Department of Health Management and Systems Sciences, School of Public Health and Information Sciences, University of Louisville, Louisville, Kentucky, United States of America.
Department of General Practice, University College Cork, Cork, Ireland.
PLoS One. 2018 Nov 16;13(11):e0203429. doi: 10.1371/journal.pone.0203429. eCollection 2018.
This study set out to analyze questions about type 2 diabetes mellitus (T2DM) from patients and the public. The aim was to better understand people's information needs by starting with what they do not know, discovered through their own questions, rather than starting with what we know about T2DM and subsequently finding ways to communicate that information to people affected by or at risk of the disease. One hundred and sixty-four questions were collected from 120 patients attending outpatient diabetes clinics and 300 questions from 100 members of the public through the Amazon Mechanical Turk crowdsourcing platform. Twenty-three general and diabetes-specific topics and five phases of disease progression were identified; these were used to manually categorize the questions. Analyses were performed to determine which topics, if any, were significant predictors of a question's being asked by a patient or the public, and similarly for questions from a woman or a man. Further analysis identified the individual topics that were assigned significantly more often to the crowdsourced or clinic questions. These were Causes (CI: [-0.07, -0.03], p < .001), Risk Factors ([-0.08, -0.03], p < .001), Prevention ([-0.06, -0.02], p < .001), Diagnosis ([-0.05, -0.02], p < .001), and Distribution of a Disease in a Population ([-0.05,-0.01], p = .0016) for the crowdsourced questions and Treatment ([0.03, 0.01], p = .0019), Disease Complications ([0.02, 0.07], p < .001), and Psychosocial ([0.05, 0.1], p < .001) for the clinic questions. No highly significant gender-specific topics emerged in our study, but questions about Weight were more likely to come from women and Psychosocial questions from men. There were significantly more crowdsourced questions about the time Prior to any Diagnosis ([(-0.11, -0.04], p = .0013) and significantly more clinic questions about Health Maintenance and Prevention after diagnosis ([0.07. 0.17], p < .001). A descriptive analysis pointed to the value provided by the specificity of questions, their potential to disclose emotions behind questions, and the as-yet unrecognized information needs they can reveal. Large-scale collection of questions from patients across the spectrum of T2DM progression and from the public-a significant percentage of whom are likely to be as yet undiagnosed-is expected to yield further valuable insights.
这项研究旨在分析患者和公众提出的关于 2 型糖尿病(T2DM)的问题。目的是通过从他们不知道的问题开始,而不是从我们对 T2DM 的了解开始,从而更好地了解人们的信息需求,然后再寻找向受疾病影响或有患病风险的人传递信息的方法。通过亚马逊 Mechanical Turk 众包平台,从 120 名门诊糖尿病患者中收集了 164 个问题,从 100 名公众中收集了 300 个问题。确定了 23 个一般和糖尿病特定主题以及疾病进展的五个阶段;这些被用来手动分类问题。分析的目的是确定是否有任何主题可以预测患者或公众提出问题,以及女性或男性提出的问题,同样,还确定了如果有任何主题可以预测问题的提出。进一步的分析确定了被分配给众包或诊所问题的个别主题。这些主题是病因(CI:[-0.07,-0.03],p <.001)、风险因素([-0.08,-0.03],p <.001)、预防([-0.06,-0.02],p <.001)、诊断([-0.05,-0.02],p <.001)和疾病在人群中的分布([-0.05,-0.01],p =.0016)。众包问题是治疗([0.03,0.01],p =.0019),疾病并发症([0.02,0.07],p <.001)和心理社会([0.05,0.1],p <.001)。我们的研究没有出现非常显著的性别特异性主题,但关于体重的问题更有可能来自女性,而心理社会问题更有可能来自男性。众包问题中关于确诊前时间的问题明显更多([(-0.11,-0.04],p =.0013),而诊所问题中关于确诊后健康维护和预防的问题明显更多([0.07,0.17],p <.001)。描述性分析指出了问题特异性提供的价值、它们揭示问题背后情感的潜力,以及它们尚未被认识到的信息需求。预计从 T2DM 进展各个阶段的患者和公众(其中很大一部分可能尚未确诊)大规模收集问题,将产生更多有价值的见解。