| Literature DB >> 35586607 |
Courtney E French1,2, Helen Dolling1,3,4,5, Karyn Mégy1,4, Alba Sanchis-Juan1,4, Ajay Kumar1, Isabelle Delon3, Matthew Wakeling6, Lucy Mallin7, Shruti Agrawal3, Topun Austin1,3, Florence Walston8, Soo-Mi Park3, Alasdair Parker3, Chinthika Piyasena9, Kimberley Bradbury9, Sian Ellard6,7, David H Rowitch1,3,4, F Lucy Raymond1,3,4.
Abstract
To facilitate early deployment of whole-genome sequencing (WGS) for severely ill children, a standardized pipeline for WGS analysis with timely turnaround and primary care pediatric uptake is needed. We developed a bioinformatics pipeline for comprehensive gene-agnostic trio WGS analysis of children suspected of having an undiagnosed monogenic disease that included detection and interpretation of primary genetic mechanisms of disease, including SNVs/indels, CNVs/SVs, uniparental disomy (UPD), imprinted genes, short tandem repeat expansions, mobile element insertions, SMN1/2 copy number calling, and mitochondrial genome variants. We assessed primary care practitioner experience and competence in a large cohort of 521 families (comprising 90% WGS trios). Children were identified by primary practitioners for recruitment, and we used the UK index of multiple deprivation to confirm lack of patient socio-economic status ascertainment bias. Of the 521 children sequenced, 176 (34%) received molecular diagnoses, with rates as high as 45% for neurology clinics. Twenty-three of the diagnosed cases (13%) required bespoke methods beyond routine SNV/CNV analysis. In our multidisciplinary clinician user experience assessment, both pediatricians and clinical geneticists expressed strong support for rapid WGS early in the care pathway, but requested further training in determining patient selection, consenting, and variant interpretation. Rapid trio WGS provides an efficacious single-pass screening test for children when deployed by primary practitioners in clinical settings that carry high a priori risk for rare pediatric disease presentations.Entities:
Keywords: genomics; mendelian disorders; paediatrics; rapid diagnostic whole genome; rare disease
Year: 2022 PMID: 35586607 PMCID: PMC9108978 DOI: 10.1016/j.xhgg.2022.100113
Source DB: PubMed Journal: HGG Adv ISSN: 2666-2477
Special cases of pediatric rare disease requiring refined filtering
| Exceptions to filtering rules | Refinement of bioinformatics pipeline | NGC cases affected |
|---|---|---|
| Non-Mendelian inheritance pattern: imprinted genes | Reports heterozygous inherited variants for a list of known disease-associated imprinted genes. | Case 484 (heterozygous stop gain variant in |
| Non-Mendelian inheritance pattern: | Reports heterozygous variants inherited from the father for this X-linked gene (female patients only). | Case 456 (heterozygous stop gain variant in |
| Non-Mendelian inheritance pattern: incomplete penetrance/variable expressivity | Reports heterozygous inherited variants for a list of genes associated with the patient’s HPO terms or provided by the clinician. Also appropriate for cases with an affected parent. | Sixteen cases had inherited dominant variants, including case 466 ( |
| Common in population datasets: incomplete penetrance/variable expressivity | Higher population thresholds for recessive variants in genes known to have incomplete penetrance or variable expressivity and variants that are common (e.g., | Case 274 had compound heterozygous variants in |
| Common in population datasets: somatic mutations | Higher population thresholds for | Case 420 ( |
| Common in population datasets: founder variants | Higher population thresholds for recessive variants in genes known to have common pathogenic founder mutations (e.g., | – |
| Common in population datasets: functional polymorphisms | Higher population thresholds for recessive variants in genes known to have common pathogenic functional polymorphisms (e.g., hypomorphs such as NM_005105.5:c.-21G>A in | – |
Figure 1Comprehensive trio WGS bioinformatics pipeline
Schema of the bioinformatics pipeline. The color corresponds to the main steps (variant calls and various filtering types). CNV, copy number variant; MEI, mobile elements insertion; MT, mitochondria; SNV, single-nucleotide variant; SV, structural variant; UPD, uniparental disomy.
Figure 2Inheritance patterns of variants in diagnosed cases
Distribution of inheritance patterns of variants in (A) all diagnosed cases and (B) split by genomic ethnicity.
Figure 3Different mechanisms of disease found in the cohort
(A) Proportion of the different inheritance and variant types identified in the cohort. Examples of cases with (B) spinal muscular atrophy from SMN1 deletion and truncation (exon 7 and 8 deletion), (C) Temple syndrome from maternal uniparental heterodisomy 14, and (D) congenital muscular dystrophy in the child due to a large expansion of a trinucleotide repeat expansion in the 3′ UTR of DMPK inherited from the mother. For the latter, ExpansionHunter detected heterozygous anchored repeat lengths of 5/15 in the father, 13/107 in the mother, and 5/92 in the child. ExpansionHunter DeNovo detected 9 times as many paired in-repeat reads in the child compared with the mother, indicating early-onset myotonic dystrophy (DM1) in the child. Triplet PCR in mother and child confirmed expansions in the pathogenic range.
Diagnostic rates by medical specialty and phenotype
| Specialty | All | With seizures | With delay | With hypotonia | Suspected mitochondrial | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Total | Diagnosed | Total | Diagnosed | Total | Diagnosed | Total | Diagnosed | Total | Diagnosed | |
| NICU | 194 | 48 (25%) | 44 | 8 (18%) | 4 | 1 (25%) | 25 | 12 (48%) | 5 | 1 (20%) |
| PICU | 118 | 37 (31%) | 43 | 16 (37%) | 46 | 16 (35%) | 20 | 8 (40%) | 5 | 2 (40%) |
| Pediatric neurology | 122 | 56 (46%) | 63 | 29 (46%) | 65 | 34 (52%) | 28 | 13 (46%) | 20 | 12 (60%) |
| Clinical genetics | 87 | 35 (40%) | 19 | 6 (32%) | 57 | 26 (46%) | 21 | 10 (48%) | 5 | 1 (20%) |
| ALL | 521 | 176 (34%) | 169 | 59 (35%) | 172 | 77 (45%) | 94 | 43 (46%) | 35 | 16 (46%) |
NICU, neonatal intensive care unit; PICU, pediatric intensive care unit.
The phenotype categories are not mutually exclusive (patients may belong to more than one).
Figure 4NGC impact survey results: utility and challenges
Results of the survey assessing the impact of the NGC project. Thirty-two pediatricians and clinical geneticists were asked to rate (A) advantages of the study as not, somewhat, or very useful and (B) challenges as not, somewhat, or very significant.