This paper reflects on the effect of several categories of medical conditions on human voice, focusing on those that may be hypothesized to have effects on voice, but for which the changes themselves may be subtle enough to have eluded observation in standard analytical examinations of the voice signal. It presents three categories of techniques that can potentially uncover such elusive biomarkers and allow them to be measured and used for predictive and diagnostic purposes. These approaches include proxy techniques, model-based analytical techniques and data-driven AI techniques.
翻译:本文思考了几类医学条件对人类声音的影响,侧重于可能假定会对声音产生影响但变化本身可能微妙到足以在声音信号的标准分析审查中被蒙蔽观察的那些疾病,提出了三类技术,这些技术有可能发现这种难以捉摸的生物标志,并可用于预测和诊断目的,包括代用技术、基于模型的分析技术和由数据驱动的人工智能技术。