Introduction: Short stature is one of the most common reasons for referral to a pediatric endocrinologist and can result from many etiologies. However, many patients with short stature do not receive a definitive diagnosis. Objective: To ascertain whether integrating targeted bioinformatics searches of electronic health records (EHRs) combined with genomic studies could identify patients with previously undiagnosed rare genetic etiologies of short stature. We focused on a specific rare phenotypic subgroup: patients with short stature and elevated IGF-I levels. Methods: We performed a cross-sectional cohort study at three large academic pediatric healthcare networks. Eligible subjects included children with heights below -2 SD, IGF-I levels >90th percentile, and no known etiology for short stature. We performed a search of the EHRs to identify eligible patients. Patients were then recruited for phenotyping followed by exome sequencing and in vitro assays of IGF1R function. Results: A total of 234 patients were identified by the bioinformatics algorithm with 39 deemed eligible after manual review (17%). Of those, 9 were successfully recruited. A genetic etiology was identified in 3 of the 9 patients including 2 novel variants in IGF1R and a de novo variant in CHD2. In vitro studies supported the pathogenicity of the IGF1R variants. Conclusions: This study provides proof of principle that patients with rare phenotypic subgroups can be identified based on discrete data elements in the EHRs. Although limitations exist to fully automating this approach, these searches may help find patients with previously unidentified rare genetic disorders.

Cabrera-Salcedo, C., Hawkes, C.p., Tyzinski, L., Andrew, M., Labilloy, G., Campos, D., et al. (2020). Targeted searches of the electronic health record and genomics identify an etiology in three patients with short stature and high IGF-I levels. HORMONE RESEARCH IN PAEDIATRICS, 92(3), 186-195 [10.1159/000504884].

Targeted searches of the electronic health record and genomics identify an etiology in three patients with short stature and high IGF-I levels

Deodati A.;
2020-01-01

Abstract

Introduction: Short stature is one of the most common reasons for referral to a pediatric endocrinologist and can result from many etiologies. However, many patients with short stature do not receive a definitive diagnosis. Objective: To ascertain whether integrating targeted bioinformatics searches of electronic health records (EHRs) combined with genomic studies could identify patients with previously undiagnosed rare genetic etiologies of short stature. We focused on a specific rare phenotypic subgroup: patients with short stature and elevated IGF-I levels. Methods: We performed a cross-sectional cohort study at three large academic pediatric healthcare networks. Eligible subjects included children with heights below -2 SD, IGF-I levels >90th percentile, and no known etiology for short stature. We performed a search of the EHRs to identify eligible patients. Patients were then recruited for phenotyping followed by exome sequencing and in vitro assays of IGF1R function. Results: A total of 234 patients were identified by the bioinformatics algorithm with 39 deemed eligible after manual review (17%). Of those, 9 were successfully recruited. A genetic etiology was identified in 3 of the 9 patients including 2 novel variants in IGF1R and a de novo variant in CHD2. In vitro studies supported the pathogenicity of the IGF1R variants. Conclusions: This study provides proof of principle that patients with rare phenotypic subgroups can be identified based on discrete data elements in the EHRs. Although limitations exist to fully automating this approach, these searches may help find patients with previously unidentified rare genetic disorders.
2020
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MED/38 - PEDIATRIA GENERALE E SPECIALISTICA
English
Bioinformatics
Electronic Health Records
Exome sequencing
Genomics
IGF1R
Short stature
Adolescent
Body Height
Child
Child, Preschool
Cohort Studies
Cross-Sectional Studies
DNA-Binding Proteins
Electronic Health Records
Female
Growth Disorders
HEK293 Cells
Humans
Insulin-Like Growth Factor I
Male
Mutation, Missense
Receptor, IGF Type 1
Whole Exome Sequencing
Phenotype
Cabrera-Salcedo, C., Hawkes, C.p., Tyzinski, L., Andrew, M., Labilloy, G., Campos, D., et al. (2020). Targeted searches of the electronic health record and genomics identify an etiology in three patients with short stature and high IGF-I levels. HORMONE RESEARCH IN PAEDIATRICS, 92(3), 186-195 [10.1159/000504884].
Cabrera-Salcedo, C; Hawkes, Cp; Tyzinski, L; Andrew, M; Labilloy, G; Campos, D; Feld, A; Deodati, A; Hwa, V; Hirschhorn, Jn; Grimberg, A; Dauber, A...espandi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/294771
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