Chiropractie Groesbeek, Nijmeegsebaan 32, 6561 KG, Groesbeek, The Netherlands.
Department of General Practice, Erasmus University Medical Center, Rotterdam, The Netherlands.
Sci Rep. 2024 Aug 12;14(1):18719. doi: 10.1038/s41598-024-69574-2.
In chronic musculoskeletal conditions, the prognosis tends to be more informative than the diagnosis for the future course of the disease. Many studies have identified clusters of patients who seemingly share similar pain trajectories. In a dataset of low back pain (LBP) patients, pain trajectories have been identified, and distinct trajectory types have been defined, making it possible to create pattern recognition software that can classify patients into respective pain trajectories reflecting their condition. It has been suggested that the classification of pain trajectories may create clinically meaningful subgroups of patients in an otherwise heterogeneous population of patients with LBP. A software tool was created that combined the ability to recognise the pain trajectory of patients with a system that could create subgroups of patients based on their characteristics. This tool is primarily meant for researchers to analyse trends in large heterogeneous datasets without large losses of data. Prospective analysis of pain trajectories is not directly helpful for clinicians. However, the tool might aid in the identification of patient characteristics which have predictive capabilities of the most likely trajectory a patient might experience in the future. This will help clinicians to tailor their advice and treatment for a specific patient.
在慢性肌肉骨骼疾病中,预后往往比诊断更能提供疾病未来进程的信息。许多研究已经确定了似乎具有相似疼痛轨迹的患者群体。在一个腰痛 (LBP) 患者的数据集,已经确定了疼痛轨迹,并定义了不同的轨迹类型,从而可以创建模式识别软件,将患者分类为反映其病情的各自疼痛轨迹。有人认为,疼痛轨迹的分类可能会在腰痛患者这一本来异质的人群中创建具有临床意义的亚组。创建了一个软件工具,该工具结合了识别患者疼痛轨迹的能力和根据患者特征创建亚组的系统。该工具主要供研究人员在不大量丢失数据的情况下分析大型异质数据集的趋势。前瞻性疼痛轨迹分析对临床医生没有直接帮助。然而,该工具可能有助于识别具有预测能力的患者特征,即患者未来最有可能经历的轨迹。这将帮助临床医生为特定患者提供个性化的建议和治疗。