Community Pharmacy, School of Pharmaceutical Sciences, University of Geneva, University of Lausanne, Geneva, Switzerland; Community Pharmacy, Department of Ambulatory Care & Community Medicine, University of Lausanne, Geneva, Switzerland.
Centre for Research in Arts, Social Science, and Humanities, University of Cambridge, Cambridge, UK.
Patient Educ Couns. 2018 Sep;101(9):1676-1682. doi: 10.1016/j.pec.2018.05.013. Epub 2018 May 17.
To identify factors associated with low or high antiretroviral (ARV) adherence through computational text analysis of an adherence enhancing programme interview reports.
Using text from 8428 interviews with 522 patients, we constructed a term-frequency matrix for each patient, retaining words that occurred at least ten times overall and used in at least six interviews with six different patients. The text included both the pharmacist's and the patient's verbalizations. We investigated their association with an adherence threshold (above or below 90%) using a regularized logistic regression model. In addition to this data-driven approach, we studied the contexts of words with a focus group.
Analysis resulted in 7608 terms associated with low or high adherence. Terms associated with low adherence included disruption in daily schedule, side effects, socio-economic factors, stigma, cognitive factors and smoking. Terms associated with high adherence included fixed medication intake timing, no side effects and positive psychological state.
Computational text analysis helps to analyze a large corpus of adherence enhancing interviews. It confirms main known themes affecting ARV adherence and sheds light on new emerging themes.
Health care providers should be aware of factors that are associated with low or high adherence. This knowledge should reinforce the supporting factors and try to resolve the barriers together with the patient.
通过对增强抗逆转录病毒(ARV)依从性方案访谈报告的计算文本分析,确定与低或高 ARV 依从性相关的因素。
使用来自 522 名患者的 8428 次访谈的文本,我们为每位患者构建了一个词汇频率矩阵,保留了至少出现 10 次且在 6 次不同患者的访谈中使用过 6 次的词汇。文本包括药剂师和患者的口头表达。我们使用正则逻辑回归模型研究它们与依从性阈值(高于或低于 90%)的关联。除了这种数据驱动的方法,我们还通过焦点小组研究了词汇的上下文。
分析得出了 7608 个与低或高依从性相关的术语。与低依从性相关的术语包括日常计划中断、副作用、社会经济因素、耻辱感、认知因素和吸烟。与高依从性相关的术语包括固定的药物摄入时间、无副作用和积极的心理状态。
计算文本分析有助于分析大量增强依从性的访谈。它证实了主要已知的影响 ARV 依从性的主题,并揭示了新出现的主题。
医疗保健提供者应该了解与低或高依从性相关的因素。这些知识应加强支持因素,并与患者一起努力解决障碍。