DelSole Edward M, Keck Wyatt L, Patel Aalpen A
Department of Orthopaedic Surgery, Division of Spine Surgery, Geisinger Musculoskeletal Institute.
Geisinger Commonwealth School of Medicine, Scranton.
Clin Spine Surg. 2022 Mar 1;35(2):80-89. doi: 10.1097/BSD.0000000000001208.
This was a systematic review of existing literature.
The objective of this study was to evaluate the current state-of-the-art trends and utilization of machine learning in the field of spine surgery.
The past decade has seen a rise in the clinical use of machine learning in many fields including diagnostic radiology and oncology. While studies have been performed that specifically pertain to spinal surgery, there have been relatively few aggregate reviews of the existing scientific literature as applied to clinical spine surgery.
This study utilized Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) methodology to review the scientific literature from 2009 to 2019 with syntax specific for machine learning and spine surgery applications. Specific data was extracted from the available literature including algorithm application, algorithms tested, database type and size, algorithm training method, and outcome of interest.
A total of 44 studies met inclusion criteria, of which the majority were level III evidence. Studies were grouped into 4 general types: diagnostic tools, clinical outcome prediction, surgical assessment tools, and decision support tools. Across studies, a wide swath of algorithms were used, which were trained across multiple disparate databases. There were no studies identified that assessed the ethical implementation or patient perceptions of machine learning in clinical care.
The results reveal the broad range of clinical applications and methods used to create machine learning algorithms for use in the field of spine surgery. Notable disparities exist in algorithm choice, database characteristics, and training methods. Ongoing research is needed to make machine learning operational on a large scale.
这是对现有文献的系统综述。
本研究的目的是评估脊柱外科领域机器学习的当前最新趋势及应用情况。
在过去十年中,机器学习在包括诊断放射学和肿瘤学在内的许多领域的临床应用有所增加。虽然已经有针对脊柱外科的具体研究,但针对临床脊柱外科应用的现有科学文献的综合综述相对较少。
本研究采用系统评价和Meta分析的首选报告项目(PRISMA)方法,以机器学习和脊柱外科应用的特定语法对2009年至2019年的科学文献进行综述。从现有文献中提取特定数据,包括算法应用、测试的算法、数据库类型和规模、算法训练方法以及感兴趣的结果。
共有44项研究符合纳入标准,其中大多数为III级证据。研究分为4种一般类型:诊断工具、临床结局预测、手术评估工具和决策支持工具。在各项研究中,使用了广泛的算法,这些算法在多个不同的数据库上进行了训练。未发现有研究评估机器学习在临床护理中的伦理实施或患者认知情况。
结果揭示了用于脊柱外科领域的机器学习算法的广泛临床应用和创建方法。在算法选择、数据库特征和训练方法方面存在显著差异。需要进行持续研究以使机器学习能够大规模应用。