Granzyme B PET Imaging Permits Stratified Ex Vivo Analysis to Better Understand Response to Immunotherapy

Objectives: While cancer immunotherapy has revolutionized the treatment of certain cancers, overall response rates remain low. In part, this is due to the complex interplay between the immune system and the tumor microenvironment. Although techniques such as flow cytometry and cytokine analysis are...

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Veröffentlicht in:The Journal of nuclear medicine (1978) 2019-05, Vol.60
Hauptverfasser: Larimer, Benjamin, Austin, Emily, LaSalle, Thomas, Rigney, Grant, Louis, Adriell, Fisher, Margaret, Nesti, Sarah, Mahmood, Umar
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container_title The Journal of nuclear medicine (1978)
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creator Larimer, Benjamin
Austin, Emily
LaSalle, Thomas
Rigney, Grant
Louis, Adriell
Fisher, Margaret
Nesti, Sarah
Mahmood, Umar
description Objectives: While cancer immunotherapy has revolutionized the treatment of certain cancers, overall response rates remain low. In part, this is due to the complex interplay between the immune system and the tumor microenvironment. Although techniques such as flow cytometry and cytokine analysis are highly informative, their destructive nature limits the longitudinal information provided. Molecular imaging, conversely, can provide a non-invasive and quantitative examination of specific processes of interest. Previously, we developed a granzyme B PET imaging agent and demonstrated specific detection that was predictive of response to immunotherapy. Based on these findings, we utilized PET imaging in combination with flow cytometry and cytokine analysis in order to better understand the conditions and potential factors that lead to high granzyme B release. Methods: Mice bearing CT26 or MC38 syngeneic tumors underwent granzyme B PET/CT imaging at 6 or 12 days post-initiation of anti-PD-1 plus anti-CTLA-4 combination therapy, and tumor and blood pool was quantified by drawing a three-dimensional region of interest using CT guidance. Tumor-specific accumulation was then calculated using the tumor to blood ratio (TBR). After the completion of PET imaging, tumors were excised, and a single-cell suspension generated. The supernatant of this suspension was saved for cytokine analysis using a 36-Plex Mouse Cytokine analysis kit. Cells were stained with antibodies to differentiate T cell subtypes and activation states and flow cytometry performed. As higher granzyme B PET TBR is consistent with subsequent response to immunotherapy, the TBRs were plotted against individual flow cytometry and cytokine results to explore correlations between immune cell types and cytokines and granzyme B release. Results: PET imaging resulted in tumors with granzyme B PET TBRs ranging from 0.95 to 2.41, which was consistent with previous measurements following combination immunotherapy. When individual tumor granzyme B TBR was compared to the corresponding immune cell populations and cytokine expression, several correlations were observed. Among immune cell populations, there was a positive linear correlation between PD-1 expression and granzyme B PET signal (Figure A) but a negative correlation between granzyme B signal and PD-1-negative, granzyme B-positive CD8 T cells (Figure B). This indicates that actively tumor-killing T cells express PD-1 but become devoid of intracellular granzym
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In part, this is due to the complex interplay between the immune system and the tumor microenvironment. Although techniques such as flow cytometry and cytokine analysis are highly informative, their destructive nature limits the longitudinal information provided. Molecular imaging, conversely, can provide a non-invasive and quantitative examination of specific processes of interest. Previously, we developed a granzyme B PET imaging agent and demonstrated specific detection that was predictive of response to immunotherapy. Based on these findings, we utilized PET imaging in combination with flow cytometry and cytokine analysis in order to better understand the conditions and potential factors that lead to high granzyme B release. Methods: Mice bearing CT26 or MC38 syngeneic tumors underwent granzyme B PET/CT imaging at 6 or 12 days post-initiation of anti-PD-1 plus anti-CTLA-4 combination therapy, and tumor and blood pool was quantified by drawing a three-dimensional region of interest using CT guidance. Tumor-specific accumulation was then calculated using the tumor to blood ratio (TBR). After the completion of PET imaging, tumors were excised, and a single-cell suspension generated. The supernatant of this suspension was saved for cytokine analysis using a 36-Plex Mouse Cytokine analysis kit. Cells were stained with antibodies to differentiate T cell subtypes and activation states and flow cytometry performed. As higher granzyme B PET TBR is consistent with subsequent response to immunotherapy, the TBRs were plotted against individual flow cytometry and cytokine results to explore correlations between immune cell types and cytokines and granzyme B release. Results: PET imaging resulted in tumors with granzyme B PET TBRs ranging from 0.95 to 2.41, which was consistent with previous measurements following combination immunotherapy. When individual tumor granzyme B TBR was compared to the corresponding immune cell populations and cytokine expression, several correlations were observed. Among immune cell populations, there was a positive linear correlation between PD-1 expression and granzyme B PET signal (Figure A) but a negative correlation between granzyme B signal and PD-1-negative, granzyme B-positive CD8 T cells (Figure B). This indicates that actively tumor-killing T cells express PD-1 but become devoid of intracellular granzyme B, most likely because they have released a majority of their granules. Regulatory T cells were also positively correlated with granzyme B PET signal (Figure C), which may be a function of a negative feedback loop signaling recruiting following cytotoxic T cell activation. In addition to flow cytometry, cytokine expression was also quantified. Granzyme B PET signal was compared to concentration of 36 TH1, TH2, or TH17 cytokine (Figure D). Some expected cytokines positively correlated with granzyme B PET TBR, including IFN-gamma, TNF-alpha and GM-CSF (Figure E), but other unexpected cytokines with roles in macrophage, helper T cell and eosinophil chemotaxis were also positively correlated (Figure F). Conclusions: Granzyme B PET imaging combined with ex vivo analysis provides a unique insight into factors that drive response to immunotherapy. In our analyses, we observed correlations between granzyme B and CD8 T cell activation/exhaustion and regulatory T cell presence. Additionally, multiple cytokines were positively correlated with granzyme B PET signal including expected cytokines like IFN-gamma and TNF-alpha, and also new cytokines involved in the trafficking of cells that are not traditionally associated with the anti-tumor immune response. These finding form the basis for new potential avenues of therapeutic intervention and suggest further investigation into the role of non-T cell immune cells in the anti-tumor immune response.</description><identifier>ISSN: 0161-5505</identifier><identifier>EISSN: 1535-5667</identifier><language>eng</language><publisher>New York: Society of Nuclear Medicine</publisher><subject>Antibodies ; Blood ; Cancer immunotherapy ; CD8 antigen ; Cell activation ; Chemotaxis ; Computed tomography ; Correlation analysis ; CTLA-4 protein ; Cytokines ; Cytotoxicity ; Exhaustion ; Feedback loops ; Flow cytometry ; Granule cells ; Granulocyte-macrophage colony-stimulating factor ; Granzyme B ; Helper cells ; Image processing ; Immune response ; Immune system ; Immunoregulation ; Immunotherapy ; Leukocytes (eosinophilic) ; Lymphocytes ; Lymphocytes B ; Lymphocytes T ; Macrophages ; Medical imaging ; Negative feedback ; PD-1 protein ; Populations ; Positron emission ; Tomography ; Tumor necrosis factor-α ; Tumors ; γ-Interferon</subject><ispartof>The Journal of nuclear medicine (1978), 2019-05, Vol.60</ispartof><rights>Copyright Society of Nuclear Medicine May 1, 2019</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>314,776,780</link.rule.ids></links><search><creatorcontrib>Larimer, Benjamin</creatorcontrib><creatorcontrib>Austin, Emily</creatorcontrib><creatorcontrib>LaSalle, Thomas</creatorcontrib><creatorcontrib>Rigney, Grant</creatorcontrib><creatorcontrib>Louis, Adriell</creatorcontrib><creatorcontrib>Fisher, Margaret</creatorcontrib><creatorcontrib>Nesti, Sarah</creatorcontrib><creatorcontrib>Mahmood, Umar</creatorcontrib><title>Granzyme B PET Imaging Permits Stratified Ex Vivo Analysis to Better Understand Response to Immunotherapy</title><title>The Journal of nuclear medicine (1978)</title><description>Objectives: While cancer immunotherapy has revolutionized the treatment of certain cancers, overall response rates remain low. In part, this is due to the complex interplay between the immune system and the tumor microenvironment. Although techniques such as flow cytometry and cytokine analysis are highly informative, their destructive nature limits the longitudinal information provided. Molecular imaging, conversely, can provide a non-invasive and quantitative examination of specific processes of interest. Previously, we developed a granzyme B PET imaging agent and demonstrated specific detection that was predictive of response to immunotherapy. Based on these findings, we utilized PET imaging in combination with flow cytometry and cytokine analysis in order to better understand the conditions and potential factors that lead to high granzyme B release. Methods: Mice bearing CT26 or MC38 syngeneic tumors underwent granzyme B PET/CT imaging at 6 or 12 days post-initiation of anti-PD-1 plus anti-CTLA-4 combination therapy, and tumor and blood pool was quantified by drawing a three-dimensional region of interest using CT guidance. Tumor-specific accumulation was then calculated using the tumor to blood ratio (TBR). After the completion of PET imaging, tumors were excised, and a single-cell suspension generated. The supernatant of this suspension was saved for cytokine analysis using a 36-Plex Mouse Cytokine analysis kit. Cells were stained with antibodies to differentiate T cell subtypes and activation states and flow cytometry performed. As higher granzyme B PET TBR is consistent with subsequent response to immunotherapy, the TBRs were plotted against individual flow cytometry and cytokine results to explore correlations between immune cell types and cytokines and granzyme B release. Results: PET imaging resulted in tumors with granzyme B PET TBRs ranging from 0.95 to 2.41, which was consistent with previous measurements following combination immunotherapy. When individual tumor granzyme B TBR was compared to the corresponding immune cell populations and cytokine expression, several correlations were observed. Among immune cell populations, there was a positive linear correlation between PD-1 expression and granzyme B PET signal (Figure A) but a negative correlation between granzyme B signal and PD-1-negative, granzyme B-positive CD8 T cells (Figure B). This indicates that actively tumor-killing T cells express PD-1 but become devoid of intracellular granzyme B, most likely because they have released a majority of their granules. Regulatory T cells were also positively correlated with granzyme B PET signal (Figure C), which may be a function of a negative feedback loop signaling recruiting following cytotoxic T cell activation. In addition to flow cytometry, cytokine expression was also quantified. Granzyme B PET signal was compared to concentration of 36 TH1, TH2, or TH17 cytokine (Figure D). Some expected cytokines positively correlated with granzyme B PET TBR, including IFN-gamma, TNF-alpha and GM-CSF (Figure E), but other unexpected cytokines with roles in macrophage, helper T cell and eosinophil chemotaxis were also positively correlated (Figure F). Conclusions: Granzyme B PET imaging combined with ex vivo analysis provides a unique insight into factors that drive response to immunotherapy. In our analyses, we observed correlations between granzyme B and CD8 T cell activation/exhaustion and regulatory T cell presence. Additionally, multiple cytokines were positively correlated with granzyme B PET signal including expected cytokines like IFN-gamma and TNF-alpha, and also new cytokines involved in the trafficking of cells that are not traditionally associated with the anti-tumor immune response. These finding form the basis for new potential avenues of therapeutic intervention and suggest further investigation into the role of non-T cell immune cells in the anti-tumor immune response.</description><subject>Antibodies</subject><subject>Blood</subject><subject>Cancer immunotherapy</subject><subject>CD8 antigen</subject><subject>Cell activation</subject><subject>Chemotaxis</subject><subject>Computed tomography</subject><subject>Correlation analysis</subject><subject>CTLA-4 protein</subject><subject>Cytokines</subject><subject>Cytotoxicity</subject><subject>Exhaustion</subject><subject>Feedback loops</subject><subject>Flow cytometry</subject><subject>Granule cells</subject><subject>Granulocyte-macrophage colony-stimulating factor</subject><subject>Granzyme B</subject><subject>Helper cells</subject><subject>Image processing</subject><subject>Immune response</subject><subject>Immune system</subject><subject>Immunoregulation</subject><subject>Immunotherapy</subject><subject>Leukocytes (eosinophilic)</subject><subject>Lymphocytes</subject><subject>Lymphocytes B</subject><subject>Lymphocytes T</subject><subject>Macrophages</subject><subject>Medical imaging</subject><subject>Negative feedback</subject><subject>PD-1 protein</subject><subject>Populations</subject><subject>Positron emission</subject><subject>Tomography</subject><subject>Tumor necrosis factor-α</subject><subject>Tumors</subject><subject>γ-Interferon</subject><issn>0161-5505</issn><issn>1535-5667</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2019</creationdate><recordtype>article</recordtype><recordid>eNqNjMFqwkAUABexYLT9hweeA5vE3aZHLan1Jq16lYW8pCvubrrvpRi_3hb6AZ7mMMOMRJKpQqVK6-exSGSms1QpqSZiSnSSUuqyLBNh19H46-AQVrCtdrBxprW-hS1GZ5ngk6Nh21isobrAwf4EWHpzHsgScIAVMmOEva8xEhtfwwdSFzzhn9041_vAXxhNNzyKh8acCZ_-ORPzt2r3-p52MXz3SHw8hT7-vumY54XOtJYvi-K-6gZhkEkY</recordid><startdate>20190501</startdate><enddate>20190501</enddate><creator>Larimer, Benjamin</creator><creator>Austin, Emily</creator><creator>LaSalle, Thomas</creator><creator>Rigney, Grant</creator><creator>Louis, Adriell</creator><creator>Fisher, Margaret</creator><creator>Nesti, Sarah</creator><creator>Mahmood, Umar</creator><general>Society of Nuclear Medicine</general><scope>4T-</scope><scope>8FD</scope><scope>FR3</scope><scope>K9.</scope><scope>M7Z</scope><scope>NAPCQ</scope><scope>P64</scope></search><sort><creationdate>20190501</creationdate><title>Granzyme B PET Imaging Permits Stratified Ex Vivo Analysis to Better Understand Response to Immunotherapy</title><author>Larimer, Benjamin ; 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Medical Complete (Alumni)</collection><collection>Biochemistry Abstracts 1</collection><collection>Nursing &amp; Allied Health Premium</collection><collection>Biotechnology and BioEngineering Abstracts</collection><jtitle>The Journal of nuclear medicine (1978)</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Larimer, Benjamin</au><au>Austin, Emily</au><au>LaSalle, Thomas</au><au>Rigney, Grant</au><au>Louis, Adriell</au><au>Fisher, Margaret</au><au>Nesti, Sarah</au><au>Mahmood, Umar</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Granzyme B PET Imaging Permits Stratified Ex Vivo Analysis to Better Understand Response to Immunotherapy</atitle><jtitle>The Journal of nuclear medicine (1978)</jtitle><date>2019-05-01</date><risdate>2019</risdate><volume>60</volume><issn>0161-5505</issn><eissn>1535-5667</eissn><abstract>Objectives: While cancer immunotherapy has revolutionized the treatment of certain cancers, overall response rates remain low. In part, this is due to the complex interplay between the immune system and the tumor microenvironment. Although techniques such as flow cytometry and cytokine analysis are highly informative, their destructive nature limits the longitudinal information provided. Molecular imaging, conversely, can provide a non-invasive and quantitative examination of specific processes of interest. Previously, we developed a granzyme B PET imaging agent and demonstrated specific detection that was predictive of response to immunotherapy. Based on these findings, we utilized PET imaging in combination with flow cytometry and cytokine analysis in order to better understand the conditions and potential factors that lead to high granzyme B release. Methods: Mice bearing CT26 or MC38 syngeneic tumors underwent granzyme B PET/CT imaging at 6 or 12 days post-initiation of anti-PD-1 plus anti-CTLA-4 combination therapy, and tumor and blood pool was quantified by drawing a three-dimensional region of interest using CT guidance. Tumor-specific accumulation was then calculated using the tumor to blood ratio (TBR). After the completion of PET imaging, tumors were excised, and a single-cell suspension generated. The supernatant of this suspension was saved for cytokine analysis using a 36-Plex Mouse Cytokine analysis kit. Cells were stained with antibodies to differentiate T cell subtypes and activation states and flow cytometry performed. As higher granzyme B PET TBR is consistent with subsequent response to immunotherapy, the TBRs were plotted against individual flow cytometry and cytokine results to explore correlations between immune cell types and cytokines and granzyme B release. Results: PET imaging resulted in tumors with granzyme B PET TBRs ranging from 0.95 to 2.41, which was consistent with previous measurements following combination immunotherapy. When individual tumor granzyme B TBR was compared to the corresponding immune cell populations and cytokine expression, several correlations were observed. Among immune cell populations, there was a positive linear correlation between PD-1 expression and granzyme B PET signal (Figure A) but a negative correlation between granzyme B signal and PD-1-negative, granzyme B-positive CD8 T cells (Figure B). This indicates that actively tumor-killing T cells express PD-1 but become devoid of intracellular granzyme B, most likely because they have released a majority of their granules. Regulatory T cells were also positively correlated with granzyme B PET signal (Figure C), which may be a function of a negative feedback loop signaling recruiting following cytotoxic T cell activation. In addition to flow cytometry, cytokine expression was also quantified. Granzyme B PET signal was compared to concentration of 36 TH1, TH2, or TH17 cytokine (Figure D). Some expected cytokines positively correlated with granzyme B PET TBR, including IFN-gamma, TNF-alpha and GM-CSF (Figure E), but other unexpected cytokines with roles in macrophage, helper T cell and eosinophil chemotaxis were also positively correlated (Figure F). Conclusions: Granzyme B PET imaging combined with ex vivo analysis provides a unique insight into factors that drive response to immunotherapy. In our analyses, we observed correlations between granzyme B and CD8 T cell activation/exhaustion and regulatory T cell presence. Additionally, multiple cytokines were positively correlated with granzyme B PET signal including expected cytokines like IFN-gamma and TNF-alpha, and also new cytokines involved in the trafficking of cells that are not traditionally associated with the anti-tumor immune response. These finding form the basis for new potential avenues of therapeutic intervention and suggest further investigation into the role of non-T cell immune cells in the anti-tumor immune response.</abstract><cop>New York</cop><pub>Society of Nuclear Medicine</pub></addata></record>
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subjects Antibodies
Blood
Cancer immunotherapy
CD8 antigen
Cell activation
Chemotaxis
Computed tomography
Correlation analysis
CTLA-4 protein
Cytokines
Cytotoxicity
Exhaustion
Feedback loops
Flow cytometry
Granule cells
Granulocyte-macrophage colony-stimulating factor
Granzyme B
Helper cells
Image processing
Immune response
Immune system
Immunoregulation
Immunotherapy
Leukocytes (eosinophilic)
Lymphocytes
Lymphocytes B
Lymphocytes T
Macrophages
Medical imaging
Negative feedback
PD-1 protein
Populations
Positron emission
Tomography
Tumor necrosis factor-α
Tumors
γ-Interferon
title Granzyme B PET Imaging Permits Stratified Ex Vivo Analysis to Better Understand Response to Immunotherapy
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