11. CASE STUDY: HEALTHCARE ANALYTICAL DASHBOARDS USING TABLEAU

Size: px
Start display at page:

Download "11. CASE STUDY: HEALTHCARE ANALYTICAL DASHBOARDS USING TABLEAU"

Transcription

1 11. CASE STUDY: HEALTHCARE ANALYTICAL DASHBOARDS USING TABLEAU 11.1 Problem Definition: The Quality of the healthcare data is enforced as part of Patient Protection and Affordable Care Act and to measure the quality of the data that is used to analyze outcomes. Currently the health plans don t have an easy way to analyze and understand quality of the health care data received from the trading partners. Healthcare data provided by Wily Fox Technologies is used for the reports. This data has been processed and analyzed for quality through a proprietary healthcare analysis system. It does not contain any protected health information (PHI). The data provided is in excel format. The reason for measuring the quality of data is to try to improve it and to perform benchmark analysis to get a clear understanding of the quality of the dataset. The quality metrics can be used to drive data quality improvement efforts, to ensure that analysis of healthcare related data sets is accurate. Improved data quality supports improved analysis, management, and policy setting. It will also provide a consistent basis for withhold and incentive programs to facilitate the shift to the pay-forperformance delivery model Objective: As mentioned above measuring Health Care data quality is very important. Objective of this Case study is to see how Tableau software can measure data quality and answer following questions by drill down dashboards. How many trading partners are up to standards (which we categorize by Pass/Fail)? What is average percentage of encounters submitted in days?

2 Details of each trading partner and its performance. What is the overall performance of trading partners? Measure of overall Data quality. Following Dashboards are created to analyze health care quality of the trading partner submitted data. Duplicate Encounters Dashboard Dental Encounter Lag Time Dashboard Institutional Encounter Lag Time Dashboard Professional Encounter Lag Time Dashboard Pharmacy Encounter Lag Time Dashboard Turn Around Time Dashboard Quality Measure Summary Dashboard (Main Dashboard) 11.3 Background: The Agency for Healthcare Research and Quality (AHRQ) defines quality health care [7] as doing the right thing at the right time, in the right way, for the right person and having the best possible results [7]. In health care, the difference between good and poor quality can literally mean the difference between life and death. The Institute of Medicine defines healthcare quality by six components: Effective Providing services based on scientific knowledge to all who could benefit. Safety Avoiding injuries to patients from the care that is intended to help them. Patient Centered Providing care that is respectful of and responsive to individual preferences, needs and values and ensuring that patient values guide all clinical decisions.

3 Timely - Reducing waits and sometimes-harmful delays for both those who receive and those who give care. Efficient - Avoiding waste, including waste of equipment, supplies, ideas, and energy. Equitable - Providing care that does not vary in quality because of personal characteristics such as gender, ethnicity, geographic location, and SES [7]. To lower health care costs and provide quality, government has issued Affordable Care Act. This act provides better health protection by filling current gaps in coverage, hold insurance companies accountable, lower health care costs, guarantees more choice, expand coverage and enhance the quality of care for all Healthcare Terminology: In simple terms, Trading Partners are different Health care providers. Encounters are records submitted by trading partner to the government. As we have an idea on what are trading partners and encounters, we will see few other terminologies and its measures. Duplicate Encounters Duplicate encounters are encounters submitted by trading partners that are duplicates of previously submitted encounters. The expected outcomes are measured by transaction type: - Less than 7% of Institutional encounter records are duplicates of already accepted encounter records.

4 - Less than 7% of Professional encounter records are duplicates of already accepted encounter records. - Less than 4% of Pharmacy encounter records are duplicates of already accepted encounter records. If any of these thresholds are exceeded, this measure fails. If all are met, this measure passes. This measure reviews the percentage of encounter records submitted by a trading partner that are duplicates of previously submitted encounter records. Lag Time Lag time is the length of time between the service date and the submission date that the encounter was received by the trading partner. The service data is the actual date that them member received healthcare services. The submission date is the date that the enforcement agency received the file containing the itemized services. The four lag time categories are: - 60% records where lag time is zero to 90 days - 80% records where lag time is 91 to 180 days - 95% records where lag time is 181 to 365 days - 5% records where lag time is greater than 365 days This measure addresses the lag time for submitting encounter data. Lag time is the time, in days, between the date of service and the date of submission by a trading partner. If the percentage of records falls below the percentage in the lag time categories, then the trading partner will not pass the quality measure. In this project we deal with four different lag times for the following healthcare data categories: - Institutional services for members where individuals require a prolonged period.

5 - Professional the most common services that members receive (outpatient) - Pharmacy Pharmacutical related services (prescription drugs) - Dental Outpatient dental care services. Turn-Around Time Turnaround time is the time between when a denial encounter was submitted and when the denial encounter data has been corrected. - 50% of denials should be corrected within 15 days - 80% of denials should be corrected within 30 days - 95% of denials should be corrected within 60 days Greater than a 5% descrepancy in any of the above categories is a failure to meet the measure. This measure addresses how quickly denied encounter records are corrected and resubmitted by a trading partner. The time between a denial and the correction and resubmission of corrected data is the turnaround time. This measure analyzes the percentage of corrections by turnaround time categories. Denied encounters have failed the data quality edit process and plans must correct them in a timely fashion. After understanding healthcare terminology, it is easy to get into creation of visualizations with the data using tableau Solution: Tableau software is used to create following dashboards each of which will able to analyze the quality of data submitted by the trading partners. This Dashboards will give the user a better visual representation of the data quality which can be used to make more appropriate decisions and also to contact each trading partner to check the issues with their data quality.

6 Dashboard 1: Dental Encounters Lag Time Dashboard In this dashboard, Lag time of Dental encounters is analyzed. Dental lag time is the length of time between the service date and the submission date that the encounter was received by the trading partner for Dental Encounters.This measure addresses the lag time for submitting encounter data as a percentage.this dashboard contains, - Number of Trading Partners that Pass or Fail based on the four categories of Dental lag time in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days of thresholds. - Average percentage of encounters in four lag categories. - Detail information of each trading partner and its associated Result, percent lag in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days. Figure 11-1: Dental Encounters Lag Time Dashboard

7 Figure 11-2: Dental Encounters Lag Time Trading Partners Passed Figure 11-3: Dental Encounters Lag Time Trading Partners Failed

8 Dashboard 2: Duplicate Encounters Dashboard In this dashboard, duplicate encounter quality of data for Institution, Pharmacy and Professional encounters is analyzed.this report will help the users to identify how many duplicate encounters are submitted as a percentage of total encounters. This report displays percentage of data duplicate vs nonduplicate data received is displayed. This report is an interactive report where users can drill down into the specific trading partner/ type of encounter to get more information. This dashboard contains, - Number of Trading Partners that Pass or Fail based on the thresholds. - Average duplicate encounters percent for Institutional, Pharmacy and Professional. - Detail information of each Trading Partner and associated Institutional duplicate percent, Pharmacy duplicate percent, Professional duplicate percent. Figure 11-4: Duplicate Encounters Dashboard

9 Figure 11-5: Duplicate Encounters Trading Partners Passed Figure 11-6: Duplicate Encounters Trading Partners Failed

10 Dashboard 3: Institutional Encounter Lag Time Dashboard In this dashboard, Lag time of Institutional encounters is analyzed. Institutional lag time is the length of time between the service date and the submission date that the encounter was received by the trading partner for Institutional Encounters.This measure addresses the lag time for submitting encounter data as a percentage. This dashboard contains, - Number of Trading Partners that Pass or Fail based on the four categories of Institutional lag time in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days of thresholds. - Average percentage of encounters in four lag categories. - Detail information of each trading partner and its associated Result, percent lag in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days. Figure 11-7: Institutional Encounters Lag Time Dashboard

11 Figure 11-8: Institutional Encounters Lag Time Trading Partners Passed Figure 11-9: Institutional Encounters Lag Time Trading Partners Failed

12 Dashboard 4: Professional Encounter Lag Time Dashboard In this dashboard, Lag time of Professional encounters is analyzed. Professional lag time is the length of time between the service date and the submission date that the encounter was received by the trading partner for Professional Encounters.This measure addresses the lag time for submitting encounter data as a percentage. This dashboard contains, - Number of Trading Partners that Pass or Fail based on the four categories of Professional lag time in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days of thresholds. - Average percentage of encounters in four lag categories. - Detail information of each trading partner and its associated result, percent lag in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days. Figure 11-10: Professional Encounters Lag Time Dashboard

13 Figure 11-11: Professional Encounters Lag Time Trading Partners Passed Figure 11-12: Professional Encounters Lag Time Trading Partners Failed

14 Dashboard 5: Pharmacy Encounter Lag Time Dashboard In this dashboard, Lag time of Pharmacy encounters is analyzed. Pharmacy lag time is the length of time between the service date and the submission date that the encounter was received by the trading partner for Pharmacy Encounters.This measure addresses the lag time for submitting encounter data as a percentage. This dashboard contains, - Number of Trading Partners that Pass or Fail based on the four categories of Pharmacy lag time in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days of thresholds. - Average percentage of encounters in four lag categories. - Detail information of each trading partner and its associated result, percent lag in zero to 90 days, lag time in 91 to 180 days, lag time in 181 to 365 days, lag time in greater than 365 days. Figure 11-13: Pharmacy Encounters Lag Time Dashboard

15 Figure 11-14: Pharmacy Encounters Lag Time Trading Partners Passed Figure 11-15: Pharmacy Encounters Lag Time Trading Partners Failed

16 Dashboard 6: Turn-Around Time Dashboard Turnaround time is the time between when a denial encounter was submitted and when the denial encounter data has been corrected This measure addresses how quickly denied encounter records are corrected by a trading partner. The time between a denial and the correction and the corrected data is succesfully submitted is the turnaround time. This measure analyzes the percentage of corrections by turnaround time categories. Denied encounters have failed the data quality edit process and plans must correct them for resubmission.this dashboard contains, - Number of Trading Partners that Pass or Fail based on the three categories of turn-around time, they are 15 days or less, time in 16 to 30 days, time in 31 to 60 days, of thresholds. - Average percentage of encounters in three time slot categories. - Detail information of each trading partner and its associated result, turn around time percent for less than 15 days, 16 to 30 days, 31 to 60 days, and total percent denied. Figure 11-16: Turn-Around Time Dashboard

17 Figure 11-17: Turn-Around Time Dashboard Trading Partners Passed Figure 11-18: Turn-Around Time Dashboard Trading Partners Failed

18 Dashboard 7: Quality Measure Summary Dashboard The Main Dashboard is a centralised dashboard which has links to all quality measure dashboards. This Dashboard displays overall quality performance of the encounters data for all the trading partners. This dashbaord has three sections. Section 1 Trading Partner Performance: This section gives a quick glance on performance summary of trading partners in numerical form. Section 2 Data Quality: Data Quality depicts the overall percent of approved encounters, total number of encounters submitted and number of encounters approved and denied. The color code, green number of approved encounters, red number of denied encounters. Section 3 Quality measures: This section provides individual quality measure performance in terms of percent for Pass and Fail. Each quality measure is provided with link to the respective quality measure dashboard for greater detail. When an enduser uses a mouse click on a quality measure name, they are redirected to that respective quality measure dashboard.

19 Figure 11-19: Quality Measures Summary 11.6 Conclusion: The dashboards created here facilitates improved analysis, data management and policy setting. It facilitates nested reporting. Its Interactive drill down features helps to understand the details of individual trading partner performance and encounters data. The dashboard, reports and data extracts created in this project can be used at various levels of an organization, from executives to staff that work with trading partners on a daily basis. Working on this project has helped me to understand the importance of data mining concepts, performing analytics on the data available, along with researching and learning Tableau desktop tool and its features. This also helped me improve my problem solving techniques. In addition, it facilitated me to acquire good knowledge on healthcare domain. Apart from me, it also helps readers understand the usage of tableau desktop tool.

Business Intelligence Helped Increase Patient Satisfaction and Lower Operating Costs

Business Intelligence Helped Increase Patient Satisfaction and Lower Operating Costs Case Study Business Intelligence Helped Increase Patient Satisfaction and Lower Operating Costs Universal Data Warehouse Data systemization Data visualization Customer A large healthcare network with over

More information

MaineCare Medicaid EHR Incentive Program 2015-2017 Meaningful Use Wizard Guide

MaineCare Medicaid EHR Incentive Program 2015-2017 Meaningful Use Wizard Guide MaineCare Medicaid EHR Incentive Program 2015-2017 Meaningful Use Wizard Guide **Information for the 2015 MU submissions can be found below the installation instructions** Before You Begin: Be sure your

More information

The Evolving Comparative Analytics Market:

The Evolving Comparative Analytics Market: The Evolving Comparative Analytics Market: Benchmarking Key Business Metrics Against Peers to Reduce Risk, Pinpoint Areas for Improvement, and Optimize Performance March 2013 UNDERSTANDING THE OPPORTUNITY

More information

Physician Relationship Management System

Physician Relationship Management System Physician Relationship Management System Guided Tour pg. What is Physician Relationship Management? Consumers vs. Physicians At a high level, most hospitals target their marketing efforts at primarily

More information

Accountable Care Organization Quality Explorer. Quick Start Guide

Accountable Care Organization Quality Explorer. Quick Start Guide Accountable Care Organization Quality Explorer Quick Start Guide 1 P age Background HealthLandscape (a division of the American Academy of Family Physicians [AAFP]) and the Robert Graham Center for Policy

More information

Implementation of Best Practices in Environmental Cleaning using LEAN Methodology. Tom Clancey and Amanda Bjorn

Implementation of Best Practices in Environmental Cleaning using LEAN Methodology. Tom Clancey and Amanda Bjorn Implementation of Best Practices in Environmental Cleaning using LEAN Methodology Tom Clancey and Amanda Bjorn Why Change? How What is LEAN? Lean is a set of concepts, principles and tools used to create

More information

2015 Medicare CAHPS At-A-Glance Report

2015 Medicare CAHPS At-A-Glance Report 2015 Medicare CAHPS At-A-Glance Report Advantage by Bridgeway Health Solutions CMS MA PD Contract: H5590 Project Number(s): 30103743 Current data as of: 07/01/2015 1965 Evergreen Boulevard Suite 100, Duluth,

More information

2015 HEDIS/CAHPS Effectiveness of Care Report for 2014 Service Measures Oregon, Idaho and Montana Commercial Business

2015 HEDIS/CAHPS Effectiveness of Care Report for 2014 Service Measures Oregon, Idaho and Montana Commercial Business 2015 HEDIS/CAHPS Effectiveness of Care Report for 2014 Service Measures Oregon, Idaho and Montana Commercial Business About HEDIS The Healthcare Effectiveness Data and Information Set (HEDIS 1 ) is a widely

More information

KEVIN P. DURGEE, CMPE MANAGER, BUSINESS INTELLIGENCE

KEVIN P. DURGEE, CMPE MANAGER, BUSINESS INTELLIGENCE BUSINESS INTELLIGENCE AND DATA ANALYTICS - CHANGING CULTURE THROUGH VISUAL DATA DISCOVERY KEVIN P. DURGEE, CMPE MANAGER, BUSINESS INTELLIGENCE HOLLY CONWAY, CMPE SENIOR ADMINISTRATIVE DIRECTOR DEPARTMENT

More information

MicroStrategy Desktop

MicroStrategy Desktop MicroStrategy Desktop Quick Start Guide MicroStrategy Desktop is designed to enable business professionals like you to explore data, simply and without needing direct support from IT. 1 Import data from

More information

Chapter 9 Basics of Enterprise Reporting. Fundamentals of Business Analytics RN Prasad and Seema Acharya

Chapter 9 Basics of Enterprise Reporting. Fundamentals of Business Analytics RN Prasad and Seema Acharya Chapter 9 Basics of Enterprise Reporting Fundamentals of Business Analytics Learning Objectives and Learning Outcomes Learning Objectives 1. To introduce the Balanced Score Card (Kaplan and Norton s) 2.

More information

2015 Michigan Department of Health and Human Services Adult Medicaid Health Plan CAHPS Report

2015 Michigan Department of Health and Human Services Adult Medicaid Health Plan CAHPS Report 2015 State of Michigan Department of Health and Human Services 2015 Michigan Department of Health and Human Services Adult Medicaid Health Plan CAHPS Report September 2015 Draft Draft 3133 East Camelback

More information

Sonatype CLM Server - Dashboard. Sonatype CLM Server - Dashboard

Sonatype CLM Server - Dashboard. Sonatype CLM Server - Dashboard Sonatype CLM Server - Dashboard i Sonatype CLM Server - Dashboard Sonatype CLM Server - Dashboard ii Contents 1 Introduction 1 2 Accessing the Dashboard 3 3 Viewing CLM Data in the Dashboard 4 3.1 Filters............................................

More information

Intelligent Process Management & Process Visualization. TAProViz 2014 workshop. Presenter: Dafna Levy

Intelligent Process Management & Process Visualization. TAProViz 2014 workshop. Presenter: Dafna Levy Intelligent Process Management & Process Visualization TAProViz 2014 workshop Presenter: Dafna Levy The Topics Process Visualization in Priority ERP Planning Execution BI analysis (Built-in) Discovering

More information

Building Better Dashboards PART 1: BASIC DASHBOARDS

Building Better Dashboards PART 1: BASIC DASHBOARDS Building Better Dashboards PART 1: BASIC DASHBOARDS For Questions or Feedback Alexandria Skrivanich or Michael Carpenter askrivanich@tableausoftware.com mcarpenter@tableausoftware.com 1 CREATING & LABELING

More information

Evaluating the impact of REMS on burden and patient access

Evaluating the impact of REMS on burden and patient access Evaluating the impact of REMS on burden and patient access Doris Auth, Pharm.D. Team Leader, Division of Risk Management Office of Medication Error Prevention and Risk Management Center for Drug Evaluation

More information

Career Opportunities in Healthcare Analytics presented by Kaiser Permanente Northwest Region. Today s Speakers. Friday, May 13 at 1:00 pm.

Career Opportunities in Healthcare Analytics presented by Kaiser Permanente Northwest Region. Today s Speakers. Friday, May 13 at 1:00 pm. Career Opportunities in Healthcare Analytics presented by Kaiser Permanente Northwest Region Friday, May 13 at 1:00 pm Today s Speakers Background Brian Sikora, Director Delilah Moore, Manager Corporate

More information

The Evolving Comparative Analytics Market:

The Evolving Comparative Analytics Market: The Evolving Comparative Analytics Market: Benchmarking Key Business Metrics Against Peers to Reduce Risk, Pinpoint Areas for Improvement, and Optimize Performance March 2013 UNDERSTANDING THE OPPORTUNITY

More information

Achieve More from your ERP using QlikView Business Intelligence

Achieve More from your ERP using QlikView Business Intelligence Achieve More from your ERP using QlikView Business Intelligence White Paper April 2014 Introduction With more and more organizations realizing the need for Business Intelligence applications to help the

More information

Business Intelligence (BI) for Healthcare Organizations

Business Intelligence (BI) for Healthcare Organizations Business Intelligence (BI) for Healthcare Organizations Written by, Anand Gaddum ilink Systems, Inc Abstract Business Intelligence (BI) refers to technologies, applications and practices for the collection,

More information

GE Healthcare. Transforming radiology with actionable intelligence. *Trademark of General Electric Company

GE Healthcare. Transforming radiology with actionable intelligence. *Trademark of General Electric Company GE Healthcare Transforming radiology with actionable intelligence *Trademark of General Electric Company A roadmap for optimized radiology workflows As radiology departments transform themselves in this

More information

State of Minnesota Department of Human Services Encounter Data Quality Assurance Protocol

State of Minnesota Department of Human Services Encounter Data Quality Assurance Protocol State of Minnesota Department of Human Services Encounter Data Quality Assurance Protocol September 9, 2014 Solely for the information and use of State of Minnesota s Department of Human Services and not

More information

Measure #130 (NQF 0419): Documentation of Current Medications in the Medical Record National Quality Strategy Domain: Patient Safety

Measure #130 (NQF 0419): Documentation of Current Medications in the Medical Record National Quality Strategy Domain: Patient Safety Measure #130 (NQF 0419): Documentation of Current Medications in the Medical Record National Quality Strategy Domain: Patient Safety 2016 PQRS OPTIONS FOR INDIVIDUAL MEASURES: CLAIMS, REGISTRY DESCRIPTION:

More information

Business Intelligence for Healthcare Benefits

Business Intelligence for Healthcare Benefits Business Intelligence for Healthcare Benefits A whitepaper with technical details on the value of using advanced data analytics to reduce the cost of healthcare benefits for self-insured companies. Business

More information

Oracle Utilities Mobile Workforce Management Business Intelligence

Oracle Utilities Mobile Workforce Management Business Intelligence Oracle Utilities Mobile Workforce Management Business Intelligence Metric Reference Guide Release 2.4.0.4 E35280-03 December 2012 Oracle Utilities Mobile Workforce Management Business Intelligence Metric

More information

NORTH CAROLINA. Data Analytics Project Inventory

NORTH CAROLINA. Data Analytics Project Inventory Data Analytics Project Inventory As of March 2013, the following represent the catalogue of in-progress or proposed data analytics projects in the agency. The scope of the projects ranges from data collection,

More information

Sharing the experiences of teaching business analytics in a University course

Sharing the experiences of teaching business analytics in a University course Sharing the experiences of teaching business analytics in a University course Dr Michael Lane School of Management and Enterprise Email: Michael.Lane@usq.edu.au Agenda Background to Business Intelligence

More information

TABLEAU COURSE CONTENT. Presented By 3S Business Corporation Inc www.3sbc.com Call us at : 281-823-9222 Mail us at : info@3sbc.com

TABLEAU COURSE CONTENT. Presented By 3S Business Corporation Inc www.3sbc.com Call us at : 281-823-9222 Mail us at : info@3sbc.com TABLEAU COURSE CONTENT Presented By 3S Business Corporation Inc www.3sbc.com Call us at : 281-823-9222 Mail us at : info@3sbc.com Introduction and Overview Why Tableau? Why Visualization? Level Setting

More information

ALTAIR SOFTWARE ASSET OPTIMIZATION USER GUIDE

ALTAIR SOFTWARE ASSET OPTIMIZATION USER GUIDE ALTAIR SOFTWARE ASSET OPTIMIZATION USER GUIDE Table Of Contents What is Altair SAO?... 6 System Architecture... 7 Report Navigation Chart... 8 Report Navigation Chart Dashboard... 9 Report Navigation Chart

More information

Implementing a Web-based Transportation Data Management System

Implementing a Web-based Transportation Data Management System Presentation for the ITE District 6 Annual Meeting, June 2006, Honolulu 1 Implementing a Web-based Transportation Data Management System Tim Welch 1, Kristin Tufte 2, Ransford S. McCourt 3, Robert L. Bertini

More information

Standards for Quality, Affordable for Health Care for All:

Standards for Quality, Affordable for Health Care for All: Standards for Quality, Affordable for Health Care for All: Health Care for All New York (HCFANY) believes that every resident of New York State and the nation must have access to affordable and comprehensive

More information

The Power of Business Intelligence in the Revenue Cycle

The Power of Business Intelligence in the Revenue Cycle The Power of Business Intelligence in the Revenue Cycle Increasing Cash Flow with Actionable Information John Garcia August 4, 2011 Table of Contents Revenue Cycle Challenges... 3 The Goal of Business

More information

Achieving Value from Diverse Healthcare Data

Achieving Value from Diverse Healthcare Data Achieving Value from Diverse Healthcare Data Paul Bleicher, MD, PhD Chief Medical Officer Humedica Boston MA The Information Environment in Healthcare Pharma, Biotech, Devices Hospitals Physicians Pharmacies

More information

Provider Revenue Cycle Management (RCM) and Proposed Solutions

Provider Revenue Cycle Management (RCM) and Proposed Solutions Provider Revenue Cycle Management (RCM) and Proposed Solutions By: Ranjana Maitra General Manager, Manufacturing & Healthcare Vertical Executive Summary It takes more than world-class service to be competitive

More information

I. Create the base view with the data you want to measure

I. Create the base view with the data you want to measure Developing Key Performance Indicators (KPIs) in Tableau The following tutorial will show you how to create KPIs in Tableau 9. To get started, you will need the following: Tableau version 9 Data: Sample

More information

Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff

Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff Whitepaper Data Governance Roadmap for IT Executives Valeh Nazemoff The Challenge IT Executives are challenged with issues around data, compliancy, regulation and making confident decisions on their business

More information

Data Visualization & Dashboard Design Best Practices and Tips

Data Visualization & Dashboard Design Best Practices and Tips Data Visualization & Dashboard Design Best Practices and Tips Understanding the User is the Key to Designing User-Centric Analytical Dashboards User-centric design is Catered specifically to the needs

More information

Data Analytics: Exploiting the Data Warehouse

Data Analytics: Exploiting the Data Warehouse Data Analytics: Exploiting the Data Warehouse Helena Galhardas DEI/IST References A. Vaisman and E. Zimányi, Data Warehouse Systems: Design and Implementation, Springer, 2014 (chpt 9) 2 1 Outline Data

More information

Welcome to the topic on creating key performance indicators in SAP Business One, release 9.1 version for SAP HANA.

Welcome to the topic on creating key performance indicators in SAP Business One, release 9.1 version for SAP HANA. Welcome to the topic on creating key performance indicators in SAP Business One, release 9.1 version for SAP HANA. 1 In this topic, you will learn how to: Use Key Performance Indicators (also known as

More information

mysap ERP FINANCIALS SOLUTION OVERVIEW

mysap ERP FINANCIALS SOLUTION OVERVIEW mysap ERP FINANCIALS SOLUTION OVERVIEW EFFECTIVE FINANCIAL MANAGEMENT ... IS KEY TO BUSINESS SUCCESS mysap ERP FINANCIALS YOUR BUSINESS, YOUR FUTURE, YOUR SUCCESS mysap ERP is the world s most complete

More information

Chapter 82-60 WAC All Payer Claims Database

Chapter 82-60 WAC All Payer Claims Database Chapter 82-60 WAC All Payer Claims Database WAC 82-60-010 Purpose (1) Chapter 43.371 RCW establishes the framework for the creation and administration of a statewide all-payer health care claims database.

More information

SuccessFactors HCM Suite November 2014 Release Version: 1.0 - December 5, 2014. SuccessFactors Learning Programs Administration Guide

SuccessFactors HCM Suite November 2014 Release Version: 1.0 - December 5, 2014. SuccessFactors Learning Programs Administration Guide SuccessFactors HCM Suite November 2014 Release Version: 1.0 - December 5, 2014 Programs Administration Guide Content 1 Change History....3 2 Programs.... 4 2.1 Adding a New Program.... 5 2.2 Assigning

More information

Optimizing Safety Surveillance During Clinical Trials Using Data Visualization Tools

Optimizing Safety Surveillance During Clinical Trials Using Data Visualization Tools Optimizing Safety Surveillance During Clinical Trials Using Data Visualization Tools Laura McKain, M.D., Medical Director, Pharmacovigilance; Tammy Jackson, Director, Preclarus Development, Clinical Innovation;

More information

e-prescription Initiative for Dubai Insured Population

e-prescription Initiative for Dubai Insured Population e-prescription Initiative for Dubai Insured Population and Update May 5, 2013 Components Support Services Committees : DMCC, EDSC Regular Training Sessions & Support Call Center In development, release

More information

Revenue Cycle Management: Practices to Reduce your Accounts Receivable. Speaker Disclosures. Overview 3/8/2016

Revenue Cycle Management: Practices to Reduce your Accounts Receivable. Speaker Disclosures. Overview 3/8/2016 Revenue Cycle Management: Practices to Reduce your Accounts Receivable Presented by: Sarah Hanna President ECS Billing & Consulting North Speaker Disclosures Sarah Hanna is employed by a business that

More information

Practice management system criteria checklist

Practice management system criteria checklist Practice management system criteria checklist The American Medical Association (AMA) and Medical Group Management Association (MGMA) have created the following checklist as a starting point for assessing

More information

MEDICAL DATA MINING. Timothy Hays, PhD. Health IT Strategy Executive Dynamics Research Corporation (DRC) December 13, 2012

MEDICAL DATA MINING. Timothy Hays, PhD. Health IT Strategy Executive Dynamics Research Corporation (DRC) December 13, 2012 MEDICAL DATA MINING Timothy Hays, PhD Health IT Strategy Executive Dynamics Research Corporation (DRC) December 13, 2012 2 Healthcare in America Is a VERY Large Domain with Enormous Opportunities for Data

More information

Using Data Analytics to Detect Fraud

Using Data Analytics to Detect Fraud Using Data Analytics to Detect Fraud Fundamental Data Analysis Techniques 2016 Association of Certified Fraud Examiners, Inc. Discussion Question For each data analysis technique discussed in this section,

More information

PENNSYLVANIA PRIMARY CARE LOAN REPAYMENT PROGRAM

PENNSYLVANIA PRIMARY CARE LOAN REPAYMENT PROGRAM PENNSYLVANIA PRIMARY CARE LOAN REPAYMENT PROGRAM Practice Site Application Reference Guide & Instructions PENNSYLVANIA DEPARTMENT OF HEALTH Bureau of Health Planning Division of Health Professions Development

More information

Clinical & Business Intelligence: An Analytics Executive Review

Clinical & Business Intelligence: An Analytics Executive Review Clinical & Business Intelligence: An Analytics Executive Review Industry Capabilities Available Tools, How & Where Applied February 2013 Introduction Healthcare analytics is the systematic use of data

More information

Pure1 Manage User Guide

Pure1 Manage User Guide User Guide 11/2015 Contents Overview... 2 Pure1 Manage Navigation... 3 Pure1 Manage - Arrays Page... 5 Card View... 5 Expanded Card View... 7 List View... 10 Pure1 Manage Replication Page... 11 Pure1

More information

Massachusetts Medicaid EHR Incentive Payment Program

Massachusetts Medicaid EHR Incentive Payment Program Massachusetts Medicaid EHR Incentive Payment Program Agenda Vision & Goals High-level overview where we are going Medicare vs. Medicaid EHR Incentive Programs Performance and Progress Eligibility Overview

More information

Billing with National Drug Codes (NDCs) Frequently Asked Questions

Billing with National Drug Codes (NDCs) Frequently Asked Questions Billing with National Drug Codes (NDCs) Frequently Asked Questions NDC Overview Converting HCPCS/CPT Units to NDC Units Submitting NDCs on Professional/Ancillary Claims Reimbursement Details For More Information

More information

Enhancements to State Reports

Enhancements to State Reports click the icon to go to the contents The Challenge of Data How and Why of Data Visualization Interactive Dashboards Electronic Data Walls Enhancements to State Reports Next Steps THE CHALLENGE OF DATA

More information

Blue Care Network Physical & Occupational Therapy Utilization Management Guide Published 11/13/2012

Blue Care Network Physical & Occupational Therapy Utilization Management Guide Published 11/13/2012 Blue Care Network Physical & Occupational Therapy Utilization Management Guide Published 11/13/2012 Landmark Healthcare, Inc., oversees outpatient physical, occupational and speech services for BCN members

More information

MEDICARE PART D PRESCRIPTION DRUG COVERAGE 2016

MEDICARE PART D PRESCRIPTION DRUG COVERAGE 2016 PO Box 350 Willimantic, Connecticut 06226 (860)456-7790 (800)262-4414 1025 Connecticut Ave, NW Suite 709 Washington, DC 20036 (202)293-5760 MEDICARE PART D PRESCRIPTION DRUG COVERAGE 2016 Se habla español

More information

Student Blue Portal. Table of Contents

Student Blue Portal. Table of Contents Student Blue Portal Introduction The Student Blue tool is used by students enrolled and who want to enroll in the Student Blue plan. Students will have the ability to manage the health coverage enrollment

More information

User Guide. Analytics Desktop Document Number: 09619414

User Guide. Analytics Desktop Document Number: 09619414 User Guide Analytics Desktop Document Number: 09619414 CONTENTS Guide Overview Description of this guide... ix What s new in this guide...x 1. Getting Started with Analytics Desktop Introduction... 1

More information

Electronic Medical Records Getting It Right and Going to Scale

Electronic Medical Records Getting It Right and Going to Scale Electronic Medical Records Getting It Right and Going to Scale W. Ed Hammond, Ph.D. Duke University Medical Center 02/03/2000 e-hammond, Duke 0 Driving Factors Patient Safety Quality Reduction in cost

More information

An End-to-End Population Health Management for High Risk Patients

An End-to-End Population Health Management for High Risk Patients Summary Supporting Facts and Figures SAP HANA Solution Overview A fully integrated mobile in-home health infrastructure and data analytics solution for population health management An End-to-End Population

More information

SuccessFactors Learning: Scheduling Management

SuccessFactors Learning: Scheduling Management SuccessFactors Learning: Scheduling Management Classroom Guide v 6.4 For SuccessFactors Learning v 6.4 Last Modified 08/30/2011 2011 SuccessFactors, Inc. All rights reserved. Execution is the Difference

More information

The Business Case for Using Big Data in Healthcare

The Business Case for Using Big Data in Healthcare SAP Thought Leadership Paper Healthcare and Big Data The Business Case for Using Big Data in Healthcare Exploring How Big Data and Analytics Can Help You Achieve Quality, Value-Based Care Table of Contents

More information

Meaningful Use. Medicare and Medicaid EHR Incentive Programs

Meaningful Use. Medicare and Medicaid EHR Incentive Programs Meaningful Use Medicare and Medicaid Table of Contents What is Meaningful Use?... 1 Table 1: Patient Benefits... 2 What is an EP?... 4 How are Registration and Attestation Being Handled?... 5 What are

More information

Data Mining - Healthcare Data

Data Mining - Healthcare Data Ratna Madhuri Maddipatla al. International Journal of Recent Research Aspects ISSN: 2349-7688, Vol. 2, Issue Data Mining - Healthcare Data Ratna Madhuri Maddipatla 1, Nagamani Maddipatla 2 1 Graduate Student,

More information

Financial and Population Analytics for Accountable Care Organizations SEPTEMBER 20, 2012

Financial and Population Analytics for Accountable Care Organizations SEPTEMBER 20, 2012 Financial and Population Analytics for Accountable Care Organizations Valence Biographies Lori Fox Ward is Senior Vice President of Clinical Integration for Valence Health where her primary role involves

More information

White Paper April 2006

White Paper April 2006 White Paper April 2006 Table of Contents 1. Executive Summary...4 1.1 Scorecards...4 1.2 Alerts...4 1.3 Data Collection Agents...4 1.4 Self Tuning Caching System...4 2. Business Intelligence Model...5

More information

Digital Signatures in the Legal Market:

Digital Signatures in the Legal Market: The Digital Signature Company Digital Signatures in the Legal Market: How to Select the Right Solution for Your Firm or Legal Department Introduction A shift is taking place in the relationship between

More information

Medicare Appeals: Part D Drug Denials. December 16, 2014

Medicare Appeals: Part D Drug Denials. December 16, 2014 Medicare Appeals: Part D Drug Denials December 16, 2014 2013 Appeals Statistics by Type 23,716 Part D Reconsideration Appeals* Appeals Type Percentage of Total Appeals Appeals Per Million Medicare Beneficiaries

More information

Signal Hub for Wealth Management

Signal Hub for Wealth Management Signal Hub for Wealth Management Overview of Design and Background The Signal Hub for Wealth Management, which Opera Solutions has deployed to the wealth management industry, has required combining a variety

More information

CMS Data Resources. Informing the Affordable Care Act. Jason Petroski, PhD, MPA Director, Division of Survey Management and Data Analysis

CMS Data Resources. Informing the Affordable Care Act. Jason Petroski, PhD, MPA Director, Division of Survey Management and Data Analysis CMS Data Resources Informing the Affordable Care Act Jason Petroski, PhD, MPA Director, Division of Survey Management and Data Analysis December 5, 2012 Session Overview Describe Current and Planned Survey

More information

Using Electronic Medical Records Data for Health Services Research Case Study: Development and Use of Ambulatory Adverse Event Trigger Tools

Using Electronic Medical Records Data for Health Services Research Case Study: Development and Use of Ambulatory Adverse Event Trigger Tools Using Electronic Medical Records Data for Health Services Research Case Study: Development and Use of Ambulatory Adverse Event Trigger Tools Hillary Mull VA Boston Healthcare System Boston University School

More information

4 NCAC 10F.0101 is proposed for amendment as follows: SUBCHAPTER 10F REVISED WORKERS COMPENSATION MEDICAL FEE SCHEDULE ELECTRONIC BILLING RULES

4 NCAC 10F.0101 is proposed for amendment as follows: SUBCHAPTER 10F REVISED WORKERS COMPENSATION MEDICAL FEE SCHEDULE ELECTRONIC BILLING RULES 1 1 1 1 1 1 NCAC F.01 is proposed for amendment as follows: SUBCHAPTER F REVISED WORKERS COMPENSATION MEDICAL FEE SCHEDULE ELECTRONIC BILLING RULES SECTION.00 RULES ADMINISTRATION NCAC F.01 ELECTRONIC

More information

Monitoring the Online Marketplace

Monitoring the Online Marketplace Market Track s Actionable Insights Monitoring the Online Marketplace Developing a plan to stay on top of fluctuations in products and pricing online Key Questions Do you know how your products are priced

More information

Tapping the Power. of Service Analytics

Tapping the Power. of Service Analytics Tapping the Power WHITEPAPER of Service Analytics An Astea International White Paper 1 Introduction Field service organizations now have access to an unprecedented amount of data about the performance

More information

206-478-8227 www.healthdataconsulting.com. Getting Specific. New ICD-10 codes. Will they make a difference?

206-478-8227 www.healthdataconsulting.com. Getting Specific. New ICD-10 codes. Will they make a difference? 206-478-8227 www.healthdataconsulting.com Getting Specific New ICD-10 codes. Will they make a difference? [First in a series on getting to specific documentation and coding] Joseph C Nichols MD Principal

More information

NOUS. Health Management. Importance of Population. White Paper INFOSYSTEMS LEVERAGING INTELLECT

NOUS. Health Management. Importance of Population. White Paper INFOSYSTEMS LEVERAGING INTELLECT NOUS INFOSYSTEMS LEVERAGING INTELLECT White Paper Importance of Population Health Abstract The revised healthcare regulations in US markets like the Affordable Care Act (ACA) law, the demands of providing

More information

Improved revenue cycle management for Epic. Cathrina Caldwell, CPC, CPC-H Director, Sales Product Consulting

Improved revenue cycle management for Epic. Cathrina Caldwell, CPC, CPC-H Director, Sales Product Consulting Improved revenue cycle management for Epic Cathrina Caldwell, CPC, CPC-H Director, Sales Product Consulting Agenda OptumInsight Overview Traditional physician claim workflow A better way Claims Manager

More information

Principles on Health Care Reform

Principles on Health Care Reform American Heart Association Principles on Health Care Reform The American Heart Association has a longstanding commitment to approaching health care reform from the patient s perspective. This focus including

More information

MEDICARE PRESCRIPTION SAVINGS GUIDE

MEDICARE PRESCRIPTION SAVINGS GUIDE MEDICARE PRESCRIPTION SAVINGS GUIDE Since the beginning of Medicare Part D, we ve learned what s most important to you getting trusted information and lowering your prescription costs. We re here to help

More information

Physician, Health Care Professional, Facility and Ancillary Provider Administrative Guide for American Medical Security Life Insurance Company

Physician, Health Care Professional, Facility and Ancillary Provider Administrative Guide for American Medical Security Life Insurance Company Physician, Health Care Professional, Facility and Ancillary Provider Administrative Guide for American Medical Security Life Insurance Company Insureds 2009 Contents How to contact us... 2 Our claims process...

More information

Cardinal Health Specialty Solutions. Cardinal Health Geographic Insights Maximize Market Opportunity with Actionable Insights from Data Visualization

Cardinal Health Specialty Solutions. Cardinal Health Geographic Insights Maximize Market Opportunity with Actionable Insights from Data Visualization Cardinal Health Specialty Solutions Cardinal Health Geographic Insights Maximize Market Opportunity with Actionable Insights from Data Visualization Cardinal Health Geographic Insights lets you Dig deep

More information

Agile QA Process. Anand Bagmar Anand.Bagmar@thoughtworks.com abagmar@gmail.com http://www.essenceoftesting.blogspot.com. Version 1.

Agile QA Process. Anand Bagmar Anand.Bagmar@thoughtworks.com abagmar@gmail.com http://www.essenceoftesting.blogspot.com. Version 1. Agile QA Process Anand Bagmar Anand.Bagmar@thoughtworks.com abagmar@gmail.com http://www.essenceoftesting.blogspot.com Version 1.1 Agile QA Process 1 / 12 1. Objective QA is NOT the gatekeeper of the quality

More information

1 ALPHA-1 FOUNDATION. Private Insurance: Virtual Support Group Telecall and Webinar

1 ALPHA-1 FOUNDATION. Private Insurance: Virtual Support Group Telecall and Webinar 1 ALPHA-1 FOUNDATION Open Enrollment for Medicare and Private Insurance: How to choose the plan that will work for you Virtual Support Group Telecall and Webinar Prepare Yourself Know your healthcare needs

More information

Data Visualization for the Practitioner

Data Visualization for the Practitioner Data Visualization for the Practitioner A Quick Introduction and Best Practices for Busy Research Professionals Presented by Brian London, Travel Industry Indicators Data Visualization for Practitioners

More information

This glossary provides simple and straightforward definitions of key terms that are part of the health reform law.

This glossary provides simple and straightforward definitions of key terms that are part of the health reform law. This glossary provides simple and straightforward definitions of key terms that are part of the health reform law. A Affordable Care Act Also known as the ACA. A law that creates new options for people

More information

How To File A Claim Electronically

How To File A Claim Electronically Revenue Cycle Management: Tips & Tools 2010 Annual Educational Seminar March 10, 2010 Presented By: Cindy Tipton, Coding & Compliance Director cindy_tipton@med3000.com What is the Revenue Cycle or Life

More information

Using Big Data to Improve the Mortgage Industry Operating Model

Using Big Data to Improve the Mortgage Industry Operating Model Using Big Data to Improve the Mortgage Industry Operating Model Overview of the HMDA S B A Score By David K. Moffat Mortgage TrueView December 2014 Copyright 2014 Mortgage TrueView Inc. All Rights Reserved

More information

Predictive Modeling for Workers Compensation Claims

Predictive Modeling for Workers Compensation Claims Predictive Modeling for Workers Compensation Claims AASCIF Super Conference Kirsten C. Hernan Deloitte Consulting LLP October 4, 2012 NOTICE: THIS DOCUMENT IS PROPRIETARY AND CONFIDENTIAL This document

More information

Frequently Asked Questions About Your Hospital Bills

Frequently Asked Questions About Your Hospital Bills Frequently Asked Questions About Your Hospital Bills The Registration Process Why do I have to verify my address each time? Though address and telephone numbers remain constant for approximately 70% of

More information

How Hospitals Can Use Claims Data to Produce Innovative Analytics

How Hospitals Can Use Claims Data to Produce Innovative Analytics How Hospitals Can Use Claims Data to Produce Innovative Analytics Providing revenue cycle insight to help healthcare leaders build and manage a more profitable organization. What if healthcare providers

More information

DME Providers. New Requirement When Billing Drug-Related HCPCS (Including All J-Codes)

DME Providers. New Requirement When Billing Drug-Related HCPCS (Including All J-Codes) Kansas Medical Assistance Program June 2006 Vertical Perspective Provider Bulletin Number 657b DME Providers New Requirement When Billing Drug-Related HCPCS (Including All J-Codes) To comply with Centers

More information

Web Analytics. FAQs MONITOR, ANALYZE, TRACK. Page 1

Web Analytics. FAQs MONITOR, ANALYZE, TRACK. Page 1 Web Analytics FAQs MONITOR, ANALYZE, TRACK Page 1 Web Analytics FAQs Monitor, Analyze, Track This document contains a list of frequently asked questions on the following areas of the Web Analytics system:

More information

Health Value Dashboard FAQ

Health Value Dashboard FAQ Health Value Dashboard FAQ General questions 1. What is the HPIO Health Value Dashboard? The HPIO Health Value Dashboard is a tool to track Ohio s progress towards health value the combination of population

More information

Core Banking Business Intelligence: Transform Data into Information. Kevin Round, Product Manager Xamine BI Products

Core Banking Business Intelligence: Transform Data into Information. Kevin Round, Product Manager Xamine BI Products Core Banking Business Intelligence: Transform Data into Information Kevin Round, Product Manager Xamine BI Products The Importance of Knowing Arthur Clarke once observed that cave dwellers froze to death

More information

COMMUNICATION ASSISTANT BROCHURE

COMMUNICATION ASSISTANT BROCHURE COMMUNICATION ASSISTANT BROCHURE ENHANCE TEAM COLLABORATION Panasonic Communication Assistant is a range of enhanced Unified Communications (UC) productivity applications that converges business telephony

More information

Visualizing Relationships and Connections in Complex Data Using Network Diagrams in SAS Visual Analytics

Visualizing Relationships and Connections in Complex Data Using Network Diagrams in SAS Visual Analytics Paper 3323-2015 Visualizing Relationships and Connections in Complex Data Using Network Diagrams in SAS Visual Analytics ABSTRACT Stephen Overton, Ben Zenick, Zencos Consulting Network diagrams in SAS

More information

CoolaData Predictive Analytics

CoolaData Predictive Analytics CoolaData Predictive Analytics 9 3 6 About CoolaData CoolaData empowers online companies to become proactive and predictive without having to develop, store, manage or monitor data themselves. It is an

More information

Incentives to Accelerate EHR Adoption

Incentives to Accelerate EHR Adoption Incentives to Accelerate EHR Adoption The passage of the American Recovery and Reinvestment Act (ARRA) of 2009 provides incentives for eligible professionals (EPs) to adopt and use electronic health records

More information

Project Portfolio Management Information System

Project Portfolio Management Information System Project Portfolio Management Information System Highlights It provides a single point of access to proposal and project information. It streamlines proposal preparation during all important tendering phases

More information