Bacco Luca, Russo Fabrizio, Ambrosio Luca, D'Antoni Federico, Vollero Luca, Vadalà Gianluca, Dell'Orletta Felice, Merone Mario, Papalia Rocco, Denaro Vincenzo
Department of Engineering, Unit of Computer Systems and Bioinformatics, Campus Bio-Medico University of Rome, Rome, Italy.
ItaliaNLP Lab, National Research Council, Istituto di Linguistica Computazionale "Antonio Zampolli", Pisa, Italy.
Front Surg. 2022 Jul 14;9:957085. doi: 10.3389/fsurg.2022.957085. eCollection 2022.
Natural Language Processing (NLP) is a discipline at the intersection between Computer Science (CS), Artificial Intelligence (AI), and Linguistics that leverages unstructured human-interpretable (natural) language text. In recent years, it gained momentum also in health-related applications and research. Although preliminary, studies concerning Low Back Pain (LBP) and other related spine disorders with relevant applications of NLP methodologies have been reported in the literature over the last few years. It motivated us to systematically review the literature comprised of two major public databases, PubMed and Scopus. To do so, we first formulated our research question following the PICO guidelines. Then, we followed a PRISMA-like protocol by performing a search query including terminologies of both technical (e.g., and ) and clinical (e.g., and ) domains. We collected 221 non-duplicated studies, 16 of which were eligible for our analysis. In this work, we present these studies divided into sub-categories, from both tasks and exploited models' points of view. Furthermore, we report a detailed description of techniques used to extract and process textual features and the several evaluation metrics used to assess the performance of the NLP models. However, what is clear from our analysis is that additional studies on larger datasets are needed to better define the role of NLP in the care of patients with spinal disorders.
自然语言处理(NLP)是计算机科学(CS)、人工智能(AI)和语言学交叉领域的一门学科,它利用非结构化的、人类可理解的(自然)语言文本。近年来,它在与健康相关的应用和研究中也获得了发展动力。尽管尚处于初步阶段,但在过去几年中,文献中已经报道了有关腰痛(LBP)和其他相关脊柱疾病以及NLP方法相关应用的研究。这促使我们对由两个主要公共数据库——PubMed和Scopus组成的文献进行系统综述。为此,我们首先按照PICO指南制定了研究问题。然后,我们遵循类似PRISMA的方案,执行了一个搜索查询,其中包括技术领域(例如, 和 )和临床领域(例如, 和 )的术语。我们收集了221项非重复研究,其中16项符合我们的分析要求。在这项工作中,我们从任务和所采用模型的角度,将这些研究分为子类别进行展示。此外,我们详细描述了用于提取和处理文本特征的技术以及用于评估NLP模型性能的几种评估指标。然而,从我们的分析中可以清楚地看出,需要对更大的数据集进行更多研究,以更好地确定NLP在脊柱疾病患者护理中的作用。