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Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample.

Publication ,  Journal Article
Movaghar, A; Page, D; Scholze, D; Hong, J; DaWalt, LS; Kuusisto, F; Stewart, R; Brilliant, M; Mailick, M
Published in: Genet Med
July 2021

PURPOSE: Fragile X syndrome (FXS), the most prevalent inherited cause of intellectual disability, remains underdiagnosed in the general population. Clinical studies have shown that individuals with FXS have a complex health profile leading to unique clinical needs. However, the full impact of this X-linked disorder on the health of affected individuals is unclear and the prevalence of co-occurring conditions is unknown. METHODS: We mined the longitudinal electronic health records from more than one million individuals to investigate the health characteristics of patients who have been clinically diagnosed with FXS. Additionally, using machine-learning approaches, we created predictive models to identify individuals with FXS in the general population. RESULTS: Our discovery-oriented approach identified the associations of FXS with a wide range of medical conditions including circulatory, endocrine, digestive, and genitourinary, in addition to mental and neurological disorders. We successfully created predictive models to identify cases five years prior to clinical diagnosis of FXS without relying on any genetic or familial data. CONCLUSION: Although FXS is often thought of primarily as a neurological disorder, it is in fact a multisystem syndrome involving many co-occurring conditions, some primary and some secondary, and they are associated with a considerable burden on patients and their families.

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Published In

Genet Med

DOI

EISSN

1530-0366

Publication Date

July 2021

Volume

23

Issue

7

Start / End Page

1273 / 1280

Location

United States

Related Subject Headings

  • Phenotype
  • Machine Learning
  • Intellectual Disability
  • Humans
  • Genetics & Heredity
  • Fragile X Syndrome
  • Artificial Intelligence
  • 3105 Genetics
  • 1103 Clinical Sciences
  • 0604 Genetics
 

Citation

APA
Chicago
ICMJE
MLA
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Movaghar, A., Page, D., Scholze, D., Hong, J., DaWalt, L. S., Kuusisto, F., … Mailick, M. (2021). Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample. Genet Med, 23(7), 1273–1280. https://doi.org/10.1038/s41436-021-01144-7
Movaghar, Arezoo, David Page, Danielle Scholze, Jinkuk Hong, Leann Smith DaWalt, Finn Kuusisto, Ron Stewart, Murray Brilliant, and Marsha Mailick. “Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample.Genet Med 23, no. 7 (July 2021): 1273–80. https://doi.org/10.1038/s41436-021-01144-7.
Movaghar A, Page D, Scholze D, Hong J, DaWalt LS, Kuusisto F, et al. Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample. Genet Med. 2021 Jul;23(7):1273–80.
Movaghar, Arezoo, et al. “Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample.Genet Med, vol. 23, no. 7, July 2021, pp. 1273–80. Pubmed, doi:10.1038/s41436-021-01144-7.
Movaghar A, Page D, Scholze D, Hong J, DaWalt LS, Kuusisto F, Stewart R, Brilliant M, Mailick M. Artificial intelligence-assisted phenotype discovery of fragile X syndrome in a population-based sample. Genet Med. 2021 Jul;23(7):1273–1280.

Published In

Genet Med

DOI

EISSN

1530-0366

Publication Date

July 2021

Volume

23

Issue

7

Start / End Page

1273 / 1280

Location

United States

Related Subject Headings

  • Phenotype
  • Machine Learning
  • Intellectual Disability
  • Humans
  • Genetics & Heredity
  • Fragile X Syndrome
  • Artificial Intelligence
  • 3105 Genetics
  • 1103 Clinical Sciences
  • 0604 Genetics