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Erschienen in: BMC Psychiatry 1/2020

Open Access 01.12.2020 | Research article

Norms for Zung’s Self-rating Anxiety Scale

verfasst von: Debra A. Dunstan, Ned Scott

Erschienen in: BMC Psychiatry | Ausgabe 1/2020

Abstract

Background

Zung’s Self-rating Anxiety Scale (SAS) is a norm-referenced scale which enjoys widespread use a screener for anxiety disorders. However, recent research (Dunstan DA and Scott N, Depress Res Treat 2018:9250972, 2018) has questioned whether the existing cut-off for identifying the presence of a disorder might be lower than ideal.

Method

The current study explored this issue by examining sensitivity and specificity figures against diagnoses made on the basis of the Patient Health Questionnaire (PHQ) in clinical and community samples. The community sample consisted of 210 participants recruited to be representative of the Australian adult population. The clinical sample consisted of a further 141 adults receiving treatment from a mental health professional for some form of anxiety disorder.

Results

Mathematical formulas, including Youden’s Index and the Receiver Operating Characteristics Curve, applied to positive PHQ diagnoses (presence of a disorder) from the clinical sample and negative PHQ diagnoses (absence of a disorder) from the community sample suggested that the ideal cut-off point lies between the current and original points recommended by Zung.

Conclusions

Consideration of prevalence rates and of the potential costs of false negative and false positive diagnoses, suggests that, while the current cut-off of 36 might be appropriate in the context of clinical screening, the original raw score cut-off of 40 would be most appropriate when the SAS is used in research.
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Abkürzungen
DASS
Depression Anxiety Stress Scale
DSM
Diagnostic and Statistical Manual of Mental Disorders
PHQ
Patient Health Questionnaire
ROC
Receiver Operating Characteristics
SAS
Zung Self Rating Anxiety Scale

Background

Along with depression, anxiety disorders are the most prevalent of mental health conditions [1, 2]. Formal diagnoses based on the Diagnostic and Statistical Manual of Mental Disorders (DSM [3];) require a clinical interview, but as this is a time-consuming and expensive process, clinicians and researchers employ a variety of psychometric tools to screen for these conditions. These screeners include both criterion-referenced measures, such as the Patient Health Questionnaire (PHQ [4];), and norm-referenced measures, such as the Depression Anxiety Stress Scale (DASS [5];), the Beck Anxiety Inventory (BAI [6];), and the State-Trait Anxiety Inventory (STAI [7];), which allow comparison of the individual’s results with a norm-refernced group of sufferers. In the latter case, scores that equal or exceed a specified cut-off point are considered to indicate the likely presence of the disorder concerned. While it is beyond the scope of this paper to critique the psychometric properties of such norm-referenced screeners or compare their advantages, disadvantages and limitations, users should be mindful of such features [813].
The paper focuses on Zung’s Self-rating Anxiety Scale (SAS [14];) a norm-referenced screener that, in conjunction with its sister scale, the Self-rating Depression Scale (SDS, [15]) has been shown to discriminate anxiety from mood disorders [16]. Although developed in 1971, the SAS continues to be extensively used in research, particularly in medical disciplines [17]. The SAS has good psychometric credentials [11, 14] and has been found to perform comparatively to contempory measures such as the anxiety subscale of the DASS in predicting anxiety disorder classifications based on the PHQ [16]. However, two problems have emerged in the literature regarding the Zung SAS cut-off score to indicate the presence of a disorder. These are: the use of an index score [14] and a change in Zung’s recommended cut-off point [14, 18, 19].
Zung developed a method of scoring both the SDS [15] and SAS [14] that involved conversion of a total scale raw score (with a potentail range of 20 to 80) to a index score with a potential range of 25 to 100. The index score is ‘derived by dividing the sum of the values (raw scores) obtained on the 20 items by the maximum possible score of 80, converted to a decimal and multiplied by 100’ [14] (p. 376). Within current research, Dunstan and Scott [17] have identified confusion between raw scores and the index scores with many reseachers failing to perform the raw-score-to-index-score conversions recommended by Zung. This has led to misclassification of participants in up to 45% of studies in which the SAS has been employed [17].
In 1980, Zung [18] reduced the cut-off point for clinical significance from that set in his seminal paper on the development of the SAS [14]. Recent research has suggested that the 1980-recommended cut-off point (a raw score of 36 or an index score of 45 [18];) is lower than ideal, and that the original 1971 cut-off (a raw score of 40; an index score of 50 [14];) produces better sensitivity and specificity figures [16]. Similar problems; that is, confusion between index and raw scores and suggestions that the currently recommended cut-off score may be too low, have also been identified for the SDS [16, 17, 20]. This current study explores this issue for the SAS. Specifically, is the raw score1 cut-off of 36 most recently recommended by Zung appropriate or should it too be increased?
To avoid furthering the confusion between raw and index scores, from this point on, only raw scores will be used in this paper. This includes scores taken from Zung’s research which have been converted back to their raw score form.

Methods for setting cut-off scores

Zung [18] states that his recommended cut-off for the SAS was chosen with reference to the means and standard deviation of the clinical and normal adult population samples used. The precise criteria used here are not clear: the mean SAS score for the clinical population was 47.0 (S.D. = 9.5) and for the normal adult population 33.4 (S.D. = 7.8).
Aside from examining means and standard deviations of populations with and without the condition in question, other commonly used methods to determine clinical cut-off points include the Youden Index and the Receiver Operating Characteristics (ROC) curve [21]. The Youden Index method is designed to give equal weight to sensitivity and specificity: that is false positives and false negatives are treated as equally undesirable [22, 23]. Youden’s Index for a cut-off point equals the sum of the sensitivity (Se) and specificity (Sp: expressed as probabilities) minus one (Se + Sp – 1). The cut-off is set at the score which yields the highest Youden Index value. The ROC curve method graphs Se (on the y-axis) versus 1 – Sp (on the x-axis). The point (0,1) on the ROC curve represents a test which perfectly distinguishes between positive and negative diagnoses: that is specificity and sensitivity are both 100%. The closer the curve approaches this point, the better the test. Hence, another method is to set the cut-off as the value for which the ROC curve is closest to that point [24]. This method places more emphasis on achieving a balance between sensitivity and specificity values. However, a further alternative is to set the cut-off to correspond to the point where the curve intersects the line Se = Sp: thereby obtaining the best possible balance between sensitivity and specificity [21]. ROC curves also provide a measure of a test’s overall discriminatory ability: the greater the area under the curve, the stronger the test [24]. While the use of ROC curves has its origins in medical disease diagnosis, ROC curves have been successfully applied to explore optimal cut-off scores for psychological screeners (e.g., [20, 25, 26]).

The current study

The study conducted by Dunstan et al. [16] employed a sample primarily composed of undergraduate psychology students at a regional Australian university, complimented by a small clinical sample. As such, its findings were not considered robust or representative enough to determine whether a change in the SAS cut-off score was appropriate. The current study sought to further explore the appropriate cut-off for the SAS by exploring sensitivity and specificity, as determined by PHQ classifications, amongst representative community and clinical samples of the Australian population.

Method

Participants

Two separate samples of participants, all aged 18 and over, were recruited from Qualtrics survey panels. The community sample was recruited to be representative of the broad Australian adult community and consisted of 210 participants (108 men and 102 women) with a mean age of 45.59 years (SD = 17.43, range = 18–82). Participants who were receiving treatment from a mental health professional for either a depressive or anxiety disorder were expressly excluded from this sample. The clinical sample consisted of a further 141 adults (49 men and 91 women with a mean age of 42.55 [SD = 15.95, range = 18–79]) receiving treatment from a mental health professional for some form of anxiety disorder.
Further details of the demographic features of the participants are shown in Table 1. Individuals with a diagnosis of mental illness involving psychotic features, or who had experienced a major loss in the last six months, were excluded from the study as were those who could not read/understand English.
Table 1
Sample Demographics
 
Clinical Sample (n = 141)
Community Sample (n = 210)
Place of birth
%
%
Australia
82
65
Europe
11
13
New Zealand
1
6
Middle East
3
1
Rest of Asia
1
10
Rest of Africa
1
2
USA/Canada
1
*
Not stated
1
2
Highest education level
 Year 10 or less
13
19
 Year 12
16
17
 TAFE/Trade qualification
42
37
 Undergraduate degree
17
21
 Postgraduate degree
12
6
Employment Status
 Full-time
21
23
 Part-time
23
18
 Casual
7
10
 Unemployed
32
27
 Retired
17
23
Current Occupation
 Manager
9
9
 Professional
11
9
 Technician/Tradesman
3
4
 Clerical/Admin
8
8
 Machinery/Transport
1
 Labourer
3
5
 Community/Personal Serv
4
2
 Sales
5
7
 Other
9
6
 None
49
50
Household Income
 Less than 1 k
51
41
 1 – 3 k
37
34
 3 k plus
5
11
 Not stated
7
15

Procedure

The survey was distributed to Qualtrics panel members who first answered a series of questions to confirm their eligibility. Those eligible were then asked to complete a short 10- min online survey consisting of demographic and biological information plus the two scales detailed below. Participants were free to opt out of the study at any time.

Measures

Zung self-rating anxiety scale (SAS)

The Zung SAS is a self-report scale whose 20 items cover a variety of anxiety symptoms, both psychological (e.g, “I feel afraid for no reason at all” and “I feel like I’m falling apart and going to pieces”) and somatic (e.g., “My arms and legs shake and tremble” and “I feel my heart beating fast.”) in nature. Responses are given on a 4-point scale which range from 1 (none, or a little of the time) to 4 (most, or all of the time). Participants are instructed to base their answers on their experiences over the last week. Items include both negative and positive (e.g., “I fall asleep easily and get a good night’s sleep.”) experiences, with the latter being reverse scored. Raw scale scores for the SAS range from 20 to 80. The SAS has satisfactory psychometric properties. These include: internal consistency (Cronbach’s alpha = .82) [11]; concurrent validity (r = .30 with the Taylor Manifest Anxiety Scale) [14]; and, the capacity to discriminate between clinical and non-clinical samples and anxiety and other psychiatric disorders [14]. Cronbach’s alpha for the SAS in this study was .83.

Patient health questionnaire (PHQ)

Participants completed the two-page version of the PHQ, which consists of 9 self-report items covering the DSM-5 diagnostic criteria for Major Depressive Disorder and Other Depressive Disorder and 22 items relating to the criteria for Panic Disorder and Other Anxiety Disorder [3].
To qualify for a Panic Disorder diagnosis, an individual has to first identify as having “had an anxiety attack, suddenly feeling fear or panic” within the last 4 weeks. Additionally, they must also endorse that such attacks have happened before, that some of them “come out of the blue” and that these attacks either bother them a lot or that they are worried by the prospect of having more. Finally, they have to endorse four out of eleven somatic symptoms as having been present during their last attack [3].
To qualify for a diagnosis of other anxiety disorders, an individual has first of all to endorse “feeling nervous, anxious, on edge, or worrying a lot about different things” on more than half the days over the last four weeks. Additionally, they also have to endorse three of six other anxiety related symptoms (e.g., “trouble concentrating on things such as reading a book or watching TV”) as occurring with at least similar frequency.
Spitzer et al. [4] report that the PHQ has 63% sensitivity and 97% specificity when compared with diagnoses made by mental health professionals. The implications of these figures for the current study are discussed in the Data Analysis section below.

Data analysis

The primary objective in analysis was to examine the impact on sensitivity and specificity of setting the clinical cut-off score for an anxiety diagnosis at different points.
As a precursor to this analysis, however, it was important to reflect on the accuracy of the PHQ diagnoses on which they were based. First, while all members of the clinical sample reported that they were currently receiving treatment for anxiety, this did not necessitate that all would currently satisfy the criteria for an anxiety diagnosis. In an unspecified number of cases, one would expect symptom reductions due to treatment (which may have been either pharmaceutical or psychotherapeutic in nature) to be such that, while treatment might still be continuing, those individuals would no longer meet diagnostic criteria. Additionally, there is the question as to the number of false positives and false negatives that are likely to have occurred in the PHQ diagnoses. Using the sensitivity (63%) and specificity (97%) figures reported by Spitzer et al. [20], it is possible to estimate the approximate number of false positives/negatives that are likely to have occurred in each subsample (Table 2).
Table 2
Approximate numbers of false positives and negatives anticipated in PHQ diagnoses by sample
PHD Diagnosis / Original Sample
True Positives
False Positives
Positive Clinical (n = 63)
61–62
1–2
Positive Community (n = 32)
27
5
 
True Negatives
False Negatives
Negative Clinical (n = 78)
42–43
35–36
Negative Community (n = 178)
161
17
On the basis of these estimates, false PHQ diagnoses can be expected to offer little concern amongst the Positive Clinical subsample. Similarly, false negatives in the Negative Community sample represent no more than 10% of the sample. Amongst the Negative Clinical sample, however, around 45% of the sample are likely to be false negatives, severely compromising the ability of this sample to serve as a test of the SAS’s reliability.
Given,the unreliability of PHQ diagnoses in this subsample, the approach taken in setting the cut-point for the SAS was to combine the sensitivity figures achieved in the Positive Clinical sample with the specificity figures achieved in the Negative Community sample. (This approach, of combining a positive clinical sample with a negative community sample, mirrors that used by Zung [18] when setting the currently recommended cut-off point). This approach is entirely compatible with the Youden Index and ROC curve methods described above, which solely require sensitivity and specificity figures as input. Other methods which involve comparing the overall numbers of correct and incorrect assignations (i.e. true positives and correct rejections versus misses and false positives) were not considered due to difficulty in determining the relative weighting appropriate to clinical and community samples.
All analyses were conducted using IBM SPSS Statistics version 25. The area under the ROC curve was calculated using the non-parametric method [27].

Results

The number of participants within each sample meeting PHQ criteria for Panic Disorder and for Other Anxiety Disorder is detailed in Table 3. Overall, the proportion of participants satisfying PHQ criteria for some form of anxiety disorder in the clinical and community samples were 44.7 and 15.2% respectively.
Table 3
Number of PHQ Anxiety Disorder Diagnoses by Sample
 
Clinical Sample (n = 141)
Community Sample (n = 210)
Panic Disorder Only
14
5
Panic & Other Anxiety Disorder
19
6
Other Anxiety Disorder Only
30
21
Total Anxiety Disorder Diagnoses
63
32
On the basis of these PHQ screenings, the clinical and community samples were each further split into those receiving a positive diagnosis of some sort and those who did not. The mean SAS scores for each of these four subsamples are detailed in Table 4. Within both samples, SAS scores for the positive subsample were significantly higher than those for the negative subsample. Within the clinical sample, this was confirmed by an independent samples t-test, t(104.4) = 6.14, p < .001. For the community sample, severe problems with skewness and kurtosis in the subsample screening negative on the PHQ rendered the t-test invalid. However, a Mann Whitney U-test confirmed that there was a significant difference between the sub-samples SAS scores, U = 673.5, p < .001.
Table 4
Mean SAS scores for participants screening positive and negative for anxiety disorders on the PHQ
SAS Mean Score (SD)
Clinical Sample
Community Sample
PHQ Positive Anxiety Diagnosis
44.93 (9.66)
44.28 (9.07)
No PHQ Diagnosis
36.21 (6.50)
32.20 (6.39)
As detailed in the Data Analysis section, subsequent analysis focussed solely on the Positive Clinical and Negative Community subsamples. Sensitivity and specificity figures within these subsamples (detailing the extent to which SAS diagnoses were in agreement with those of the PHQ) for progressive cut-off points varying from 34 to 42 are detailed in Tables 5 and 6 respectively.
Table 5
Sensitivity: Percentage of cases with positive anxiety diagnoses on the PHQ also diagnosed on the SAS by cut-off point
Cut-off point
Clinical Sample (n = 63)
Community Sample (n = 32)
34
93.7
93.7
35
90.5
90.6
36
88.9
84.4
37
84.1
75.0
38
81.0
72.9
39
77.8
68.7
40
74.6
62.5
41
66.7
59.4
42
60.3
59.4
Table 6
Specificity: Percentage of cases with no diagnosis on the PHQ that similarly would receive no diagnosis on the SAS analysed by cut-off point
Cut-off point
Clinical Sample (n = 78)
Community Sample (n = 178)
34
37.2
58.4
35
41.0
66.3
36
46.2
74.7
37
53.8
80.9
38
56.4
84.8
39
59.0
88.2
40
69.2
90.4
41
76.9
92.1
42
78.2
94.4
The ROC curve that results using these two samples is shown in Fig. 1. The area under the curve equals .89 (95% Confidence Interval: .84–.94).
Utilising these two samples, Table 7 details what each of the mathematical methods reviewed (the Youden Index and the ROC curve) would suggest regarding the optimum cut-off point for the SAS, together with the associated sensitivity and specificity figures. In both cases, the optimum mathematical cut-off sits between the current and the original scale cut-offs: 39 using the Youden Index and 38 using the ROC curve. Table 8 compares the optimum Youden Index and ROC curve values obtained with those of the current cut-off of 36 and the original cut-off of 40. While the Youden Index method favours the original cut-off, the current cut-off slightly favours the current point.
Table 7
SAS Cut-off figures recommended by mathematical methods, together with the resulting sensitivity and specificity scores
Mathematical Model
Optimum Cut-Off
Sensitivity
Specificity
Youden Index
39
78%
88%
ROC Curvea
38
81%
85%
a In this instance both ROC curve methods, selecting the value for which the curve comes closest to the point (0,1) and selecting the value closest to the point where the curve intersects the line Se = Sp, yield the same result
Table 8
Comparison of mathematical values obtained with optimum cut-off versus the current and original cut-offs recommended by Zung*
Mathematical Model
Optimum(39/38)
Current (36)
Original (40)
Youden Index
.660
.636
.650
ROC Curve: distance from point (0,1)
.243
.271
.276
* For the Youden Index higher values are desirable, for the ROC curve lower values

Discussion

With the existing cut-off score of 36, the SAS achieved a sensitivity of 89% in the positive clinical sample, a figure identical to that recorded by Zung in the research on which this cut-off was based [18]. However, specificity in the community sample was only 75%, indicating that with the existing cut-off, there is a one in four chance of a false positive. (Zung’s research did not measure specificity as no formal diagnoses were undertaken amongst his normal adult sample [18]).
Mathematical methods such as the Youden Index and ROC curve methods suggest a higher cut-off might be appropriate, with 38 emerging as the leading candidate. From a purely mathematical perspective, there is little to choose between the original cut-off of 40 and Zung’s current recommendation [18]. However, these mathematical models do not discriminate between false negatives and false positives, nor do they make any allowance for the prevalence of the disorder under consideration, factors which, along with the purpose of testing, are crucial if the value of the test under consideration is to be maximised [28]. A reported 11.8% of the Australian adult population suffer from some sort of anxiety disorder during the course of any one year [29]. On this basis, applying the sensitivity and specifity figures obtained from the positive clinical and negative community sample, then for a representative adult sample of 100, the expected number of false positives and false negatives at the different cut-offs is as detailed in Table 9.
Table 9
Expected numbers of false positives and false negatives per 100 cases using the original and current SAS cut-offs
Cut-off
False Negatives
False Positives
Total Misdiagnoses
Original: 40
3a
9
12
Current: 36
1
22
23
aNote if the 62.5% sensitivity recorded in the positive community sample were applied here this figure would increase to 4–5 cases
Examining these results reveals that the case for increasing the recommended clinical cut-off score is far less evident for the SAS than the SDS; see [20] for comparative figures]. While the current cut-off is forecast to produce a sizeable number of false negatives, this has to be balanced against the risk of a number of clinical cases going undiagnosed if the cut-off is raised. It should also be noted that amongst the positive community sample, sensitivity falls away more rapidly as the cut-off increases and is only 63% for the original cut-off of 40. While the results for this sample are somewhat compromised by the low sensitivity of the PHQ, nevertheless the importance of identifying potential sufferers from anxiety who have not yet been diagnosed argues for caution in not setting the cut-off point at too high a level.

Limitations

A significant limitation of this study is the fact that the diagnoses on which the SAS sensitivity and specificity figures are based are made on the basis of self-report (namely the criterion-referenced PHQ) rather than clinician conducted interviews. While reported sensitivity and specificity figures for the PHQ itself suggest that errors in diagnosis for the two subsamples used in analysis would be few, the fact that the results for the Positive Community and Negative Clinical samples had to be excluded, limits the degree of confidence that can be placed on these results.
A further potential issue is that similarities between the two self-report measures may inflate the correlations between diagnoses. However, the fact that the PHQ is a criterion-referenced rather than norm-referenced lessens this concern.
Finally, it should be noted that the perspective taken by this study is broad-based: no distinction is made between different types of anxiety disorders, nor indeed between demographic sub-groups (e.g. differences in gender or by age-group). While this is a common approach in setting cut-off scores, it does leave the generalisability of sensitivity and specifity figures open to question.

Conclusions

Ultimately, which SAS cut-off is most appropriate depends on the differential costs attached to false positives and false negatives. In a clinical screening situation where false negatives may result in patients not receiving appropriate treatment, there is an argument for retaining the current cut-off recommended by Zung [18]. However, the larger number of overall misdiagnoses that result form a strong argument for reverting to the original cut-off of 40 when using the SAS in a research context.
Finally, it should be noted that this study again demonstrates the value of the SAS as a screener for anxiety disorders. Not only is the area under the SAS ROC curve indicative of a discriminating test, but sensitivity and specificity figures more than bear comparison with those reported for the DASS anxiety index (e.g., [16, 30, 31]). This is important in that, while there are many scales available to screen for anxiety disorders, the SAS appears to be one of the more successful scales at tapping into the specific nature of anxiety symptoms, rather than the more general negativity of emotions common to both depression and anxiety [711, 14, 16]. In conjunction with the scale’s continued widespread research use, the need to settle on appropriate cut-off scores is paramount.

Acknowledgements

Not applicable.
The study was approved by the University of New England Human Research Ethics Committee (Approval No: HE17–188). On logging on to Qualtrics to complete the survey, participants were provided with a detailed information sheet concerning all aspects of the project. Participants then signalled their consent to take part in the study by clicking on the Proceed button.
Not required as the manuscript does not contain individuals’ data.

Competing interests

The authors declare that they have no competing interests.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated.

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Literatur
1.
Zurück zum Zitat Andrews G, Henderson S, Hall W. Prevalence, comorbidity, disability and service utilisation Overview of the Australian National Mental Health Survey. Br J Psychiatry. 2001;178:145–53.CrossRef Andrews G, Henderson S, Hall W. Prevalence, comorbidity, disability and service utilisation Overview of the Australian National Mental Health Survey. Br J Psychiatry. 2001;178:145–53.CrossRef
2.
Zurück zum Zitat Kessler RC, Aguilar-Gaxiola S, Alonso J, Chatterji S, Lee S, Ormel J, et al. The global burden of mental disorders: An update from the WHO World Mental Health (WMH) Surveys. Epidemiol Psichiatr Soc. 2009;18:23–33.CrossRef Kessler RC, Aguilar-Gaxiola S, Alonso J, Chatterji S, Lee S, Ormel J, et al. The global burden of mental disorders: An update from the WHO World Mental Health (WMH) Surveys. Epidemiol Psichiatr Soc. 2009;18:23–33.CrossRef
3.
Zurück zum Zitat American Psychiatric Association. Diagnostic and statistical manual of mental disorders. 5th ed. Arlington: American Psychiatric Publishing; 2013.CrossRef American Psychiatric Association. Diagnostic and statistical manual of mental disorders. 5th ed. Arlington: American Psychiatric Publishing; 2013.CrossRef
4.
Zurück zum Zitat Spitzer RL, Kroenke K, Williams JBW. Patient Health Questionaire Primary Study Group. Validation and utility of a self-report version of PRIME-MD: the PHQ primary care study. JAMA. 1999;282:1737–44.CrossRef Spitzer RL, Kroenke K, Williams JBW. Patient Health Questionaire Primary Study Group. Validation and utility of a self-report version of PRIME-MD: the PHQ primary care study. JAMA. 1999;282:1737–44.CrossRef
5.
Zurück zum Zitat Lovibond PF, Lovibond SH. The structure of negative emotional states: Comparison of the Depression Anxiety Stress Scales (DASS) with the Beck Depression and Anxiety Inventories. Behav Res Ther. 1995;33:335–43.CrossRef Lovibond PF, Lovibond SH. The structure of negative emotional states: Comparison of the Depression Anxiety Stress Scales (DASS) with the Beck Depression and Anxiety Inventories. Behav Res Ther. 1995;33:335–43.CrossRef
6.
Zurück zum Zitat Beck AT, Epstein N, Brown G, Steer RA. An inventory for measuring clinical anxiety: Psychometric properties. J Consult. 1988;56:893.CrossRef Beck AT, Epstein N, Brown G, Steer RA. An inventory for measuring clinical anxiety: Psychometric properties. J Consult. 1988;56:893.CrossRef
7.
Zurück zum Zitat Spielberger CD. State-trait anxiety inventory for adults; 1983. Spielberger CD. State-trait anxiety inventory for adults; 1983.
8.
Zurück zum Zitat Clarke LA, Watson D. Theoretical and empirical issues in differentiating depression from anxiety. In: Becker J, Kleinman A, editors. Psychosocial aspects of mood disorders. Hillsdale: Lawrence Erlbaum Associates; 1991. p. 39–65. Clarke LA, Watson D. Theoretical and empirical issues in differentiating depression from anxiety. In: Becker J, Kleinman A, editors. Psychosocial aspects of mood disorders. Hillsdale: Lawrence Erlbaum Associates; 1991. p. 39–65.
9.
Zurück zum Zitat Fischer EH, Goethe JW. Measurement of depression and anxiety for hospitalized depressed patients. Psychiatr Serv. 1997;48:705–7.CrossRef Fischer EH, Goethe JW. Measurement of depression and anxiety for hospitalized depressed patients. Psychiatr Serv. 1997;48:705–7.CrossRef
10.
Zurück zum Zitat Feldman LA. Distinguishing depression and anxiety in self-report: evidence from confirmatory factor analysis on nonclinical and clinical samples. J Consult Clin Psychol. 1993;61:631–8.CrossRef Feldman LA. Distinguishing depression and anxiety in self-report: evidence from confirmatory factor analysis on nonclinical and clinical samples. J Consult Clin Psychol. 1993;61:631–8.CrossRef
11.
Zurück zum Zitat Tanaka-Matsumi J, Kameoka VA. Reliabilities and concurrent validities of popular self-report measures of depression, anxiety, and social desirability. J Consult Clin Psychol. 1986;54:328.CrossRef Tanaka-Matsumi J, Kameoka VA. Reliabilities and concurrent validities of popular self-report measures of depression, anxiety, and social desirability. J Consult Clin Psychol. 1986;54:328.CrossRef
12.
Zurück zum Zitat Balsamo M, Cataldi F, Carlucci L, Padulo C, Fairfield B. Assessment of late-life depression via self-report measures: A review. Clin Interv Aging. 2018;13:2021.CrossRef Balsamo M, Cataldi F, Carlucci L, Padulo C, Fairfield B. Assessment of late-life depression via self-report measures: A review. Clin Interv Aging. 2018;13:2021.CrossRef
13.
Zurück zum Zitat Balsamo M, Cataldi F, Carlucci L, Fairfield B. Assessment of anxiety in older adults: A review of self-report measures. Clin Interv Aging. 2018;13:573.15.CrossRef Balsamo M, Cataldi F, Carlucci L, Fairfield B. Assessment of anxiety in older adults: A review of self-report measures. Clin Interv Aging. 2018;13:573.15.CrossRef
14.
Zurück zum Zitat Zung WWK. A rating instrument for anxiety disorders. Psychosomatics. 1971;12:371–9.CrossRef Zung WWK. A rating instrument for anxiety disorders. Psychosomatics. 1971;12:371–9.CrossRef
15.
Zurück zum Zitat Zung WWK. A self-rating depression scale. Arch Gen Psychiatry. 1965;12(1):63–70.CrossRef Zung WWK. A self-rating depression scale. Arch Gen Psychiatry. 1965;12(1):63–70.CrossRef
16.
Zurück zum Zitat Dunstan DA, Scott N, Todd AK. Screening for anxiety and depression: reassessing the utility of the Zung scales. BMC Psychiatry. 2017;17:329.CrossRef Dunstan DA, Scott N, Todd AK. Screening for anxiety and depression: reassessing the utility of the Zung scales. BMC Psychiatry. 2017;17:329.CrossRef
17.
Zurück zum Zitat Dunstan DA, Scott N. Assigning clinical significance and symptom severity using the Zung scales: Levels of misclassification arising from confusion between Index and Raw scores. Depress Res Treat. 2018;2018:9250972.PubMedPubMedCentral Dunstan DA, Scott N. Assigning clinical significance and symptom severity using the Zung scales: Levels of misclassification arising from confusion between Index and Raw scores. Depress Res Treat. 2018;2018:9250972.PubMedPubMedCentral
18.
Zurück zum Zitat Zung WWK. How normal is anxiety? Durham: Upjohn; 1980. Zung WWK. How normal is anxiety? Durham: Upjohn; 1980.
19.
Zurück zum Zitat Zung WWK. The measurement of affects: Depression and anxiety. Mod Probl Pharmacopsychiatry. 1974;7:170–88.CrossRef Zung WWK. The measurement of affects: Depression and anxiety. Mod Probl Pharmacopsychiatry. 1974;7:170–88.CrossRef
20.
Zurück zum Zitat Dunstan DA, Scott N. Clarification of the cut-off score for Zung’s Self-rating Depression Scale. BMC Psychiatry. 2019;19:177.CrossRef Dunstan DA, Scott N. Clarification of the cut-off score for Zung’s Self-rating Depression Scale. BMC Psychiatry. 2019;19:177.CrossRef
21.
Zurück zum Zitat Habibzadeh F, Habibzadeh P, Yadollahie M. On determining the most appropriate test cut-off value: the case of tests with continuous results. Biochem Medica. 2016;26:297–307.CrossRef Habibzadeh F, Habibzadeh P, Yadollahie M. On determining the most appropriate test cut-off value: the case of tests with continuous results. Biochem Medica. 2016;26:297–307.CrossRef
22.
Zurück zum Zitat Youden WJ. Index for rating diagnostic tests. Cancer. 1950;3(1):32–5.CrossRef Youden WJ. Index for rating diagnostic tests. Cancer. 1950;3(1):32–5.CrossRef
23.
Zurück zum Zitat Searle SR. Linear Models, vol. 24. New York: Wiley; 1971. Searle SR. Linear Models, vol. 24. New York: Wiley; 1971.
24.
Zurück zum Zitat Akobang AK. Understanding diagnostic tests 3: Receiver operating characteristic curves. Acta Paediatr. 2007;96:644–7.CrossRef Akobang AK. Understanding diagnostic tests 3: Receiver operating characteristic curves. Acta Paediatr. 2007;96:644–7.CrossRef
25.
Zurück zum Zitat Balsamo M, Imperatori C, Sergi MR, Belvederi Murri M, Continisio M, Tamburello A, Innamorati M, Saggino A. Cognitive vulnerabilities and depression in young adults: An ROC curves analysis. Depress Res Treat. 2013;2013:407602.PubMedPubMedCentral Balsamo M, Imperatori C, Sergi MR, Belvederi Murri M, Continisio M, Tamburello A, Innamorati M, Saggino A. Cognitive vulnerabilities and depression in young adults: An ROC curves analysis. Depress Res Treat. 2013;2013:407602.PubMedPubMedCentral
26.
Zurück zum Zitat Balsamo M, Saggino A. Determining a diagnostic cut-off on the Teate Depression Inventory. Neuropsychiatr Dis Treat. 2014;10:987.CrossRef Balsamo M, Saggino A. Determining a diagnostic cut-off on the Teate Depression Inventory. Neuropsychiatr Dis Treat. 2014;10:987.CrossRef
27.
Zurück zum Zitat Hanley JA, McNeil BJ. The meaning and use of the area under a receiver operating characteristic (ROC) curve. Radiology. 1982;143(1):29–36.CrossRef Hanley JA, McNeil BJ. The meaning and use of the area under a receiver operating characteristic (ROC) curve. Radiology. 1982;143(1):29–36.CrossRef
28.
Zurück zum Zitat Ridge SE, Vizard AL. Determination of the optimal cutoff value for a serological assay: An example using the Johne’s absorbed EIA. J Clin Microbiol. 1993;31:1256–61.CrossRef Ridge SE, Vizard AL. Determination of the optimal cutoff value for a serological assay: An example using the Johne’s absorbed EIA. J Clin Microbiol. 1993;31:1256–61.CrossRef
29.
Zurück zum Zitat McEvoy PM, Grove R, Slade T. Epidemiology of anxiety disorders in the Australian general population: Findings in the 2007 Australian National Survey of Mental Health and Wellbeing. Aust N Z J Psychiatry. 2011;45:957–67.CrossRef McEvoy PM, Grove R, Slade T. Epidemiology of anxiety disorders in the Australian general population: Findings in the 2007 Australian National Survey of Mental Health and Wellbeing. Aust N Z J Psychiatry. 2011;45:957–67.CrossRef
30.
Zurück zum Zitat Nieuwhenuijsen K, de Boer AGEM, Verbeek JHAM, Blonk RWB, van Dijk FJH. The Depression Anxiety Stress Scales (DASS): Detecting anxiety disorder and depression in employees absent from work because of mental health problems. Occup Environ Med. 2003;60:i77–82.CrossRef Nieuwhenuijsen K, de Boer AGEM, Verbeek JHAM, Blonk RWB, van Dijk FJH. The Depression Anxiety Stress Scales (DASS): Detecting anxiety disorder and depression in employees absent from work because of mental health problems. Occup Environ Med. 2003;60:i77–82.CrossRef
31.
Zurück zum Zitat Tran TD, Tran T, Fisher J. Validation of the depression anxiety stress scales (DASS) 21 as a screening instrument for depression and anxiety in a rural community-based cohort of northern Vietnamese women. BMC Psychiatry. 2013;13(1):24.CrossRef Tran TD, Tran T, Fisher J. Validation of the depression anxiety stress scales (DASS) 21 as a screening instrument for depression and anxiety in a rural community-based cohort of northern Vietnamese women. BMC Psychiatry. 2013;13(1):24.CrossRef
Metadaten
Titel
Norms for Zung’s Self-rating Anxiety Scale
verfasst von
Debra A. Dunstan
Ned Scott
Publikationsdatum
01.12.2020
Verlag
BioMed Central
Erschienen in
BMC Psychiatry / Ausgabe 1/2020
Elektronische ISSN: 1471-244X
DOI
https://doi.org/10.1186/s12888-019-2427-6

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