Feature Selection via Genetic Algorithms in the Classification of Anti-Snake Venom Medicinal Plants
نویسندگان
چکیده
منابع مشابه
Snake Venom, Anti-snake Venom & Potential of Snake Venom
Many active secretions produced by animals have been employed in the development of new drugs to treat diseases such as hypertension and cancer. Snake venom toxins contributed significantly to the treatment of many medical conditions. Venomous snakes have a bad reputation and rightly so because of their often deadly bites. But what makes a snake’s bite so deadly is the venom. Of the 3000 snake ...
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This study was done to determine whether high or low dose of anti-snake venom (ASV) is better in coagulopathy in victims of envenoming by vipers. This retrospective study was conducted on the 154 patients (Mean age ± SD, Range) of viper snake bites who were referred to the emergency ward of Razi Hospital, Ahvaz, Iran over 2 years period (2004 - 2006). According to the treatment dosage the patie...
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ژورنال
عنوان ژورنال: Learning and Nonlinear Models
سال: 2010
ISSN: 1676-2789
DOI: 10.21528/lnlm-vol8-no3-art1