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International Harmonization of Nomenclature and Diagnostic Criteria (INHAND): Nonproliferative and Proliferative Lesions of the Dog.

Jochen WoickeMuthafar M Al-HaddawiJean-Guy BienvenuJessica M Caverly RaeFranck J ChanutKaryn ColmanJohn M CullenWendell DavisRyo FukudaMaike HuisingaUrsula Junker WalkerKiyonori KaiRamesh C KoviNicholas P MacriHeike Antje MarxfeldKristen J NikulaIngrid D PardoThomas J RosolAlok K SharmaBhanu P SinghKazutoshi TamuraMichael S ThibodeauEnrico VezzaliJustin D VidalEmily K Meseck
Published in: Toxicologic pathology (2021)
The INHAND (International Harmonization of Nomenclature and Diagnostic Criteria for Lesions) Project (www.toxpath.org/inhand.asp) is a joint initiative of the societies of toxicologic Pathology from Europe (ESTP), Great Britain (BSTP), Japan (JSTP), and North America (STP) to develop an internationally accepted nomenclature for proliferative and nonproliferative lesions in laboratory animals. The purpose of this publication is to provide a standardized nomenclature for classifying lesions observed in most tissues and organs from the dog used in nonclinical safety studies. Some of the lesions are illustrated by color photomicrographs. The standardized nomenclature presented in this document is also available electronically on the internet (http://www.goreni.org/). Sources of material included histopathology databases from government, academia, and industrial laboratories throughout the world. Content includes spontaneous lesions, lesions induced by exposure to test materials, and relevant infectious and parasitic lesions. A widely accepted and utilized international harmonization of nomenclature for lesions in laboratory animals will provide a common language among regulatory and scientific research organizations in different countries and increase and enrich international exchanges of information among toxicologists and pathologists.
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