Ishii Nobuyuki, Mochizuki Yuki, Shiomi Kazutaka, Nakazato Masamitsu, Mochizuki Hitoshi
Division of Neurology, Respirology, Endocrinology and Metabolism, Department of Internal Medicine, Faculty of Medicine, University of Miyazaki, Miyazaki, Japan.
Department of Agricultural and Environmental Sciences, Faculty of Agriculture, University of Miyazaki, Miyazaki, Japan.
J Neurol Sci. 2020 Apr 15;411:116723. doi: 10.1016/j.jns.2020.116723. Epub 2020 Feb 4.
The evaluation of neurological examination in clinical practice still remains qualitative or semi-quantitative, and the results often vary depending on an examiner's skill level and are less objective. In this study, we developed a smartphone-based application to investigate quantifying neurological examinations using hand-drawn spirals and diagnose patients with tremor using artificial intelligence (AI).
This study included 24 and 26 patients with essential tremor (ET) and cerebellar disease (CD), respectively, and 41 age-matched normal controls (NCs). We obtained 69, 46, and 56 hand-drawn spirals from the NC, ET, and CD groups, respectively, as image data captured by smartphones. The patients traced a printed reference spiral. The length of this spiral was compared with the reference spiral length (% of spiral length) and the total deviation area between these spirals was calculated. The server also estimates the diagnostic probability through AI.
The quantified spiral analysis (% of spiral length and deviation area) significantly correlated with disease severity in each disease group, and significant differences in the deviation area were observed among all groups. The AI diagnosis showed 79%, 70%, and 73% accuracies for the NC, ET, and CD groups, respectively.
This study indicates the possibility of using a smartphone as a medical examination tool and demonstrates the application of AI in neurological examinations.
临床实践中神经学检查的评估仍停留在定性或半定量阶段,结果往往因检查者的技术水平而异,客观性较差。在本研究中,我们开发了一款基于智能手机的应用程序,用于研究使用手绘螺旋线进行神经学检查的量化,并利用人工智能(AI)诊断震颤患者。
本研究分别纳入了24例特发性震颤(ET)患者、26例小脑疾病(CD)患者以及41例年龄匹配的正常对照(NC)。我们分别从NC组、ET组和CD组获取了69条、46条和56条手绘螺旋线作为智能手机拍摄的图像数据。患者沿着打印的参考螺旋线进行描绘。将描绘螺旋线的长度与参考螺旋线长度进行比较(螺旋线长度的百分比),并计算这些螺旋线之间的总偏差面积。服务器还通过人工智能估计诊断概率。
量化的螺旋线分析(螺旋线长度的百分比和偏差面积)与各疾病组的疾病严重程度显著相关,且所有组之间在偏差面积上存在显著差异。人工智能诊断对NC组、ET组和CD组的准确率分别为79%、70%和73%。
本研究表明了将智能手机用作医学检查工具的可能性,并展示了人工智能在神经学检查中的应用。