Unit of Computer Systems and Bioinformatics, Università Campus Bio-Medico di Roma, Via Alvaro Del Portillo, 21, 00128 Rome, Italy.
Department of Orthopaedic Surgery, Università Campus Bio-Medico di Roma, Via Alvaro Del Portillo, 200, 00128 Rome, Italy.
Int J Environ Res Public Health. 2022 May 14;19(10):5971. doi: 10.3390/ijerph19105971.
Low Back Pain (LBP) is currently the first cause of disability in the world, with a significant socioeconomic burden. Diagnosis and treatment of LBP often involve a multidisciplinary, individualized approach consisting of several outcome measures and imaging data along with emerging technologies. The increased amount of data generated in this process has led to the development of methods related to artificial intelligence (AI), and to computer-aided diagnosis (CAD) in particular, which aim to assist and improve the diagnosis and treatment of LBP. In this manuscript, we have systematically reviewed the available literature on the use of CAD in the diagnosis and treatment of chronic LBP. A systematic research of PubMed, Scopus, and Web of Science electronic databases was performed. The search strategy was set as the combinations of the following keywords: “Artificial Intelligence”, “Machine Learning”, “Deep Learning”, “Neural Network”, “Computer Aided Diagnosis”, “Low Back Pain”, “Lumbar”, “Intervertebral Disc Degeneration”, “Spine Surgery”, etc. The search returned a total of 1536 articles. After duplication removal and evaluation of the abstracts, 1386 were excluded, whereas 93 papers were excluded after full-text examination, taking the number of eligible articles to 57. The main applications of CAD in LBP included classification and regression. Classification is used to identify or categorize a disease, whereas regression is used to produce a numerical output as a quantitative evaluation of some measure. The best performing systems were developed to diagnose degenerative changes of the spine from imaging data, with average accuracy rates >80%. However, notable outcomes were also reported for CAD tools executing different tasks including analysis of clinical, biomechanical, electrophysiological, and functional imaging data. Further studies are needed to better define the role of CAD in LBP care.
下背痛(LBP)目前是世界上导致残疾的首要原因,具有显著的社会经济负担。LBP 的诊断和治疗通常涉及多学科、个体化的方法,包括几个结局测量和影像学数据以及新兴技术。在这个过程中产生的大量数据导致了与人工智能(AI)相关的方法的发展,特别是计算机辅助诊断(CAD),旨在协助和改善 LBP 的诊断和治疗。在本文中,我们系统地回顾了 CAD 在慢性 LBP 的诊断和治疗中的应用的现有文献。对 PubMed、Scopus 和 Web of Science 电子数据库进行了系统的研究。搜索策略设置为以下关键词的组合:“人工智能”、“机器学习”、“深度学习”、“神经网络”、“计算机辅助诊断”、“下背痛”、“腰椎”、“椎间盘退行性变”、“脊柱手术”等。搜索共返回 1536 篇文章。在去除重复项并评估摘要后,排除了 1386 篇,而在全文检查后又排除了 93 篇,将合格文章的数量减少到 57 篇。CAD 在 LBP 中的主要应用包括分类和回归。分类用于识别或分类疾病,而回归用于生成数值输出,作为对某些测量的定量评估。开发了性能最佳的系统,从影像学数据诊断脊柱退行性改变,平均准确率>80%。然而,对于执行包括临床、生物力学、电生理学和功能影像学数据分析等不同任务的 CAD 工具,也报告了显著的结果。需要进一步的研究来更好地定义 CAD 在 LBP 护理中的作用。