I train my survival model with the following lines:

wft = WeibullAFTFitter()
wft.fit(train, 'duration', event_col='y')

After this I wish to see what the survival probability at the current time (duration column).

The way that I am currently doing this if by using the following for loop:

p_surv = np.zeros(len(test))
for i in range(len(p_surv)):
    row = test.iloc[i:i+1].drop(dep_var, axis=1)
    t = test.iloc[i:i+1, col_num]
    p_surv[i] = wft.predict_survival_function(row, t).values[0][0]

However, this is really slow considering Im using a for loop (200k+ rows). The other alternative to do wft.predict_survival_function(test, test['duration']) would create a 200000x200000 matrix since it checks each row against all provided times.

I just wish to check the survival probability against its own duration. Is there a function in lifelines that does this?


good question. I think for now, the best way is to reproduce what the predict survival function is doing. That is, do something like this:

def predict_cumulative_hazard_at_single_time(self, X, times, ancillary_X=None):
    lambda_, rho_ = self._prep_inputs_for_prediction_and_return_scores(X, ancillary_X)
    return (times / lambda_) ** rho_

def predict_survival_function_at_single_time(self, X, times, ancillary_X=None):
    return np.exp(-self.predict_cumulative_hazard_at_single_time(X, times=times, ancillary_X=ancillary_X))

wft.predict_survival_function_at_single_time = predict_survival_function_at_single_time.__get__(wft)
wft.predict_cumulative_hazard_at_single_time = predict_cumulative_hazard_at_single_time.__get__(wft)

p_surv2 = wft.predict_survival_function_at_single_time(test, test['duration'])

I think something like that would work. This might be something I add to the API in the future.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.