Nguyen Khoa D, Pathirana Pubudu N, Horne Malcolm, Power Laura, Szmulewicz David
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:1098-1101. doi: 10.1109/EMBC.2018.8512418.
The aim of this study is to investigate the validity of an entropy-based objective assessment of cerebellar ataxia patients performing rhythmic tapping. Previous research conducted, particularly in time and frequency domains, tested the adherence of patients to more stringent experimental requirements. These requirements may inadvertently cause higher level brain functions to influence the performance and possibly obscure the cerebella related disabilities in the data stream. In this study, a multiscale entropy-based learning process that overcomes this practical limitation was considered. In particular, assessment techniques with less restrictions on the tapping duration were considered. Thirty-three patients were engaged in the test, with three levels of severity 0 (normal), 1 (moderate) and 2 (severe) ranked by specialist clinicians. The performance of each model was evaluated using leave-oneout cross validation. Results from both time-frequency features and entropy features extracted and characterized the cerebellar condition captured during the finger and foot tapping tests (with over 80% accuracy). Strong correlations with clinical assessment-based scoring were observed with the entropy based approach for both tests, although the correlation with timefrequency features were less convincing.
本研究的目的是调查基于熵的客观评估方法对进行节律性敲击的小脑共济失调患者的有效性。先前的研究,特别是在时域和频域进行的研究,测试了患者对更严格实验要求的遵循情况。这些要求可能会无意中导致更高层次的脑功能影响表现,并可能在数据流中掩盖与小脑相关的残疾情况。在本研究中,考虑了一种基于多尺度熵的学习过程,该过程克服了这一实际限制。特别是,考虑了对敲击持续时间限制较少的评估技术。33名患者参与了测试,由专业临床医生将其分为0(正常)、1(中度)和2(重度)三个严重程度级别。每个模型的性能使用留一法交叉验证进行评估。从时频特征和熵特征中提取的结果表征了在手指和足部敲击测试期间捕捉到的小脑状况(准确率超过80%)。两种测试基于熵的方法均与基于临床评估的评分有很强的相关性,尽管与时频特征的相关性不太令人信服。