Skip to main content
. 2020 Jun 2;7(3):203–216. doi: 10.3233/JND-190459

Table 2.

Challenges and possible improvements in variant interpretation

Key points for variant interpretation Challenges Possible improvements
Deep phenotyping Identification of clinical gene-related hallmarks International natural history studies on large cohorts of patients; a large consensus on the diagnostic and prognostic value of each test/hallmark
Population data: allele frequency threshold Phenotypic divergence (1 gene = several diseases) Large epidemiological studies
Phasing/segregation Time-consuming and cost-ineffective PCR-based analysis Novel sequencing technologies, TRIO or multi-sample sequencing
Elusive variants Repetitive regions, low covered areas, CNV-prone sequences, cryptic splice-causing variants Improved computational tools, novel sequencing technologies, second-tier tests
Variant annotation/functional validation:
  In silico tools Conflicting predictions; uncertain accuracy Improved (more accurate) computational tools
In vitro experiments Large proteins to be dissected in more manageable fragments Benchmark assays
In vivo or ex vivo experiments High cost, non-scalability International multidisciplinary consortia
  Public disease-databases Not standardized interpretation; limited number of shared variants Sharing data; gene/disease-tailored guidelines for an improved variant interpretation