Quantifying Hypomimia in Parkinson Patients Using a Depth Camera

One of Parkinson’s disease early symptoms is called hypomimia (masked facies), and timely detection of this symptom could potentially assist early diagnosis. In this study we developed methods to automatically detect and assess the severity of hypomimia, using machine learning tools and a 3D sensor that allows for fairly accurate facial movements tracking. To evaluate our prediction of hypomimia score for participants not included in the training set, we computed the score’s correlation with hypomimia scores provided by 2 neurologists. The correlations in 4 conditions were 0.84, 0.69, 0.71, 0.70. This should be compared with the correlation between the somewhat subjectives scores of the two neurologists, which is 0.78. When training classifiers to discriminate between people who suffer from hypomimia and people who do not, the area under the curve of the corresponding Receiver Operating Characteristic curves in the same 4 conditions is \(0.90-0.99\). These encouraging results provide proof of concept that automatic evaluation of hypomimia can be sufficiently reliable to be useful for clinical early detection of Parkinson-related hypomimia.

[1]  Sung-Tae Jung,et al.  Real-time gesture recognition using 3D depth camera , 2011, 2011 IEEE 2nd International Conference on Software Engineering and Service Science.

[2]  Bradley A. Evanoff,et al.  Geographic and Ethnic Variation in Parkinson Disease: A Population-Based Study of US Medicare Beneficiaries , 2010, Neuroepidemiology.

[3]  Max A. Little,et al.  Novel Speech Signal Processing Algorithms for High-Accuracy Classification of Parkinson's Disease , 2012, IEEE Transactions on Biomedical Engineering.

[4]  Nawwaf N. Kharma,et al.  Advances in Detecting Parkinson's Disease , 2010, ICMB.

[5]  Shai Ben-David,et al.  Understanding Machine Learning: From Theory to Algorithms , 2014 .

[6]  Yangang Wang,et al.  Online modeling for realtime facial animation , 2013, ACM Trans. Graph..

[7]  M. Katsikitis,et al.  A study of facial expression in Parkinson's disease using a novel microcomputer-based method. , 1988, Journal of neurology, neurosurgery, and psychiatry.

[8]  G. Simons,et al.  Emotional and nonemotional facial expressions in people with Parkinson's disease , 2004, Journal of the International Neuropsychological Society.

[9]  G. Juckel,et al.  Kinematical analysis of emotionally induced facial expressions: a novel tool to investigate hypomimia in patients suffering from depression , 2004, Journal of Neurology, Neurosurgery & Psychiatry.

[10]  W. Rinn,et al.  The neuropsychology of facial expression: a review of the neurological and psychological mechanisms for producing facial expressions. , 1984, Psychological bulletin.

[11]  Zhengyou Zhang,et al.  Microsoft Kinect Sensor and Its Effect , 2012, IEEE Multim..

[12]  K. Bötzel,et al.  Prevalence and incidence of Parkinson's disease in Europe , 2005, European Neuropsychopharmacology.