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Characterizing DNA methylation signatures of retinoblastoma using aqueous humor liquid biopsy.


ABSTRACT: Retinoblastoma (RB) is a cancer that forms in the developing retina of babies and toddlers. The goal of therapy is to cure the tumor, save the eye and maximize vision. However, it is difficult to predict which eyes are likely to respond to therapy. Predictive molecular biomarkers are needed to guide prognosis and optimize treatment decisions. Direct tumor biopsy is not an option for this cancer; however, the aqueous humor (AH) is an alternate source of tumor-derived cell-free DNA (cfDNA). Here we show that DNA methylation profiling of the AH is a valid method to identify the methylation status of RB tumors. We identify 294 genes directly regulated by methylation that are implicated in p53 tumor suppressor (RB1, p53, p21, and p16) and oncogenic (E2F) pathways. Finally, we use AH to characterize molecular subtypes that can potentially be used to predict the likelihood of treatment success for retinoblastoma patients.

SUBMITTER: Li HT 

PROVIDER: S-EPMC9492718 | biostudies-literature | 2022 Sep

REPOSITORIES: biostudies-literature

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Characterizing DNA methylation signatures of retinoblastoma using aqueous humor liquid biopsy.

Li Hong-Tao HT   Xu Liya L   Weisenberger Daniel J DJ   Li Meng M   Zhou Wanding W   Peng Chen-Ching CC   Stachelek Kevin K   Cobrinik David D   Liang Gangning G   Berry Jesse L JL  

Nature communications 20220921 1


Retinoblastoma (RB) is a cancer that forms in the developing retina of babies and toddlers. The goal of therapy is to cure the tumor, save the eye and maximize vision. However, it is difficult to predict which eyes are likely to respond to therapy. Predictive molecular biomarkers are needed to guide prognosis and optimize treatment decisions. Direct tumor biopsy is not an option for this cancer; however, the aqueous humor (AH) is an alternate source of tumor-derived cell-free DNA (cfDNA). Here w  ...[more]

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