z-logo
open-access-imgOpen Access
REDBot: Natural language process methods for clinical copy number variation reporting in prenatal and products of conception diagnosis
Author(s) -
Liu Mengmeng,
Zhong Yunshan,
Liu Hongqian,
Liang Desheng,
Liu Erhong,
Zhang Yu,
Tian Feng,
Liang Qiaowei,
Cram David S.,
Wang Hua,
Wu Lingqian,
Yu Fuli
Publication year - 2020
Publication title -
molecular genetics and genomic medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.765
H-Index - 29
ISSN - 2324-9269
DOI - 10.1002/mgg3.1488
Subject(s) - copy number variation , paragraph , artificial intelligence , sentence , natural language processing , pipeline (software) , computer science , machine learning , identification (biology) , medicine , biochemistry , chemistry , botany , genome , biology , world wide web , gene , programming language
Background Current copy number variation (CNV) identification methods have rapidly become mature. However, the postdetection processes such as variant interpretation or reporting are inefficient. To overcome this situation, we developed REDBot as an automated software package for accurate and direct generation of clinical diagnostic reports for prenatal and products of conception (POC) samples. Methods We applied natural language process (NLP) methods for analyzing 30,235 in‐house historical clinical reports through active learning, and then, developed clinical knowledge bases, evidence‐based interpretation methods and reporting criteria to support the whole postdetection pipeline. Results Of the 30,235 reports, we obtained 37,175 CNV‐paragraph pairs. For these pairs, the active learning approaches achieved a 0.9466 average F1‐score in sentence classification. The overall accuracy for variant classification was 95.7%, 95.2%, and 100.0% in retrospective, prospective, and clinical utility experiments, respectively. Conclusion By integrating NLP methods in CNVs postdetection pipeline, REDBot is a robust and rapid tool with clinical utility for prenatal and POC diagnosis.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here