自然语言处理在中风疾病管理中的应用:范围综述
Applications of Natural Language Processing for the Management of Stroke Disorders: Scoping Review.
作者信息
De Rosario Helios, Pitarch-Corresa Salvador, Pedrosa Ignacio, Vidal-Pedrós Marina, de Otto-López Beatriz, García-Mieres Helena, Álvarez-Rodríguez Lydia
机构信息
Instituto de Biomecánica de Valencia, Universitat Politècnica de València, Valencia, Spain.
CTIC Centro Tecnológico de la Información y la Comunicación, Gijón, Spain.
出版信息
JMIR Med Inform. 2023 Sep 6;11:e48693. doi: 10.2196/48693.
BACKGROUND
Recent advances in natural language processing (NLP) have heightened the interest of the medical community in its application to health care in general, in particular to stroke, a medical emergency of great impact. In this rapidly evolving context, it is necessary to learn and understand the experience already accumulated by the medical and scientific community.
OBJECTIVE
The aim of this scoping review was to explore the studies conducted in the last 10 years using NLP to assist the management of stroke emergencies so as to gain insight on the state of the art, its main contexts of application, and the software tools that are used.
METHODS
Data were extracted from Scopus and Medline through PubMed, using the keywords "natural language processing" and "stroke." Primary research questions were related to the phases, contexts, and types of textual data used in the studies. Secondary research questions were related to the numerical and statistical methods and the software used to process the data. The extracted data were structured in tables and their relative frequencies were calculated. The relationships between categories were analyzed through multiple correspondence analysis.
RESULTS
Twenty-nine papers were included in the review, with the majority being cohort studies of ischemic stroke published in the last 2 years. The majority of papers focused on the use of NLP to assist in the diagnostic phase, followed by the outcome prognosis, using text data from diagnostic reports and in many cases annotations on medical images. The most frequent approach was based on general machine learning techniques applied to the results of relatively simple NLP methods with the support of ontologies and standard vocabularies. Although smaller in number, there has been an increasing body of studies using deep learning techniques on numerical and vectorized representations of the texts obtained with more sophisticated NLP tools.
CONCLUSIONS
Studies focused on NLP applied to stroke show specific trends that can be compared to the more general application of artificial intelligence to stroke. The purpose of using NLP is often to improve processes in a clinical context rather than to assist in the rehabilitation process. The state of the art in NLP is represented by deep learning architectures, among which Bidirectional Encoder Representations from Transformers has been found to be especially widely used in the medical field in general, and for stroke in particular, with an increasing focus on the processing of annotations on medical images.
背景
自然语言处理(NLP)的最新进展激发了医学界对其在一般医疗保健领域应用的兴趣,尤其是在中风(一种具有重大影响的医疗急症)方面的应用。在这个快速发展的背景下,有必要学习和了解医学和科学界已经积累的经验。
目的
本范围综述的目的是探索过去10年中使用NLP协助中风急症管理的研究,以便深入了解该领域的现状、主要应用背景以及所使用的软件工具。
方法
通过PubMed从Scopus和Medline中提取数据,使用关键词“自然语言处理”和“中风”。主要研究问题涉及研究中使用的文本数据的阶段、背景和类型。次要研究问题涉及用于处理数据的数值和统计方法以及软件。提取的数据以表格形式结构化,并计算其相对频率。通过多重对应分析来分析类别之间的关系。
结果
该综述纳入了29篇论文,其中大多数是过去2年发表的缺血性中风队列研究。大多数论文侧重于使用NLP协助诊断阶段,其次是结果预后,使用诊断报告中的文本数据,并且在许多情况下还使用医学图像注释。最常见的方法是基于应用于相对简单的NLP方法结果的通用机器学习技术,并借助本体和标准词汇表。虽然数量较少,但越来越多的研究使用深度学习技术处理通过更复杂的NLP工具获得的文本的数值和矢量化表示。
结论
专注于NLP应用于中风的研究呈现出特定趋势,这些趋势可与人工智能在中风方面更广泛的应用进行比较。使用NLP的目的通常是改善临床环境中的流程,而不是协助康复过程。NLP的当前水平以深度学习架构为代表,其中发现来自Transformer的双向编码器表示在一般医学领域,特别是中风领域中被广泛使用,并且越来越关注医学图像注释的处理。