Supplemental Figure 4 from Impact of Tumor-intrinsic Molecular Features on Survival and Acquired Tyrosine Kinase Inhibitor Resistance in ALK-positive NSCLC
crossref(2024)
Abstract
Clonal and non-clonal ALK resistance mutations across patients with multiple resistance mutations. Each ALK mutation is plotted by sample and colored by putative clonal classification based on the maximum difference between resistance mutation mutant allele frequencies (MAFs). Inset table provides the clonal and non-clonal patient counts for those with v1/v3 variant types. Chi-squared statistic indicates there is no significant association with resistance clonality and fusion type.
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ALK Inhibitors,Biomarker Analysis,Survival Analysis
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