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  • The Prediction of Radiother...
    Kerns, Sarah L.; Kundu, Suman; Oh, Jung Hun; Singhal, Sandeep K.; Janelsins, Michelle; Travis, Lois B.; Deasy, Joseph O.; Janssens, A. Cecile J. W.; Ostrer, Harry; Parliament, Matthew; Usmani, Nawaid; Rosenstein, Barry S.

    Seminars in radiation oncology, 05/2015, Letnik: 25, Številka: 4
    Journal Article

    Radiotherapy is a mainstay of cancer treatment, used in either a curative or palliative manner to treat approximately 50% of cancer patients. Normal tissue toxicity limits the doses used in standard radiation therapy protocols and impedes improvements in radiotherapy efficacy. Damage to surrounding normal tissues can produce reactions ranging from bothersome symptoms that negatively affect quality of life to severe life-threatening complications. Improved ways of predicting, prior to treatment, the risk for development of normal tissue toxicity may allow for more personalized treatment and reduce the incidence and severity of late effects. There is increasing recognition that the cause of normal tissue toxicity is multifactorial and includes genetic factors in addition to radiation dose and volume of exposure, underlying co-morbidities, age, concomitant chemotherapy or hormonal therapy and use of other medications. An understanding of the specific genetic risk factors for normal tissue response to radiation has the potential to enhance our ability to predict adverse outcomes at the treatment planning stage. Therefore, the field of radiogenomics has focused upon the identification of genetic variants associated with normal tissue toxicity resulting from radiotherapy. Innovative analytic methods are being applied to the discovery of risk variants and development of integrative predictive models that build on traditional normal tissue complication probability models by incorporating genetic information. Results from initial studies provide promising evidence that genetic-based risk models could play an important role in the implementation of precision medicine for radiation oncology through enhancing the ability to predict normal tissue reactions and thereby improve cancer treatment.