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## Presentations

(39)## Likes

(2)### Dichotomania and other challenges for the collaborating biostatistician

Laure Wynants
•
3 years ago

### STRATOS ISCB 2019: Ruth Keogh

RuthKeogh2
•
4 years ago

Tags

statistics
machine learning
prediction models
logistic regression
clinical prediction
artificial intelligence
covid-19
calibration
epidemiology
statistical learning
discrimination
prediction
ai
bias
causal inference
sample size
prediction error
shrinkage
measurement error
living review
risk of bias
diagnosis
systematic review
medicine
hype
finite samples
internal validation
external validation
validation
implementation
impact
prognosis
myths
medical doctors
confounding
overfitting
probability
ridge
lasso
bayesian statistics
latent class analysis
gold standard
science
lab
modeling
pro's and con's
ml
methodology
pitfalls
research design
analyses
fallacies
paradoxes
guidelines
predictive performance
estimands
prognosis research
forecasting
explanation
big data
reporting
simulation
missing data
rules of thumb
corona
pandemic
cardiology
unsupervised learning
deep learning
threading
science communication
twitter
research questions
research
firth's correction
squared error
estimators
workshop
stein's paradox
tuberculosis
sensitivity and specificity
asa statement
p-value
inferences

See more