth Science || El Nino || El Nino Southern Oscillation || Environmental science || Human Dimensions || Human geography || Human Health || Hyperwall || Precipitation Indices || Public Health || SST Anomaly || Teleconnections || Sea Surface Temperature Anomaly (SST) (Oceanic Nino Index (3 month running means of Extended Reconstructed Sea Surface Temperature (ERSST) v5 anomalies) [Multiple: Multisensors including buoys, passive microwave sensors] || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Helen-Nicole Kostis (USRA) as Visualizer || Assaf Anyamba (USRA) as Scientist || Radina Soebiyanto (USRA) as Scientist || Jennifer Small (SSAI) as Science support || Matthew R. Radcliff (USRA) as Producer || Helen-Nicole Kostis (USRA) as Producer || Samson K. Reiny (Wyle Information Systems) as Writer || Laurence Schuler (ADNET Systems, Inc.) as Technical support || Ian Jones (ADNET Systems, Inc.) as Technical support || Joycelyn Thomson Jones (NASA/GSFC) as Project support || Eric Sokolowsky (Global Science and Technology, Inc.) as Project support || Leann Johnson (Global Science and Technology, Inc.) as Project support ||

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  • The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between land surface temperature anomaly in Southeast Asia and dengue outbreaks. Higher than normal land surface temperatures results in an increase of dengue reported locations. ID: 4696 Visualization Visualization

    Land Surface Temperature Anomaly and Dengue Outbreaks in South East Asia Region: 2015-2016

    February 28, 2019

    The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between land surface temperature anomaly in Southeast Asia and dengue outbreaks. Higher than normal land surface temperatures results in an increase of dengue reported locations. || SEAsia_LSTDiseases_1920x1080_1730_print.jpg (1024x576) [85.1 KB] || SEAsia_LSTDiseases_1920x1080_1730_searchweb.png (320x180) [54.4 KB] || SEAsia_LSTDiseases_1920x1080_1730_thm.png (80x40) [5.3 KB] || SEAsia_LSTDengue_Composite (1920x1080) [0 Item(s)] || SEAsia_LSTDiseases_1920x1080_p30.mp4 (1920x1080) [33.8 MB] || SEAsia_LSTDiseases_1920x1080_1730.tif (1920x1080) [1.7 MB] || SEAsia_LSTDiseases_1920x1080_p30.webm (1920x1080) [6.2 MB] || SEAsia_LSTDengue_Composite (3840x2160) [0 Item(s)] || || 4696 || Land Surface Temperature Anomaly and Dengue Outbreaks in South East Asia Region: 2015-2016 || The 2015-2016 El Niño event brought changes to weather conditions across the globe that triggered regional disease outbreaks, including mosquito-borne dengue fever in Southeast Asia. This visualization with corresponding timeplot graph reveals the relationship between land surface temperature anomaly in Southeast Asia and dengue outbreaks. Higher than normal land surface temperatures results in an increase of dengue reported locations. || SEAsia_LSTDiseases_1920x1080_1730_print.jpg (1024x576) [85.1 KB] || SEAsia_LSTDiseases_1920x1080_1730_searchweb.png (320x180) [54.4 KB] || SEAsia_LSTDiseases_1920x1080_1730_thm.png (80x40) [5.3 KB] || SEAsia_LSTDengue_Composite (1920x1080) [1984 Item(s)] || SEAsia_LSTDiseases_1920x1080_p30.mp4 (1920x1080) [33.8 MB] || SEAsia_LSTDiseases_1920x1080_1730.tif (1920x1080) [1.7 MB] || SEAsia_LSTDiseases_1920x1080_p30.webm (1920x1080) [6.2 MB] || SEAsia_LSTDengue_Composite (3840x2160) [1985 Item(s)] || Land Surface Temperature Anomaly Colorbar || LST_Colorbar.png (640x180) [12.5 KB] || LST_Colorbar_print.jpg (1024x288) [12.8 KB] || Earth || Climate Indicators || Climatology || Diseases || Diseases/Epidemics || Drought Indices || Earth Science || El Nino || El Nino Southern Oscillation || Environmental science || Human Dimensions || Human geography || Human Health || Hyperwall || Land Surface Temperature Anomaly || Precipitation Indices || Public Health || Teleconnections || CPC UNI (CPC UNI (Climate Prediction Center (CPC) Global Unified) Precipitation) [N/A: Gauge-based] || Sea Surface Temperature Anomaly (SST) (Oceanic Nino Index (3 month running means of Extended Reconstructed Sea Surface Temperature (ERSST) v5 anomalies) [Multiple: Multisensors including buoys, passive microwave sensors] || Land Surface Tempearature Anomaly (MOD11C3 V006: MODIS/Terra Land Surface Temperature and Emissivity Monthly L3 Global 0.05Deg CMG V006) [Terra: Moderate Resolution Imaging Spectroradiometer (MODIS)] || Disease Reports || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Helen-Nicole Kostis (USRA) as Visualizer || Greg Shirah (NASA/GSFC) as Visualizer || Assaf Anyamba (USRA) as Scientist || Radina Soebiyanto (USRA) as Scientist || Jennifer Small (SSAI) as Science support || Matthew R. Radcliff (USRA) as Producer || Helen-Nicole Kostis (USRA) as Producer || Samson K. Reiny (Wyle Information Systems) as Writer || Laurence Schuler (ADNET Systems, Inc.) as Technical support || Ian Jones (ADNET Systems, Inc.) as Technical support || Joycelyn Thomson Jones (NASA/GSFC) as Project support || Eric Sokolowsky (Global Science and Technology, Inc.) as Project support || Leann Johnson (Global Science and Technology, Inc.) as Project support ||

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  • The 2015-2016 strong El Niño event brought changes to weather conditions across the globe that triggered regional infectious disease outbreaks, including mosquito-borne dengue fever in South East Asia. This visualization with corresponding multi-plot graph shows how Sea Surface Temperature anomalies in the equatorial Pacific Ocean (left), resulted in anomalous drought conditions (center) and increase in land surface temperatures (right) in South East Asia.  During the 2015-2016 El Niño event, the South East Asia region received below than normal precipitation resulting in drier and warner than normal conditions, which increased the populations of mosquito vectors in urban areas, where there are open water storage containers providing ideal habitats for mosquito production. In addition, the higher than normal temperature on land shortens the maturation time of larvae to adult mosquitos and induces frequent blood feeding/biting of humans by mosquito vectors resulting in the amplification of dengue disease outbreaks over the South East Asia region. ID: 4697 Visualization Visualization

    ENSO teleconnections in South East Asia for the period of 2015-2016

    February 28, 2019

    The 2015-2016 strong El Niño event brought changes to weather conditions across the globe that triggered regional infectious disease outbreaks, including mosquito-borne dengue fever in South East Asia. This visualization with corresponding multi-plot graph shows how Sea Surface Temperature anomalies in the equatorial Pacific Ocean (left), resulted in anomalous drought conditions (center) and increase in land surface temperatures (right) in South East Asia. During the 2015-2016 El Niño event, the South East Asia region received below than normal precipitation resulting in drier and warner than normal conditions, which increased the populations of mosquito vectors in urban areas, where there are open water storage containers providing ideal habitats for mosquito production. In addition, the higher than normal temperature on land shortens the maturation time of larvae to adult mosquitos and induces frequent blood feeding/biting of humans by mosquito vectors resulting in the amplification of dengue disease outbreaks over the South East Asia region. || SST_LST_Precip_2014_2016_Comp_print.jpg (1024x576) [82.9 KB] || SST_LST_Precip_2014_2016_Comp_searchweb.png (320x180) [51.5 KB] || SST_LST_Precip_2014_2016_Comp_thm.png (80x40) [6.0 KB] || SST_Precip_LST_Plot_Composite (1920x1080) [0 Item(s)] || SST_LST_Precip_2014_2016_Comp_1080p30.mp4 (1920x1080) [9.7 MB] || SST_LST_Precip_2014_2016_Comp.tif (1920x1080) [1.1 MB] || SST_LST_Precip_2014_2016_Comp_1080p30.webm (1920x1080) [4.2 MB] || TeleconnectionsSEAsia (3840x2160) [0 Item(s)] || SST_LST_Precip_2014_2016_Comp_1080p30.mp4.hwshow [203 bytes] || || 4697 || ENSO teleconnections in South East Asia for the period of 2015-2016 || The 2015-2016 strong El Niño event brought changes to weather conditions across the globe that triggered regional infectious disease outbreaks, including mosquito-borne dengue fever in South East Asia. This visualization with corresponding multi-plot graph shows how Sea Surface Temperature anomalies in the equatorial Pacific Ocean (left), resulted in anomalous drought conditions (center) and increase in land surface temperatures (right) in South East Asia. During the 2015-2016 El Niño event, the South East Asia region received below than normal precipitation resulting in drier and warner than normal conditions, which increased the populations of mosquito vectors in urban areas, where there are open water storage containers providing ideal habitats for mosquito production. In addition, the higher than normal temperature on land shortens the maturation time of larvae to adult mosquitos and induces frequent blood feeding/biting of humans by mosquito vectors resulting in the amplification of dengue disease outbreaks over the South East Asia region. || SST_LST_Precip_2014_2016_Comp_print.jpg (1024x576) [82.9 KB] || SST_LST_Precip_2014_2016_Comp_searchweb.png (320x180) [51.5 KB] || SST_LST_Precip_2014_2016_Comp_thm.png (80x40) [6.0 KB] || SST_Precip_LST_Plot_Composite (1920x1080) [1122 Item(s)] || SST_LST_Precip_2014_2016_Comp_1080p30.mp4 (1920x1080) [9.7 MB] || SST_LST_Precip_2014_2016_Comp.tif (1920x1080) [1.1 MB] || SST_LST_Precip_2014_2016_Comp_1080p30.webm (1920x1080) [4.2 MB] || TeleconnectionsSEAsia (3840x2160) [1122 Item(s)] || SST_LST_Precip_2014_2016_Comp_1080p30.mp4.hwshow [203 bytes] || El Niño-Southern Oscillation (ENSO) is an irregularly recurring climate pattern characterized by warmer (El Niño) and colder (La Niña) than usual ocean temperatures in the equatorial eastern Pacific, which creates a ripple effect of anticipated weather changes in far-spread regions on our planet. Weather changes associated with the ENSO phenomenon result in climate anomalies related to each other, such as rainfall (increase or lack of thereof) and land surface temperature anomaly conditions that trigger outbreaks of infectious diseases of public health concern in different regions around the world. These distant weather effects are called teleconnections. Therefore, the effects of ENSO are called ENSO teleconnections, highlighting that warmer or colder than usual ocean temperatures in the equatorial Pacific Ocean with extents (5N-5S, 120W-170W) affect areas far from the source typically 2-3 months after.During the last 20 years NASA scientist Dr. Assaf Anyamba and colleagues have been tracking ENSO events (please see: Niño 3.4 Index and Sea Surface Temperature Anomaly Timeline: 1982-2017) and studying associated teleconnections by monitoring various climate datasets, among them Sea Surface Temperature, Precipitation and Land Surface Anomaly datasets from NASA and National Oceanic and Atmospheric Administration (NOAA). At the same time, the science team has been collecting, cataloguing and analyzing patterns and sources of infectious disease outbreaks worldwide. Dr. Anyamba and colleagues conducted a scientific study - the first one to comprehensively assess the public health impacts of the major climate event on a global scale - that was open access published in the journal Nature Scientific Reports, with the title Global Disease Outbreaks Associated with the 2015-2016 El Niño event. According to the study, the 2015-2016 El Niño event brought weather conditions that triggered infectious disease outbreaks in ENSO teleconnected regions around the world, such as plague and hantavirus in Colorado and New Mexico (in 2015), cholera in East Africa’s Tanzania (during 2015- 2016), and dengue fever in Brazil and Southeast Asia (during 2015) among others. These outbreaks have been visualized with data in web entry: Sea Surface Temperature anomalies and patterns of Global Disease Outbreaks: 2009-2018 (4K version)).The data visualization featured on this page with corresponding multiplot graph illustrates the relationship between the 2015-2016 El Niño event and the amplification of dengue outbreaks over the region of South East Asia for the same period. The visualization comprises of two parts:Top:On the top part we can see three separate representations of Earth (spheres) with three distinct datasets. On the left sphere Sea Surface Temperature (SST) anomaly data are mapped over water and our planet is rotated so that we can observe changes of temperature (increase/red hues, decrease/blue hues) over the equatorial Pacific Ocean. The strong ENSO (El Niño) event during May 2015-May 2016 is manifested in the visualization as increased temperature over water (red hues) in the equatorial Pacific Ocean, where the Nino 3.4 Index SST region (5N-5S, 120W-170W) is located. In the middle sphere, our planet is rotated so that we can see Precipitation anomaly data (dry/brown to wet/teal) over land in the South East Asia region. On the right sphere, Land Surface Temperature (LST) anomaly data (low/blue to high/red) are mapped on land.The three distinct representations of each dataset are accompanied right below each sphere with the corresponding colorbar information (for example, Sea Surface Temperature colorbar, Precipitation Anomaly colorbar and Land Surface Temperature Anomaly colorbar)Bottom:On the bottom, a synchronized multiplot of Precipitation Anomaly (mm) and Temperature Anomaly (Co ) for the same period, tracks and visualizes indicators from three sources represented in the top part of the visualization. The three indicators are:Monthly Sea Surface Temperature (SST) Anomaly data (°C) for the Niño 3.4 Index region over the equatorial Pacific with extents (5N-5S, 120W-170W). Represented in the multiplot as the orange area graph. Monthly Precipitation Anomaly data (mm) for the South East (SE) Asia Region (Myanmar, Vietnam, Laos, Thailand, Cambodia, Malaysia, Singapore, Indonesia). Represented in the multiplot as the grey area graph.Monthly Land Surface Temperature (LST) Anomaly data (°C) for the South East (SE) Asia Region (Myanmar, Vietnam, Laos, Thailand, Cambodia, Malaysia, Singapore, Indonesia). Represented in the multiplot as the yellow area graph.The multiplot references both temperature-related anomaly datasets: Sea Surface Temperature (SST) Anomaly and Land Surface Temperature (LST) Anomaly data to the right axis of the multiplot. Temperature Anomaly values are referenced to the left axis of the multiplot. The overall design of this data visualization was chosen in an effort to make visible the relationships between the three datasets and their indicators concurrently. As time progresses, labels and visual cues in the multiplot guide the viewer about the occurrence and duration of the El Niño event, its different phases (Moderate, Strong, Very Strong) and the Dengue Amplification Period.To explain a bit further the weather patterns and teleconnections, lets take a closer look at the sequence of events and their timelines. The El Niño event (May 2015-May 2016) is manifested over the equatorial Pacific Ocean, as increased temperature (left sphere, red hues) on the top part of the visualization and with the orange area graph on the bottom. During the same period, the South East Asia region receives below than normal precipitation (middle sphere, brown hues) resulting in drier than usual conditions, which in turn caused an anomalous increase in land surface temperature (left sphere, red hues). The dry and hot conditions in the South East Asia region were conducive for the upsurge in populations of mosquito vectors in urban areas, where there are open water storage containers providing ideal habitats for mosquito production. In addition, the higher than normal temperature on land shortens the maturation time of larvae to adult mosquitos and induces frequent blood feeding/biting of humans by mosquito vectors, resulting in the Dengue Amplification Period (July 2015-March 2016) over the South East Asia region. Dengue fever is a painful, debilitating disease and is transmitted between people by mosquito vectors. It is a predominantly tropical disease affecting approximately 400 million people annually in many areas of the global tropics including South America and South East Asia. Dengue epidemics worldwide occur in urban areas where there is a coincidence of large numbers of dengue vectors (Aedes aegypti) and people with no immunity to one of the virus types.The impact of precipitation and land surface temperature anomalies on the dengue outbreaks over the South East Asia region have been visualized with data on the following two web entries: Precipitation Anomaly and Dengue Outbreaks in South East Asia: 2015-2016Land Surface Temperature Anomaly and Dengue Outbreaks in South East Asia Region: 2015-2016The strong relationship between ENSO events and disease outbreaks underscores the importance of seasonal forecasts. Since disease outbreaks typically manifest 2-3 months after the start of El Niño and La Nina events, early and regular climate monitoring, paired with the use of monthly and seasonal climate forecasts become significant tools for disease control and prevention. Findings of the scientific study by Dr. Assaf Anyamba and colleagues, suggests that by monitoring monthly climate datasets, country public health agencies such as CDC and international organizations such as the United Nations' World Health Organization and Food and Agriculture Organizations, can utilize early warning forecasts to undertake preventive measures to minimize the spread of ecologically coupled diseases.Data SourcesSea Surface Temperature Anomaly (global, monthly time series: 1982-2017)Global monthly SST data known as Optimum Interpolation (OI) SST version 2 dataset produced by NOAA can be accessed from: https://www.ncdc.noaa.gov/oisstPrecipitation Anomaly data (global and subset of SE Asia region, monthly time series: 2002-2017) Global Precipitation Climatology Project (GPCP) Global 1° Monitoring Product, available atftp://ftp-anon.dwd.de/pub/data/gpcc/html/monitoring_ download.htmlLand Surface Temperature (LST) Anomaly data (global, monthly time series: 2002-2017) Global monthly 0.05° LST MOD11C3 data is available at: https://lpdaac.usgs.gov/dataset_discovery/modis/modis_products_table/mod11c3Dengue outbreak data are georeferenced as sourced from global disease occurrences at the Program for Monitoring Emerging Diseases (ProMED). Dengue outbreak reports defined the Dengue Amplification Period. Niño 3.4 Sea Surface Temperature (SST) ENSO index for the period 2015-2016 is obtained from the NOAA National Center for Climate Prediction online archives.The warm (El Niño) and cold (La Niña) periods of ENSO events were determined using the Oceanic Niño Index (ONI) threshold of +/- 0.5Co based on centered 30-year base periods updated every 5 years. The ONI is a 3-month running mean of Extended Reconstructed Sea Surface Temperature (ERSST) Version 4 (v4) SST anomalies in the Niño 3.4 region (5 N-5 S, 120W-170W).Supported with funding from the Defense Threat Reduction Agency's (DTRA) Joint Science and Technology Office for Chemical and Biological Defense (JSTO-CBD) Biosurveillance Ecosystem (BSVE) Program (HDTRA1-16-C-0045) and the Defense Health Agency-Armed Forces Health Surveillance Branch (AFHSB) Global Emerging Infections Surveillance and Response System (GEIS) under Project # P0072_19_NS.The rest of this webpage offers additional versions, frames, layers and colorbar information associated with the development of this data-driven visualization. || This visualization is similar to the one above, except the timeplot graph is unveiled for the entire period 2015-2016. The 2015-2016 strong El Niño event brought changes to weather conditions across the globe that triggered regional infectious disease outbreaks, including mosquito-borne dengue fever in South East Asia. This visualization with corresponding multi-plot graph shows how Sea Surface Temperature anomalies in the equatorial Pacific Ocean (left), resulted in anomalous drought conditions (center) and increase in land surface temperatures (right) in South East Asia. During the 2015-2016 El Niño event, the South East Asia region received below than normal precipitation resulting in drier and warner than normal conditions, which increased the populations of mosquito vectors in urban areas, where there are open water storage containers providing ideal habitats for mosquito production. In addition, the higher than normal temperature on land shortens the maturation time of larvae to adult mosquitos and induces frequent blood feeding/biting of humans by mosquito vectors resulting in the amplification of dengue disease outbreaks over the South East Asia region. || SST_LST_Precip_2014_2016_PlotON_Comp_print.jpg (1024x576) [83.7 KB] || SST_Precip_LST_PlotOn_Composite (1920x1080) [1002 Item(s)] || SST_LST_Precip_2014_2016_GraphOn_Comp_1080p30.mp4 (1920x1080) [9.1 MB] || SST_LST_Precip_2014_2016_PlotON_Comp.tif (1920x1080) [1.1 MB] || SST_LST_Precip_2014_2016_GraphOn_Comp_1080p30.webm (1920x1080) [3.8 MB] || TeleconnectionsSEAsia_PlotOn (3840x2160) [1002 Item(s)] || SST_LST_Precip_2014_2016_GraphOn_Comp_1080p30.mp4.hwshow [211 bytes] || This set of frames provides the Sea Surface Temperature Anomaly layer for the period 2014-2016, with alpha channel. || SSTAnomaly_wAlpha_2014_2016.0000_print.jpg (1024x576) [40.7 KB] || SSTAnomaly_wAlpha (3840x2160) [1002 Item(s)] || This set of frames provides the dates layer for the Sea Surface Temperature Anomaly visuals. || SSTAnomalyDates2014_2016.0000_print.jpg (1024x576) [3.0 KB] || SSTAnomaly_Dates (3840x2160) [1002 Item(s)] || Colorbar for sea surface temperature anomaly. || SST_anomaly.png (640x180) [11.1 KB] || Monthly preicipitation anomaly in the Asia Region for the period of 2014-2016. This set of frames are provided with alpha channel. || PrecipAnomalySEAsia2014_2016.0000_print.jpg (1024x576) [34.9 KB] || PrecipAnomaly_wAlpha (3840x2160) [1002 Item(s)] || Colorbar for precipitation anomaly. || Precipitation_Anomaly.png (640x180) [12.2 KB] || Monthly Land Surface Temperature Anomaly data in the Asia region during 2014-2016. This set of frames is provided with alpha channel. || LSTAnomalySEAsia2014_2016.0000_print.jpg (1024x576) [45.9 KB] || LSTAnomaly_wAlpha (3840x2160) [1002 Item(s)] || This set of frames provides the dates layer for the Land Surface Temperature Anomaly visuals. Frames are provided with alpha channel. || LSTAnomalySEAsiaDates2014_2016.0000_print.jpg (1024x576) [3.0 KB] || LSTAnomaly_Dates (3840x2160) [1002 Item(s)] || Colorbar for land surface temperature anomaly. || LST_anomaly.png (640x180) [9.3 KB] || Earth || Climate Indicators || Climatology || Diseases || Diseases/Epidemics || Drought Indices || Earth Science || El Nino || El Nino Southern Oscillation || Environmental science || Human Dimensions || Human geography || Human Health || Hyperwall || Land Surface Temperature Anomaly || Precipitation Indices || Public Health || SST Anomaly || Teleconnections || CPC UNI (CPC UNI (Climate Prediction Center (CPC) Global Unified) Precipitation) [N/A: Gauge-based] || Sea Surface Temperature Anomaly (SST) (Oceanic Nino Index (3 month running means of Extended Reconstructed Sea Surface Temperature (ERSST) v5 anomalies) [Multiple: Multisensors including buoys, passive microwave sensors] || Land Surface Tempearature Anomaly (MOD11C3 V006: MODIS/Terra Land Surface Temperature and Emissivity Monthly L3 Global 0.05Deg CMG V006) [Terra: Moderate Resolution Imaging Spectroradiometer (MODIS)] || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Assaf Anyamba, Jean-Paul Chretien, Seth C. Britch, Radina P. Soebiyanto, Jennifer L. Small, Rikke Jepsen, Brett M. Forshey, Jose L. Sanchez, Ryan D. Smith, Ryan Harris, Compton J. Tucker, William B. Karesh & Kenneth J. Linthicum, "Global Disease Outbreaks Associated with the 2015–2016 El Niño Event", Scientific Reports, Volume 9, Article number: 1930 (2019). The paper is freely available online at: www.nature.com/articles/s41598-018-38034-z || Helen-Nicole Kostis (USRA) as Visualizer || Assaf Anyamba (USRA) as Scientist || Radina Soebiyanto (USRA) as Scientist || Jennifer Small (SSAI) as Science support || Matthew R. Radcliff (USRA) as Producer || Helen-Nicole Kostis (USRA) as Producer || Samson K. Reiny (Wyle Information Systems) as Writer || Laurence Schuler (ADNET Systems, Inc.) as Technical support || Ian Jones (ADNET Systems, Inc.) as Technical support || Joycelyn Thomson Jones (NASA/GSFC) as Project support || Leann Johnson (Global Science and Technology, Inc.) as Project support || Eric Sokolowsky (Global Science and Technology, Inc.) as Project support ||

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