Prediction model for shortterm mortality after palliative radiotherapy for patients having advanced cancer: a cohort study from routine electronic medical data
Metadatos
Afficher la notice complèteAuteur
Lee, Shing Fung; Luk, Hollis; Wong, Aray; Kwan Ng, Chuk; Chi Sing Wong, Frank; Luque Fernández, Miguel ÁngelEditorial
Springer Nature
Date
2020-04-01Referencia bibliográfica
Shing Fung, L. et. al. Sci Rep 10, 5779 (2020). [https://doi.org/10.1038/s41598-020-62826-x]
Patrocinador
Miguel Servet I Investigator Award (grant CP17/00206 EU-FEDER) from the National Institute of Health, Carlos III (ISCIII), Madrid, SpainRésumé
We developed a predictive score system for 30-day mortality after palliative radiotherapy by using
predictors from routine electronic medical record. Patients with metastatic cancer receiving first course
palliative radiotherapy from 1 July, 2007 to 31 December, 2017 were identified. 30-day mortality
odds ratios and probabilities of the death predictive score were obtained using multivariable logistic
regression model. Overall, 5,795 patients participated. Median follow-up was 39.6 months (range,
24.5–69.3) for all surviving patients. 5,290 patients died over a median 110 days, of whom 995 (17.2%)
died within 30 days of radiotherapy commencement. The most important mortality predictors were
primary lung cancer (odds ratio: 1.73, 95% confidence interval: 1.47–2.04) and log peripheral blood
neutrophil lymphocyte ratio (odds ratio: 1.71, 95% confidence interval: 1.52–1.92). The developed
predictive scoring system had 10 predictor variables and 20 points. The cross-validated area under curve
was 0.81 (95% confidence interval: 0.79–0.82). The calibration suggested a reasonably good fit for the
model (likelihood-ratio statistic: 2.81, P = 0.094), providing an accurate prediction for almost all 30-day
mortality probabilities. The predictive scoring system accurately predicted 30-day mortality among
patients with stage IV cancer. Oncologists may use this to tailor palliative therapy for patients.