4.8 Article

Multi-omic machine learning predictor of breast cancer therapy response

Journal

NATURE
Volume 601, Issue 7894, Pages 623-+

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41586-021-04278-5

Keywords

-

Funding

  1. Wellcome Trust PhD Clinical Training Fellowship [106566/Z/14/Z]
  2. Junior Research Fellowship from Trinity College, Cambridge
  3. University of Cambridge
  4. Cancer Research UK (CRUK) [A17197, A19274]
  5. NIHR Cambridge Biomedical Research Centre [BRC-1215-20014]
  6. Medical Research Council (UK) [MC_UU_00002/16]
  7. CRUK [A17197, A27657, A29580]
  8. NIHR Senior Investigator Award [NF-SI-0515-10090]
  9. European Research Council Advanced Award [694620]
  10. F. Hoffman La Roche
  11. CRUK Cambridge Centre
  12. Mark Foundation Institute for Integrated Cancer Medicine

Ask authors/readers for more resources

The response to therapy in breast cancers is influenced by the pre-treated tumour ecosystem, and predictive models integrating multi-omics features through machine learning can be used to predict treatment outcomes. The degree of residual disease following therapy is monotonically associated with pre-therapy features of the tumour.
Breast cancers are complex ecosystems of malignant cells and the tumour microenvironment(1). The composition of these tumour ecosystems and interactions within them contribute to responses to cytotoxic therapy(2). Efforts to build response predictors have not incorporated this knowledge. We collected clinical, digital pathology, genomic and transcriptomic profiles of pre-treatment biopsies of breast tumours from 168 patients treated with chemotherapy with or without HER2 (encoded by ERBB2)-targeted therapy before surgery. Pathology end points (complete response or residual disease) at surgery(3) were then correlated with multi-omic features in these diagnostic biopsies. Here we showthat response to treatment is modulated by the pre-treated tumour ecosystem, and its multi-omics landscape can be integrated in predictive models using machine learning. The degree of residual disease following therapy is monotonically associated with pre-therapy features, including tumour mutational and copy number landscapes, tumour proliferation, immune infiltration and T cell dysfunction and exclusion. Combining these features into a multi-omic machine learning model predicted a pathological complete response in an external validation cohort (75 patients) with an area under the curve of 0.87. In conclusion, response to therapy is determined by the baseline characteristics of the totality of the tumour ecosystem captured through data integration and machine learning. This approach could be used to develop predictors for other cancers.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.8
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available