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Nombre d'espècimens identificats×Anàlisi de la textura del desgast microscòpic dental×
CampArqueologiaArqueologia
FamíliaProcess / pipelineProcess / pipeline
Any d'origen19711988
Autor originalR. E. ChaplinPeter Teaford
TipusFaunal quantification methodDietary inference method
Font seminalChaplin, R. E. (1971). The Study of Animal Bones from Archaeological Sites. Seminar Press. link ↗Ungar, P. S. (2007). Evolution of the human diet: The known, the unknown, and the unknowable. Oxford University Press. link ↗
ÀliesNISP method, specimen countmicrowear analysis, dental wear analysis
Relacionats44
ResumNumber of identified specimens (NISP) is a fundamental zooarchaeological method that quantifies the abundance of faunal remains by counting all identifiable bone fragments or specimens in an assemblage. Formalized by R. E. Chaplin and later refined by Donald Grayson and others, NISP is the most straightforward and widely used quantification metric in zooarchaeology. Despite its simplicity, NISP is sensitive to both cultural and taphonomic factors that affect preservation, fragmentation, and identification of bone assemblages.Dental microwear texture analysis (DMTA) is a method that reconstructs diet and dietary behavior from microscopic wear patterns on the surfaces of teeth. Pioneered by Mark Teaford in the 1980s, DMTA analyzes the three-dimensional texture of wear patterns produced as food is chewed. The method reflects short-term (last few months) dietary composition, complementing longer-term dietary information obtained from stable isotope analysis. DMTA has proven powerful for distinguishing diets rich in tough/fibrous foods from those dominated by hard/brittle foods.
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ScholarGateCompara mètodes: Number of Identified Specimens · Dental Microwear Texture Analysis. Recuperat el 2026-06-20 de https://scholargate.app/ca/compare