Abstract
Motivation: Many software libraries for using Hidden Markov Models in bioinformatics focus on inference tasks, such as likelihood calculation, parameter-fitting and alignment. However, construction of the state machines can be a laborious task, automation of which would be time-saving and less error-prone. Results: We present Machine Boss, a software tool implementing not just inference and parameter-fitting algorithms, but also a set of operations for manipulating and combining automata. The aim is to make prototyping of bioinformatics HMMs as quick and easy as the construction of regular expressions, with one-line 'recipes' for many common applications. We report data from several illustrative examples involving protein-to-DNA alignment, DNA data storage and nanopore sequence analysis.
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CITATION STYLE
Silvestre-Ryan, J., Wang, Y., Sharma, M., Lin, S., Shen, Y., Dider, S., & Holmes, I. (2021). Machine Boss: rapid prototyping of bioinformatic automata. Bioinformatics, 37(1), 29–35. https://doi.org/10.1093/bioinformatics/btaa633
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