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利用ChatGPT诊断自闭症相关语言障碍并识别独特特征。

Exploiting ChatGPT for Diagnosing Autism-Associated Language Disorders and Identifying Distinct Features.

作者信息

Hu Chuanbo, Li Wenqi, Ruan Mindi, Yu Xiangxu, Paul Lynn K, Wang Shuo, Li Xin

机构信息

Department of Computer Science, University at Albany, Albany, 12222, NY, USA.

Lane Department of Computer Science and Electrical Engineering, West Virginia University, Morgantown, 26506, WV, USA.

出版信息

Res Sq. 2024 May 21:rs.3.rs-4359726. doi: 10.21203/rs.3.rs-4359726/v1.

Abstract

Diagnosing language disorders associated with autism is a complex and nuanced challenge, often hindered by the subjective nature and variability of traditional assessment methods. Traditional diagnostic methods not only require intensive human effort but also often result in delayed interventions due to their lack of speed and specificity. In this study, we explored the application of ChatGPT, a state-of-the-art large language model, to overcome these obstacles by enhancing diagnostic accuracy and profiling specific linguistic features indicative of autism. Leveraging ChatGPT's advanced natural language processing capabilities, this research aims to streamline and refine the diagnostic process. Specifically, we compared ChatGPT's performance with that of conventional supervised learning models, including BERT, a model acclaimed for its effectiveness in various natural language processing tasks. We showed that ChatGPT substantially outperformed these models, achieving over 13% improvement in both accuracy and F1-score in a zero-shot learning configuration. This marked enhancement highlights the model's potential as a superior tool for neurological diagnostics. Additionally, we identified ten distinct features of autism-associated language disorders that vary significantly across different experimental scenarios. These features, which included echolalia, pronoun reversal, and atypical language usage, were crucial for accurately diagnosing ASD and customizing treatment plans. Together, our findings advocate for adopting sophisticated AI tools like ChatGPT in clinical settings to assess and diagnose developmental disorders. Our approach not only promises greater diagnostic precision but also aligns with the goals of personalized medicine, potentially transforming the evaluation landscape for autism and similar neurological conditions.

摘要

诊断与自闭症相关的语言障碍是一项复杂且微妙的挑战,传统评估方法的主观性和变异性常常阻碍这一过程。传统诊断方法不仅需要大量人力,而且由于缺乏速度和特异性,往往导致干预延迟。在本研究中,我们探索了最先进的大型语言模型ChatGPT的应用,以通过提高诊断准确性和剖析自闭症特有的语言特征来克服这些障碍。利用ChatGPT先进的自然语言处理能力,本研究旨在简化和完善诊断过程。具体而言,我们将ChatGPT的性能与传统监督学习模型(包括以在各种自然语言处理任务中的有效性而闻名的BERT模型)进行了比较。我们发现,在零样本学习配置中,ChatGPT的表现大幅优于这些模型,准确率和F1分数均提高了13%以上。这一显著提升凸显了该模型作为神经诊断卓越工具的潜力。此外,我们确定了与自闭症相关的语言障碍的十个不同特征,这些特征在不同实验场景中差异显著。这些特征包括模仿言语、代词倒置和非典型语言使用,对于准确诊断自闭症谱系障碍(ASD)和制定个性化治疗方案至关重要。总之,我们的研究结果主张在临床环境中采用ChatGPT等先进人工智能工具来评估和诊断发育障碍。我们的方法不仅有望提高诊断精度,还符合个性化医疗的目标,可能会改变自闭症和类似神经疾病的评估格局。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2ee7/11142355/f96d11351ac0/nihpp-rs4359726v1-f0001.jpg

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