Community Vulnerability Index Dashboard
20210280320 · 2021-09-09
Inventors
- Akshay Arora (Irving, TX, US)
- Venkatraghavan Sundaram (Irving, TX, US)
- Lindsay Zimmerman (Dallas, TX, US)
- Thomas Roderick (Frisco, TX, US)
- Esther Olsen (Sunnyvale, CA, US)
- Leslie Wainwright (Chicago, IL, US)
- Vikas Chowdhry (Southlake, TX, US)
- Steve Miff (Dallas, TX, US)
- Aida Kreho Somun (Richardson, TX, US)
- Vency Varghese (Irving, TX, US)
Cpc classification
G06Q30/0201
PHYSICS
G06F3/04847
PHYSICS
G16H40/20
PHYSICS
G16H50/70
PHYSICS
G16H15/00
PHYSICS
G06Q50/22
PHYSICS
G16H50/30
PHYSICS
International classification
G16H50/80
PHYSICS
G06Q50/22
PHYSICS
G16H15/00
PHYSICS
G16H40/20
PHYSICS
Abstract
A community vulnerability index dashboard includes a data ingestion logic module configured to automatically receive real-time and non-real-time data from a variety of sources including education agencies, law enforcement, health services agencies, healthcare agencies, medical insurance agencies, housing and transportation agencies, childcare licensing agencies, and non-emergency citywide services. The dashboard includes a data processing module that extracts and process the ingested data, and a data analysis logic module that analyzes the processed data to determine values for indicators and an overall vulnerability index value based on the values of the plurality of indicators to provide insight into the lives of residents living in a community on a block group level. The dashboard includes a data presentation dashboard interface to display an interactive choropleth map of the overall vulnerability index and indicator values on a block group level for the community of interest.
Claims
1. A community vulnerability index dashboard comprising: a data ingestion logic module configured to automatically receive real-time and non-real-time data from a variety of sources selected from the group consisting of education agencies, law enforcement, health services agencies, healthcare agencies, medical insurance agencies, housing and transportation agencies, childcare licensing agencies, and non-emergency citywide services; a data processing module configured to extract and process the ingested data; a data analysis logic module configured to analyze the processed data to determine values for a plurality of indicators and an overall vulnerability index value based on the values of the plurality of indicators to provide insight into the lives of residents living in a community on a block group level; and a data presentation dashboard interface to display values for the plurality of indicators and the overall vulnerability index and an interactive choropleth map of the overall vulnerability index and indicator values on a block group level for the community of interest.
2. The dashboard of claim 1, further comprising a database configured to store ingested data and provide access to the data by the data analysis logic module.
3. The dashboard of claim 1, wherein the data analysis logic module applies natural language processing techniques to process unstructured data.
4. The dashboard of claim 1, wherein the data analysis logic module is configured to analyze data indicative of food insecurity, paycheck predictability, household structure, health insurance coverage, and median income that are representative of household essentials.
5. The dashboard of claim 1, wherein the data analysis logic module is configured to analyze data indicative of educational attainment, internet connectivity, literacy, walkability, bikability, and transit availability that are representative of personal empowerment.
6. The dashboard of claim 1, wherein the data analysis logic module is configured to analyze data indicative of employment, affordable housing, neighborhood safety, neighborhood stability, clean air, and green space that are representative of equitable communities.
7. The dashboard of claim 1, wherein the data analysis logic module is configured to analyze data indicative of life expectancy, alcohol abuse, disease burden, and mental health that are representative of health.
8. The dashboard of claim 1, wherein the data analysis logic module comprises at least one predictive model having a plurality of variables and thresholds.
9. The dashboard of claim 8, wherein the data analysis logic module applies artificial intelligence methods to refine and tune the at least one predictive model.
10. A method to provide improved insight into community vulnerability by presenting data on a graphical user interface device comprising: automatically receiving real-time and non-real-time data from a variety of sources selected from the group consisting of education agencies, law enforcement, health services agencies, healthcare agencies, medical insurance agencies, housing and transportation agencies, childcare licensing agencies, and non-emergency citywide services; extracting and processing the ingested data; analyzing the processed data and determining values for a plurality of indicators and an overall vulnerability index value based on the values of the plurality of indicators to provide insight into the lives of residents in a community on a block group level; and displaying values of the plurality of indicators and the overall vulnerability index value; and displaying an interactive choropleth map of the overall vulnerability index and indicator values on a block group level for a community of interest.
11. The method of claim 10, further comprising storing the ingested data and providing secured access to the data.
12. The method of claim 10, further comprising applying natural language processing techniques to process ingested data that are unstructured.
13. The method of claim 10, further comprising analyzing data indicative of food insecurity, paycheck predictability, household structure, health insurance coverage, and median income that are representative of household essentials.
14. The method of claim 1, further comprising analyzing data indicative of educational attainment, internet connectivity, literacy, walkability, bikability, and transit availability that are representative of personal empowerment.
15. The method of claim 1, further comprising analyzing data indicative of employment, affordable housing, neighborhood safety, neighborhood stability, clean air, and green space that are representative of equitable communities.
16. The method of claim 1, further comprising analyzing data indicative of life expectancy, alcohol abuse, disease burden, and mental health that are representative of health.
17. The method of claim 1, further comprising applying at least one predictive model having a plurality of variables and thresholds to the data.
18. The method of claim 17, further comprising employing artificial intelligence techniques to refine and tune the at least one predictive model.
19. The method of claim 10, further comprising enabling the user to selective choose a geographical region of interest for which the overall vulnerability index, the plurality of indicators, and interactive choropleth map are presented.
20. A community vulnerability index dashboard comprising: a data ingestion logic module configured to automatically receive real-time and non-real-time data from a variety of sources selected from the group consisting of education agencies, law enforcement, health services agencies, healthcare agencies, medical insurance agencies, housing and transportation agencies, childcare licensing agencies, and non-emergency citywide services; a data processing module configured to extract and process the ingested data; a data analysis logic module configured to analyze the processed data to determine values for a plurality of indicators and an overall community vulnerability index value based on the values of the plurality of indicators selected from the group consisting of food insecurity, paycheck predictability, household structure, health insurance coverage, median income, educational attainment, internet connectivity, literacy, walkability, bikability, transit availability, employment, affordable housing, neighborhood safety, neighborhood stability, clean air, green space, life expectancy, alcohol abuse, disease burden, and mental health to provide insight into the lives of residents living in a community on a selectable granularity level; a database configured to store ingested data and provide access to the data by the data analysis logic module; and a data presentation dashboard interface to display values for the plurality of indicators and the overall vulnerability index value and an interactive choropleth map of the overall vulnerability index and indicator values on the selectable granularity level for a community of interest.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0005]
[0006]
[0007]
[0008]
[0009]
[0010]
DETAILED DESCRIPTION
[0011] The community vulnerability index dashboard described herein is a data analytics and presentation system and method 10 that enable the users to truly understand the factors that impact the quality of life and health of various communities. The community vulnerability index dashboard system and method 10 generate highly specific, block group-level indicators from key indicator data received from a variety of publicly available data sources, and present the data analysis via a highly interactive and user-friendly geospatial graphical user interface that are adaptable for a variety of computing platforms. The dashboard system and method uses an overall community vulnerability index (CVI) and four sub-indices: 1) Household Essentials, 2) Empowered People, 3) Equitable Communities, and 4) Good Health. Each sub-index is made up of key indicators. The indices are created on the block group level and are designed to reflect both individual and neighborhood-level characteristics. The dashboard system and method provide actionable insights that enable community-based organizations, local civic leaders, and philanthropic funders to assess community needs, evaluate program effectiveness, redirect funding, apply for grants, inform key stakeholders, make and track goals, and monitor and forecast trends. The dashboard can also be incorporated into other use cases such as predictive models for health services utilization, neighborhood quality index, scenario planning, and impact analyses.
[0012] Referring to
[0013] Referring also to
[0014] The dashboard 10 may use a data presentation/interface tool 34, for example, the Power BI dashboard tool, to pull data from the database management system 32 via a gateway 36. Power BI is a Microsoft product that can be easily integrated with the Azure platform. An overall community vulnerability index is based on five sub-indices for five main SDOH (Social Determinants of Health) categories. These sub-indices include: household essentials (indicators: food insecurity, paycheck predictability, household structure, health insurance coverage, and median income), empowered people (indicators: educational attainment, internet connectivity, literacy, and mobility), equitable communities (indicators: employment, affordable housing, neighborhood safety, neighborhood stability, clean air, and green space), good health (indicators: life expectancy, alcohol abuse, mental health, cancer, chronic diseases: coronary heart disease, diabetes, chronic obstructive pulmonary disease (COPD), kidney disease, and asthma), and access to vital services (indicators: childcare, elder care, healthcare, social services, utilities, and food). These five categories are described in more detail below. Additionally, a master community vulnerability index is available to provide users the opportunity to look at how these indicators interact across these categories. The dashboard 10 also uses a mapping application that presents data as actionable insights into the community in question covered by the data. Users may access the dashboard 10 by using a variety of user devices 16, including and not limited to, mobile phones, tablet computers, laptop computers, and desktop computers.
[0015] Referring to
[0016] The predictive analysis logic module/process 50 receives the data from the data integration logic module/process 40 and analyzes the data. The predictive analysis logic module/process 50 includes a natural language processing logic 52. During natural language processing, raw unstructured data, for example, physicians' notes and reports, first go through a process called tokenization. The tokenization process divides the text into basic units of information in the form of single words or short phrases by using defined separators such as punctuation marks, spaces, or capitalizations. Using the rule-based model, these basic units of information are identified in a meta-data dictionary and assessed according to predefined rules that determine meaning. Using the statistical-based learning model, the disease identification process 44 quantifies the relationship and frequency of word and phrase patterns and then processes them using statistical algorithms. Using machine learning, the statistical-based learning model develops inferences based on repeated patterns and relationships. A number of complex natural language processing functions including text pre-processing, lexical analysis, syntactic parsing, semantic analysis, handling multi-word expression, word sense disambiguation, and other functions are performed.
[0017] The predictive analysis logic module/process 50 includes a predictive model process 54 that is adapted to analyze the data and predict the risk of occurrence of particular conditions of interest according to one or more predictive models. It may be used to assess the vulnerability of a certain population with respect to certain diseases, such as, for example, alcohol abuse, mental health, cancer, coronary heart disease, diabetes, COPD, kidney disease, and asthma. The predictive model analysis takes into account of the values of risk factors or variables (weighed or unweighed) and compare them against setpoints and thresholds to determine the amount of risk certain residents in a population of a community is subject to or suffering from certain diseases. One or more predictive models may be incorporated to analyze the data and calculate risk scores associated with particular members of a certain block group in order to determine the best course of action to take with respect to those members or that block group.
[0018] Artificial Intelligence (AI) 58 may also be used to analyze the ingested data. The artificial intelligence model tuning module/process 58 utilizes adaptive self-learning capabilities using machine learning technologies. The capacity for self-reconfiguration enables the system and method to be sufficiently flexible and adaptable to detect and incorporate trends or differences in the underlying patient data or population that may affect the predictive accuracy of a given algorithm. The artificial intelligence model tuning module/process 58 may periodically retrain a selected predictive model for improved accurate outcome to allow for selection of the most accurate statistical methodology, variable count, variable selection, interaction terms, weights, and intercept for a local health system or clinic. The artificial intelligence model tuning module/process may automatically modify or improve a predictive model in three exemplary ways. First, it may adjust the predictive weights of the variables without human supervision. Second, it may adjust the threshold values of specific variables without human supervision. Third, the artificial intelligence model tuning process may, without human supervision, evaluate new variables present in the data feed but not presently used in the predictive model, which may result in improved accuracy. The artificial intelligence model tuning module/process may compare the actual observed outcome of the event to the predicted outcome then separately analyze the variables within the model that contributed to the incorrect outcome. It may then re-weigh the variables that contributed to this incorrect outcome, so that in the next reiteration those variables are less likely to contribute to a false prediction. In this manner, the artificial intelligence model tuning module/process is adapted to reconfigure or adjust the predictive model based on the specific clinical setting or population in which it is applied. Further, no manual reconfiguration or modification of the predictive model is necessary. The artificial intelligence model tuning module/process may also be useful to scale the predictive model to different populations, communities, and geographical areas in a rapid timeframe.
[0019] The community vulnerability index dashboard system and method 10 further includes a graphical user interface 60 that includes a data presentation and configuration logic module/process 62. The dashboard interface 60 is an interactive and user-friendly visualization tool that is designed to enable the user to understand neighborhood characteristics of a selected region or a default geopolitical region on a block group level in a holistic manner. The dashboard displays 60+ sub-indicators grouped into five categories that measure the resiliency, commitment and amenities in the neighborhoods on a block group level.
[0020]
[0021]
[0022] When the user clicks on the “Tabular” button on the screen shown in
[0023] When the user hovers the cursor over a block group on the map 112, information for that specific block group 118 is displayed, as shown in
[0024] As shown in
[0025] As shown in
[0026]
[0027]
[0028]
[0029]
[0030] The dashboard system and method use various key indicators that have been selected and used to track measures of resiliency, commitment, and amenities in a region. Table A lists the sub-indices, the indicators for each sub-index, and the data source for the indicators.
TABLE-US-00001 TABLE A Domain Measure Description Data Source Household Food % of households on American Essentials Insecurity SNAP in the past 12 Community months Survey Paycheck % of population American Predictability working full-time, Community year-round in the Survey past 12 months for the population 16 years and over Household % single parent American Structure households Community Survey Health % uninsured American Insurance Community Coverage Survey Median median household American Income income in the past 12 Community months (in 2018 Survey inflation-adjusted dollars) Empowered Educational % of the population, American People Attainment 25 years and over, Community without high school Survey degree Internet % of households American Connectivity without an internet Community subscription Survey Literacy % of residents with Program for the low literacy International (description of levels Assessment found here) of Adult Competencies Walk Score ®* score measures Walk Score ® walkability on a scale from 0-100 by analyzing routes to nearby amenities and pedestrian friendliness Bike Score ®* score measures Walk Score ® whether an area is good for biking by analyzing bike infrastructure, terrain, road connectivity, and number of bike commuters Mobility- score measuring Walk Score ® Transit transit accessibility Score ® on a scale from 0- 100 by calculating distance to closest stop on each route (analyzes route frequency and type) Equitable Employment % of employed American Communities individuals out of the Community civilian labor force Survey ages 16 years and older Affordable average monthly H + T ® Index Housing housing costs as a percentage of household income in the past 12 months Neighborhood all crime and violent Dallas Crime Safety crime rates per 1,000 Data residents in the past year Neighborhood % of housing units American Stability that are vacant Community Survey Clean Air concentration of air BreezoMeter pollutants based on local air quality standards and pollutant concentrations Green Space number of parks per ParkServe ® block group Good Health Life life expectancy at U.S. Small- Expectancy birth (average area Life number of years a Expectancy person can expect to Estimates live) Project Alcohol prevalence of binge 500 Cities Abuse drinking among Project adults ages 18 years and older Mental % of adults 18 years 500 Cities Health and older who stated Project that their mental health, which includes stress, depression, and problems with emotions, was not good for 14 or more of the past 30 days Cancer prevalence of cancer 500 Cities among adults ages 18 Project years and older Coronary prevalence of 500 Cities Heart coronary heart Project Disease disease among adults ages 18 years and older Diabetes prevalence of 500 Cities diagnosed diabetes Project among adults ages 18 years and older Chronic prevalence of chronic 500 Cities Obstructive obstructive Project Pulmonary pulmonary disease Disease among adults ages 18 years and older Kidney prevalence of chronic 500 Cities Disease kidney disease among Project adults ages 18 years and older Asthma prevalence of current 500 Cities asthma among adults Project ages 18 years and older
[0031] The features of the present invention which are believed to be novel are set forth below with particularity in the appended claims. However, modifications, variations, and changes to the exemplary embodiments described above will be apparent to those skilled in the art, and the community vulnerability index dashboard described herein thus encompasses such modifications, variations, and changes and are not limited to the specific embodiments described herein.