Concurrent immunohistochemical testing of L1CAM and MMR proteins adds value in risk stratification of endometrial cancer: a proof of concept

EUROPEAN JOURNAL OF GYNAECOLOGICAL ONCOLOGY(2021)

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摘要
Objectives: Histologic classification along with clinical stage predominantly drive management of patients with endometrial cancer. However, current clinico-pathologic risk-based stratification has proven suboptimal, inciting efforts to identify additional molecular classifiers, such as LiCAM. This is of particular relevance for the TCGA-defined Nonspecific Molecular Profile (NSMP) and MMR-deficient (MMR-d) groups of tumors, both of which are classified as having an intermediate prognosis. In current practice, LiCAM immunostaining is reserved for NSMP tumors that have been classified as MMR-proficient. The aim of this study is to investigate LiCAM testing in tandem, rather than sequential with that of MMR. Methods: A total of 149 MMR-testedendometrial carcinoma cases from 2019-2020 were identified, of which, 45 had also undergone L1CAM immunostaining. Clinical information including grade, stage, and treatment was reviewed. This was correlated with percentage of L1CAM positivity and MM R-status. Results: L1CAM positivity was noted in 7/45 (15.6%) cases with 6/45 (13.3%) additional cases demonstrating only focal positivity. MMR deficiency was noted in 24/45 (53.3%) of the cases in which L1CAM was performed. Of the cases that showed L1CAM positivity, 6/7 (85.7%), were found to be MMR-deficient. Within the remaining group in which L1CAM was not performed, 24/104 (231%) of cases showed MMR deficiency. Conclusions: Current findings suggest that L1CAM positivity is not mutually exclusive when correlating with MMR status. Performing L1CAM immunostaining on all endometrial carcinomas may assist in appropriate treatment for patients with L1CAM positivity, and in particular, in MMR-proficient cases classified within the NSMP category.
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关键词
L1CAM, MMR, Endometrial cancer, Testing algorithm, Molecular classification
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