Title | 99N18-家庭支持、遵醫囑行為與血糖控制之相關研究 -以某區域教學醫院為例 The Relationship between Family Support,Adherence and Blood Control:A Case of Regional Teaching Hospital. |
Name | 陳香吟 |
Advisor | 陳榮方 老師 |
畢業日期 | 2011/06 |
Attachment | 99N18 |
Reference Link | |
Abstract | 研究顯示:(1)糖尿病患者在性別、教育程度、每月家庭所得、婚姻狀況、有職業、與配偶同住者,在家庭支持量表有顯著差異。(2)糖尿病患者在性別、有無職業、每月家庭所得,在遵醫囑行為量表有顯著差異。(3)不同婚姻狀況,飯前血糖控制情形有顯著差異。患者在治療方式、血糖控制情形,其糖化血色素有顯著差異。(4)患者在遵醫囑行為「飲食控制情形」與血糖控制「飯前血糖值」有正向關係。(5)患者在家庭支持「家庭支持行為」、「感受性關懷」與血糖控制「飯前血糖值」有正向關係。(6)就血糖控制「飯前血糖值」而言,其最佳解釋力為家庭 |
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