» Articles » PMID: 39104134

A New Mixture Model With Cure Rate Applied to Breast Cancer Data

Overview
Journal Biom J
Specialty Public Health
Date 2024 Aug 6
PMID 39104134
Authors
Affiliations
Soon will be listed here.
Abstract

We introduce a new modelling for long-term survival models, assuming that the number of competing causes follows a mixture of Poisson and the Birnbaum-Saunders distribution. In this context, we present some statistical properties of our model and demonstrate that the promotion time model emerges as a limiting case. We delve into detailed discussions of specific models within this class. Notably, we examine the expected number of competing causes, which depends on covariates. This allows for direct modeling of the cure rate as a function of covariates. We present an Expectation-Maximization (EM) algorithm for parameter estimation, to discuss the estimation via maximum likelihood (ML) and provide insights into parameter inference for this model. Additionally, we outline sufficient conditions for ensuring the consistency and asymptotic normal distribution of ML estimators. To evaluate the performance of our estimation method, we conduct a Monte Carlo simulation to provide asymptotic properties and a power study of LR test by contrasting our methodology against the promotion time model. To demonstrate the practical applicability of our model, we apply it to a real medical dataset from a population-based study of incidence of breast cancer in São Paulo, Brazil. Our results illustrate that the proposed model can outperform traditional approaches in terms of model fitting, highlighting its potential utility in real-world scenarios.

References
1.
Gomez Y, Gallardo D, Bourguignon M, Bertolli E, Calsavara V . A general class of promotion time cure rate models with a new biological interpretation. Lifetime Data Anal. 2022; 29(1):66-86. DOI: 10.1007/s10985-022-09575-3. View

2.
Chen M, Ibrahim J, Sinha D . A New Bayesian Model For Survival Data With a Surviving Fraction. J Am Stat Assoc. 2025; 94(447):909-919. PMC: 11845248. DOI: 10.2307/2670006. View

3.
Pal S . A simplified stochastic EM algorithm for cure rate model with negative binomial competing risks: An application to breast cancer data. Stat Med. 2021; 40(28):6387-6409. DOI: 10.1002/sim.9189. View

4.
Ferlay J, Colombet M, Soerjomataram I, Parkin D, Pineros M, Znaor A . Cancer statistics for the year 2020: An overview. Int J Cancer. 2021; . DOI: 10.1002/ijc.33588. View

5.
Andrade C, Magedanz A, Escobosa D, Tomaz W, Santinho C, Lopes T . The importance of a database in the management of healthcare services. Einstein (Sao Paulo). 2013; 10(3):360-5. DOI: 10.1590/s1679-45082012000300018. View