认知重构
预先护理计划
扎根理论
心理学
价值(数学)
医疗保健
情境伦理学
意义(存在)
护理部
定性研究
社会心理学
医学
社会学
缓和医疗
心理治疗师
社会科学
机器学习
计算机科学
经济
经济增长
作者
Helen Elizabeth Bennett,Sue Duke,Alison Richardson
出处
期刊:BMJ supportive & palliative care
[BMJ]
日期:2023-09-12
卷期号:: spcare-004348
标识
DOI:10.1136/spcare-2023-004348
摘要
Parents have unique experience of caring for their child with a life-limiting illness and significant insight into the experience of advance care planning. However, little is known about how they experience and manage this process. Our objective was to understand parents' experience of advance care planning for their child.Data collected through semistructured interviews and documents using a constructivist and situational grounded theory approach. Parents with experience of end-of-life decisions or advance care planning for a child (age 0-17 years) with a life-limiting condition or life-threatening condition.13 parents participated; 11 interviews were undertaken with analysis of 9 advance care plans. Parents were interviewed separately (n=9) or together (n=2).Overarching and inter-related categories, realisation, reconciling multiple tensions and building confidence and asserting control explained the actions and processes of parents' experience of advance care planning. The arising theory, reconstructing meaning through advance care planning, describes how the process of advance care planning, enables parents to make 'good' decisions in complex medical situations and despite the emotional distress, has therapeutic value.This study confirms parents want to engage in advance care planning, use the process to continuously reorientate their values alongside treatment decisions and that offers a therapeutic value not previously recognised. This requires healthcare professionals to reframe their approach to advance care planning conversations valuing parents' voices and desire for a sense of control and empowering them to make future decisions that offer hope and build resilience to face the future death of their child.
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