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Gain insights
and take action
Data Analytics in Healthcare
1
2
3
4
5
The right data
The right analysis
The right modeling
The right conclusions
The right actions
The right stuff.
NextGen Healthcare puts business
intelligence and analytics at your fingertips.
Harness, aggregate, analyze, and interpret patient data directly from our integrated
NextGen®
Ambulatory EHR and NextGen®
Practice Management solutions.
IDENTIFY
high-risk patients for improved
population health management
and outcomes
ENSURE
a more successful transition from
volume-based to value-based
care and payment
IMPROVE
productivity, increase
reimbursements, and accelerate
cash flow
Watch an online demo | Request a personal demo | Email us at Results@NextGen.com | Call us at 855-510-6398
Ambulatory Practice
Management
AnalyticsPopulation
Health
InteroperabilityInSight
Reporting
The right stuff
Data analytics done right is kind of like the Five Rights of
Medication Administration… but with a data analytics twist
Chapter 1 The right data
Chapter 2 The right analysis
Chapter 3 The right modeling
Chapter 4 The right conclusions
Chapter 5 The right actions
…and the right to ask, “Are we done yet?”
What’s the
big deal about
big data in
healthcare?
Find out in this
new eBook.
A new study commissioned by EMC
asked federal agencies how big data
can help them. Among the results
published recently:
The healthcare industry is chomping at
the bit for data analytics. Because the
innovative answers needed to improve
patient experiences and the health of
populations, while simultaneously
reducing costs, comes from insights,
trends, and clues hiding in big data.
The right dataand the right to get excited!
How will Big Data Help?
say Big Data will help track and
manage population health more
efficiently
say Big Data will significantly improve
patient care within the military health
and VA systems
say Big Data will enhance the ability to
deliver preventative care
63%
62%
60%
CHAPTER
ONE
$450 billionLast year, McKinsey  Company
reported that big data could help save
American taxpayers $450 billion in
annual healthcare costs. That’s big.
When Dr. Karen DeSalvo took over as
head of the Office of the National
Coordinator (ONC) she said the ONC’s
agenda will launch a new discussion
about interoperability, big data use, and
patient-generated data, plus the security
required to support all three.
High-functioning health information
technology (HIT) analytics can handle
different data formats originating
from scores of different sources.
Which is why “big data” and
interoperability are two health
IT concepts you can’t ignore.
Right from the top
“The underpinnings of EHRs need
to be reconfigured to support
the purposes of big data.
”
Dr. Karen DeSalvo
National Coordinator for HIT
Please don’t. There’s no reason to. Except if
you’re not preparing properly for big data.
Regardless of your healthcare sector, your
income will be tied to your performance,
which will be evaluated with data analytics
and quality reporting.
The Meaningful Use EHR incentive
program, quality-based reimbursement
models like Patient Centered Medical
Homes (PCMHs) and Accountable Care
Organizations (ACOs), and the Physician
Quality Reporting System (PQRS) all
rely on reporting and healthcare data
analytics output.
With the transformation to value-
based care, health data analytics
is at the heart of accountable,
collaborative care.
The right to panicif you’re not prepared.
The right analysisData Analytics 101: What you need to know.
CHAPTER
TWO
Ambulatory and
Inpatient EHRs
1
Physical therapy4
pharmacies3
labs/radiology/
ancillary testing
2
extended care
facilities
5
nursing homes6
medical
examiner
8
Data for healthcare
analytics comes from
diverse sources including
but not limited to:
7disease
registr ies
hospice care
facilites
12
behavioral health11
community
health centers
13
patient -generated data14
homecare
organizations
15
16specialty and
sub-specialty
practices
10
public health
agencies
correctional9
New big data sources beyond
the EHR may include genomics,
social determinants of health, and
combining data from multiple
body systems, to name a few.
Care for a brontobyte?
Ten to the power of 27 [1+27 zeroes] is
a brontobyte. It’s where big data is
headed. Today, big data is happening on
the planet at the yottabyte level [1024
];
one yottabyte = 250 trillion DVDs.
Today’s data scientist uses Yottabytes to
describe how much government data the
NSA or FBI have on people altogether.
In the near future, Brontobyte will be
the measurement to describe the type of
sensor data that will be generated from
the IoT (Internet of Things).
Resource:
http://www.theregister.co.uk/2012/12/04/
hp_discover_autonomy_vertica_big_data/
Analytics 101:
How big is big?
Brontobyte
This will be our digital
universe tomorrow...
1027
1024
Yottabyte
This is our digital
universe today
1018
Exabyte
1EB of data is created
on the Internet each
day - 250 million DVDs
1015
Petabyte
The CERN Large Hadron
Collider generates
1PB per second
1012
Terabyte
500TB of new data per
day are ingested in
Facebook databases
109
Gigabyte
106
Megabyte
1021
Zetabyte
1.3 ZB network
traffic by 2016
Data analyticsdrives population health.
Integrated HIT with data analytics
functionality. That’s your goal.
You’ll need data analytics functionality in
your HIT system to implement population
health properly… and profitably. Same
with coordinated care. Ditto for new
reimbursement models. Ditto to:
• track and manage population health
more efficiently
• enhance preventive care
• reduce per capita cost of patient care
• enhance progress in diagnostics and
medical research
• understand retail healthcare trends
• negotiate properly with payers
The right modelingWhat is predictive analytics?
It’s when you extract information
from existing data sets in order
to determine patterns and predict
potential future outcomes and
trends. Predictive analytics will not tell you
what will happen in the future. It helps you
forecast what might happen and includes
what-if scenarios and risk assessments.
In Gartner’s IT Glossary, among the
characteristics of predictive analytics most
important to healthcare reform is rapid
analysis of massive quantities of data (real-
time/hours/day… not months); emphasis
on the relevance of resulting insights; and
an emphasis on ease of use.
CHAPTER
THREE
We just covered predictive
analytics. How about descriptive
and prescriptive analytics?
Descriptive analytics is the simplest
form of analytics. It’s the easiest to do
because it’s using data to describe what
happened to patients in the past. It’s the
most common form of data analytics being
used in healthcare today.
Predictive analytics is in the middle of
this descriptive, predictive, and prescriptive
analytics triad. It has the potential to
improve healthcare delivery by analyzing
all aggregated current and historical
patient data to identify high-risk patients
and opportunities for intervention
and treatment.
Prescriptive analytics is the most
advanced of these three types of data
analytics. In healthcare, prescriptive
analytics is what’s growing clinical decision
support platforms. It goes beyond
descriptive and predictive analytics by
recommending one or more courses of
action – and including the likely outcome
of each decision or action.
What’s so great about
predicitive analytics?
BIGDATA
ANALYTICS
Predictive analytics can significantly increase the potential
to improve care and population health. By analyzing all
aggregated current and historical patient data, providers
can identify high-risk patients and opportunities for
intervention and treatment. Providers assess risk level based
on a particular set of health conditions and clinical decision
making to develop an effective care plan.
The goal of predictive modeling is to identify and actively
manage high-risk patients, intervene before they become
critical, and reduce or eliminate unnecessary ED visits and
hospital admissions. Each of these steps can drive down
healthcare costs, improve clinical outcomes for patients,
and promote a healthier patient panel.
Data analytics functionality
creates models used to predict
scenarios and probable trends.
The analytics triad
for healthcare.
Descriptive
analytics
Predictive
analytics
Prescriptive
analytics
The right conclusionsWhat’s the secret?
It’s not a secret.
It’s the patient registry.
A patient registry (also called a central data
repository or master patient index “MPI”)
is a centralized database that aggregates
patient data from multiple healthcare
providers and organizations (disparate
data sets – see page 23.
Providers and authorized users can
identify and query patient groups through
myriad segmentations and relational
database functions. For example, treatment
queries can target patients by specific
diagnosis or conditions (e.g., a risk factor)
that predispose them for a health-related
event. These patient groups are called
patient cohorts.
CHAPTER
FOUR
The patient registry seamlessly
aggregates multiple disparate data
sources, payer data, preventative,
and clinical quality scores to improve
clinical and financial outcomes
across the practice.
And why shouldn’t they? Public and private payers are using
their analytics expertise to mine data for the answers they need to
build new pay for performance provider reimbursement models.
Payers want to know everything. They monitor, track, measure,
manage, and report healthcare services, workflows, and outcomes
using state-of-the-art data analytics. And they know a healthier
population means lower costs for both payers and patients.
Payers just love, Love,
LOVE data analytics.
The right actionsHow do answers from data analytics create action?
Use results from thoughtful
healthcare data analytics programs
to help create innovative
approaches that enable you
to continually improve your
performance, your other providers’
performances, or the performance
of your practice or facility.
• Evaluate provider performance in managing disease(s)
• Adjust treatment plans in accordance with evidence-based guidelines
• Better understand and treat diseases that influence multiple body systems
• Identify a patient’s risk level through a hybrid data assessment – clinical, social, cultural
• Develop treatment programs that align with recommended clinical guidelines
• Engage patients in a meaningful care transition program to ensure continuity of care
• Create care coordination protocols driven by evidence-based medicine
and personalized care
• Cultivate better transition of care to help reduce readmissions and decrease costs
• Evaluate patient outcome trends to negotiate fair reimbursement for patient cohorts
• Rank yourself against your peers and national healthcare benchmarks; know where
you stand, be a savvy healthcare reform provider
CHAPTER
FIVE
Do more with lessAnalytics makes it happen
Like we said at the beginning of
this eBook: You want answers.
But you’re searching for them in a
healthcare setting that demands
doing more with less, every day.
Only sophisticated analytics can create
the insights and data patterns you need
to create new actions that’ll get your
toughest questions answered. It’s the way
to intelligently leverage your data.
Payers can figure out which patients are
most likely to generate the highest costs.
Providers will discover which of their
patients aren’t taking their meds. Hospital
executives can better understand the
probabilities of relapse and readmission.
That’s why more and more healthcare
professionals are interested in using big
data and analytics to prevent problems
before they occur in healthy patients.
“Advanced analytics [in healthcare]
allows you to be much more
sophisticated in where you
intervene and with what.
”
Dr. Bob Nease
Chief Scientist, Express Scripts
Are we done yet?Almost. But we need to mention interoperability.
Without interoperability, big data
and data analytics are useless.
HIT systems must achieve high degrees of
interoperability and data sharing for big
data to impact real-time clinical decision
making across the nation. Disparate
systems need to work together. Seamlessly.
We’re not there yet, but like Dr. DeSalvo’s
quote on page 6 of this eBook, the use of
big data across interoperable HIT systems
is the essence of ONC’s new 10-year plan.
(Told you it was quick!)
When data resides in
multiple disparate silos,
payers and providers cannot
cost-effectively aggregate,
analyze, and assess risk.
Hint: It’s a trick question.
Here’s a not-so-secret secret: Lots of
providers vote “yes” for data analytics and
“no” for wanting to do it. They want the
value; the new insights and answers. But
they don’t want the deep data dive for fear
of not understanding what to do or how to
do it and for wasting a lot of time trying to
figure it out.
That’s where your HIT vendor can help.
Don’t try to figure this out on your own.
You’re a medical professional, not a
data scientist.
Work with a committed, long-term HIT
partner. They’ll have a better understanding
of how to integrate and leverage data
analytics into your daily EHR and practice
management workflows.
And remember: A data analytics initiative
without an interoperability strategy is
like writing a book that no one can read.
Ask your vendor to share their long term
interoperability road map.
“Yes!” or “No!”
for data analytics?
1 Gain insights and take __________________.
2 The healthcare industry is chomping at the bit for__________________ __________________.
3 Dr. Karen DeSalvo said the underpinnings of EHRs need to be reconfigured to support the purposes of __________ __________.
4 A brontobyte is ten to the power of __________________.
5 Our digital universe today is happening at the __________________ level. One of these = 250 trillion DVDs.
6 A central repository or master patient index is called a __________________ __________________.
7 Patient groups are called __________________.
8 Predictive analytics increases the potential to __________________ __________________.
9 HIT systems must achieve high degrees of __________________.
10 Data analytics without interoperability is like ____________________________________________________.
*Answer key next page
Pop Quiz!
Go ahead. Surprise yourself with how much you now know about data analytics!
Copyright © 2014 NextGen Healthcare Information Systems, LLC. All rights reserved.
NextGen is a registered trademark of QSI Management, LLC, an affiliate of NextGen
Healthcare Information Systems, LLC. All other names and marks are the property of their
respective owners. Patent pending.
NextGen®
Ambulatory EHR version 5.8 is ONC-HIT 2014 Edition certified as a complete EHR.
795 Horsham Road, Horsham, PA 19044
p: 215.657.7010 | f: 215.657.7011 | nextgen.com
NextGen Healthcare Solutions.
We provide HIT solutions, including an award-winning,
integrated EHR and Practice Management system along
with Revenue Cycle Management (RCM) expertise and
interoperability solutions to approximately 85,000 physicians,
specialists, and dentists spanning in excess of 4,400 group
practices and more than 300 hospitals across the nation.
Our providers have attested for more than a half billion
dollars (and growing) in Meaningful Use incentive revenue.
*Answer Key: 1) action; 2) data analytics; 3) big data; 4) 27; 5) yottabyte;
6) patient registry; 7) cohorts; 8) improve care; 9) interoperability;
10) writing a book that no one can read.
To learn more about our proven solutions, including
data analytics and system interoperability, contact us at
Results@nextgen.com or call 855-510-6398.

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eBook - Data Analytics in Healthcare

  • 1. Gain insights and take action Data Analytics in Healthcare 1 2 3 4 5 The right data The right analysis The right modeling The right conclusions The right actions The right stuff.
  • 2. NextGen Healthcare puts business intelligence and analytics at your fingertips. Harness, aggregate, analyze, and interpret patient data directly from our integrated NextGen® Ambulatory EHR and NextGen® Practice Management solutions. IDENTIFY high-risk patients for improved population health management and outcomes ENSURE a more successful transition from volume-based to value-based care and payment IMPROVE productivity, increase reimbursements, and accelerate cash flow Watch an online demo | Request a personal demo | Email us at Results@NextGen.com | Call us at 855-510-6398 Ambulatory Practice Management AnalyticsPopulation Health InteroperabilityInSight Reporting
  • 3. The right stuff Data analytics done right is kind of like the Five Rights of Medication Administration… but with a data analytics twist Chapter 1 The right data Chapter 2 The right analysis Chapter 3 The right modeling Chapter 4 The right conclusions Chapter 5 The right actions …and the right to ask, “Are we done yet?” What’s the big deal about big data in healthcare? Find out in this new eBook.
  • 4. A new study commissioned by EMC asked federal agencies how big data can help them. Among the results published recently: The healthcare industry is chomping at the bit for data analytics. Because the innovative answers needed to improve patient experiences and the health of populations, while simultaneously reducing costs, comes from insights, trends, and clues hiding in big data. The right dataand the right to get excited! How will Big Data Help? say Big Data will help track and manage population health more efficiently say Big Data will significantly improve patient care within the military health and VA systems say Big Data will enhance the ability to deliver preventative care 63% 62% 60% CHAPTER ONE
  • 5. $450 billionLast year, McKinsey Company reported that big data could help save American taxpayers $450 billion in annual healthcare costs. That’s big.
  • 6. When Dr. Karen DeSalvo took over as head of the Office of the National Coordinator (ONC) she said the ONC’s agenda will launch a new discussion about interoperability, big data use, and patient-generated data, plus the security required to support all three. High-functioning health information technology (HIT) analytics can handle different data formats originating from scores of different sources. Which is why “big data” and interoperability are two health IT concepts you can’t ignore. Right from the top
  • 7. “The underpinnings of EHRs need to be reconfigured to support the purposes of big data. ” Dr. Karen DeSalvo National Coordinator for HIT
  • 8. Please don’t. There’s no reason to. Except if you’re not preparing properly for big data. Regardless of your healthcare sector, your income will be tied to your performance, which will be evaluated with data analytics and quality reporting. The Meaningful Use EHR incentive program, quality-based reimbursement models like Patient Centered Medical Homes (PCMHs) and Accountable Care Organizations (ACOs), and the Physician Quality Reporting System (PQRS) all rely on reporting and healthcare data analytics output. With the transformation to value- based care, health data analytics is at the heart of accountable, collaborative care. The right to panicif you’re not prepared.
  • 9. The right analysisData Analytics 101: What you need to know. CHAPTER TWO
  • 10. Ambulatory and Inpatient EHRs 1 Physical therapy4 pharmacies3 labs/radiology/ ancillary testing 2 extended care facilities 5 nursing homes6 medical examiner 8 Data for healthcare analytics comes from diverse sources including but not limited to: 7disease registr ies
  • 11. hospice care facilites 12 behavioral health11 community health centers 13 patient -generated data14 homecare organizations 15 16specialty and sub-specialty practices 10 public health agencies correctional9
  • 12. New big data sources beyond the EHR may include genomics, social determinants of health, and combining data from multiple body systems, to name a few.
  • 13. Care for a brontobyte? Ten to the power of 27 [1+27 zeroes] is a brontobyte. It’s where big data is headed. Today, big data is happening on the planet at the yottabyte level [1024 ]; one yottabyte = 250 trillion DVDs. Today’s data scientist uses Yottabytes to describe how much government data the NSA or FBI have on people altogether. In the near future, Brontobyte will be the measurement to describe the type of sensor data that will be generated from the IoT (Internet of Things). Resource: http://www.theregister.co.uk/2012/12/04/ hp_discover_autonomy_vertica_big_data/ Analytics 101: How big is big? Brontobyte This will be our digital universe tomorrow... 1027 1024 Yottabyte This is our digital universe today 1018 Exabyte 1EB of data is created on the Internet each day - 250 million DVDs 1015 Petabyte The CERN Large Hadron Collider generates 1PB per second 1012 Terabyte 500TB of new data per day are ingested in Facebook databases 109 Gigabyte 106 Megabyte 1021 Zetabyte 1.3 ZB network traffic by 2016
  • 14. Data analyticsdrives population health. Integrated HIT with data analytics functionality. That’s your goal. You’ll need data analytics functionality in your HIT system to implement population health properly… and profitably. Same with coordinated care. Ditto for new reimbursement models. Ditto to: • track and manage population health more efficiently • enhance preventive care • reduce per capita cost of patient care • enhance progress in diagnostics and medical research • understand retail healthcare trends • negotiate properly with payers
  • 15. The right modelingWhat is predictive analytics? It’s when you extract information from existing data sets in order to determine patterns and predict potential future outcomes and trends. Predictive analytics will not tell you what will happen in the future. It helps you forecast what might happen and includes what-if scenarios and risk assessments. In Gartner’s IT Glossary, among the characteristics of predictive analytics most important to healthcare reform is rapid analysis of massive quantities of data (real- time/hours/day… not months); emphasis on the relevance of resulting insights; and an emphasis on ease of use. CHAPTER THREE
  • 16. We just covered predictive analytics. How about descriptive and prescriptive analytics? Descriptive analytics is the simplest form of analytics. It’s the easiest to do because it’s using data to describe what happened to patients in the past. It’s the most common form of data analytics being used in healthcare today. Predictive analytics is in the middle of this descriptive, predictive, and prescriptive analytics triad. It has the potential to improve healthcare delivery by analyzing all aggregated current and historical patient data to identify high-risk patients and opportunities for intervention and treatment. Prescriptive analytics is the most advanced of these three types of data analytics. In healthcare, prescriptive analytics is what’s growing clinical decision support platforms. It goes beyond descriptive and predictive analytics by recommending one or more courses of action – and including the likely outcome of each decision or action. What’s so great about predicitive analytics? BIGDATA ANALYTICS
  • 17. Predictive analytics can significantly increase the potential to improve care and population health. By analyzing all aggregated current and historical patient data, providers can identify high-risk patients and opportunities for intervention and treatment. Providers assess risk level based on a particular set of health conditions and clinical decision making to develop an effective care plan. The goal of predictive modeling is to identify and actively manage high-risk patients, intervene before they become critical, and reduce or eliminate unnecessary ED visits and hospital admissions. Each of these steps can drive down healthcare costs, improve clinical outcomes for patients, and promote a healthier patient panel. Data analytics functionality creates models used to predict scenarios and probable trends. The analytics triad for healthcare. Descriptive analytics Predictive analytics Prescriptive analytics
  • 18. The right conclusionsWhat’s the secret? It’s not a secret. It’s the patient registry. A patient registry (also called a central data repository or master patient index “MPI”) is a centralized database that aggregates patient data from multiple healthcare providers and organizations (disparate data sets – see page 23. Providers and authorized users can identify and query patient groups through myriad segmentations and relational database functions. For example, treatment queries can target patients by specific diagnosis or conditions (e.g., a risk factor) that predispose them for a health-related event. These patient groups are called patient cohorts. CHAPTER FOUR
  • 19. The patient registry seamlessly aggregates multiple disparate data sources, payer data, preventative, and clinical quality scores to improve clinical and financial outcomes across the practice.
  • 20. And why shouldn’t they? Public and private payers are using their analytics expertise to mine data for the answers they need to build new pay for performance provider reimbursement models. Payers want to know everything. They monitor, track, measure, manage, and report healthcare services, workflows, and outcomes using state-of-the-art data analytics. And they know a healthier population means lower costs for both payers and patients. Payers just love, Love, LOVE data analytics.
  • 21. The right actionsHow do answers from data analytics create action? Use results from thoughtful healthcare data analytics programs to help create innovative approaches that enable you to continually improve your performance, your other providers’ performances, or the performance of your practice or facility. • Evaluate provider performance in managing disease(s) • Adjust treatment plans in accordance with evidence-based guidelines • Better understand and treat diseases that influence multiple body systems • Identify a patient’s risk level through a hybrid data assessment – clinical, social, cultural • Develop treatment programs that align with recommended clinical guidelines • Engage patients in a meaningful care transition program to ensure continuity of care • Create care coordination protocols driven by evidence-based medicine and personalized care • Cultivate better transition of care to help reduce readmissions and decrease costs • Evaluate patient outcome trends to negotiate fair reimbursement for patient cohorts • Rank yourself against your peers and national healthcare benchmarks; know where you stand, be a savvy healthcare reform provider CHAPTER FIVE
  • 22. Do more with lessAnalytics makes it happen Like we said at the beginning of this eBook: You want answers. But you’re searching for them in a healthcare setting that demands doing more with less, every day. Only sophisticated analytics can create the insights and data patterns you need to create new actions that’ll get your toughest questions answered. It’s the way to intelligently leverage your data. Payers can figure out which patients are most likely to generate the highest costs. Providers will discover which of their patients aren’t taking their meds. Hospital executives can better understand the probabilities of relapse and readmission. That’s why more and more healthcare professionals are interested in using big data and analytics to prevent problems before they occur in healthy patients.
  • 23. “Advanced analytics [in healthcare] allows you to be much more sophisticated in where you intervene and with what. ” Dr. Bob Nease Chief Scientist, Express Scripts
  • 24. Are we done yet?Almost. But we need to mention interoperability. Without interoperability, big data and data analytics are useless. HIT systems must achieve high degrees of interoperability and data sharing for big data to impact real-time clinical decision making across the nation. Disparate systems need to work together. Seamlessly. We’re not there yet, but like Dr. DeSalvo’s quote on page 6 of this eBook, the use of big data across interoperable HIT systems is the essence of ONC’s new 10-year plan. (Told you it was quick!)
  • 25. When data resides in multiple disparate silos, payers and providers cannot cost-effectively aggregate, analyze, and assess risk.
  • 26. Hint: It’s a trick question. Here’s a not-so-secret secret: Lots of providers vote “yes” for data analytics and “no” for wanting to do it. They want the value; the new insights and answers. But they don’t want the deep data dive for fear of not understanding what to do or how to do it and for wasting a lot of time trying to figure it out. That’s where your HIT vendor can help. Don’t try to figure this out on your own. You’re a medical professional, not a data scientist. Work with a committed, long-term HIT partner. They’ll have a better understanding of how to integrate and leverage data analytics into your daily EHR and practice management workflows. And remember: A data analytics initiative without an interoperability strategy is like writing a book that no one can read. Ask your vendor to share their long term interoperability road map. “Yes!” or “No!” for data analytics?
  • 27. 1 Gain insights and take __________________. 2 The healthcare industry is chomping at the bit for__________________ __________________. 3 Dr. Karen DeSalvo said the underpinnings of EHRs need to be reconfigured to support the purposes of __________ __________. 4 A brontobyte is ten to the power of __________________. 5 Our digital universe today is happening at the __________________ level. One of these = 250 trillion DVDs. 6 A central repository or master patient index is called a __________________ __________________. 7 Patient groups are called __________________. 8 Predictive analytics increases the potential to __________________ __________________. 9 HIT systems must achieve high degrees of __________________. 10 Data analytics without interoperability is like ____________________________________________________. *Answer key next page Pop Quiz! Go ahead. Surprise yourself with how much you now know about data analytics!
  • 28. Copyright © 2014 NextGen Healthcare Information Systems, LLC. All rights reserved. NextGen is a registered trademark of QSI Management, LLC, an affiliate of NextGen Healthcare Information Systems, LLC. All other names and marks are the property of their respective owners. Patent pending. NextGen® Ambulatory EHR version 5.8 is ONC-HIT 2014 Edition certified as a complete EHR. 795 Horsham Road, Horsham, PA 19044 p: 215.657.7010 | f: 215.657.7011 | nextgen.com NextGen Healthcare Solutions. We provide HIT solutions, including an award-winning, integrated EHR and Practice Management system along with Revenue Cycle Management (RCM) expertise and interoperability solutions to approximately 85,000 physicians, specialists, and dentists spanning in excess of 4,400 group practices and more than 300 hospitals across the nation. Our providers have attested for more than a half billion dollars (and growing) in Meaningful Use incentive revenue. *Answer Key: 1) action; 2) data analytics; 3) big data; 4) 27; 5) yottabyte; 6) patient registry; 7) cohorts; 8) improve care; 9) interoperability; 10) writing a book that no one can read. To learn more about our proven solutions, including data analytics and system interoperability, contact us at Results@nextgen.com or call 855-510-6398.