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DR.FATIMA ALKHALEDY M.B.Ch.B;F.I.C.M.S/C.M

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Presentation on theme: "DR.FATIMA ALKHALEDY M.B.Ch.B;F.I.C.M.S/C.M"— Presentation transcript:

1 DR.FATIMA ALKHALEDY M.B.Ch.B;F.I.C.M.S/C.M
SCREENING DR.FATIMA ALKHALEDY M.B.Ch.B;F.I.C.M.S/C.M

2 SCREENING Outline: Definition of Screening.
Differentiation between Screening and Diagnostic test? Uses/Purpose of Screening. Types and Examples of Screening test. Criteria for successful screening program. Relation ship between sensitivity and specify. Risk of Screening.

3 How We Can Define Screening ….?

4 Definition The early detection of: Disease Precursors of Disease
Susceptibility to Disease In individuals who do not show any signs of disease.

5 means of rapidly applied tests in apparently healthy individuals.
Definition The presumptive identification of those who probably have disease from those who do not have by means of rapidly applied tests in apparently healthy individuals.

6 Definition

7 Definition Screening

8 How we can Differentiate Between Screening and Diagnostic Tests ….?

9 Differentiate Between Screening and Diagnostic Tests
Asymptomatic Suggestive clinical picture Large group Single subject Less accurate Accurate Not conclusive Conclusive Less expensive Expensive Not basic for treatment Basic to treatment

10 What are the Uses of Screening ….?

11 Uses of Screening Uses of Screening Case Detection
Perspective Screening Case / Disease Control Prospective Screening Research Natural History of Disease Health Education Public Awareness

12 Purpose of Screening Reducing disease burden.
Classifying people to likelihood of having a particular disease. Mean of identifying high risk groups who warrant further evaluation.

13 Screening Process

14 Types of Screening Test
What are the Type of Screening Tests …?

15 Types of Screening Test
Mass High Risk Multiphasic

16 Types of Screening Test Population Approach
Not Cost Effective Potential To Alter The Root Cause Of Disease Large Chance To Reduce Disease Incidence Small Benefit To The Individual Poor Subject Motivation Large Chance Of Reducing Disease Incidence

17 Types of Screening Test High Risk Strategy
Cost Effective Intervention Appropriate To Individual Fails To Deal With Root Cause Of Disease. Subject Motivated Small Chance Reducing The Diseases Incidence

18 Can You Give Some Examples For Screening Tests … ?

19 Examples for Screening Tests
Infancy Pregnancy Elderly Adults Growth Charts Weight Cancers Lipid profile Metabolic Screening CBC Depression Blood pressure Hearing Test Blood sugar Vitamin deficiencies BMI

20 Criteria For Successful Screening Test:
Criteria for Disease Criteria for Test

21 Criteria For Successful Screening Test:
Criteria for Disease: Present in population screened. High burden &of high public health concern. Screening +Intervention must improve outcome. Known natural history of the disease.

22 Criteria For Successful Screening Test:
Criteria for Test: Reliable. Valid. Simple and inexpensive. Very safe. Acceptable to subjects and providers. Cost-effective. Exit strategy.

23 Criteria For Successful Screening Test:
Exit strategy: Facilities for diagnosis and appropriate treatments should be available for positive subjects. Ethically not acceptable to offer screening without available management.

24 Criteria For Successful Screening Test:
RELIABILTY: What Is The Definition Of Reliability ? What Are The Causes Of Unreliability ?

25 Criteria For Successful Screening Test:
Definition of Reliability: Repeatability, Reducibility, Precision. Getting the same results, when the test repeated in same target individuals in the same settings.

26 Criteria For Successful Screening Test:
Causes of unreliability: Observer variation. Subject variation – Biological. Technical method error variation.

27 Criteria For Successful Screening Test:
ACCEPTABILITY: The test should not be: Painful. Unsafe. Discomforting /Embarrassing. Socially/ believes not accepted.

28 Criteria For Successful Screening Test:
VALIDITY: Ability of the test to distinguish between who has the diseases and who does not.

29 Validity Sensitivity Specificity Predictive Value Yield

30 DISEASE TOTAL TEST Diseased No disease Test +ve a b a+b Test -ve c d
a+c b+d a+b+c+d

31 Ability of the test to truly identify those who have the disease
Sensitivity DISEASE TOTAL TEST Diseased No disease Test +ve a b a+b Test -ve c d c+d a+c b+d a+b+c+d Ability of the test to truly identify those who have the disease Sensitivity= a/(a+c) True Positive

32 Sensitivity [[A 90% Sensitivity means that 90% of the diseased people screened by the test will give a “true positive” and the remaining 10% a “false negative results”]] Positive test and have the disease. Negative test and have the disease.

33 Specificity Specificity= d/(b+d) True Negative DISEASE TOTAL TEST
Diseased No disease Test +ve a b a+b Test -ve c d c+d a+c b+d a+b+c+d The ability of the test to correctly identify those who do not really have the disease Specificity= d/(b+d) True Negative

34 Specificity [[A 90% Specificity means that 90% of the non diseased people screened by the test will give a “true negative” result, and the remaining 10% a “false negative results”]] Negative test and do not have the disease. Negative test and have the disease.

35 False Positive error rate= (1-specificity)
False Negative error rate = (1-sensitivity)

36 Assume a population of 1,000 people 100 have a disease 900 do not have the disease A screening test is used to identify the 100 people with the disease Sensitivity = 80/ 100 X 100= 80% Specificity = 800/ 900 X 100 = 88%

37 Practical Example Brain Tumor EEG Results Present Absent Positive 36
54,000 Negative 4 306,000 Total 40 360,000 Sensitivity = 36/40 X 100 = 90% Specificity = 306,000/360,000 X 100 = 85%

38 DISEASE TOTAL TEST Diseased No disease Test +ve a+b Test -ve c+d a+c
a (True Positive) b (false Positive) a+b Test -ve c (false Negative) d (True Negative) c+d a+c b+d a+b+c+d

39 Predictive value DISEASE TOTAL TEST No disease Test +ve a b a+b
Positive Predictive value Proportion of Individuals with positive test really have the disease PPV=a/(a+b) Negative Predictive value Proportion of Individuals with negative test really have no disease NPV= d/(c+d) DISEASE TOTAL TEST Diseased No disease Test +ve a b a+b Test -ve c d c+d a+c b+d a+b+c+d

40 Practical Example Screening Test Results Diagnosis Total Diseased
Not Diseases Positive 40 20 60 Negative 100 9840 9940 140 9860 10,000 Sensitivity = 40/140 X100 = 28.57% Specificity = 9840/9860 X100 =99.79% Positive predictive value = 40/60X100 = 66.66% Negative predictive value = 9840/9940X100 = 98.9%

41 Effects on Predictive Value
Prevalence Increases PPV Increases; NPV Decreases Prevalence Decreases PPV Decreases; NPV Increases Specificity Increases PPV Increases Sensitivity Increases NPV Increases

42 Yield –the amount of previously unrecognized disease that is diagnosed and brought to treatment as a result of the screening program.

43 Practical Exercise

44 What is better a test with high sensitivity or with high specificity…?

45 Relation Between Sensitivity & Specificity
False Positive

46 Relation Between Sensitivity & Specificity
False Negative

47 Relation Between Sensitivity & Specificity

48 What about Risk of Screening …?

49 Risk of Screening True Positive False Positive False Negative
Labelling Effect False Positive Anxiety Fear From Future Test Monetary Expenses False Negative Delayed Diagnosis Delayed Intervention Complications

50 Thank You


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