Publication | Open Access
SSMFN: a fused spatial and sequential deep learning model for methylation site prediction
14
Citations
23
References
2021
Year
Our models achieved the best performance across different environments in almost all measurements. Also, our result suggests that the NN model trained on a balanced training dataset and tested on an imbalanced dataset will offer high specificity and low sensitivity. Thus, the NN model for methylation site prediction should be trained on an imbalanced dataset. Since in the actual application, there are far more negative samples than positive samples.
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