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DMN Goals

State/Assessment: e.g. patient has/is/on X (Diagnosis) 

Gap Assessment: e.g. current vs ideal state

 

DMN Best Practices

Decomposition: decompose a decision into smaller sub decisions

Service oriented decomposition: decompose a decision by calling externally defined decisions

Separation of concerns: Identify, encapsulate, and manipulate as independently as possible those parts of the model that are relevant to a particular concern

Point of View: create various DRDs of the same DMN model to highlight particular perspectives of a more complex DRD

Selection: Selecting an attribute of a complex data object

 

BPMN Models

Key clinical processes:

(1) diagnosis of a problem

(2) management of problem

(3) monitoring, including response to intervention

 

Common BPMN Sequences

diagnose, then establish risk status (based on severity, based on extent) 

therapy: indications, contraindications, alternatives, benefit, risks

Recommendation (Indication -> Recommendation): e.g. gap present -> suggested intervention 

monitoring: improved/same/worse (gap analysis under DMN), adverse effects, disease complications

 

BPMN Methodology

Discriminating (routing): selecting an option out of a collection of possibilities

Conditional branching

Filtering: Removing elements of a certain form from a collection of items

Observation-Assessment-Finding (OAF) Pattern (R. Lario)

Meant to communicate that the task of making an Observation(s) was to be performed by the clinician and a value recorded.  Further, a clinical rule is applied to the observation and respective values to be assessed asserting a new clinical Finding(s).  These findings, in tandem with the implied observation(s), can be aggregated into a compound observation. Where this compound observation is then Assessed using a rule or clinical algorithm creating yet another new finding.  Based upon this new finding, the CPG Branched accordingly progressing to the next procedure of either making a new observation or performing an Intervention.  This pattern continues to repeat: Observations that are Assessed resulting in Findings followed by a respective Branch inflow into either a subsequent Intervention or Observation (Figure 2. Observation Assessment Finding (OAF) Pattern). 



 

Ways of representing data:

  1. Stand alone value with units

  2. Relative to a reference value or range (above normal; low-normal-high)

  3. Z-score (incorporating mean and SD)

  4. Multiple of mean (MOM)

  5. Multiple of upper limit of normal (ULN)

Classification of Data Items

  1. (1) simple vs complex (structure)

  2. (2) constant vs variable/changing

  3. (3) predictable vs unpredictable

  4. (4) situational

 

Query: Does the person have a history of heart disease?

  • Simple response: Yes or No.

  • Complex data structure: date of occurrence, anatomic distribution, severity

 

Date of birth is constant.

Age is constantly changing at a rate of 1 per year.

Blood pressure changes but not in a constant manner.

 

Predictability: if a patient is normal, then the measure should be within a defined range.

 

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