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Key_Alcohol_Anem.doc

Course: NS 160, Fall 2009
School: Berkeley
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of Department Nutritional Sciences University of California at Berkeley Answers to Case Study - Alcohol-Related Anemia NS 160 Spring 2000 1. Based upon the above data do you feel the physician's diagnosis was correct. What lab values clearly indicate that folate is the deficient nutrient? Explain why a vitamin B12 deficiency is not a likely explanation. Yes. The finding of depressed hemoglobin and an elevated...

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of Department Nutritional Sciences University of California at Berkeley Answers to Case Study - Alcohol-Related Anemia NS 160 Spring 2000 1. Based upon the above data do you feel the physician's diagnosis was correct. What lab values clearly indicate that folate is the deficient nutrient? Explain why a vitamin B12 deficiency is not a likely explanation. Yes. The finding of depressed hemoglobin and an elevated MCV were indicative of macrocytic anemia. Below normal levels of serum and erythrocyte folate, and an elevation in the excretion of FIGLU suggested a folate deficiency was responsible for the macrocytic anemia. Serum folate is reflective of acute changes in folate status, whereas erythroc...
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