| Literature DB >> 35910476 |
Luca Bacco1,2,3, Fabrizio Russo4,5, Luca Ambrosio5, Federico D'Antoni1, Luca Vollero1, Gianluca Vadalà4,5, Felice Dell'Orletta2, Mario Merone1, Rocco Papalia4,5, Vincenzo Denaro4.
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.Entities:
Keywords: artificial intelligence; deep learning; low back pain; natural language processing; spine disorders; systematic review
Year: 2022 PMID: 35910476 PMCID: PMC9329654 DOI: 10.3389/fsurg.2022.957085
Source DB: PubMed Journal: Front Surg ISSN: 2296-875X
Figure 1Preferred reporting items for systematic reviews and meta-analyses (PRISMA) flow diagram.
Figure 2Summary of the methodological quality of included studies regarding the 4 domains assessing the risk of bias (left) and the 3 domains assessing applicability concerns (right) of the QUADAS-2 score. The portion of studies with a low risk of bias is highlighted in green, the portion with an unclear risk of bias is depicted in blue, and the portion with a high risk of bias is represented in orange.
Figure 3Schematic partitioning of the works concerning the application of NLP in LBP and related spinal disorders.
Figure 4Schematic partitioning of the NLP models applied in LBP and related spine disorders.
Confusion matrix.
| Predicted condition | |||
|---|---|---|---|
| PP | PN | ||
| Actual condition | P | TP | FN |
| N | FP | TN | |
Figure 5Glossary extracted from the abstracts of the papers included in this work. Entities are ranked following their domain relevance. For ease of visualization, only the first part of the glossary (containing the most relevant terms) is reported.
Figure 6Knowledge graph built for the main entities of the domain extracted from the abstracts of the papers included in this work. For ease of visualization, only the terms with a frequency greater than 3 and the relations occurring at least twice are reported.
Overview table of analyzed papers.
| Study | Year | NLP task | Task category | Domain | Source | Model |
|---|---|---|---|---|---|---|
| Caton et al. [ | 2021a | Class. | pre-op. | SCS/NFS | Lumbar MRI reports | rule-based |
| Caton et al. [ | 2021b | Class. | pre-op. | SCS/NFS | Lumbar MRI reports | rule-based |
| Miotto et al. [ | 2020 | Class. | pre-op. | acute LBP | Clinical notes | DL (ConvNet) |
| Walsh et al. [ | 2017 | Class. | pre-op. | axSpA | Electronic medical records | ML (SVM) |
| Walsh et al. [ | 2020 | Class. | pre-op. | axSpA | Clinical chart database | ML (SVM) |
| Zhao et al. [ | 2019 | Class. | pre-op. | axSpA | Electronic medical records | ML (SAFE+MAP) |
| Huhdanpaa et al. [ | 2018 | Class. | pre-op. | Type 1 Modic Endplate Changes | Lumbar MRI reports | rule-based |
| Tan et al. [ | 2018 | Class. | pre-op. | LBP-related imaging findings | Lumbar MRI reports and X-ray reports | hybrid |
| Lewandrowski et al. [ | 2020 | Annot. | pre-op. | SCS/NFS | Lumbar MRI reports | Not specified |
| Galbusera et al. [ | 2021 | Annot. | / | spinal disorders | Lumbar X-ray reports | DL (BERT) |
| Ehresman et al. [ | 2020 | Class. | intra-op. | Incidental durotomy | Electronic health records | ML (XGBoost) |
| Karhade et al. [ | 2020a | Class. | intra-op. | Incidental durotomy | Operative notes | ML (XGBoost) |
| Karhade et al. [ | 2021a | Class. | intra-op. | Vascular injury | Operative notes | ML (XGBoost) |
| Dantes et al. [ | 2018 | Class. | post-op. | Venous Thromboembolism | Electronic medical records | ML (IDEAL-X) |
| Karhade et al. [ | 2020b | Pred. | post-op. | Reoperation due to infection | Operative notes | ML (XGBoost) |
| Karhade et al. [ | 2021b | Pred. | post-op. | Unplanned readmission | Operative notes | ML (XGBoost) |