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Transcriptomics in Toxicogenomics, Part III: Data Modelling for Risk Assessmentopen access

Authors
Serra, AngelaFratello, MicheleCattelani, LucaLiampa, IreneMelagraki, GeorgiaKohonen, PekkaNymark, PennyFederico, AntonioKinaret, Pia Anneli SofiaJagiello, KarolinaHa, My KieuChoi, Jang-SikSanabria, NatashaGulumian, MaryPuzyn, TomaszYoon, Tae-HyunSarimveis, HaralambosGrafstrom, RolandAfantitis, AntreasGreco, Dario
Issue Date
Apr-2020
Publisher
MDPI
Keywords
toxicogenomics; transcriptomics; data modelling; benchmark dose analysis; network analysis; read-across; QSAR; machine learning; deep learning; data integration
Citation
NANOMATERIALS, v.10, no.4, pp.1 - 26
Indexed
SCIE
SCOPUS
Journal Title
NANOMATERIALS
Volume
10
Number
4
Start Page
1
End Page
26
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/145917
DOI
10.3390/nano10040708
ISSN
2079-4991
Abstract
Transcriptomics data are relevant to address a number of challenges in Toxicogenomics (TGx). After careful planning of exposure conditions and data preprocessing, the TGx data can be used in predictive toxicology, where more advanced modelling techniques are applied. The large volume of molecular profiles produced by omics-based technologies allows the development and application of artificial intelligence (AI) methods in TGx. Indeed, the publicly available omics datasets are constantly increasing together with a plethora of different methods that are made available to facilitate their analysis, interpretation and the generation of accurate and stable predictive models. In this review, we present the state-of-the-art of data modelling applied to transcriptomics data in TGx. We show how the benchmark dose (BMD) analysis can be applied to TGx data. We review read across and adverse outcome pathways (AOP) modelling methodologies. We discuss how network-based approaches can be successfully employed to clarify the mechanism of action (MOA) or specific biomarkers of exposure. We also describe the main AI methodologies applied to TGx data to create predictive classification and regression models and we address current challenges. Finally, we present a short description of deep learning (DL) and data integration methodologies applied in these contexts. Modelling of TGx data represents a valuable tool for more accurate chemical safety assessment. This review is the third part of a three-article series on Transcriptomics in Toxicogenomics.
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