Elsevier

Journal of Thoracic Oncology

Volume 10, Issue 11, November 2015, Pages 1576-1589
Journal of Thoracic Oncology

Original Article
Refining Prognosis in Lung Cancer: A Report on the Quality and Relevance of Clinical Prognostic Tools

https://doi.org/10.1097/JTO.0000000000000652Get rights and content
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Introduction

Accurate, individualized prognostication for lung cancer patients requires the integration of standard patient and pathologic factors, biological, genetic, and other molecular characteristics of the tumor. Clinical prognostic tools aim to aggregate information on an individual patient to predict disease outcomes such as overall survival, but little is known about their clinical utility and accuracy in lung cancer.

Methods

A systematic search of the scientific literature for clinical prognostic tools in lung cancer published from January 1, 1996 to January 27, 2015 was performed. In addition, web-based resources were searched. A priori criteria determined by the Molecular Modellers Working Group of the American Joint Committee on Cancer were used to investigate the quality and usefulness of tools. Criteria included clinical presentation, model development approaches, validation strategies, and performance metrics.

Results

Thirty-two prognostic tools were identified. Patients with metastases were the most frequently considered population in non–small-cell lung cancer. All tools for small-cell lung cancer covered that entire patient population. Included prognostic factors varied considerably across tools. Internal validity was not formally evaluated for most tools and only 11 were evaluated for external validity. Two key considerations were highlighted for tool development: identification of an explicit purpose related to a relevant clinical population and clear decision points and prioritized inclusion of established prognostic factors over emerging factors.

Conclusions

Prognostic tools will contribute more meaningfully to the practice of personalized medicine if better study design and analysis approaches are used in their development and validation.

Key Words

Lung cancer, Prognosis
Clinical prediction tools
Prediction models
Prognostic model

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Disclosure: The authors declare no conflict of interest.