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A toolkit for genetics providers in follow‐up of patients with non‐diagnostic exome sequencing
- Zastrow, Diane B;
- Kohler, Jennefer N;
- Bonner, Devon;
- Reuter, Chloe M;
- Fernandez, Liliana;
- Grove, Megan E;
- Fisk, Dianna G;
- Network, Undiagnosed Diseases;
- Yang, Yaping;
- Eng, Christine M;
- Ward, Patricia A;
- Bick, David;
- Worthey, Elizabeth A;
- Fisher, Paul G;
- Ashley, Euan A;
- Bernstein, Jonathan A;
- Wheeler, Matthew T
- et al.
Published Web Location
https://doi.org/10.1002/jgc4.1119Abstract
There are approximately 7,000 rare diseases affecting 25-30 million Americans, with 80% estimated to have a genetic basis. This presents a challenge for genetics practitioners to determine appropriate testing, make accurate diagnoses, and conduct up-to-date patient management. Exome sequencing (ES) is a comprehensive diagnostic approach, but only 25%-41% of the patients receive a molecular diagnosis. The remaining three-fifths to three-quarters of patients undergoing ES remain undiagnosed. The Stanford Center for Undiagnosed Diseases (CUD), a clinical site of the Undiagnosed Diseases Network, evaluates patients with undiagnosed and rare diseases using a combination of methods including ES. Frequently these patients have non-diagnostic ES results, but strategic follow-up techniques identify diagnoses in a subset. We present techniques used at the CUD that can be adopted by genetics providers in clinical follow-up of cases where ES is non-diagnostic. Solved case examples illustrate different types of non-diagnostic results and the additional techniques that led to a diagnosis. Frequent approaches include segregation analysis, data reanalysis, genome sequencing, additional variant identification, careful phenotype-disease correlation, confirmatory testing, and case matching. We also discuss prioritization of cases for additional analyses.
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