An Introduction to Machine Learning for Speech-Language Pathologists: Concepts, Terminology, and Emerging Applications.

Claire Cordella, Manuel J Marte, Hantian Liu, Swathi Kiran
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Abstract

Purpose: The purpose of this article is to orient both clinicians and researchers to machine learning (ML) approaches as applied to the field of speech-language pathology. We first introduce key ML concepts and terminology and proceed to feature exemplar papers of recent work utilizing ML techniques in speech-language pathology. We also discuss the limitations, cautions, and challenges to the implementation of ML and related techniques in speech-language pathology.

Conclusions: Readers are introduced to broad ML concepts, including common ML tasks (e.g., classification, regression), and specific types of ML models (e.g., linear/logistic regression, random forest, support vector machines, neural networks). Key considerations for developing, evaluating, validating, and interpreting ML models are discussed. An application section reviews six exemplar published papers in the aphasiology literature that have utilized ML approaches. Lastly, limitations to the implementation of ML approaches are discussed, including issues of reliability, validity, bias, and explainability. We highlight emergent solutions and next steps to facilitate responsible and clinically meaningful use of ML approaches in speech-language pathology moving forward.

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语音语言病理学家机器学习导论:概念、术语和新兴应用。
目的:本文的目的是引导临床医生和研究人员将机器学习(ML)方法应用于语言病理学领域。我们首先介绍关键的机器学习概念和术语,并继续介绍最近在语言病理学中使用机器学习技术的典型论文。我们还讨论了在语言病理学中应用机器学习和相关技术的局限性、注意事项和挑战。结论:向读者介绍了广泛的机器学习概念,包括常见的机器学习任务(例如,分类,回归)和特定类型的机器学习模型(例如,线性/逻辑回归,随机森林,支持向量机,神经网络)。讨论了开发、评估、验证和解释ML模型的关键考虑因素。应用部分回顾了在失语症文献中使用ML方法的六篇范例论文。最后,讨论了ML方法实现的局限性,包括可靠性、有效性、偏差和可解释性问题。我们强调了紧急解决方案和下一步措施,以促进语言病理学中负责任和临床有意义的机器学习方法的使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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