This page is part of the FHIR Specification (v1.6.0: STU 3 Ballot 4). The current version which supercedes this version is 5.0.0. For a full list of available versions, see the Directory of published versions . Page versions: R5 R4B R4 R3 R2
General Lab Report Example (id = "101")
<DiagnosticReport xmlns="http://hl7.org/fhir"> <id value="101"/> <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> <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+++ <0.21 </pre> <p>Acme Laboratory, Inc signed: Dr Pete Pathologist</p> </div> </text> <contained> <Observation> <!-- 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 "Contained Resources" 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 --> <id value="r1"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="718-7"/> <display value="Hemoglobin [Mass/volume] in Blood"/> </coding> <text value="Haemoglobin"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="176"/> <unit value="g/L"/> <system value="http://unitsofmeasure.org"/> <code value="g/L"/> </valueQuantity> <referenceRange> <low> <value value="135"/> <unit value="g/L"/> <system value="http://unitsofmeasure.org"/> <code value="g/L"/> </low> <high> <value value="180"/> <unit value="g/L"/> <system value="http://unitsofmeasure.org"/> <code value="g/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r2"/> <status value="final"/> <code> <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"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="5.9"/> <unit value="x10*12/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*12/L"/> </valueQuantity> <referenceRange> <low> <value value="4.2"/> <unit value="x10*12/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*12/L"/> </low> <high> <value value="6.0"/> <unit value="x10*12/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*12/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r3"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="4544-3"/> <display value="Hematocrit [Volume Fraction] of Blood by Automated count"/> </coding> <text value="Haematocrit"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="55"/> <unit value="%"/> </valueQuantity> <interpretation> <coding> <system value="http://hl7.org/fhir/v2/0078"/> <code value="H"/> </coding> </interpretation> <referenceRange> <low> <value value="38"/> <unit value="%"/> </low> <high> <value value="52"/> <unit value="%"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r4"/> <status value="final"/> <code> <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"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="99"/> <unit 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> <referenceRange> <low> <value value="80"/> <unit value="fL"/> <system value="http://unitsofmeasure.org"/> <code value="fL"/> </low> <high> <value value="98"/> <unit value="fL"/> <system value="http://unitsofmeasure.org"/> <code value="fL"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r5"/> <status value="final"/> <code> <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"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="36"/> <unit 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> <referenceRange> <low> <value value="27"/> <unit value="pg"/> <system value="http://unitsofmeasure.org"/> <code value="pg"/> </low> <high> <value value="35"/> <unit value="pg"/> <system value="http://unitsofmeasure.org"/> <code value="pg"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r6"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="777-3"/> <display value="Platelets [#/volume] in Blood by Automated count"/> </coding> <text value="Platelet Count"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="444"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </valueQuantity> <referenceRange> <low> <value value="150"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="450"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r7"/> <status value="final"/> <code> <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"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="4.6"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </valueQuantity> <referenceRange> <low> <value value="4.0"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="11.0"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r8"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="770-8"/> <display value="Neutrophils/100 leukocytes in Blood by Automated count"/> </coding> <text value="Neutrophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="20"/> <unit value="%"/> <system value="http://unitsofmeasure.org"/> <code value="%"/> </valueQuantity> </Observation> </contained> <contained> <Observation> <id value="r9"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="751-8"/> <display value="Neutrophils [#/volume] in Blood by Automated count"/> </coding> <text value="Neutrophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="0.9"/> <unit 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> <referenceRange> <low> <value value="2.0"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="7.5"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r10"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="736-9"/> <display value="Lymphocytes/100 leukocytes in Blood by Automated count"/> </coding> <text value="Lymphocytes"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="20"/> <unit value="%"/> <system value="http://unitsofmeasure.org"/> <code value="%"/> </valueQuantity> </Observation> </contained> <contained> <Observation> <id value="r11"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="731-0"/> <display value="Lymphocytes [#/volume] in Blood by Automated count"/> </coding> <text value="Lymphocytes"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="0.9"/> <unit 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> <referenceRange> <low> <value value="1.1"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="4.0"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r12"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="5905-5"/> <display value="Monocytes/100 leukocytes in Blood by Automated count"/> </coding> <text value="Monocytes"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="20"/> <unit value="%"/> <system value="http://unitsofmeasure.org"/> <code value="%"/> </valueQuantity> </Observation> </contained> <contained> <Observation> <id value="r13"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="742-7"/> <display value="Monocytes [#/volume] in Blood by Automated count"/> </coding> <text value="Monocytes"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="0.9"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </valueQuantity> <referenceRange> <low> <value value="0.2"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="1.0"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r14"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="713-8"/> <display value="Eosinophils/100 leukocytes in Blood by Automated count"/> </coding> <text value="Eosinophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="20"/> <unit value="%"/> <system value="http://unitsofmeasure.org"/> <code value="%"/> </valueQuantity> </Observation> </contained> <contained> <Observation> <id value="r15"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="711-2"/> <display value="Eosinophils [#/volume] in Blood by Automated count"/> </coding> <text value="Eosinophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="0.92"/> <unit 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> <referenceRange> <low> <value value="0.04"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </low> <high> <value value="0.40"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <contained> <Observation> <id value="r16"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="706-2"/> <display value="Basophils/100 leukocytes in Blood by Automated count"/> </coding> <text value="Basophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="20"/> <unit value="%"/> <system value="http://unitsofmeasure.org"/> <code value="%"/> </valueQuantity> </Observation> </contained> <contained> <Observation> <id value="r17"/> <status value="final"/> <code> <coding> <system value="http://loinc.org"/> <code value="704-7"/> <display value="Basophils [#/volume] in Blood by Automated count"/> </coding> <text value="Basophils"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <valueQuantity> <value value="0.92"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </valueQuantity> <referenceRange> <high> <value value="0.21"/> <unit value="x10*9/L"/> <system value="http://unitsofmeasure.org"/> <code value="10*9/L"/> </high> </referenceRange> </Observation> </contained> <identifier> <system value="http://acme.com/lab/reports"/> <value value="5234342"/> </identifier> <status value="final"/> <category> <coding> <system value="http://hl7.org/fhir/v2/0074"/> <code value="HM"/> </coding> </category> <!-- first, various administrative/context stuff --> <code> <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"/> </code> <subject> <reference value="Patient/pat2"/> </subject> <encounter> <reference value="Encounter/example"/> </encounter> <effectiveDateTime value="2011-03-04T08:30:00+11:00"/> <!-- all this report is final --> <issued value="2011-03-04T11:45:33+11:00"/> <performer> <reference value="Organization/1832473e-2fe0-452d-abe9-3cdb9879522f"/> <display value="Acme Laboratory, Inc"/> </performer> <!-- 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. 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Usage note: every effort has been made to ensure that the examples are correct and useful, but they are not a normative part of the specification.