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A hybrid AI approach for supporting clinical diagnosis of attention deficit hyperactivity disorder (ADHD) in adults

机译:一种用于支持成人注意力缺陷多动障碍(ADHD)的临床诊断的杂交AI方法

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Attention deficit hyperactivity disorder (ADHD) is a neurodevelopmental disorder that includes symptoms such as inattentiveness, hyperactivity and impulsiveness. It is considered as an important public health issue and prevalence of, as well as demand for diagnosis, has increased as awareness of the disease grew over the past years. Supply of specialist medical experts has not kept pace with the increasing demand for assessment, both due to financial pressures on health systems and the difficulty to train new experts, resulting in growing waiting lists. Patients are not being treated quickly enough causing problems in other areas of health systems (e.g. increased GP visits, increased risk of self-harm and accidents) and more broadly (e.g. time off work, relationship problems). Advances in AI make it possible to support the clinical diagnosis of ADHD based on the analysis of relevant data. This paper reports on findings related to the mental health services of a specialist Trust within the UK’s National Health Service (NHS). The analysis studied data of adult patients who underwent diagnosis over the past few years, and developed a hybrid approach, consisting of two different models: a machine learning model obtained by training on data of past cases; and a knowledge model capturing the expertise of medical experts through knowledge engineering. The resulting algorithm has an accuracy of 95% on data currently available, and is currently being tested in a clinical environment.
机译:注意力缺陷多动障碍(ADHD)是一种神经发育障碍,包括症状,例如不复于期,多动和冲动。它被认为是一个重要的公共卫生问题,以及对诊断的需求,随着过去几年增长的认识,增加的需求增加。由于卫生系统的财务压力以及训练新专家的难度,提供专业医学专家的供应并未跟上评估需求的增加,导致等待名单不断增长。患者没有足够的待遇造成卫生系统其他领域的问题(例如,GP访问,自我伤害和事故的风险增加)和更广泛(例如,休假,关系问题)。 AI的进步使得可以基于相关数据的分析来支持ADHD的临床诊断。本文报告了英国国家卫生服务(NHS)内专业信托的心理健康服务有关的调查结果。该分析研究了过去几年诊断的成人患者的数据,并开发了一种混合方法,包括两种不同的模型:通过过去案例数据培训获得的机器学习模型;并通过知识工程捕捉医学专家的专业知识的知识模型。结果算法的准确性为当前可用的数据的95%,目前正在临床环境中进行测试。

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