2019
DOI: 10.1080/17435390.2019.1595206
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Application of Bayesian networks in determining nanoparticle-induced cellular outcomes using transcriptomics

Abstract: Inroads have been made in our understanding of the risks posed to human health and the environment by nanoparticles (NPs) but this area requires continuous research and monitoring. Machine learning techniques have been applied to nanotoxicology with very encouraging results. This study deals with bridging physicochemical properties of NPs, experimental exposure conditions and in vitro characteristics with biological effects of NPs on a molecular cellular level from transcriptomics studies. The bridging is done… Show more

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Cited by 29 publications
(31 citation statements)
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References 113 publications
(136 reference statements)
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“…Furthermore, 8% of the studies mention that their dataset had equal outcome classes, while, on the other hand, 4% of studies tackled the imbalance issue by resampling the training dataset. Resampling can be done by applying the Synthetic Minority Oversampling Technique (SMOTE), which is a supervised instance algorithm that oversamples the minority instances using the k-nearest-neighbor (kNN) [60,67,77]. This method balances the dataset by generating more data points.…”
Section: Class Balancingmentioning
confidence: 99%
See 3 more Smart Citations
“…Furthermore, 8% of the studies mention that their dataset had equal outcome classes, while, on the other hand, 4% of studies tackled the imbalance issue by resampling the training dataset. Resampling can be done by applying the Synthetic Minority Oversampling Technique (SMOTE), which is a supervised instance algorithm that oversamples the minority instances using the k-nearest-neighbor (kNN) [60,67,77]. This method balances the dataset by generating more data points.…”
Section: Class Balancingmentioning
confidence: 99%
“…Different models that use measured p-chem properties and experimental data, including biological data, exploit all the features since those properties are nano-specific [60,77]. QSAR-perturbation models, in addition to classical QSARs, make use of all available descriptors by generating several pairs of variables using the moving average approach [122,125].…”
Section: The Frameworkmentioning
confidence: 99%
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“…ML does not require deterministic insights; bypassing in depth comprehension of the interactions within a system, it constructs a computational predictor bridging input data directly to the outcome. Furthermore, those tools are fast and cheap, and as they rely on information inputs rather than physical test materials, can be used to predict the impact of materials not yet synthesized, thereby contributing to safe-by-design approaches [20].…”
Section: Introductionmentioning
confidence: 99%