1. Assessing Limit of Detection in Clinical Sequencing.
- Author
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Starks ER, Swanson L, Docking TR, Bosdet I, Munro S, Moore RA, and Karsan A
- Subjects
- Alleles, DNA genetics, DNA isolation & purification, Humans, Limit of Detection, Mutation, Polymorphism, Single Nucleotide, Reproducibility of Results, Sensitivity and Specificity, Genomics methods, High-Throughput Nucleotide Sequencing methods, Models, Statistical, Neoplasms genetics, Polymerase Chain Reaction methods
- Abstract
Clinical reporting of solid tumor sequencing requires reliable assessment of the accuracy and reproducibility of each assay. Somatic mutation variant allele fractions may be below 10% in many samples due to sample heterogeneity, tumor clonality, and/or sample degradation in fixatives such as formalin. The toolkits available to the clinical sequencing community for correlating assay design parameters with assay sensitivity remain limited, and large-scale empirical assessments are often relied upon due to the lack of clear theoretical grounding. To address this uncertainty, a theoretical model was developed for predicting the expected variant calling sensitivity for a given library complexity and sequencing depth. Binomial models were found to be appropriate when assay sensitivity was only limited by library complexity or sequencing depth, but functional scaling for library complexity was necessary when both library complexity and sequencing depth were co-limiting. This model was empirically validated with sequencing experiments by using a series of DNA input amounts and sequencing depths. Based on these findings, a workflow is proposed for determining the limiting factors to sensitivity in different assay designs, and the formulas for these scenarios are presented. The approach described here provides designers of clinical assays with the methods to theoretically predict assay design outcomes a priori, potentially reducing burden in clinical tumor assay design and validation efforts., (Copyright © 2021. Published by Elsevier Inc.)
- Published
- 2021
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