Unobtrusive detection of Parkinson’s disease from multi-modal and in-the-wild sensor data using deep learning techniques

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作者
Alexandros Papadopoulos
Dimitrios Iakovakis
Lisa Klingelhoefer
Sevasti Bostantjopoulou
K. Ray Chaudhuri
Konstantinos Kyritsis
Stelios Hadjidimitriou
Vasileios Charisis
Leontios J. Hadjileontiadis
Anastasios Delopoulos
机构
[1] Aristotle University of Thessaloniki,Multimedia Understanding Group, Information Processing Laboratory, Department of Electrical and Computer Engineering
[2] Aristotle University of Thessaloniki,Signal Processing and Biomedical Technology Unit, Telecommunications Laboratory, Department of Electrical and Computer Engineering
[3] Technical University of Dresden,Department of Neurology
[4] Papanikolaou Hospital,Third Neurological Clinic
[5] King’s College Hospital NHS Foundation Trust,International Parkinson Excellence Research Centre
[6] Khalifa University of Science and Technology,Department of Electrical Engineering and Computer Science/Department of Biomedical Engineering
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Parkinson’s Disease (PD) is the second most common neurodegenerative disorder, affecting more than 1% of the population above 60 years old with both motor and non-motor symptoms of escalating severity as it progresses. Since it cannot be cured, treatment options focus on the improvement of PD symptoms. In fact, evidence suggests that early PD intervention has the potential to slow down symptom progression and improve the general quality of life in the long term. However, the initial motor symptoms are usually very subtle and, as a result, patients seek medical assistance only when their condition has substantially deteriorated; thus, missing the opportunity for an improved clinical outcome. This situation highlights the need for accessible tools that can screen for early motor PD symptoms and alert individuals to act accordingly. Here we show that PD and its motor symptoms can unobtrusively be detected from the combination of accelerometer and touchscreen typing data that are passively captured during natural user-smartphone interaction. To this end, we introduce a deep learning framework that analyses such data to simultaneously predict tremor, fine-motor impairment and PD. In a validation dataset from 22 clinically-assessed subjects (8 Healthy Controls (HC)/14 PD patients with a total data contribution of 18.305 accelerometer and 2.922 typing sessions), the proposed approach achieved 0.86/0.93 sensitivity/specificity for the binary classification task of HC versus PD. Additional validation on data from 157 subjects (131 HC/26 PD with a total contribution of 76.528 accelerometer and 18.069 typing sessions) with self-reported health status (HC or PD), resulted in area under curve of 0.87, with sensitivity/specificity of 0.92/0.69 and 0.60/0.92 at the operating points of highest sensitivity or specificity, respectively. Our findings suggest that the proposed method can be used as a stepping stone towards the development of an accessible PD screening tool that will passively monitor the subject-smartphone interaction for signs of PD and which could be used to reduce the critical gap between disease onset and start of treatment.
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