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Non-structural carbohydrates mediate seasonal water stress across Amazon forests.

Caroline Signori-MüllerRafael Silva OliveiraFernanda de Vasconcellos BarrosJulia Valentim TavaresMartin GilpinFrancisco Carvalho DinizManuel J Marca ZevallosCarlos A Salas YupayccanaMartin AcostaJean BaccaRudi S Cruz ChinoGina M Aramayo CuellarEdwin R M CumapaFranklin MartinezFlor M Pérez MullisacaAlex NinaJesus M Bañon SanchezLeticia Fernandes da SilvaLigia TelloJosé Sanchez TintayaMaira T Martinez UgartecheTimothy R BakerPaulo R L BittencourtLaura S BormaMauro BrumWenderson CastroEuridice N Honorio CoronadoEric G CosioTed R FeldpauschLetícia d'Agosto Miguel FonsecaEmanuel GloorGerardo Flores LlampazoYadvinder MalhiAbel Monteagudo MendozaVictor Chama MoscosoAlejandro Araujo-MurakamiOliver L PhillipsNorma SalinasMarcos SilveiraJoey TalbotRodolfo VasquezMaurizio MencucciniDavid R Galbraith
Published in: Nature communications (2021)
Non-structural carbohydrates (NSC) are major substrates for plant metabolism and have been implicated in mediating drought-induced tree mortality. Despite their significance, NSC dynamics in tropical forests remain little studied. We present leaf and branch NSC data for 82 Amazon canopy tree species in six sites spanning a broad precipitation gradient. During the wet season, total NSC (NSCT) concentrations in both organs were remarkably similar across communities. However, NSCT and its soluble sugar (SS) and starch components varied much more across sites during the dry season. Notably, the proportion of leaf NSCT in the form of SS (SS:NSCT) increased greatly in the dry season in almost all species in the driest sites, implying an important role of SS in mediating water stress in these sites. This adjustment of leaf NSC balance was not observed in tree species less-adapted to water deficit, even under exceptionally dry conditions. Thus, leaf carbon metabolism may help to explain floristic sorting across water availability gradients in Amazonia and enable better prediction of forest responses to future climate change.
Keyphrases
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