pylimma.MArrayLM

class pylimma.MArrayLM(data=None, /, **kwargs)[source]

Bases: _LargeDataObject

Linear-model-fit container (Python equivalent of R limma’s MArrayLM).

Holds the output of lm_fit / contrasts_fit / e_bayes / treat.

__init__(data=None, /, **kwargs)[source]

Methods

__init__([data])

as_dataframe([row_names])

Flatten the fit into a pandas.DataFrame with one row per probe.

clear()

copy()

dim()

fitted()

Fitted values coefficients @ design.T.

fromkeys(iterable[, value])

Create a new dictionary with keys from iterable and values set to value.

get(key[, default])

Return the value for key if key is in the dictionary, else default.

head([n])

items()

keys()

pop(k[,d])

If the key is not found, return the default if given; otherwise, raise a KeyError.

popitem()

Remove and return a (key, value) pair as a 2-tuple.

residuals(y)

Residuals y - fitted.

setdefault(key[, default])

Insert key with a value of default if key is not in the dictionary.

tail([n])

update([E, ]**F)

If E is present and has a .keys() method, then does: for k in E: D[k] = E[k] If E is present and lacks a .keys() method, then does: for k, v in E: D[k] = v In either case, this is followed by: for k in F: D[k] = F[k]

values()

Attributes

dimnames

ncol

nrow

shape

as_dataframe(row_names=None)[source]

Flatten the fit into a pandas.DataFrame with one row per probe. Port of R limma’s as.data.frame.MArrayLM (classes.R). Only slots whose first dimension matches the number of probes are retained.

Return type:

DataFrame

fitted()[source]

Fitted values coefficients @ design.T. Port of R limma’s fitted.MArrayLM (lmfit.R). Raises when the fit holds contrasts rather than raw coefficients.

Return type:

ndarray

residuals(y)[source]

Residuals y - fitted. Port of R limma’s residuals.MArrayLM (lmfit.R).

Return type:

ndarray