Literature DB >> 28085253

Crowd-Sourced Verification of Computational Methods and Data in Systems Toxicology: A Case Study with a Heat-Not-Burn Candidate Modified Risk Tobacco Product.

Carine Poussin1, Vincenzo Belcastro1, Florian Martin1, Stéphanie Boué1, Manuel C Peitsch1, Julia Hoeng1.   

Abstract

Systems toxicology intends to quantify the effect of toxic molecules in biological systems and unravel their mechanisms of toxicity. The development of advanced computational methods is required for analyzing and integrating high throughput data generated for this purpose as well as for extrapolating predictive toxicological outcomes and risk estimates. To ensure the performance and reliability of the methods and verify conclusions from systems toxicology data analysis, it is important to conduct unbiased evaluations by independent third parties. As a case study, we report here the results of an independent verification of methods and data in systems toxicology by crowdsourcing. The sbv IMPROVER systems toxicology computational challenge aimed to evaluate computational methods for the development of blood-based gene expression signature classification models with the ability to predict smoking exposure status. Participants created/trained models on blood gene expression data sets including smokers/mice exposed to 3R4F (a reference cigarette) or noncurrent smokers/Sham (mice exposed to air). Participants applied their models on unseen data to predict whether subjects classify closer to smoke-exposed or nonsmoke exposed groups. The data sets also included data from subjects that had been exposed to potential modified risk tobacco products (MRTPs) or that had switched to a MRTP after exposure to conventional cigarette smoke. The scoring of anonymized participants' predictions was done using predefined metrics. The top 3 performers' methods predicted class labels with area under the precision recall scores above 0.9. Furthermore, although various computational approaches were used, the crowd's results confirmed our own data analysis outcomes with regards to the classification of MRTP-related samples. Mice exposed directly to a MRTP were classified closer to the Sham group. After switching to a MRTP, the confidence that subjects belonged to the smoke-exposed group decreased significantly. Smoking exposure gene signatures that contributed to the group separation included a core set of genes highly consistent across teams such as AHRR, LRRN3, SASH1, and P2RY6. In conclusion, crowdsourcing constitutes a pertinent approach, in complement to the classical peer review process, to independently and unbiasedly verify computational methods and data for risk assessment using systems toxicology.

Entities:  

Mesh:

Substances:

Year:  2017        PMID: 28085253     DOI: 10.1021/acs.chemrestox.6b00345

Source DB:  PubMed          Journal:  Chem Res Toxicol        ISSN: 0893-228X            Impact factor:   3.739


  8 in total

1.  Perceived Racial Discrimination and DNA Methylation Among African American Women in the InterGEN Study.

Authors:  Veronica Barcelona de Mendoza; Yunfeng Huang; Cindy A Crusto; Yan V Sun; Jacquelyn Y Taylor
Journal:  Biol Res Nurs       Date:  2017-12-19       Impact factor: 2.522

2.  The sbv IMPROVER Systems Toxicology Computational Challenge: Identification of Human and Species-Independent Blood Response Markers as Predictors of Smoking Exposure and Cessation Status.

Authors:  Vincenzo Belcastro; Carine Poussin; Yang Xiang; Maurizio Giordano; Kumar Parijat Tripathi; Akash Boda; Stéphanie Boué; Mario Guarracino; Florian Martin; Manuel C Peitsch; Julia Hoeng; Roberto Romero; Adi L Tarca; Zhongqu Duan; Hao Yang; Xiaofeng Gong; Peixuan Wang; Chenfang Zhang; Wenxin Yang; Omer Sinan Sarac; Ismail Bilgen; Ali Tugrul Balci; Rahul Kumar; Sandeep Kumar Dhanda
Journal:  Comput Toxicol       Date:  2017-07-14

3.  Ensemble of rankers for efficient gene signature extraction in smoke exposure classification.

Authors:  Maurizio Giordano; Kumar Parijat Tripathi; Mario Rosario Guarracino
Journal:  BMC Bioinformatics       Date:  2018-03-08       Impact factor: 3.169

4.  Tobacco exposure-related alterations in DNA methylation and gene expression in human monocytes: the Multi-Ethnic Study of Atherosclerosis (MESA).

Authors:  Lindsay M Reynolds; Kurt Lohman; Gary S Pittman; R Graham Barr; Gloria C Chi; Joel Kaufman; Ma Wan; Douglas A Bell; Michael J Blaha; Carlos J Rodriguez; Yongmei Liu
Journal:  Epigenetics       Date:  2018-01-16       Impact factor: 4.528

5.  Systems toxicology meta-analysis of in vitro assessment studies: biological impact of a candidate modified-risk tobacco product aerosol compared with cigarette smoke on human organotypic cultures of the aerodigestive tract.

Authors:  A R Iskandar; B Titz; A Sewer; P Leroy; T Schneider; F Zanetti; C Mathis; A Elamin; S Frentzel; W K Schlage; F Martin; N V Ivanov; M C Peitsch; J Hoeng
Journal:  Toxicol Res (Camb)       Date:  2017-05-29       Impact factor: 3.524

Review 6.  Crowd-Sourced Chemistry: Considerations for Building a Standardized Database to Improve Omic Analyses.

Authors:  Jaqueline A Picache; Jody C May; John A McLean
Journal:  ACS Omega       Date:  2020-01-09

7.  Crowdsourced benchmarking of taxonomic metagenome profilers: lessons learned from the sbv IMPROVER Microbiomics challenge.

Authors:  Carine Poussin; Lusine Khachatryan; Nicolas Sierro; Vijay Kumar Narsapuram; Fernando Meyer; Vinay Kaikala; Vandna Chawla; Usha Muppirala; Sunil Kumar; Vincenzo Belcastro; James N D Battey; Elena Scotti; Stéphanie Boué; Alice C McHardy; Manuel C Peitsch; Nikolai V Ivanov; Julia Hoeng
Journal:  BMC Genomics       Date:  2022-08-30       Impact factor: 4.547

8.  Embracing Transparency Through Data Sharing.

Authors:  Stéphanie Boué; Michael Byrne; A Wallace Hayes; Julia Hoeng; Manuel C Peitsch
Journal:  Int J Toxicol       Date:  2018-10-03       Impact factor: 2.032

  8 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.