Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories
The commercial availability of many real-life smart sensors, wearables, and mobile apps provides a valuable source of information about a wide range of human behavioral, physiological, and social markers that can be used to infer the user's mental state and mood. However, there are currently no...
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sg-ntu-dr.10356-1458672023-03-05T15:32:43Z Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories Sela, Yaron Santamaria, Lorena Amichai-Hamburge, Yair Leong, Victoria School of Social Sciences Social sciences::Psychology Digital Phenotyping Mood Disorders The commercial availability of many real-life smart sensors, wearables, and mobile apps provides a valuable source of information about a wide range of human behavioral, physiological, and social markers that can be used to infer the user's mental state and mood. However, there are currently no commercial digital products that integrate these psychosocial metrics with the real-time measurement of neural activity. In particular, electroencephalography (EEG) is a well-validated and highly sensitive neuroimaging method that yields robust markers of mood and affective processing, and has been widely used in mental health research for decades. The integration of wearable neuro-sensors into existing multimodal sensor arrays could hold great promise for deep digital neurophenotyping in the detection and personalized treatment of mood disorders. In this paper, we propose a multi-domain digital neurophenotyping model based on the socioecological model of health. The proposed model presents a holistic approach to digital mental health, leveraging recent neuroscientific advances, and could deliver highly personalized diagnoses and treatments. The technological and ethical challenges of this model are discussed. Ministry of Education (MOE) Nanyang Technological University Published version This work was funded by a UK Economic and Social Research Council (ESRC) Transforming Social Sciences Grant ES/N006461/1 (to V.L.), a Nanyang Technological University start-up Grant M4081585.SS0 (to V.L.), and Ministry of Education (Singapore) Tier 1 grants M4012105.SS0 and M4011750.SS0 (V.L.). 2021-01-13T02:10:52Z 2021-01-13T02:10:52Z 2020 Journal Article Sela, Y., Santamaria, L., Amichai-Hamburge, Y., & Leong, V. (2020). Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories. Sensors, 20(20), 5781-. doi:10.3390/s20205781 1424-8220 https://hdl.handle.net/10356/145867 10.3390/s20205781 33053889 2-s2.0-85092607022 20 20 en M4012105.SS0 M4011750.SS0 M4081585.SS0 Sensors © 2020 The Authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/). application/pdf |
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Social sciences::Psychology Digital Phenotyping Mood Disorders Sela, Yaron Santamaria, Lorena Amichai-Hamburge, Yair Leong, Victoria Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
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The commercial availability of many real-life smart sensors, wearables, and mobile apps provides a valuable source of information about a wide range of human behavioral, physiological, and social markers that can be used to infer the user's mental state and mood. However, there are currently no commercial digital products that integrate these psychosocial metrics with the real-time measurement of neural activity. In particular, electroencephalography (EEG) is a well-validated and highly sensitive neuroimaging method that yields robust markers of mood and affective processing, and has been widely used in mental health research for decades. The integration of wearable neuro-sensors into existing multimodal sensor arrays could hold great promise for deep digital neurophenotyping in the detection and personalized treatment of mood disorders. In this paper, we propose a multi-domain digital neurophenotyping model based on the socioecological model of health. The proposed model presents a holistic approach to digital mental health, leveraging recent neuroscientific advances, and could deliver highly personalized diagnoses and treatments. The technological and ethical challenges of this model are discussed. |
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School of Social Sciences |
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School of Social Sciences Sela, Yaron Santamaria, Lorena Amichai-Hamburge, Yair Leong, Victoria |
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Article |
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Sela, Yaron Santamaria, Lorena Amichai-Hamburge, Yair Leong, Victoria |
author_sort |
Sela, Yaron |
title |
Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
title_short |
Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
title_full |
Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
title_fullStr |
Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
title_full_unstemmed |
Towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
title_sort |
towards a personalized multi-domain digital neurophenotyping model for the detection and treatment of mood trajectories |
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2021 |
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https://hdl.handle.net/10356/145867 |
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