A Federated Cox Model with Non-Proportional Hazards
- URL: http://arxiv.org/abs/2207.05050v1
- Date: Mon, 11 Jul 2022 17:58:54 GMT
- Title: A Federated Cox Model with Non-Proportional Hazards
- Authors: Dekai Zhang, Francesca Toni, Matthew Williams
- Abstract summary: Recent research has shown the potential for neural networks to improve upon classical survival models such as the Cox model.
We present a federated Cox model that accommodates this data setting and relaxes the proportional hazards assumption.
We experiment with publicly available clinical datasets and demonstrate that the federated model is able to perform as well as a standard model.
- Score: 8.98624781242271
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recent research has shown the potential for neural networks to improve upon
classical survival models such as the Cox model, which is widely used in
clinical practice. Neural networks, however, typically rely on data that are
centrally available, whereas healthcare data are frequently held in secure
silos. We present a federated Cox model that accommodates this data setting and
also relaxes the proportional hazards assumption, allowing time-varying
covariate effects. In this latter respect, our model does not require explicit
specification of the time-varying effects, reducing upfront organisational
costs compared to previous works. We experiment with publicly available
clinical datasets and demonstrate that the federated model is able to perform
as well as a standard model.
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