Difference between revisions of "Immunohistochemistry"

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|author1=[[User:Mikael Häggström|Mikael Häggström]]
 
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The main methods for evaluating immunohistochemistry results are:
+
[[File:Main staining patterns on immunohistochemistry.jpg|thumb|270px|Main staining patterns.]]
 +
When [[learning pathology]], the percentages by which immunohistochemistry (IHC) results are positive or negative for various diseases are generally easily looked up when needed, so what a pathologist needs to learn is mainly '''how to select''' the optimal immunohistochemistry panels in the first place for various presentations where the diagnosis is unknown.
 +
 
 +
==Immunohistochemistry ordering==
 +
The main approaches to immunohistochemistry ordering are:
 +
*If there is '''insufficient tissue''' left for immunohistochemistry after standard (usually H&E) staining, you can potentially ask a histotechnologist to destain a glass slide and subsequently perform IHC on that slide.
 +
*Look for a specified '''panel''' for the presentation at hand. For example, for an undifferentiated tumor with no clear lineage differentiation, an initial panel of cytokeratin (CK), S100, vimentin and LCA (CD45) can be used.<ref name="pmid25427040">{{cite journal| author=Lin F, Liu H| title=Immunohistochemistry in undifferentiated neoplasm/tumor of uncertain origin. | journal=Arch Pathol Lab Med | year= 2014 | volume= 138 | issue= 12 | pages= 1583-610 | pmid=25427040 | doi=10.5858/arpa.2014-0061-RA | pmc= | url=https://www.ncbi.nlm.nih.gov/entrez/eutils/elink.fcgi?dbfrom=pubmed&tool=sumsearch.org/cite&retmode=ref&cmd=prlinks&id=25427040  }} </ref>
 +
*Coming up with the most relevant '''differential diagnoses''' for the case at hand, and find the immunohistochemistry stains that best distinguish them. Immunohistochemistry profiles for diseases and conditions, as well as their main differential diagnoses, is generally found at '''[https://www.pathologyoutlines.com/ Pathology Outlines]''', or you can pay for a subscription to '''[https://www.immunoquery.com/ ImmunoQuery]'''{{ImmunoQuery COI declaration}}:
 +
 
 +
===Using Immunoquery===
 +
The main page of [https://www.immunoquery.com/ ImmunoQuery] gives you the "Diagnoses" option, where you enter up to 3 differential diagnoses to generate the optimal immunohistochemistry panel to differentiate them (you may need to click ''&or; Suggested Panel'' to show it if it is collapsed). It also displays an automatic message when the included antibodies/immunostains are '''not sufficient''' for a satisfactory panel, in which case you can:
 +
*Make a specific search only including the two conditions where suggested immunostains were insufficient, if you had previously compared 3 diagnoses.
 +
*Consider additional stains from the '''"Comprehensive panel"''' displayed below the suggested one.
 +
*Switch the '''"Sensitivity"''' setting (seen at top) from 1 (which means that diffuse, focal as well as not specified staining count as positive) to 3 (which means that only diffuse staining counts as positive whereas both focal and absent staining count as negative, and references without any specified staining pattern are omitted from the analysis). This has less data to support the suggested stains (since many references do not specify whether positivity was diffuse or focal), but can sometimes state a better distinction between conditions. When including a stain based on its distinguishing features on a sensitivity setting of 3, you need to keep the practice of classifying only diffuse staining counts as positive, and focal to absent staining as negative.
 +
{{Question|title=ImmunoQuery for a squamous cell carcinoma|subsection=yes}}
 +
[[File:Histopathology of squamous-cell carcinoma of the lung.jpg|thumb|230px|Squamous cell carcinoma, with large cells with abundant eosinophilic cytoplasm and large, often vesicular, nuclei.]]
 +
The attending gives you a lung biopsy case to preview. You are first uncertain about the type of tumor, so you ask a fellow resident, who finds a diagnostic area of the tumor and tells you that this is a typical squamous cell carcinoma. You also look through the patient's history, and find that the patient has had a squamous cell carcinoma of the anus in the past, and you now want to find out whether the tumor originated in the lung, or if it is a metastasis from the anus, or possibly the skin. You therefore do an ImmunoQuery lookup, with the following results:
 +
 
 +
;Suggested Panel
 +
''Insufficient antibodies for a satisfactory panel to differentiate Lung squamous cell carcinoma and Anus squamous cell carcinoma''
 +
{|class=wikitable
 +
| Antibodies
 +
! Lung SCC !! Anus SCC !! Skin SCC
 +
|-
 +
! EpCAM
 +
| 81% Positive<br>Membrane, Cytoplasm || 75% Positive<br>Membrane, Cytoplasm || 0% Positive<br>Membrane, Cytoplasm
 +
|-
 +
! GATA3
 +
| 5% Positive<br>Nucleus || 20% Positive<br>Nucleus || 84% Positive<br>Nucleus
 +
|-
 +
! p16
 +
| 17% Positive<br>Cytoplasm, Nucleus || 87% Positive<br>Cytoplasm, Nucleus || 45% Positive<br>Cytoplasm, Nucleus
 +
|}
 +
 
 +
You go talk with the attending, who agrees that EpCAM, GATA3 and p16 should be in the panel, but just as ImmunoQuery also tells, the attending thinks that the panel is not satisfactory to differentiate lung SCC from anus SCC, and wants you to add one more stain to improve the panel. You go back to ImmunoQuery and increase the Sensitivity from 1 to 3 (which means that only diffuse staining counts as positive whereas both focal and absent staining count as negative, and references without any specified staining pattern are omitted from the analysis), and get the following results:
 +
;Suggested panel
 +
{|class=wikitable
 +
| Antibodies
 +
! Lung SCC !! Anus SCC !! Skin SCC
 +
|-
 +
! EpCAM
 +
| 74% Positive<br>Membrane, Cytoplasm || 50% Positive<br>Membrane, Cytoplasm || 0% Positive<br>Membrane, Cytoplasm
 +
|-
 +
! DLK
 +
| 28% Positive<br>Membrane, Cytoplasm || N/A<br>Membrane, Cytoplasm || 100% Positive<br>Membrane, Cytoplasm
 +
|}
 +
 
 +
You also perform a repeated search by only entering Lung and Anus SCC, and you get the following results:
 +
;Suggested panel
 +
{|class=wikitable
 +
| Antibodies
 +
! Lung SCC !! Anus SCC
 +
|-
 +
! p16
 +
| 17% Positive<br>Cytoplasm, Nucleus || 87% Positive<br>Cytoplasm, Nucleus
 +
|}
 +
;Comprehensive panel
 +
Top results:
 +
{|class=wikitable
 +
| Antibodies
 +
! Lung SCC !! Anus SCC
 +
|-
 +
| '''p16'''<br>Cytoplasm, Nucleus || 17% || 87%
 +
|-
 +
| '''GRPR'''<br>Cytoplasm || 56% || 100%
 +
|}
 +
You switch sensitivity from 1 to 3 for this result as well, showing:
 +
;Suggested panel
 +
''No antibodies to differentiate Lung squamous cell carcinoma and Anus squamous cell carcinoma''
 +
 
 +
;Comprehensive panel
 +
Top result:
 +
{|class=wikitable
 +
| Antibodies
 +
! Lung SCC !! Anus SCC
 +
|-
 +
| '''GRPR'''<br>Cytoplasm || 46% || 91%
 +
|}
 +
You go talk with a technician at the histology lab, and your hospital offers all the stains in the alternatives, at similar costs, so you don't have to think about expenses and logistics of sending the case out to external labs.
 +
 
 +
In addition to EpCAM, GATA3 and p16, what is the best alternative, given the information you retrieved above, to differentiate lung versus anus squamous cell carcinoma?
 +
#Add DLK to the panel, and favor anus origin if having a diffusely membranous staining rather than diffusely cytoplasmic.
 +
#Add DLK to the panel, and favor anus origin if having a diffusely cytoplasmic staining rather than diffusely membranous.
 +
#Add GRPR to the panel, and favor anus origin if having either a diffuse or focal cytoplasmic staining.
 +
#Add GRPR to the panel, and favor anus origin if having a diffuse but not a focal cytoplasmic staining.
 +
#The ImmunoQuery results above are not sufficient to suggest an additional stain besides EpCAM, GATA3 and p16.
 +
 
 +
;Correct answer
 +
[[File:GRPR answer.jpg|600px|left]]<br clear=all>
 +
GRPR is the top result when specifically comparing lung versus anus squamous cell carcinoma, both at sensitivity settings 1 and 3, with no major difference between them, and thus anus origin is favored in case of either diffuse or focal cytoplasmic staining. DLK showed as N/A for anus SCC.
 +
{{Question-end}}
 +
 
 +
===Chromogen color===
 +
Request a red rather than brown chromogen in heavily pigmented lesions, such as in some [[melanoma]]s.
 +
 
 +
==Evaluation==
 +
First be familiar with which cells on the slide are being evaluated, such as first looking at a slide with standard staining (usually H&E) to avoid counting background cells.
 +
 
 +
==Interpretation==
 +
The main methods for interpreting immunohistochemistry results are:
 
*Looking up each differential diagnosis at for example '''[https://www.pathologyoutlines.com/ Pathology Outlines]''' and comparing their expected staining to see which entity is most likely.
 
*Looking up each differential diagnosis at for example '''[https://www.pathologyoutlines.com/ Pathology Outlines]''' and comparing their expected staining to see which entity is most likely.
*Paying for a subscription to '''ImmunoQuery'''{{ImmunoQuery COI declaration}}, where you can enter immunohistochemistry results and generate a list of most likely conditions with that profile.
+
*Paying for a subscription to '''ImmunoQuery''',{{ImmunoQuery COI declaration}} where you can enter immunohistochemistry results and generate a list of most likely conditions with that profile.
  
Preferably, immunohistochemistry results will be very specific for a suspected condition, thereby confirming it. Even when that is not the case, immunohistochemistry can at least alter the likelihoods of different differential diagnoses. Pathology practice is too uncertain to perform calculations of exact percentages of likelihoods of differential diagnoses, but to demonstrate the general principle of how immunohistochemistry results are calculated, the following formula can be used:
+
Preferably, immunohistochemistry results will be very specific or sensitive for a suspected condition, thereby confirming it if positive, or excluding it if negative, respectively. Even when that is not the case, immunohistochemistry can at least '''alter the likelihoods''' of different differential diagnoses. In practice, clinicians or pathologists do not state exact or even approximate numbers of likelihoods of differential diagnoses ({{further|Reporting}}<includeonly>see the [[Reporting]] chapter for phrasing uncertainty</includeonly>), since reality is too complex for that, but to demonstrate the general principle of how immunohistochemistry results can be calculated, the following formula can be used:
 
*Gross likelihood of a disease/condition = (Pre-test probability) x (Probability that the condition shows the immunohistochemistry results at hand).
 
*Gross likelihood of a disease/condition = (Pre-test probability) x (Probability that the condition shows the immunohistochemistry results at hand).
 
The pre-test probability is a product of for example the incidence of the condition in the patient's epidemiologic type such as age and sex, as well as the probability that the condition would have caused the clinical course, including signs and symptoms, as well as the microscopic impression. For example, if you want to differentiate a pleomorphic liposarcoma from a pleomorphic rhabdomyosarcoma in soft tissue, you may find in ImmunoQuery that the following stains are most efficient in distinguishing the two, with the following percentages of being positive:
 
The pre-test probability is a product of for example the incidence of the condition in the patient's epidemiologic type such as age and sex, as well as the probability that the condition would have caused the clinical course, including signs and symptoms, as well as the microscopic impression. For example, if you want to differentiate a pleomorphic liposarcoma from a pleomorphic rhabdomyosarcoma in soft tissue, you may find in ImmunoQuery that the following stains are most efficient in distinguishing the two, with the following percentages of being positive:
Line 17: Line 116:
 
| Actin HHF-35 || 0% || 71%
 
| Actin HHF-35 || 0% || 71%
 
|}
 
|}
Let's say for example that your pre-test probability was about 30% for pleomorphic liposarcoma and 70% for pleomorphic rhabdomyosarcoma, that desmin stains positive, and actin HHF-35 stains negative in this case. The probability that pleomorphic liposarcoma shows these immunohistochemistry results at hand is:
+
Let's say for example that your pre-test probability was about 30% for pleomorphic liposarcoma and 70% for pleomorphic rhabdomyosarcoma, that desmin stains positive, and actin HHF-35 stains negative in this case. Assuming that 0% positive rate means that 100% stain negative, the probability that pleomorphic liposarcoma shows these immunohistochemistry results at hand is:
*17% x (100% - 0%) = 17%
+
*17% x 100% = 17%
 
The gross likelihood of pleomorphic liposarcoma therefore becomes:
 
The gross likelihood of pleomorphic liposarcoma therefore becomes:
 
*30% x 17% = 5.1%
 
*30% x 17% = 5.1%
The corresponding gross likelihood of pleomorphic rhabdomyosarcoma is calculated as:
+
In the same way, the corresponding gross likelihood of pleomorphic rhabdomyosarcoma is calculated as:
 
*70% x 95% x (100% - 71%) = 19%
 
*70% x 95% x (100% - 71%) = 19%
As a result in this case, immunohistochemistry resulted in pleomorphic rhabdomyosarcoma going from about twice as likely compared to pleomorphic liposarcoma to about 4 times as likely.<ref group=notes>More detailed explanations about likelihood calculations on differential diagnoses in general can be read at:<br>-{{cite journal | last=Häggström | first=Mikael | title=An epidemiology-based and a likelihood ratio-based method of differential diagnosis | journal=WikiJournal of Medicine | publisher=Wikiversity Journal of Medicine | volume=1 | issue=1 | year=2014 | issn=2002-4436 | doi=10.15347/wjm/2014.002}}</ref>
+
As a result in this case, immunohistochemistry resulted in pleomorphic rhabdomyosarcoma going from about twice as likely compared to pleomorphic liposarcoma to about 4 times as likely. Although results like these do not make major differences individually, detailed calculations of results from a large panel of immunohistochemistry stains can have a major impact when taken together, even if each stain has relatively low sensitivity and specificity.<ref group=note>More detailed explanations about likelihood calculations on differential diagnoses in general can be read at:<br>-{{cite journal | last=Häggström | first=Mikael | title=An epidemiology-based and a likelihood ratio-based method of differential diagnosis | journal=WikiJournal of Medicine | publisher=Wikiversity Journal of Medicine | volume=1 | issue=1 | year=2014 | issn=2002-4436 | doi=10.15347/wjm/2014.002}}</ref>
 +
<noinclude>
 +
{{General notes}}
 
{{Bottom}}
 
{{Bottom}}
 +
</noinclude>

Revision as of 20:40, 28 November 2022

Author: Mikael Häggström [note 1]

Main staining patterns.

When learning pathology, the percentages by which immunohistochemistry (IHC) results are positive or negative for various diseases are generally easily looked up when needed, so what a pathologist needs to learn is mainly how to select the optimal immunohistochemistry panels in the first place for various presentations where the diagnosis is unknown.

Immunohistochemistry ordering

The main approaches to immunohistochemistry ordering are:

  • If there is insufficient tissue left for immunohistochemistry after standard (usually H&E) staining, you can potentially ask a histotechnologist to destain a glass slide and subsequently perform IHC on that slide.
  • Look for a specified panel for the presentation at hand. For example, for an undifferentiated tumor with no clear lineage differentiation, an initial panel of cytokeratin (CK), S100, vimentin and LCA (CD45) can be used.[1]
  • Coming up with the most relevant differential diagnoses for the case at hand, and find the immunohistochemistry stains that best distinguish them. Immunohistochemistry profiles for diseases and conditions, as well as their main differential diagnoses, is generally found at Pathology Outlines, or you can pay for a subscription to ImmunoQuery[note 2]:

Using Immunoquery

The main page of ImmunoQuery gives you the "Diagnoses" option, where you enter up to 3 differential diagnoses to generate the optimal immunohistochemistry panel to differentiate them (you may need to click ∨ Suggested Panel to show it if it is collapsed). It also displays an automatic message when the included antibodies/immunostains are not sufficient for a satisfactory panel, in which case you can:

  • Make a specific search only including the two conditions where suggested immunostains were insufficient, if you had previously compared 3 diagnoses.
  • Consider additional stains from the "Comprehensive panel" displayed below the suggested one.
  • Switch the "Sensitivity" setting (seen at top) from 1 (which means that diffuse, focal as well as not specified staining count as positive) to 3 (which means that only diffuse staining counts as positive whereas both focal and absent staining count as negative, and references without any specified staining pattern are omitted from the analysis). This has less data to support the suggested stains (since many references do not specify whether positivity was diffuse or focal), but can sometimes state a better distinction between conditions. When including a stain based on its distinguishing features on a sensitivity setting of 3, you need to keep the practice of classifying only diffuse staining counts as positive, and focal to absent staining as negative.

Test question

ImmunoQuery for a squamous cell carcinoma
Squamous cell carcinoma, with large cells with abundant eosinophilic cytoplasm and large, often vesicular, nuclei.

The attending gives you a lung biopsy case to preview. You are first uncertain about the type of tumor, so you ask a fellow resident, who finds a diagnostic area of the tumor and tells you that this is a typical squamous cell carcinoma. You also look through the patient's history, and find that the patient has had a squamous cell carcinoma of the anus in the past, and you now want to find out whether the tumor originated in the lung, or if it is a metastasis from the anus, or possibly the skin. You therefore do an ImmunoQuery lookup, with the following results:

Suggested Panel

Insufficient antibodies for a satisfactory panel to differentiate Lung squamous cell carcinoma and Anus squamous cell carcinoma

Antibodies Lung SCC Anus SCC Skin SCC
EpCAM 81% Positive
Membrane, Cytoplasm
75% Positive
Membrane, Cytoplasm
0% Positive
Membrane, Cytoplasm
GATA3 5% Positive
Nucleus
20% Positive
Nucleus
84% Positive
Nucleus
p16 17% Positive
Cytoplasm, Nucleus
87% Positive
Cytoplasm, Nucleus
45% Positive
Cytoplasm, Nucleus

You go talk with the attending, who agrees that EpCAM, GATA3 and p16 should be in the panel, but just as ImmunoQuery also tells, the attending thinks that the panel is not satisfactory to differentiate lung SCC from anus SCC, and wants you to add one more stain to improve the panel. You go back to ImmunoQuery and increase the Sensitivity from 1 to 3 (which means that only diffuse staining counts as positive whereas both focal and absent staining count as negative, and references without any specified staining pattern are omitted from the analysis), and get the following results:

Suggested panel
Antibodies Lung SCC Anus SCC Skin SCC
EpCAM 74% Positive
Membrane, Cytoplasm
50% Positive
Membrane, Cytoplasm
0% Positive
Membrane, Cytoplasm
DLK 28% Positive
Membrane, Cytoplasm
N/A
Membrane, Cytoplasm
100% Positive
Membrane, Cytoplasm

You also perform a repeated search by only entering Lung and Anus SCC, and you get the following results:

Suggested panel
Antibodies Lung SCC Anus SCC
p16 17% Positive
Cytoplasm, Nucleus
87% Positive
Cytoplasm, Nucleus
Comprehensive panel

Top results:

Antibodies Lung SCC Anus SCC
p16
Cytoplasm, Nucleus
17% 87%
GRPR
Cytoplasm
56% 100%

You switch sensitivity from 1 to 3 for this result as well, showing:

Suggested panel

No antibodies to differentiate Lung squamous cell carcinoma and Anus squamous cell carcinoma

Comprehensive panel

Top result:

Antibodies Lung SCC Anus SCC
GRPR
Cytoplasm
46% 91%

You go talk with a technician at the histology lab, and your hospital offers all the stains in the alternatives, at similar costs, so you don't have to think about expenses and logistics of sending the case out to external labs.

In addition to EpCAM, GATA3 and p16, what is the best alternative, given the information you retrieved above, to differentiate lung versus anus squamous cell carcinoma?

  1. Add DLK to the panel, and favor anus origin if having a diffusely membranous staining rather than diffusely cytoplasmic.
  2. Add DLK to the panel, and favor anus origin if having a diffusely cytoplasmic staining rather than diffusely membranous.
  3. Add GRPR to the panel, and favor anus origin if having either a diffuse or focal cytoplasmic staining.
  4. Add GRPR to the panel, and favor anus origin if having a diffuse but not a focal cytoplasmic staining.
  5. The ImmunoQuery results above are not sufficient to suggest an additional stain besides EpCAM, GATA3 and p16.
Correct answer
GRPR answer.jpg

GRPR is the top result when specifically comparing lung versus anus squamous cell carcinoma, both at sensitivity settings 1 and 3, with no major difference between them, and thus anus origin is favored in case of either diffuse or focal cytoplasmic staining. DLK showed as N/A for anus SCC.


Chromogen color

Request a red rather than brown chromogen in heavily pigmented lesions, such as in some melanomas.

Evaluation

First be familiar with which cells on the slide are being evaluated, such as first looking at a slide with standard staining (usually H&E) to avoid counting background cells.

Interpretation

The main methods for interpreting immunohistochemistry results are:

  • Looking up each differential diagnosis at for example Pathology Outlines and comparing their expected staining to see which entity is most likely.
  • Paying for a subscription to ImmunoQuery,[note 2] where you can enter immunohistochemistry results and generate a list of most likely conditions with that profile.

Preferably, immunohistochemistry results will be very specific or sensitive for a suspected condition, thereby confirming it if positive, or excluding it if negative, respectively. Even when that is not the case, immunohistochemistry can at least alter the likelihoods of different differential diagnoses. In practice, clinicians or pathologists do not state exact or even approximate numbers of likelihoods of differential diagnoses (Further information: Reporting ), since reality is too complex for that, but to demonstrate the general principle of how immunohistochemistry results can be calculated, the following formula can be used:

  • Gross likelihood of a disease/condition = (Pre-test probability) x (Probability that the condition shows the immunohistochemistry results at hand).

The pre-test probability is a product of for example the incidence of the condition in the patient's epidemiologic type such as age and sex, as well as the probability that the condition would have caused the clinical course, including signs and symptoms, as well as the microscopic impression. For example, if you want to differentiate a pleomorphic liposarcoma from a pleomorphic rhabdomyosarcoma in soft tissue, you may find in ImmunoQuery that the following stains are most efficient in distinguishing the two, with the following percentages of being positive:

Soft tissue pleomorphic liposarcoma Soft tissue pleomorphic rhabdomyosarcoma
Desmin 17% 95%
Actin HHF-35 0% 71%

Let's say for example that your pre-test probability was about 30% for pleomorphic liposarcoma and 70% for pleomorphic rhabdomyosarcoma, that desmin stains positive, and actin HHF-35 stains negative in this case. Assuming that 0% positive rate means that 100% stain negative, the probability that pleomorphic liposarcoma shows these immunohistochemistry results at hand is:

  • 17% x 100% = 17%

The gross likelihood of pleomorphic liposarcoma therefore becomes:

  • 30% x 17% = 5.1%

In the same way, the corresponding gross likelihood of pleomorphic rhabdomyosarcoma is calculated as:

  • 70% x 95% x (100% - 71%) = 19%

As a result in this case, immunohistochemistry resulted in pleomorphic rhabdomyosarcoma going from about twice as likely compared to pleomorphic liposarcoma to about 4 times as likely. Although results like these do not make major differences individually, detailed calculations of results from a large panel of immunohistochemistry stains can have a major impact when taken together, even if each stain has relatively low sensitivity and specificity.[note 3]

General notes edit

Further reading:

Notes

  1. For a full list of contributors, see article history. Creators of images are attributed at the image description pages, seen by clicking on the images. See Patholines:Authorship for details.
  2. 2.0 2.1 The author has no financial or other conflict of interest in the mentioning of ImmunoQuery.
  3. More detailed explanations about likelihood calculations on differential diagnoses in general can be read at:
    -Häggström, Mikael (2014). "An epidemiology-based and a likelihood ratio-based method of differential diagnosis ". WikiJournal of Medicine (Wikiversity Journal of Medicine) 1 (1). doi:10.15347/wjm/2014.002. ISSN 2002-4436. 

Main page

References

  1. Lin F, Liu H (2014). "Immunohistochemistry in undifferentiated neoplasm/tumor of uncertain origin. ". Arch Pathol Lab Med 138 (12): 1583-610. doi:10.5858/arpa.2014-0061-RA. PMID 25427040. Archived from the original. . 

Image sources