Derivation of cancer diagnostic and prognostic signatures from gene expression data

Author:

Goodison Steve1,Sun Yijun2,Urquidi Virginia2

Affiliation:

1. M. D. Anderson Cancer Center Orlando, Cancer Research Institute, 6900 Lake Nona Blvd, Orlando, FL 32827, USA.

2. University of Florida, Interdisciplinary Center for Biotechnology Research, PO Box 103622, Gainesville, FL 32610, USA

Abstract

The ability to compare genome-wide expression profiles in human tissue samples has the potential to add an invaluable molecular pathology aspect to the detection and evaluation of multiple diseases. Applications include initial diagnosis, evaluation of disease subtype, monitoring of response to therapy and the prediction of disease recurrence. The derivation of molecular signatures that can predict tumor recurrence in breast cancer has been a particularly intense area of investigation and a number of studies have shown that molecular signatures can outperform currently used clinicopathologic factors in predicting relapse in this disease. However, many of these predictive models have been derived using relatively simple computational algorithms and whether these models are at a stage of development worthy of large-cohort clinical trial validation is currently a subject of debate. In this review, we focus on the derivation of optimal molecular signatures from high-dimensional data and discuss some of the expected future developments in the field.

Publisher

Future Science Ltd

Subject

Medical Laboratory Technology,Clinical Biochemistry,General Pharmacology, Toxicology and Pharmaceutics,General Medicine,Analytical Chemistry

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