首页> 外文会议>Sixth workshop on computational linguistics and clinical psychology >Overcoming the bottleneck in traditional assessments of verbal memory: Modeling human ratings and classifying clinical group membership
【24h】

Overcoming the bottleneck in traditional assessments of verbal memory: Modeling human ratings and classifying clinical group membership

机译:克服了传统评估的口头记忆评估的瓶颈:建模人类评级和分类临床团体成员资格

获取原文

摘要

Verbal memory is affected by numerous clinical conditions and most neuropsychological and clinical examinations evaluate it. However, a bottleneck exists in such endeavors because traditional methods require expert human review, and usually only a couple of test versions exist, thus limiting the frequency of administration and clinical applications. The present study overcomes this bottleneck by automating the administration, transcription, analysis and scoring of story recall. A large group of healthy participants (n = 120) and patients with mental illness (n = 105) interacted with a mobile application that administered a wide range of assessments, including verbal memory. The resulting speech generated by participants when retelling stories from the memory task was transcribed using automatic speech recognition tools, which was compared with human transcriptions (overall word error rate = 21%). An assortment of surface-level and semantic language-based features were extracted from the verbal recalls. A final set of three features were used to both predict expert human ratings with a ridge regression model (r = 0.88) and to differentiate patients from healthy individuals with an ensemble of logistic regression classifiers (accuracy = 76%). This is the first 'outside of the laboratory' study to showcase the viability of the complete pipeline of automated assessment of verbal memory in naturalistic settings.
机译:言语记忆是由无数的临床条件的影响,最神经心理学和临床检查评估。然而,瓶颈这种努力的存在是因为传统方法需要专家人工审核,通常只有几个测试版本的存在,从而限制了管理和临床应用的频率。本研究通过自动化管理,转录,分析和故事召回的进球克服了这个瓶颈。一大群健康参与者(N = 120)和患者与移动应用互动精神病(N = 105)的所施用广泛评估,包括口头记忆。与会者时产生从存储器任务复述故事使用自动语音识别工具被转录的得到的语音,将其与人转录(整体字错误率= 21%)进行比较。表面级和语义的基于语言的特征的分类是从口头召回萃取。最后一组的三个特点被用来预测都与岭回归模型(R = 0.88),并区分患者与健康人与logistic回归分类(准确度= 76%)的全体专家人类评级。这是研究,以展示在自然设置语言记忆的自动评估的完整管道的可行性第一“在实验室外”。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号