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RISCA (version 0.9)

Causal Inference and Prediction in Cohort-Based Analyses

Description

We propose numerous functions for cohort-based analyses, either for prediction or causal inference. For causal inference, it includes Inverse Probability Weighting and G-computation for marginal estimation of an exposure effect when confounders are expected. We deal with binary outcomes, times-to-events (Le Borgne, 2016, ), competing events (Trebern-Launay, 2018, ), and multi-state data (Gillaizeau, 2018, ). For multistate data, semi-Markov model with interval censoring (Foucher, 2008, ) may be considered and we propose the possibility to consider the excess of mortality related to the disease compared to reference lifetime tables (Gillaizeau, 2017, ). For predictive studies, we propose a set of functions to estimate time-dependent receiver operating characteristic (ROC) curves with the possible consideration of right-censoring times-to-events or the presence of confounders (Le Borgne, 2018, ). Finally, several functions are available to assess time-dependent ROC curves (Combescure, 2017, ) or survival curves (Combescure, 2014, ) from aggregated data.

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Version

Install

install.packages('RISCA')

Monthly Downloads

430

Version

0.9

License

GPL (>= 2)

Maintainer

Y. Foucher

Last Published

November 18th, 2020

Functions in RISCA (0.9)

dataDIVAT2

A Second Sample From the DIVAT Data Bank.
dataDIVAT1

A First Sample From The DIVAT Data Bank.
dataDIVAT3

A Third Sample From the DIVAT Data Bank.
dataHepatology

The Data Extracted From The Meta-Analysis By Cabibbo et al. (2010).
dataCSL

CSL Liver Chirrosis Data.
dataDIVAT5

The Aggregated Kidney Graft Survival Stratified By The 1-year Serum Creatinine.
dataKi67

The Aggregated Data Published By de Azambuja et al. (2007).
dataDIVAT4

A Fourth Sample From the DIVAT Data Bank.
dataKTFS

A Sixth Sample Of The DIVAT Cohort.
auc

Area Under ROC Curve From Sensitivities And Specificities.
gc.logistic

Marginal Effect for Binary Outcome by G-computation.
ipw.survival

Adjusted Survival Curves by Using IPW.
fr.ratetable

Expected Mortality Rates of the General French Population
differentiation

Numerical Differentiation with Finite Differences.
expect.utility2

Cut-Off Estimation Of A Prognostic Marker (Two Groups Are observed).
expect.utility1

Cut-Off Estimation Of A Prognostic Marker (Only One Observed Group).
mixture.2states

Horizontal Mixture Model for Two Competing Events
ipw.log.rank

Log-Rank Test for Adjusted Survival Curves.
gc.survival

Marginal Effect for Censored Outcome by G-computation.
markov.4states.rsadd

4-state Relative Survival Markov Model with Additive Risks
gc.sl.binary

Marginal Effect for Binary Outcome by Super Learned G-computation.
plot.rocrisca

Plot Method for 'rocrisca' Objects
plot.survrisca

Plot Method for 'survrisca' Objects
lrs.multistate

Likelihood Ratio Statistic to Compare Embedded Multistate Models
markov.3states.rsadd

3-state Relative Survival Markov Model with Additive Risks
pred.mixture.2states

Cumulative Incidence Function Form Horizontal Mixture Model With Two Competing Events
rein.ratetable

Expected Mortality Of French Patients With ESKD.
lines.rocrisca

Add Lines to a ROC Plot
roc.summary

Summary ROC Curve For Aggregated Data.
roc.net

Net Time-Dependent ROC Curves With Right Censored Data.
rmst

Restricted Mean Survival Times.
semi.markov.3states.rsadd

3-State Relative Survival Semi-Markov Model With Additive Risks
semi.markov.3states.ic

3-State Semi-Markov Model With Interval-Censored Data
survival.summary

Summary Survival Curve From Aggregated Data
survival.summary.strata

Summary Survival Curve And Comparison Between Strata.
semi.markov.4states.rsadd

4-State Relative Survival Semi-Markov Model With Additive Risks
semi.markov.4states

4-State Semi-Markov Model
markov.4states

4-State Time-Inhomogeneous Markov Model
roc.binary

ROC Curves For Binary Outcomes.
roc.time

Time-Dependent ROC Curves With Right Censored Data.
usa.ratetable

Expected Mortality Rates Of The General United States Population.
markov.3states

3-State Time-Inhomogeneous Markov Model
semi.markov.3states

3-State Semi-Markov Model