Adams Warwick R
School of Computing & Mathematics, Charles Sturt University, N.S.W., Australia.
PLoS One. 2017 Nov 30;12(11):e0188226. doi: 10.1371/journal.pone.0188226. eCollection 2017.
Parkinson's Disease (PD) is a progressive neurodegenerative movement disease affecting over 6 million people worldwide. Loss of dopamine-producing neurons results in a range of both motor and non-motor symptoms, however there is currently no definitive test for PD by non-specialist clinicians, especially in the early disease stages where the symptoms may be subtle and poorly characterised. This results in a high misdiagnosis rate (up to 25% by non-specialists) and people can have the disease for many years before diagnosis. There is a need for a more accurate, objective means of early detection, ideally one which can be used by individuals in their home setting. In this investigation, keystroke timing information from 103 subjects (comprising 32 with mild PD severity and the remainder non-PD controls) was captured as they typed on a computer keyboard over an extended period and showed that PD affects various characteristics of hand and finger movement and that these can be detected. A novel methodology was used to classify the subjects' disease status, by utilising a combination of many keystroke features which were analysed by an ensemble of machine learning classification models. When applied to two separate participant groups, this approach was able to successfully discriminate between early-PD subjects and controls with 96% sensitivity, 97% specificity and an AUC of 0.98. The technique does not require any specialised equipment or medical supervision, and does not rely on the experience and skill of the practitioner. Regarding more general application, it currently does not incorporate a second cardinal disease symptom, so may not differentiate PD from similar movement-related disorders.
帕金森病(PD)是一种进行性神经退行性运动疾病,全球有超过600万人受其影响。产生多巴胺的神经元的丧失会导致一系列运动和非运动症状,然而目前非专科临床医生没有针对帕金森病的确定性检测方法,尤其是在疾病早期阶段,症状可能很细微且特征不明显。这导致误诊率很高(非专科医生误诊率高达25%),人们在确诊前可能已患病多年。需要一种更准确、客观的早期检测方法,理想情况下是一种个人可以在家中使用的方法。在这项研究中,记录了103名受试者(包括32名轻度帕金森病严重程度患者和其余非帕金森病对照组)在电脑键盘上长时间打字时的击键时间信息,结果表明帕金森病会影响手部和手指运动的各种特征,并且这些特征可以被检测到。一种新颖的方法被用于对受试者的疾病状态进行分类,该方法利用了许多击键特征的组合,并通过一组机器学习分类模型进行分析。当应用于两个独立的参与者组时,这种方法能够成功地区分早期帕金森病患者和对照组,灵敏度为96%,特异性为97%,曲线下面积为0.98。该技术不需要任何专门设备或医学监督,也不依赖从业者的经验和技能。关于更广泛的应用,它目前没有纳入第二种主要疾病症状,因此可能无法将帕金森病与类似的运动相关疾病区分开来。