Evaluation of cytogenetic and molecular markers with MTX-mediated toxicity in pediatric acute lymphoblastic leukemia patients

Purpose Pediatric acute lymphoblastic leukemia (pALL) patients have better overall survival and methotrexate (MTX) is an effective drug used in their treatment. However, the treatment-related adverse effects (TRAEs) have a bigger impact on the therapy. In this study, we have evaluated the associatio...

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Veröffentlicht in:Cancer chemotherapy and pharmacology 2022-03, Vol.89 (3), p.393-400
Hauptverfasser: Ramalingam, Ravi, Kaur, Harpreet, Scott, Julius Xavier, Sneha, Latha M., Arunkumar, Ganeshprasad, Srinivasan, Arathi, Paul, Solomon F. D.
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Sprache:eng
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Zusammenfassung:Purpose Pediatric acute lymphoblastic leukemia (pALL) patients have better overall survival and methotrexate (MTX) is an effective drug used in their treatment. However, the treatment-related adverse effects (TRAEs) have a bigger impact on the therapy. In this study, we have evaluated the association of polymorphisms in genes encoding proteins engaged in MTX metabolism, and the cytogenetic aberrations with TRAEs. Methods A total of 115 patients between the age of 1 and 18 years (average: 6.6) under maintenance therapy were selected for the study. SLC19A1 (c.80G > A), MTHFR (c.677C > T; c.1298A > C), and TYMS (c.*450_*455del) genotypes were determined using PCR techniques and Sanger sequencing. Cytogenetic and SNP findings were analyzed for any association with the reported toxicities using odds ratio, chi-square test, multifactor dimensionality reduction (MDR) analysis for synergistic effect and, multinomial logistic regression analysis for the likelihood of adverse events. Results Among the evaluated genetic variations, SLC19A1 (c.80G > A) was significantly associated with TRAEs (OR = 5.71, p  = 0.002). Multinomial logistic regression analysis (chi-sq = 16.64, p  
ISSN:0344-5704
1432-0843
DOI:10.1007/s00280-022-04405-7