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MSiP (version 1.3.7)

'MassSpectrometry' Interaction Prediction

Description

The 'MSiP' is a computational approach to predict protein-protein interactions from large-scale affinity purification mass 'spectrometry' (AP-MS) data. This approach includes both spoke and matrix models for interpreting AP-MS data in a network context. The "spoke" model considers only bait-prey interactions, whereas the "matrix" model assumes that each of the identified proteins (baits and prey) in a given AP-MS experiment interacts with each of the others. The spoke model has a high false-negative rate, whereas the matrix model has a high false-positive rate. Although, both statistical models have merits, a combination of both models has shown to increase the performance of machine learning classifiers in terms of their capabilities in discrimination between true and false positive interactions.

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Version

Install

install.packages('MSiP')

Monthly Downloads

153

Version

1.3.7

License

GPL-3

Maintainer

Matineh Rahmatbakhsh

Last Published

June 17th, 2021

Functions in MSiP (1.3.7)

testdfClassifier

Test data for classifier
diceCoefficient

diceCoefficient
jaccardCoefficient

jaccardCoefficient
svmTrain

svmTrain
SampleDatInput

Test data for scoring
rfTrain

rfTrain
cPASS

cPASS
overlapScore

overlapScore
Weighted.matrixModel

Weighted.matrixModel
simpsonCoefficient

simpsonCoefficient