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., natural language and computational linguistics) and clinical (e.g., lumbar and spine surgery) 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.

Natural language processing in low back pain and spine diseases: A systematic review

Dell'Orletta F;
2022

Abstract

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., natural language and computational linguistics) and clinical (e.g., lumbar and spine surgery) 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.
Campo DC Valore Lingua
dc.authority.ancejournal FRONTIERS IN SURGERY -
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC -
dc.authority.people Bacco L it
dc.authority.people Russo F it
dc.authority.people Ambrosio L it
dc.authority.people D'Antoni F it
dc.authority.people Vollero L it
dc.authority.people Vadala G it
dc.authority.people Dell'Orletta F it
dc.authority.people Merone M it
dc.authority.people Papalia R it
dc.authority.people Denaro V it
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dc.description.abstracteng 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., natural language and computational linguistics) and clinical (e.g., lumbar and spine surgery) 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. -
dc.description.affiliations Department of Engineering, Unit of Computer Systems and Bioinformatics, Medico University of Rome, Campus Bio, Rome, Department of Engineering, Unit of Computer Systems and Bioinformatics, Medico University of Rome, Campus Bio, Rome, Italy, , Italy; ItaliaNLP Lab, National Research Council, Istituto di Linguistica Computazionale "Antonio Zampolli", Pisa, ItaliaNLP Lab, National Research Council, Istituto di Linguistica Computazionale "Antonio Zampolli", Pisa, Italy, , , Italy; ItaliaNLP Lab, National Research Council, Istituto di Linguistica Computazionale "Antonio Zampolli", Pisa, ItaliaNLP Lab, National Research Council, Istituto di Linguistica Computazionale "Antonio Zampolli", Pisa, Italy, , , Italy; RD Lab, Webmonks S.r.l, Rome, RD Lab, Webmonks S.r.l, Rome, Italy, , Italy; Department of Orthopaedic and Trauma Surgery, Medico University Hospital Foundation, Campus Bio, Rome, Department of Orthopaedic and Trauma Surgery, Medico University Hospital Foundation, Campus Bio, Rome, Italy, , Italy; Research Unit of Orthopaedic and Trauma Surgery, Medico University of Rome, Campus Bio, Rome, Research Unit of Orthopaedic and Trauma Surgery, Medico University of Rome, Campus Bio, Rome, Italy, , Italy -
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dc.title Natural language processing in low back pain and spine diseases: A systematic review en
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scopus.description.abstracteng 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., natural language and computational linguistics) and clinical (e.g., lumbar and spine surgery) 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. *
scopus.description.allpeopleoriginal Bacco L.; Russo F.; Ambrosio L.; D'Antoni F.; Vollero L.; Vadala G.; Dell'Orletta F.; Merone M.; Papalia R.; Denaro V. *
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scopus.relation.article 957085 *
scopus.relation.volume 9 *
scopus.subject.keywords artificial intelligence; deep learning; low back pain; natural language processing; spine disorders; systematic review; *
scopus.title Natural language processing in low back pain and spine diseases: A systematic review *
scopus.titleeng Natural language processing in low back pain and spine diseases: A systematic review *
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