Development of a Clinical Prediction Model for 1-Year Mortality in Patients With Advanced Cancer

Author:

Owusuaa Catherine1,van der Padt-Pruijsten Annemieke2,Drooger Jan C.3,Heijns Joan B.4,Dietvorst Anne-Marie5,Janssens-van Vliet Ellen C. J.6,Nieboer Daan7,Aerts Joachim G. J. V.8,van der Heide Agnes7,van der Rijt Carin C. D.1

Affiliation:

1. Department of Medical Oncology, Erasmus MC Cancer Institute, Rotterdam, the Netherlands

2. Department of Internal Medicine, Maasstad Hospital, Rotterdam, the Netherlands

3. Department of Internal Medicine, Ikazia Hospital, Rotterdam, the Netherlands

4. Department of Internal Medicine, Amphia, Breda, the Netherlands

5. Department of Internal Medicine, Van Weel Bethesda Hospital, Dirksland, the Netherlands

6. Department of Internal Medicine, Admiraal de Ruyter Hospital, Goes, the Netherlands

7. Department of Public Health, Erasmus MC, Erasmus University Medical Center, Rotterdam, the Netherlands

8. Department of Pulmonary Diseases, Erasmus MC, Erasmus University Medical Center, Rotterdam, the Netherlands

Abstract

ImportanceTo optimize palliative care in patients with cancer who are in their last year of life, timely and accurate prognostication is needed. However, available instruments for prognostication, such as the surprise question (“Would I be surprised if this patient died in the next year?”) and various prediction models using clinical variables, are not well validated or lack discriminative ability.ObjectiveTo develop and validate a prediction model to calculate the 1-year risk of death among patients with advanced cancer.Design, Setting, and ParticipantsThis multicenter prospective prognostic study was performed in the general oncology inpatient and outpatient clinics of 6 hospitals in the Netherlands. A total of 867 patients were enrolled between June 2 and November 22, 2017, and followed up for 1 year. The primary analyses were performed from October 9 to 25, 2019, with the most recent analyses performed from June 19 to 22, 2022. Cox proportional hazards regression analysis was used to develop a prediction model including 3 categories of candidate predictors: clinician responses to the surprise question, patient clinical characteristics, and patient laboratory values. Data on race and ethnicity were not collected because most patients were expected to be of White race and Dutch ethnicity, and race and ethnicity were not considered as prognostic factors. The models’ discriminative ability was assessed using internal-external validation by study hospital and measured using the C statistic. Patients 18 years and older with locally advanced or metastatic cancer were eligible. Patients with hematologic cancer were excluded.Main Outcomes and MeasuresThe risk of death by 1 year.ResultsAmong 867 patients, the median age was 66 years (IQR, 56-72 years), and 411 individuals (47.4%) were male. The 1-year mortality rate was 41.6% (361 patients). Three prediction models with increasing complexity were developed: (1) a simple model including the surprise question, (2) a clinical model including the surprise question and clinical characteristics (age, cancer type prognosis, visceral metastases, brain metastases, Eastern Cooperative Oncology Group performance status, weight loss, pain, and dyspnea), and (3) an extended model including the surprise question, clinical characteristics, and laboratory values (hemoglobin, C-reactive protein, and serum albumin). The pooled C statistic was 0.69 (95% CI, 0.67-0.71) for the simple model, 0.76 (95% CI, 0.73-0.78) for the clinical model, and 0.78 (95% CI, 0.76-0.80) for the extended model. A nomogram and web-based calculator were developed to support clinicians in adequately caring for patients with advanced cancer.Conclusions and RelevanceIn this study, a prediction model including the surprise question, clinical characteristics, and laboratory values had better discriminative ability in predicting death among patients with advanced cancer than models including the surprise question, clinical characteristics, or laboratory values alone. The nomogram and web-based calculator developed for this study can be used by clinicians to identify patients who may benefit from palliative care and advance care planning. Further exploration of the feasibility and external validity of the model is needed.

Publisher

American Medical Association (AMA)

Subject

General Medicine

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