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Personalized medicine and proteomics: lessons from non-small cell lung cancer
Authors:Marko-Varga György  Ogiwara Atsushi  Nishimura Toshihide  Kawamura Takeshi  Fujii Kiyonaga  Kawakami Takao  Kyono Yutaka  Tu Hsiao-Kun  Anyoji Hisae  Kanazawa Mitsuhiro  Akimoto Shingo  Hirano Takashi  Tsuboi Masahiro  Nishio Kazuto  Hada Shuji  Jiang Haiyi  Fukuoka Masahiro  Nakata Kouichiro  Nishiwaki Yutaka  Kunito Hideo  Peers Ian S  Harbron Chris G  South Marie C  Higenbottam Tim  Nyberg Fredrik  Kudoh Shoji  Kato Harubumi
Institution:Respiratory Biological Sciences, AstraZeneca R&D Lund, SE-221 87 Lund, Sweden.
Abstract:Personalized medicine allows the selection of treatments best suited to an individual patient and disease phenotype. To implement personalized medicine, effective tests predictive of response to treatment or susceptibility to adverse events are needed, and to develop a personalized medicine test, both high quality samples and reliable data are required. We review key features of state-of-the-art proteomic profiling and introduce further analytic developments to build a proteomic toolkit for use in personalized medicine approaches. The combination of novel analytical approaches in proteomic data generation, alignment and comparison permit translation of identified biomarkers into practical assays. We further propose an expanded statistical analysis to understand the sources of variability between individuals in terms of both protein expression and clinical variables and utilize this understanding in a predictive test.
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