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Poster session 01

173P - A deep learning model to predict competing cancer and cardiac risks after anthracycline exposure for early breast cancer

Date

10 Sep 2022

Session

Poster session 01

Topics

Clinical Research

Tumour Site

Breast Cancer

Presenters

Colin Mclean

Citation

Annals of Oncology (2022) 33 (suppl_7): S55-S84. 10.1016/annonc/annonc1038

Authors

C. Mclean1, P. Hall2

Author affiliations

  • 1 Cancer Research Uk, Institute of Genetics and Cancer, University of Edinburgh, EH4 2XU - Edinburgh/GB
  • 2 Department Of Oncology, Cancer Research UK Edinburgh Centre, EH4 2XU - Edinburgh/GB

Resources

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Abstract 173P

Background

Clinical trials have demonstrated that anthracycline chemotherapy for the adjuvant treatment of early breast cancer (EBC) reduces breast cancer mortality but increases cardiac risk. Attempts to quantify this risk in routine care have been limited by short follow up and inability to adjust for confounding factors and competing risks. The aim of this study was to implement a deep learning framework to quantify excess cardiac risk from anthracycline chemotherapy in real-world care.

Methods

Patients treated surgically for stage I-III invasive breast cancer between 2000 & 2016 were identified from in the Scottish Cancer Registry. Information on treatment and clinical outcomes was captured by linkage to the Scottish Morbidity Record and a regional audit database. The primary outcome was a composite of cardiac diagnosis or cardiac death. The cause-specific cumulative incidence function was used to calculate pseudo survival probabilities for the primary outcome, and the competing risks of death from breast cancer and death from other causes. A deep learning framework was constructed to predict patient survival probabilities and competing risk types at discrete time points, given the pseudo values and patient covariants.

Results

4080 EBC patients were identified, 1658 received an anthracycline-based chemotherapy, 297 received non-anthracycline chemotherapy & 2125 received no chemotherapy. At a median follow up of 8.2 years, 448 cardiac events & 559 breast cancer deaths occurred. After hyper-parameter tuning, the deep learning model predicted cardiac events at 8 years with high confidence (F1-score=0.89), and survival probabilities comparable to the more traditional Fine & Gray model; C-index 0.66, [95% Cl 0.62, 0.70] vs. 0.65, [95% CI 0.61- 0.69]).

Conclusions

Taking into account competing risks, there was no statistically increased rate of cardiac events in women treated with anthracycline compared with non-anthracycline chemotherapy or no chemotherapy. The comparable results found with traditional methods in this study is consequence of the reliance on base-line covariants. Further research will explore time varying covariates. Real world evidence appears reassuring for women treated with anthracyclines for EBC.

Clinical trial identification

Editorial acknowledgement

Legal entity responsible for the study

The authors.

Funding

Has not received any funding.

Disclosure

All authors have declared no conflicts of interest.

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