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The math of decision in Radiology - MIR

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THE MATH OF DECISION IN RADIOLOGY<br />

Pr<strong>of</strong>. Utku Şenol, MD, PhD <strong>of</strong> medical <strong>in</strong>formatics<br />

Akdeniz University, School <strong>of</strong> Medic<strong>in</strong>e,,<br />

Department <strong>of</strong> <strong>Radiology</strong>, Division <strong>of</strong> Neuroradiology<br />

ANTALYA, TURKEY<br />

utkusenol@gmail.com


Contents<br />

• Decision mak<strong>in</strong>g <strong>in</strong> radiology<br />

• Test characteristics<br />

• Likelihood ratios<br />

• Predictive values<br />

• Calculat<strong>in</strong>g post-test probability<br />

• Bayesian approach<br />

• Probability revision<br />

• Nomograms, Probability graphs


Question 1<br />

A lymphadenopathy <strong>in</strong> mediast<strong>in</strong>um was reported<br />

Sensitivity 90%<br />

Specificity 80%<br />

What is the actual probability <strong>of</strong> the lymphadenopathy?<br />

A) 2-3%<br />

B) 20-25%<br />

C) 50-60%<br />

D) 80-90%<br />

E) Can not be calculated


Question 2<br />

• A Breast cancer screen<strong>in</strong>g program<br />

• Prevalence <strong>of</strong> the Breast Ca is 0.1%<br />

• A positive mammogram was reported.<br />

sensitivity 95%<br />

specificity 95%<br />

What is the actual probability <strong>of</strong> the patient hav<strong>in</strong>g a cancer?<br />

A) 2%<br />

B) 10-20%<br />

C) 50-60%<br />

D) 90-95%<br />

E) Can not be calculated


When Do Radiologists Make Decision ?<br />

• While<br />

– Diagnos<strong>in</strong>g<br />

– Exclud<strong>in</strong>g disease<br />

– Giv<strong>in</strong>g probability for a certa<strong>in</strong> disease<br />

– Choos<strong>in</strong>g the proper exam<br />

– Plann<strong>in</strong>g a survey program<br />

– …


How Do Radiologists Make Decision?<br />

Do <strong>The</strong>y Use Probability or Math?


• Virtually always<br />

• Often<br />

• Not <strong>of</strong>ten<br />

• Virtually never<br />

AJR 174:2000 letter from Kliewer


AJR 174:2000 letter from Kliewer


Sir William Osler<br />

1849 -1919<br />

“Medic<strong>in</strong>e is a science <strong>of</strong><br />

uncerta<strong>in</strong>ty and an art<br />

<strong>of</strong> probability”


Do not treat<br />

Further tests<br />

or follow-up<br />

Treat<br />

0%<br />

Very unlikely<br />

to have disease<br />

25%<br />

Probably doesn’t<br />

have disease<br />

50%<br />

Don’t know<br />

75%<br />

Probably does<br />

have<br />

100 %<br />

Very likely<br />

to have disease


Probability <strong>in</strong> Orders<br />

• Thunderclap headache<br />

• Lower quadrant pa<strong>in</strong>, leukocytosis,<br />

womit<strong>in</strong>g, ribaund<br />

• Lung Ca, recent vertigo, Rull out bra<strong>in</strong><br />

metastasis<br />

• 35 year age woman, pa<strong>in</strong> and visual loss <strong>in</strong><br />

right eye and hemiparesis


Probability <strong>in</strong> Reports<br />

• Hemorrhagic density with sulcal pattern<br />

• Well circumscribed lytic lesion with a<br />

sclerotic rim <strong>in</strong> distal femur<br />

• An ill def<strong>in</strong>ed solitary nodule <strong>in</strong> right apex


Subjective probability <strong>of</strong> estimates are not statistical<br />

and are highly prone to error!!<br />

Those errors may be as;<br />

• Pesudodiagnosticity<br />

• Premature diagnosis<br />

• Errors Caused by Heuristics<br />

– Availability<br />

– Representativeness<br />

– Anchor<strong>in</strong>g and adjustment<br />

– Value-<strong>in</strong>duced bias<br />

– Affect heuristics<br />

– …..


How do we use tests to def<strong>in</strong>e<br />

probability?


Diagnostic tests are not perfect.<br />

False positive and false negative results cannot be elim<strong>in</strong>ated…<br />

Sorry, you can not have baby<br />

But, We had<br />

Tests say<br />

you can’t.<br />

Give<br />

them to<br />

me…


Sensitivity and Specificity<br />

Sensitivity (TPR) = a/a+c<br />

Specificity (TNR) = d/b+d<br />

Test +<br />

Disease<br />

+<br />

a<br />

Disease<br />

-<br />

b<br />

Total<br />

a+b<br />

TP<br />

FP<br />

Test -<br />

c<br />

d<br />

c+d<br />

FN<br />

TN<br />

Total<br />

a+c<br />

b+d<br />

a+b+c+d<br />

TP+FN<br />

TN+FP


Which Test is the Strongest?<br />

Test Sensitivity Specificity<br />

A 80% 75%<br />

B 60% 85%<br />

C 70% 80%<br />

D 78% 78%


Likelihood Ratios<br />

A unique value generated by us<strong>in</strong>g both<br />

specificity and sensitivity<br />

A perfect <strong>in</strong>dicator for def<strong>in</strong><strong>in</strong>g strength <strong>of</strong> tests


Positive Likelihood Ratio<br />

LR+ = sensitivity/(1-specificity)<br />

Sensitivity = 90%<br />

Specificity = 95%<br />

LR+ = .90/.05 = 18 =<br />

<strong>The</strong> probability <strong>of</strong> a positive result <strong>in</strong> a patient with disease<br />

<strong>The</strong> probability <strong>of</strong> a positive result <strong>in</strong> a patient without disease


Positive Likelihood Ratio<br />

• 10 or<br />

strong<br />

• 5-10<br />

medium<br />

• 2-5<br />

weak<br />

• 2 or<br />

too weak


Test Sensitivity Specificity<br />

A 80% 75%<br />

B %65 %85<br />

C %70 %80<br />

D %78 %78


Test Sensitivity Specificity LR+<br />

A 80% 75%<br />

3.2<br />

B %65 %85<br />

4.3<br />

C %70 %80<br />

3.5<br />

D %78 %78<br />

3.54


Test Sensitivity Specificity LR+ LR-<br />

A 80% 75%<br />

3.2 0.26<br />

B %65 %85<br />

4.3 0.41<br />

C %70 %80<br />

3.5 0.37<br />

D %78 %78<br />

3.54 0.28


Negative Likelihood Ratio<br />

LR- = (1- sensitivity) / specificity<br />

Sensitivity = %90<br />

Specificity = %95<br />

LR- = 0.10 / 0.95 = 0.105


Negative Likelihood Ratio<br />

• 0.1 ve<br />

strong<br />

• 0.1 - 0.2<br />

medium<br />

• 0.2 - 0.5<br />

weak<br />

• 0.5 ve<br />

too weak


Likelihood Ratios<br />

Strong<br />

medium<br />

medium<br />

Strong


LR helps to predict the post-test<br />

probability


What about Predictive Values?<br />

Positive predictive value<br />

• Probability <strong>of</strong><br />

hav<strong>in</strong>g disease<br />

when the test is<br />

positive<br />

Negative predictive value<br />

• Probability <strong>of</strong> not<br />

hav<strong>in</strong>g disease<br />

when the test is<br />

negative


Disease<br />

Disease<br />

Total<br />

+<br />

-<br />

Test +<br />

a<br />

b<br />

a+b<br />

TP<br />

FP<br />

TP+FP<br />

Test -<br />

c<br />

d<br />

c+d<br />

FN<br />

TN<br />

FN+TN<br />

Total<br />

a+c<br />

b+d<br />

a+b+c+d<br />

TP+FN<br />

TN+FP<br />

Positive Predictive Value: a/a+b<br />

Negative Predictive Value: d/c+d<br />

Sensitivity:<br />

Specificity:<br />

a/a+c<br />

d/b+d


Test Characteristics<br />

(sensitivity, specificity)<br />

Predictive values<br />

• May be<br />

generalized to<br />

different<br />

populations<br />

• Can not be<br />

generalized to<br />

other groups<br />

Unique for a<br />

specific study<br />

group


D+ D - Total<br />

T + 63 18 81<br />

T - 37 82 119<br />

Sensitivity: 63%<br />

Specificity: 82%<br />

PPV: 77%<br />

Toplam 100 100 200<br />

D + D - Total<br />

T + 63 162 225<br />

T - 37 738 775<br />

Sensitivity: 63%<br />

Specificity: 82%<br />

PPV: 28%<br />

Total 100 900 1000


How do we calculate the<br />

probability after the test?


Probability revision<br />

<strong>The</strong> probability after a positive result<br />

Pre test probability<br />

<strong>The</strong> probability after a negative result


Post-test probability can be<br />

calculated only if there is a pre-test<br />

probability


Post-test probability calculation<br />

methods<br />

• Bayes formulation<br />

• Decision tree<br />

• Cont<strong>in</strong>gency table revision<br />

• Nomogram<br />

• Conditional probability graphs<br />

Post-test Odds = Pre-test Odds x LR


Post-test Odds = Pre-test Odds x LR<br />

Post-test probability<br />

Pre-test probability<br />

1- post-test probability = 1- pre-test probability<br />

x LR


Nomogram<br />

Pre-t Prob<br />

LR<br />

Post-t Prob.


Post-test probability<br />

Probability graph:<br />

1<br />

.9<br />

Test +<br />

.8<br />

.7<br />

.6<br />

.5<br />

.4<br />

.3<br />

.2<br />

.1<br />

Test -<br />

0 .1 .2 .3 .4<br />

Pre-test probability<br />

.5 .6 .7 .8 .9 1


Question 1<br />

LR+=4.5<br />

Pre-test probability= ???<br />

A CT report <strong>in</strong>dicates a lymphadenopathy <strong>in</strong> mediast<strong>in</strong>um.<br />

Sensitivity 90%<br />

Specificity 80%<br />

What is really the probability <strong>of</strong> the lymphadenopathy?<br />

A) 2-3%<br />

B) 20-25%<br />

C) 50-60%<br />

D) 80-90%<br />

E) Can not be calculated


Question 2<br />

LR+=19<br />

Pre-test probability=1/1000<br />

• Mammography screen<strong>in</strong>g program<br />

• Prevalence <strong>of</strong> the Breast Ca is 0.1%<br />

• A positive mammogram was reported.<br />

sensitivity 95%<br />

specificity 95%<br />

What is really the probability <strong>of</strong> the patient hav<strong>in</strong>g a cancer?<br />

A) 2%<br />

B) 10-20%<br />

C) 50-60%<br />

D) 90-95%<br />

E) Can not be calculated<br />

%1.93


Summary - I<br />

• Radiologists frequently deal with probabilities<br />

while mak<strong>in</strong>g <strong>decision</strong><br />

• To be familiar with the <strong>math</strong> <strong>of</strong> the <strong>decision</strong><br />

mak<strong>in</strong>g process is helpful


Summary - II<br />

• Likelihood ratios are used to def<strong>in</strong>e;<br />

– strength <strong>of</strong> test<br />

– post test probability


Summary - III<br />

• Likelihood ratios are calculated by sensitivity<br />

and specificity<br />

LR + = sensitivity/(1-specificity)<br />

LR - = (1-sensitivity)/specificity


Summary - IV<br />

• Post test probability can not be calculated without<br />

pre-test probability.<br />

• So, cl<strong>in</strong>ical <strong>in</strong>formation is crucial !!


Conclusion-IV<br />

Post test probability can be calculated based on<br />

Bayes pr<strong>in</strong>ciples:<br />

Post-test Odds = Pre-test Odds X LR

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