.. module:: statsmodels.duration :synopsis: Models for durations .. currentmodule:: statsmodels.duration .. _duration: Methods for Survival and Duration Analysis ========================================== :mod:`statsmodels.duration` implements several standard methods for working with censored data. These methods are most commonly used when the data consist of durations between an origin time point and the time at which some event of interest occurred. A typical example is a medical study in which the origin is the time at which a subject is diagnosed with some condition, and the event of interest is death (or disease progression, recovery, etc.). Currently only right-censoring is handled. Right censoring occurs when we know that an event occurred after a given time `t`, but we do not know the exact event time. Survival function estimation and inference ------------------------------------------ The :class:`statsmodels.api.SurvfuncRight` class can be used to estimate a survival function using data that may be right censored. ``SurvfuncRight`` implements several inference procedures including confidence intervals for survival distribution quantiles, pointwise and simultaneous confidence bands for the survival function, and plotting procedures. The ``duration.survdiff`` function provides testing procedures for comparing survival distributions. Here we create a ``SurvfuncRight`` object using data from the `flchain` study, which is available through the R datasets repository. We fit the survival distribution only for the female subjects. .. code-block:: python import statsmodels.api as sm data = sm.datasets.get_rdataset("flchain", "survival").data df = data.loc[data.sex == "F", :] sf = sm.SurvfuncRight(df["futime"], df["death"]) The main features of the fitted survival distribution can be seen by calling the ``summary`` method: .. code-block:: python sf.summary().head() We can obtain point estimates and confidence intervals for quantiles of the survival distribution. Since only around 30% of the subjects died during this study, we can only estimate quantiles below the 0.3 probability point: .. code-block:: python sf.quantile(0.25) sf.quantile_ci(0.25) To plot a single survival function, call the ``plot`` method: .. code-block:: python sf.plot() Since this is a large dataset with a lot of censoring, we may wish to not plot the censoring symbols: .. code-block:: python fig = sf.plot() ax = fig.get_axes()[0] pt = ax.get_lines()[1] pt.set_visible(False) We can also add a 95% simultaneous confidence band to the plot. Typically these bands only plotted for central part of the distribution. .. code-block:: python fig = sf.plot() lcb, ucb = sf.simultaneous_cb() ax = fig.get_axes()[0] ax.fill_between(sf.surv_times, lcb, ucb, color='lightgrey') ax.set_xlim(365, 365*10) ax.set_ylim(0.7, 1) ax.set_ylabel("Proportion alive") ax.set_xlabel("Days since enrollment") Here we plot survival functions for two groups (females and males) on the same axes: .. code-block:: python gb = data.groupby("sex") ax = plt.axes() sexes = [] for g in gb: sexes.append(g[0]) sf = sm.SurvfuncRight(g[1]["futime"], g[1]["death"]) sf.plot(ax) li = ax.get_lines() li[1].set_visible(False) li[3].set_visible(False) plt.figlegend((li[0], li[2]), sexes, "center right") plt.ylim(0.6, 1) ax.set_ylabel("Proportion alive") ax.set_xlabel("Days since enrollment") We can formally compare two survival distributions with ``survdiff``, which implements several standard nonparametric procedures. The default procedure is the logrank test: .. code-block:: python stat, pv = sm.duration.survdiff(data.futime, data.death, data.sex) Here are some of the other testing procedures implemented by survdiff: .. code-block:: python # Fleming-Harrington with p=1, i.e. weight by pooled survival time stat, pv = sm.duration.survdiff(data.futime, data.death, data.sex, weight_type='fh', fh_p=1) # Gehan-Breslow, weight by number at risk stat, pv = sm.duration.survdiff(data.futime, data.death, data.sex, weight_type='gb') # Tarone-Ware, weight by the square root of the number at risk stat, pv = sm.duration.survdiff(data.futime, data.death, data.sex, weight_type='tw') Regression methods ------------------ Proportional hazard regression models ("Cox models") are a regression technique for censored data. They allow variation in the time to an event to be explained in terms of covariates, similar to what is done in a linear or generalized linear regression model. These models express the covariate effects in terms of "hazard ratios", meaning the the hazard (instantaneous event rate) is multiplied by a given factor depending on the value of the covariates. .. code-block:: python import statsmodels.api as sm import statsmodels.formula.api as smf data = sm.datasets.get_rdataset("flchain", "survival").data del data["chapter"] data = data.dropna() data["lam"] = data["lambda"] data["female"] = (data["sex"] == "F").astype(int) data["year"] = data["sample.yr"] - min(data["sample.yr"]) status = data["death"].values mod = smf.phreg("futime ~ 0 + age + female + creatinine + " "np.sqrt(kappa) + np.sqrt(lam) + year + mgus", data, status=status, ties="efron") rslt = mod.fit() print(rslt.summary()) See :ref:`statsmodels-examples` for more detailed examples. There are some notebook examples on the Wiki: `Wiki notebooks for PHReg and Survival Analysis `_ .. todo:: Technical Documentation References ^^^^^^^^^^ References for Cox proportional hazards regression model:: T Therneau (1996). Extending the Cox model. Technical report. http://www.mayo.edu/research/documents/biostat-58pdf/DOC-10027288 G Rodriguez (2005). Non-parametric estimation in survival models. http://data.princeton.edu/pop509/NonParametricSurvival.pdf B Gillespie (2006). Checking the assumptions in the Cox proportional hazards model. http://www.mwsug.org/proceedings/2006/stats/MWSUG-2006-SD08.pdf Module Reference ---------------- .. module:: statsmodels.duration.survfunc :synopsis: Models for Survival Analysis .. currentmodule:: statsmodels.duration.survfunc The class for working with survival distributions is: .. autosummary:: :toctree: generated/ SurvfuncRight .. module:: statsmodels.duration.hazard_regression :synopsis: Proportional hazards model for Survival Analysis .. currentmodule:: statsmodels.duration.hazard_regression The proportional hazards regression model class is: .. autosummary:: :toctree: generated/ PHReg The proportional hazards regression result class is: .. autosummary:: :toctree: generated/ PHRegResults The primary helper class is: .. autosummary:: :toctree: generated/ rv_discrete_float