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1

Using NLP to Identify Physician Documentation Opportunities

Session #241, February 23, 2017

Anupam Goel, VP, Clinical Information, Advocate Health Care

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Speaker Introduction

Anupam Goel, MD

Vice President, Clinical Information

Advocate Health Care

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Conflict of Interest

Anupam Goel, MD has no real or apparent conflicts of interest to report.

4

Agenda• Learning objectives, STEPS

• Introduction

• The promise and reality of Natural Language Processing (NLP)

• Using NLP to maximize value of human input for appropriate case detection

• Identifying patients with stroke

• Progress to date

• Other opportunities

• Next steps

• Your questions

5

Learning Objectives

• Describe risks and benefits of using natural language processing for identifying gaps in physician documentation

• Recognize how variations in local practice that may impair the ability of natural language processing to address specific use cases at your facility or health system

• Identify methods to display quantitative information about physician documentation quality to highlight patterns and encourage physician behavior change

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STEPS argument

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STEPS – Treatment/Clinical• Identify patients sooner to initiate appropriate diagnostic or treatment

algorithms (stroke, CHF)

• NLP must be embedded within a clinical notification workflow that activates a team member to make a change in clinical care

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STEPS - Savings• In its current state, the technology is probably best at highlighting

patterns for a human to verify.

• For high-risk or publicly reported conditions, many health systems employ multiple FTEs to sift through physician documentation. NLP could help redeploy those resources to complete other tasks.

http://www.integrity-data.com/improve-productivity-employee-satisfaction-deploy-better-technology/

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Introduction

http://simsa.dsu.dal.ca/tag/orientation

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What is Natural Language Processing?• Field of computer science and linguistics concerned with the interactions

between computers and human (natural) languages

• Extracting concepts from free-text

• In its most basic form, it is not a tool

• To identify improper diagnosis or treatment

• To judge documentation content quality

• To determine if health care resources are being wasted

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Common error modalities with NLP• Misinterpreting errors in syntax and grammar

• Misinterpreting errors in content (voice-to-text errors)

• Misinterpreting context around specific terms

http://computerdocnc.com/computer-errors-indian-trail-nc/

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The promise and reality of NLP

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Positive impressions of NLP

https://developer.amazon.com/blogs/post/TxC2VHKFEIZ9SG/First-Alexa-Third-Party-Skills-Now-Available-for-Amazon-Echo

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NLP sophistication

• Bag of words

• Concepts

• Negation, association

• Identifying themes

• Suggesting alternative pathways

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What’s your gold standard?

https://www.macobserver.com/tmo/article/head-to-head-comparison-of-13-streaming-music-services

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How do we measure how good NLP might be?

http://gru.stanford.edu/doku.php/tutorials/sdt

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Vendor promises

• More complex diagnoses (clinical documentation improvement)

• Real-time feedback for documentation quality

• Improved billing accuracy

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How good do you need NLP to be?• Immediate life-and-death decisions?

• Retrospective reviews

• Billing and documentation improvement

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“Secret sauce” for NLP• How do you train an NLP algorithm?

• Variations in documentation style

– Pertinent negatives

– Pertinent positives

• “Black box” algorithm

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Risks for NLP from a clinician’s perspective• Minimal documentation limits the software’s ability to meaningfully

discriminate between “wanted” and “unwanted” cases

• Voice recognition technology may enable more comprehensive documentation, improving NLP’s effectiveness

• Cases that are difficult for humans to distinguish will also be difficult for NLP algorithms to distinguish

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Using NLP to maximize value for human input for appropriate case detection• Copy-and-paste

• Missing operative report elements

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Example 1: Copy-and-paste

• Some physicians abuse computer technology to meet documentation requirements

• There is no easy way to manually review every note that is entered in an electronic medical record for “identical-ness”

• Technology could highlight high levels of identical text without determining if the similarity was appropriate or not

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What’s the driver?

FRAUD

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How much similarity is too much similarity?• Specialty

• Patients with a prolonged hospital stay

• Some sections of the note hardly change without adverse effects on patient care

• Absolute cutoff of >95% to trigger a manual review

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Who should be targeted?

• High absolute numbers of similar notes

• High proportion of similar notes

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So What?

• Is the copy-and-paste appropriate?

• Is there an escalation path?

• What about continued “bad behavior?”

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Copy and paste

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Copy and paste

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Next steps

• Target sections of a note

• Identify “value-adding” team members

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Example 2: Operative report completeness• Challenge: capture missing elements within an operative report before the

patient is discharged

• Data elements often scattered throughout the surgeon’s operative report or across multiple documents

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Defining the note “population”

• What constitutes an eligible note?

• What euphemisms are used by different surgeons to imply different required elements?

• EBL

• Blood loss

• Approximate bleeding

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Data display

• Number of missing elements

• Number of incomplete reports

• Surgeons with the highest percent of incomplete notes

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Next steps

• Use the operative report extractions to identify quality metrics to drive quality improvement metrics

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Identifying patients with stroke

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How do you identify patients with a stroke?• Current state: manual review of patients admitted to specific floors

• About four FTEs

• Limited bandwidth to review patients across the hospital

• Public reporting implications

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How do you identify a patient with stroke?

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Order matters

• When reviewing 200 charts, wouldn’t it be great if the first 40 were the ones most likely to include a stroke?

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Assessing the probability for stroke

• What terms are most consistent with a stroke?

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Patient presentation changing over time• Day 1: not a stroke

• Day 2: not a stroke

• Day 3: a stroke

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Progress to date

41

“Sharpening the tool”

• Ongoing improvements to algorithm by using reviewers to provide new “gold standard” information as additional cases are reviewed

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Other opportunities

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Next steps• Apply to other clinical scenarios

– Care pathways not followed

– Identify physicians who are outliers based on specific documentation elements

– Flag patients for aggressive follow-up after discharge

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Summary

• NLP can provide technological support to help augment manual workflows instead of replacing existing workflows

• NLP may be most effective when targeting case-finding

• Gaining proficiency through low-risk scenarios may improve confidence in the technology without large-scale adverse events

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Summary

• NLP is only as good as the information that is available for review

• Training an NLP algorithm can take time, but early investments can pay off in FTE savings

• Think about simplifying the data display of information from NLP analysis to facilitate action

• Rather than thinking of NLP as a tool with static operating characteristics, consider using new information to continually tweak the algorithm to improve the software’s yield

46

A Summary of How Benefits Were Realized for the Value of Health ITTreatment/Clinical – begin diagnostic and treatment pathways faster

Savings – FTEs allocated to more productive uses

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Questions?

• Email: anupam.goel@advocatehealth.com

• Twitter: @anupam1623

• Linkedin: goelanupam

• Please complete the online session evaluation

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