| dc.description.abstract |
Effective viral load (VL) sample management is critical for reliable laboratory
monitoring, timely clinical decision-making, and improved patient outcomes. Viral
load testing is essential for effective HIV management; however, in Machakos
County, Kenya, persistent gaps in sample handling, processing, and transportation
have led to rejection rates exceeding 2% annually, peaking at 6.28% in 2023.
Hemolysis is the leading cause of rejection, delaying patient care and compromising
result reliability. Limited local research has examined the operational factors
contributing to these challenges. This study aimed to establish management practices
associated with viral load sample collection among healthcare practitioners in selected
health facilities in Machakos County. A mixed-methods convergent parallel design
was employed, integrating quantitative and qualitative approaches. The study was
conducted in public and private health facilities across Machakos County, Kenya,
including four viral load hub sites Machakos Level 5, Matuu Level 4, Athi River
Level 4, and Kangundo Level 4 hospitals and their 71 satellite facilities. A total of
205 healthcare practitioners involved in VL sample collection, storage, and
transportation participated, representing a 94.04% response rate. Quantitative data
were collected through questionnaires while qualitative data were gathered using
semi-structured interviews. Quantitative data were analyzed using descriptive
statistics, Fisher’s Exact Test, odds ratios, and multivariate logistic regression, with
model assumption checks performed. Predictive modeling compared logistic
regression, random forest, gradient boosting, and support vector machine (SVM)
algorithms to identify factors influencing sample management effectiveness.
Qualitative data were analyzed thematically using NVIVO version 12, following a
six-step framework, and integrated with quantitative findings through triangulation.
Ethical approval was obtained from the Kenya Medical Research Institute Scientific
and Ethics Review Unit (KEMRI-SERU), and informed consent was obtained from
all participants. Participation was voluntary, and confidentiality was maintained
throughout the study. Quantitative results revealed a significant association between
documentation quality and sample management effectiveness (p = 0.01). Training on
sample collection showed a weaker, non-significant association with compliance (p >
0.05), indicating that training alone may be insufficient without robust compliance
monitoring. Logistic regression achieved the highest predictive accuracy, identifying
significant predictors such as training on sample collection (β = -0.35, p = 0.02),
barriers to effective management (β = 0.25, p = 0.07), and quality assurance practices
(β = 0.15, p = 0.25). Qualitative findings indicated that the majority of participants
reported persistent challenges, including inadequate training, insufficient equipment
maintenance, inconsistent documentation, reliance on informal skills transfer, and
poor calibration of temperature monitoring devices. Several participants emphasized
that without consistent quality assurance protocols, training initiatives have limited
long-term impact. The study concludes that effective VL sample management
requires a combination of structured training, regular equipment calibration, and
rigorous quality assurance monitoring. It recommends that the county government
prioritize standardized training programs, enforce equipment maintenance schedules,
and strengthen quality assurance systems to enhance VL sample management
outcomes |
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