A Review of Cancer Risk Prediction Models with Genetic Variants
Author(s) -
Xuexia Wang,
Michael Oldani,
Xingwang Zhao,
Xiaohui Huang,
Dajun Qian
Publication year - 2014
Publication title -
cancer informatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.606
H-Index - 31
ISSN - 1176-9351
DOI - 10.4137/cin.s13788
Subject(s) - cancer , psychological intervention , predictive modelling , medicine , strengths and weaknesses , informatics , risk assessment , bioinformatics , risk analysis (engineering) , computational biology , computer science , machine learning , biology , psychology , social psychology , computer security , psychiatry , electrical engineering , engineering
Cancer risk prediction models are important in identifying individuals at high risk of developing cancer, which could result in targeted screening and interventions to maximize the treatment benefit and minimize the burden of cancer. The cancer-associated genetic variants identified in genome-wide or candidate gene association studies have been shown to collectively enhance cancer risk prediction, improve our understanding of carcinogenesis, and possibly result in the development of targeted treatments for patients. In this article, we review the cancer risk prediction models that have been developed for popular cancers and assess their applicability, strengths, and weaknesses. We also discuss the factors to be considered for future development and improvement of models for cancer risk prediction.
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