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Regression models for prognostic prediction: advantages, problems, and suggested solutions.

Publication ,  Journal Article
Harrell, FE; Lee, KL; Matchar, DB; Reichert, TA
Published in: Cancer Treat Rep
October 1985

Multiple regression models have wide applicability in predicting the outcome of patients with a variety of diseases. However, many researchers are using such models without validating the necessary assumptions. All too frequently, researchers also "overfit" the data by developing models using too many predictor variables and insufficient sample sizes. Models developed in this way are unlikely to stand the test of validation on a separate patient sample. Without attempting such a validation, the researcher remains unaware that overfitting has occurred. When the ratio of the number of patients suffering endpoints to the number of potential predictors is small (say less than 10), data reduction methods are available that can greatly improve the performance of regression models. Regression models can make more accurate predictions than other methods such as stratification and recursive partitioning, when model assumptions are thoroughly examined; steps are taken (ie, choosing another model or transforming the data) when assumptions are violated; and the method of model formulation does not result in overfitting the data.

Duke Scholars

Published In

Cancer Treat Rep

ISSN

0361-5960

Publication Date

October 1985

Volume

69

Issue

10

Start / End Page

1071 / 1077

Location

United States

Related Subject Headings

  • Sampling Studies
  • Regression Analysis
  • Prognosis
  • Probability
  • Models, Biological
  • Lymphoma
  • Humans
  • Cardiovascular Diseases
  • Antineoplastic Combined Chemotherapy Protocols
 

Citation

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Harrell, F. E., Lee, K. L., Matchar, D. B., & Reichert, T. A. (1985). Regression models for prognostic prediction: advantages, problems, and suggested solutions. Cancer Treat Rep, 69(10), 1071–1077.
Harrell, F. E., K. L. Lee, D. B. Matchar, and T. A. Reichert. “Regression models for prognostic prediction: advantages, problems, and suggested solutions.Cancer Treat Rep 69, no. 10 (October 1985): 1071–77.
Harrell FE, Lee KL, Matchar DB, Reichert TA. Regression models for prognostic prediction: advantages, problems, and suggested solutions. Cancer Treat Rep. 1985 Oct;69(10):1071–7.
Harrell, F. E., et al. “Regression models for prognostic prediction: advantages, problems, and suggested solutions.Cancer Treat Rep, vol. 69, no. 10, Oct. 1985, pp. 1071–77.
Harrell FE, Lee KL, Matchar DB, Reichert TA. Regression models for prognostic prediction: advantages, problems, and suggested solutions. Cancer Treat Rep. 1985 Oct;69(10):1071–1077.

Published In

Cancer Treat Rep

ISSN

0361-5960

Publication Date

October 1985

Volume

69

Issue

10

Start / End Page

1071 / 1077

Location

United States

Related Subject Headings

  • Sampling Studies
  • Regression Analysis
  • Prognosis
  • Probability
  • Models, Biological
  • Lymphoma
  • Humans
  • Cardiovascular Diseases
  • Antineoplastic Combined Chemotherapy Protocols