Transcript
Page 1: Handheld-Based Decision Support in Trauma Medicine

Handheld-Based Decision Support

in Trauma Medicine

Blaž Zupan

Faculty of Computer Science, University of LjubljanaBaylor College of Medicine, Houston

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Examples ofMedical Decision Support• Probability of recurrence after radical

prostatectomy

• Predicting patient’s long term clinical status after hip arthroplasty

• Wrist injuries: should we operate?

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Why?

• Second opinion• Systematic approach• Decision analysis

– which factors are important– how do they influence the decision

• Prognosis,• Treatment planning,• Diagnosis, ...

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Why handhelds?

• Handhelds are practical• Decision support tool should be

available wherever decision takes place• They provide enough computing power

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Decision Support Models

background (expert) knowledge

data(EPR, clinical data bases, ...)

statistical analysisdata mining

decisionsupportmodel

patient’s data

decision(prognosis, diagnosis, treatment plan, ...)

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Sucess Story: Prostogram

• MW Kattan, P Fern: From 1999 in regular use at Memorial Sloan-Kettering Hospital and BCM

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Decision Support Shellon Palm(TM)

statistical analysisdata mining

decision support modelsin XML

(synchronization)

decision support

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An example ...

Aoki N. et al: Mathematical Analysis of Data from the Hanshin-Awaji Earthquake.

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... An example

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Current Status• Applications

– BCM & Ben Taub Hospital, Houston: traumatology

– Smrke (Clinical Center in Ljubljana, Slovenia): hip, wrist injury

– Kattan (Sloan-Kettering, NY): prostate cancer

• Methodology– Logistic regression, other methods (table

lookup, naive Bayes, survival models) coming soon

– Integration with data mining tools coming soon


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