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Measuring diagnostic heterogeneity using text-mining of the lived experiences of patients

机译:测量诊断异质性,使用患者的生活经验的文本挖掘

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Abstract Background The diagnostic system is fundamental to any health discipline, including mental health, as it defines mental illness and helps inform possible treatment and prognosis. Thus, the procedure to estimate the reliability of such a system is of utmost importance. The current ways of measuring the reliability of the diagnostic system have limitations. In this study, we propose an alternative approach for verifying and measuring the reliability of the existing system. Methods We perform Jaccard’s similarity index analysis between first person accounts of patients with the same disorder (in this case Major Depressive Disorder) and between those who received a diagnosis of a different disorder (in this case Bulimia Nervosa) to demonstrate that narratives, when suitably processed, are a rich source of data for this purpose. We then analyse 228 narratives of lived experiences from patients with mental disorders, using Python code script, to demonstrate that patients with the same diagnosis have very different illness experiences. Results The results demonstrate that narratives are a statistically viable data resource which can distinguish between patients who receive different diagnostic labels. However, the similarity coefficients between 99.98% of narrative pairs, including for those with similar diagnoses, are low (?0.3), indicating diagnostic Heterogeneity. Conclusions The current study proposes an alternative approach to measuring diagnostic Heterogeneity of the categorical taxonomic systems (e.g. the Diagnostic and Statistical Manual, DSM). In doing so, we demonstrate the high Heterogeneity and limited reliability of the existing system using patients’ written narratives of their illness experiences as the only data source. Potential applications of these outputs are discussed in the context of healthcare management and mental health research.
机译:摘要背景诊断系统是任何健康纪律的基础,包括心理健康,因为它定义精神疾病,并有助于通知可能的治疗和预后。因此,估计这种系统的可靠性的过程至关重要。目前测量诊断系统可靠性的方法具有局限性。在这项研究中,我们提出了一种替代方法,用于验证和测量现有系统的可靠性。方法我们在患有同一疾病(在这种情况下的主要抑郁症)和接受不同疾病(在这种情况下的贪食症神经系统)之间的人之间进行jaccard的相似性指数分析,以证明叙事,何时才能展示叙事处理过的是为此目的是丰富的数据来源。我们通过Python代码脚本分析精神障碍患者的228名Live经验叙事,以证明具有相同诊断的患者具有较大不同的疾病经历。结果结果表明,叙述是一种统计上可行的数据资源,可以区分接受不同诊断标签的患者。然而,99.98%的叙事对的相似性系数,包括具有相似诊断的叙述对,是低(&Δ0.3),表明诊断异质性。结论目前的研究提出了一种测量分类分类系统的诊断异质性的替代方法(例如,诊断和统计手册,DSM)。在这样做时,我们展示了使用患者书面叙述的现有系统的高异质性和有限可靠性,其疾病的疾病经历作为唯一的数据来源。在医疗保健管理和心理健康研究的背景下讨论了这些产出的潜在应用。

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