View Publication On PubMed
Export Translating in vitro results from experiments with cancer cell lines to clinical applications requires the selection of appropriate cell line models. Here we present MFmap (model fidelity map), a machine learning model to simultaneously predict the cancer subtype of a cell line and its similarity to an individual tumour sample. The MFmap is a semi-supervised generative model, which compresses high dimensional gene expression, copy number variation and mutation data into cancer subtype informed low dimensional latent representations. The accuracy (test set F1 score >90%) of the MFmap subtype prediction is validated in ten different cancer datasets. We use breast cancer and glioblastoma cohorts as examples to show how subtype specific drug sensitivity can be translated to individual tumour samples. The low dimensional latent representations extracted by MFmap explain known and novel subtype specific features and enable the analysis of cell-state transformations between different subtypes. From a methodological perspective, we report that MFmap is a semi-supervised method which simultaneously achieves good generative and predictive performance and thus opens opportunities in other areas of computational biology.
SEEK ID: https://seek-for2800.de/publications/6
PubMed ID: 34914736
Projects: SP-3: A statistical modeling approach to identify common triggers for re...
Publication type: Journal
Journal: PLoS One
Citation: PLoS One. 2021 Dec 16;16(12):e0261183. doi: 10.1371/journal.pone.0261183. eCollection 2021.
Date Published: 16th Dec 2021
Registered Mode: by PubMed ID
SubmitterViews: 817
Created: 17th Jan 2022 at 12:18
Last updated: 14th Mar 2023 at 14:55
TagsThis item has not yet been tagged.
AttributionsNone
Download
https://orcid.org/0000-0003-3977-9982