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通过大数据可解释人工智能技术剖析助听器用户。

Profiling hearing aid users through big data explainable artificial intelligence techniques.

作者信息

Iliadou Eleftheria, Su Qiqi, Kikidis Dimitrios, Bibas Thanos, Kloukinas Christos

机构信息

1st Department of Otorhinolaryngology-Head and Neck Surgery, National and Kapodistrian University of Athens Medical School, Athens, Greece.

Department of Computer Science, University of London, London, United Kingdom.

出版信息

Front Neurol. 2022 Aug 26;13:933940. doi: 10.3389/fneur.2022.933940. eCollection 2022.

Abstract

Debilitating hearing loss (HL) affects ~6% of the human population. Only 20% of the people in need of a hearing assistive device will eventually seek and acquire one. The number of people that are satisfied with their Hearing Aids (HAids) and continue using them in the long term is even lower. Understanding the personal, behavioral, environmental, or other factors that correlate with the optimal HAid fitting and with users' experience of HAids is a significant step in improving patient satisfaction and quality of life, while reducing societal and financial burden. In SMART BEAR we are addressing this need by making use of the capacity of modern HAids to provide dynamic logging of their operation and by combining this information with a big amount of information about the medical, environmental, and social context of each HAid user. We are studying hearing rehabilitation through a 12-month continuous monitoring of HL patients, collecting data, such as participants' demographics, audiometric and medical data, their cognitive and mental status, their habits, and preferences, through a set of medical devices and wearables, as well as through face-to-face and remote clinical assessments and fitting/fine-tuning sessions. Descriptive, AI-based analysis and assessment of the relationships between heterogeneous data and HL-related parameters will help clinical researchers to better understand the overall health profiles of HL patients, and to identify patterns or relations that may be proven essential for future clinical trials. In addition, the future state and behavioral (e.g., HAids Satisfiability and HAids usage) of the patients will be predicted with time-dependent machine learning models to assist the clinical researchers to decide on the nature of the interventions. Explainable Artificial Intelligence (XAI) techniques will be leveraged to better understand the factors that play a significant role in the success of a hearing rehabilitation program, constructing patient profiles. This paper is a conceptual one aiming to describe the upcoming data collection process and proposed framework for providing a comprehensive profile for patients with HL in the context of EU-funded SMART BEAR project. Such patient profiles can be invaluable in HL treatment as they can help to identify the characteristics making patients more prone to drop out and stop using their HAids, using their HAids sufficiently long during the day, and being more satisfied by their HAids experience. They can also help decrease the number of needed remote sessions with their Audiologist for counseling, and/or HAids fine tuning, or the number of manual changes of HAids program (as indication of poor sound quality and bad adaptation of HAids configuration to patients' real needs and daily challenges), leading to reduced healthcare cost.

摘要

致残性听力损失(HL)影响着约6%的人口。在需要听力辅助设备的人群中,最终寻求并获得该设备的人仅占20%。对助听器(HAids)满意并长期持续使用的人数甚至更低。了解与最佳助听器适配以及用户使用助听器体验相关的个人、行为、环境或其他因素,是提高患者满意度和生活质量、同时减轻社会和经济负担的重要一步。在SMART BEAR项目中,我们利用现代助听器提供其运行动态记录的能力,并将这些信息与大量有关每个助听器用户的医疗、环境和社会背景的信息相结合,以满足这一需求。我们正在通过对HL患者进行为期12个月的持续监测来研究听力康复,通过一系列医疗设备和可穿戴设备,以及通过面对面和远程临床评估及适配/微调环节,收集诸如参与者的人口统计学信息、听力测定和医疗数据、他们的认知和心理状态、习惯及偏好等数据。对异构数据与HL相关参数之间的关系进行基于人工智能的描述性分析和评估,将有助于临床研究人员更好地了解HL患者的整体健康状况,并识别出可能对未来临床试验至关重要的模式或关系。此外,将使用与时间相关的机器学习模型预测患者的未来状态和行为(如助听器满意度和助听器使用情况),以协助临床研究人员确定干预措施的性质。将利用可解释人工智能(XAI)技术更好地理解在听力康复计划成功中起重要作用的因素,构建患者档案。本文是一篇概念性文章,旨在描述即将开展的数据收集过程以及在欧盟资助的SMART BEAR项目背景下为HL患者提供全面档案的提议框架。这样的患者档案在HL治疗中可能非常宝贵,因为它们有助于识别使患者更容易辍学、停止使用助听器、白天充分使用助听器以及对助听器体验更满意的特征。它们还可以帮助减少与听力学家进行咨询和/或助听器微调所需的远程会议次数,或减少助听器程序的手动更改次数(这表明音质差以及助听器配置无法很好地适应患者的实际需求和日常挑战),从而降低医疗成本。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/091c/9459083/5fc86b6b5141/fneur-13-933940-g0001.jpg

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