ID

23580

Description

To be used for recording the actual measurement of body weight, including when the individual is missing a body part due to a congenital cause or after surgical removal. A statement identifying the physical incompleteness of the body can be recorded in the 'Confounding factors' data element, if required. This is the usual archetype to be used for a typical measurement of weight, for example self-measured by the individual at home, a clinician measurement in a clinic/hospital, or a fitness instructor in a gymnasium. Can also be used for recording an approximation of body weight measurement in a clinical scenario where it is not possible to measure accurately body weight - for example, weighing an uncooperative child, or estimating the weight of an unborn fetus (where the 'subject of data' is the Fetus and recording occurs within the mother's health record). This is not modelled explicitly in the archetype as the openEHR Reference model allows the attribute of Approximation for any Quantity data type. At implementation, for example, an application user interface could allow clinicians to select an appropriately labelled check box adjacent to the Weight data field to indicate that the recorded weight is an approximation, rather than actual. To be used for recording weight change, that is, either weight loss or weight gain. This can currently be modelled by constraining the 'any event' to an interval with associated mathematical function of increase or decrease, as appropriate.

Keywords

  1. 7/9/17 7/9/17 - Martin Dugas
  2. 7/9/17 7/9/17 - Martin Dugas
Uploaded on

July 9, 2017

DOI

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License

Creative Commons BY-NC 3.0

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Body Weight (EHR Archetype)

openEHR-EHR-OBSERVATION.body_weight.v1

  1. StudyEvent: openEHR-EHR-OBSERVATION.body_weight.v1
    1. openEHR-EHR-OBSERVATION.body_weight.v1
openEHR-EHR-OBSERVATION.body_weight.v1.xml
Description

openEHR-EHR-OBSERVATION.body_weight.v1.xml

وزن الجسم
Description

قياس وزن الجسم للشخص

Data type

text

Simple
Description

@ internal @

Data type

text

history
Description

@ internal @

Data type

text

إحدى الوقائع
Description

إحدى الوقائع

Data type

text

الوزن
Description

وزن الشخص

Data type

float

state structure
Description

@ internal @

Data type

text

حالة الملبس
Description

وصف حالة الملبس الذي يرتديه الشخص في وقت قياس الوزن.

Data type

text

protocol structure
Description

@ internal @

Data type

text

الجهيزة
Description

تفاصيل حول الجهيزة المستخدمة في القياس

Data type

text

التعليق
Description

تعليق حول قياس الوزن

Data type

text

العوامل المربكة
Description

لتسجيل أي قضايا أو عوامل قد تؤثر في قياس وزن الجسم, مثل الوقت من الدورة الشهرية, آخر مرة لإفراغ الأمعاء أو ملاحظة وجود بتر في أحد الأعضاء

Data type

text

Similar models

openEHR-EHR-OBSERVATION.body_weight.v1

  1. StudyEvent: openEHR-EHR-OBSERVATION.body_weight.v1
    1. openEHR-EHR-OBSERVATION.body_weight.v1
Name
Type
Description | Question | Decode (Coded Value)
Data type
Alias
Body weight
Item
وزن الجسم
text
Simple
Item
Simple
text
history
Item
history
text
Any event
Item
إحدى الوقائع
text
Weight
Item
الوزن
float
state structure
Item
state structure
text
Item
حالة الملبس
text
Code List
حالة الملبس
CL Item
ملابس خفيفة/ ملابس داخلية (1)
CL Item
ملابس خفيفة/ ملابس داخلية (2)
CL Item
مُعَرَّى (3)
CL Item
ملابس كاملة, بما في ذلك الأحذية (4)
CL Item
حفاظة (5)
protocol structure
Item
protocol structure
text
Device
Item
الجهيزة
text
Comment
Item
التعليق
text
Confounding Factors
Item
العوامل المربكة
text

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