Literature DB >> 25426710

Multisite evaluation of point of care CD4 testing in Papua New Guinea.

Malin Malagun1, Gideon Nano2, Caroline Chevallier1, Ragagalo Opina3, Gola Sawiya3, Joseph Kivavia4, Albina Kalinoe5, Kathalina Nathaniel5, Oscillah Kaminiel6, John Millan7, Andrea Carmone8, Mary Dini9, Theresa Palou9, Kum Topma10, Evelyn Lavu11, Jessica Markby8.   

Abstract

Laboratory-based CD4 monitoring of HIV patients presents challenges in resource limited settings (RLS) including frequent machine breakdown, poor engineering support and limited cold chain and specimen transport logistics. This study assessed the performance of two CD4 tests designed for use in RLS; the Dynal assay and the Alere PIMA test (PIMA). Accuracy of Dynal and PIMA using venous blood was assessed in a centralised laboratory by comparison to BD FACSCount (BD FACS). Dynal had a mean bias of -50.35 cells/µl (r(2) = 0.973, p<0.0001, n = 101) and PIMA -22.43 cells/µl (r(2)= 0.964, p<0.0001, n = 139) compared to BD FACS. Similar results were observed for PIMA operated by clinicians in one urban (n = 117) and two rural clinics (n = 98). Using internal control beads, PIMA precision was 10.34% CV (low bead mean 214.24 cells/µl) and 8.29% (high bead mean 920.73 cells/µl) and similar %CV results were observed external quality assurance (EQA) and replicate patient samples. Dynal did not perform using EQA and no internal controls are supplied by the manufacturer, however duplicate testing of samples resulted in r(2) = 0.961, p<0.0001, mean bias =  -1.44 cells/µl. Using the cut-off of 350 cells/µl compared to BD FACS, PIMA had a sensitivity of 88.85% and specificity of 98.71% and Dynal 88.61% and 100%. A total of 0.44% (2/452) of patient samples were misclassified as "no treat" and 7.30% (33/452) "treat" using PIMA whereas with Dynal 8.91% (9/101) as "treat" and 0% as "no treat". In our setting PIMA was found to be accurate, precise and user-friendly in both laboratory and clinic settings. Dynal performed well in initial centralized laboratory evaluation, however lacks requisite quality control measures, and was technically more difficult to use, making it less suitable for use at lower tiered laboratories.

Entities:  

Mesh:

Year:  2014        PMID: 25426710      PMCID: PMC4245096          DOI: 10.1371/journal.pone.0112173

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

In 2004, PNG became the fourth country in the Asia Pacific region to declare a generalised HIV epidemic, with the highest prevalence of HIV (1.3% in 2007) in the Oceania region [1]. Although data recently reported by the PNG National Department of Health (NDOH) in 2010 indicate a modest decline in the prevalence rate (0.92%), the number of new infections continues to increase, particularly in rural and remote areas where services are weakest [2]. The roll out of ART needs to be synchronized with increased access to CD4 cell count testing. Currently in PNG, it is estimated that less than 30% of HIV positive individuals who need regular testing have access to centralized CD4 [3]. CD4 cell count testing is a major determinant of ART eligibility among adults and is recommended by the World Health Organization (WHO) for monitoring all HIV positive patients globally, when viral load testing is unavailable and for assessing co-infections [4]. The need for expensive and sophisticated instruments, highly trained staff and fresh whole blood can limit access to CD4 testing beyond centralised laboratory services. Long turn-around time for results from centralised CD4 testing can result in a significant loss to follow-up of patients, especially in settings where patients travel long distances to access health services [5], [6], [7], [8]. In PNG, flow cytometric CD4 testing (BD FACS) has been significantly hampered by widespread problems including regular optics fluidics malfunctions linked to power failures, poor sample quality, poor laboratory climate control and incomplete maintenance. In addition, cold chain logistics to transport reagents and samples from rural settings to provincial laboratories is challenging. Collectively this has resulted in reduced test result quality, poor access and significant loss to follow up of patients. In the last few years, the market landscape for CD4 testing has been rapidly changing to address many of these challenges commonly experienced in RLS. Alternative, low-cost tests that circumvent the need for expensive, sophisticated equipment have emerged for use both in lower tier laboratories and at the point of care [9]. One such assay, the Dynabeads T4 Quant Kit (Dynal), (Life Technologies, Melbourne, Australia) assay requires only a microscope making it suitable for lower tiered laboratories. The Dynal assay has been validated in field settings in India, West Africa and Fiji and has been used for clinical monitoring in countries including Kenya, Indonesia, India and Fiji [10], [11]. Newer approaches to CD4 testing however have focussed on developing point of care (POC) CD4 tests that can be used in remote, rural clinical settings where the majority of HIV positive individuals reside. It has been demonstrated that availability of a CD4 test result at the same time as HIV testing significantly increases ART initiation rates [12], [13], [14]. Although several POC CD4 platforms, all requiring some form of instrument, have emerged on the market, there is currently only one WHO prequalified CD4 test available: the PIMA (Alere, Brisbane, Australia) [15]. PIMA does not require cold chain logistics, manual sample processing, or maintenance and can be performed by an operator with limited technical skills. The cost of the portable device will vary but is approximately USD 8000, and runs for up to eight hours from a rechargeable battery. PIMA provides a rapid result turn-around time (less than 20 minutes), however only one patient sample can be processed at a time. There have been a number of evaluation studies of the PIMA test in both developed laboratory and field settings using blood obtained by venepuncture or finger prick showing excellent correlation with flow cytometry results [16], [17], [18], [19], [20], [21], [22], [23], [24], [25]. The purpose of this study was to carry out pre-implementation field evaluations of low cost CD4 technologies. We selected a robust low-tiered laboratory test, the Dynal assay and a POC test, the PIMA. We assessed the performance both assays (accuracy and precision) using venous blood in field laboratories compared to flow cytometry. We also graded the tests according to operational characteristics (cost, ease of use, result turn-around time and performance in external quality assurance). In addition, we assessed the performance of the PIMA in remote clinical settings.

Methodology

Study participants and blood specimens

HIV positive, adult participants were recruited from one urban (Heduru HIV clinic at Port Moresby General Hospital, Port Moresby, n = 139) and two rural clinics (Asaro District Health Centre and Kainantu Rural Hospital both in the rural PNG n = 98). In order to ensure a range of CD4 count results, equal numbers of HIV positive patients on ART and HIV positive patients immediately prior to commencement of ART were enrolled simultaneously (CD4 count range of study participants: 25–1157 cells/µl). Participants provided written informed consent for collection of venous blood for analysis of CD4. Inclusion criteria included written clinic records of an HIV positive diagnosis and age >18 years. TB or other co-infection information was not collected. Approximately 5 ml of venous blood was collected from each patient into K3-EDTA vacutainer tubes; samples were tested for CD4 count within six hours of collection. This study was approved by the Papua New Guinean Research Advisory Committee and the Medical Research Advisory Committee (RAC Approval Number RES08 0015 and MRAC Approval Number 10.28).

CD4 enumeration

Five PIMA were used in the study, located at one of the above clinics (n = 3) as well as one at the urban reference laboratory (Central Public Health Laboratory, Port Moresby), and one at a rural laboratory (Goroka Pathology Laboratory, Goroka General Hospital). At each site laboratory or clinical staff were trained for one day in the operation of the PIMA according to manufacturer instructions and provided with training aides and training in clinical workflow for point of care testing. A designated study laboratory technician was present during the duration of the study period at each testing site to supervise specimen testing, data entry and quality assurance. For the PIMA CD4 testing, 25 µl samples of fresh whole venous blood was loaded onto the PIMA reagent cartridges using EDTA treated capillary tubes. The PIMA cartridge was capped immediately and loaded into the PIMA within 5 minutes for processing. Precision of test results was measured by performing the PIMA test in duplicate/replicate on patient samples. In order to assess whether there was a difference between the accuracy of testing performed by laboratory technicians and clinicians, the same samples were tested using PIMA operated by laboratory technicians and clinicians in both urban and rural settings to compare the similarity of results obtained. To assess the accuracy of PIMA results in comparison with the predicate method, the same blood samples were also tested in the laboratory using BD FACS. Here, 50 µl of fresh whole venous blood was added to the BD FACS CD4/CD3 reagent tube and the fix/no lyse protocol was followed according to manufacturer's instructions. Separate samples (each 125 µl) were tested in duplicate using the Dynal Quant T4 assay (Dynal, Compaiegne, France) according to the manufacturer's instructions as well as by BD FACSCount system (BD Biosciences, Brisbane, Australia) to assess accuracy.

Quality control

Internal control beads (low and normal) supplied by the manufacturers (Alere and BD FACS) were run daily for their respective assays at each testing facility (laboratories and clinics) prior to testing of patient specimens. No internal controls were available for the Dynal assay. Control bead data were stored on the hard drive of each machine and analysed for performance throughout the duration of the study to determine the mean, standard deviation and percentage coefficient of variation (%CV). An external quality assurance (EQA) panel of two stabilized whole blood specimens provided by the Public Health Agency of Canada, Quality Assurance Scheme for Immunology (QASI) was assessed using each of the three CD4 tests [26]. Each EQA specimen was tested repetitively (n = 19 and 20) to determine the mean, standard deviation and percentage coefficient of variation for each EQA specimen. EQA specimens were also compared to the global consensus value provided by the QASI organiser.

Statistical Analysis

All statistical analysis was carried out using Prism software, version 5.0d. Accuracy, bias and limits of agreement (LOA) of the technique was assessed by comparing the absolute CD4 count values obtained using the PIMA and Dynal compared to the predicate method (BD FACS) using Bland Altman [27] and linear regression analyses was used to calculate the correlation coefficient (r2). Mann-Whitney tests were used to test for significant differences between the two techniques. Precision of results using the PIMA was assessed by calculating the percentage coefficient of variation (%CV) and mean difference.

Results

Quality Assurance and precision of the PIMA

The performance of PIMA using manufacture-provided internal control beads when performed by either laboratory or clinical staff at each of the five sites was assessed with resulting a mean coefficient of variation of 10.34% (low beads mean = 214.24 cells/µl and 8.29% (normal beads mean = 920.73 cells/µl (Table 1A). Precision was also assessed by testing replicates (n>19) EQA panels samples (provided by QASI) resulting in similar coefficient of variations (intra-operator variability) 12.24%, sample mean = 165.63 cells/µl and 7.59%, sample mean 383.21 cells/µl Table 1B). Reproducibility of PIMA was also assessed by running a proportion of the specimens in duplicate (n = 29) with resulting coefficient of variation (intra-operator variability) = 5.25%, sample mean = 272.75 cells/µl compared to the predicate method (n = 20) which resulted in a coefficient of variation (intra-operator variability) = 7.29%, sample mean 275.90 cells/µl (Table 1C).
Table 1

Quality Assurance and precision of PIMA.

A.Low BeadsNormal BeadsB.Sample 1Sample 2
n1920
Site 1 Urban Laboratory Mean ± SD 165.63±20.28383.21±29.09
n 2019 % CV 12.247.59
Mean ± SD 218.10±15.42852.32±59.49 BD FACS (n = 2) 171381
% CV 15.426.98 QASI 153374
Site 1 Urban Clinic
n 1721 C. BD FACS PIMA
Mean ± SD 222±19.51898.76±89.22 n 2029
% CV 8.799.93 Mean ± SD 272.75±14.14275.90±17.04
Site 3 Rural Laboratory % CV 5.257.29
n 1515 P value 0.9570.882
Mean ± SD 216.6±23.47955.07±85.47
% CV 10.838.95
Site 5 Rural Clinic 1
n 1113
Mean ± SD 226.5±12.92993.58±83.24
% CV 5.78.38
Site 5 Rural Clinic 2
n 1010
Mean ± SD 188±20.62903.90±65.30
% CV 10.977.22

A. Internal Quality control using manufacturer provided bead standard controls Normal (mean 957, range 670–1244 cells/µl) and Low (mean 192, range 132–252 cells/µl). (Site 1: Urban Laboratory, Site 2: Urban Clinic, Site 3: Rural Laboratory, Site 4: Rural Clinic, Site 5: Rural Clinic). B. QASI External Quality Assurance Panel each sample tested in replicate by a single laboratory technician at the reference laboratory, Central Public Health Laboratory (CPHL). C. Assessment of assay precision using replicates from the same blood sample run in duplicate by a single laboratory technician. n = sample size,

B. SD = standard deviation, CV = coefficient of variation, QASI = Quality Assurance Scheme for Immunology (Public Health Agency of Canada).

A. Internal Quality control using manufacturer provided bead standard controls Normal (mean 957, range 670–1244 cells/µl) and Low (mean 192, range 132–252 cells/µl). (Site 1: Urban Laboratory, Site 2: Urban Clinic, Site 3: Rural Laboratory, Site 4: Rural Clinic, Site 5: Rural Clinic). B. QASI External Quality Assurance Panel each sample tested in replicate by a single laboratory technician at the reference laboratory, Central Public Health Laboratory (CPHL). C. Assessment of assay precision using replicates from the same blood sample run in duplicate by a single laboratory technician. n = sample size, B. SD = standard deviation, CV = coefficient of variation, QASI = Quality Assurance Scheme for Immunology (Public Health Agency of Canada).

Urban and rural performance of the PIMA compared to the BD FACS

We assessed the accuracy of the PIMA using venous blood on five devices; one located in an urban laboratory, one in an urban clinic, one in a rural laboratory and two in rural clinics. In both laboratories, each blood specimen was also tested using BD FACS. The PIMA results in both urban and rural laboratory settings run by a single laboratory technician at each site were compared to the predicate method in each case using linear regression analysis (CPHL n = 139, mean = 330.60 cells/µl, r2 = 0.964, p<0.0001 and GGH n = 98, mean = 383.24 cells/µl, r2 = 0.967, p<0.0001) Figure 1 (A & C) and Bland-Altman analysis indicated a mean bias of −22.43 cells/µl and −63.02 cells/µl in these respective laboratory settings (Figure 1 B & D).
Figure 1

Accuracy of PIMA compared to BD FACS.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A. and B. PIMA versus BD FACS both performed at an urban (reference) laboratory, by a single laboratory technician, C. and D. BD FACS versus PIMA both performed at the rural laboratory by a single laboratory technician, E. and F. BD FACS performed by laboratory technician at an urban laboratory PIMA versus PIMA performed by clinical staff at an urban clinic, G. and PIMA. BD FACS performed at by laboratory technician at a rural laboratory versus PIMA performed at two rural clinics by clinical staff.

Accuracy of PIMA compared to BD FACS.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A. and B. PIMA versus BD FACS both performed at an urban (reference) laboratory, by a single laboratory technician, C. and D. BD FACS versus PIMA both performed at the rural laboratory by a single laboratory technician, E. and F. BD FACS performed by laboratory technician at an urban laboratory PIMA versus PIMA performed by clinical staff at an urban clinic, G. and PIMA. BD FACS performed at by laboratory technician at a rural laboratory versus PIMA performed at two rural clinics by clinical staff. We also assessed the accuracy of PIMA devices when operated at urban and rural clinics by trained clinicians and compared the results to the predicate method performed at the referral laboratory. Linear regression analysis (Figure 1 E & G) resulted in a coefficient of determination (r2) of 0.967, p<0.0001, (n = 117, mean CD4 count = 323.65 cells/µl) at the urban clinic and r2 = 0.968, p<0.0001 (n = 98, mean CD4 count 390.44 cells/µl) at the two rural clinics. Bland-Altman bias analysis (Figure 1 F & H) indicated a mean bias of −46.42 and −55.83 cells/µl in these respective clinic settings. Using the cut-off of 350 cells/µl compared to BD FACS, PIMA had an overall sensitivity of 88.85% and specificity of 98.72% (Table 2A). The error rate for PIMA was recorded at the urban clinic and observed to be 5.13% (n = 6/117) and was comprised of operator/machine based errors described in more detail in Table S1. Using the CD4 cut off of 350 cells/µl [4], a total of 0.44% (2/452) of patient samples were misclassified as “no treat” (358 and 372 cells/µl respectively) and 7.30% (33/452) misclassified as “treat” using PIMA compared to the predicate method (Table 2A).
Table 2

Clinical Misclassification Analysis using PIMA and Dynal compared to BD FACS.

A.B.
1. Urban Laboratory PIMA BD FACS PIMA Delta
<350 >350 Total 1. Urban Lab 323 370 47
BD FACS <350 85186355305−50
>350 35053369333−36
Total 8851139433347−86
Sensitivity 96.5998.04 Specificity 2. Urban Clinic 333 383 50
413342−71
2. Urban Clinic PIMA 359205−154
<350 >350 Total 398342−56
BD FACS <350 58159392203−189
>350 144458356303−53
Total 7245117355274−81
Sensitivity 80.5697.78 Specificity 361253−108
477283−194
3. Rural Laboratory PIMA 438302−136
<350 >350 Total 590293−297
BD FACS <350 60060397331−66
>350 83038449342−107
Total 683098465151−314
Sensitivity 88.24100.00 Specificity 433344−89
3. Rural Lab 433347−86
4. Rural Clinics PIMA 413343−70
<350 >350 Total 412340−72
BD FACS <350 60060354324−30
>350 83038376154−222
Total 683098410343−67
Sensitivity 88.24100.00 Specificity 421315−106
369297−72
Total All PIMA PIMA 4. Rural Clinics 433344−89
<350 >350 Total 413344−69
BD FACS <350 2632265452331−121
>350 33154187376297−79
Total 296156452354338−16
Sensitivity 88.8598.72 Specificity 397218−179
369264−105
350246−104
Dynal Urban Laboratory Dynal BD FACS Dynal Delta
<350 >350 Total Dynal Urban Lab 405312−93
BD FACS <350 70070494315−179
>350 92231526328−198
Total 7922101377231−146
Sensitivity 88.61100 Specificity 382305−78
405305−100
501316−185
359284−75
397301−96

A. 2×2 Tables CD4 count compared to BD FACS clinical misclassification using 350 cells/µl cut off for determination of ART Eligibility at each site and total for PIMA 1,2,3,4 and Dynal 5. B. BD FACS and PIMA CD4 count results for misclassified samples from each site 1,2,3,4 and 5. Dynal. Values in bold font indicate samples misclassified by PIMA as non-treat (<350 cells/µl) and values in normal font indicate those samples misclassified by PIMA or Dynal as treat (<350 cells/µl).

A. 2×2 Tables CD4 count compared to BD FACS clinical misclassification using 350 cells/µl cut off for determination of ART Eligibility at each site and total for PIMA 1,2,3,4 and Dynal 5. B. BD FACS and PIMA CD4 count results for misclassified samples from each site 1,2,3,4 and 5. Dynal. Values in bold font indicate samples misclassified by PIMA as non-treat (<350 cells/µl) and values in normal font indicate those samples misclassified by PIMA or Dynal as treat (<350 cells/µl).

Comparison of laboratory and clinical operator performance using the PIMA

We also compared the results obtained by PIMA operators with different levels of professional training (laboratory technicians versus clinician in both urban and rural centres i.e. inter-operator variability) and performed analysis using linear regression and Bland-Altman bias analysis. In the urban settings, the coefficient of determination (r2) was 0.928, p<0.0001 (n = 68) with a mean bias of −25.59 cells/µl towards laboratory testing (Figure 2 A & B). The same analyses of results obtained in the rural laboratory and rural clinics resulted in a coefficient of determination (r2) of 0.945, p<0.0001 (n = 98) and mean bias towards laboratory testing of −7.194 cells/µl) (Figure 2 C & D).
Figure 2

Operator Precision of PIMA testing.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A and B PIMA 1 operated by laboratory technicians at an urban (reference) laboratory, versus PIMA 2 operated by clinicians at an urban clinic, C and D PIMA 1 operated by laboratory technicians a rural laboratory compared to PIMA 2 operated by clinicians at 2 rural clinics.

Operator Precision of PIMA testing.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A and B PIMA 1 operated by laboratory technicians at an urban (reference) laboratory, versus PIMA 2 operated by clinicians at an urban clinic, C and D PIMA 1 operated by laboratory technicians a rural laboratory compared to PIMA 2 operated by clinicians at 2 rural clinics.

Performance of the Dynal assay compared to the BD FACS

The performance of the Dynal assay was assessed for accuracy at the urban reference laboratory compared to the predicate method (BD FACS) using linear regression and Bland Altman analysis. The mean CD4 count for the samples tested was 227.36 cells/µl, n = 101 and the coefficient of determination (r2) was 0.973, p<0.0001 with a mean bias = −50.35 cells/µl towards Dynal. (Figure 3 A & B). Precision was not assessed using the Dynal assay using EQA samples or internal controls as EQA panels would not be successfully testing using the Dynal assay and no internal controls are provided by the manufacturer. Reproducibility was measured by running all samples twice with the same operator and resulted in a coefficient of repeatability of r2 = 0.961, p<0.0001, a mean bias = −1.44 cells/µl. A total of 8.91% (9/101) were misclassified as “treat” and no patient samples were misclassified as “no treat” using the Dynal assay compared to the predicate method (Table 2A). Using the cut-off of 350 cells/µl compared to BD FACS, Dynal had a sensitivity of 88.61% and a specificity of 100%.
Figure 3

Accuracy and Precision of Dynal assay.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A. and B. Dynal accuracy versus BD FACS in urban (reference) laboratory C. and D. Precision of measurements using the Dynal assay performed in duplicate by the same laboratory technician in urban (reference) laboratory.

Accuracy and Precision of Dynal assay.

Linear regression analysis plots (right column) and Bland Altman bias plots (left column) with upper and lower 95% limits of agreement (LOA) shown as broken lines and mean bias shown as an unbroken line. A. and B. Dynal accuracy versus BD FACS in urban (reference) laboratory C. and D. Precision of measurements using the Dynal assay performed in duplicate by the same laboratory technician in urban (reference) laboratory.

Operational Characteristics

In our urban setting we assessed several operational characteristics of the assays including cost, throughput, time for processing, result turn-around time, technical difficulty, operator skill, equipment, reagents, sample and cold chain requirements, technical problems, electricity requirement, suitability with EQAS, internal control provisions. Although PIMA was more expensive than Dynal for initial equipment costs, running costs were comparable between PIMA and Dynal (USD 8 and 10 respectively). Dynal required additional reagents and buffers to be made up, whereas no additional buffers or reagents were required for PIMA. The average throughput per day was lower for Dynal than PIMA in our setting (mean 5 and 15 in an 8 hour day respectively). Eye fatigue associated with long microscope time and long preparation time (23 steps) were the rate-limiting steps associated with performing Dynal, whereas PIMA required only 4 steps with minimal complexity for processing. The turn-around time for results to get to patients was significantly shorter for PIMA than Dynal due to the fact that results were available within 20 minutes at the clinic for PIMA, whereas samples had to be referred to the laboratory for processing using Dynal and patients had to return to the clinic for results. Dynal was found not to be suitable for EQAS in our setting and the kit does not contain internal controls whereas PIMA performed well with EQAS and the kit included reagent internal controls as well as separate bead controls.

Discussion

This study was the first of its kind in the Asia Pacific region to evaluate point of care CD4 technologies in rural and remote field laboratory and clinic settings. In our setting, we were able to reproduce the accuracy and precision of PIMA CD4 testing previously reported only in controlled, developed laboratory settings in this region [18]. Staff from clinics have a basic level of clinical training operation with some recent experience using the rapid point of care tests for HIV diagnosis, however regardless of the operator skill level, we observed excellent correlation at all sites evaluated. Evidence from evaluation and implementation of PIMA in Africa indicated a relatively high error rate (>10% in South Africa [21] and 8.1% in Uganda [17]). It is possible that we may have seen a greater errors (5.12% in our setting) and misclassification if we had used finger prick sampling rather than venous blood. Glencross et al, 2012 observed unacceptable precision using capillary blood collection (mean SIM CV 28.4% compared to predicate testing [21]. Mwau et al and Diaw et al also reported decreased sensitivity and specificity of PIMA when capillary blood was used compared to venous blood [19], [20]. Therefore in this study and in the implementation of PIMA in PNG, venous blood was used as the specimen of choice to ensure quality of test results and to build on existing strong venous blood specimen collection practices in country. The demand for using finger prick is growing in PNG in light of the roll out of POC rapid testing for HIV diagnosis, which also uses finger prick sampling. Others have reported the coupling of HIV rapid testing with POC CD4 testing can lead to improved accuracy, likely due to the fact that health care workers in these settings are highly skilled and experienced in collecting finger prick specimens [24]. Therefore it will be important to evaluate the accuracy of finger prick sampling in PNG to assess its applicability in our setting. Since this evaluation of point of care CD4 testing in PNG, PIMA was prequalified by the WHO in 2010 [15] prompting its approval for use in PNG by the National Department of Health, who, together with partners, have begun implementation of PIMA at 33 sites nationally. Many lessons can be shared from the implementation, including the adoption of key site selection criteria assessments to ensure optimal operation of PIMA in the national testing program. Assessments should include availability of reliable electricity, provision of ART on-site (ideally) or by referral systems, adequate staff volume and capacity, lack of or inadequate access to CD4 testing (geographically or long turn-around times), and sites that require rapid CD4 results such as antenatal clinics or VCT sites. Centrally coordinated standardised clinician training, certification, supervisory site visits, and data collection are critical components in the successful implementation of POC CD4 testing in such a setting. In addition, as with all POC testing, the need for quality management [6], including participation in EQAS [28] and data management, cannot be overstated. Although comparatively inexpensive, any POC test using equipment is subject to breakdown, highlighting the importance for technical engineering support for PIMA implementation in rural settings or for the implementation of tests that require no instrumentation. We observed that the Dynal assay performed well in a centralised laboratory in the PNG context. However, the assay requires a relatively high level of skill for operation including competency in microscopy, reliable refrigeration and freezers are required for reagent storage and a functional microscope and assay specific equipment are required. The Dynal assay is relatively time consuming compared to other CD4 assays due to the manual preparation and cell counting required and therefore is not suited to a high throughput laboratory setting with an upper limit in our clinic/lab setting of five patients per day. In addition, Dynal was found to be unsuitable for use with the External Quality Assurance Scheme (EQAS) specimens from the Canadian Quality Assurance Scheme for Immunology (QASI), due to the fact that QASI samples are whole blood that is stabilized during preparation, the binding site of cell surface proteins targeted by anti-CD4 monoclonal antibodies used in the Dynal kit is altered yielding no result. This makes the use of the Dynal assay in routine diagnostics less ideal. Neither Dynal nor PIMA delivers results in terms of percentage, making neither test ideal for the care of HIV infected children under five. The new BD FACS software however allows both absolute count and CD4 percent which also sets a new benchmark which it is hoped point of care technologies will follow. The PIMA test however is low cost and requires only low technology equipment and may therefore be useful in low throughput, low resource research laboratories as others have indicated [11], [19]. Whilst still currently dominated by laboratory-based testing, the current market for CD4 monitoring is shifting towards increased POC testing. The wider use of POC tests is likely to have a dramatic effect on HIV clinical management in RLS and particularly for those living in remote rural areas where access to laboratory testing is non-existent or limited. Studies in Africa have demonstrated that POC CD4 testing reduces loss to follow up, cuts time to initiation of ART and increases the rate of ART initiation from 33% to 64% [13]. The findings of this and similar studies can inform programs in countries in other RLS and help provide access to appropriate and accurate CD4 testing. Comparison of Operational Characteristics CD4 assays assessed in this study. Characteristics associated with operation of the three CD4 assays were assessed during the study period at the urban laboratory (BD FACS and Dynal) and urban clinic (Pima). Costs (USD-United States dollars) are approximate based on local costing for supply in Papua New Guinea at the time of the study and may vary according to volume and country of supply. The throughput per day and results turn-around time was based on data collected during the study period assessed retrospectively and reflect the normal urban clinic and laboratory work flow according to the number of staff available to process samples in this setting and existing results reporting mechanisms and time frames. The errors observed using Pima included the following error codes observed in the urban clinic during n = 117 tests; Invalid test error 850 (n = 1), Gaiting error 940 (n = 2), Channel filling error 810 (n = 2), Volume error, 201 (n = 1) These results are representative of error rates and types observed at all sites where Pima was used in this study. EQAS = External Quality Assurance Scheme, assessed the use of EQAS panels supplied by QASI (Quality Assurance Scheme for Immunology) EQAS program provided free of charge by the Canadian Public Health Agency. (DOCX) Click here for additional data file.
  21 in total

1.  Decentralization of CD4 testing in resource-limited settings: 7 years of experience in six African countries.

Authors:  F Marinucci; S Medina-Moreno; A D Paterniti; M Wattleworth; R R Redfield
Journal:  Cytometry A       Date:  2011-04-14       Impact factor: 4.355

2.  Advances in CD4 cell enumeration in resource-poor countries.

Authors:  Linda L Baum; Suzanne Crowe; Alan L Landay
Journal:  Curr Opin HIV AIDS       Date:  2007-05       Impact factor: 4.283

3.  Viewpoint: Why do we need a point-of-care CD4 test for low-income countries?

Authors:  R Zachariah; S D Reid; P Chaillet; M Massaquoi; E J Schouten; A D Harries
Journal:  Trop Med Int Health       Date:  2010-11-02       Impact factor: 2.622

4.  Statistical methods for assessing agreement between two methods of clinical measurement.

Authors:  J M Bland; D G Altman
Journal:  Lancet       Date:  1986-02-08       Impact factor: 79.321

5.  Performance evaluation of the Alere PIMA CD4 test for monitoring HIV-infected individuals in resource-constrained settings.

Authors:  Kasama Sukapirom; Nattawat Onlamoon; Charin Thepthai; Korakot Polsrila; Boonrat Tassaneetrithep; Kovit Pattanapanyasat
Journal:  J Acquir Immune Defic Syndr       Date:  2011-10-01       Impact factor: 3.731

6.  Evaluation of PIMA point-of-care CD4 testing in a large UK HIV service.

Authors:  Sophie Herbert; Simon Edwards; Gina Carrick; Andrew Copas; Christopher Sandford; Marc Amphlett; Paul Benn
Journal:  Sex Transm Infect       Date:  2012-04-27       Impact factor: 3.519

7.  Rapid point-of-care CD4 testing at mobile HIV testing sites to increase linkage to care: an evaluation of a pilot program in South Africa.

Authors:  Bruce A Larson; Kathryn Schnippel; Buyiswa Ndibongo; Thembisile Xulu; Alana Brennan; Lawrence Long; Matthew P Fox; Sydney Rosen
Journal:  J Acquir Immune Defic Syndr       Date:  2012-10-01       Impact factor: 3.731

8.  Evaluation of PIMA™® point of care technology for CD4 T cell enumeration in Kenya.

Authors:  Matilu Mwau; Ferdinard Adungo; Silvia Kadima; Ephantus Njagi; Carolyne Kirwaye; Najma Salim Abubakr; Lucy Atsieno Okubi; Mary Waihenya; Judi Lusike; Jackson Hungu
Journal:  PLoS One       Date:  2013-06-25       Impact factor: 3.240

9.  Evaluation of portable point-of-care CD4 counter with high sensitivity for detecting patients eligible for antiretroviral therapy.

Authors:  Yukari C Manabe; Yaping Wang; Ali Elbireer; Brandon Auerbach; Barbara Castelnuovo
Journal:  PLoS One       Date:  2012-04-19       Impact factor: 3.240

10.  Performance evaluation of the Pima™ point-of-care CD4 analyser using capillary blood sampling in field tests in South Africa.

Authors:  Deborah K Glencross; Lindi M Coetzee; Mamsallah Faal; Martin Masango; Wendy S Stevens; Wd Francois Venter; Regina Osih
Journal:  J Int AIDS Soc       Date:  2012-01-30       Impact factor: 5.396

View more
  5 in total

Review 1.  Human Genetic Variation and HIV/AIDS in Papua New Guinea: Time to Connect the Dots.

Authors:  Rajeev K Mehlotra
Journal:  Curr HIV/AIDS Rep       Date:  2018-12       Impact factor: 5.071

2.  "Can't you initiate me here?": Challenges to timely initiation on antiretroviral therapy among methadone clients in Dar es Salaam, Tanzania.

Authors:  Haneefa T Saleem; Dorothy Mushi; Saria Hassan; R Douglas Bruce; Alexis Cooke; Jessie Mbwambo; Barrot H Lambdin
Journal:  Int J Drug Policy       Date:  2015-12-19

3.  Errors generated by a point-of-care CD4+ T-lymphocyte analyser: a retrospective observational study in nine countries.

Authors:  Emmanuel Fajardo; Carol Metcalf; Erwan Piriou; Monique Gueguen; David Maman; Pascale Chaillet; Vivian Cox; Maryam B Rumaney; Syanness Tunggal; Cara Kosack; Teri Roberts
Journal:  Bull World Health Organ       Date:  2015-06-25       Impact factor: 9.408

4.  Performance of point-of-care CD4 testing technologies in resource-constrained settings: a systematic review and meta-analysis.

Authors:  Minh D Pham; Paul A Agius; Lorena Romero; Peter McGlynn; David Anderson; Suzanne M Crowe; Stanley Luchters
Journal:  BMC Infect Dis       Date:  2016-10-21       Impact factor: 3.090

5.  Factors Influencing Antiretroviral Adherence and Virological Outcomes in People Living with HIV in the Highlands of Papua New Guinea.

Authors:  Janet Gare; Angela Kelly-Hanku; Claire E Ryan; Matthew David; Petronia Kaima; Ulato Imara; Namarola Lote; Suzanne M Crowe; Anna C Hearps
Journal:  PLoS One       Date:  2015-08-05       Impact factor: 3.240

  5 in total

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