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Technology for Early Detection of Depression and Anxiety in Older People

机译:早期发现老年人抑郁和焦虑的技术

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Under-diagnosis of depression and anxiety is common in older adults. This project took a mixed methods approach to explore the application of machine learning and technology for early detection of these conditions. Mood measures collected with digital technologies were used to predict depression and anxiety status according to the Geriatric Depression Scale (GDS) and the Hospital Anxiety and Depression Scale (HADS). Interactive group activities and interviews were used to explore views of older adults and healthcare professionals on this approach respectively. The results show good potential for using a machine learning approach with mood data to predict later depression, though prospective results are preliminary. Qualitative findings highlight motivators and barriers to use of mental health technologies, as well as usability issues. If consideration is given to these issues, this approach could allow alerts to be provided to healthcare staff to draw attention to service users who may go on to experience depression.
机译:抑郁症和焦虑的病症在老年人中常见。该项目采用了混合方法的方法来探讨机器学习和技术应用于早期检测这些条件的方法。用数字技术收集的情绪措施用于预测根据老年抑郁症(GDS)和医院焦虑和抑郁症(HADS)的抑郁和焦虑地位。互动小组活动和访谈被用来探索这种方法的老年人和医疗保健专业人员的意见。结果表明,使用机器学习方法具有情绪数据的良好潜力,以预测以后的抑郁症,尽管前瞻性结果是初步的。定性发现突出了使用心理健康技术以及可用性问题的励志和障碍。如果考虑这些问题,这种方法可以允许向医疗保健人员提供警报,以吸引可能继续体验抑郁症的服务用户。

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