- Title
Modeling the covariates effects on the hazard function by piecewise exponential artificial neural networks: an application to a controlled clinical trial on renal carcinoma.
- Authors
Fornili, Marco; Boracchi, Patrizia; Ambrogi, Federico; Biganzoli, Elia
- Abstract
Background: In exploring the time course of a disease to support or generate biological hypotheses, the shape of the hazard function provides relevant information. For long follow-ups the shape of hazard function may be complex, with the presence of multiple peaks. In this paper we present the use of a neural network extension of the piecewise exponential model to study the shape of the hazard function in time in dependence of covariates. The technique is applied to a dataset of 247 renal cell carcinoma patients from a randomized clinical trial. Results: An interaction effect of treatment with number of metastatic lymph nodes but not with pathologic T-stage is highlighted. Conclusions: Piecewise Exponential Artificial Neural Networks demonstrate a clinically useful and flexible tool in assessing interaction or time-dependent effects of the prognostic factors on the hazard function.
- Subjects
LYMPH node cancer; LIVER cancer; LYMPHATIC metastasis; METASTASIS; RANDOMIZED controlled trials; ARTIFICIAL neural networks
- Publication
BMC Bioinformatics, 2018, Vol 19, p23
- ISSN
1471-2105
- Publication type
Academic Journal
- DOI
10.1186/s12859-018-2179-1