首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Teleconsultations between Patients and Healthcare Professionals in Primary Care in Catalonia: The Evaluation of Text Classification Algorithms Using Supervised Machine Learning
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Teleconsultations between Patients and Healthcare Professionals in Primary Care in Catalonia: The Evaluation of Text Classification Algorithms Using Supervised Machine Learning

机译:加泰罗尼亚基层医疗机构的患者与医疗专业人员之间的远程咨询:使用监督机器学习的文本分类算法的评估

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摘要

: The primary care service in Catalonia has operated an asynchronous teleconsulting service between GPs and patients since 2015 (eConsulta), which has generated some 500,000 messages. New developments in big data analysis tools, particularly those involving natural language, can be used to accurately and systematically evaluate the impact of the service. : The study was intended to assess the predictive potential of eConsulta messages through different combinations of vector representation of text and machine learning algorithms and to evaluate their performance. : Twenty machine learning algorithms (based on five types of algorithms and four text representation techniques) were trained using a sample of 3559 messages (169,102 words) corresponding to 2268 teleconsultations (1.57 messages per teleconsultation) in order to predict the three variables of interest (avoiding the need for a face-to-face visit, increased demand and type of use of the teleconsultation). The performance of the various combinations was measured in terms of precision, sensitivity, F-value and the ROC curve. : The best-trained algorithms are generally effective, proving themselves to be more robust when approximating the two binary variables “avoiding the need of a face-to-face visit” and “increased demand” (precision = 0.98 and 0.97, respectively) rather than the variable “type of query” (precision = 0.48). : To the best of our knowledge, this study is the first to investigate a machine learning strategy for text classification using primary care teleconsultation datasets. The study illustrates the possible capacities of text analysis using artificial intelligence. The development of a robust text classification tool could be feasible by validating it with more data, making it potentially more useful for decision support for health professionals.
机译:自2015年以来,加泰罗尼亚的初级保健服务(eConsulta)在全科医生和患者之间开展了异步远程咨询服务(eConsulta),已产生了约50万条消息。大数据分析工具的新发展,尤其是涉及自然语言的工具,可以用来准确,系统地评估服务的影响。 :该研究旨在通过文本的矢量表示与机器学习算法的不同组合来评估eConsulta消息的预测潜力,并评估其性能。 :使用对应于2268个远程咨询的3559条消息(169,102个单词)的样本训练了二十种机器学习算法(基于五种算法和四种文本表示技术),以便预测感兴趣的三个变量(避免了面对面拜访,增加需求和使用远程会诊的类型)。根据精度,灵敏度,F值和ROC曲线测量了各种组合的性能。 :训练有素的算法通常是有效的,当近似“避免面对面访问的需要”和“需求增加”的两个二进制变量(分别为0.98和0.97)时,证明自己的算法更强大。而不是变量“查询类型”(精度= 0.48)。 :就我们所知,本研究是第一个研究使用初级保健远程会诊数据集进行文本分类的机器学习策略的研究。该研究说明了使用人工智能进行文本分析的可能能力。通过使用更多数据进行验证,可以开发健壮的文本分类工具,从而使该工具对卫生专业人员的决策支持更为有用。

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