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Absence of a gold standard in diagnostic test
accuracy research

with application in context of childhood TB
Maarten van Smeden, PhD
Post-doctoral researcher Julius Center for Health Sciences and Primary Care
WEON 2017 Pre-conference Accounting for Measurement Error in Epidemiology
Antwerp, June 7, 2017
Outline
• Diagnostic test accuracy
• The problem: absence of a gold standard
• Possible solution: latent class analysis in context of TB
Diagnostic testing
Diagnostic testing
Diagnostic testing
Diagnostic testing
• “New test better than the existing test(s)?”
• “(Where to) add new test to diagnostic pathway?”
• “Recommend new test in practice guidelines?”
Fig from: Bossuyt, BMJ, 2006
Diagnostic test accuracy studies (DTA)
• Evaluation of “new” diagnostic tests (=index test) by
comparison to a “gold standard”
• Misclassification probabilities of index test: sensitivity,
specificity, negative/positive predictive values, etc.
Classical DTA analysis
Subjects undergo the index test (T) and gold standard test (GS)
GS + GS -
T + A C
T - B D
Classical DTA analysis
Sensitivity (Se) = A/(A+B)

Specificity (Sp) = D/(D+C)
GS + GS -
T + A C
T - B D
Reporting guideline: STARD
Reporting guideline: STARD
“.. a gold standard would be an error-free reference standard”
All that glitters is not gold
• Commonly the best available reference standard: Se < 1 and
Sp < 1: not a “gold standard”. 



Because:

detection limits (e.g. culture), infeasible/not ethical to execute
in some patients (e.g. biopsy), observer errors (e.g. MRI), etc.
All that glitters is not gold
• Commonly the best available reference standard: Se < 1 and
Sp < 1: not a “gold standard”. 



-> misclassifications of the target condition by the reference
standard (= measurement error) 

When using imperfect reference standard
Assuming: reference standard Se = 1, index test Sp = Se = 0.7, conditional independence reference standard and index test

0.5 0.6 0.7 0.8 0.9 1.0
Specificity Reference Standard
E[SenstivityIndexTest]
Disease prevalence = 0.05
Disease prevalence = 0.25
Disease prevalence = 0.50
0.3
0.4
0.5
0.6
0.7
When using imperfect reference standard
• Bias, sometimes called “reference standard bias”. Not
necessarily a lower bound of Se/Sp



• Philosophical problems when index test is believed to be
more accurate than the best available reference standard
When using imperfect reference standard
Absence of a gold standard
Misclassifications by the reference standard -> 

no straightforward approaches to estimation of
misclassification probabilities of index tests (that are valid)
Tuberculosis (TB)
Paulsen, Nature, 2013
■ FIGURE 2.16a
Top causes of death worldwide in 2012.a,b Deaths from TB
among HIV-positive people are shown in grey.c
Road injury
HIV/AIDS
Diabetes mellitus
Diarrheal diseases
Tracheal, bronchus,
lung cancers
TB
Chronic obstructive
pulmonary disease
Lower respiratory
infections
Stroke
Ischaemic heart
disease
0 1 2 3 4 5 6 7
Millions
■ F
Est
20
in g
a This is the latest year for which estimates for all causes are currently
available. See WHO Global Health Observatory data repository,
available at http://apps.who.int/gho/data/node.main.GHECOD
(accessed 27 August 2015).
b For HIV/AIDS, the latest estimates of the number of deaths in 2012
a F
t
o
b
i
b D
d
HIV
WPR 9.2 8.3–10.0 0.29
Global 35.2 30.9–39.4 8.4
WHO Global TB report 2015
Data
• 749 hospitalised children with suspected pulmonary TB in
Cape Town, South Africa
• Study procedures, a number of tests for TB for each subject:
• Microscopy
• Culture
• Xpert (NAAT)
• TST (skin test)
• Radiography
Primary publication
Primary publication
48%: “possible tuberculosis”
Solution?
• The idea:
Simple latent class model
Pr(T = 1) = ⇡Se + (1 ⇡)(1 Sp)
= Pr(D = 1)Pr(T = 1|D = 1)+
Pr(D = 0)Pr(T = 1|D = 0)
• With two conditionally independent binary tests (T0 and T1)
Simple latent class model
Pr(T0 = 1, T1 = 1) = ⇡Se0Se1+
(1 ⇡)(1 Sp0)(1 Sp1)
• With J conditionally independent tests (and bit of algebra):
Simple latent class model
Pr(T1, . . . , TJ ) = ⇡
JY
j=1
Se
Tj
j (1 Sej)1 Tj
+
(1 ⇡)
JY
j=1
Sp
1 Tj
j (1 Spj)Tj
Latent class model estimation
• Maximum likelihood
• Gibbs sampling
Heuristic model for TB data
Heuristic model for TB data
• Conditional independence
between all tests is unlikely
• Conditional dependence
between: Xpert, culture,
microscopy, and TST among TB
diseased due to “bacterial load”
• Bacterial load modelled by a
random effect
Modeling dependence
Pairwise correlation residual (misfit)
Conditional independence model Random effects model
Main results
Conditional independence model Random effects model
Is latent class analysis useful?
• In TB example, I believe: yes
• More realistic than assuming reference standard (culture)
has Se = Sp = 1
• Results ‘robust’ to changing prior distributions and
conditional dependence structure
• Lack of robust alternative approaches for DTA in the
absence of a gold standard
Is latent class analysis useful?
• But:
• Latent class analysis for DTA is still rare
Latent class analysis in diagnostic research
Systematic review from 2014
• 69 theoretical papers
• 64 applied papers in human research + 47 in veterinary sciences
• applications of LCA still not common in human diagnostic research
van Smeden, AJE, 2014
Is latent class analysis useful?
• But:
• Latent class analysis for DTA is still rare
• Robustness to misspecification of the conditional
dependence structure is a concern
Is latent class analysis useful?
• But:
• Latent class analysis for DTA is still rare
• Robustness to misspecification of the conditional
dependence structure is a concern
• Identifiability requirements
Why Bayesian?
• Practical arguments:
• Model specifications in non-commercial software packages
(e.g. randomLCA vs rjags in R)
• (Weakly) informative prior distributions can solve non-
identifiability problems
• Additional calculations (e.g. positive/negative predictive
values with CrI)
Final remarks
• Misclassification in DTA studies is often both the primary topic
of study (for the index test) and the problem (when occurring
in the reference standard)
• Model based estimation of index test accuracy by latent class
analysis can be useful
• There is some evidence that robustness of the latent class
model can be improved when disease status can be verified
with certainty in a subset
• While the focus of this talk was on DTA, other studies such as
“incremental value” studies suffer from the same problems
Acknowledgements
Thanks to all co-authors in:
Supported by a grant from Canadian Institutes of Health Research (MOP
#89857)

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Absence of a gold standard in diagnostic test accuracy research

  • 1. Absence of a gold standard in diagnostic test accuracy research
 with application in context of childhood TB Maarten van Smeden, PhD Post-doctoral researcher Julius Center for Health Sciences and Primary Care WEON 2017 Pre-conference Accounting for Measurement Error in Epidemiology Antwerp, June 7, 2017
  • 2. Outline • Diagnostic test accuracy • The problem: absence of a gold standard • Possible solution: latent class analysis in context of TB
  • 6. Diagnostic testing • “New test better than the existing test(s)?” • “(Where to) add new test to diagnostic pathway?” • “Recommend new test in practice guidelines?” Fig from: Bossuyt, BMJ, 2006
  • 7. Diagnostic test accuracy studies (DTA) • Evaluation of “new” diagnostic tests (=index test) by comparison to a “gold standard” • Misclassification probabilities of index test: sensitivity, specificity, negative/positive predictive values, etc.
  • 8. Classical DTA analysis Subjects undergo the index test (T) and gold standard test (GS) GS + GS - T + A C T - B D
  • 9. Classical DTA analysis Sensitivity (Se) = A/(A+B)
 Specificity (Sp) = D/(D+C) GS + GS - T + A C T - B D
  • 11. Reporting guideline: STARD “.. a gold standard would be an error-free reference standard”
  • 12. All that glitters is not gold • Commonly the best available reference standard: Se < 1 and Sp < 1: not a “gold standard”. 
 
 Because:
 detection limits (e.g. culture), infeasible/not ethical to execute in some patients (e.g. biopsy), observer errors (e.g. MRI), etc.
  • 13. All that glitters is not gold • Commonly the best available reference standard: Se < 1 and Sp < 1: not a “gold standard”. 
 
 -> misclassifications of the target condition by the reference standard (= measurement error) 

  • 14. When using imperfect reference standard Assuming: reference standard Se = 1, index test Sp = Se = 0.7, conditional independence reference standard and index test
 0.5 0.6 0.7 0.8 0.9 1.0 Specificity Reference Standard E[SenstivityIndexTest] Disease prevalence = 0.05 Disease prevalence = 0.25 Disease prevalence = 0.50 0.3 0.4 0.5 0.6 0.7
  • 15. When using imperfect reference standard • Bias, sometimes called “reference standard bias”. Not necessarily a lower bound of Se/Sp
 
 • Philosophical problems when index test is believed to be more accurate than the best available reference standard
  • 16. When using imperfect reference standard Absence of a gold standard Misclassifications by the reference standard -> 
 no straightforward approaches to estimation of misclassification probabilities of index tests (that are valid)
  • 17.
  • 18. Tuberculosis (TB) Paulsen, Nature, 2013 ■ FIGURE 2.16a Top causes of death worldwide in 2012.a,b Deaths from TB among HIV-positive people are shown in grey.c Road injury HIV/AIDS Diabetes mellitus Diarrheal diseases Tracheal, bronchus, lung cancers TB Chronic obstructive pulmonary disease Lower respiratory infections Stroke Ischaemic heart disease 0 1 2 3 4 5 6 7 Millions ■ F Est 20 in g a This is the latest year for which estimates for all causes are currently available. See WHO Global Health Observatory data repository, available at http://apps.who.int/gho/data/node.main.GHECOD (accessed 27 August 2015). b For HIV/AIDS, the latest estimates of the number of deaths in 2012 a F t o b i b D d HIV WPR 9.2 8.3–10.0 0.29 Global 35.2 30.9–39.4 8.4 WHO Global TB report 2015
  • 19. Data • 749 hospitalised children with suspected pulmonary TB in Cape Town, South Africa • Study procedures, a number of tests for TB for each subject: • Microscopy • Culture • Xpert (NAAT) • TST (skin test) • Radiography
  • 23. • The idea: Simple latent class model Pr(T = 1) = ⇡Se + (1 ⇡)(1 Sp) = Pr(D = 1)Pr(T = 1|D = 1)+ Pr(D = 0)Pr(T = 1|D = 0)
  • 24. • With two conditionally independent binary tests (T0 and T1) Simple latent class model Pr(T0 = 1, T1 = 1) = ⇡Se0Se1+ (1 ⇡)(1 Sp0)(1 Sp1)
  • 25. • With J conditionally independent tests (and bit of algebra): Simple latent class model Pr(T1, . . . , TJ ) = ⇡ JY j=1 Se Tj j (1 Sej)1 Tj + (1 ⇡) JY j=1 Sp 1 Tj j (1 Spj)Tj
  • 26. Latent class model estimation • Maximum likelihood • Gibbs sampling
  • 28. Heuristic model for TB data • Conditional independence between all tests is unlikely • Conditional dependence between: Xpert, culture, microscopy, and TST among TB diseased due to “bacterial load” • Bacterial load modelled by a random effect
  • 30. Pairwise correlation residual (misfit) Conditional independence model Random effects model
  • 31. Main results Conditional independence model Random effects model
  • 32. Is latent class analysis useful? • In TB example, I believe: yes • More realistic than assuming reference standard (culture) has Se = Sp = 1 • Results ‘robust’ to changing prior distributions and conditional dependence structure • Lack of robust alternative approaches for DTA in the absence of a gold standard
  • 33. Is latent class analysis useful? • But: • Latent class analysis for DTA is still rare
  • 34. Latent class analysis in diagnostic research Systematic review from 2014 • 69 theoretical papers • 64 applied papers in human research + 47 in veterinary sciences • applications of LCA still not common in human diagnostic research van Smeden, AJE, 2014
  • 35. Is latent class analysis useful? • But: • Latent class analysis for DTA is still rare • Robustness to misspecification of the conditional dependence structure is a concern
  • 36.
  • 37. Is latent class analysis useful? • But: • Latent class analysis for DTA is still rare • Robustness to misspecification of the conditional dependence structure is a concern • Identifiability requirements
  • 38. Why Bayesian? • Practical arguments: • Model specifications in non-commercial software packages (e.g. randomLCA vs rjags in R) • (Weakly) informative prior distributions can solve non- identifiability problems • Additional calculations (e.g. positive/negative predictive values with CrI)
  • 39. Final remarks • Misclassification in DTA studies is often both the primary topic of study (for the index test) and the problem (when occurring in the reference standard) • Model based estimation of index test accuracy by latent class analysis can be useful • There is some evidence that robustness of the latent class model can be improved when disease status can be verified with certainty in a subset • While the focus of this talk was on DTA, other studies such as “incremental value” studies suffer from the same problems
  • 40. Acknowledgements Thanks to all co-authors in: Supported by a grant from Canadian Institutes of Health Research (MOP #89857)