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Article Commentary: Predictive Modeling of Drug Treatment in the Area of Personalized Medicine
Author(s) -
Lesley A. Ogilvie,
Christoph Wierling,
T. Keßler,
Hans Lehrach,
Bodo Lange
Publication year - 2015
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.s19330
Subject(s) - personalized medicine , expansive , precision medicine , computer science , data science , informatics , drug development , medicine , predictive power , computational biology , drug , risk analysis (engineering) , medical physics , bioinformatics , intensive care medicine , pharmacology , biology , engineering , pathology , materials science , compressive strength , electrical engineering , composite material , philosophy , epistemology
Despite a growing body of knowledge on the mechanisms underlying the onset and progression of cancer, treatment success rates in oncology are at best modest. Current approaches use statistical methods that fail to embrace the inherent and expansive complexity of the tumor/patient/drug interaction. Computational modeling, in particular mechanistic modeling, has the power to resolve this complexity. Using fundamental knowledge on the interactions occurring between the components of a complex biological system, large-scale in silico models with predictive capabilities can be generated. Here, we describe how mechanistic virtual patient models, based on systematic molecular characterization of patients and their diseases, have the potential to shift the theranostic paradigm for oncology, both in the fields of personalized medicine and targeted drug development. In particular, we highlight the mechanistic modeling platform ModCell™ for individualized prediction of patient responses to treatment, emphasizing modeling techniques and avenues of application.

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