2018
DOI: 10.1186/s12885-018-4302-0
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In silico cancer research towards 3R

Abstract: BackgroundImproving our understanding of cancer and other complex diseases requires integrating diverse data sets and algorithms. Intertwining in vivo and in vitro data and in silico models are paramount to overcome intrinsic difficulties given by data complexity. Importantly, this approach also helps to uncover underlying molecular mechanisms. Over the years, research has introduced multiple biochemical and computational methods to study the disease, many of which require animal experiments. However, modeling… Show more

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Cited by 89 publications
(48 citation statements)
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References 129 publications
(118 reference statements)
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“…The continuing increase in the knowledge about mesothelial carcinogenesis will permit the use of more pertinent cell models that represent the MM tumor. New approaches not yet used in MM should be explored, including organ-on-a-chip technologies or in silico biological systems using computational modeling and machine learning (120,121). Powerful technological tools should allow researchers to establish models with MM cells that grow in a more accurate tumor microenvironment, and possible in situ molecular analyses of tumor cells.…”
Section: Resultsmentioning
confidence: 99%
“…The continuing increase in the knowledge about mesothelial carcinogenesis will permit the use of more pertinent cell models that represent the MM tumor. New approaches not yet used in MM should be explored, including organ-on-a-chip technologies or in silico biological systems using computational modeling and machine learning (120,121). Powerful technological tools should allow researchers to establish models with MM cells that grow in a more accurate tumor microenvironment, and possible in situ molecular analyses of tumor cells.…”
Section: Resultsmentioning
confidence: 99%
“…There are a wide range of datasets available open for data mining, predictive modeling or other purposes [4]. Obtainable data enable many hypotheses to be tested in silico, saving time and money, and maximizing efficiency [5]. Various data resources can be of interest including biomolecular repository hubs, additionally, offering not exclusively upload and analysis options or links to publications.…”
Section: Web Resources and Open Datamentioning
confidence: 99%
“…Moreover, many of these showings and evaluations are performed utilizing conventional cell lines which only represent the actual tumor in the persons, leaving the entire heterogeneity of the intra- and inter-tumors benefit of the entire. Among the most pivotal role in the development of biological diagnostics of effects and treatment interventions for tumor has promptly developed suitable results to replace variable and expensive in vivo models (Jean-Quartier et al., 2018 ).…”
Section: Challenges Offered By Tme To Nanomedicinementioning
confidence: 99%