Strengthening Health Systems for Quality Health Care: A Study of Misdiagnosis among Hospitalised Patients in General Hospitals in Uganda
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University of Ghana
Abstract
Background: Achieving high-quality healthcare that is safe, effective, efficient, patient-centered,
timely, and equitable necessitates a systemic approach. Not many countries, particularly in sub Saharan Africa, including Uganda optimally achieve this. Poor quality of healthcare characterized
by inappropriate treatments, medical errors and poor outcomes has often resulted from patient
misdiagnosis. An estimated 5-15% of hospitalized patients globally, are misdiagnosed posing a
significant barrier to quality and safe healthcare. Misdiagnosis is particularly concerning in such
resource-constrained healthcare systems as that of Uganda, where it can hinder progress towards
attaining universal healthcare coverage. This study, therefore, was conducted with a general
objective of establishing the prevalence of patient misdiagnosis and factors contributing to
misdiagnosis among hospitalized patients in general hospitals in Uganda. The ultimate goal is to
provide information that can contribute to strengthening healthcare systems for quality
healthcare delivery.
Methods: The study used an explanatory mixed-method cross-sectional research design,
collecting both quantitative and qualitative data, to examine misdiagnosis in Kiboga, Nakaseke,
Gombe, Kayunga, and Mityana general hospitals. Stratified and simple random sampling
techniques were used to sample the medical records, ensuring representativeness. Stratified
random sampling considered the hospital of admission, the patient's age, and their gender to ensure
a balanced representation. As part of this method, proportional allocation was used for comparable
sample sizes, including children aged 0–9 and those over 10 years old. An allocation of 50%
between males and females promoted balanced comparisons across genders, an essential factor in
research that evaluates conditions or treatments. Records of 2,431 patients admitted between July 1, 2019 and June 30, 2020 were analyzed to
determine the proportion of misdiagnosed patients. The original diagnosis assigned by the clinician
or diagnostician was compared to the diagnosis confirmed by a medical officer or physician on the
ward. Misdiagnosis was categorized into four levels of Class I; Class II, Class III, and Class IV
guided by the International Classification of Diseases version eleven (ICD-11). The Pareto
principle was used to identify the most common misdiagnosed diseases and major diagnostic
groupings. Logistic regression was used to analyze the factors associated with misdiagnosis, with
significant variables with a p-value of ≤0.05 and their adjusted odds ratios considered as
independently associated factors. In-depth interviews were conducted with eight clinical officers
and seven medical officers to provide insights into the phenomenon of misdiagnosis in the
hospitals. The qualitative analysis employed a deductive thematic approach, with data analyzed
manually and the identified themes systematically aligned with the health system building blocks,
as well as the structure, processes, and outcomes of the Safer Diagnostic framework.
Results: The study observed that 9.2% (223 out of 2,431; 95% CI of 8.1-10.3%) of patients were
misdiagnosed, with 70.9% (158 out of 223) of these misdiagnosed patients classified as Class I,
indicating that the wrong diagnosis and the correct diagnosis belonged to different major
diagnostic groupings. Infectious or parasitic diseases (32%), digestive system diseases (12%),
circulatory system diseases (11%), endocrine, nutritional, or metabolic disorders (9%),
genitourinary system diseases (7%), respiratory system diseases (7%), and blood and blood forming organ diseases (5%), were the seven most misdiagnosed major diagnostic groupings.
Peptic ulcer disease, severe malaria, hypertension, gastroenteritis, and pneumonia were among the
most misdiagnosed diseases. Non-communicable diseases accounted for most misdiagnosed
conditions (82.9%). The multivariable logistic regression analysis revealed that variables associated with misdiagnosis
included; being admitted to Nakaseke hospital (1.95 times more likely; 95% CI =1.17-3.25, P=.01,
being admitted at night (3 times more likely; 95% CI=1.81-5.02, P<.001), being male (1.89 times
more likely; 95% CI=1.35-2.64, P<.001), being in the age group of 10 to 50 years and above (aOR
2.3; 95% CI=2.3-9.25, P<.001; aOR 8.15; 95% CI=4.18-15.89, P< .001; aOR 8.12; 95% CI=3.99-
16.54, P<.001; aOR 7.88; 95% CI=3.71-16.73, P<.001; aOR 12.14; 95% CI=6.41-23.01, P<.001).
Other variables associated with misdiagnosis included patients with multimorbidity (aOR 4.71;
95% CI=1.91-11.65, P<.001) and patients treated for uncommon diseases of admission to the
hospital (aOR 2.57 95% CI=1.28-5.18, P<0.001). On the other hand, patients without underlying
diseases were 37% less likely to be misdiagnosed (95% CI=0.43-0.91, P=0.015), and patients who
were not referred to the hospital were 49% less likely to be misdiagnosed compared to those who
were referred (95% CI=0.31-0.86, P=0.011).
The phenomenon of patient misdiagnosis, classification and associated factors is complex and was
explained by the diagnosticians, analyzed and presented through the lenses of Safer Diagnostic
Framework and health system building blocks. The issue of advancing age and its association with
misdiagnosis was explained to be due to complex or uncommon diseases in such age groups, which
clinicians are unfamiliar with compared to less complex and easy to diagnose diseases in children.
On the other hand, the high likelihood of misdiagnosis among male patients was due to their poor
healthcare-seeking behaviours, especially late reporting to the hospital when severely sick
complicating the diagnostic process, and by their unfamiliarity with healthcare systems.
Human resources for health issues contributing to misdiagnosis included inadequate healthcare
workforce numbersleading to work overload, shortfalls in training, and healthcare workers fatigue,
especially at night. Besides, other factors contributing to misdiagnosis cited included inadequate infrastructure, particularly laboratory and radiological examinations, and other diagnostic tools
and technology. Several organizational or hospital factors, including suboptimal nighttime service
arrangements, and the absence of a quality of care and safety culture, underscored the role of
leadership and governance play in misdiagnosis. Additionally, inadequate service delivery such as
lack of investigations and clinical support hamper appropriate diagnosis at night. Challenges in the
patient referral process from primary healthcare facilities to hospitals, including patients being
referred with incomplete referral notes, could contribute to the high risk of misdiagnosing referred
patients, among other factors.
Conclusion: Misdiagnosis in the general hospitals studied remains a significant quality of
healthcare and safety problem that has a complex and of multifactorial etiology; mostly attributable
to seven major diagnostic groupings and 19 diseases. While the prevalence fell within global
estimated ranges, it was concerning that most misdiagnoses were classified as Class I. The result
of the discovery of this misdiagnosis was that significant treatment changes were needed. In the
absence of any changes in patient management, especially if the misdiagnosis was not recognized,
a poor outcome would have resulted. Predispositions within the leadership and governance, service
delivery, medicines and health technologies, and human resources for health underpin the observed
misdiagnosis occurrence in this study. To enhance patient diagnosis and treatment outcomes,
health services planners, managers and implementers should prioritize this health system building
blocks, with particular focus on the 19 most commonly misdiagnosed conditions and major
diagnostic groups.
Description
PhD. Public Health
