Soren Brage1, Felix Assah2, Kelias Phiri Msyamboza3. 1. MRC Epidemiology Unit, University of Cambridge, Cambridge, UK. 2. Department of Public Health, Faculty of Medicine and Biomedical Science, University of Yaounde I, Yaounde, Cameroon. 3. Malawi Country Office, World Health Organization, Lilongwe, Malawi.
We are all Africans. Local availability of food likely caused the first Homo
sapiens to migrate out of Africa some
50 000–70 000 years ago and populate the rest of the world.
Throughout human history, our behaviour has been governed by our planet’s rotation
and revolution around the sun, particularly from the time of the agricultural revolution
about 12 000 years ago when the first calendars start to appear, guiding
agricultural activities. In the modern age of globalisation, however, food supply is
relatively stable over the course of the year in many countries, but the need for primary
food production, local weather conditions and availability of daylight continue to impact
the activity of populations around the globe to varying degrees.
GLOBAL MONITORING OF PHYSICAL ACTIVITY
Physical activity has consistently been shown to be associated with several health
benefits, but global surveillance data suggest that on average one in four adults are
insufficiently active, with populations living in low- and middle-income countries being far
more active than those living in high-income countries.[1] The WHO Global Action Plan for Physical Activity aims to reduce the prevalence of
insufficient activity by 10% in 2025 and by 15% in 2030.[2] The key to monitoring progress towards these targets is a robust surveillance system.
Currently, systematic global monitoring of physical activity is based on self-report
methods, and while it is important for continuity of information that this element of
surveillance is continued, there are clear advantages to supplementing self-report data with
device-measured physical activity. Accelerometers and heart rate monitors provide objective
and much more fine-grained information about habitual physical activity patterns, in
particular with respect to intensity of activity, and avoid many of the issues with
self-report, such as recall bias and social desirability bias. However, it is still
relatively uncommon for devices to be used in epidemiological studies in Africa.
OBJECTIVELY MEASURED PHYSICAL ACTIVITY IN MALAWI
Pratt and colleagues describe the levels of objectively measured physical activity in 414
working-age adults, sampled from agricultural (rural) households in Malawi, a
low–middle-income country as assessed by the World Bank.[3] Physical activity was measured during the farming season using a hip-mounted
accelerometer, and participants were asked to wear the device for 2 weeks, except when
sleeping and bathing. The researchers quantified both total activity volume and time spent
in different intensities; two of the uniaxial accelerometry cutpoints, denoted high-light
and moderate intensity activity, represent the movement intensity equivalent to that of slow
walking and normal walking speeds, respectively.[4 5] While it can be debated whether we consider both such activities as moderate
activity, there is certainly appreciable movement, and potential health benefits, at these
intensity levels.[6-9] Malawian men spent about 2.5 times as much time above the slow walk speed equivalent
intensity threshold, compared to the normal walk speed threshold, and for women, the ratio
was about 3.5 times as much. The highest cutpoint analysed was vigorous intensity and is
equivalent to running, but almost no time was spent at this level of movement intensity,
making this cutpoint less sensitive to describe behavioural variation in the population.
There is however plenty of natural variation below this level, which can be used to richly
describe the entire intensity distribution.[10-14]
COMPARISON TO ACTIVITY LEVELS IN HIGH-INCOME COUNTRIES
The advantage of providing epidemiological estimates of multiple intensities when
describing populations becomes even clearer in international comparisons,[10] but we will focus on the variation in the walking range intensities here (figure 1). Pratt and colleagues compared Malawian activity
levels directly to 3258 age- and sex-matched participants residing in urban areas of the USA
assessed with a very similar accelerometry method; American men spent less than half the
time and American women about a third of the time in both high-light and
moderate-to-vigorous intensity activity compared to their Malawian counterparts. The US
estimates of activity were similar to those observed in other US studies,[15] including the nationally representative National Health and Nutrition Examination Survey[16] as well as accelerometer-based estimates from large studies of adult UK populations,
all of which could reasonably be considered urban residents surveyed over the course of the
year, so these are robust reference groups. There is therefore little doubt that activity
levels of rural Malawian agricultural household members during the farming season are higher
than those generally observed in high-income urban dwellers.
Figure 1
Overview of objectively-measured moderate-to-vigorous intensity physical activity
(MVPA) estimates of adult men (top panel) and women (bottom panel) residing in rural and
urban areas of Africa, compared with a few measurement method-matched estimates from the
USA and the UK.[3 12–16
18–20]
MEASUREMENT CHALLENGES
The actual difference may be higher still than observed here as the hip accelerometer would
not quantify all physical activity, for example, that involving predominantly upper-body
work or load-bearing activities which could be more prevalent in the farmers. Figure 1 shows time spent in physical activity across
populations and includes other activity estimates using different objective methods, for
example, combined heart rate and trunk accelerometry. In other African studies, this
validated method[17] has quantified twice as much moderate-to-vigorous intensity time as trunk
accelerometry alone. For example, rural dwellers of Cameroon accumulated 50% (in men)
to 100% (in women) more moderate-to-vigorous activity than urban dwellers, but the
difference was only 20% higher for the two accelerometer-based measures.[13] Rural populations of Kenyan Lou, Kamba and Masaai accumulated even higher levels of
activity, with time spent above the highest accelerometry cutpoint being slightly higher
than the equivalent in the Malawian men but slightly lower in the women.[18] Estimates from Ghana and Seychelles using hip accelerometry were however much lower,
suggesting substantial variation between African populations.[15]A previous study from Malawi undertaken in 2017 as a feasibility study for incorporating
objective measures of activity into the WHO STEPwise approach to Surveillance (STEPS)
programme assessed activity in both rural and urban dwellers using a triaxial wrist accelerometer.[14] Again this found higher activity in rural dwellers, about 60% for men and
80% for women, compared to Malawian urban dwellers, and both these populations were
more active than UK populations assessed with the same method.[19 20]Overview of objectively-measured moderate-to-vigorous intensity physical activity
(MVPA) estimates of adult men (top panel) and women (bottom panel) residing in rural and
urban areas of Africa, compared with a few measurement method-matched estimates from the
USA and the UK.[3 12–16
18–20]
SAMPLING THE DIURNAL PATTERN OF PHYSICAL BEHAVIOUR
The daily 24-hour cycle of physical behaviour is one of the most recognisable patterns in
objective monitoring records. Most of the African data used 24-hour monitoring protocols
with waterproof sensors, which makes it simpler to instruct participants (wear-and-forget)
but it also makes the analysis simpler as there is generally less missing data due to
non-wear and there is greater opportunity to impute any missing data by within-person
diurnal pattern matching. The potential downside of this approach is challenges in
discriminating sleep and awake sedentary behaviour, but assessment of any of the other
intensities or total volume of activity is comprehensive. One alternative is to use
awake-time only monitoring protocols accompanied by activity monitor diaries to encourage
compliance of wear; often, however, monitor diaries have their own missing data problems and
researchers choose to ignore these data and apply a more universal approach at the analysis
stage. Indeed, this was the approach taken in the study by Pratt and colleagues, where data
between 22:00 and 04:30 were excluded for everybody. At first glance, this may seem crude,
too short and too early, but considering the diurnal pattern of rural dwellers assessed in
24-hour monitoring protocols as for example used in the WHO STEPS study in Malawi (figure 2), it is not far off the common pattern—if
anything, the censoring window should have been even shorter as several rural dwellers get
up at 4:00, and the morning activity peak is the highest in most participants. The
analytical alternative to the censoring approach is to reclassify all non-wear data as wear
data in the identified potential sleep time window which would simulate the 24-hour
protocol; both approaches would yield similar non-sedentary estimates.
Figure 2
Diurnal physical activity (wrist acceleration) profile of Malawian men (left) and women
(right), stratified by urban-rural residency (bars represent mean values by hour from
midnight). WHO STEPS survey 2017.[14]
Diurnal physical activity (wrist acceleration) profile of Malawian men (left) and women
(right), stratified by urban-rural residency (bars represent mean values by hour from
midnight). WHO STEPS survey 2017.[14]
SAMPLING THE POPULATION BY PLACE AND SEASON
The biggest challenge, however, for monitoring population levels of activity is that of
selection bias. This stems from two main sources; the first is that of recruiting a
representative population sample that starts with defining an unbiased sampling frame and
documenting any deviation from that at the execution stage (response rate), and the second
is to sample time in an unbiased manner for each individual or group of individuals who
agrees to participate. We can question if the sample of farmers recruited from the Ntcheu
and Zomba districts of Malawi in the study by Pratt and colleagues are representative of all
farmers in Malawi, or indeed of all rural dwellers in Malawi, the latter being the tougher
criterion but nonetheless the relevant one if the objective is to assess the possible
consequences of urbanisation on activity levels. The approach to population sampling in WHO
STEPS surveys and the Cameroon study was complete sampling of all households in selected
areas; this puts the emphasis of sampling representativeness on the geographical area
selection.On the issue of time sampling, the safest design is to let the survey span across a whole
calendar year, ideally at a stable recruitment rate in all geographical areas, as this would
capture the natural yearly cycle of activities and limit any selection bias from this
source. However, this is usually not the way that these surveys are done; it is far more
practical to conduct these in particular seasons that make fieldwork more feasible, for
example, outside of the rainy season. In the study by Pratt and colleagues, farmers were
measured during the farming season, which is the most active time of the year in
agriculture. If our intention is to assess the general activity levels of the rural
population, however, this time sampling strategy would lead to overestimation bias. A
similar time sampling bias could be operating in the WHO STEPS survey as that was also
conducted in a relatively short period of time; however, the internal comparison between
urban and rural dwellers is not biased here as these were time-matched—but it is
still possible that the observed urban–rural difference may not generalise to other
seasons. The Cameroon study was a more classical slow-burning cross-sectional survey with
participant enrolment and data collection conducted over the course of the year, allowing
estimation of seasonal differences in activity levels in both rural and urban dwellers;
these are displayed together with UK data in figure 3.
As expected, fluctuations were greater in rural dwellers from Cameroon, making time sampling
of this subpopulation more critical; rural dwellers were twice as active as urban dwellers
during the long dry season (December–May), that is, the main farming season, whereas
urban and rural dwellers were similarly active during the heavy rain season
(October–November).
Figure 3
Seasonal differences of physical activity in rural and urban dwellers living in Cameroon[13] and mainly urban residents in the UK.[12] Day of year from 1 January.
Seasonal differences of physical activity in rural and urban dwellers living in Cameroon[13] and mainly urban residents in the UK.[12] Day of year from 1 January.
IMPLICATIONS FOR FUTURE GLOBAL SURVEILLANCE
The issues highlighted here have implications for how we best design future surveillance of
physical activity across the world. It is not unlikely that the current model of blitz
fieldwork will be the dominant data collection method as it is simply the most practical. If
this was accompanied by smaller parallel studies that quantify seasonal differences in
relevant subpopulations within a country or region, the survey data can be reported not just
as observed central tendency and dispersion estimates but also a set of adjusted prevalence
results which have been subjected to modelling, survey weights and seasonal scaling in order
to minimise the impact of population and time selection biases. Ideally, we would also want
to assess the validity of methods in different populations and across time era. Attempting
to estimate nationally representative estimates of physical activity with minimum time
biases can be more appropriately compared between countries and over longer periods of time
(years, decades), so we can monitor progress towards the internationally agreed goals of
population activity levels.[2]
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