E Douwes1, N R Crouch, T J Edwards, D A Mulholland. 1. School of Biological and Conservation Sciences, University of KwaZulu-Natal, Private Bag X01, Scottsville 3209, South Africa.
Abstract
ETHNOPHARMACOLOGICAL RELEVANCE: Regression analyses of local medicinal floras are considered potentially useful when prioritising candidate plant taxa for pharmacological/bioprospecting investigations. AIM OF THE STUDY: To identify plant orders and subsequently families within the highly diverse ethnomedicinal flora of southern Africa, towards which biases by traditional healers are demonstrable. Taxa so identified can subsequently be weighted appropriately in semi-quantitative selection systems. METHODOLOGY: Plant data sourced from the SANBI MedList database, the most comprehensive inventory of ethnomedicinal plants for the Flora of southern Africa region were grouped by order. A least squares regression analysis was applied to test the null hypothesis that the use of these plants by traditional healers is strictly random. Of 'hot' orders subsequently identified, characteristics of taxa therein were assessed to better determine the roles played by (i) growth forms, and (ii) inherent chemical diversity, in plant selections by ethnomedicinal practitioners. RESULTS: Analyses identified seven principally 'hot' plant orders (Malpigiales, Fabales, Gentianales, Asteraceae, Solanales, Malvales and Sapindales) and 'hot' families therein from a total of 55 regional ethnomedicinal orders. Five 'cold' ethnomedicinal orders (Rosales, Proteales, Poales, Asparagales and Caryophyllales) were shown to be significantly less represented in the medicinal flora than predicted. No clear growth form preferences were identified across orders. The presence of highly diverse bioactives was evident in the 'hottest' plant families from 'hot' plant orders. CONCLUSIONS: These 12 outliers identified by the regression analyses allowed for the falsification of the null hypothesis. Indications are that 'hot' taxa are selected traditionally on the basis of bioactivity, which is reflected in chemical diversity.
ETHNOPHARMACOLOGICAL RELEVANCE: Regression analyses of local medicinal floras are considered potentially useful when prioritising candidate plant taxa for pharmacological/bioprospecting investigations. AIM OF THE STUDY: To identify plant orders and subsequently families within the highly diverse ethnomedicinal flora of southern Africa, towards which biases by traditional healers are demonstrable. Taxa so identified can subsequently be weighted appropriately in semi-quantitative selection systems. METHODOLOGY: Plant data sourced from the SANBI MedList database, the most comprehensive inventory of ethnomedicinal plants for the Flora of southern Africa region were grouped by order. A least squares regression analysis was applied to test the null hypothesis that the use of these plants by traditional healers is strictly random. Of 'hot' orders subsequently identified, characteristics of taxa therein were assessed to better determine the roles played by (i) growth forms, and (ii) inherent chemical diversity, in plant selections by ethnomedicinal practitioners. RESULTS: Analyses identified seven principally 'hot' plant orders (Malpigiales, Fabales, Gentianales, Asteraceae, Solanales, Malvales and Sapindales) and 'hot' families therein from a total of 55 regional ethnomedicinal orders. Five 'cold' ethnomedicinal orders (Rosales, Proteales, Poales, Asparagales and Caryophyllales) were shown to be significantly less represented in the medicinal flora than predicted. No clear growth form preferences were identified across orders. The presence of highly diverse bioactives was evident in the 'hottest' plant families from 'hot' plant orders. CONCLUSIONS: These 12 outliers identified by the regression analyses allowed for the falsification of the null hypothesis. Indications are that 'hot' taxa are selected traditionally on the basis of bioactivity, which is reflected in chemical diversity.
Authors: Clarissa Fernanda de Queiroz Siqueira; Daniela Lyra Vasconcelos Cabral; Tadeu José da Silva Peixoto Sobrinho; Elba Lúcia Cavalcanti de Amorim; Joabe Gomes de Melo; Thiago Antônio de Sousa Araújo; Ulysses Paulino de Albuquerque Journal: Evid Based Complement Alternat Med Date: 2011-09-29 Impact factor: 2.629
Authors: C Haris Saslis-Lagoudakis; Bente B Klitgaard; Félix Forest; Louise Francis; Vincent Savolainen; Elizabeth M Williamson; Julie A Hawkins Journal: PLoS One Date: 2011-07-18 Impact factor: 3.240