Chief Analytics Officer Fall USA 2017 - Jonathan Bickel

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A Predictive Modeling Approach to ICU Admissions At Boston Children’s Hospital Jonathan Bickel M.D., M.S., FAAP, Senior Director of Business Intelligence, Boston Children’s Hospital

Transcript of Chief Analytics Officer Fall USA 2017 - Jonathan Bickel

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A Predictive Modeling

Approach to ICU Admissions

At Boston Children’s Hospital

Jonathan Bickel M.D., M.S., FAAP,

Senior Director of Business Intelligence,

Boston Children’s Hospital

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Boston Children's Hospital

• 404-bed comprehensive center for

pediatric health care

• #1 ranked children’s hospital by U.S. News &

World Report last 4 year in a row!

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Boston Children’s Hospital

• 25,000 inpatient admissions each year

• 557,000 outpatient visits scheduled

annually

• 200+ specialized clinical programs

• 26,500 surgical procedures performed in

2016

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Boston Children’s Hospital

Intensive Care Units

• Medical ICU

• Medical/Surgical ICU

• Neonatal ICU

• Cardiac ICU

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Boston Children’s Hospital

Intensive Care Units

• Typical Patient Ailments

– Respiratory Issues

– Neurological Issues

– Anatomical anomaly surgical repair

– Trauma recovery

– Severe medical illness

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Boston Children’s Hospital

Intensive Care Units

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Boston Children’s Hospital

Intensive Care Units

• Admit sources

– Emergency Department

– Direct admits

– Surgical recovery

– Transfers from regular inpatient units

– Transfers from other facilities

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ICU

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Boston Children’s Hospital

Intensive Care Units

• Dispositions

– To non-intensive-care inpatient bed

– Home

– Transfer to rehabilitation facility

– Transfer to another hospital

– (fortunately, very rarely) Death

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ICU

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Intensive Care Unit

Capacity Issue

• Finite number of beds

• High demand for beds

• Frequent turnover of most patients

• Varying number of long-stay patients

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ICU

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Intensive Care Unit

Capacity Issue

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Intensive Care Unit

Capacity Issue

• Long-stay patients have disproportionate

effect on capacity

– Most ICU patients occupy an ICU bed for a

few days

– Some ICU patients occupy an ICU bed for a

few weeks

– Very severely ill patients sometimes occupy

an ICU bed for several months or over a year

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Intensive Care Unit

Capacity Issue

• Because there are not that many ICU

beds, relatively few long stay patients can

significantly reduce the capacity to

accommodate all other patients.

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ICU ICU

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Intensive Care Unit

Capacity Issue

• Upstream effects: If no ICU bed, backups

– Emergency Dept.

– Post-surgery

– worsening regular floor patients

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Intensive Care Unit

Capacity Issue

• Downstream effects: ICU backups due to

bottlenecks in post-ICU facilities

– Shortages of regular care beds (regular

hospital beds full)

– Shortages of skilled rehab facility beds

– Need to plan for specialized transportation

such as international medical flights well in

advance

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Capacity Control

Options and Limitations

• Elective admissions are predictable and

controllable

• ICU Transfers are controllable

• Non-elective admissions must be dealt

with as they arise

• Need enough capacity to handle the

unexpected, but can’t keep beds open

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ICU

Keep discharges flowing

Monitor for ”clogging”

Change Inputs if needed

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The solution

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Predictive Analytics to

Help Optimize Management

• Want to predict upcoming capacity

constraints based on known current

conditions.

• Predict:

– Far enough out to take effective action

– Near enough for good reliability

• The farther out the data is extrapolated, the less

reliable are the predictions based on that data

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Modeling Approach

• Outcome variable selection

– Explore 1,2,3,8, and 21 day predictions that a

current patient will still occupy an ICU bed

– Decided 8 additional days stay prediction

would be most likely to optimize adequate

lead time for action with reasonable prediction

accuracy

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Modeling Approach

• Choice of model

– Considered

• Survival analysis

• Decision trees

• Logistic regression

– Logistic regression worked best with the

candidate variables

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Model

• Daily logistic regression based predictions

of likelihood of patients still being in

Med/Surg ICU 8 days later

• Trained on all patient stays in Med/Surg

ICU in calendar year 2016

• Validated on patient stays in Med/Surg

ICU in Jan. thru present 2017

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What’s in the Model?

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“Protoplasm”

Daily

Measures

Based on todays inputs, what is the % chance a child will be in the ICU 8 days from

today?

7S 11S

• Diagnoses • Region • Age

• Medications • ECMO / Intubation • “Discharge planning”

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Modeling Tools

• Extracted data from our Enterprise Data

Warehouse using MicroStrategy

• Created models using the R open source

statistical modeling language

• Presented results in MicroStrategy using

MicroStrategy/R integration package

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V1 Model

design &

development

(7S)

V1 Model

Portability to

other ICU’s

(11S)

V1 Model

development

reweighting

for new unit

(11S)

Feedback

from V1

Model Design;

Gathering of

new variables

V2 Model

Development

(7S)

• Labs • Medications • I & O’s • Diagnoses for

specific units

V2 Model

portability to

other ICU’s

(11S)

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Model Performance Version 1

7 South 11 South using 7s weights 11 South re-weighted

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Version 2

• + meds, I/O’s, labs, & diagnosis groupings

specifically for 11S separate from 7S

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With all labs and diagnoses

except albumin removed:

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Daily Usage

• Med/Surge ICU clinician receives

automatically generated predictions via

email each morning for patients in unit as

of midnight census.

• Free to use predictions as a supplement to

clinical judgment.

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Daily Usage