| Literature DB >> 23374118 |
Nobuyuki Nishikiori1, Catharina Van Weezenbeek.
Abstract
BACKGROUND: Despite the progress made in the past decade, tuberculosis (TB) control still faces significant challenges. In many countries with declining TB incidence, the disease tends to concentrate in vulnerable populations that often have limited access to health care. In light of the limitations of the current case-finding approach and the global urgency to improve case detection, active case-finding (ACF) has been suggested as an important complementary strategy to accelerate tuberculosis control especially among high-risk populations. The present exercise aims to develop a model that can be used for county-level project planning.Entities:
Mesh:
Year: 2013 PMID: 23374118 PMCID: PMC3602078 DOI: 10.1186/1471-2458-13-97
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Figure 1Model framework. The middle part represents the flow of a population screened until diagnosis. The upper part represents the calculation of a yield, i.e. total TB cases detected. The lower part explains the calculation of diagnostic cost for each step.
Key parameters and assumptions
| TB prevalence among the general population (per 100,000) | country specific | Estimated prevalence of all TB among general population based on the estimates in Global TB Control 2010, WHO. | |
| PRi and Previ for Group i (i=1,2,…) where | Assumed prevalence of pulmonary TB for each of the high-risk groups. Defined either by prevalence ratio to the general population or by direct estimate | PR1 = 1.0 | Although not strictly accurate, risk-group prevalence parameters were set to allow general inference regarding some high-risk groups. (Group 1: General population; Group 2: Poor, urban dwellers; Group 3: Malnourished; Group 4: Diabetics; Group 5: TB contacts, and Group 6: Prisoners and/or other high-risk groups.) Note that these groups are only indicative. Users of the tool should define the prevalence parameters based on the best estimate for the local context. |
| PR2 = 1.5 | |||
| PR3 = 2.0 | |||
| PR4 = 3.0 | |||
| Prev5 = 4000/105 | |||
| Prev6 = 6000/105 | |||
| Pr (symp) = | Proportion of TB symptomatics as a function of Previ | a = 2.9829 | Pr (symp) and Pr (X-ray) were expressed as a linear function of TB prevalence in the target population. The method was employed due to the observed linear trends in prevalence survey findings. Simple linear regression models were fit for multiple data points from prevalence surveys and resulted intercept and coefficient were used. * The overlap was assumed to be 20%, based on prevalence survey findings (References 5, 8). This parameter is required to calculate the combined suspects, i.e. {Pr (symp) ∪ Pr (X-ray)}. |
| b = 0.0355 | |||
| Pr (X-ray) = | Proportion of subjects with X-ray abnormality as a function of Previ | a = 3.0415 | |
| b = 0.0377 | |||
| Overlap* | {Pr (symp) ∩ Pr (X-ray)} divided by {Pr (symp) + Pr (X-ray)} | 0.20 | |
| | Proportions of prevalent TB cases who are | | Sensitivity analysis was conducted for the ranges of PYsymp [0.3-0.5] and PYsmear [0.5-0.7], both are assumed to follow a uniform distribution. |
| TB symptomatic | 0.40 [0.3-0.5] | ||
| smear-positive | 0.60 [0.5-0.7] | ||
| TB symptomatic and smear-positive | 0.24 | Assuming PYsymp and PYsmear are independent, | |
| TB symptomatic and smear-negative | 0.16 | ||
| Not TB symptomatic and smear-positive | 0.36 | ||
| Not TB symptomatic and smear-negative | 0.24 | ||
| Symptom screening | | 0.00 | A proportion of individuals who entered in a screening step but did not complete the step to receiving the result. The model assumed a high return rate for culture due to a long turnaround time for solid culture. |
| Sputum smear microscopy | | 0.02 | |
| Chest X-ray (screening) | | 0.02 | |
| Chest X-ray (diagnosis) | | 0.20 | Similarly, the rate is high if the chest X-ray is used for diagnosis of smear-negative TB as it often requires some lead time for group diagnosis (e.g. TB diagnostic committees) as per national guidelines. |
| Sputum culture (solid) | | 0.15 | |
| Xpert MTB/RIF | | 0.00 | |
| Unit cost for screening/diagnostic test | |||
| Symptom screening | in USD per person | 0.02 | The unit cost of screening and diagnostic tests in USD. They were meant to be direct unit cost excluding capital, equipment and human resources cost. These costs can be included in the analysis in the web-based tool if they are deduced to the cost per test. |
| Sputum smear microscopy | in USD per slide (three slides per person) | 0.70 | |
| Chest X-ray | in USD per test | 3.00 [2.00-6.00] | |
| Sputum culture (solid) | in USD per test | 5.00 | |
| Xpert MTB/RIF | in USD per specimen | 16.86 | |
Diagnostic algorithms predefined for the model
| Basic routine programme model | Symptom | – | Microscopy | PYss | 24% | |
| Strategy 1 + smear-negative diagnosis with X-ray | Symptom | – | Microscopy X-ray | PYss + part** PYsc | 24–40% | |
| X-ray + symptom screening | Symptom X-ray | – | Microscopy | PYss+PYxs+part** (PYsc+PYxc) | 60%–100% | |
| Prevalence survey model | Symptom X-ray | – | Microscopy Culture | PYss+PYsc+PYxs+PYxs | 100% | |
| Xpert in Strategy 4 | Symptom X-ray | – | Xpert | PYss+PYsc+PYxs+PYxs | 100% | |
| Restrictive screening + Xpert | Symptom | X-ray | Xpert | PYss+PYsc | 40% |
* PY: Proportional yield (a proportion of prevalent TB cases by symptomatic and smear statuses). Please see Table 1.
** A diagnostic sensitivity of smear-negative TB can vary depending on the programmatic setup.
*** A maximum proportion of TB cases that can be diagnosed.
Figure 2Proportional yields. (a) Proportions of prevalent TB cases are denoted as PYss, PYsc, PYxs and PYxc by TB symptoms and smear statuses where the total sum is 100% (Table 1). (b) Proportional yields based on the TB prevalence survey in Viet Nam.7 (c) Based on the TB prevalence survey in Cambodia.4 (d) Calculated by assuming that 40% of prevalent TB cases can be identified through symptomatic screening, 60% of TB cases are smear- positive and they are independently distributed. Note their similarity with (b).
Figure 3Cost per case detected and incremental yield, by diagnostic strategy, in a hypothetical TB risk group of 10,000 population with TB prevalence of 1.0%. The number of TB cases detected (a) and the cost per case detected are plotted against the total diagnostic cost. Each point represents a diagnostic strategy from strategies 1 to 6 defined in Table 2.
Figure 4Cost-effectiveness of tuberculosis active case-finding. (a) Cost per case detected by diagnostic strategies and (b) the Number Needed to Screen (NNS) to detect a case in a hypothetical country with TB prevalence of 0.5% (500 per 100,000 population).
Figure 5Sensitivity analysis for X-ray cost and proportional yield assumptions. Cost per case detected for target populations with TB prevalence of 1.0% and 4.0% under uniform distribution of the values for (a) X-ray cost, and (b) proportional yield assumptions. The parameter ranges are shown in Table 1.