2016
DOI: 10.1007/s10985-016-9387-7
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Conditional screening for ultra-high dimensional covariates with survival outcomes

Abstract: Identifying important biomarkers that are predictive for cancer patients’ prognosis is key in gaining better insights into the biological influences on the disease and has become a critical component of precision medicine. The emergence of large-scale biomedical survival studies, which typically involve excessive number of biomarkers, has brought high demand in designing efficient screening tools for selecting predictive biomarkers. The vast amount of biomarkers defies any existing variable selection methods v… Show more

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Cited by 40 publications
(44 citation statements)
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(42 reference statements)
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“…To fill the gap, we will review and compare several representative works in this field. Specifically, we first review modelmotivated screening methods, including the principled sure screening by [27], the feature aberration at survival times screening by [8] and the conditional screening by [11]. We then review several model-free methods, including the quantile adaptive sure independence screening by [9], the censored rank independence screening procedure by [19], the survival impact index screening by [17] and the integrated powered density screening by [10].…”
Section: Hhs Public Accessmentioning
confidence: 99%
See 3 more Smart Citations
“…To fill the gap, we will review and compare several representative works in this field. Specifically, we first review modelmotivated screening methods, including the principled sure screening by [27], the feature aberration at survival times screening by [8] and the conditional screening by [11]. We then review several model-free methods, including the quantile adaptive sure independence screening by [9], the censored rank independence screening procedure by [19], the survival impact index screening by [17] and the integrated powered density screening by [10].…”
Section: Hhs Public Accessmentioning
confidence: 99%
“…Let ℳ − = {j ∉ , β j ≠ 0}, q = | |, and X = (X j , j ∈ ) T . [11] proposed to fit the marginal Cox regression by including the known covariates in X . Specifically, for each X j ∉ X , they considered the following Cox regression model …”
Section: Conditional Screeningmentioning
confidence: 99%
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“…To overcome the drawbacks of marginal screening methods, Hong, Kang and Li (2018) has recently proposed a conditional screening approach for survival data with ultrahigh dimensional covariates. However, the conditional screening approach requires pre-selection of a set of covariates, and the computational burden is heavy since it requires fitting a multivariate survival model for each covariate not pre-selected.…”
Section: Introductionmentioning
confidence: 99%