Page 1/13 Peak Expiratory Flow Rate and anthropometric determinants in school children from Dar es Salaam, Tanzania

Document Type



Family Medicine (East Africa)


Background Peak expiratory flow rate is an important tool for assessing lung function, which can be affected by environmental and physical factors such as altitude, nutrition, genetics, age, height, and weight. Conducting a study to assess the correlation between peak expiratory flow rate and anthropometric measurements in Tanzanian schoolchildren is crucial to derive a population-specic prediction formula and further simplify respiratory health assessment.


This cross-sectional study was conducted in a single center private primary and secondary school in Dar es Salaam, Tanzania using data from an asthma screening camp. Variables of interest were height, weight, Body Mass Index and PEFR. Independent t-test was performed to identify any differences in mean flow rate values between different ethnicities and genders. Correlation coecients (r) were used to observe the relationship between PEFR and anthropometric measurements. A prediction equation was generated using linear regression analysis. Statistical significance was set at the 5% level. All statistical data was analyzed using SPSS version 25.0.


The study involved 260 participants with a mean age of 9.5 years. Males were 51.2% and 65% of participants were of Asian ethnicity. PEFR was not observed to differ across the different ethnic groups and genders. Height was found to have the strongest correlation coefficient of 0.745, while BMI had the weakest correlation coefficient of 0.366. The strongest correlation was found with height for females (r =0.787), while the weakest was with BMI for boys (r = 0.203). A prediction equation was derived as follows: PEFR = 293.04(Height of Student in meters) – 157.362


This study found a strong correlation between PEFR and anthropometric characteristics in school children from Dar es Salaam, Tanzania. It developed a predictive equation for PEFR based on their anthropometric characteristics, which may be applied in population-based studies or where peak flow meters are not conveniently accessible. Further research is needed to explore how well this prediction formula performs in other Tanzanian settings and to determine other factors that may affect lung function in this population.

Publication (Name of Journal)

Research Square



Creative Commons License

Creative Commons Attribution 4.0 International License
This work is licensed under a Creative Commons Attribution 4.0 International License.