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Diagnosticreport-example.xml

General Lab Report Example (id = "101")

Raw XML

<DiagnosticReport xmlns="http://hl7.org/fhir">
  <text>
        <status value="generated"/>
        <div xmlns="http://www.w3.org/1999/xhtml"> 
      <h3>CBC Report for Wile. E. COYOTE (MRN: 23453) issued 3-Mar 2011 11:45</h3>            
<!--   you could use ab html table here, but laboratories are still 
 using fixed text tables, and this will take decades to change...   -->
            <pre>
Test                  Units       Value       Reference Range
Haemoglobin           g/L         176         135 - 180
Red Cell Count        x10*12/L    5.9         4.2 - 6.0
Haematocrit                       0.55+       0.38 - 0.52
Mean Cell Volume      fL          99+         80 - 98
Mean Cell Haemoglobin pg          36+         27 - 35
Platelet Count        x10*9/L     444         150 - 450
White Cell Count      x10*9/L     4.6         4.0 - 11.0
Neutrophils           %           20 
Neutrophils           x10*9/L     0.9---      2.0 - 7.5
Lymphocytes           %           20  
Lymphocytes           x10*9/L     0.9-        1.1 - 4.0
Monocytes             %           20 
Monocytes             x10*9/L     0.9         0.2 - 1.0
Eosinophils           %           20 
Eosinophils           x10*9/L     0.92++      0.04 - 0.40
Basophils             %           20 
Basophils             x10*9/L     0.92+++     &lt;0.21
      </pre>
          <p>Acme Laboratory, Inc signed: Dr Pete Pathologist</p>
      </div>
  </text>
  <contained>
  <!--   
  all the data items (= Observations) are contained 
  in this diagnostic report. It would be equally 
    valid - and normal - for them to be separate trackable
    items. However for the purposes of this example, it's
  more convenient to have them here. For more discussion,
  see under &quot;Contained Resources&quot; on the Resource Definitions
  topic page   -->
  <!--   for users steeped in v2, each observation roughly corresponds with an 
    OBX, and the Diagnostic Report with an ORU_R01 message   -->
    <Observation id="r1">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="718-7"/>
          <display value="Hemoglobin [Mass/volume] in Blood"/>
        </coding>
        <text value="Haemoglobin"/>
      </name>
      <valueQuantity>
        <value value="176"/>
        <units value="g/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="g/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="135"/>
          <units value="g/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="g/L"/>
        </low>
        <high>
          <value value="180"/>
          <units value="g/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="g/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r2">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="789-8"/>
          <display value="Erythrocytes [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Red Cell Count"/>
      </name>
      <valueQuantity>
        <value value="5.9"/>
        <units value="x10*12/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*12/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="4.2"/>
          <units value="x10*12/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*12/L"/>
        </low>
        <high>
          <value value="6.0"/>
          <units value="x10*12/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*12/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r3">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="4544-3"/>
          <display value="Hematocrit [Volume Fraction] of Blood by Automated count"/>
        </coding>
        <text value="Haematocrit"/>
      </name>
      <valueQuantity>
        <value value="55"/>
    <units value="%"/>
      </valueQuantity>
      <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="H"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="38"/>
         <units value="%"/>
        </low>
        <high>
          <value value="52"/>
          <units value="%"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r4">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="787-2"/>
          <display value="Erythrocyte mean corpuscular volume [Entitic volume] by Automated count"/>
        </coding>
        <text value="Mean Cell Volume"/>
      </name>
      <valueQuantity>
        <value value="99"/>
        <units value="fL"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="fL"/>
      </valueQuantity>
      <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="H"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="80"/>
          <units value="fL"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="fL"/>
        </low>
        <high>
          <value value="98"/>
          <units value="fL"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="fL"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r5">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="785-6"/>
          <display value="Erythrocyte mean corpuscular hemoglobin [Entitic mass] by Automated count"/>
        </coding>
        <text value="Mean Cell Haemoglobin"/>
      </name>
      <valueQuantity>
        <value value="36"/>
        <units value="pg"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="pg"/>
      </valueQuantity>
            <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="H"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="27"/>
          <units value="pg"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="pg"/>
        </low>
        <high>
          <value value="35"/>
          <units value="pg"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="pg"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r6">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="777-3"/>
          <display value="Platelets [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Platelet Count"/>
      </name>
      <valueQuantity>
        <value value="444"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="150"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="450"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r7">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="6690-2"/>
          <display value="Leukocytes [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="White Cell Count"/>
      </name>
      <valueQuantity>
        <value value="4.6"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="4.0"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="11.0"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r8">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="770-8"/>
          <display value="Neutrophils/100 leukocytes in Blood by Automated count"/>
        </coding>
        <text value="Neutrophils"/>
      </name>
      <valueQuantity>
        <value value="20"/>
        <units value="%"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="%"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r9">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="751-8"/>
          <display value="Neutrophils [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Neutrophils"/>
      </name>
      <valueQuantity>
        <value value="0.9"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="LL"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="2.0"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="7.5"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r10">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="736-9"/>
          <display value="Lymphocytes/100 leukocytes in Blood by Automated count"/>
        </coding>
        <text value="Lymphocytes"/>
      </name>
      <valueQuantity>
        <value value="20"/>
        <units value="%"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="%"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
    </Observation>
  </contained> 
  <contained>  
  <Observation id="r11">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="731-0"/>
          <display value="Lymphocytes [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Lymphocytes"/>
      </name>
      <valueQuantity>
        <value value="0.9"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="L"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="1.1"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="4.0"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r12">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="5905-5"/>
          <display value="Monocytes/100 leukocytes in Blood by Automated count"/>
        </coding>
        <text value="Monocytes"/>
      </name>
      <valueQuantity>
        <value value="20"/>
        <units value="%"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="%"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r13">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="742-7"/>
          <display value="Monocytes [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Monocytes"/>
      </name>
      <valueQuantity>
        <value value="0.9"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="0.2"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="1.0"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r14">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="713-8"/>
          <display value="Eosinophils/100 leukocytes in Blood by Automated count"/>
        </coding>
        <text value="Eosinophils"/>
      </name>
      <valueQuantity>
        <value value="20"/>
        <units value="%"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="%"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r15">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="711-2"/>
          <display value="Eosinophils [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Eosinophils"/>
      </name>
      <valueQuantity>
        <value value="0.92"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <interpretation>
        <coding> 
           <system value="http://hl7.org/fhir/v2/0078"/>
           <code value="HH"/>
        </coding>
      </interpretation>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <low>
          <value value="0.04"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </low>
        <high>
          <value value="0.40"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r16">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="706-2"/>
          <display value="Basophils/100 leukocytes in Blood by Automated count"/>
        </coding>
        <text value="Basophils"/>
      </name>
      <valueQuantity>
        <value value="20"/>
        <units value="%"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="%"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
    </Observation>
  </contained> 
  <contained>  
    <Observation id="r17">
      <text>
        <status value="empty"/>
        <div xmlns="http://www.w3.org/1999/xhtml">Missing</div>
      </text>
      <name>
        <coding>
          <system value="http://loinc.org"/>
          <code value="704-7"/>
          <display value="Basophils [#/volume] in Blood by Automated count"/>
        </coding>
        <text value="Basophils"/>
      </name>
      <valueQuantity>
        <value value="0.92"/>
        <units value="x10*9/L"/>
        <system value="http://unitsofmeasure.org"/>
        <code value="10*9/L"/>
      </valueQuantity>
      <status value="final"/>
      <reliability value="ok"/>
      <referenceRange>
        <high>
          <value value="0.21"/>
          <units value="x10*9/L"/>
          <system value="http://unitsofmeasure.org"/>
          <code value="10*9/L"/>
        </high>
      </referenceRange>
    </Observation>
  </contained> 

<!--   first, various administrative/context stuff   -->
  <name>
    <coding>
      <system value="http://loinc.org"/>
      <code value="58410-2"/>
      <display value="Complete blood count (hemogram) panel - Blood by Automated count"/>
    </coding>
    <coding>
      <code value="CBC"/>
      <display value="MASTER FULL BLOOD COUNT"/>
    </coding>
    <text value="Complete Blood Count"/>
  </name>
  <status value="final"/> <!--   all this report is final   -->
  <issued value="2011-03-04T11:45:33+11:00"/>
  <subject>
    <reference value="Patient/pat2"/>
  </subject>
  <performer>
    <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/>
    <display value="Acme Laboratory, Inc"/>
  </performer>
  <identifier>
    <system value="http://acme.com/lab/reports"/>
    <value value="5234342"/>
  </identifier>
  <serviceCategory>
    <coding>
      <system value="http://hl7.org/fhir/v2/0074"/>
    <code value="HM"/>
  </coding>
  </serviceCategory>
  <diagnosticDateTime value="2011-03-04T08:30:00+11:00"/>

  <!--   now the atomic results   -->
  <result>
    <reference value="#r1"/>
  </result>  
  <result>
    <reference value="#r2"/>
  </result>
  <result>
    <reference value="#r3"/>
  </result>
  <result>
    <reference value="#r4"/>
  </result>
  <result>
    <reference value="#r5"/>
  </result>
  <result>
    <reference value="#r6"/>
  </result>
  <result>
    <reference value="#r7"/>
  </result>
  <result>
    <reference value="#r8"/>
  </result>
  <result>
    <reference value="#r9"/>
  </result>
  <result>
    <reference value="#r10"/>
  </result>
  <result>
    <reference value="#r11"/>
  </result>
  <result>
    <reference value="#r12"/>
  </result>
  <result>
    <reference value="#r13"/>
  </result>
  <result>
    <reference value="#r14"/>
  </result>
  <result>
    <reference value="#r15"/>
  </result>
  <result>
    <reference value="#r16"/>
  </result>
  <result>
    <reference value="#r17"/>
  </result>

  <!--   finally, here's a pdf representation of the same report. 
    A consuming application could choose to display either the 
  html version above, or the pdf version - they both need to convey the
  same information   -->
  <presentedForm>
    <contentType value="application/pdf"/>
    <language value="en-AU"/>
    <data value="JVBERi0xLjQKJcfsj6IKNSAwIG9iago8PC9MZW5ndGggNiAwIFIvRmlsdGVyIC9GbGF0ZURlY29kZT4+CnN0cmVhbQp4nO1aWW8U
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