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1.
Ugeskr Laeger ; 170(14): 1147-51, 2008 Mar 31.
Artigo em Dinamarquês | MEDLINE | ID: mdl-18405479

RESUMO

INTRODUCTION: Antiplatelet therapy is important in secondary prophylaxis in patients with ischemic heart, brain and vascular diseases. The aim of this study was to investigate the number of patients in Vejle County admitted to hospital in the second half of 2003 with acute and chronic heart, brain and vascular diseases to evaluate the kind of secondary prophylaxis and its duration. Moreover, the study registered the number of patients with diabetes mellitus treated with antiplatelet therapy. MATERIALS AND METHODS: The study included 2345 patients with ischemic heart, brain and vascular diseases, and patients with diabetes mellitus. Patients' data and information about medication were obtained from the hospital electronic database and public health insurance of Vejle County. Antiplatelet therapy was registered up to one year after onset of the disease. RESULTS: 1121 patients were admitted with cardiac diseases (including patients with angina pectoris), 624 patients had cerebral diseases, and 600 had diabetes mellitus. Acetylsalicylic acid (ASA) and a combination of ASA and clopidogrel were the most frequent forms of antiplatelet medication. Patients with diabetes and ischemic brain diseases made up 75% of those for whom medication was not registered. CONCLUSION: The study shows that in nearly all disease groups no antiplatelet therapy was registered for a very large number of % patients (up to 75%). A considerable number % of patients (up to 56%) with ischemic heart disease did not receive sufficient antiplatelet treatment according to Danish recommendations.


Assuntos
Aspirina/uso terapêutico , Isquemia Encefálica/prevenção & controle , Diabetes Mellitus/tratamento farmacológico , Infarto do Miocárdio/prevenção & controle , Inibidores da Agregação Plaquetária/uso terapêutico , Ticlopidina/análogos & derivados , Síndrome Coronariana Aguda/prevenção & controle , Adulto , Idoso , Idoso de 80 Anos ou mais , Angina Pectoris/prevenção & controle , Angina Instável/prevenção & controle , Infarto Encefálico/prevenção & controle , Clopidogrel , Dipiridamol/uso terapêutico , Quimioterapia Combinada , Feminino , Fidelidade a Diretrizes , Humanos , Ataque Isquêmico Transitório/prevenção & controle , Masculino , Pessoa de Meia-Idade , Ticlopidina/uso terapêutico
2.
Clin Chem Lab Med ; 46(2): 157-64, 2008.
Artigo em Inglês | MEDLINE | ID: mdl-18076354

RESUMO

BACKGROUND: Interpretation of serial data in monitoring of patients is usually performed by use of the 'reference change value' (RCV). While this tool for interpretation of measured differences is simple and clear, there are a number of drawbacks attached to the uncritical use of this concept. It is a dichotomised interpretation of continuous data using a fixed probability without any counter hypothesis. Therefore, a tool for better understanding and interpretation of measured differences in monitoring is needed. THEORY: The concept of sensitivity, specificity, likelihood ratios and odds used for diagnostic test evaluations is applied to monitoring by substituting measured concentrations with measured differences. Thus, two frequency distributions of differences are assumed, one for a stable, steady-state, situation and one for a certain change. Values exceeding a measured difference will thus represent 'false change' for the stable and 'true change' for the change and the ratio between these will define the likelihood. By making the hypothesis of change variable and equal to the actual difference, the distribution corresponding to the true changes for the measured difference varies with this. Consequently, the likelihood ratio for change increases with growing measured difference and when used together with the pre-test odds or pre-test probability, the post-test odds and post-test probability, related to the clinical situation, can be calculated. RESULTS: One example is acute intermittent porphyria, where increasing excretion of porphobilinogen is characteristic for an attack. The within-subject biological variation is estimated to 25%, which for two measurements gives a variation of 35% for measured differences. Three pre-test probabilities are assumed and illustrate that post-test odds and probability depends on both the pre-test probability and the measured difference. A second example is monitoring women in a follow-up after treatment of breast cancer, using the tumour marker CA 15-3. The within-subject biological variation is estimated to 14.9% and for differences 21% (2(1/2) x 14.9 due to two measurements). Here, the monitoring is totally scheduled and the frequency of progression depends on the time after treatment. Thus, the pre-test probability varies with time so that a certain measured difference with a given likelihood ratio will result in varying post-test odds depending on time. CONCLUSIONS: The concept presented here expands the earlier concept of RCVs by making it possible to have an estimate of the post-test odds for a certain difference to occur based on likelihood ratios and pre-test odds.


Assuntos
Funções Verossimilhança , Monitorização Fisiológica , Humanos , Valor Preditivo dos Testes , Valores de Referência , Sensibilidade e Especificidade
3.
Clin Chem Lab Med ; 44(3): 327-32, 2006.
Artigo em Inglês | MEDLINE | ID: mdl-16519607

RESUMO

BACKGROUND: In modern medicine many laboratory measurements are used as a surrogate for clinical outcome. There is therefore a need for models to quantify this approach. The target plot presented here is based on the difference plot. The difference between two measurements is plotted against the initial measurement, of which the first measurement is the index measurement (Mindex) and the second the outcome measurement (Moutcome). A vertical line separates normal vs. increased Mindex concentrations according to a selected target concentration, and a horizontal line describes the situation of no change. A target line (Mtarget) with a slope equal to -1 and indicating the selected target concentration is drawn through the crossing point. The six outcome areas thus refer to the combined effect of Mindex and Moutcome. A target plot taking the biological and analytical variation in consideration is considered. MATERIALS AND MODEL: The target plot addresses sources of outcome categories, and calculates the percentage in each of these categories according to a defined target value. Hemoglobin A1c (HbA1c) in diabetes in patients from Vejle County, Denmark was taken as an example. RESULTS: Different strategies for target setting for HbA1c were investigated: the Danish Diabetes Association (DDA) target of 5.84% HbA1c, the target from the American Diabetes Association (ADA) of 7.0% HbA1c, and 6.62% HbA1c, which is the 99.9 centile of the Danish national reference interval. All three strategies can be validated from the target plot for differences in surrogate clinical outcome in spite of identical patient material. Use of the ADA target (the highest nominal value) reveals the lowest percentage of index values above the target, and of those the highest percentage outcome values of the surrogate measure reached the target. CONCLUSION: The target plot allows detailed stratification of outcome based on surrogate parameters and assessment of risk of disease based on the selected target. The need to standardize outcome targets in diabetes to allow comparison of quality of treatment is obvious.


Assuntos
Glicemia/análise , Diabetes Mellitus/diagnóstico , Hemoglobinas Glicadas/análise , Hiperglicemia/diagnóstico , Avaliação da Tecnologia Biomédica , Técnicas de Laboratório Clínico , Dinamarca , Diabetes Mellitus/sangue , Humanos , Hiperglicemia/sangue , Reprodutibilidade dos Testes , Resultado do Tratamento
4.
J Diabetes Complications ; 20(1): 45-50, 2006.
Artigo em Inglês | MEDLINE | ID: mdl-16389167

RESUMO

BACKGROUND: The ratio between urinary albumin concentration (UAC) and urinary creatinine concentration (UCC) is widely used to estimate renal involvement. We examined how UAC and UCC associate with each other, with other risk factors, and with diabetic complications in a population-based sample of Type 2 diabetic patients. METHODS: A freshly voided morning urine specimen was provided by 1,284 consecutive, newly diagnosed diabetic patients aged 40 years or over in general practice. Albumin was measured by a polyethyleneglycol radioimmunoassay and creatinine by a modified Jaffe method. RESULTS: In a multivariate model including UAC, UCC, age, sex, HbA1c, and urinary glucose concentration, UAC increased with both age (P=.042) and HbA1c (P=.014), while UCC decreased (P<.001 and P<.001, respectively). In two regression models, the prevalence of diabetic retinopathy (P<.001) and relatively high resting heart rate (P<.001) increased with increasing UAC but decreased with increasing UCC (P=.002 and P=.005, respectively). CONCLUSION: The use of albumin/creatinine ratio (ACR) may introduce bias of unpredictable size and direction in comparisons of ACR with variables that are associated with UCC in their own right. In daily clinical practice, renal involvement in the individual patient can be estimated reliably with UAC or ACR measured in a freshly voided morning urine specimen, especially when considered together. However, the associations of the combined measure ACR should be interpreted with great caution in clinical and epidemiological research.


Assuntos
Albuminúria , Creatinina/urina , Diabetes Mellitus Tipo 2/complicações , Glicosúria , Adulto , Idoso , Idoso de 80 Anos ou mais , Envelhecimento/fisiologia , Diabetes Mellitus Tipo 2/sangue , Diabetes Mellitus Tipo 2/urina , Retinopatia Diabética/urina , Feminino , Hemoglobinas Glicadas/análise , Humanos , Masculino , Pessoa de Meia-Idade , Análise Multivariada , Doenças Vasculares Periféricas/etiologia , Doenças Vasculares Periféricas/urina , Análise de Regressão
7.
Clin Chem Lab Med ; 44(1): 92-8, 2006.
Artigo em Inglês | MEDLINE | ID: mdl-16375593

RESUMO

BACKGROUND: Hemoglobin A(1c) (HbA(1c)) has been used in controlled trials for the last 10 years but has never been evaluated in clinical practice as an effective parameter for clinical outcome. We investigated the trend for glycemic control over 11 years in one county of 350,000 citizens. METHODS: We studied 226,382 HbA(1c-DCCT-aligned) from 39,455 patients in whom routine monitoring for diabetes was initiated in 1993, 1996, or 2001. The trend in glycemic control was investigated in groups by probit plots, and in individual patients by target plots. RESULTS: From 1993 to 2001, the number of HbA(1c) measurements increased three-fold. The number of new monitoring series increased from 0.22% to 0.27% of the county population, and the number of patients monitored using HbA(1c) as a proxy for diabetes increased from 0.5% to 1.5%. A proportional reduction in high HbA(1c) concentrations of 5% was identified in the 1993 group, compared to 15% in the 1996 group, and 20% in the 2001 group. The percentage of patients with diabetic first HbA(1c) experiencing normalization increased from 8% to 30% for males and from 9% to 24% for females (1993-2001). The percentage of HbA(1c) concentrations that were not normalized decreased from 78% to 53% for males and from 83% to 59% for females (1993-2001). The median HbA(1c) at initiation of monitoring decreased from 8.7% in 1993 to 7.5% in 2001 (p < 10(-5)). The number of normal first HbA(1c) results in monitoring series increased from 7% to 17% for males and from 8% to 22% for females. Up to 10% of subjects developed diabetic concentrations during monitoring. CONCLUSION: On average, patients with diabetic first HbA(1c) concentrations (> or =6.62%) showed an improvement in glycemic control from 5% in 1993 to 20% in 2001. High concentrations were easiest to reduce. In patients with originally diabetic HbA(1c) levels, 66% on average showed improved glycemic control in the 2001 series compared to 50% in the 1993 series. An average of 6% (1993) vs. 9% (2001) with originally normal HbA(1c) levels showed an upward trend inHbA(1c) levels. Median HbA(1c) at initiation of monitoring decreased from 8.7% in 1993 to 7.5% in 2001 (p < 10(-5)). The incidence of new cases was constant.


Assuntos
Glicemia/metabolismo , Diabetes Mellitus/epidemiologia , Diabetes Mellitus/fisiopatologia , Adolescente , Adulto , Distribuição por Idade , Idoso , Idoso de 80 Anos ou mais , Criança , Dinamarca/epidemiologia , Diabetes Mellitus/diagnóstico , Diabetes Mellitus/terapia , Feminino , Hemoglobina A/metabolismo , Humanos , Masculino , Pessoa de Meia-Idade , Monitorização Fisiológica , Estudos Retrospectivos , Comportamento de Redução do Risco , Sensibilidade e Especificidade , Caracteres Sexuais , Fatores de Tempo , Resultado do Tratamento
8.
Clin Chem Lab Med ; 43(12): 1366-72, 2005.
Artigo em Inglês | MEDLINE | ID: mdl-16309374

RESUMO

BACKGROUND: Hemoglobin A1c (HbA1c) is a proxy measure for glycemic control in diabetes. We investigated the trend for glycemic control in patients from three Danish counties using HbA1c measurements. METHODS: We studied 2454 patients from a population of 807,000 inhabitants for whom routine monitoring of diabetes using HbA1c-DCCT aligned was initiated in 2001. We estimated the incidence of monitored patients in the population. The progress in patients with originally diabetic HbA1c levels was investigated by cumulative probability plots, and the individual trend in clinical outcome was investigated by a modified difference plot. RESULTS: The age-standardized incidence of monitored patients was <0.5% in all regions. Patients with diabetic first HbA1c concentrations (>or=6.62% HbA1c) showed on average 15% improved glycemic control in the first year. Further improvement was limited. The overall percentage above the treatment target (>or=6.62% HbA1c) was 51% in 2003 compared to 59% in 2001, and the percentage with poor glycemic control (>or=10.0% HbA1c) was reduced from 19% to 4%. Of patients with originally diabetic HbA1c levels, 15% showed progress in glycemic control, and 28% reached treatment targets. In patients with originally normal HbA1c, 75% showed an upward trend in HbA1c levels, which reached diabetic concentrations in 17%. CONCLUSION: Patients with diabetic first HbA1c concentrations (>or=6.62% HbA1c) showed on average 15% improved glycemic control in the first year. Further improvement was limited. In individual patients, 75% with originally diabetic HbA1c levels showed improved glycemic control after 3 years, while 78% with originally normal concentrations showed an upward trend in HbA1c levels.


Assuntos
Diabetes Mellitus/fisiopatologia , Hemoglobinas Glicadas/metabolismo , Hiperglicemia/prevenção & controle , Adulto , Idoso , Idoso de 80 Anos ou mais , Dinamarca/epidemiologia , Feminino , Humanos , Hiperglicemia/epidemiologia , Hiperglicemia/etiologia , Masculino , Pessoa de Meia-Idade , Probabilidade , Estudos Prospectivos , Fatores de Tempo , Resultado do Tratamento
9.
Artigo em Inglês | MEDLINE | ID: mdl-16112960

RESUMO

AIM: To investigate the effect of composite analytical bias and imprecision in the measurements of fasting plasma-glucose (fPG) for diagnosis of diabetes mellitus and estimation of risk of development and progression of retinopathy using measurements of Haemoglobin A1C (HbA1C%). MATERIALS AND METHODS: Data on biological within-subject variation for fPG (5.7% and 4.9%) and HbA1C% (1.9%) from literature and data on fPG for a 'low-risk' population (regarding diabetes) from own investigations (ln-values of mean=1.6781 approximately geometric mean population=5.36 mmol/L and standard deviation=0.0891 approximately CV population=8.9%). Further, guidelines for diagnosis of diabetes (two consecutive measurements of fPG above 7.0 mmol/L) were obtained from literature as also the risk of development of and progression of retinopathy using measurements of HbA1C (a change in risk of 44% for a change in HbA1C% of 10%). It was assumed that each individual had values which over a short time had a Gaussian distribution about a biological set-point. Calculations of the effect of analytical bias and imprecision were performed by linear addition of bias and squared addition of imprecision to the squared error-free biological distribution. Composite variations of bias and imprecision were obtained by varying assumed imprecision and calculating the maximum acceptable bias for the stated situation. RESULTS: Two diagnostic examples are described for fPG and one for risk related to HbA1C%. Firstly, the risk of diabetes as a function of set-point and bias and imprecision was investigated, using functions where the probability of two measurements above 7.0 mmol/L was plotted against biological set-points, resulting in a S-shaped curve with a 25% probability for a set-point equal to 7.0 mmol/L. Here, a maximum 5% probability of classifying an individual with a set-point of 6.4 mmol/L (upper reference limit for the 'low-risk' population) as diabetic was used to calculate the analytical quality specifications. Comparably, the 5% probability of misclassifying a diabetic with fPG of 8.0 mmol/L was investigated, and both specifications were illustrated in an imprecision-bias plot. Secondly, the percentage of 'low-risk' individuals which would be falsely diagnosed as diabetic was calculated, and this percentage was plotted as a function of bias for different assumed values of imprecision. Thirdly, the confidence intervals for a certain risk-difference for HbA1C% of 5% or 10% was used to draw an imprecision-bias plot for different assumed changes and probabilities. DISCUSSION: Analytical quality taking the demands for bias and imprecision in account are obtainable in laboratories, but may be questionable for use of capillary blood and POCT instruments with considerable consequences for the number of individuals classified as diabetics, and thereby for the economy etc. CONCLUSION: For clinical settings, with so clear recommendations and descriptions of risk curves as in diabetes, it is relatively easy to estimate the analytical quality specifications according to the highest level of the model hierarchy, when relevant probabilities for the events are assumed.


Assuntos
Glicemia/análise , Diabetes Mellitus/diagnóstico , Hemoglobinas Glicadas/análise , Viés , Intervalos de Confiança , Diabetes Mellitus/sangue , Humanos , Prognóstico , Risco
10.
Clin Chem Lab Med ; 43(4): 403-11, 2005.
Artigo em Inglês | MEDLINE | ID: mdl-15899657

RESUMO

Clinical activity indices are essential instruments in monitoring inflammatory bowel diseases such as Crohn's disease (CD) and ulcerative colitis (UC). To subclassify components of disease indices in CD and UC, investigate technical noise in estimation of the indices, establish a signal-to-noise ratio (SNR), evaluate correlation between indices and calculate the reference change value (RCV) for selected biochemical variables in individual cases, 50 patients with CD and 49 patients with UC were included in the study. Qualitative index variables were assessed for scoring errors. The standard deviation (SD) was estimated according to a rectangular model, while SD in biochemical variable scoring was estimated according to a Gaussian model; a combined SD was also calculated. These values were investigated for their individual contribution to variation. The 95% CI of an index value was based on +/- 1.96 x SD(combined) and a change in separate biochemical variables was calculated as RCV 1.96 x radical2 x SD(combined). Correlation between different disease activity indices was assessed for unexplained variation. The Crohn's disease activity index (CDAI) had the highest variation compared to the van Hees (Hees) and the Harvey-Bradshaw index (HBI) in CD, but it also had the best SNR, whereas HBI had the lowest. In UC the clinical activity index (CAI) showed the highest variance, but the best SNR compared to Seo's activity index (AI). The 95% CI of the CDAI discriminatory activity sum of 150 in individual cases was 105-195, whereas the 95% interval for a change was +/-62.4. Self-reported wellness contributed 40% to total variance in the CDAI. Factors of clinical importance increased errors in estimates and variance of the indices. Poor correlation was obtained between activity indices, with up to 70% unexplained variance. The SD(combined) for estimated errors was as high as 23 points, with the best SNR being approximately 20. Index factors increase the sensitivity of SNRs to errors and lower the disease specificity. Sensitivity optimisation may be achieved by standardisation of the variables and their use.


Assuntos
Colite Ulcerativa/diagnóstico , Doença de Crohn/diagnóstico , Patologia Clínica/normas , Índice de Gravidade de Doença , Adolescente , Adulto , Idoso , Idoso de 80 Anos ou mais , Progressão da Doença , Feminino , Humanos , Masculino , Pessoa de Meia-Idade , Sensibilidade e Especificidade
11.
Clin Chem Lab Med ; 42(9): 1036-42, 2004.
Artigo em Inglês | MEDLINE | ID: mdl-15497470

RESUMO

Gestational diabetes mellitus (GDM) is defined as carbohydrate intolerance during pregnancy. In Denmark the health service offers selective screening for GDM, i.e., admission to an oral glucose tolerance test (OGTT) after pre-screening with interview for clinical risk factors for GDM, two capillary fasting blood glucose (cFBG) measurements and a urine test for glucosuria. The aim of the present study was to investigate the power of the pre-screening to identify GDM and the screening to predict adverse clinical outcome. A retrospective investigation of pregnant women undergoing screening during 1998 at Vejle County Hospital, Denmark was undertaken. The two most frequent pre-screening criteria for OGTT were body-mass index (BMI) > or = 27 kg/m2 and age > or = 35 years. The highest odds ratio (OR) of 9.07 (95% CI: 2.60 to 63.70) for GDM had glucosuria and the lowest (zero) had cFBG. The frequency of complicated delivery was similar in GDM (58%) compared to non-GDM (56%). The best predictor of complicated delivery was a BMI with OR = 1.50 (95% CI: 0.87 to 2.60) for BMI > or = 27 kg/m2 vs. < 27 kg/m2. The best predictor of adverse neonatal outcome was a capillary blood glucose 120 min after glucose load (cBG(120 min)) > or = 9.0 mmol/l (OR = 3.18, 95% CI: 1.14 to 8.89). The intermediary endpoint GDM was not superior for predicting adverse maternal and neonatal outcome. The cumulative probability distribution of cBG(120 min) after a 75 g glucose load was not homogeneously distributed in groups stratified according to maternal and foetal outcome. A changed slope was seen after cBG(120 min) 9.0 mmol/l. Screening cFBG of 4.1 mmol/l was unable to predict GDM and adverse outcome. Glucosuria was too rare to be effective as a screening tool. Pre-screening did not identify GDM. The best predictor of complicated delivery was a high BMI. The best predictor of foetal adverse outcome was cBG120 miin > or = 9.0 mmol/l after a 75 g glucose load. Identical fraction complications were present in GDM and non-GDM. A refinement of the screening procedure is highly needed, and this has been initiated in Denmark.


Assuntos
Diabetes Gestacional/diagnóstico , Resultado da Gravidez , Adulto , Feminino , Teste de Tolerância a Glucose , Humanos , Valor Preditivo dos Testes , Gravidez , Estudos Retrospectivos , Sensibilidade e Especificidade
12.
Clin Chem Lab Med ; 42(7): 715-24, 2004.
Artigo em Inglês | MEDLINE | ID: mdl-15327005

RESUMO

A well-known transformation from the bell-shaped Gaussian (normal) curve to a straight line in the rankit plot is investigated, and a tool for evaluation of the distribution of reference groups is presented. It is based on the confidence intervals for percentiles of the calculated Gaussian distribution and the percentage of cumulative points exceeding these limits. The process is to rank the reference values and plot the cumulative frequency points in a rankit plot with a logarithmic (In=log(e)) transformed abscissa. If the distribution is close to In-Gaussian the cumulative frequency points will fit to the straight line describing the calculated In-Gaussian distribution. The quality of the fit is evaluated by adding confidence intervals (CI) to each point on the line and calculating the percentage of points outside the hyperbola-like CI-curves. The assumption was that the 95% confidence curves for percentiles would show 5% of points outside these limits. However, computer simulations disclosed that approximate 10% of the series would have 5% or more points outside the limits. This is a conservative validation, which is more demanding than the Kolmogorov-Smirnov test. The graphical presentation, however, makes it easy to disclose deviations from In-Gaussianity, and to make other interpretations of the distributions, e.g., comparison to non-Gaussian distributions in the same plot, where the cumulative frequency percentage can be read from the ordinate. A long list of examples of In-Gaussian distributions of subgroups of reference values from healthy individuals is presented. In addition, distributions of values from well-defined diseased individuals may show up as In-Gaussian. It is evident from the examples that the rankit transformation and simple graphical evaluation for non-Gaussianity is a useful tool for the description of sub-groups.


Assuntos
Valores de Referência , Distribuições Estatísticas , Análise Química do Sangue/normas , Intervalos de Confiança , Interpretação Estatística de Dados , Humanos , Estado Pré-Diabético/diagnóstico
13.
Clin Chem Lab Med ; 42(7): 747-51, 2004.
Artigo em Inglês | MEDLINE | ID: mdl-15327009

RESUMO

The reference interval is probably the most widely used decision-making tool in clinical practice, with a modern use aiming at identifying wellness during health check and screening. Its use as a diagnostic tool is much less recognised and may be obsolete. The present study investigates the consequences of the new practice for the interpretation of prospective value, negative vs. positive, the probability of confirming wellness, and number of false results based on selected strategy for reference interval establishment. Calculations assumed normalised Gaussian-distributed reference intervals with analytical variation set to zero and absolute accuracy. Also assumed is the independency of tests. Probability for no values outside reference intervals in healthy subjects was calculated from the formula p(no) outside=(1 - p(single)) and according to the formula for repeated testing: p(one) outside =n x p(single) (1 - p(single))n-1 etc. Here n is the number of tests performed and p(single) is the probability of one result outside reference limits with the general formula p(i) outside n-i=k x p(single)i (1- p(single))n-i, with k being the binominal coefficient and i the number outside the reference intervals. Use of the 99.9 centile for health checks will increase the probability for no false from 60% to 99% for 10 tests, and from 46% to 98% for 15 tests. The probability for one false-positive result in 10 tests in a panel can be reduced from 32% to 1% if the 99.9% centile is substituted for the 95% centile. For two in 10 tests, the probability can be reduced from 8% to below 0.1%. In both cases, selection of the 99.9% centile improves the diagnostic accuracy. Reference intervals are needed as a "true" negative reference for absence of disease, and should cover the 99.9% centile of the reference distribution of an analyte to avoid false positives. For this new use, it is critical that reference persons are absolutely normal without clinical, genetic and biochemical signs of the condition being investigated. However, reference intervals cannot substitute clinical decision limits for diagnosis and medical intervention.


Assuntos
Técnicas de Laboratório Clínico/normas , Valores de Referência , Intervalos de Confiança , Erros de Diagnóstico , Humanos , Probabilidade , Tamanho da Amostra , Distribuições Estatísticas
14.
Clin Chem Lab Med ; 42(7): 817-23, 2004.
Artigo em Inglês | MEDLINE | ID: mdl-15327018

RESUMO

Reference intervals are recommended for naturally occurring quantities and required in the evaluation of new components in order to provide clinically useful information. The aim of the present study is to present a method for selecting reference individuals for the determination of fasting venous plasma glucose (f-vPG) reference intervals and ways to determine if disease groups can share reference intervals with an ideal reference population. Reference subjects were randomly selected, eligibility was judged according to predetermined inclusion and exclusion criteria. Using the literature we selected risk indicators for diabetes mellitus (DM) and used these indicators to rule out high-risk individuals in order to obtain a reference distribution of f-vPG determined using individuals with low risk of DM. The distribution of f-vPG in the high-risk individuals was compared with that determined for the low-risk group. We then estimated the ability of the high-risk individuals to share the reference interval of the low-risk individuals, and calculated the fraction that was outside this interval. Distributions were also investigated for linearity in the cumulated frequency rankit distribution of In-values. The allowable difference between two reference limits could not exceed 0.375 times the population biological variation. Most risk indicators were powerful predictors of high f-vPG values. Subgroups with these risk indicators should not be included in the homogeneous In-normally distributed reference distribution. Distributions of f-vPG concentrations in individuals with risk factors were not homogeneous and varying percentages of individuals were outside the reference distribution, having f-vPG greater than 7.0 mmol/l. We conclude that randomisation is only useful to recruit candidate reference subjects. To rule out subjects according to clinical risk factors for diabetes, it is necessary to identify a reference population with low risk of exhibiting increased f-vPG concentrations. This method may be used to validate a reference interval for a particular analyte with respect to an investigated disease, and to stratify risk factors of importance.


Assuntos
Glicemia/análise , Diabetes Mellitus/sangue , Valores de Referência , Jejum , Humanos , Risco , Estudos de Amostragem , Distribuições Estatísticas
17.
Clin Chem Lab Med ; 41(9): 1246-50, 2003 Sep.
Artigo em Inglês | MEDLINE | ID: mdl-14598877

RESUMO

In the new lowered diagnostic discriminator for diabetes mellitus (DM) from the American Diabetes Association (ADA), fasting peripheral venous plasma glucose (f-vPG) of 7.0 mmol/l is identical to the 99.9 centile of f-vPG (7.05 mmol/l, 95%CI: 6.91-7.20 mmol/l) in a low-risk reference population. We investigated its diagnostic concordance with other diagnostic discriminators. As no index test is available for DM we used the ADA discriminator as gold standard. We isolated a low-risk reference population (n = 424) from a randomised general population (n = 726) by ruling out of all cases with clinical and biochemical risk indicators for DM. We based our analysis on measurements traceable to primary standard concentration, a bias of < 1.5% and CV% < 2.5. The distribution of the fasting capillary whole blood glucose (f-CBG; mmol/l) in the reference population was in Gaussian with the 99.9 centile of 6.62 mmol/l (95% CI 6.47-6.77 mmol/l) and the 97.5 centile of 5.92 mmol/l (5.82-6.02 mmol/l). The 6.1 mmol/l f-CBG WHO limit corresponds approximately to the 97.6 centile, and this limit is thus not traceable to the ADA discriminator, which corresponds to f-CBG of 6.4 mmol/l. This is the case in groups only, as recalculation will introduce unpredictable errors. Thus, in our general population a varying number of subjects will be at risk of DM as a mere consequence of different limits. The f-CBG limit of 6.1 mmol/l will thus lead to 2.4% false-positive diagnoses or, in EU, to around 44 x 10(6) adults being diagnosed. The number of cases at risk of DM vary from 5.4 x 10(6) to 44 x 10(6) in EU. We conclude that application of different diagnostic limits results in highly variable number of diagnosed DM cases, and therefore one diagnostic discriminator is needed to provide reproducible diagnoses.


Assuntos
Diabetes Mellitus/diagnóstico , Guias de Prática Clínica como Assunto , Adolescente , Adulto , Idoso , Feminino , Humanos , Masculino , Pessoa de Meia-Idade , Sociedades Médicas , Organização Mundial da Saúde
18.
Clin Chem Lab Med ; 41(2): 187-99, 2003 Feb.
Artigo em Inglês | MEDLINE | ID: mdl-12667006

RESUMO

Recently both the American Diabetes Organization (ADA) and World Health Organization (WHO) have revised the diagnostic recommendations for gestational diabetes mellitus (GDM), however, they did not not reach agreement on the criteria for diagnosis, the referral criteria for the confirmatory oral glucose tolerance test (OGTT), its standardization, and diagnostic cut-off point. The aims of this study were to investigate if the fasting venous plasma glucose mmol/l (f-vPG) and the 2-hour venous plasma glucose mmol/l (2h-vPG) after a WHO standardized 75 g oral glucose tolerance test (OGTT) in a non-risk group of pregnant women during first and third trimester of pregnancy deviated from that of risk groups, to establish a reference interval for f-vPG and 2h-vPG, and to investigate the predictive role of f-vPG for the 2h-vPG glucose concentration. This is a population-based case-control study where a consecutive number of pregnant women were invited to screening irrespective of their risk factors for GDM. All women filled in a questionnaire of the Danish national screening program on risk factors and had f-vPG and the 2h-vPG measured. By ruling out women with GDM and risk factors, we isolated a non-risk reference class. The In f-vPG parametric 97.5 centile was less than 5% higher during week 32 of pregnancy than during week 20, and therefore these groups were combined. The f-vPG 95% reference interval was from 4.01 mmol/l (95% CI: 3.96 to 4.07 mmol/l) to 5.26 mmol/l (95% CI: 5.19 to 5.34 mmol/l). "The true upper normal limit", the 99.9 centile, was 5.69 mmol/l (95% CI: 5.59 to 5.80 mmol/l). The f-vPG was 0.6 mmol/l lower over the whole range in pregnant women compared to age-matched non-pregnant women. The distribution of 2h-vPG concentrations at week 20 was non-Gaussian and therefore considered non-homogeneous, while it was Gaussian distributed and homogeneous at week 32. The 2h-vPG 95% reference interval of the combined weeks was from 2.80 mmol/l (95% CI: 2.56 to 3.04 mmol/l) to 7.58 mmol/l (95% CI: 7.34 to 7.82 mmol/l), and the upper limit of normal (99.9 centile) was 8.96 mmol/l (95% CI: 8.63 to 9.29 mmol/l). Distributions of f-vPG and 2h-vPG were distinct in our defined risk classes. In individual cases, no systematic correlation was found between the f-vPG concentration at week 20 and week 32. The f-vPG concentrations at any of the weeks did not predict the 2h-vPG level and no single clinical risk factor was decisive for the presence of GDM.


Assuntos
Glicemia/análise , Diabetes Gestacional/sangue , Diabetes Gestacional/diagnóstico , Teste de Tolerância a Glucose/métodos , Química Clínica/métodos , Jejum , Feminino , Humanos , Modelos Estatísticos , Distribuição Normal , Valor Preditivo dos Testes , Gravidez , Segundo Trimestre da Gravidez , Terceiro Trimestre da Gravidez , Estudos Prospectivos , Valores de Referência , Fatores de Risco , Fatores de Tempo
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