| Literature DB >> 27795730 |
Wendy Torres-Avilez1, Patrícia Muniz de Medeiros2, Ulysses Paulino Albuquerque1.
Abstract
Knowledge of medicinal plants is not only one of the main components in the structure of knowledge in local medical systems but also one of the most studied resources. This study uses a systematic review and meta-analysis of a compilation of ethnobiological studies with a medicinal plant component and the variable of gender to evaluate whether there is a gender-based pattern in medicinal plant knowledge on different scales (national, continental, and global). In this study, three types of meta-analysis are conducted on different scales. We detect no significant differences on the global level; women and men have the same rich knowledge. On the national and continental levels, significant differences are observed in both directions (significant for men and for women), and a lack of significant differences in the knowledge of the genders is also observed. This finding demonstrates that there is no gender-based pattern for knowledge on different scales.Entities:
Year: 2016 PMID: 27795730 PMCID: PMC5067321 DOI: 10.1155/2016/6592363
Source DB: PubMed Journal: Evid Based Complement Alternat Med ISSN: 1741-427X Impact factor: 2.629
Example of the results of searches for ethnobiological studies on gender and medicinal plant knowledge in the Science Direct database.
| Keywords | Search results | Records selected | Records included | Records duplicated in other search results |
|---|---|---|---|---|
| “medicinal plants” AND gender | 1,183 | 35 | 19 | 16 |
| ethnobiology AND gender | 222 | 16 | 4 | 12 |
| ethnobotany AND gender | 338 | 31 | 5 | 26 |
| ethnomedicine AND gender | 268 | 11 | 0 | 11 |
| “traditional medicinal systems” AND gender | 7 | 1 | 0 | 1 |
| “traditional ecological knowledge” AND gender | 195 | 8 | 2 | 6 |
| “traditional medicine” AND gender | 1,640 | 23 | 1 | 22 |
| ethnopharmacology AND “medicinal plants” | 8,524 | 14 | 0 | 14 |
| “medical anthropology” AND gender | 1,261 | 2 | 0 | 2 |
| “quantitative ethnobotany” AND gender | 56 | 10 | 0 | 10 |
| “quantitative ethnobotany” AND medicinal plants | 183 | 11 | 0 | 11 |
| “intracultural variation” AND “medicinal plants” | 1 | 1 | 0 | 1 |
| “local knowledge” AND “medicinal plants” | 405 | 20 | 4 | 16 |
| “local knowledge” AND gender | 1,859 | 8 | 0 | 8 |
Number and list of studies by continent and country.
| Continent | Country | Number of studies | Studies |
|---|---|---|---|
| Africa |
| ||
| Burkina Faso | 2 | [ | |
| Ethiopia | 9 | [ | |
| Kenya | 3 | [ | |
| Lesotho | 1 | [ | |
| Madagascar | 2 | [ | |
| Mozambique | 1 | [ | |
| Niger | 3 | [ | |
| South Africa | 1 | [ | |
| Tanzania | 2 | [ | |
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| America |
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| Brazil | 16 | [ | |
| Dominica | 1 | [ | |
| Mexico | 5 | [ | |
| Peru | 2 | [ | |
| Venezuela | 1 | [ | |
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| Asia |
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| India | 2 | [ | |
| Indonesia | 1 | [ | |
| Manus Island | 1 | [ | |
| Pakistan | 2 | [ | |
| Palestine | 1 | [ | |
| Philippines | 1 | [ | |
| Thailand | 2 | [ | |
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| Europe |
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| Austria | 1 | [ | |
| Czech Republic | 1 | [ | |
| Italy | 1 | [ | |
| Serbia | 2 | [ | |
| Spain | 1 | [ | |
Figure 1Flowchart summarising the selection of ethnobiological studies of gender and medicinal plant knowledge. Format proposed by Moher et al. [24].
Percentage of studies in each risk category based on the quality of the sample [34]. U is the total population size, and N is the sample size in relation to U.
| Origin of the sample | Sample | Risk level | Percentage of studies |
|---|---|---|---|
| (1) When the sample is determined by the total number of people or an age interval | (b) When | High | 10 |
| (b) When | High | 2 | |
| (c) When there is no information about | High | 56 | |
| (a) When | Low | 3 | |
| (b) When | Low | 3 | |
| (a) When | Moderate | 3 | |
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| (2) When the sample is based on heads of household (one or two per household) | (b) When | High | 2 |
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| (3) When the sample is based on households | (b) When | High | 3 |
| (b) When | High | 2 | |
| (c) When there is no information on the number of households or | High | 7 | |
| (b) When, in the representative number of homes, one of the household members is interviewed, with a randomized sample and a margin of error of up to 5%. | Low | 2 | |
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| (4) When the sample is intentionally focused on an interest group (e.g., midwives, herbalists, or local specialists) | (d) In cases of local specialists, when there is no indication of the total, but the snowball technique is used to select the principal people with knowledge. | Moderate | 2 |
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| (5) When participatory methods are used | (b) When there is no information about the size of the population or group in question, but information about the number of participants is provided. | Moderate | 2 |
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| (6) Diffuse selection criteria | (a) When there is no information on | High | 5 |
A total of 80% of the complete (100%) sample is used with a margin of error of less than 5%.
Analysis of the medicinal plant knowledge of the two genders on the global level.
| Type of meta-analysis | Total | Number per gender | Results |
|---|---|---|---|
| Simple count | T = 60 | W = 33 |
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| Vote count | T = 47 | WM = 12 |
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| Effect size calculation | T = 21 | W = 14 | SD |
T: total studies analysed.
W: number of studies in which women know more.
M: number of studies in which men know more.
WM: number of statistically tested studies in which women know more.
MM: number of statistically tested studies in which men know more.
ND: number of statistically tested studies in which there is no difference in knowledge between the genders.
Analysis of the medicinal plant knowledge of the two genders on the continental level.
| Type of meta-analysis | Total studies | Africa | America | Asia | Europe | Results |
|---|---|---|---|---|---|---|
| Simple count | T = 60 | W = 5 | W = 18 | W = 5 | W = 5 |
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| Vote count | T = 47 | WM = 1 | WM = 6 | WM = 3 | WM = 2 |
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| Effect size calculation | T = 21 | W = 5 | W = 8 | M = 1 | W = 1 | SD |
T: total studies analysed.
W: number of studies in which women know more.
M: number of studies in which men know more.
WM: number of statistically tested studies in which women know more.
MM: number of statistically tested studies in which men know more.
ND: number of statistically tested studies in which there is no difference in knowledge between the genders.
Analysis of the medicinal plant knowledge of the two genders on the national level.
| Type of meta-analysis | Total | Brazil | Ethiopia | Results |
|---|---|---|---|---|
| Simple count | T = 22 | W = 12 | W = 0 |
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| Vote count | T = 21 | WM = 4 | WM = 0 |
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| Effect size calculation | — | — | — | — |
T: total studies analysed.
W: number of studies in which women know more.
M: number of studies in which men know more.
WM: number of statistically tested studies in which women know more.
MM: number of statistically tested studies in which men know more.
ND: number of statistically tested studies in which there is no difference in knowledge between the genders.
List of studies analysed.
| Study | Country of study | Continent | Simple count | Vote count | Effect size | Bias criteria |
|---|---|---|---|---|---|---|
| Ayantunde et al. [ | Niger | Africa | MM | ND | 0.1184 | 1Ab |
| Beltrán-Rodríguez et al. [ | Mexico | America | WM | ND | 0.3158 | 1Ab |
| Da Silva and Proença [ | Brazil | America | ND | 1Ab | ||
| Kidane et al. [ | Ethiopia | Africa | MM | SM | 1Ab | |
| Voeks and Leony [ | Brazil | America | WM | SW | 1Ab | |
| Zucchi et al. [ | Brazil | America | WM | 1Ab | ||
| Begossi et al. [ | Brazil | America | WM | 0.3165 | 1Ab-1Ac | |
| Augustino et al. [ | Tanzania | Africa | MM | SM | 1Ac | |
| Bruschi et al. [ | Mozambique | Africa | WM | SW | 0.772 | 1Ac |
| Estrada-Castillón et al. [ | Mexico | America | WM | ND | 1Ac | |
| Giday et al. [ | Ethiopia | Africa | MM | SM | 1Ac | |
| Giday et al. [ | Ethiopia | Africa | MM | SM | 1Ac | |
| Giday et al. [ | Ethiopia | Africa | MM | SM | 1Ac | |
| Khuankaew et al. [ | Thailand | Asia | WM | ND | 1Ac | |
| Kristensen and Balslev [ | Burkina Faso | Africa | MM | ND | 1Ac | |
| Bisht et al. [ | India | Asia | MM | ND | −0.0483 | 1Ac |
| Lulekal et al. [ | Ethiopia | Africa | MM | ND | 0.1822 | 1Ac |
| Miranda et al. [ | Brazil | America | ND | 1Ac | ||
| Müller et al. [ | Niger | Africa | WM | ND | 1.0977 | 1Ac |
| Nanyingi et al. [ | Kenya | Africa | ND | 1Ac | ||
| Ngari et al. [ | Kenya | Africa | MM | SM | −0.6512 | 1Ac |
| Ong and Kim [ | Philippines | Asia | WM | SF | 1Ac | |
| M. B. Quinlan and R. J. Quinlan [ | Dominica | America | WM | 1Ac | ||
| Qureshi et al. [ | Pakistan | Asia | MM | 1Ac | ||
| Reyes-García et al. [ | Spain | Europe | WM | SF | 1Ac | |
| Santos et al. [ | Brazil | America | WM | SF | 1Ac | |
| Šavikin et al. [ | Serbia | Europe | WM | ND | 0.2556 | 1Ac |
| Savo et al. [ | Italy | Europe | WM | 1Ac | ||
| Schunko et al. [ | Austria | Europe | WM | SF | 1Ac | |
| Semwal et al. [ | India | Asia | MM | 1Ac | ||
| Silva et al. [ | Brazil | America | WM | 0.4867 | 1Ac | |
| Silva et al. [ | Brazil | America | WM | ND | −0.205 | 1Ac |
| Sop et al. [ | Burkina Faso | Africa | WM | ND | 0.0976 | 1Ac |
| Souto and Ticktin [ | Venezuela | America | — | ND | 1Ac | |
| Srithi et al. [ | Thailand | Asia | WM | SF | 1Ac | |
| Stagegaard et al. [ | Peru | America | MM | — | 1Ac | |
| Teklehaymanot [ | Ethiopia | Africa | MM | SM | −7.0521 | 1Ac |
| Voeks [ | Brazil | America | WM | SF | 1Ac | |
| Warui [ | Kenya | Africa | MM | SM | 1Ac | |
| Zank and Hanazaki [ | Brazil | America | WM | ND | 0.2751 | 1Ac |
| Zlatković et al. [ | Serbia | Europe | MM | ND | 1Ac | |
| Alencar et al. [ | Brazil | America | WM | ND | 0.0126 | 1Ba |
| Caniago and Siebert [ | Indonesia | Asia | WM | 1Ba | ||
| Lyon and Hardesty [ | Madagascar | Africa | WM | 1Bb | ||
| Sawalha et al. [ | Palestine | Asia | WM | SW | 1Bb | |
| Albuquerque et al. [ | Brazil | America | MM | SM | −0.22062 | 1Ma |
| Teklehaymanot and Giday [ | Ethiopia | Africa | MM | SM | −1.9016 | 1Ma |
| Luoga et al. [ | Tanzania | Africa | MM | — | −3.1018 | 2Ab |
| Camou-Guerrero et al. [ | Mexico | America | WM | SW | 0.6552 | 3Ab |
| Luziatelli et al. [ | Peru | America | WM | SW | 3Ab | |
| de Almeida et al. [ | Brazil | America | WM | SW | 0.443 | 3Ab-3Ac |
| Letšela et al. [ | Lesotho | Africa | MM | SM | 3Ac | |
| Andriamparany et al. [ | Madagascar | Africa | WM | 3Ac | ||
| Guimbo et al. [ | Niger | Africa | MM | ND | 3Ac | |
| Merétika et al. [ | Brazil | America | WM | ND | 0.5362 | 3Ac |
| de Almeida et al. [ | Brazil | America | — | ND | 3Bb | |
| de Brito and de Senna-Valle [ | Brazil | America | WM | 4Md | ||
| Sher et al. [ | Pakistan | Asia | MM | 6Mb | ||
| Case et al. [ | Papua New Guinea | Asia | MM | ND | 7a | |
| Dovie et al. [ | South Africa | Africa | MM | 7a | ||
| Knotek et al. [ | Czech Republic | Europe | WM | 7a |
Study of three communities.
MM: men know more; WM: women know more.
SW: significant for women; SM: significant for men; ND: no significant difference.
In the effect size column, a positive value indicates that women know more and a negative value indicates that men know more.
Bias criteria
(1) When the sample is extracted from the total number of people or from an age group:
A = high; b = when N is less than 80% of the value necessary for its representation with a margin of error of up to 5%.
M = moderate; a = when N is extracted from U with randomisation and a margin of error that is greater than 5% but less than 10%.
B = low; a = when U is equal to N; b = when N is representative of U with a randomised sample and a margin of error of up to 5%.
(2) When the sample is based on heads of household (one or two per home):
A = high; b = when N is less than 80% of the value necessary to represent the heads of household with a margin of error of up to 5%.
(3) When the sample is based on households:
A = high; c = when there is no information about the number of households or N; b = when N is less than 80% of the value necessary to represent the households with a margin of error of up to 5%.
B = low; b = when in the representative number of households one of the household members is interviewed, with a randomised sample and a margin of error of up to 5%.
(4) When the sample is intentionally focused on an interest group (e.g., midwives, herbalists, or local specialists):
M = moderate; d = in cases of local specialists, when there is no indication of the total, but the snowball technique is used to select the principal people with knowledge.
(5) When participatory methods are used:
M = moderate; b = when there is no information about the size of the population or the group in question, but information about the number of participants is provided.
(6) Diffuse selection criteria:
A = high; a = when there is no information on N or U.