Model based health change monitoring in pre-surgical patients Jan 21, 2014.

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Model based health change monitoring in pre-surgical patients Jan 21, 2014

Transcript of Model based health change monitoring in pre-surgical patients Jan 21, 2014.

Page 1: Model based health change monitoring in pre-surgical patients Jan 21, 2014.

Model based health change monitoring in pre-surgical

patients

Jan 21, 2014

Page 2: Model based health change monitoring in pre-surgical patients Jan 21, 2014.

Petros Endale

May 18, 1985

B.Sc in computer science(2006)

M.Sc Telemedicine and e-health(2014)

Primary Advisor Prof Gunar H.

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Background

• 12,000 annual elective surgery at UNN• Population settlement of Northern Norway• The overall risk of surgery is low in healthy

individuals. Preoperative tests usually lead to false-positive results, unnecessary costs, and a potential delay of surgery. Preoperative tests should not be performed unless there is a clear clinical indication.

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Surgery cancellation

Patient68% (8309)

Hospital non-clinical

24% (2980)

Hospital clinical8% (986)

2001-2002(a Hospital in UK)

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e-Team Surgery…MSc Project

• Exploring if moving the pre-surgical planning out of hospitals and to patients at home through electronic collaboration will improve the quality of care for patients scheduled for surgery

• Developing system for monitoring health changes in pre-surgical patients. The focus will be on the patient model

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Patients

GPs

SurgeonsAnesthesiologist

How can we identify serious changes in the patients health remotely?

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Challenges

• Due to the vast scope of pre-operative assessment, the clinical domain knowledge potentially relevant for assessment is virtually limitless• a comprehensive list of co morbidities, full

history of previous surgery, medication, family history, allergies, previous experiences of clinical adverse events

• Data availability

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Preop

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Detect deviations

• Questionnaire(baseline data) + Objective physiological parameters

• Rule Engine(based on guidelines and expert opinion)

• Notification, Recommendation and status • The Health professional decision and

action• The patient status aproved by the HP or in

agreement with the previous model is taken as the new model.

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Patient status

Risk scores

Self Assessment

GuidelinesRules

Models

Inference Engine

Status

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Models

• Model can be seen as a simplified high-level description of a specific patient in XML form.

• The model can inform patients and physicians about the status of the patient, and deviation from expected/normal

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XML

Rule

Database

Patient

HealthNet

Server

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• Questionnaire answers and physiological data coming from the patient

• The rule engine and the reasoner compare it with previous models and determines the current state of the patient

• The current state along with the decision of the health professional will be saved as the new model

• Anonimze and save the model the model for future similar cases(case based reasoning)

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Future work

• If significant number of Models and their related decisions are collected then automatic statically population model can be developed.