Literature DB >> 31060532

Calculating incidence rates and prevalence proportions: not as simple as it seems.

Inge Spronk1,2, Joke C Korevaar3, René Poos4, Rodrigo Davids3, Henk Hilderink4, François G Schellevis3,5, Robert A Verheij3, Mark M J Nielen3,4.   

Abstract

BACKGROUND: Incidence rates and prevalence proportions are commonly used to express the populations health status. Since there are several methods used to calculate these epidemiological measures, good comparison between studies and countries is difficult. This study investigates the impact of different operational definitions of numerators and denominators on incidence rates and prevalence proportions.
METHODS: Data from routine electronic health records of general practices contributing to NIVEL Primary Care Database was used. Incidence rates were calculated using different denominators (person-years at-risk, person-years and midterm population). Three different prevalence proportions were determined: 1 year period prevalence proportions, point-prevalence proportions and contact prevalence proportions.
RESULTS: One year period prevalence proportions were substantially higher than point-prevalence (58.3 - 206.6%) for long-lasting diseases, and one year period prevalence proportions were higher than contact prevalence proportions (26.2 - 79.7%). For incidence rates, the use of different denominators resulted in small differences between the different calculation methods (-1.3 - 14.8%). Using person-years at-risk or a midterm population resulted in higher rates compared to using person-years.
CONCLUSIONS: All different operational definitions affect incidence rates and prevalence proportions to some extent. Therefore, it is important that the terminology and methodology is well described by sources reporting these epidemiological measures. When comparing incidence rates and prevalence proportions from different sources, it is important to be aware of the operational definitions applied and their impact.

Entities:  

Keywords:  Electronic health record; General practice; Incidence rate; Prevalence proportion

Mesh:

Year:  2019        PMID: 31060532      PMCID: PMC6501456          DOI: 10.1186/s12889-019-6820-3

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Incidence rates and prevalence proportions of symptoms and diseases in the general population are important indicators of a population’s health status [1]. These epidemiological measures of disease frequency are the foundation to monitor diseases, formulate and evaluate healthcare policy and conduct scientific research [2]. The comparison of incidence rates and prevalence proportions between studies and countries, and determining factors explaining differences, results in increased knowledge on both prevention and aetiology of diseases [3]. However, fair comparisons between data sources are difficult to make due to differences induced by the use of different numerators and denominators. From epidemiological handbooks, the definitions of incidence rates and prevalence proportions are not unambiguous. The incidence rate ‘represents the frequency of new occurrences of a medical disorders in the studied population at risk of the medical disorder arising in a given period of time’ and the prevalence proportion is ‘the part (percentage or proportion) of a defined population affected by a particular medical disorder at a given point in time, or over a specified period of time’ [4, 5]. Incidence is a rate of occurrence and thus related to a longitudinal design, whereas prevalence is the frequency of occurrence at a given point in time and connects to a cross-sectional sample [6]. However, further operationalisation of these definitions requires a number of decisions for both the denominator and numerator. In general, there is low level of consensus on which operationalisations are best and various methods are applied. Besides, in some circumstances the available information does not allow us to choose between different definitions [7]. Moreover, what was already highlighted by Elandt-Johnson in 1975 and which is still true nowadays, is that there is a lack of precision and ambiguity in terminology within the field of epidemiology [8]. Especially round the term ‘rate’ which is interchangeably used with the term proportion and sometimes with the term ratio [8, 9]. As a consequence, the comparability of incidence rates and prevalence proportions between different sources is challenging. First, decisions are needed to establish the denominator. There are two main approaches used to define the patient population for the denominator, including the whole population in a year [10, 11], and the population at one specific point in time [12, 13]. For the calculation of incidence rates an at-risk population in a year is used as a third approach [14, 15]. Using person-years at risk is the correct method to calculate incidence rates according to the definition of incidence [4, 5, 16], however it is not always possible to adequately determine this population on the available information [7] and therefore also other denominators are used. Second, for prevalence proportions, the definition of the prevalence proportion needs to be specified, which affects both the denominator and numerator. There are three definitions used: 1) a point-prevalence, the proportion of the population that has a disease at a specific point in time [17-19], 2) a 1 year period prevalence, the proportion of the population that has a disease at some time during a year [10, 20, 21] and 3) a contact prevalence, the proportion of the population with at least one encounter with a health care professional for a disease during a year [22-25]. These operational definitions will affect incidence rates and prevalence proportions but their impact is unknown. Therefore, the purpose of the current study is to investigate the impact of different operational definitions on incidence rates and prevalence proportions based on general practice data.

Methods

NIVEL primary care database

Data were derived from electronic health records (EHRs) of general practices contributing to NIVEL Primary Care Database (https://www.nivel.nl/en/nivel-primary-care-database). Data included consultations, morbidity, diagnostic tests, and drug prescriptions of all patients enlisted in these practices. Diagnoses were recorded and classified by general practitioners (GPs) according to the International Classification of Primary Care 1 (ICPC-1) [26]. Data from 2010 to 2012 including 408 general practices (reference date of extraction of the database: October 20, 2014) were used to calculate incidence rates and prevalence proportions for 2012. To ensure completeness and good quality of data, only data from practices meeting quality criteria were used [27].

Denominator

Dutch inhabitants are obligatory linked to a general practice, including those persons who do not visit their associated GP. Therefore, the size, and age and gender distribution of the population can be determined from patient lists and the listed practice population represents the general population [2, 28].

Numerator

The numerator of incidence rates and prevalence proportions represents the number of persons with a particular symptom or disease. For determining the number of incident and prevalent cases, GP recorded diagnostic information was used. In their EHRs, GPs can link diagnostic information to encounters or so-called episodes of care, defined as the period between the first and last encounter for a certain health problem. However, for calculating incidence rates and prevalence proportions, episode of illness, which ‘extends from the onset of symptoms to their complete resolution’, are needed [29]. With data from NIVEL Primary Care Database, an algorithm was developed to construct episodes of illness based on recorded diagnoses of encounters and episodes of care [27]. The input for the algorithm consisted of raw data from EHRs over the period 2010–2012, including encounters recorded in episodes of care, single diagnosis-coded encounters and date of diagnosis for all chronic diseases that started before January 1st 2010. The first step of the development of the algorithm, was categorising all ICPC-1 codes in non-chronic (reversible) and chronic (non-reversible) diseases by a group of experts including researchers, epidemiologists, GPs and medical informaticians. For the analyses in this paper we only used the episodes of illness of 109 chronic diseases and 155 long-lasting non-chronic diseases. To estimate the number of incident and prevalent chronic cases in 2012, we used all encounters in the period 2010–2012 and the date of diagnosis that started before January 1st 2010 of recorded episodes of care. The start date of the episode is either the start date of the episode of care or the first encounter for this health problem in the period 2010–2012. For chronic diseases, no end date of the episode of illness is defined, since chronic diseases are considered irreversible. For the long-lasting non-chronic diseases, we used all recorded encounters and episodes of care in the period 2010–2012 to estimate incident and prevalent cases in 2012. To make a distinction between two consecutive episodes of illness for the same non-chronic disease, a minimum contact-free interval, i.e. a period in which it is likely that a patient does not visit the GP again if a disease is over, of 52 weeks was defined, depending on the assumed length of the disease episode. After this period of time, a new episode of illness may occur. The end date of the episode of illness was estimated as half of the contact-free interval (26 weeks) after the last encounter, since the patient is recovered between the date of the last encounter and a maximum of 52 weeks.

Incidence rates and prevalence proportions

EHRs provide information about the number of quarters patients were registered in a general practice in a year. The number of quarters registered is used to calculate the denominators. Most patients were registered for a whole year (90%), but due to moving, changing GP, death or birth, patients could be registered less than four quarters. Therefore, the term ‘person-year’ was used, which was defined as the number of quarters of the year that a patient was registered in a general practice. Incidence rates were calculated as the sum of all new episodes of illness of a certain disease in 2012 divided by the size of the population. The size of the population was defined in three ways: 1) the total population in a year in person-years, 2) the midterm population, defined as the size of the population on July 1st, 3) the number of patient years of the population at-risk in a year (Table 1). The at-risk period is the period that a patient was not recorded having a specific disease, i.e. the time that the patient is at-risk for getting that disease. Prevalent cases are thus not included in the population at-risk. When the population in a year or the population at one point time is used, the denominator is the same for each diagnose, whereas the denominator was calculated for each diagnose separately if the at-risk population was used.
Table 1

Definitions of Numerators and Denominators

NumeratorDenominator
Incidence rate
 Incidence rate: person-yearsSum of all new episodes of illness in 2012Person-years
 Incidence rate: person-years at-riskSum of all new episodes of illness in 2012Person-years at-risk
 Incidence rate: midterm populationSum of all new episodes of illness in 2012Midterm population
Prevalence proportion
 Point-prevalence proportionEpisodes on December 31thPopulation on December 31th
 1 year period prevalence proportionEpisodes in 2012Person-years
 Contact prevalence proportionNumber of persons with ≥1 contact in 2012Person-years
Definitions of Numerators and Denominators Year and point-prevalence proportions were calculated as the sum of all patients with a particular episode of illness divided by the population (Table 1). We used person-years as the denominator for 1 year period prevalence proportions and the size of the population on December 31th 2012 was used for point-prevalence proportions. The numerator for 1 year period prevalence proportions included all patients with an episode of illness in 2012, for point-prevalence proportions the numerator was the sum of patients with an on-going episode of illness on December 31th 2012. We also calculated contact prevalence proportions. These were calculated as the sum of all patients with at least one encounter with a general practitioner for a particular disease in 2012 divided by person-years. Incidence rates and prevalence proportions were calculated per 1000 persons or per 1000 person-years, whichever was appropriate. The ten highest incident and prevalent cases were tabulated. All calculations were performed using Stata 13.0.

Results

Population characteristics

After exclusion of practices that did not satisfy the quality criteria, the study population consisted of 312 general practices (76%) (Table 2) which were geographically evenly distributed over the Netherlands and formed a representative sample of Dutch general practices according to urbanization level of the practice location. The total number of registered patients was 1,223,818 representing 1,145,726 person-years. The mean age of the population was 40.0 ± 22.8 years and consisted of slightly more females (50.7%) than males. Population characteristics were representative for the Dutch population with respect to age and sex [30]. The population on July 1st, 2012 (the midterm population) consisted of 1,130,532 patients and on December 31th of 1,105,536 patients.
Table 2

Characteristics of the Study Population

Number of cases (n)Percentage (%)
Population characteristics
 Patients1,223,818
 Person-years1,145,726
Gender
 Male603,17949.3
 Female620,63950.7
Agea (year)
 0–463,9695.2
 5–17190,19715.5
 18–44432,43835.3
 45–64338,90427.7
 65–74111,2869.1
 75–8462,3955.1
  ≥ 8524,6292.0
General practice characteristics
 Number312
 Patients (mean ± SD)3923 ± 2449
 Person-years (mean ± SD)3672 ± 2289
Mode of practiceb
 Solo13342.6
 Duo7925.3
 Group7624.4
 Unknown247.7
Degree of urbanizationc
 Extremely urbanised6520.8
 Strongly urbanised7122.8
 Moderately urbanised5718.3
 Hardly urbanised6019.2
 Not urbanised4815.4
 Unknown113.5

aThe age of patients on the last day of the year was used for the total population

bIn a solo practice, one GP is working. In a duo practice two GPs are employed and in a group practice three or more GPs are engaged with the practice

cExtremely urbanized comprised of ≥2500 addresses/ km2; strongly urbanized of ≥1500–2500 addresses/ km2; moderately urbanised of ≥1000–1500 addresses/ km2; hardly urbanised of ≥500–1000 addresses/ km2; not urbanised of < 500 addresses/km2

Characteristics of the Study Population aThe age of patients on the last day of the year was used for the total population bIn a solo practice, one GP is working. In a duo practice two GPs are employed and in a group practice three or more GPs are engaged with the practice cExtremely urbanized comprised of ≥2500 addresses/ km2; strongly urbanized of ≥1500–2500 addresses/ km2; moderately urbanised of ≥1000–1500 addresses/ km2; hardly urbanised of ≥500–1000 addresses/ km2; not urbanised of < 500 addresses/km2

Incidence rates

Incidence rates of the ten highest incident diagnoses were calculated based on three different defined populations (Table 3). The use of person-years at-risk as denominator resulted in slightly higher rates compared to the use of person-years (0.9 - 14.8%). The differences were higher in chronic diagnoses than in long-lasting diagnoses.
Table 3

Incidence rates based on different denominators

Incidence rate /1,000Numerator:All new episodes in 2012All new episodes in 2012All new episodes in 2012Difference person-years at-risk – person-yearsDifference person-years at-risk – population on 1 JulyDifference person-years – population on 1 July
Denominator:Person-years at–riskaPerson-yearsbPopulation on 1 Julyc
Long-lasting diagnosis*ICPCMeanMeanMeanMean (%)Mean (%)Mean (%)
Contact dermatitis/ allergic eczemaS8834.7833.8334.280.95 (2.8%)0.50 (1.4%)-0.45 (-1.3%)
Hayfever/allergic rhinitisR9724.1423.4323.740.70 (3.0%)0.39 (1.7%)-0.31 (-1.3%)
ConstipationD1220.7520.3620.630.39 (1.9%)0.11 (0.6%)-0.27 (-1.3%)
Naevus/moleS8216.1115.9616.170.15 (0.9%)-0.06 (-0.8%)-0.21 (-1.3%)
Lumbar disc lesion, back pain with radiating painL8615.1314.9215.120.21 (1.4%)0.01 (0.1%)-0.20 (-1.3%)
Vitamin deficiency/other nutritional disorderT9112.9012.7412.910.16 (1.2%)-0.01 (-0.1%)-0.17 (-1.3%)
Shoulder syndromeL9211.9711.8612.010.11 (0.9%)-0.05 (-0.4%)-0.16 (-1.3%)
Depressive disorderP7610.7010.5110.650.20 (1.9%)0.06 (0.5%)-0.14 (-1.3%)
Allergy/allergic reactionA1210.2810.1910.330.09 (0.9%)-0.05 (-0.4%)-0.14 (-1.3%)
CataractF929.839.769.890.07 (0.7%)-0.06 (-0.6%)-0.13 (-1.3%)
Chronic diagnosis*ICPC
Uncomplicated hypertensionK8612.5910.9611.111.63 (14.8%)1.48 (13.3%)-0.15 (-1.3%)
Atopic dermatitis/other eczemaS8711.7510.9111.060.84 (7.7%)0.69 (6.3%)-0.15 (-1.3%)
Lipid metabolism disorderT938.507.978.080.52 (6.5%)0.42 (5.1%)-0.11 (-1.3%)
AsthmaR968.147.497.590.65 (8.7%)0.55 (7.2%)-0.10 (-1.3%)
Refractive errorsF914.994.884.950.10 (2.1%)0.04 (0.1%)-0.06 (-1.3%)
Diabetes mellitusT904.784.504.560.28 (6.3%)0.22 (4.9%)-0.06 (-1.3%)
Acquired deformity of limbsL984.394.274.330.12 (2.8%)0.06 (1.5%)-0.06 (-1.3%)
Atherosclerosis (excl. K76,K90)K914.184.154.200.04 (0.9%)-0.02 (-0.5%)-0.06 (-1.3%)
Malignant neoplasm of skinS773.823.743.780.09 (2.3%)0.04 (1.0%)-0.05 (-1.3%)
Osteoarthritis kneeL903.723.633.680.09 (2.6%)0.04 (1.2%)-0.05 (-1.3%)

*The ten highest incident long-lasting and chronic diagnoses are displayed

aNumber is per 1,000 person-years at-risk, bNumber is per 1,000 person-years, cNumber is per 1,000 persons

Incidence rates based on different denominators *The ten highest incident long-lasting and chronic diagnoses are displayed aNumber is per 1,000 person-years at-risk, bNumber is per 1,000 person-years, cNumber is per 1,000 persons Comparing the use of person-years at-risk with the midterm population, incidence rates are for some diseases higher when the population at-risk is used. For other diseases, rates are higher when the midterm population was used. Differences ranged from − 0.8 to 13.3%. When comparing the use of person-years with the midterm population, higher rates were found when the midterm population (difference − 1.3%). Absolute differences were low; ranging from − 0.05/1000 per year in chronic diseases to − 0.45/1000 per year in long-lasting diseases. For all three comparisons, differences were larger in high frequent diagnoses and smaller in low frequent diagnoses (results not shown).

Prevalence proportions

Comparing 1 year period prevalence proportions with point-prevalence proportions on December 31th, substantially higher proportions were found for 1 year period prevalence proportions of long-lasting diseases (differences: 58.3–206.6%) (Table 4). On the contrary, point-prevalence proportions resulted in slightly higher rates (difference 3.5%) in chronic diagnoses. Absolute differences ranged from − 5.04/1000 per year in chronic diseases to 33.72/1000 per year in long-lasting diseases.
Table 4

Comparison of prevalence proportions calculated with different methods

Prevalence proportion /1.0001 year period prevalenceaPoint prevalencebContact prevalencea
Numerator:Existing episodes in 2012Existing episodes on 31 Dec 2012Number of persons with ≥1 contact in 2012Difference 1 year period prevalence point prevalenceDifference 1 year period prevalence contact prevalenceDifference point prevalence contact prevalence
Denominator:Person-yearsPopulation on 31 Dec 2012Person-years
Long-lasting diagnosiscICPCMeanMeanMeanMean (%)Mean (%)Mean (%)
Contact dermatitis/ allergic eczemaS8858.4124.6841.3133.72 (136.6%)17.09 (41.4%)−16.63 (−40.3%)
Hayfever/allergic rhinitisR9747.9621.7735.2826.19 (120.3%)12.68 (35.9%)−13.51 (−38.3%)
ConstipationD1237.9418.2825.5719.66 (107.5%)12.37 (48.4%)−7.29 (−28.5%)
Lumbar disc lesion. Back pain with radiating painL8628.3113.6320.5014.68 (107.7%)7.81 (38.1%)−6.87 (−33.5%)
Depressive disorderP7628.2517.8421.6210.41 (58.3%)6.62 (30.6%)−3.78 (−17.5%)
Naevus/moleS8224.739.5117.0415.22 (160.1%)7.69 (45.1%)−7.53 (−44.2%)
Vitamin deficiency/other nutritional disorderT9122.3312.5517.709.78 (77.9%)4.64 (26.2%)−5.14 (−39.1%)
Shoulder syndromeL9220.818.7914.6212.02 (136.7%)6.19 (42.4%)−5.83 (−39.9%)
Tobacco abuseP1718.526.0410.3012.48 (206.6%)8.21 (79.7%)−4.26 (−41.4%)
Allergy/allergic reactionA1218.478.1312.3112.31 (127.2%)6.16 (50.0%)−4.18 (−34.0%)
Chronic diagnosiscICPC
Uncomplicated hypertensionK86139.92144.9694.78−5.04 (−3.5%)45.14 (47.6%)50.18 (52.9%)
AsthmaR9687.4690.6039.23−3.15 (− 3.5%)48.23 (122.9%)51.37 (130.9%)
Atopic dermatitis/other eczemaS8779.8282.6823.77−2.86 (−3.5%)56.05 (235.8%)58.91 (247.8%)
Lipid metabolism disorderT9367.8170.2530.41−2.44 (−3.5%)37.40 (123.0%)39.84 (131.0%)
Diabetes mellitusT9064.1266.4355.70−2.32 (−3.5%)8.41 (15.1%)10.73 (19.3%)
Acquired deformity of limbsL9831.0732.185.99−1.11 (−3.5%)25.07 (418.4%)26.19 (436.9%)
Emphysema/chronic obstructive pulmonary diseaseR9529.7230.7920.47−1.07 (−3.5%)9.25 (45.2%)10.32 (50.4%)
Osteoarthritis kneeL9027.9028.919.64−1.00 (−3.5%)18.26 (189.4%)19.26 (199.8%)
Malignant neoplasm of skinS7725.7126.648.98−0.92 (−3.5%)16.73 (186.3%)17.66 (196.6%)
Angina pectorisK7425.3926.3012.31−0.91 (−3.5%)13.08 (106.3%)14.00 (113.7%)

aNumber is per 1000 person-years, bNumber is per 1000 persons

cThe ten highest prevalent long-lasting and chronic diagnosis are displayed

Comparison of prevalence proportions calculated with different methods aNumber is per 1000 person-years, bNumber is per 1000 persons cThe ten highest prevalent long-lasting and chronic diagnosis are displayed When 1 year period prevalence proportions were compared to contact prevalence proportions, largest differences were found for prevalence proportions of chronic diseases. These differed from 15.1% to 418.4% for high frequent chronic diseases. Also differences in long-lasting diseases were relevant. 1 year period prevalence proportions were 26.2–79.7% higher. Absolute differences ranged from 4.64/1000 per year in long-lasting diseases to 56.05/1000 per year in chronic diseases. Finally, point-prevalence proportions were compared to contact prevalence proportions. Contact prevalence proportions were higher for long-lasting diseases (17.5–44.2%), whereas point-prevalence proportions were higher for chronic diseases (19.3–436.9%). Absolute differences ranged from -16.63/1000 per year in long-lasting diseases to 58.91/1000 per year in chronic diseases. For all three comparisons, differences were larger in low frequent diagnoses and smaller in high frequent diagnoses (results not shown).

Discussion

This study investigated to what extent different operational definitions of the numerator and denominator influence incidence rates and prevalence proportions. Different definitions to define the population denominator have a small effect on incidence rates. However, the use of an 1 year period prevalence proportion instead of a point-prevalence or contact prevalence results in large differences. Authors should therefore thoroughly report how they have calculated their presented epidemiological numbers. Besides, to ensure comparability of point-prevalence proportions from different studies, the time point used in the study should be reported. Valid incidence rates and prevalence proportions are important as they are the foundation to monitor diseases and they are used to formulate and reflect on healthcare policy [2]. Comparison of these epidemiological measures between different sources, like between different countries, is important as well as investigation on factors explaining differences lead to increased knowledge on both aetiology and prevention of diseases [3]. Operational definitions of the numerator and denominator to calculate incidence rates and prevalence proportions are of influence to the actual rates and proportions and therefore it is important to be aware of these influences in order to make fair comparisons. Theoretically, the use of person-years results in a more reliable denominator for incidence rates than the midterm population. Incidence rates include a time component which is not incorporated in a fixed population, and therefore, a population at one point in time is not appropriate. Furthermore, person-years take into account incomplete follow-up and results thereby in a more precise denominator. However, the number of person-years at-risk is the only correct reliable denominator as it corresponds best to the definition of incidence rates [4, 5, 16]. It is the only denominator that takes into account the time that a person suffers from a specific disease. This time should not be included in the denominator as the person is not at-risk of developing that disease during that time [4, 5, 16]. In fact, when using another definition of the denominator than person-years at-risk, it should be called an incidence proportion instead of an incidence rate [8]. However, all three used denominators in this study are used in general practice-based epidemiological research. In studies based on data from general practices in countries without a patient list, a population at one point in time is often used, as it is hard to define a reliable denominator in these countries [7]. Studies from general practices in countries with a patient list are not consistent in defining the denominator and use either person-years [21, 31–33] or person-years at-risk [34-36]. Based on the results of this study, it can be concluded that using different definitions of the population (i.e. different denominators) results in relevant differences in incident rates, especially in frequent and in highly frequent diseases. In general practice-based epidemiological research, 1 year period prevalence proportions, point-prevalence proportions as well as contact prevalence proportions are reported. Our results show clear differences between these three types of prevalence proportions. The most striking impact for long-lasting diagnoses was the decision for 1 year period prevalence proportions instead of point-prevalence proportions; 1 year period prevalence proportions were more than twice as high. Among prevalence proportions of chronic diagnoses, the largest differences were seen when a 1 year period prevalence proportion was calculated instead of a contact prevalence proportion. One year period prevalence proportions are most often used in general practice research. The major differences between 1 year period prevalence proportions and point-prevalence proportions on December 31th are caused by the number of persons with an ending episode in the course of a year for long-lasting diseases. When calculating an 1 year period prevalence proportion, all existing episodes in a year contribute to the numerator. Whereas in a point-prevalence the existing episodes on an indicated date are summed. The number of persons with an existing episode in a year is substantially higher than the number of persons with an existing episode on December 31th, explaining the large differences in prevalence proportions for long-lasting diseases. For chronic diseases, this does not apply as chronic diseases are non-reversible. The numerator only slightly differs through people that are deceased or moved. And as the number of people registered during the year in person-years are higher than the number of people registered on December 31th, point-prevalence proportions are slightly higher than 1 year period prevalence proportions for chronic diseases. The substantially higher 1 year period prevalence proportions compared to contact prevalence proportions are caused by the numerator, since for both prevalence proportions the denominator is the number of person-years. For 1 year period prevalence proportions, existing and new episodes are summed in the numerator, whereas for contact prevalence proportions, the number of persons with a contact for a specific disease are summed. The difference is caused by episodes of illness without an encounter in the forthcoming year. Differences were in particular higher for chronic diseases. This is caused by the fact that chronic diseases have a life-long history and people may not visit their GP for a while. People may not suffer that much to visit the GP in a particular year, or they are solely visiting secondary care for their chronic disease. This is how using contact prevalence proportions can introduce errors. Especially for chronic diseases, the contact prevalence proportion can largely differ from that of other prevalence proportions because the contact prevalence depends on the condition and on the amount of care a patient needs. Some conditions increase utilization of GP care while others do not. This is important to keep in mind when considering the use of contact prevalence proportions. Next to the importance of differences in incidence rates and prevalence proportions calculation, also differences in the studied population (for example in age, sex, socio-economic class, ethnic background etc.) could result in large differences in presented incidence rates and prevalence proportions. Which also make comparisons across studies harder. Standardization of rates to age and sex will help to overcome this issue. A strength of current study is that we were able to apply all different operational definitions of incidence rates and prevalence proportions on the same dataset. Therefore, other causes contributing to differences in rates and proportions, like differences between databases and between populations [37, 38], did not influence the epidemiological measures. A limitation is the focus on long-lasting and chronic diseases. Operational definitions for incidence rates could also been investigated for acute diagnoses, but as 1 year prevalence proportions and contact prevalence proportions are comparable due to the short minimum contact-free interval of acute diagnosis this comparison is less interesting. Besides, point-prevalence proportions are less interesting as well through the seasonal influences of acute diagnosis. Another limitation is the fact that the used general practice data is not 100% complete. Only data from practices meeting quality criteria were used in present study. This ensures good quality of data, but it does not guarantee completeness of data. We do not think that this limitation influenced our results as we studied differences between incidence rate and prevalence proportions; we did not focus on the incidence rates or prevalence proportions of specific diagnosis. Another limitation is the possible bias introduced by using quarters of a year to define the denominator. However, our patient population can only be defined by health care claims by the GP. For each patient, a GP claims a certain amount of money each quarter. We do not think this has a large impact on our findings, as around 90% of the population is registered the complete year in a practice.

Conclusion

Operational definitions of denominators and numerators to calculate incidence rates and prevalence proportions influence these epidemiological measures to some extent and thereby affect the comparability of studies. Using different denominators accounts for only slight differences in incidence rates. In contrast, the decision for the type of prevalence has high impact on prevalence proportions. It is therefore important that both the terminology and methodology is well described by sources reporting these epidemiological measures. When comparing incidence rates and prevalence proportions from different sources, it is very important to be aware of the operational definitions applied and their impact.
  32 in total

1.  Definition of rates: some remarks on their use and misuse.

Authors:  R C Elandt-Johnson
Journal:  Am J Epidemiol       Date:  1975-10       Impact factor: 4.897

2.  Event history analysis and the cross-section.

Authors:  Niels Keiding
Journal:  Stat Med       Date:  2006-07-30       Impact factor: 2.373

3.  Using registries in general practice to estimate countrywide morbidity in The Netherlands.

Authors:  Ronald Gijsen; Marinus J J C Poos
Journal:  Public Health       Date:  2006-09-01       Impact factor: 2.427

4.  The denominator in general practice, a new approach from the Intego database.

Authors:  Stefaan Bartholomeeusen; Chang-Yeon Kim; Raf Mertens; Christel Faes; Frank Buntinx
Journal:  Fam Pract       Date:  2005-06-17       Impact factor: 2.267

5.  Estimating population-based incidence and prevalence of major coronary events.

Authors:  S Giampaoli; L Palmieri; R Capocaccia; L Pilotto; D Vanuzzo
Journal:  Int J Epidemiol       Date:  2001-10       Impact factor: 7.196

6.  Measuring disease prevalence: a comparison of musculoskeletal disease using four general practice consultation databases.

Authors:  Kelvin Jordan; Alexandra M Clarke; Deborah P M Symmons; Douglas Fleming; Mark Porcheret; Umesh T Kadam; Peter Croft
Journal:  Br J Gen Pract       Date:  2007-01       Impact factor: 5.386

7.  Mumps, measles, and rubella vaccine and the incidence of autism recorded by general practitioners: a time trend analysis.

Authors:  J A Kaye; M del Mar Melero-Montes; H Jick
Journal:  BMJ       Date:  2001-02-24

8.  Incidence and prevalence of complaints of the neck and upper extremity in general practice.

Authors:  S D M Bot; J M van der Waal; C B Terwee; D A W M van der Windt; F G Schellevis; L M Bouter; J Dekker
Journal:  Ann Rheum Dis       Date:  2005-01       Impact factor: 19.103

9.  Gout epidemiology: results from the UK General Practice Research Database, 1990-1999.

Authors:  T R Mikuls; J T Farrar; W B Bilker; S Fernandes; H R Schumacher; K G Saag
Journal:  Ann Rheum Dis       Date:  2005-02       Impact factor: 19.103

10.  Using administrative data to analyze the prevalence and distribution of schizophrenic disorders.

Authors:  Elliot M Goldner; Wayne Jones; Paul Waraich
Journal:  Psychiatr Serv       Date:  2003-07       Impact factor: 3.084

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  24 in total

1.  Trends in incidence and epidemiologic characteristics of cerebral venous thrombosis in the United States.

Authors:  Fadar Oliver Otite; Smit Patel; Richa Sharma; Pushti Khandwala; Devashish Desai; Julius Gene Latorre; Emmanuel Oladele Akano; Nnabuchi Anikpezie; Saef Izzy; Amer M Malik; Dileep Yavagal; Priyank Khandelwal; Seemant Chaturvedi
Journal:  Neurology       Date:  2020-08-26       Impact factor: 9.910

2.  Non-Invasive Multimodal Neuromonitoring in Non-Critically Ill Hospitalized Adult Patients With COVID-19: A Systematic Review and Meta-Analysis.

Authors:  Denise Battaglini; Lavienraj Premraj; Samuel Huth; Jonathon Fanning; Glenn Whitman; Rakesh C Arora; Judith Bellapart; Diego Bastos Porto; Fabio Silvio Taccone; Jacky Y Suen; Gianluigi Li Bassi; John F Fraser; Rafael Badenes; Sung-Min Cho; Chiara Robba
Journal:  Front Neurol       Date:  2022-04-14       Impact factor: 4.086

3.  Prevalence of Delirium in End-of-Life Palliative Care Patients: An Observational Study.

Authors:  Angela Recchia; Barbara Rizzi; Alessandra Favero; Alessandro Nobili; Luca Pasina
Journal:  Med Princ Pract       Date:  2022-01-17       Impact factor: 2.132

4.  Epidemiology of Childhood-Onset Systemic Lupus Erythematosus: A Population-Based Study.

Authors:  Maria O Valenzuela-Almada; Mehmet Hocaoglu; Jesse Y Dabit; Shirley-Ann Osei-Onomah; Matthew L Basiaga; Amir B Orandi; Rachel E Giblon; Kamil E Barbour; Cynthia S Crowson; Alí Duarte-García
Journal:  Arthritis Care Res (Hoboken)       Date:  2022-02-22       Impact factor: 5.178

5.  Prevalence of Birt-Hogg-Dubé Syndrome Determined Through Epidemiological Data on Spontaneous Pneumothorax and Bayes Theorem.

Authors:  Marie-Eve Muller; Cécile Daccord; Patrick Taffé; Romain Lazor
Journal:  Front Med (Lausanne)       Date:  2021-04-27

6.  Towards a needs-based design of the physical rehabilitation workforce in South Africa: trend analysis [1990-2017] and a 5-year forecasting for the most impactful health conditions based on global burden of disease estimates.

Authors:  Q Louw; K Grimmer; K Berner; T Conradie; D T Bedada; T S Jesus
Journal:  BMC Public Health       Date:  2021-05-13       Impact factor: 3.295

7.  Anxiety problems in children and adolescents: a population-based cohort study on incidence and management in Dutch primary care.

Authors:  Lukas Bm Koet; Evelien It de Schepper; Arthur M Bohnen; Patrick Je Bindels; Heike Gerger
Journal:  Br J Gen Pract       Date:  2022-05-26       Impact factor: 6.302

Review 8.  Foundational Statistical Principles in Medical Research: A Tutorial on Odds Ratios, Relative Risk, Absolute Risk, and Number Needed to Treat.

Authors:  Thomas F Monaghan; Syed N Rahman; Christina W Agudelo; Alan J Wein; Jason M Lazar; Karel Everaert; Roger R Dmochowski
Journal:  Int J Environ Res Public Health       Date:  2021-05-25       Impact factor: 3.390

9.  Epidemiology and management of atopic dermatitis in England: an observational cohort study protocol.

Authors:  Simon de Lusignan; Helen Alexander; Conor Broderick; John Dennis; Andrew McGovern; Claire Feeney; Carsten Flohr
Journal:  BMJ Open       Date:  2020-09-16       Impact factor: 2.692

10.  Socioeconomic inequalities in type 2 diabetes in employed individuals, nonworking spouses and pensioners.

Authors:  Batoul Safieddine; Stefanie Sperlich; Johannes Beller; Karin Lange; Jelena Epping; Juliane Tetzlaff; Fabian Tetzlaff; Siegfried Geyer
Journal:  SSM Popul Health       Date:  2020-05-11
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