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Machine learning algorithms for mode-of-action classification in toxicity assessment

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Figure

Fig. 2 TCRCs from four different clusters. The detail of chemicals in (a)-(f) are provided in the Additional file 1
Fig. 3 Feedforward n-layer ANN
Fig. 4 Three-level wavelet decomposition
Fig. 5 Plots of original TCRCs and wavelet coefficients W5(1) for (a) Actinomycin D and (b) Cordycepin
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