Validation and characterisation of a DNA methylation alcohol biomarker across the life course
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D. Levy | C. Relton | P. Yousefi | Chunyu Liu | M. Suderman | L. Zuccolo | R. Richmond | R. Langdon | A. Ness | Ryan J Langdon | Ryan J. Langdon | D. Levy
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