You work for a small hospital striving to implement an EHR. One of the vendors is proposing that you purchase a cloud-based EHR. ?Evaluate all the cloud options, along with the potentia

You work for a small hospital striving to implement an EHR. One of the vendors is proposing that you purchase a cloud-based EHR.  Evaluate all the cloud options, along with the potential advantages and disadvantages for your organization. APA citations.

This question has many facets to it.  Expected word count 225 – 250+

AB120015_Ch05.pptx


AB120015_Ch04.pptx

Introduction to Healthcare Informatics, Second Edition

Chapter 5:

Data and Information

© 2017 American Health Information Management Association

© 2017 American Health Information Management Association

Objectives

Describe the types of data, as well as the relationship between data and information

Practice using health information standards

Create a data map for a given scenario

Compare and contrast the methods of data collection

Demonstrate the use of data quality practices

Design appropriate data presentations

Support and evaluate EHRs, HIEs, and RECs

© 2017 American Health Information Management Association

Data Basics

Singular or plural data

Numerical or alphabetical

Categorical or discrete

Nominal or ordinal

Continuous

Ratio or interval

© 2017 American Health Information Management Association

Questions to Ask about Data or Information

For which purpose or use was the data originally collected?

Are there any data standards related to the data?

How was the data collected?

What is the quality of the data?

How will the data be analyzed to produce information?

How can the data or information be presented so that it is meaningful to users?

© 2017 American Health Information Management Association

Data Format

Raw data

unformatted combination of text, symbols, and words

E.g. “Green, 25”

Formatted database field

Last name = Green

Age in Years = 25

© 2017 American Health Information Management Association

Data Standard Development

Ad hoc standards

De facto standards

Government mandate

Consensus standards

LOINC

UHDDS

Microsoft Windows

ICD

© 2017 American Health Information Management Association

Caitlin Wilson (CW) – Not sure what the examples on the right are supposed to line up with. Can these be removed or put in a different location?

ISO Standards Development Process

Proposal

Preparatory

Committee

Enquiry

Approval

Publication

© 2017 American Health Information Management Association

US Health Information Technology Standards

© 2017 American Health Information Management Association

Health IT Policy Committee (sets overall health IT policy)

Health IT Standards Committee (recommends standards to meet health IT policy)

Health Insurance Portability and Accountability Act (informs policy and standards)

Data Set Standards

Vital statistics

London Bills of Mortality

Immunization registries

Health Plan Employer Data and Information Set

Continuity of Care Document (CCD) (ASTM Standard 2005)

© 2017 American Health Information Management Association

Classification, Code Set, and Terminology Standards

Classification

Code set

Terminology

Concepts

© 2017 American Health Information Management Association

Data Mapping

Definition

Creation of a map

Purpose

Source

Target

Forward maps

Reverse maps

Relationship

Equivalence

© 2017 American Health Information Management Association

Transaction Standards

Data-interchange standards

Transaction set

Types of transaction standards

Accredited Standards Committee X12 5010

National Committee on Prescription Drug Programs

Health Level 7

© 2017 American Health Information Management Association

Electronic Health Record Standards and Certification

Certification Commission on Health Information Technology

Health Information Technology for Economic and Clinical Health Act mandated

ONC-Authorized Testing and Certification Bodies

National Institute for Standards and Technology

© 2017 American Health Information Management Association

Data Collection Considerations

Why is the organization entering these data?

What data need to be entered?

Who will enter the data?

What will be the most efficient method of data entry for each type of user?

Under what circumstances will users enter data?

What use does the organization expect to make of the data?

© 2017 American Health Information Management Association

Data Entry

Structured data entry

Easily computable

Controlled values

Inflexible

Potential loss of meaning

Unstructured data entry

Expressivity

Post-hoc text processing

Natural language processing

Narrative-text string

Concept identification

Negation and temporal issues

© 2017 American Health Information Management Association

Data Measurement

Nominal data

Ordinal data

Interval data

Ratio data

© 2017 American Health Information Management Association

Management and Governance

Data management

Data governance

Discover

Design

Enable

Maintain

Archive or retire

© 2017 American Health Information Management Association

Data Quality

Data Quality Management Model

Application

Collection

Warehousing

Analysis

© 2017 American Health Information Management Association

Data Quality Characteristics

Accuracy

Accessibility

Comprehensiveness

Consistency

Currency

Definition

Granularity

Precision

Relevance

Timeliness

© 2017 American Health Information Management Association

DATA QUALITY CHARACTERISTIC AND DEFINITION
HEALTHCARE EXAMPLE

Accuracy—The extent to which the data are free of identifiable errors  
The data element gender is completed for all patients and a random check of 500 records performed annually revealed only one demographic data element in conflict with the documentation.

Accessibility—Data items that are easily obtainable and legal to access with strong protections and controls built into the process  
All persons with access to the EHR have the ability to search the master patient index and the search function is designed such that the wrong patient is rarely accessed.

Comprehensiveness—All required data items are included; ensures that the entire scope of the data is collected with intentional limitations documented  
Providers may decide that recording external cause data is not useful. If so, their data dictionary for the diagnoses data elements would need to include this as an intentional limitation.

Consistency—The extent to which the healthcare data are reliable and the same across applications  
Within the EHR data such as allergies must be consistently displayed within different applications or screens to prevent confusion.

Currency—The extent to which data are up-to-date; a datum value is up-to-date if it is current for a specific point in time, and it is outdated if it was current at a preceding time but incorrect at a later time  
Patient age is generally current when the care is delivered. If age is not reentered the software needs to be have functionality to automatically update the age when appropriate.

Data Quality Characteristics

© 2017 American Health Information Management Association

DATA QUALITY CHARACTERISTIC AND DEFINITION
HEALTHCARE EXAMPLE

Definition—The specific meaning of a healthcare-related data element  
Address as a data element label can mean the street address or it can mean the entire address to include city, state, and zip code.

Granularity—The level of detail at which the attributes and values of healthcare data are defined  
Adult weights are usually only recorded in pounds, possibly tenths of a pound. Newborn weights must be recorded in terms of ounces for accuracy.

Precision—Data values should be strictly stated to support the purpose  
Diagnosis Related Group  values are carried out to four digits behind the decimal. It would be inaccurate to have the system only use two digits behind the decimal.

Relevance—The extent to which healthcare-related data are useful for the purposes for which they were collected  
Recording a primary diagnosis for hospital inpatients would be irrelevant because coding guidelines mandate collection of the principal diagnosis, which can be entirely different.

Timeliness—Concept of data quality that involves whether the data is up-to-date and available within a useful time frame; timeliness is determined by the manner and context in which the data are being used  
It would be inappropriate for blood pressure readings from intensive-care unit (ICU) monitors to only be updated each hour.

Data Quality Characteristics

© 2017 American Health Information Management Association

Data Quality Assessment and Management Process

Who are the data consumers?

What are the needs of the data consumers?

What are the required features and quality characteristics?

How well do our current information products meet the needs and requirements?

Where are the gaps and how important are they?

© 2017 American Health Information Management Association

Data Consumer Needs Assessment Tool

© 2017 American Health Information Management Association

Data Analysis

Understanding the data

Data dictionary

Methods of collection

Cleaning the data

Identify errors

Descriptive statistics

Categorical data

Use of crosstabs

Determine correct values or impute

If uncorrectable delete the record

© 2017 American Health Information Management Association

Data Cleaning—Continuous Data

© 2017 American Health Information Management Association

Data Cleaning—Categorical Data

© 2017 American Health Information Management Association

Data Cleaning—Crosstab

© 2017 American Health Information Management Association

Data Analysis

Analyzing the data

Goals and objectives

Level of analysis of the study

Limitations of the data

Tools available

Analysis needs

Use of the results

© 2017 American Health Information Management Association

Data Analysis Evaluation

Review new data elements from data set merges

Review new derived or computed data elements

Verification of analysis timeframe and any data subject to change over time

Are statistical analyses correct?

Do counts, sums, averages make sense?

© 2017 American Health Information Management Association

Imputation

Method for dealing with missing data

Remove the record from data analysis

Coded missing data

E.g. -999 for missing data

Imputation

Replace missing values with median of data set or mean of points near the missing data

© 2017 American Health Information Management Association

Clear Data Presentation

Words—concise and accurate

Tables

The table should be a logical unit that is self-explanatory and stands on its own

The source of the data in the table should be specified

Headings for rows and columns should be understandable

Blank cells should contain a zero or a dash

Formatting for headings and cell contents should be consistent so that the eye is not confused (Horton 2013, 508)

© 2017 American Health Information Management Association

Caitlin Wilson (CW) – Update reference here and on remaining slides

Charts and Graphs

Guiding Principles

Distortion—The representation of numbers or percentages should be proportional to the quantities represented.

Proportion and scale—Graphs should emphasize the horizontal and be greater in length than height. A general rule is that the y-axis (height) be three-quarters the x-axis (length) of the graph.

Abbreviations—Any abbreviations used should be spelled out for clarity.

Color —Color should be used as appropriate to the use of the graph. If the chart is going to be printed will it be printed in black and white or color?

Text—The font and use of capitalization needs to be considered carefully. The use of all capital letters can sometimes be difficult to read (Horton 2013, 510)

© 2017 American Health Information Management Association

Data Visualization

See shape of data

Find skewed data and outliers

Explore trends

See missing data

© 2017 American Health Information Management Association

Summary

Data is used to create information

Both are essential to an effective health care industry

Health informatics professionals need to be able to perform accurate data analyses

© 2017 American Health Information Management Association

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Introduction to Healthcare Informatics, Second Edition

Chapter 4:

Information Infrastructure

© 2017 American Health Information Management Association

© 2017 American Health Information Management Association

Objectives

Understand the goals of a distributed system

List and give examples of distributed systems

Recognize the differences between two- and three-tiered network architectures

Discuss the purpose of middleware

Define collaborative computing

Understand the design models of distributed systems

Describe the development process of a distributed system

Discuss the basic principles of cloud computing

Describe the five basic characteristics of a cloud computing system

List and give examples of the three major cloud computing service models

© 2017 American Health Information Management Association

Using Technology

Computer Concepts

Hardware

Software

Architectural Models

© 2017 American Health Information Management Association

Hardware

Monitor

Keyboard

Mouse

Printer

CPU

Memory

Hard drive

© 2017 American Health Information Management Association

Software

Program that directs hardware

Operating System

Windows, Linux, Apple Mac OSX

Applications

Microsoft Word

Databases

Statistics programs

Games and apps

© 2017 American Health Information Management Association

Architectural Models

Definition

“Languages” for information modeling

Enterprise Knowledge Development (EKD)

Service-Oriented Architecture (SOA)

Business Process Simulation (BPS)

© 2017 American Health Information Management Association

Assess Systems for Regulatory Requirements

Design and development

Physical models

Wireless versus wired

Topology

Mobile computing

Electronic signatures

Audit logs

© 2017 American Health Information Management Association

Design and Development

Physical models

Mobile computing

Electronic signatures

Audit logs

© 2017 American Health Information Management Association

Physical Models

Definition

Cabled communication media

Noncabled communication media

© 2017 American Health Information Management Association

Physical Model Topologies

Network Topology
Advantages
Disadvantages

Point-to-Point
Speed
Limited to two devices

Star
Easy installation and device connection Can connect and remove devices without disruption Problems are easily identified
Requires more cable than bus topology Failure of a hub, switch, or concentrator disables nodes More expensive than bus topology

Bus
Easy device connection Uses less cable than other topologies
One break disables network Terminators required at both ends of the backbone Problems are hard to identify

Tree
Point-to-point wiring for certain segments Vendor neutral
Length of a segment is limited by type of cable used If backbone breaks an entire segment fails More difficult to configure and wire

Ring
Can support better performance than a star topology Provides for orderly data transmission
High performance under low loads Expensive to implement Any fault can cause network failure

Mesh
Extensive redundancy with multiple connections “Self-configuring” when new nodes are added “Self-healing” to continue operations even when some nodes fail More nodes increases speed
Still in development, with no standards Wireless is inherently unreliable They are not completely seamless; moving nodes may result in failure

© 2017 American Health Information Management Association

Mobile Computing

Definition

Issues

Type of device

Ownership of the device

Compatibility

Technical requirements

Access to be supported

Application access

More expanded methods of communication

Who has access

© 2017 American Health Information Management Association

Mobile Data Breaches

Data breaches common on mobile devices

Polices and procedures

Data encryption

Computer audit checks

Computer cables for physical security

No commonly accepted security standards

HIPAA and mobile devices

Increased HIPAA monetary penalties for not securing mobile devices

NIST recommends strong passwords and email encryption

© 2017 American Health Information Management Association

Protecting PHI on Mobile Devices

Types of security

Virus protection

Backups

Firewalls

Encryption

Disaster recovery

Annual security training

Routine security audits and updates

© 2017 American Health Information Management Association

Electronic Signatures

E-Signing is the process of electronically signing a record

Process includes:

initial access of the user to the systems

authentication of the user with strong passwords or PINs

© 2017 American Health Information Management Association

Audit Logs

Where are they located?

Clinical applications

Databases

EDMS systems

Many other healthcare systems

What do they contain?

User’s identification

Machine and software used to access system

Date and time of access

Method of authentication

Files or applications used

Actions performed

Date and time of logoff

© 2017 American Health Information Management Association

Device Selection Recommendations

Ergonomics

Computers on wheels

Cost

Security features

© 2017 American Health Information Management Association

Computers on Wheels (COWs)

Definition

Uses

Concurrent charting

Inventory management

Nursing medication administration

Point-of-care documentation

Selection considerations

Screen size

Battery life

Cart size

Ergonomics

Security

Wireless network

© 2017 American Health Information Management Association

Development of Systems

Communication technologies

Internet technologies

© 2017 American Health Information Management Association

Firewalls

Virtual Private Network: extends the firewall protection boundaries

© 2017 American Health Information Management Association

Network Distribution Methods

Terminal-to-host

File server

Client-server

© 2017 American Health Information Management Association

Layers of Web Services Architecture

Discovery

Description

Messaging

Networking

© 2017 American Health Information Management Association

Evaluate Systems

Systems testing

Interface management

Electronic structure and relationship of health data

© 2017 American Health Information Management Association

Distributed System Configuration

© 2017 American Health Information Management Association

Goals of a Distributed System

Resource sharing

Openness

Concurrency

Scalability

Fault tolerance

Tr

Reference no: EM132069492

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