2022
DOI: 10.3389/fbioe.2022.946329
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MLP-Based Regression Prediction Model For Compound Bioactivity

Abstract: The development of breast cancer is closely linked to the estrogen receptor ERα, which is also considered to be an important target for the treatment of breast cancer. Therefore, compounds that can antagonize ERα activity may be drug candidates for the treatment of breast cancer. In drug development, to save manpower and resources, potential active compounds are often screened by establishing compound activity prediction model. For the 1974 compounds collected, the top 20 molecular descriptors that significant… Show more

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Cited by 12 publications
(5 citation statements)
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“…MLP-Regressor is a supervised learning technique that effectively processes information through nonlinear regression by optimizing the squared error. This robust algorithm has already shown its usefulness for various applications [49,50]. It is used to verify the repetitive and accurate nature of our results in forecasting the spatial evolution of frequency component energy.…”
Section: Mlp-regressor Modelmentioning
confidence: 69%
“…MLP-Regressor is a supervised learning technique that effectively processes information through nonlinear regression by optimizing the squared error. This robust algorithm has already shown its usefulness for various applications [49,50]. It is used to verify the repetitive and accurate nature of our results in forecasting the spatial evolution of frequency component energy.…”
Section: Mlp-regressor Modelmentioning
confidence: 69%
“…Propagation of output signals from hidden layers and output prediction based on the recognized pattern in the output layer are determined by activation functions used in these layers. 25 In QSAR, MLPs were used in the prediction of toxicity, 26 bioactivity for antibreast cancer drug development, 27 blood–brain barrier permeability for discovery of CNS (central nervous system) therapeutic drugs, 28 and so forth. Rings, cyclic structures, and other molecular patterns are encompassed in the SMILES representation.…”
Section: Discussionmentioning
confidence: 99%
“…A Multilayer Perceptron model (MLP) [ 34 ] is a standard fully connected neural network model. It consists of input and output layers and at least one hidden layer.…”
Section: Methodsmentioning
confidence: 99%