A Machine Learning Approach to Evaluating Illness-Induced Religious Struggle.

Biomedical informatics insights Pub Date : 2017-02-08 eCollection Date: 2017-01-01 DOI:10.1177/1178222616686067
Joshua Glauser, Brian Connolly, Paul Nash, Daniel H Grossoehme
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Abstract

Religious or spiritual struggles are clinically important to health care chaplains because they are related to poorer health outcomes, involving both mental and physical health problems. Identifying persons experiencing religious struggle poses a challenge for chaplains. One potentially underappreciated means of triaging chaplaincy effort are prayers written in chapel notebooks. We show that religious struggle can be identified in these notebooks through instances of negative religious coping, such as feeling anger or abandonment toward God. We built a data set of entries in chapel notebooks and classified them as showing religious struggle, or not. We show that natural language processing techniques can be used to automatically classify the entries with respect to whether or not they reflect religious struggle with as much accuracy as humans. The work has potential applications to triaging chapel notebook entries for further attention from pastoral care staff.

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评估疾病引发的宗教斗争的机器学习方法。
宗教或精神上的挣扎对医疗护理牧师来说具有重要的临床意义,因为它们与较差的健康结果有关,涉及心理和身体健康问题。识别经历宗教挣扎的人对牧师来说是一项挑战。对牧师工作进行分流的一种可能未得到充分重视的方法是写在牧师笔记本上的祈祷文。我们的研究表明,在这些笔记本中,可以通过消极的宗教应对方式(如对上帝感到愤怒或被遗弃)来识别宗教斗争。我们建立了一个礼拜笔记本条目的数据集,并将它们分类为显示宗教斗争或未显示宗教斗争。我们的研究表明,自然语言处理技术可用于自动对条目进行是否反映宗教斗争的分类,其准确性不亚于人类。这项工作有望应用于对礼拜笔记本条目进行分类,以便教牧人员进一步关注。
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