基因签名
医学
队列
肾移植
肿瘤科
移植
内科学
生物标志物
基因
生物
基因表达
生物化学
作者
Yue Cao,Stephen I. Alexander,Jeremy R. Chapman,Jonathan C. Craig,Germaine Wong,Jean Yang
出处
期刊:Transplantation
[Ovid Technologies (Wolters Kluwer)]
日期:2020-11-02
卷期号:105 (6): 1225-1237
被引量:9
标识
DOI:10.1097/tp.0000000000003516
摘要
Background. Noninvasive biomarkers may predict adverse events such as acute rejection after kidney transplantation and may be preferable to existing methods because of superior accuracy and convenience. It is uncertain how these biomarkers, often derived from a single study, perform across different cohorts of recipients. Methods. Using a cross-validation framework that evaluates the performance of biomarkers, the aim of this study was to devise an integrated gene signature set that predicts acute rejection in kidney transplant recipients. Inclusion criteria were publicly available datasets of gene signatures that reported acute rejection episodes after kidney transplantation. We tested the predictive probability for acute rejection using gene signatures within individual datasets and validated the set using other datasets. Eight eligible studies of 1454 participants, with a total of 512 acute rejections episodes were included. Results. All sets of gene signatures had good positive and negative predictive values (79%–96%) for acute rejection within their own cohorts, but the predictability reduced to <50% when tested in other independent datasets. By integrating signature sets with high specificity scores across all studies, a set of 150 genes (included CXCL6 , CXCL11 , OLFM4 , and PSG9 ) which are known to be associated with immune responses, had reasonable predictive values (varied between 69% and 90%). Conclusions. A set of gene signatures for acute rejection derived from a specific cohort of kidney transplant recipients do not appear to provide adequate prediction in an independent cohort of transplant recipients. However, the integration of gene signature sets with high specificity scores may improve the prediction performance of these markers.
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