Skip to main content
bioRxiv
  • Home
  • About
  • Submit
  • ALERTS / RSS
Advanced Search
New Results

Biological Constraints Can Improve Prediction in Precision Oncology

View ORCID ProfileMohamed Omar, Lotte Mulder, Tendai Coady, View ORCID ProfileClaudio Zanettini, View ORCID ProfileEddie Luidy Imada, View ORCID ProfileWikum Dinalankara, View ORCID ProfileLaurent Younes, Donald Geman, View ORCID ProfileLuigi Marchionni
doi: https://doi.org/10.1101/2021.05.25.445604
Mohamed Omar
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Mohamed Omar
Lotte Mulder
2Technical University Delft, Delft, The Netherlands
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Tendai Coady
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Claudio Zanettini
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Claudio Zanettini
Eddie Luidy Imada
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Eddie Luidy Imada
Wikum Dinalankara
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Wikum Dinalankara
Laurent Younes
3Department of Applied Mathematics and Statistics, Johns Hopkins University, Baltimore, MD, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Laurent Younes
Donald Geman
3Department of Applied Mathematics and Statistics, Johns Hopkins University, Baltimore, MD, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Luigi Marchionni
1Department of Pathology and Laboratory Medicine, Weill Cornell Medicine, New York, NY, USA
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Luigi Marchionni
  • For correspondence: lum4003@med.cornell.edu
  • Abstract
  • Full Text
  • Info/History
  • Metrics
  • Supplementary material
  • Preview PDF
Loading

ABSTRACT

Machine learning (ML) algorithms are used to build predictive models or classifiers for specific disease outcomes using transcriptomic data. However, some of these models show deteriorating performance when tested on unseen data which undermines their clinical utility.

In this study, we show the importance of directly embedding prior biological knowledge into the classifier decision rules to build simple and interpretable gene signatures. We tested this in two important classification examples— a) progression in non-muscle invasive bladder cancer; and b) response to neoadjuvant chemotherapy (NACT) in triple-negative breast cancer (TNBC) – using different ML algorithms. For each algorithm, we developed two sets of classifiers: agnostic, trained using either individual gene expression values or the corresponding pairwise ranks without biological consideration; and mechanistic, trained by restricting the search to a set of gene pairs capturing important biological relations. Both types were trained on the same training data and their performance was evaluated on unseen testing data using different methodologies and multiple evaluation metrics.

Our analysis shows that mechanistic models outperform their agnostic counterparts when tested on independent data and show more consistency to their performance in the training with enhanced interpretability. These findings suggest that using biological constraints in the training process can yield more robust and interpretable gene signatures with high translational potential.

Competing Interest Statement

The authors have declared no competing interest.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
Back to top
PreviousNext
Posted May 27, 2021.
Download PDF

Supplementary Material

Email

Thank you for your interest in spreading the word about bioRxiv.

NOTE: Your email address is requested solely to identify you as the sender of this article.

Enter multiple addresses on separate lines or separate them with commas.
Biological Constraints Can Improve Prediction in Precision Oncology
(Your Name) has forwarded a page to you from bioRxiv
(Your Name) thought you would like to see this page from the bioRxiv website.
CAPTCHA
This question is for testing whether or not you are a human visitor and to prevent automated spam submissions.
Share
Biological Constraints Can Improve Prediction in Precision Oncology
Mohamed Omar, Lotte Mulder, Tendai Coady, Claudio Zanettini, Eddie Luidy Imada, Wikum Dinalankara, Laurent Younes, Donald Geman, Luigi Marchionni
bioRxiv 2021.05.25.445604; doi: https://doi.org/10.1101/2021.05.25.445604
Digg logo Reddit logo Twitter logo Facebook logo Google logo LinkedIn logo Mendeley logo
Citation Tools
Biological Constraints Can Improve Prediction in Precision Oncology
Mohamed Omar, Lotte Mulder, Tendai Coady, Claudio Zanettini, Eddie Luidy Imada, Wikum Dinalankara, Laurent Younes, Donald Geman, Luigi Marchionni
bioRxiv 2021.05.25.445604; doi: https://doi.org/10.1101/2021.05.25.445604

Citation Manager Formats

  • BibTeX
  • Bookends
  • EasyBib
  • EndNote (tagged)
  • EndNote 8 (xml)
  • Medlars
  • Mendeley
  • Papers
  • RefWorks Tagged
  • Ref Manager
  • RIS
  • Zotero
  • Tweet Widget
  • Facebook Like
  • Google Plus One

Subject Area

  • Bioinformatics
Subject Areas
All Articles
  • Animal Behavior and Cognition (3586)
  • Biochemistry (7545)
  • Bioengineering (5495)
  • Bioinformatics (20729)
  • Biophysics (10294)
  • Cancer Biology (7950)
  • Cell Biology (11610)
  • Clinical Trials (138)
  • Developmental Biology (6586)
  • Ecology (10168)
  • Epidemiology (2065)
  • Evolutionary Biology (13578)
  • Genetics (9520)
  • Genomics (12817)
  • Immunology (7906)
  • Microbiology (19503)
  • Molecular Biology (7641)
  • Neuroscience (41982)
  • Paleontology (307)
  • Pathology (1254)
  • Pharmacology and Toxicology (2192)
  • Physiology (3259)
  • Plant Biology (7018)
  • Scientific Communication and Education (1293)
  • Synthetic Biology (1947)
  • Systems Biology (5418)
  • Zoology (1113)