4.7 Article

RECURSIVE PARTITIONING ANALYSIS OF PROGNOSTIC FACTORS FOR SURVIVAL IN PATIENTS WITH ADVANCED CANCER

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ijrobp.2008.05.067

关键词

Predictive model; Survival; Recursive partitioning; Advanced cancer; Palliative radiotherapy

资金

  1. Michael and Karyn Goldstein Cancer Research Fund
  2. Department of Radiation Oncology, University of Toronto
  3. Odette Cancer Center Radiation Program Fund

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Purpose: To construct a predictive model for survival of patients referred to the Rapid Response Radiotherapy Program using recursive partitioning (RP). Methods and Materials: We analyzed 16 factors characterizing patients with metastases at first referral to the Rapid Response Radiotherapy Program for palliative radiotherapy in 1999 for their effect on survival. They included age, primary cancer site, site of metastases, weight loss (>= 10% during the past 6 months), Karnofsky performance status (KPS), interval from the first diagnosis of cancer to the first consultation at the Rapid Response Radiotherapy Program, analgesic consumption within the previous 24 It, and the nine symptom scores from the Edmonton Symptom Assessment Scale. We used RP to develop a predictive model of survival for patients referred in 1999, followed by temporal validation using patients referred in 2000, and external validation using patients referred in 2002 to another institution. Results: The model was able to separate patients into three groups with different durations of survival that were defined by (1) KPS >60; (2) KPS <= 60 with bone metastases only; and (3) KPS <= 60 with other metastases. The model performed moderately well when applied to the validation sets, but a major limitation was that it led to an unequal distribution of patients, with a small proportion of patients in the intermediate group. Conclusion: We have demonstrated that RP can be used to predict the survival of patients with advanced cancer. However, this model has no advantages compared with our published prognostic models that use the survival prediction scores and number of risk factors. (C) 2009 Elsevier Inc.

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