Payas Ahmet, Kocaman Hikmet, Yıldırım Hasan, Batın Sabri
Faculty of Medicine, Department of Anatomy Amasya University Amasya Turkey.
Faculty of Health Sciences, Department of Physiotherapy and Rehabilitation Karamanoglu Mehmetbey University Karaman Turkey.
JOR Spine. 2024 Jul 15;7(3):e1355. doi: 10.1002/jsp2.1355. eCollection 2024 Sep.
It is known that neuroanatomical and neurofunctional changes observed in the brain, brainstem and cerebellum play a role in the etiology of adolescent idiopathic scoliosis (AIS). This study aimed to investigate whether volumetric measurements of brain regions can be used as predictive indicators for AIS through machine learning techniques.
Patients with a severe degree of curvature in AIS ( = 32) and healthy individuals ( = 31) were enrolled in the study. Volumetric data from 169 brain regions, acquired from magnetic resonance imaging (MRI) of these individuals, were utilized as predictive factors. A comprehensive analysis was conducted using the twelve most prevalent machine learning algorithms, encompassing thorough parameter adjustments and cross-validation processes. Furthermore, the findings related to variable significance are presented.
Among all the algorithms evaluated, the random forest algorithm produced the most favorable results in terms of various classification metrics, including accuracy (0.9083), AUC (0.993), f1-score (0.970), and Brier score (0.1256). Additionally, the most critical variables were identified as the volumetric measurements of the right corticospinal tract, right corpus callosum body, right corpus callosum splenium, right cerebellum, and right pons, respectively.
The outcomes of this study indicate that volumetric measurements of specific brain regions can serve as reliable indicators of AIS. In conclusion, the developed model and the significant variables discovered hold promise for predicting scoliosis development, particularly in high-risk individuals.
已知在大脑、脑干和小脑观察到的神经解剖学和神经功能变化在青少年特发性脊柱侧凸(AIS)的病因中起作用。本研究旨在通过机器学习技术研究脑区体积测量是否可作为AIS的预测指标。
本研究纳入了AIS中重度脊柱侧弯患者(n = 32)和健康个体(n = 31)。从这些个体的磁共振成像(MRI)中获取的169个脑区的体积数据被用作预测因素。使用十二种最常用的机器学习算法进行了全面分析,包括全面的参数调整和交叉验证过程。此外,还给出了与变量重要性相关的结果。
在所有评估的算法中,随机森林算法在各种分类指标方面产生了最有利的结果,包括准确率(0.9083)、AUC(0.993)、f1分数(0.970)和布里尔分数(0.1256)。此外,最关键的变量分别被确定为右侧皮质脊髓束、右侧胼胝体、右侧胼胝体压部、右侧小脑和右侧脑桥的体积测量。
本研究结果表明,特定脑区的体积测量可作为AIS的可靠指标。总之,所开发的模型和发现的重要变量有望预测脊柱侧凸的发展,特别是在高危个体中。