Research Open Access | Volume 9 (2): Article  69 | Published: 29 Apr 2026

Healthcare decision-making in an African metropolis: Analysing determinants of health-seeking behaviour among Lagos residents

   Menu, Tables and Figures

Navigate this article

Table 1: Respondents’ sociodemographic characteristics

Table 2: Health status and health-seeking behaviours

Table 3: Acute illnesses experienced within the last 4 weeks

Table 4: Medical checkup and health insurance

Table 5: Relationship between sociodemographic characteristics and health-seeking behaviour of respondents

Table 6: Factors associated with appropriate health-seeking behaviour among respondents (n=2,042)

Keywords

  • UHC
  • Healthcare access
  • Healthcare utilisation
  • Health-seeking behaviour

Adeyinka Adeniran1, Kikelomo Ololade Wright1,2, Adedayo Ayodele Aderibigbe1,2,&, Olufunsho Akinyemi1,Temiloluwa Fagbemi2, Ayodeji Omoyeni2, Abiola Adepase3, Faith Oniyire4

1Department of Community Health and Primary Healthcare, Lagos State University College of Medicine, Nigeria, 2Centre for Reproductive Health Research and Innovation, Lagos State University College of Medicine, Ikeja, Nigeria, 3Lagos State Health Management Agency, Lagos, Nigeria, 4Lagos State Ministry of Health, Lagos, Nigeria

&Corresponding author: Adedayo Ayodele Aderibigbe, Department of Community Health & Primary Healthcare, Lagos State University College of Medicine, Lagos, Nigeria. Emailadebambo15@gmail.com. ORCID: https://orcid.org/0000-0002-0188-6937

Received: 29 Jan 2025, Accepted: 28 Apr 2026, Published: 29 Apr 2026

Domain: Medical Sociology

Keywords: UHC, healthcare access, healthcare utilisation, health-seeking behaviour

©Adeyinka Adeniran et al. Journal of Interventional Epidemiology and Public Health (ISSN: 2664-2824). This is an Open Access article distributed under the terms of the Creative Commons Attribution International 4.0 License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Cite this article: Adeyinka Adeniran et al., Healthcare decision-making in an African metropolis: Analysing determinants of health-seeking behaviours among Lagos residents. Journal of Interventional Epidemiology and Public Health. 2026; 9(2):69. https://doi.org/10.37432/jieph-d-26-00031

Abstract

Introduction:  Health-seeking behaviour includes the actions taken by individuals upon perceiving illness or health concerns, impacted by demographic, socio-economic, cultural, religious, and organisational factors. This study assessed the health-seeking behaviours of Lagos State residents and identified the determinants influencing these behaviours.
Method:  A descriptive cross-sectional survey was conducted with 2,492 respondents from four Local Government Areas in Lagos, Nigeria, using a multistage sampling technique between January and April 2023. Data were collected using pre-tested semi-structured questionnaires, and statistical analysis was performed in Stata 15.0. Significance was established at p<0.05, with adjusted odds ratios (aOR) and 95% confidence intervals calculated.
Results:  The study found that purchasing drugs from chemists (43.4%) was the most common health-seeking action, while only 33.7% sought hospital care when symptoms worsened. At multivariable analysis, females (aOR= 1.29; 95%CI: 1.28–3.73; p= 0.014) had higher odds of appropriate health-seeking behaviour compared to males. Higher income was also positively associated with appropriate health-seeking behaviour, with respondents earning ₦50,000–₦100,000 (aOR = 2.50; 95%CI:1.77-3.53, p < 0.001) and >₦100,000 (aOR = 4.00; 95%CI: 2.71-5.92, p < 0.001) more likely to exhibit appropriate behaviour compared to those earning <₦30,000. In contrast, occupation was associated with lower odds of appropriate health-seeking behaviour (aOR = 0.64; 95% CI: 0.58–0.71; p < 0.001). Similarly, better perceived health status was associated with reduced odds of appropriate health-seeking behaviour (aOR = 0.85; 95%CI: 0.51–0.85; p = 0.011). Conversely, the presence of morbidity significantly increased the likelihood of appropriate health-seeking behaviour (aOR = 1.64; 95%CI: 3.23–18.24; p < 0.001).
Conclusion: The study concluded that socio-economic/demographic characteristics, such as gender, income, occupation, and morbidity status, among others, significantly predict health-seeking behaviour; hence, targeted interventions are crucial to enhance healthcare utilisation in Lagos.

Introduction

Health-seeking behaviour refers to actions individuals take when they perceive themselves to be ill or have health concerns. It involves seeking suitable solutions or treatments. Decision-making in health-seeking behaviour is influenced by various factors, including individual and family behaviours, societal norms, and healthcare provider actions [1].

Accessing healthcare is a crucial issue for every society, as it involves complex behaviours that individuals, communities or groups exhibit. Various factors influence the decision to seek healthcare, and these include demographic, socioeconomic, cultural, religious, and organisational factors, among others. The interaction among these elements is critical in determining the ultimate selection of a healthcare option [2-4].

In developing nations, the structure of the healthcare system significantly impacts health-seeking behaviours as well as health outcomes. Factors such as illiteracy, poverty, and insufficient health sector funding play a crucial role in determining how individuals seek healthcare. Numerous barriers, such as the high cost of healthcare services, inadequate knowledge about diseases and overall well-being, as well as deeply rooted cultural norms, significantly impede both the demand for and the delivery of health services. These formidable challenges inherent within the healthcare system exert a profound influence on the health-seeking behaviours of the community.

In Nigeria, the funding of healthcare comes from a variety of sources, and the effectiveness of healthcare delivery is largely dependent on these funding methods. The financial support for healthcare services includes government taxation, direct payments by individuals, contributions from donors, and different forms of health insurance, including social and community-based schemes, with direct payments by individuals or out-of-pocket payments being the most dominant. Despite these diverse funding streams, Nigeria has not yet attained Universal Health Coverage [5-7].

Delaying or refusing to seek proper diagnosis and treatment increases the likelihood of adverse outcomes [8]. Despite the increase in the number of public, private, and non-governmental health facilities in Nigeria from 1980 to 2019, inappropriate health-seeking behaviour (such as seeking care from chemists, traditionalists, spiritualists, or self-medication) rose steadily from 46.7% in 2013 to 68.1% in 2019 [9]. Additionally, a study done in Ibadan, Nigeria, showed that 71% of rural dwellers and 53% of urban dwellers reported inappropriate health-seeking behaviour during their last episode of illness [9].  Also, a study conducted in Lagos concerning health-seeking behaviours among patients with malaria found that most individuals resorted to self-medication [7]. These findings highlight the weakness of the nation’s health-seeking behaviour.

Health-seeking behaviour may differ due to variations in sociodemographic and socio-cultural factors. Several pieces of literature have revealed that age influences health-seeking behaviour. Other factors such as gender, occupation, area of residence, distance to health facilities and marital status have also been identified as either facilitating or inhibiting health-seeking practices among individuals. Also, educational levels have been proven to play a significant role in health-seeking behaviour. Research findings have also shown that the decision to seek medical care is influenced by the severity of the illness. Specifically, unless individuals experience pain or their condition is severe, they tend not to seek medical attention [10, 11], and this may lead to poor health outcomes. A healthy population plays a crucial role in driving economic growth and enhancing overall productivity.

Numerous research works have explored the concept of health-seeking behaviours concerning different illnesses, as well as examining specific aspects of health-seeking behaviour, rather than capturing the multifaceted influences of complex factors on an individual’s health-seeking behaviour [10]. Yet, there is a paucity of comprehensive understanding regarding health-seeking behaviours among the general population. This study assessed the health-seeking behaviour as well as identified the determinants of health-seeking behaviours among Lagos State residents. Findings from this study will provide insights into the barriers, facilitators, and patterns that influence individuals’ willingness and ability to access and utilise healthcare services, enabling the development of tailored interventions, resource allocation strategies, and policies aimed at improving healthcare accessibility, promoting early detection, reducing health disparities, and ultimately enhancing the overall well-being of Lagos residents.

Methods

Study settings and conceptual framework
Lagos State is positioned in the southwestern coastal region of Nigeria; it extends over 180 kilometres along the Atlantic Ocean’s coastline. It is recognised as the most densely populated state in the country, with an estimated population of 21 million people and a growth rate of 4% to 8% annually. The state covers an area of 3,577 square kilometres, resulting in a population density of approximately 16,067 individuals per square kilometre. It consists of 20 Local Government Areas with about 2,000 communities. The State is flanked by Ogun State to the North and East, the Republic of Benin to the West, and the Atlantic Ocean to the South. Lagos State operates a three-tier healthcare delivery system comprising primary health centres (PHCs), secondary facilities (general hospitals), and tertiary institutions (teaching hospitals). The private sector accounts for a significant proportion of healthcare delivery, with numerous private hospitals, clinics, and pharmacies. Additionally, patent and proprietary medicine vendors (PPMVs), commonly referred to as chemists, are widely distributed across the state and serve as the first point of contact for many residents seeking care, particularly in underserved and rural communities.

This study is guided by the Andersen Behavioural Model of Health Services Use [11], which is widely applied in health services research to explain determinants of healthcare utilisation. The model states that health-seeking behaviour is influenced by three key domains: predisposing factors (e.g., age, gender, education), enabling factors (e.g., income, health insurance, access to services), and need factors (e.g., perceived health status, morbidity).

In this study, variables were selected and grouped according to this framework. Sociodemographic characteristics such as age, sex, marital status, and education were conceptualised as predisposing factors; income, occupation, and health insurance status as enabling factors; and perceived health status and presence of morbidity as need factors. This framework provides a structured basis for understanding how individual and contextual factors interact to influence health-seeking behaviour in the Lagos setting.

Study design and population
This cross-sectional study was conducted to assess health-seeking behaviour and its determinants among Lagos residents. Study participants include consenting individuals aged 18 years or above residing in Lagos State, Nigeria, at the time of the study. Exclusion criteria included individuals who had resided in Lagos State for less than six months, those who were too ill to participate, and visitors or temporary residents at the time of data collection.

Sample size calculation
The sample size determination was carried out using Fisher’s formula for a population greater than 10,000. The standard normal deviation of 1.96 was used along with the proportion of respondents who had sought medical care from a medical doctor in a previous study, which was 61%[13]. The minimum required sample size calculated was 402. However, this figure was then adjusted upwards to 603, assuming a design effect of 1.5. To further enhance the study’s statistical power, the sample size was increased to 750 per local government area (LGA). Consequently, with the selection of 4 LGAs for the study, the overall estimated sample size employed was 3000

Sampling method
A multi-stage sampling approach was employed for the selection process. In the first stage, four Local Government Areas (LGAs) were randomly selected using simple random sampling – three urban LGAs and one rural LGA were chosen from a sampling frame of 20 LGAs (16 urban and 4 rural) in the state, through a balloting process. Secondly, one ward was randomly picked from each of the selected four LGAs. Using a list of all streets in the chosen wards as a sampling frame, at least ten streets were selected in the third stage. Houses on each of these streets were then systematically randomly sampled based on a calculated sample interval. In each household, one consenting adult was approached for the study. In cases where multiple consenting adults were present in a household, one was chosen by balloting. One consenting adult from each of the selected households was enrolled in the study.

Survey instruments and data collection techniques
The study instrument was a pretested self-administered questionnaire with both open and closed-ended questions to assess health-seeking behaviour as well as the determinants among the respondents, and was developed from a literature review on the subject. The instrument had four sections: the first section dealt with the sociodemographic and economic characteristics of the respondents, the second section assessed the respondents’ health status and behaviour as regards treatment/care of ailments and the third and fourth sections investigated the respondents’ illness in the past, payment for healthcare, including health insurance enrollment. Face validation of the instrument was done by all the investigators, and Cronbach’s alpha reliability coefficient of 0.75 was computed.

Data was collected in real-time on REDCap hosted at the Lagos State University College of Medicine (LASUCOM). The data collected was made more accurate with the use of geo-coordinates.The primary outcome was the health-seeking behaviour, and the explanatory variables included age, sex, marital status, the highest level of education, income level per month (Naira), and current health status. Good/appropriate health-seeking behaviour was defined as health care sought from qualified medical professionals, and formal health facilities, including primary, secondary or tertiary care at private or public hospitals, while poor/inappropriate health-seeking behaviour was defined as health care sought from informal health facilities which include Patent Medicine stores, TBAs, herbal or traditional medicine, doing nothing, self-medication, open drug market or vendors etc. The primary outcome, health-seeking behaviour, was operationalised as a binary variable (appropriate vs inappropriate) based on the source of care sought. This classification is consistent with prior studies in similar settings and reflects the distinction between formal healthcare providers and informal or non-professional sources (e.g., chemists, traditional healers, self-medication). However, we acknowledge that health-seeking behaviour exists along a continuum and may involve multiple or sequential care pathways. The binary categorisation adopted in this study simplifies these complex behaviours for analytical purposes. Responses initially categorised as “Others” (e.g., doing nothing, visiting traditional healers, self-medication from open drug markets) were reclassified as inappropriate health-seeking behaviour, as these actions do not involve care from qualified medical professionals or formal health facilities.

Statistical analysis
Completed questionnaires from the REDCAP platform were cleaned and coded on Microsoft Excel 2018 and exported to STATA 15.0 software (StataCorp LLC, Lakeway Drive, College Station, Texas), where they were analysed. Sociodemographic information and information on health-seeking behaviour were presented using descriptive statistics. The relationship between explanatory variables such as age, gender, occupation, income, and the health-seeking behaviour of respondents was also analysed. The significance level was set at a p-value of 5%. Before analysis, data were reviewed for outliers and implausible values; records with data entry errors in the household size variable (n=7) were excluded from descriptive analysis of that variable. Variables significantly associated with health-seeking behaviour at the bivariate level (p≤0.20) were included in a multivariable logistic regression model using backward stepwise elimination; the final model retained variables independently significant at p<0.05, while theoretically important confounders were retained regardless of statistical significance. To account for the multistage cluster sampling design, the logistic regression was fitted using STATA’s survey estimation commands (svy: logistic), declaring the cluster (street/PSU), stratum (LGA), and sampling weights to yield design-corrected standard errors and confidence intervals. Income was modelled as a four-level categorical variable (ref: <₦30,000). Multicollinearity was assessed using Variance Inflation Factors (VIF); all values were below 5.0 (mean VIF=2.23), confirming the absence of problematic collinearity. Model fit was evaluated using the C-statistic (AUC=0.699), indicating good discriminatory ability of the model. Adjusted odds ratios (aOR) with 95% confidence intervals (95% CI) and p-values are reported.

Ethical considerations
The study was granted ethical approval by the Health Research Ethics Committee of the Lagos State University Teaching Hospital, Nigeria (LREC/06/10/1866). Each respondent provided written consent and was assured of the confidentiality of their information and their right to withdraw from the study at any point in time.

Results

A total of 2,492 respondents completed the survey out of 3,000 targeted, yielding a response rate of 83.1%. The study found that approximately 66.7% of participants were below 40 years old, with a mean age of 36.4 years (standard deviation of 12.9). Over half (56.5%) were married, and a significant majority (87.8%) had completed at least secondary education. For analysis, education level was recategorised into three groups: primary or below (12.2%), secondary (59.2%), and tertiary or above (28.6%). About a quarter (20.6%) worked in non-skilled labour positions, and 18.4% earned less than the national minimum wage of N30,000. On average, each household had around 4 occupants, while a quarter of respondents lived in rural areas of Lagos (Table 1).

The study also revealed that 84.0% (2,093/2,492) of respondents reported no known morbidity, while 41.0% (1,022/2,492) rated their current health status as very good. Among respondents with a known health condition (n = 313), the most common morbidity was hypertension/cardiovascular disease (49.2%; 154/313). The most common behaviour when ill was purchasing drugs from chemists (43.4%; 1,081/2,492). Regarding the timing of healthcare seeking, 33.7% (839/2,492) reported visiting the hospital when symptoms worsened. The most commonly reported reasons for delaying hospital care among those who had ever delayed care (n = 1,882) were unaffordable healthcare costs (56.5%; 1,064/1,882) and perceiving the illness as mild (53.6%; 1,010/1,882) (Table 2).

Acute illness was experienced by 13.3% of the respondents in the last month, with an average duration of 3.5 days, and the commonest place where care was accessed was at the chemist (216/577; 37.4%). More than a third of the respondents (46%) reported that they had chronic illnesses (Table 3). [Note: The 46% chronic illness figure is derived from the sub-sample of 332 respondents who reported an acute illness in the past 30 days — a clinically selected sub-group with predictably higher chronic disease burden. This figure is not directly comparable to the 12.6% ‘known morbidity’ reported in Table 2, which reflects self-reported awareness of a diagnosed condition across all 2,492 respondents. These two measures capture different constructs in different denominators and are not contradictory.]

Findings showed that about thirty per cent (29.7%) have ever gone for a routine medical check-up, with the last visit less than a year ago in 67.6%.  Only 36.0% of respondents were aware of health insurance, with just 10.8% of them enrolled in any scheme (Table 4).

Age, marital status, educational level, employment status, occupation, personal income, number of people in the household, perception of current health status, location of a household, presence of morbidity, routine medical check-ups and enrolment in health insurance schemes were significantly associated with health-seeking behaviour with p-value <0.05. Although females (31.1%) had a marginally higher proportion of appropriate health-seeking behaviour compared to males (30.4%), this difference was not statistically significant (p = 0.754). Married individuals (35.4%) had significantly better health-seeking behaviour compared to singles (24.2%). Also, unskilled respondents (20.2%) sought health care from the hospital compared to skilled respondents (59.7%) or highly skilled professionals (53.2%) while respondents with personal income less than ₦30,000 ($38.5) had poor health-seeking behaviour (15.1%) compared to individuals earning ₦30,000-₦50,000 (23.1%), ₦50,000-₦100,000 (36.6%), and above ₦100,000 (57.5%) (p<0.05). Additionally, respondents who live in urban locations had better health-seeking behaviour (34.4%) compared to those in rural areas (19.7%), with p<0.05. Also, respondents who had ever gone for medical check-ups (49.1%) and those who had enrolled in health insurance (75.2%) had better health-seeking behaviour compared to those who had never gone for routine medical check-ups (23%) and those who did not enrol in health insurance (36.1%), p <0.05 (Table 5).

The result from binary logistic regression indicates that age, gender, income, occupation, perception of health status and presence of morbidity are significant explanatory variables of respondents’ health-seeking behaviour with an adjusted odds ratio of 1.00, 1.29, [see income categories], 0.64, 0.85 and 1.64, respectively. The presence of morbidity showed significantly higher odds (1.64) of having appropriate health-seeking behaviour, and this is followed by gender, with an adjusted odds ratio of 1.29 at p<0.05 (Table 6). Specifically, design-corrected multivariable logistic regression (svy: logistic) identified six independent factors associated with appropriate health-seeking behaviour: age (aOR=1.00; 95% CI: 0.99–1.01; p=0.709, NS), gender (aOR=1.29; 95% CI: 1.05–1.58; p=0.014), income (categorical, ref: <₦30,000 — ₦30k–50k: aOR=1.30, 95% CI: 0.92–1.83, p=0.137 (NS); ₦50k–100k: aOR=2.50, 95% CI: 1.77–3.53, p<0.001; >₦100k: aOR=4.00, 95% CI: 2.71–5.92, p<0.001), occupation (aOR=0.64; 95% CI: 0.58–0.71; p<0.001), perception of current health status (aOR=0.85; 95% CI: 0.75–0.96; p=0.011), and presence of morbidity (aOR=1.64; 95% CI: 1.21–2.22; p=0.001). The income findings demonstrate a clear dose-response gradient: as income increases relative to the lowest bracket, the odds of appropriate health-seeking behaviour rise monotonically (Table 6).

Discussion

In the context of this study, only 30.7% of the participants utilised formal healthcare services when sick. This percentage of respondents demonstrated inappropriate health-seeking behaviour, and this is in contrast to what was observed in studies done in Ibadan (63.1%)[1], Ethiopia (58.4%)[14], but similar to what was previously reported by a study done in Ebonyi State (30%)[15]and Kwara State, Nigeria (31.6%) [16].

The study found that female participants exhibited a slightly higher likelihood of having appropriate health-seeking behaviour compared to their male counterparts (31.1% vs 30.4%); however, this difference was not statistically significant in the bivariate analysis (p = 0.754). Nevertheless, gender remained a significant independent predictor in the multivariable logistic regression (aOR = 1.29; 95% CI: 1.05–1.58; p = 0.014), suggesting that the effect of gender on health-seeking behaviour is better captured after adjusting for confounders. This aligns with previous research in Ibadan, Nigeria, where a similar pattern was observed[1]. The slightly higher likelihood of appropriate health-seeking behaviour among females compared to males could be attributed to societal gender norms and expectations. Women are often more attuned to health concerns and may prioritise seeking medical care for themselves and their families.

Marital status was also associated with health-seeking behaviour, as married residents were more likely to seek healthcare compared to single individuals. This finding is consistent with studies conducted in Jamaica and Ethiopia[17]. Being married may provide social support, shared decision-making, and practical assistance (e.g., transportation, childcare) that can facilitate access to healthcare services, potentially explaining the increased health-seeking behaviour among married individuals.

Monthly income emerged as a significant factor associated with health-seeking behaviour, with higher income levels linked to improved accessibility and better awareness of modern healthcare services. This observation aligns with research findings from Congo, Ethiopia, and Georgia, where income played a crucial role in determining health-seeking patterns [18]. Higher-income levels are associated with better health-seeking behaviour, likely due to increased financial resources that make healthcare more affordable and accessible. Individuals with lower incomes may face economic barriers to seeking medical care. In this study, income was modelled as a four-level categorical variable benchmarked against the national minimum wage (₦30,000) as at the time of this study, revealing a clear monotonic dose-response gradient: compared to respondents earning below ₦30,000, those in the ₦30,000–₦50,000 bracket had 30% higher odds of appropriate health-seeking (aOR=1.30; 95% CI: 0.92–1.83; p=0.137, not statistically significant), those earning ₦50,001–₦100,000 had 2.5 times higher odds (aOR=2.50; 95% CI: 1.77–3.53; p<0.001), and those earning above ₦100,000 had four times higher odds (aOR=4.00; 95% CI: 2.71–5.92; p<0.001). This income gradient underscores the critical role of financial protection mechanisms, particularly health insurance expansion, in enabling equitable healthcare utilisation.

Geographical location also influenced health-seeking behaviour, with urban residents tending to exhibit better health-seeking behaviour than their rural counterparts. This observation is consistent with previous studies in Ethiopia and Nigeria[14]. This observation can be because urban areas typically have better infrastructure, transportation networks, and a higher concentration of healthcare facilities, which can contribute to improved access and utilisation of health services compared to rural areas.

Additionally, the respondent’s employment status and educational level were found to be important factors associated with appropriate health-seeking behaviour. Specifically, respondents with tertiary education or above had the highest proportion of appropriate health-seeking behaviour (52.1%), compared to those with secondary education (23.8%) and those with primary education or below (14.2%). Similarly, those who were employed demonstrated a significantly higher proportion of appropriate health-seeking behaviour (33.0%) compared to the unemployed (20.2%). These findings are consistent with what was observed in Anambra, South-East Nigeria[19]. The positive association with education may reflect increased knowledge and awareness of the advantages and health consequences of adopting appropriate health-seeking behaviours. Likewise, paid employment may be associated with access to employer-sponsored health insurance or other healthcare benefits, which can reduce financial barriers and incentivise individuals to seek medical care when needed.

Furthermore, the study observed improved access to healthcare services among health insurance enrollees, which is consistent with previous research demonstrating that health insurance significantly enhances health-seeking behaviour. This finding highlights the importance of healthcare affordability and financial protection in facilitating access to medical services [11,19,20]. Having health insurance mitigates the financial burden of healthcare costs, making it more affordable and encouraging individuals to seek professional medical services when required.

Strengths and limitations of the study
Our study’s broad community-based approach across the entire state and the inclusion of a large sample size significantly enhance the quality of our research findings. To reduce recall bias, researchers limited inquiries about health-seeking behaviour to one month. Another limitation is that reported income levels may have been overestimated. Additionally, data cleaning identified a small number of miscoded entries in the household size variable (n=7), which were excluded from descriptive analysis of that variable; this did not affect the primary regression findings. The morbidity variable was based on self-report of known diagnosed conditions, which may underestimate true prevalence; however, the strong association between known morbidity and health-seeking behaviour (aOR=1.64; 95% CI: 1.21–2.22; p=0.001) is consistent with the established literature and reflects the expected behaviour of individuals already engaged in chronic disease management. Also, the cross-sectional nature of this study does not allow inferences to be made from its results. Additionally, due to the cross-sectional design of this study, the observed relationships represent associations and cannot establish temporal or causal relationships between explanatory variables and health-seeking behaviour

Policy implication and future research
Findings from this study have provided insights into the barriers, facilitators, and patterns that influence individuals’ willingness and ability to access and utilise healthcare services, which would enable the development of tailored interventions, resource allocation strategies, and policies aimed at improving healthcare accessibility, promoting early detection, reducing health disparities, and ultimately enhancing the overall well-being of Lagos residents. Conducting further research at sub-national or national levels to better understand the determinants of health-seeking behaviour would be an opportunity for further study.

Conclusion

This study demonstrates that socio-demographic and economic characteristics such as gender, occupation, income, perceived health status, and morbidity status are significantly associated with health-seeking behaviour among Lagos residents. The findings highlight substantial reliance on informal care sources and low uptake of health insurance. Given the cross-sectional nature of the study, these findings should be interpreted as associations rather than causal relationships. However, they provide important insights into patterns of healthcare utilisation and potential barriers to accessing formal care. Efforts to expand financial protection mechanisms such as health insurance, alongside targeted public health education, may improve appropriate healthcare utilisation. Future research using longitudinal or mixed-methods approaches is recommended to better capture the complexity and dynamics of health-seeking behaviour.

What is already known about the topic

  • Health-seeking behaviour in low- and middle-income countries is shaped by a complex interplay of socio-demographic, economic, cultural, and health system factors.
  • In Nigeria and similar settings, inappropriate health-seeking practices such as self-medication, use of patent medicine vendors, and reliance on traditional or spiritual care remain common despite the availability of formal health services.

What this  study adds

  • Provides comprehensive population-based evidence on health-seeking behaviour among adults in Lagos State, Nigeria’s largest and most densely populated metropolis.
  • Shows that fewer than one-third of residents consistently utilise formal healthcare services, with purchasing drugs from chemists being the most common initial response to illness.
  • Identifies key determinants of appropriate health-seeking behaviour, including age, gender, income, occupation, household size, perceived health status, morbidity status, routine medical check-ups, and health insurance enrolment.
  • Highlights the critical role of socioeconomic status and financial protection in influencing healthcare utilisation.
  • Offers context-specific evidence to inform policies aimed at improving healthcare utilisation, expanding health insurance coverage, and advancing progress toward Universal Health Coverage in urban African settings.

Competing Interest

The authors of this work declare no competing interests.

Funding

This study was funded by the Bill and Melinda Gates Foundation in partnership with the Lagos State Ministry of Health, Lagos, Nigeria. The funders had no role in the study design, data collection, analysis, interpretation of data, or writing of the manuscript.

Acknowledgements

We sincerely thank our study mobilisers from LASHMA and the Ministry of Health, Lagos, Nigeria. The authors also wish to thank the leadership of Lagos State through the Lagos State Ministry of Health and Lagos State Health Management Agency, whose support was critical to the successful completion of this survey. Lastly, the authors express gratitude to the survey participants for their consent to be part of this study. This survey was made possible through funding from the Bill and Melinda Gates Foundation in partnership with the Lagos State Ministry of Health, Lagos, Nigeria.

Authors´ contributions

AA, KOW, and AAA designed the study, while TF, OA, AAA, and FO were involved in the data collection and entry. OA and AAA developed the manuscript draft while KOW and AA critically reviewed the manuscript. All authors have read and approved the final manuscript.

Data availability
The datasets generated and/or analysed during the current study are not publicly available due to ethical and data protection considerations, but are available from the corresponding author on reasonable request and subject to approval by the Lagos State University Teaching Hospital Health Research Ethics Committee.

Tables

Table 1: Respondents’ sociodemographic characteristics
Sociodemographic characteristics Frequency (N=2492) Percentage (%)
Age (years)
≤30 859 34.5
31-40 802 32.2
41-50 477 19.1
51-60 222 8.9
>60 129 5.2
Non-response 3 0.1
Mean ± SD 36.35 ± 12.85
Gender
Male 1260 50.6
Female 1230 49.3
Non-response 2 0.1
Marital Status
Single 926 37.2
Married 1406 56.4
Widow/Widower 121 4.9
Others 36 1.4
Non-response 3 0.1
Religion
Christian 1435 57.6
Islam 1039 41.7
Others 16 0.6
Non-response 2 0.1
Education Level
Primary or below 303 12.2
Secondary 1475 59.2
Tertiary or above 712 28.6
Non-response 2 0.1
Occupation
Highly skilled professionals 77 3.1
Skilled professionals 311 12.5
Skilled workers 731 29.3
Semi-skilled workers 413 16.6
Unskilled workers 514 20.6
Non-response 446 17.9
Income (₦) (Monthly)
≤30,000 458 18.4
30,000 – 50,000 852 34.3
50,001 – 100,000 849 34.2
>100,000 324 13.0
Median (Min-Max) 50000.00 (0.00 – 3000000.00)
Location of household
Rural 623 25.0
Urban 1866 74.9
Non-response 3 0.1
Number of people in the household
<4 1126 45.2
4 – 6 1267 50.9
>6 96 3.9
Mean ± SD 3.65 ± 1.77
Table 2: Health status and health-seeking behaviours
VariableFrequency (N = 2492)Percentage (%)
Rating of current health status  
Excellent80432.3
Very good102241.0
Good57122.9
Fair863.5
Poor60.2
Non-response30.1
Any morbidity (known health condition)  
Yes31312.6
No209384.0
Don’t know833.3
Non response30.1
Morbidity type (N = 313)  
Diabetes8627.5
Hypertension/Cardiovascular diseases15449.2
Others7323.3
Usual behaviours regarding treatment/care when you are sick  
Do nothing/watch and wait451.8
Use herbs and concoctions48919.6
Buy drugs from the chemist108143.4
Visit Traditional healers592.4
Prayer Houses/Religious Centres160.6
Appropriate health-seeking behaviour76530.7
Others351.4
Non-response20.1
Reasons for your choice  
Cheap81332.6
Fast services137455.1
Close to my house135354.3
The attitude of care providers is good82833.2
The treatment is effective140556.4
It has good equipment and facilities32613.1
It is used by my insurance scheme (NHIS/HMO)1887.5
It is paid for by my employer602.4
Other reason(s)622.5
When do you seek healthcare from hospitals  
When symptoms are mild or just starting61024.5
Symptoms are unremitting, though still mild2088.3
When symptoms get worse83933.7
After trying other means but no relief73429.4
When symptoms become life-threatening994.0
Non-response20.1
When do you usually seek care from the hospital?  
Mild symptoms81832.8
Worse symptoms167267.1
Non-response20.1
Usual cause(s) of delay in seeking hospital care early (n = 1882)  
No money / Healthcare cost not affordable106456.5
Thought the illness was mild and would resolve101053.6
Thought illness is not for medical treatment23212.3
Cultural & traditional practices /religious beliefs18910.0
Distance/ transportation difficulties33317.7
Previous unsatisfactory experience with a provider37720.0
Long waiting time102554.4
Hospital staff attitudes69536.9
Prescribed drugs/medications not available in the hospital26514.1
Lack of hospital personnel and equipment924.9
None28615.2
Services accessed in any hospital within the last one-year  
Outpatient care137355.1
Hospital admission47619.1
Surgery1636.5
Obstetrics & Gynaecology612.4
Dental care2138.5
Eye care1807.2
Lab investigations81532.7
Radiology301.2
Physiotherapy702.8
Other42817.2
Table 3: Acute illnesses experienced within the last 4 weeks
VariableFrequency (N = 2492)Percentage (%)
Any recent illnesses in the past 30 days? (Acute illnesses experienced within the last 4 weeks and not chronic)  
Yes33213.3
No215486.4
Non-response60.2
In the last 4 weeks, did you (or your child) receive care from a health provider  
Yes57723.2
No191076.6
Non-response50.2
Where care was accessed (N = 577)  
Private Pharmacy/Chemist21637.4
Private clinic/ Private hospital9516.4
Government hospital (PHC, general hospitals, etc.)19934.5
Healers549.4
Others132.3
Table 4: Medical checkup and health insurance
VariableFrequency (N = 2492)Percentage (%)
Ever gone for routine medical check-ups (even when not sick)  
Yes74129.7
No174570.0
Non-response60.2
When last? (N = 741)  
Less than a year ago50167.6
More than a year ago12416.7
More than 2 years ago9813.2
More than 5 years ago182.4
Aware of any health insurance scheme  
Aware89936.1
Unaware159063.8
Non-response30.1
Ever enrolled in any of the health insurance schemes  
Yes27010.8
No221989.0
Non-response30.1
Table 5: Relationship between sociodemographic characteristics and health-seeking behaviour of respondents
Sociodemographic variables Behaviours Regarding Treatment Chi square P-value
Appropriate health-seeking behaviour Inappropriate health-seeking behaviour
Age
≤30 219 (25.5) 640 (74.5) 25.7 <0.001*
31–40 287 (35.8) 515 (64.2)
41–50 148 (31.0) 329 (69.0)
51–60 61 (27.5) 161 (72.5)
>60 50 (38.8) 79 (61.2)
Mean ± SD 37.50 ± 12.60 35.83 ± 12.93 3.0† 0.003*
Gender
Male 383 (30.4) 877 (69.6) 0.1 0.754
Female 382 (31.1) 848 (68.9)
Marital Status
Single 224 (24.2) 702 (75.8) 34.2 <0.001*
Married 498 (35.4) 908 (64.6)
Widow/Widower 32 (26.4) 89 (73.6)
Others 11 (30.6) 25 (69.4)
Education Level
Primary or below 43 (14.2) 260 (85.8) 224.6 <0.001*
Secondary 351 (23.8) 1124 (76.2)
Tertiary or above 371 (52.1) 341 (47.9)
Employment status
Employed 676 (33.0) 1372 (67.0) 27.7 <0.001*
Unemployed 89 (20.2) 351 (79.8)
Occupation
Highly skilled professionals 41 (53.2) 36 (46.8) 159.6 <0.001*
Skilled professionals 185 (59.5) 126 (40.5)
Skilled workers 238 (32.6) 493 (67.4)
Semi-skilled workers 108 (26.2) 305 (73.8)
Unskilled workers 104 (20.2) 410 (79.8)
Income (₦) (Monthly)
≤30,000 69 (15.1) 389 (84.9) 199.5 <0.001*
30,000 – 50,000 197 (23.1) 655 (76.9)
50,001 – 100,000 311 (36.6) 538 (63.4)
>100,000 187 (57.5) 138 (42.5)
Number of people in the household
<4 318 (28.2) 808 (71.8) 6.6 0.036*
4–6 419 (33.1) 848 (66.9)
>6 28 (29.2) 68 (70.8)
Mean ± SD 3.80 ± 1.60 3.58 ± 1.84 3.0† 0.002*
Level of education of the household head
Primary 8 (16.7) 40 (83.3) 53.7 <0.001*
Secondary 125 (27.8) 324 (72.2)
Tertiary 123 (46.9) 139 (53.1)
Post Graduate 29 (44.6) 36 (55.4)
Don’t Know 10 (12.5) 70 (87.5)
Location of household
Rural 123 (19.7) 500 (80.3) 46.5 <0.001*
Urban 642 (34.4) 1224 (65.6)
Rating of current health status
Excellent 302 (37.6) 502 (62.4) 33.5 <0.001*
Very good 259 (25.3) 763 (74.7)
Good 170 (29.8) 401 (70.2)
Fair 32 (37.2) 54 (62.8)
Poor 2 (33.3) 4 (66.7)
Morbidity (known health condition)
Yes 129 (41.2) 184 (58.8) 20.8 <0.001*
No 618 (29.5) 1475 (70.5)
Don’t know 18 (21.7) 65 (78.3)
Ever gone for routine medical check-ups (even when not sick)
Yes 364 (49.1) 377 (50.9) 165.6 <0.001*
No 401 (23.0) 1344 (77.0)
Ever enrolled in any of the health insurance schemes
Yes 203 (75.2) 67 (24.8) 114.0 <0.001*
No 228 (36.1) 403 (63.9)
† Independent samples t-test; * Statistically significant at p < 0.05
Table 6: Factors associated with appropriate health-seeking behaviour among respondents (n = 2,042)
VariablesCategoriesAdjusted OR95% CIP-value
AgeContinuous (per year increase)1.000.99 – 1.010.709
Gender    
 Female (Ref)1.00
 Male1.291.05 – 1.580.014*
Religion    
 Christianity (Ref)1.00
 Islam0.940.64 – 1.370.743
Employment status    
 Unemployed (Ref)1.00
 Employed1.280.84 – 1.950.251
Education level    
 Primary or below (Ref)1.00
 Secondary
 Tertiary or above1.280.99 – 1.660.060
Income (Monthly)    
 ≤₦30,000 (Ref)1.00
 ₦30,001 – ₦50,0001.300.92 – 1.830.137
 ₦50,001 – ₦100,0002.501.77 – 3.53<0.001*
 >₦100,0004.002.71 – 5.92<0.001*
OccupationOrdinal scale (per level increase)0.640.58 – 0.71<0.001*
Perception of current health statusOrdinal scale (per level increase)0.850.75 – 0.960.011*
Presence of Morbidity    
 No (Ref)1.00
 Yes1.641.21 – 2.220.001*
Constant 0.330.05 – 2.110.242

Ref = Reference category; † = Category included in the model but individual estimate not separately reported; * = p < 0.05
*5% significance level | aOR = adjusted odds ratio; CI = confidence interval.
Income modelled as a categorical variable (ref: <₦30,000/month).
Model diagnostics: C-statistic (AUC) = 0.699; mean VIF = 1.52 (all VIFs < 5.0).
Model fitted using STATA svy: logistic to account for multistage cluster sampling design.
 

References

  1. Latunji OO, Akinyemi OO. Factors Influencing Health-Seeking Behaviour Among Civil Servants in Ibadan, Nigeria. Ann Ib Postgrad Med [Internet]. 2018 Jun [cited 2026 Apr 23];16(1):52–60.
  2. Uche EO. Factors Affecting Health Seeking Behaviour Among Rural Dwellers In Nigeria And Its Implication On Rural Livelihood [Internet]. 2017 Mar 18 [cited 2026 Apr 23]. doi:10.5281/ZENODO.400695
  3. Ogunyemi A, Egemba T, Onigbogi O. Health-seeking Behaviour and Self-rated Health of Adult Men in an Urban Local Government Area in Lagos, Nigeria. Ann Health Res [Internet]. 2021 May 28 [cited 2026 Apr 23];7(2):153–164. doi:10.30442/ahr.0702-07-126
  4. Begashaw B, Tesfaye T. Healthcare Utilization among Urban and Rural Households in Esera District: Comparative Cross-sectional Study. American Journal of Public Health Research [Internet]. 2016 Feb 29 [cited 2026 Apr 23];4(2):56–61. doi:10.12691/ajphr-4-2-3
  5. Al-Worafi YM, Ming LC. Healthcare Systems in Developing Countries. In: Al-Worafi YM, editor. Handbook of Medical and Health Sciences in Developing Countries [Internet]. Cham: Springer International Publishing; 2024 [cited 2026 Apr 23]. p. 1–22. doi:10.1007/978-3-030-74786-2_207-1. Available from: https://link.springer.com/10.1007/978-3-030-74786-2_207-1
  6. Musoke D, Boynton P, Butler C, Musoke M. Health seeking behaviour and challenges in utilising health facilities in Wakiso district, Uganda. Afr Health Sci [Internet]. 2015 Jan 16 [cited 2026 Apr 23];14(4):1046–1055. doi:10.4314/ahs.v14i4.36
  7. Dave-Agboola IO, Raji JI. Health-seeking behaviour of malaria patients in Lagos, Nigeria. Int J Health Sci Res [Internet]. 2018 [cited 2026 Apr 23];8(7):259–264. Available from: https://www.ijhsr.org/IJHSR_Vol.8_Issue.7_July2018/34.pdf
  8. Afolabi MO, Daropale VO, Irinoye AI, Adegoke AA. Health-seeking behaviour and student perception of health care services in a university community in Nigeria. Health [Internet]. 2013 [cited 2026 Apr 23];05(05):817–824. doi:10.4236/health.2013.55108
  9. Popoola TO. Effect of Income Inequality on Health Outcomes and Health-Seeking Behaviour in Nigeria [dissertation on the Internet]. Zaria (Nigeria): Ahmadu Bello University; 2021 Mar [cited 2026 Apr 23]. 236 p. Available from: https://kubanni-backend.abu.edu.ng/server/api/core/bitstreams/8c5a257b-d9e5-4db6-8292-d140c7ddc271/content
  10. Usman N, Ibrahim M, Joshua A, Mohammed-Idris Z, Zubairu H. Factors influencing health seeking behaviour among residents of Basawa community, Sabon Gari L.G.A. Kaduna state, Nigeria. Kanem Journal of Medical Sciences [Internet]. 2020 Jul 24 [cited 2026 Apr 23];14(1):09–17. doi:10.36020/kjms.2020.1401.001
  11. Andersen RM. Revisiting the behavioral model and access to medical care: does it matter? J Health Soc Behav [Internet]. 1995 Mar [cited 2026 Apr 23];36(1):1–10. PMID: 7738325.
  12. Jabar MA. Factors influencing health-seeking behavior among overseas Filipino workers. Int J Healthc Manag [Internet]. 2021 Jan 2 [cited 2026 Apr 23];14(1):10–22. doi:10.1080/20479700.2019.1603665
  13. Zhang Q, Feng S, Wong IOL, Ip DKM, Cowling BJ, Lau EHY. A population-based study on healthcare-seeking behaviour of persons with symptoms of respiratory and gastrointestinal-related infections in Hong Kong. BMC Public Health [Internet]. 2020 Dec [cited 2026 Apr 23];20(1):402. doi:10.1186/s12889-020-08555-2
  14. Begashaw B, Tessema F, Gesesew HA. Health Care Seeking Behavior in Southwest Ethiopia. PLoS ONE [Internet]. 2016 Sep 14 [cited 2026 Apr 23];11(9):e0161014. doi:10.1371/journal.pone.0161014
  15. Ukwaja KN, Alobu I, Nweke CO, Onyenwe EC. Healthcare-seeking behavior, treatment delays and its determinants among pulmonary tuberculosis patients in rural Nigeria: a cross-sectional study. BMC Health Serv Res [Internet]. 2013 Jan 17 [cited 2026 Apr 23];13(1):25. doi:10.1186/1472-6963-13-25
  16. Senyonjo L, Lindfield R, Mahmoud A, Kimani K, Sanda S, Schmidt E. Ocular Morbidity and Health Seeking Behaviour in Kwara State, Nigeria: Implications for Delivery of Eye Care Services. PLoS ONE [Internet]. 2014 Aug 28 [cited 2026 Apr 23];9(8):e104128. doi:10.1371/journal.pone.0104128
  17. Bourne PA. Socio-Demographic Determinants of Health Care-Seeking Behaviour, Self-Reported Illness and Self-Evaluated Health Status in Jamaica. IJCRIMPH [Internet]. 2009 [cited 2026 Apr 23];101–130. Available from: https://catalog.ihsn.org/citations/22359
  18. Chenge MF, Van Der Vennet J, Luboya NO, Vanlerberghe V, Mapatano MA, Criel B. Health-seeking behaviour in the city of Lubumbashi, Democratic Republic of the Congo: results from a cross-sectional household survey. BMC Health Serv Res [Internet]. 2014 Dec [cited 2026 Apr 23];14(1):173. doi:10.1186/1472-6963-14-173
  19. Nwobodo E. Determinants of health-seeking behaviour among enrollees of a social health insurance scheme in Anambra state, southeast, Nigeria. Archives of Medicine [Internet]. 2022 Dec 12 [cited 2026 Apr 23];14(12):001–007. Available from: https://www.ashiang.org/wp-content/uploads/2023/10/determinants-of-healthseeking-behaviour-among-enrollees-of-a-social-health-insurance-scheme-in-anambra-state-southeast-n1.pdf
  20. Kumah E, Asana Y, Agyei SK, Kokuro C, Ankomah SE, Fusheini A. Does health insurance status influence healthcare-seeking behavior in rural communities? evidence from rural Ghana. Health Policy OPEN [Internet]. 2024 Dec [cited 2026 Apr 23];6:100119. doi:10.1016/j.hpopen.2024.100119
Views: 68