2021
DOI: 10.1002/jcc.26508
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MLLPA: A Machine Learning‐assisted Python module to study phase‐specific events in lipid membranes

Abstract: Machine Learning‐assisted Lipid Phase Analysis (MLLPA) is a new Python 3 module developed to analyze phase domains in a lipid membrane based on lipid molecular states. Reading standard simulation coordinate and trajectory files, the software first analyze the phase composition of the lipid membrane by using machine learning tools to label each individual molecules with respect to their state, and then decompose the simulation box using Voronoi tessellations to analyze the local environment of all the molecules… Show more

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Cited by 3 publications
(7 citation statements)
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“…The modularity of LiPyphilic, along with its focus on integrating with the wider scientific Python stack, means the output of other analysis tools such as FATSLiM or MLLPA can be used as input for further analysis in LiPyphilic. Further, the output of LiPyphilic is in the form of NumPy arrays, Scipy sparse matrices, or Pandas Dataframes.…”
Section: Discussionmentioning
confidence: 99%
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“…The modularity of LiPyphilic, along with its focus on integrating with the wider scientific Python stack, means the output of other analysis tools such as FATSLiM or MLLPA can be used as input for further analysis in LiPyphilic. Further, the output of LiPyphilic is in the form of NumPy arrays, Scipy sparse matrices, or Pandas Dataframes.…”
Section: Discussionmentioning
confidence: 99%
“…If the phase of each lipid at each frame is known, can be used to calculate the registration of L o or L d domains over time. There are various approaches to determining the phase of lipids, from simple metrics such as the deuterium order parameter to more powerful machine learning methods such as hidden Markov models, ,,, Smooth Overlap of Atomic Positions, or those employed by MLLPA . If the lipid phase data are stored in a two-dimensional NumPy array of shape ( N lipids , N frames ), it can be used to create a boolean mask that will tell which lipids to include in the analysis.…”
Section: Lipyphilicmentioning
confidence: 99%
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