A new algorithm to train hidden Markov models for biological sequences with partial labels.
Jiefu LiJung-Youn LeeLi LiaoPublished in: BMC bioinformatics (2021)
A novel training method is developed to improve the training of hidden Markov models by utilizing partial labelled data. The method will impact on detecting de novo motifs and signals in biological sequence data. In particular, the method will be deployed in active learning mode to the ongoing research in detecting plasmodesmata targeting signals and assess the performance with validations from wet-lab experiments.