Immune profiling in human breast cancer using high-sensitivity detection and analysis techniques
نویسندگان
چکیده
OBJECTIVES Evaluation of immune profiles in human breast cancer using high-sensitivity detection and analysis methods. DESIGN Cohort comparative analysis studies of breast tissue. SETTING Human hospital and laboratory healthcare facilities. PARTICIPANTS Women over 18 years. MAIN OUTCOME MEASURES Evaluation of the comparative immunophenotype of human breast carcinoma and normal breast tissues. RESULTS Leukocyte density and specific subgroups of lymphocytes and macrophages were generally higher in breast cancers compared to normal breast tissues. CD3, CD4, CD45RO, CD45RA(2H4), CD45 and HLA Class II (on TIL) were significantly expressed on breast tumour tissues compared with normal tissues (p < .01). Some 30% of T-cells were γδ-TCR positive, but the majority were αβ-TCR in type. CD19 (B-cell), CD14 (FMC32 and 33) and HLA Class I levels (epithelial and TIL) showed no significant differences. IL-2α receptor expression was low or absent on most TIL. CONCLUSIONS High-sensitivity and image analysis techniques permitted accurate characterisation of the TIL infiltrate for immune profiling. Breast carcinoma showed predominance of CD4 T-cells of mainly memory phenotype. Normal breast tissues showed low leukocyte infiltration. Further correlation of these findings with clinical outcome, including survival, is proceeding with encouraging results.
منابع مشابه
Immune profiling in human breast cancer is predictive of 5- and 10-year survival.
Conclusions Immune profiling of the TIL infiltrate in human breast carcinoma using high-sensitivity detection and analysis techniques showed predominance of CD3 cells, being ab-TCR, CD4 T cells of mainly memory phenotype. Importantly, these findings were strongly predictive of 5and 10-year survival. This indicates the real possibility that TIL infiltration in breast cancer might be open to immu...
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