2016
DOI: 10.1002/bimj.201500094
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Risk‐adjusted monitoring of time to event in the presence of long‐term survivors

Abstract: The use of control charts for monitoring schemes in medical context should consider adjustments to incorporate the specific risk for each individual. Some authors propose the use of a risk-adjusted survival time cumulative sum (RAST CUSUM) control chart to monitor a time-to-event outcome, possibly right censored, using conventional survival models, which do not contemplate the possibility of cure of a patient. We propose to extend this approach considering a risk-adjusted CUSUM chart, based on a cure rate mode… Show more

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Cited by 6 publications
(3 citation statements)
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“…A comparison of different RA control charts based on continuous variables is given by Steiner and Jones 8 . Oliveira et al 27 took the chance of healing of the patients into account and proposed RA CUSUM chart based on a cure rate model to monitor survival time. Zhang et al 28 discussed the effect of estimation error on the performance of RAST CUSUM chart.…”
Section: Literature Reviewmentioning
confidence: 99%
“…A comparison of different RA control charts based on continuous variables is given by Steiner and Jones 8 . Oliveira et al 27 took the chance of healing of the patients into account and proposed RA CUSUM chart based on a cure rate model to monitor survival time. Zhang et al 28 discussed the effect of estimation error on the performance of RAST CUSUM chart.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Revisions within a fixed follow-up period are most commonly analyzed using traditional methods like proportions or logistic regression (Mehrotra et al 2014;Bosco et al 2014;Kristoffersen et al 2015). It has, however, also been suggested to make use of survival analysis methods for analyzing hospital-specific time-to-event endpoints such as Kaplan-Meier curves (Kristoffersen et al 2015), proportional hazard models (He and Schaubel 2014) or CUSUM charts based on parametric or non-parametric time-to-event methods (Gandy et al 2010;Oliveira et al 2016). Compared to traditional methods, methods from survival analysis allow the inclusion of observations with incomplete follow-up times and, thus, make more efficient use of the available data.…”
Section: Introductionmentioning
confidence: 99%
“…O conhecimento da probabilidade de sobrevida no longo prazo como método de avaliação do prognóstico é de interesse para essa orientação; a menor sobrevida seria indicador de maior gravidade da condição. A sobrevida pode ser avaliada por diferentes métodos (Oliveira et al, 2016). Decorre também a identificação de variáveis associadas com a sobrevida (Marçula et al, 2011).…”
Section: Figuraunclassified