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component analysis (PCA) and partial least squares discriminant analysis (PLS-DA) were performed using metaX (a flexible and comprehensive software for processing metabolomics data). We applied univariate analysis ( t -test) to calculate the statistical
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Division of Cardiovascular and Diabetes Research, Leeds Institute of Cardiovascular and Metabolic Medicine (LICAMM), University of Leeds, Leeds, UK
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with cancer. However, RT remains an essential component of current contemporary multimodality treatment regimes for CAYA cancers. IMRT, VMAT, and IGRT A landmark development in the evolution of RT techniques is the introduction of IMRT, which is
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percentile (or +1.6 SDS) ( 159 ). In a meta-analysis by Abawi et al . ( 160 ), they noted a negative correlation between BMI SDS and peak GH responses to a GH secretagogue, with each increase in BMI-SDS of 1 unit associated with a decrease in GH max of ~12