An Overview of the ADReSS-M Signal Processing Grand Challenge on Multilingual Alzheimer's Dementia Recognition Through Spontaneous Speech

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2024-03-18 DOI:10.1109/OJSP.2024.3378595
Saturnino Luz;Fasih Haider;Davida Fromm;Ioulietta Lazarou;Ioannis Kompatsiaris;Brian MacWhinney
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Abstract

The ADReSS-M Signal Processing Grand Challenge was held at the 2023 IEEE International Conference on Acoustics, Speech and Signal Processing, ICASSP 2023. The challenge targeted difficult automatic prediction problems of great societal and medical relevance, namely, the detection of Alzheimer's Dementia (AD) and the estimation of cognitive test scoress. Participants were invited to create models for the assessment of cognitive function based on spontaneous speech data. Most of these models employed signal processing and machine learning methods. The ADReSS-M challenge was designed to assess the extent to which predictive models built based on speech in one language generalise to another language. The language data compiled and made available for ADReSS-M comprised English, for model training, and Greek, for model testing and validation. To the best of our knowledge no previous shared research task investigated acoustic features of the speech signal or linguistic characteristics in the context of multilingual AD detection. This paper describes the context of the ADReSS-M challenge, its data sets, its predictive tasks, the evaluation methodology we employed, our baseline models and results, and the top five submissions. The paper concludes with a summary discussion of the ADReSS-M results, and our critical assessment of the future outlook in this field.
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通过自发语音识别多语种阿尔茨海默氏症痴呆症的 ADReSS-M 信号处理大挑战概述
ADReSS-M 信号处理大挑战在 2023 年电气和电子工程师学会声学、语音和信号处理国际会议(ICASSP 2023)上举行。挑战赛的目标是具有重大社会和医学意义的高难度自动预测问题,即阿尔茨海默氏症(AD)的检测和认知测试 scoress 的估计。参赛者应邀创建了基于自发语音数据的认知功能评估模型。这些模型大多采用了信号处理和机器学习方法。ADReSS-M 挑战赛旨在评估根据一种语言的语音建立的预测模型在多大程度上可以推广到另一种语言。为 ADReSS-M 编制和提供的语言数据包括用于模型训练的英语和用于模型测试和验证的希腊语。据我们所知,在多语言 AD 检测的背景下,以前没有任何共同研究任务调查过语音信号的声学特征或语言特点。本文介绍了 ADReSS-M 挑战赛的背景、数据集、预测任务、我们采用的评估方法、我们的基准模型和结果,以及前五名的提交作品。最后,本文对 ADReSS-M 的结果进行了总结性讨论,并对该领域的未来前景进行了批判性评估。
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5.30
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22 weeks
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