discotime.utils.estimators module
- class discotime.utils.estimators.AalenJohansen(time: _SupportsArray[dtype[Any]] | _NestedSequence[_SupportsArray[dtype[Any]]] | bool | int | float | complex | str | bytes | _NestedSequence[bool | int | float | complex | str | bytes], event: _SupportsArray[dtype[Any]] | _NestedSequence[_SupportsArray[dtype[Any]]] | bool | int | float | complex | str | bytes | _NestedSequence[bool | int | float | complex | str | bytes], n_causes: int | int64 | None = None)[source]
Bases:
objectObtain cumulative incidence curves with the Aalen-Johansen method.
- Parameters:
time – event times
event – event indicator (0/1/../c) with 0=censored
n_causes – how many causes should be included? If None (the default) then all observed causes are include.
- class discotime.utils.estimators.KaplanMeier(time: Iterable[int | int64 | float | float64], event: Iterable[int | int64])[source]
Bases:
objectSimple implementation of the Kaplan-Meier estimator.
- Parameters:
time – event times.
event – event indicator (0/1) where 0 is censoring.
Example
>>> km = KaplanMeier(time=[0, 1.5, 1.3, 3], event=[0, 1, 0, 0]) >>> km(0) array([1.]) >>> km([0, 1.0, 1.1, 1.5]) array([1. , 1. , 1. , 0.5])
- percentile(p: ~collections.abc.Iterable[int | ~numpy.int64 | float | ~numpy.float64], dtype=<class 'numpy.float64'>) ndarray[Any, dtype[float64]][source]
Obtain approximate timepoint t such that P(t) = p.
The stepwise Kaplan-Meier estimator is piecewise linearly interpolated such that unique timepoints can be obtained.
- discotime.utils.estimators.interpolate2d(x: Tensor, xp: Tensor, yp: Tensor)[source]
Perform stepwise linear interpolation of a discrete function.
_xp_ and _yp_ are tensors of values used to approximate f: y = f(x). This functions uses interpolation to find the value of new points x.
- Parameters:
x (
torch.Tensor) – an 1D tensor real values.xp (
torch.Tensor) – an 1D tensor of real values.yp (
torch.Tensor) – an ND tensor of real values. The length of yp along the second axis (dim=1) must have the same length as xp.