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Optimizing Individualized Treatment Planning for Parkinson’s Disease Using Deep Reinforcement Learning...

by Jeremy Watts, Anahita Khojandi, Rama K Vasudevan, Ritesh Ramdhani
Publication Type
Conference Paper
Journal Name
Engineering in Medicine and Biology Conference
Book Title
2020 42nd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)
Publication Date
Page Numbers
5406 to 5409
Issue
1
Publisher Location
Canada
Conference Name
Engineering in Medicine and Biology Conference (EMBC)
Conference Location
Virtual, Tennessee, United States of America
Conference Sponsor
IEEE
Conference Date
-

More than one million people currently live with Parkinson's Disease (PD) in the U.S. alone. Medications, such as levodopa, can help manage PD symptoms. However, medication treatment planning is generally based on patient history and limited interaction between physicians and patients during office visits. This limits the extent of benefit that may be derived from the treatment as disease/patient characteristics are generally non-stationary. Wearable sensors that provide continuous monitoring of various symptoms, such as bradykinesia and dyskinesia, can enhance symptom management. However, using such data to overhaul the current static medication treatment planning approach and prescribe personalized medication timing and dosage that accounts for patient/care-giver/physician feedback/preferences remains an open question. We develop a model to prescribe timing and dosage of medications, given the motor fluctuation data collected using wearable sensors in real-time. We solve the resulting model using deep reinforcement learning (DRL). The prescribed policy determines the optimal treatment plan that minimizes patient's symptoms. Our results show that the model-prescribed policy outperforms the static a priori treatment plan in improving patients' symptoms, providing a proof-of-concept that DRL can augment medical decision making for treatment planning of chronic disease patients.