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首页> 外文期刊>JMIR mHealth and uHealth >Psychologist in a Pocket: Lexicon Development and Content Validation of a Mobile-Based App for Depression Screening
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Psychologist in a Pocket: Lexicon Development and Content Validation of a Mobile-Based App for Depression Screening

机译:心理学家在口袋里:用于抑郁症筛查的基于手机的应用程序的词典开发和内容验证

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摘要

Background Language reflects the state of one’s mental health and personal characteristics. It also reveals preoccupations with a particular schema, thus possibly providing insights into psychological conditions. Using text or lexical analysis in exploring depression, negative schemas and self-focusing tendencies may be depicted. As mobile technology has become highly integrated in daily routine, mobile devices have the capacity for ecological momentary assessment (EMA), specifically the experience sampling method (ESM), where behavior is captured in real-time or closer in time to experience in one’s natural environment. Extending mobile technology to psychological health could augment initial clinical assessment, particularly of mood disturbances, such as depression and analyze daily activities, such as language use in communication. Here, we present the process of lexicon generation and development and the initial validation of Psychologist in a Pocket (PiaP), a mobile app designed to screen signs of depression through text analysis. Objective The main objectives of the study are (1) to generate and develop a depressive lexicon that can be used for screening text-input in mobile apps to be used in the PiaP; and (2) to conduct content validation as initial validation. Methods The first phase of our research focused on lexicon development. Words related to depression and its symptoms based on the Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition (DSM-5) and in the ICD-10 Classification of Mental and Behavioural Disorders: Clinical Descriptions and Diagnostic Guidelines classification systems were gathered from focus group discussions with Filipino college students, interviews with mental health professionals, and the review of established scales for depression and other related constructs. Results The lexicon development phase yielded a database consisting of 13 categories based on the criteria depressive symptoms in the DSM-5 and ICD-10. For the draft of the depression lexicon for PiaP, we were able to gather 1762 main keywords and 9655 derivatives of main keywords. In addition, we compiled 823,869 spelling variations. Keywords included negatively-valenced words like “sad”, “unworthy”, or “tired” which are almost always accompanied by personal pronouns, such as “I”, “I’m” or “my” and in Filipino, “ako” or “ko”. For the content validation, only keywords with CVR equal to or more than 0.75 were included in the depression lexicon test-run version. The mean of all CVRs yielded a high overall CVI of 0.90. A total of 1498 main keywords, 8911 derivatives of main keywords, and 783,140 spelling variations, with a total of 793, 553 keywords now comprise the test-run version. Conclusions The generation of the depression lexicon is relatively exhaustive. The breadth of keywords used in text analysis incorporates the characteristic expressions of depression and its related constructs by a particular culture and age group. A content-validated mobile health app, PiaP may help augment a more effective and early detection of depressive symptoms.
机译:背景语言反映了一个人的心理健康状况和个人特征。它还揭示了对特定模式的专注,因此可能提供对心理状况的见解。使用文本或词法分析探索抑郁症时,可能会描绘出负面图式和自我聚焦倾向。随着移动技术已高度集成到日常工作中,移动设备具有生态瞬时评估(EMA)的能力,特别是体验采样方法(ESM),可以实时或更近地捕获行为以自然地体验环境。将移动技术扩展到心理健康可以增强初始临床评估,尤其是对情绪低落(例如抑郁)的临床评估,并分析日常活动(例如在交流中使用语言)。在这里,我们介绍词汇生成和开发的过程以及“口袋里的心理学家”(PiaP)的初步验证,该应用程序旨在通过文本分析来筛选抑郁症的征兆。目的本研究的主要目的是(1)生成并开发一个令人沮丧的词典,可用于筛选要在PiaP中使用的移动应用程序中的文本输入; (2)进行内容验证作为初始验证。方法我们研究的第一阶段集中在词典开发上。根据焦点组收集了基于《精神障碍诊断和统计手册》第五版(DSM-5)和ICD-10精神和行为障碍分类的与抑郁症及其症状有关的词:临床说明和诊断指南分类系统与菲律宾大学生进行的讨论,与心理健康专业人士的访谈以及对抑郁症和其他相关结构的既定量表的审查。结果在词典开发阶段,根据DSM-5和ICD-10中的抑郁症状标准,产生了一个由13个类别组成的数据库。对于PiaP的抑郁症词典,我们能够收集到1762个主要关键字和9655个主要关键字的派生词。此外,我们编译了823,869个拼写变化。关键字中包含诸如“悲伤”,“不值得”或“疲倦”之类的反称词,这些词几乎总是伴随着人称代词,例如“我”,“我”或“我的”,在菲律宾语中为“ ako”或“ ko”。对于内容验证,在抑郁词典测试运行版本中仅包含CVR等于或大于0.75的关键字。所有CVR的平均值产生了0.90的高总体CVI。总共有1498个主要关键字,8911个主要关键字衍生词和783,140个拼写变体,现在共有793、553个关键字组成了测试运行版本。结论抑郁词典的产生是相对详尽的。文本分析中使用的关键字广度结合了特定文化和年龄组的抑郁症及其相关构造的特征性表达。经过内容验证的移动健康应用程序PiaP可能有助于增强抑郁症状的更有效和早期发现。

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