| Literature DB >> 32733828 |
Emilie Lalonde1, Stefan Rentas1, Fumin Lin1, Matthew C Dulik1, Cara M Skraban2, Nancy B Spinner1.
Abstract
Powerful, recent advances in technologies to analyze the genome have had a profound impact on the practice of medical genetics, both in the laboratory and in the clinic. Increasing utilization of genome-wide testing such as chromosomal microarray analysis and exome sequencing have lead a shift toward a "genotype-first" approach. Numerous techniques are now available to diagnose a particular syndrome or phenotype, and while traditional techniques remain efficient tools in certain situations, higher-throughput technologies have become the de facto laboratory tool for diagnosis of most conditions. However, selecting the right assay or technology is challenging, and the wrong choice may lead to prolonged time to diagnosis, or even a missed diagnosis. In this review, we will discuss current core technologies for the diagnosis of classic genetic disorders to shed light on the benefits and disadvantages of these strategies, including diagnostic efficiency, variant interpretation, and secondary findings. Finally, we review upcoming technologies posed to impart further changes in the field of genetic diagnostics as we move toward "genome-first" practice.Entities:
Keywords: copy number variants; genetic syndromes; genetics; genomic diagnostics; next-generation sequencing; pediatrics; sequencing
Year: 2020 PMID: 32733828 PMCID: PMC7360789 DOI: 10.3389/fped.2020.00373
Source DB: PubMed Journal: Front Pediatr ISSN: 2296-2360 Impact factor: 3.418
Genomic technologies for chromosomal and molecular syndromes.
| Karyotyping | Large structural changes: aneuploidies, translocations, isochromosomes, rings, CNVs >5–10 Mb, etc. Balanced changes (translocations, insertions, inversions, rings) | 5–10 Mb* | - Suspicion of chromosome syndrome |
| FISH | Aneuploidies, CNVs, translocations, inversions, insertions Probes must be designed for specific aberration | 50 kb−1 Mb; most 200–400 kb | - Prenatal aneuploidy |
| SNP array | Copy number changes associated with | 10–100 kb | - Congenital anomalies |
| aCGH | Gene or exon level copy number changes associated with | Based on designed, clinical grade typically single-exon resolution for genes of interest | - As part of a phenotype-specific panel test |
| MLPA, real-time PCR | Deletions or duplications | Exon-level | - SMA |
| NGS panel or exome | SNVs, indels, copy number changes Mitochondrial DNA if long-range PCR used first | SNVs: single-nucleotide CNVs: exon-level unless breakpoint within exon, then nucleotide-level as most panels only cover exonic regions | - Phenotype-specific gene panel |
| NIPS | Chromosomal aneuploidies and recurrent deletion/duplication syndromes | Variable depending on methodology. Some designed to detect recurrent CNVs | -Prenatal aneuploidy screening |
| Sanger sequencing | Sequence variants including SNVs, small indels; CNVs smaller than the amplicon size can also be detected but not typical usage | 1 bp | - Specific phenotype known to be caused by sequence variants in a single gene |
| Repeat-primed PCR | Repeat expansions | Quantify 1–220 repeats; Detect up to 1,000 repeats | Repeat expansion disorders |
| MS-MLPA and MS-qPCR | Deletion, UPD and imprinting center defect in the imprinted regions | Exon level | Imprinting disorders such as Prader-Willi Syndrome |
Figure 1Diagnostic technologies and applications. (A) General considerations used in determining the appropriate technology used for diagnosis. Choosing the appropriate technique is a multi-factorial process, depending on reason for study, clinical presentation and associated genetic heterogeneity, molecular mechanisms, time and cost considerations, among others, and there is often no single “right” approach. (B–E) Common clinical diagnostic workflows for various genetic syndromes. See clinical examples in text for more detail.
Technical comparison of technologies available for detection of chromosomal changes and/or CNVs.
| Aneuploidy | + | + | + | + | + | + | + | + |
| Balanced rearrangement (translocation, inversion, insertion) | + | + | – | – | – | – | – | + |
| CNVs >5–10 Mb | + | + | + | + | +/– | + | + | + |
| CNVs <5–10 Mb | – | + | + | + | + | + | +/– | + |
| Single exon deletion | – | – | – | + | + | +/– | – | + |
| Polyploidy | + | + | + | – | – | + | + | + |
| Min. mosaicism | 10% with 30-count | 2–5% depending on probe characteristics | 5–10% | 20% | 40% for dup; 20–30% del; | Depends on coverage | Depends on methodology | Unclear |
| Clonal relationships | Y | Y | N | N | N | N | N | N |
Depends on probe coverage and size of CNVs.
MLPA is a targeted CNV detection strategy, and if the region of interest is involved in a much larger CNV, a CNV would be detected but additional technologies are required to delineate the size and breakpoints.
Examples of syndromes associated with recurrent and non-recurrent CNVs. See Spinner et. al. (13) for further details including clinical descriptions.
| 1p36 | 1p36 deletion | No | Variable size from 0.5 to 10 Mb; |
| Wolf-Hirschhorn | 4p partial deletion (4p-) | No | Critical region is 4p16.3 (165 kb); |
| Cri-du-chat | 5p partial deletion (5p-) | No | Critical regions: |
| Williams | 7q11.23 deletion | Yes | 1.5 Mb deletion involving 25 genes in >90% patients Critical genes: |
| Miller-Dieker | 17p13.3 deletion | No | |
| Hereditary neuropathy and pressure palsies (HNPP) | 17p12 deletion | Yes | 1.5 Mb deletion in 80% of patients |
| Charcot Marie Tooth Type 1 | 17p12 duplication | Yes | 1.5 Mb duplication, reciprocal to HNPP deletion |
| Smith-Magenis | 17p11.2 deletion | Yes | 3.7 Mb deletion in >90% patients |
| Potocki-Lupski | 17p11.2 duplication | Yes | 3.7 Mb duplication, reciprocal to Smith-Magenis deletion |
| 22q11.2 | 22q11.2 deletion | Yes | 3.0 Mb deletion in 85%, rest have deletions associated with two of four recurrent breakpoints >90 genes involved, |
Common disorders related to the HBB gene.
| β-thalassemia minor | ββ0, ββ+ (i.e., carriers) | Asymptomatic or mild microcytic hypochromic anemia may be present. | 92–95% |
| β-thalassemia intermedia | β+β+, β+β0 (typically with alpha gene deletion) | Later onset, microcytic hypochromic anemia, jaundice, hepatosplenomegaly, risk of iron overload. | 10–30% |
| β-thalassemia major | β0β0, β+β+, β+β0 | Onset within 2 years of life, severe microcytic hypochromic anemia, hepatosplenomegaly, failure to thrive. | 0% |
| Sickle cell disease | HbS/HbS [homozygous for c.20A>T (p.Glu7Val)] | Onset in infancy, severe anemia, splenomegaly, jaundice, episodes of severe pain including swelling of hands and feet, stroke in childhood | Low to absent |
β, wildtype HBB locus; β.
Examples of Repeat-expansion disorders.
| Huntington disease | AD | Coding exon | CAG | ≤26 | >40 | |
| Spinal and bulbar muscular atrophy | X-linked | Coding exon | CAG | ≤34 | ≥38 | |
| Spinocerebellar ataxia 1 | AD | Coding exon | CAG | 6–35 | ≥39 | |
| Spinocerebellar ataxia 2 | AD | Coding exon | CAG | ≤31 | ≥33 | |
| Spinocerebellar ataxia 3 | AD | Coding exon | CAG | 12-44 | ~60–87 | |
| Spinocerebellar ataxia 6 | AD | Coding exon | CAG | ≤18 | 20–33 | |
| Spinocerebellar ataxia 7 | AD | Coding exon | CAG | 4–35 | 37–460 | |
| Spinocerebellar ataxia 17 | AD | Coding exon | CAG | 25–40 | ≥49 | |
| Dentatorubral-pallidoluysian atrophy | AD | Coding exon | CAG | 6-35 | 48–93 | |
| Huntington disease-like 2 | AD | 3′UTR, coding exon | CTG | 6–28 | 40–60 | |
| Fragile X syndrome | X-linked | 5′UTR | CGG | 6–54 | 200–1,000+ | |
| Fragile X-associated tremor/ataxia syndrome | X-linked | 5′UTR | CGG | 6–54 | 55-200 | |
| Myotonic dystrophy 1 | AD | 3′UTR | CTG | 5–34 | 50–10,000 | |
| Myotonic dystrophy 2 | AD | Intron | CCTG | 11–26 | 75–11,000 | |
| Friedreich ataxia | AR | Intron | GAA | 5–33 | 66–1,300 | |
| Frontotemporal dementia and/or lateral sclerosis 1 | AD | Intron | GGGGCC | <25 | >60 | |
| Unverricht-Lundborg disease | AR | Promoter | CCCCGCCCCGCG | 2–3 | ≥30 | |
| Oculopharyngeal muscular dystrophy | AD | Coding exon | GCG | ≤10 | 12–17 |
Key points from review.
| - Technical advances have driven changes in genomic diagnostics |