Senadheera Isuru, Larssen Beverley C, Mak-Yuen Yvonne Y K, Steinfort Sarah, Carey Leeanne M, Alahakoon Damminda
Centre for Data Analytics and Cognition, La Trobe Business School, La Trobe University, Melbourne, VIC 3086, Australia.
Occupational Therapy, School of Allied Health, Human Services and Sport, La Trobe University, Melbourne, VIC 3086, Australia.
Brain Sci. 2023 Aug 28;13(9):1253. doi: 10.3390/brainsci13091253.
Altered somatosensory function is common among stroke survivors, yet is often poorly characterized. Methods of profiling somatosensation that illustrate the variability in impairment within and across different modalities remain limited. We aimed to characterize post-stroke somatosensation profiles ("fingerprints") of the upper limb using an unsupervised machine learning cluster analysis to capture hidden relationships between measures of touch, proprioception, and haptic object recognition. Raw data were pooled from six studies where multiple quantitative measures of upper limb somatosensation were collected from stroke survivors ( = 207) using the Tactile Discrimination Test (TDT), Wrist Position Sense Test (WPST) and functional Tactile Object Recognition Test (fTORT) on the contralesional and ipsilesional upper limbs. The Growing Self Organizing Map (GSOM) unsupervised machine learning algorithm was used to generate a topology-preserving two-dimensional mapping of the pooled data and then separate it into clusters. Signature profiles of somatosensory impairment across two modalities (TDT and WPST; = 203) and three modalities (TDT, WPST, and fTORT; = 141) were characterized for both hands. Distinct impairment subgroups were identified. The influence of background and clinical variables was also modelled. The study provided evidence of the utility of unsupervised cluster analysis that can profile stroke survivor signatures of somatosensory impairment, which may inform improved diagnosis and characterization of impairment patterns.
躯体感觉功能改变在中风幸存者中很常见,但往往特征描述不足。描绘躯体感觉的方法,用以说明不同模式内和不同模式间损伤的变异性,仍然有限。我们旨在使用无监督机器学习聚类分析来表征中风后上肢的躯体感觉概况(“指纹”),以捕捉触觉、本体感觉和触觉物体识别测量之间的隐藏关系。原始数据来自六项研究,在这些研究中,使用触觉辨别测试(TDT)、腕部位置感觉测试(WPST)和功能性触觉物体识别测试(fTORT),从对侧和同侧上肢收集了中风幸存者(n = 207)的多项上肢躯体感觉定量测量数据。使用生长自组织映射(GSOM)无监督机器学习算法对汇总数据生成拓扑保留二维映射,然后将其分离成簇。对双手的两种模式(TDT和WPST;n = 203)和三种模式(TDT、WPST和fTORT;n = 141)的躯体感觉损伤特征概况进行了表征。识别出了不同的损伤亚组。还对背景和临床变量的影响进行了建模。该研究提供了证据,证明无监督聚类分析可用于描绘中风幸存者躯体感觉损伤的特征,这可能有助于改进损伤模式的诊断和特征描述。