30
Illustration of the evaluation of risk prediction models in randomized trials Examples from women’s health studies Parvin Tajik, MD PhD candidate Department of Clinical Epidemiology & Biostatistics Department of Obstetrics & Gynecology Academic Medical Center, University of Amsterdam, the Netherlands FHCRC 2014 Risk Prediction Symposium June 11, 2014

Parvin Tajik, MD PhD candidate Department of Clinical Epidemiology & Biostatistics

Embed Size (px)

DESCRIPTION

FHCRC 2014 Risk Prediction Symposium June 11, 2014. Illustration of the evaluation of risk prediction models in randomized trials Examples from women’s health studies. Parvin Tajik, MD PhD candidate Department of Clinical Epidemiology & Biostatistics Department of Obstetrics & Gynecology - PowerPoint PPT Presentation

Citation preview

Page 1: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Illustration of the evaluation of risk prediction models in randomized trialsExamples from women’s health studies

Parvin Tajik, MDPhD candidateDepartment of Clinical Epidemiology & BiostatisticsDepartment of Obstetrics & GynecologyAcademic Medical Center, University of Amsterdam, the Netherlands

FHCRC 2014 Risk Prediction SymposiumJune 11, 2014

Page 2: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Clinical Problem I

Pre-eclampsia

Page 3: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

fullPIERS model

Lancet, 2011

Page 4: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Development Method

• Patients: • 2000 women admitted in hospital for pre-eclapmsia

(260 event)

• Outcome: • Maternal mortality or other serious complications of

pre-eclampsia

• Logistic regression model with stepwise backward elimination

Page 5: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Final model

Logit P(D) = 2.68 – (0.054 × gestational age at eligibility) + (1.23 × chest pain or dyspnoea) – (0.027 × creatinine) + (0.21 × platelets) + (0.00004 × platelets2) + (0.01 × AST) – (0.000003 × AST2) + (0.00025 × creatinine × platelet) – (0.00007 × platelets × AST) – (0.0026 × platelets × SpO2)

Page 6: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Performance of full-PIERS model

Reported good risk discrimination and calibration

Page 7: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Online calculator

Page 8: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

HYPITAT trial (2005-2008)

• PP Women at 36-41 wks of pregnancy with mild pre-eclampsia (n=750)

• I I Early Induction of labor (LI)

• C C Expectant monitoring (EM)

• O O Composite measure of adverse maternal outcomes

Page 9: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

HYPTAT Results

(relative risk 0.71, 95% CI 0.59–0.86, p<0·0001)

ManagementManagement Adverse maternal Adverse maternal outcomesoutcomes

TotalTotal

Labor induction 117 (31%) 377Expectant monitoring 166 (44 %) 379

Page 10: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Modeling

Logit P(D=1|T,Y) = β0 + β1T + β2Y + β3TY

•D = 1 Adverse maternal outcome•Y = fullPIERS score•T = Treatment

• 1 Labor induction • 0 Expectant monitoring

Page 11: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

FullPIERS for guiding labor induction

P for interaction: 0.93

fullPIERS score

Page 12: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Clinical Problem II

Preterm birth

Page 13: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Cervical pessary• Medical device inserted to vagina• to provide structural support to cervix

Page 14: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

ProTWIN trial (2009-2012)

• P Women with multiple pregnancy (twin or triplet) between 12 & 20 weeks pregnancy

• I Cervical Pessary (n = 403)• C Control (n = 410)

• O Primary: Composite Adverse perinatal outcome

Page 15: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

ProTWIN Results

(relative risk 0.98, 95% CI 0.69–1.39)

ManagementManagement Composite adverse Composite adverse perinatal outcomeperinatal outcome

TotalTotal

Pessary 53 (13%) 401No pessary 55 (14 %) 407

Page 16: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Pre-specified subgroup analysis

Cervical length (<38 mm vs >= 38 mm)

Page 17: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Pre-specified subgroup analysis

Trial Conclusion: Clinicians should consider a cervical pessary in women with a multiple pregnancy and a short

cervical length.

Cervical length Pessary group

Control group

RR (95%CI)

CxL < 38 mm 12% 29% 0.42 (0.19-0.91)CxL >= 38 mm 13% 10% 1.26 (0.74-2.15)

(P for interaction 0.01)

Page 18: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Other Markers

1. Obstetric history (parity) • Nulliparous• Parous with no previous preterm birth• Parous with at least one previous preterm birth

2. Chorionicity• Monochorionic• Dichorionic

3. Number of fetuses• Twin• Triplet

Page 19: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

One marker at a time analysis

Other Potential Treatment Selection Factors

% Poor Outcome Odds Ratio (95% CI)

Odds Ratio (95% CI)

Int. P-value

Pessary Control

Cervical length

< 38 mm 11.54 29.09 0.32 (0.13-0.79) 0.010

≥ 38mm 12.85 10.13 1.31 (0.75-2.30)

Chorionicity

Monochorionic 13.79 26.00 0.46 (0.21-0.97) 0.015

Dichorionic 13.06 9.51 1.43 (0.86-2.37) Obstetric history

Nulliparous 13.12 18.30 0.67 (0.40-1.13) 0.212

Parous with no previous preterm birth 9.93 8.28 1.22 (0.56-2.66)

Parous with at least one previous preterm birth

31.03 3.85 11.25 (1.31-96.4) 0.012

Number of foetuses

Twin 12.50 13.32 0.98 (0.61-1.41) 0.301

Triplet 44.44 22.22 2.8 (0.36-21.73)

Page 20: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Modeling

Logit P(D=1|T,Y) = β0 + β1T + Σ βiYi + Σ βjTYj

•D = 1 composite poor perinatal outcome•Y = Markers•T = Treatment

• 1 pessary• 0 control

- Internal validation by bootstrapping

Page 21: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Multi-marker modelPredictor OR (95% CI) Beta*

P-value

Intercept

-2.08

<0.001 Main terms Pessary 1.13 (0.57-2.24) 0.12 0.426

Cervical length <38 mm 2.20 (1.09-4.46) 0.79 <0.001

Monochorionic 2.44 (1.33-4.47) 0.89 <0.001

Parous with no previous preterm birth 0.53 (0.27-1.06) -0.63 0.031

Parous with at least one previous preterm birth 0.34 (0.04- 2.63) -1.09 0.165

Triplet 1.49 (0.28- 8.05) 0.40 0.010

Interaction terms

Pessary × Cervical length <38 mm 0.52 (0.19-1.42) -0.65 0.058

Pessary × Monochorionic 0.41 (0.16-1.05) -0.89 0.009

Pessary × Parous with no previous preterm birth 1.52 (0.58-3.98) 0.42 0.312

Pessary × Parous with at least one previous preterm birth 7.24 (0.78-67.65) 1.98 0.020

* Shrunken with an average shrinkage factor of 0.76c-stat : 0,71 (95%CI: 0,66-0,77); optimism-corrected c-stat: 0,69 (95%CI: 0,63-0,74)

Page 22: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

How can the model be used in practice?

Page 23: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Predicted benefit from pessary

050

100

150

200

250

Stu

dy

Pa

rtic

ipa

nts

, %

* ** *** ** ** ** **** * ** ** **** *** **** ***** * *** ** *** **** * ** *** ** **** * ***** ***** ** ** ** ** ***** ****

-0.2 -0.1 0.0 0.1 0.2

Predicted Difference (Control-Pessary) in Poor Perinatal Outcome

Favors Control Favors Pessary

Page 24: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Calibration of the predicted benefit

-30 -20 -10 0 10 20 30 40

-30

-20

-10

01

02

03

04

0

Expected Treatment Effect

Ob

serv

ed

Tre

atm

en

t Effe

ct

Page 25: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Model performance

-30 -20 -10 0 10 20 30 40

-30

-20

-10

01

02

03

04

0

Expected Treatment Effect

Ob

serv

ed

Tre

atm

en

t Effe

ct

Page 26: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Conclusion

• Common assumption for application of risk prediction models for treatment selection:“Being at higher risk of outcome implies a

larger benefit from treatment” • Not necessarily true

• Developing models using trial data and modeling the interaction between markers and treatment might be a more optimal strategy

Page 27: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Open Research Questions

• Optimal modeling strategy?

• Optimal algorithm for variable selection?

• Optimal method for optimism correction?

Page 28: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Thanks!Any Questions?

Page 29: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Multimarker vs. CxL only

Multimarker + Multimarker -

Short cervix 174 9

Long cervix 120 505

Page 30: Parvin Tajik, MD PhD  candidate Department of  Clinical Epidemiology & Biostatistics

Two examples