LOCC: a novel visualization and scoring of cutoffs for continuous variables

bioRxiv (Cold Spring Harbor Laboratory)(2023)

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摘要
Objective There is a need for new methods to select and analyze cutoffs employed to define genes that are most prognostic significant and impactful. We designed LOCC (Luo’s Optimization Categorization Curve), a novel tool to visualize and score continuous variables for a dichotomous outcome. Methods To demonstrate LOCC with real world data, we analyzed TCGA hepatocellular carcinoma gene expression and patient data using LOCC. We compared LOCC visualization to receiver operating characteristic (ROC) curve for prognostic modeling to showcase its utility in understanding predictors in various TCGA datasets. Results Analysis of E2F1 expression in hepatocellular carcinoma using LOCC demonstrated appropriate cutoff selection and validation. In addition, we compared LOCC visualization and scoring to ROC curves and c-statistics, demonstrating that LOCC better described predictors. Analysis of a previously published gene signature showed large differences in LOCC scoring, and removing the lowest scoring genes did not affect prognostic modeling of the gene signature demonstrating LOCC scoring could distinguish which predictors were most critical. Conclusion Overall, LOCC is a novel visualization tool for understanding and selecting cutoffs, particularly for gene expression analysis in cancer. The LOCC score can be used to rank genes for prognostic potential and is more suitable than ROC curves for prognostic modeling. ![Figure][1] ### Competing Interest Statement The authors have declared no competing interest. [1]: pending:yes
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关键词
cutoffs,novel visualization,continuous
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