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Development and Validation of a Bedside Score to Predict Early Death in Cancer of Unknown Primary Patients

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  • Nicolas Penel
  • Sylvie Negrier
  • Isabelle Ray-Coquard
  • Charles Ferte
  • Patrick Devos
  • Antoine Hollebecque
  • Michael B Sawyer
  • Antoine Adenis
  • Pascal Seve

Abstract

Background: We have investigated predictors of 90-day-mortality in a large cohort of non-specific cancer of unknown primary patients. Methods: Predictors have been identified by univariate and then logistic regression analysis in a single-center cohort comprising 429 patients (development cohort). We identified four predictors that produced a predictive score that has been applied to an independent multi-institutional cohort of 409 patients (validation cohort). The score was the sum of predictors for each patient (0 to 4). Results: The 90-day-mortality-rate was 33 and 26% in both cohorts. Multivariate analysis has identified 4 predictors for 90-day-mortality: performance status>1 (OR = 3.03, p = 0.001), at least one co-morbidity requiring treatment (OR = 2.68, p = 0.004), LDH>1.5×the upper limit of normal (OR = 2.88, p = 0.007) and low albumin or protein levels (OR = 3.05, p = 0.007). In the development cohort, 90-day-mortality-rates were 12.5%, 32% and 64% when the score was [0–1], 2 and [3]–[4], respectively. In the validation cohort, risks were 13%, 25% and 62% according to the same score values. Conclusions: We have validated a score that is easily calculated at the beside that estimates the 90-days mortality rate in non-specific CUP patients. This could be helpful to identify patients who would be better served with palliative care rather than aggressive chemotherapy.

Suggested Citation

  • Nicolas Penel & Sylvie Negrier & Isabelle Ray-Coquard & Charles Ferte & Patrick Devos & Antoine Hollebecque & Michael B Sawyer & Antoine Adenis & Pascal Seve, 2009. "Development and Validation of a Bedside Score to Predict Early Death in Cancer of Unknown Primary Patients," PLOS ONE, Public Library of Science, vol. 4(8), pages 1-6, August.
  • Handle: RePEc:plo:pone00:0006483
    DOI: 10.1371/journal.pone.0006483
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    Cited by:

    1. Yu Uneno & Kei Taneishi & Masashi Kanai & Kazuya Okamoto & Yosuke Yamamoto & Akira Yoshioka & Shuji Hiramoto & Akira Nozaki & Yoshitaka Nishikawa & Daisuke Yamaguchi & Teruko Tomono & Masahiko Nakatsu, 2017. "Development and validation of a set of six adaptable prognosis prediction (SAP) models based on time-series real-world big data analysis for patients with cancer receiving chemotherapy: A multicenter ," PLOS ONE, Public Library of Science, vol. 12(8), pages 1-13, August.

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