Development and validation of a prognostic nomogram for terminally ill cancer patients.

BACKGROUND Determining life expectancy in terminally ill cancer patients is a difficult task. We aimed to develop and validate a nomogram to predict the length of survival in patients with terminal disease. METHODS From February 1, 2003, to December 31, 2005, 406 consecutive terminally ill patients were entered into the study. We analyzed 38 features prognostic of life expectancy among terminally ill patients by multivariable Cox regression and identified the most accurate and parsimonious model by backward variable elimination according to the Akaike information criterion. Five clinical and laboratory variables were built into a nomogram to estimate the probability of patient survival at 15, 30, and 60 days. We validated and calibrated the nomogram with an external validation cohort of 474 patients who were treated from June 1, 2006, through December 31, 2007. RESULTS The median overall survival was 29.1 days for the training set and 18.3 days for the validation set. Eastern Cooperative Oncology Group performance status, lactate dehydrogenase levels, lymphocyte levels, albumin levels, and time from initial diagnosis to diagnosis of terminal disease were retained in the multivariable Cox proportional hazards model as independent prognostic factors of survival and formed the basis of the nomogram. The nomogram had high predictive performance, with a bootstrapped corrected concordance index of 0.70, and it showed good calibration. External independent validation revealed 68% predictive accuracy. CONCLUSIONS We developed a highly accurate tool that uses basic clinical and analytical information to predict the probability of survival at 15, 30, and 60 days in terminally ill cancer patients. This tool can help physicians making decisions on clinical care at the end of life.

[1]  M. Maltoni,et al.  Successful validation of the palliative prognostic score in terminally ill cancer patients. Italian Multicenter Study Group on Palliative Care. , 1999, Journal of pain and symptom management.

[2]  Hong-Yup Ahn,et al.  Lactate dehydrogenase as a prognostic factor for survival time of terminally ill cancer patients: a preliminary study. , 2007, European journal of cancer.

[3]  I. Bukovsky,et al.  Prediction of the survival of patients with advanced ovarian cancer according to a risk model based on a scoring system. , 1998, European journal of gynaecological oncology.

[4]  M. Maltoni,et al.  Biological indices predictive of survival in 519 Italian terminally ill cancer patients. Italian Multicenter Study Group on Palliative Care. , 1997, Journal of pain and symptom management.

[5]  N. Christakis,et al.  Prognostic factors in advanced cancer patients: evidence-based clinical recommendations--a study by the Steering Committee of the European Association for Palliative Care. , 2005, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.

[6]  E. Espinosa,et al.  Serum albumin and other prognostic factors related to response and survival in patients with advanced non-small cell lung cancer. , 1995, Lung cancer.

[7]  A. Favero,et al.  Intra and interobserver variability in cancer patients' performance status assessed according to Karnofsky and ECOG scales. , 1991, Annals of oncology : official journal of the European Society for Medical Oncology.

[8]  N. Christakis,et al.  Extent and determinants of error in doctors' prognoses in terminally ill patients: prospective cohort study , 2000, BMJ : British Medical Journal.

[9]  J. Davidson,et al.  The Montgomery‐Åsberg Depression Scale: reliability and validity , 1986, Acta psychiatrica Scandinavica.

[10]  M. Maltoni,et al.  A new palliative prognostic score: a first step for the staging of terminally ill cancer patients. Italian Multicenter and Study Group on Palliative Care. , 1999, Journal of pain and symptom management.

[11]  J. Yates,et al.  Evaluation of patients with advanced cancer using the karnofsky performance status , 1980, Cancer.

[12]  C. Earle,et al.  Trends in the aggressiveness of cancer care near the end of life. , 2004, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.

[13]  Paul Glare,et al.  Predicting survival in patients with advanced disease. , 2008, European journal of cancer.

[14]  C Safran,et al.  Serum albumin level on admission as a predictor of death, length of stay, and readmission. , 1992, Archives of internal medicine.

[15]  Lh Heyse-Moore,et al.  Can doctors accurately predict the life expectancy of patients with terminal cancer? , 1987 .

[16]  C. Antonescu,et al.  Development and validation of a prognostic nomogram for recurrence-free survival after complete surgical resection of localised primary gastrointestinal stromal tumour: a retrospective analysis. , 2009, The Lancet. Oncology.

[17]  A. Vigano,et al.  Clinical survival predictors in patients with advanced cancer. , 2000, Archives of internal medicine.

[18]  V. Mor,et al.  Clinical symptoms and length of survival in patients with terminal cancer. , 1988, Archives of internal medicine.

[19]  N. Christakis,et al.  Preparing for the end of life: preferences of patients, families, physicians, and other care providers. , 2001, Journal of pain and symptom management.

[20]  E. Bruera,et al.  Estimate of survival of patients admitted to a palliative care unit: a prospective study. , 1992, Journal of pain and symptom management.

[21]  L. Vlahos,et al.  Brief cognitive assessment of cancer patients: evaluation of the Mini‐Mental State Examination (MMSE) psychometric properties , 2007, Psycho-oncology.

[22]  P. Stone,et al.  Predicting prognosis in patients with advanced cancer. , 2007, Annals of oncology : official journal of the European Society for Medical Oncology.

[23]  C. Ripamonti,et al.  Predictive models in palliative care , 2009, Cancer.

[24]  D. Heo,et al.  Development of terminal cancer prognostic score as an index in terminally ill cancer patients. , 2001, Oncology reports.

[25]  D. Oxenham,et al.  Accuracy of prediction of survival by different professional groups in a hospice , 1998, Palliative medicine.

[26]  A. Dobson,et al.  Measuring the quality of life of cancer patients: a concise QL-index for use by physicians. , 1981, Journal of chronic diseases.

[27]  M. Kattan,et al.  Prognostic nomogram for sunitinib in patients with metastatic renal cell carcinoma , 2008, Cancer.

[28]  Roman Rouzier,et al.  Nomogram to predict subsequent brain metastasis in patients with metastatic breast cancer. , 2010, Journal of clinical oncology : official journal of the American Society of Clinical Oncology.

[29]  W W Zung,et al.  A rating instrument for anxiety disorders. , 1971, Psychosomatics.

[30]  M. Shelkey,et al.  Katz Index of Independence in Activities of Daily Living. , 1999, Journal of gerontological nursing.

[31]  F. De Conno,et al.  Leucocyte-lymphocyte ratio as prognostic indicator of survival in cachectic cancer patients. , 1991, Annals of oncology : official journal of the European Society for Medical Oncology.

[32]  Stefan Walenta,et al.  Lactate: mirror and motor of tumor malignancy. , 2004, Seminars in radiation oncology.

[33]  T. Morita,et al.  The Palliative Prognostic Index: a scoring system for survival prediction of terminally ill cancer patients , 1999, Supportive Care in Cancer.

[34]  Daniel B. Mark,et al.  TUTORIAL IN BIOSTATISTICS MULTIVARIABLE PROGNOSTIC MODELS: ISSUES IN DEVELOPING MODELS, EVALUATING ASSUMPTIONS AND ADEQUACY, AND MEASURING AND REDUCING ERRORS , 1996 .

[35]  A. Vigano,et al.  Survival prediction in terminal cancer patients: a systematic review of the medical literature , 2000, Palliative medicine.

[36]  Patrick Royston,et al.  A new measure of prognostic separation in survival data , 2004, Statistics in medicine.

[37]  T. Chiu,et al.  Prediction of survival in terminal cancer patients in Taiwan: constructing a prognostic scale. , 2004, Journal of pain and symptom management.

[38]  I. Judson,et al.  90-Days mortality rate in patients treated within the context of a phase-I trial: how should we identify patients who should not go on trial? , 2008, European journal of cancer.