4.7 Article

Copy number variation profile-based genomic typing of premenstrual dysphoric disorder in Chinese

期刊

JOURNAL OF GENETICS AND GENOMICS
卷 48, 期 12, 页码 1070-1080

出版社

SCIENCE PRESS
DOI: 10.1016/j.jgg.2021.08.012

关键词

Clinical subtyping; Genomic sequencing; Machine learning; Recurrent copy number variation; Replication phase; Semisupervized

资金

  1. University Grants Council [SRF116SC01, UROP18SC06, UROP20SC07]
  2. Innovation and Technology Commission of Hong Kong SAR [ITS/085/10, ITS113/15FP, ITCPD/17-9, ITT/023/17GP, ITT/026/18GP]
  3. Shenzhen Municipal Council of Science and Technology, Guangdong [JCYJ20170818113656988]
  4. Guangdong Province Basic and Applied Basic Research Fund [2021A1515011169]
  5. Shandong Province First Class Disciple Development Grant, Shandong
  6. Tai-Shan Scholar Program, Shandong
  7. Ministry of Science and Technology (National Science and Technology Major Project), People 's Republic of China [2017ZX09301064, 2017ZX09301064004]
  8. National Natural Science Foundation of China [8157151623, 81603510]

向作者/读者索取更多资源

The study analyzed CNVs from genomic sequencing data to classify PMDD patient genomes into D and V groups, correlated with depression and invasion clinical types. The application of diagnostic CNV features selected by machine learning enabled efficient classification and molecular diagnosis of CNVs.
Premenstrual dysphoric disorder (PMDD) affects nearly 5% of women of reproductive age. Symptomatic heterogeneity, together with largely unknown genetics, has greatly hindered its effective treatment. In the present study, analysis of genomic sequencing-based copy number variations (CNVs) called from 100 kb white blood cell DNA sequence windows by means of semisupervized clustering led to the segregation of patient genomes into the D and V groups, which correlated with the depression and invasion clinical types, respectively, with 89.0% consistency. Application of diagnostic CNV features selected using the correlation-based machine learning method enabled the classification of the CNVs obtained into the D group, V group, total patient group, and control group with an average accuracy of 83.0%. The power of the diagnostic CNV features was 0.98 on average, suggesting that these CNV features could be used for the molecular diagnosis of the major clinical types of PMDD. This demonstrated concordance between the CNV profiles and clinical types of PMDD supported the validity of symptom-based diagnosis of PMDD for differentiating between its two major clinical types, as well as the predominantly genetic nature of PMDD with a host of overlaps between multiple susceptibility genes/pathways and the diagnostic CNV features as indicators of involvement in PMDD etiology. Copyright (C) 2021, Institute of Genetics and Developmental Biology, Chinese Academy of Sciences, and Genetics Society of China. Published by Elsevier Limited and Science Press.

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