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Aligning Tumor Mutational Burden (TMB) Quantification Across Diagnostic Platforms: Phase II of the Friends of Cancer Research TMB Harmonization Project.

American Journal of Gastroenterology(2021)SCI 1区SCI 2区

Friends Canc Res | NCI | Leidos Biomed Res Inc | Fdn Med Inc | NeoGen Labs | ACT Genom | Bristol Myers Squibb Co | AstraZeneca Pharmaceut LP | European Org Res Treatment Canc | LGC Clin Diagnost | OmniSeq Inc | Thermo Fisher Sci | Intermt Precis Genom | Brigham & Womens Hosp | QIAGEN Inc | Mem Sloan Kettering Canc Ctr | Personal Genome Diagnost | Univ Texas MD Anderson Canc Ctr | Illumina Inc | Biodesix Inc | Johns Hopkins Univ | Caris Life Sci Inc | Univ Hosp Heidelberg | EMD Serono Res & Dev Inst Inc | Q Squared Solut | Gen Dynam Informat Technol Inc

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Abstract
BACKGROUND:Tumor mutational burden (TMB) measurements aid in identifying patients who are likely to benefit from immunotherapy; however, there is empirical variability across panel assays and factors contributing to this variability have not been comprehensively investigated. Identifying sources of variability can help facilitate comparability across different panel assays, which may aid in broader adoption of panel assays and development of clinical applications.MATERIALS AND METHODS:Twenty-nine tumor samples and 10 human-derived cell lines were processed and distributed to 16 laboratories; each used their own bioinformatics pipelines to calculate TMB and compare to whole exome results. Additionally, theoretical positive percent agreement (PPA) and negative percent agreement (NPA) of TMB were estimated. The impact of filtering pathogenic and germline variants on TMB estimates was assessed. Calibration curves specific to each panel assay were developed to facilitate translation of panel TMB values to whole exome sequencing (WES) TMB values.RESULTS:Panel sizes >667 Kb are necessary to maintain adequate PPA and NPA for calling TMB high versus TMB low across the range of cut-offs used in practice. Failure to filter out pathogenic variants when estimating panel TMB resulted in overestimating TMB relative to WES for all assays. Filtering out potential germline variants at >0% population minor allele frequency resulted in the strongest correlation to WES TMB. Application of a calibration approach derived from The Cancer Genome Atlas data, tailored to each panel assay, reduced the spread of panel TMB values around the WES TMB as reflected in lower root mean squared error (RMSE) for 26/29 (90%) of the clinical samples.CONCLUSIONS:Estimation of TMB varies across different panels, with panel size, gene content, and bioinformatics pipelines contributing to empirical variability. Statistical calibration can achieve more consistent results across panels and allows for comparison of TMB values across various panel assays. To promote reproducibility and comparability across assays, a software tool was developed and made publicly available.
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precision medicine,biomarker,tumor mutational burden,immunotherapy,cancer
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要点】:本研究通过的第二阶段项目旨在跨不同诊断平台对肿瘤突变负荷(TMB)量化进行校准,发现较大的基因panel尺寸和优化的生物信息学管道对于维持TMB判定的准确性和特异性至关重要,并表明统计校准能跨不同panel平台提供一致的结果。

方法】:研究者通过统计校准方法对不同平台上的TMB估计进行对齐。

实验】:在Friends of Cancer Research的TMB校准项目中,研究者使用了多种不同尺寸和内容的基因panel进行TMB量化,并通过统计校准优化了结果的一致性,最终实现了跨平台TMB值的可比性。