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Assignment 5- Family Tree

Course: ANTHRO 231, Spring 2011
School: Emory
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Word Count: 197

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Family My Health Portrait-Diagram Date of Report: Thursday, February 10, 2011 3:28 PM Diagram Legend Male family member TypES = Type 2 Diabetes Female family member HigOL = High Cholesterol Deceased family members<br/>(Cause of death is shown in<i>italics</i>). My Family Health Portrait-Table Date of Report: Thursday, February 10, 2011 3:28 PM Age: 19 Height: 62 in...

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Family My Health Portrait-Diagram Date of Report: Thursday, February 10, 2011 3:28 PM Diagram Legend Male family member TypES = Type 2 Diabetes Female family member HigOL = High Cholesterol Deceased family members<br/>(Cause of death is shown in<i>italics</i>). My Family Health Portrait-Table Date of Report: Thursday, February 10, 2011 3:28 PM Age: 19 Height: 62 in Weight: 135 lbs BMI: 24.7 * Indicates that the the system needs your assistance in identifying this condition. Please visit the "Family History" page to review this condition. Still living? Jackie Gaylis (Self) Franklin Gaylis (Father) Jean Gaylis (Mother) Greg Gaylis ((full) Brother) Hyman Gaylis (Paternal Grandfather) Heart Disease Stroke Diabetes Cancer Colon Breast Cancer Ovarian Cancer Additional Diseases or Conditions Yes Yes Yes Yes Yes High Cholesterol (60 years and older) High Cholesterol (50-59 years) Rhoda Gaylis (Paternal Grandmother) Brendan (Paternal Uncle) Eli Edelstein (Maternal Grandfather) Yes Yes No, Type 2 Diabetes (60 years and older) Type 2 Diabetes (30-39 years) Type 2 Diabetes (null) High Cholesterol (30-39 years) Zelma Edelstein (Maternal Grandmother) Yes High Cholesterol (60 years and older) Still living? Beverly Edelstein (Maternal Aunt) Megan Edelstein (Maternal Aunt) Shaun Edelstein (Maternal Uncle) Heart Disease Stroke Diabetes Colon Cancer Breast Cancer Ovarian Cancer Additional Diseases or Conditions Yes Type 2 Diabetes (30-39 years) Yes Yes
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