多巴胺能
帕金森病
评定量表
接收机工作特性
物理医学与康复
疾病
打字
左旋多巴
心理学
医学
物理疗法
内科学
计算机科学
发展心理学
多巴胺
语音识别
作者
Michele Matarazzo,Teresa Arroyo‐Gallego,Paloma Montero,Verónica Puertas‐Martín,I. Butterworth,Carlos S. Mendoza,María J. Ledesma‐Carbayo,María José Catalán,José Antonio Molina,Félix Bermejo‐Pareja,Juan Carlos Martínez‐Castrillo,Lydia López Manzanares,Araceli Alonso‐Cánovas,Jaime Herreros‐Rodríguez,Ignacio Obeso,Pablo Martínez‐Martín,José Carlos Martínez Ávila,Agustı́n Gómez de la Cámara,Martha L. Gray,José Á. Obeso,Luca Giancardo,Álvaro Sánchez‐Ferro
摘要
Abstract Objective The recent advances in technology are opening a new opportunity to remotely evaluate motor features in people with Parkinson's disease (PD). We hypothesized that typing on an electronic device, a habitual behavior facilitated by the nigrostriatal dopaminergic pathway, could allow for objectively and nonobtrusively monitoring parkinsonian features and response to medication in an at‐home setting. Methods We enrolled 31 participants recently diagnosed with PD who were due to start dopaminergic treatment and 30 age‐matched controls. We remotely monitored their typing pattern during a 6‐month (24 weeks) follow‐up period before and while dopaminergic medications were being titrated. The typing data were used to develop a novel algorithm based on recursive neural networks and detect participants’ responses to medication. The latter were defined by the Unified Parkinson's Disease Rating Scale‐III (UPDRS‐III) minimal clinically important difference. Furthermore, we tested the accuracy of the algorithm to predict the final response to medication as early as 21 weeks prior to the final 6‐month clinical outcome. Results The score on the novel algorithm based on recursive neural networks had an overall moderate kappa agreement and fair area under the receiver operating characteristic (ROC) curve with the time‐coincident UPDRS‐III minimal clinically important difference. The participants classified as responders at the final visit (based on the UPDRS‐III minimal clinically important difference) had higher scores on the novel algorithm based on recursive neural networks when compared with the participants with stable UPDRS‐III, from the third week of the study onward. Conclusions This preliminary study suggests that remotely gathered unsupervised typing data allows for the accurate detection and prediction of drug response in PD. © 2019 International Parkinson and Movement Disorder Society
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