Improving CNV Detection Performance in Microarray Data Using a Machine Learning-Based Approach

Author:

Goh Chul Jun1,Kwon Hyuk-Jung12ORCID,Kim Yoonhee1,Jung Seunghee1,Park Jiwoo1,Lee Isaac Kise123,Park Bo-Ram1,Kim Myeong-Ji1,Kim Min-Jeong4,Lee Min-Seob14

Affiliation:

1. Eone-Diagnomics Genome Center, Inc., 143, Gaetbeol-ro, Yeonsu-gu, Incheon 21999, Republic of Korea

2. Department of Computer Science and Engineering, Incheon National University (INU), Incheon 22012, Republic of Korea

3. NGENI Foundation, San Diego, CA 92127, USA

4. Diagnomics, Inc., 5795 Kearny Villa Rd., San Diego, CA 92123, USA

Abstract

Copy number variation (CNV) is a primary source of structural variation in the human genome, leading to several disorders. Therefore, analyzing neonatal CNVs is crucial for managing CNV-related chromosomal disabilities. However, genomic waves can hinder accurate CNV analysis. To mitigate the influences of the waves, we adopted a machine learning approach and developed a new method that uses a modified log R ratio instead of the commonly used log R ratio. Validation results using samples with known CNVs demonstrated the superior performance of our method. We analyzed a total of 16,046 Korean newborn samples using the new method and identified CNVs related to 39 genetic disorders were identified in 342 cases. The most frequently detected CNV-related disorder was Joubert syndrome 4. The accuracy of our method was further confirmed by analyzing a subset of the detected results using NGS and comparing them with our results. The utilization of a genome-wide single nucleotide polymorphism array with wave offset was shown to be a powerful method for identifying CNVs in neonatal cases. The accurate screening and the ability to identify various disease susceptibilities offered by our new method could facilitate the identification of CNV-associated chromosomal disease etiologies.

Funder

Eone-Diagnomics Genome Center Inc.

Publisher

MDPI AG

Subject

Clinical Biochemistry

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