Using Machine Learning for Recognition of Alzheimer’s Disease Based on Transcription Information

U. A. Vishniakou, ChuYue Yu
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Abstract

The purpose of this article is to perform analytical and prognostic studies on the recognition of Alzhei mer’s disease based on decoded text speech data using machine learning algorithms. The data used in this article is taken from the ADReSS 2020 Challenge program, which contains speech data from patients with Alzhei mer’s disease and healthy people. The problem under study is a binary classification problem. First, the full texts of the interviewees were extracted from the transcribed texts of the speech data. This was followed by training the model based on vectorized text features using a random forest classifier, in which the authors used the GridSearchCV method to optimize hyperparameters. The classification accuracy of the model reached 85.2 %.
根据转录信息利用机器学习识别阿尔茨海默病
本文旨在基于解码文本语音数据,利用机器学习算法对阿尔茨海默病的识别进行分析和预后研究。本文使用的数据来自 ADReSS 2020 挑战项目,其中包含阿尔茨海默病患者和健康人的语音数据。研究的问题是二元分类问题。首先,从语音数据的转录文本中提取受访者的全文。随后,作者使用随机森林分类器训练了基于向量化文本特征的模型,并使用 GridSearchCV 方法优化了超参数。该模型的分类准确率达到了 85.2%。
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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